From ffb8f135081930ac228700ad636267669685dcd0 Mon Sep 17 00:00:00 2001 From: bebatut Date: Sat, 3 Aug 2024 23:04:25 +0200 Subject: [PATCH] Add result notebooks --- .github/workflows/deploy-book.yml | 2 +- .gitignore | 3 +- _config.yml | 2 +- _toc.yml | 15 +- data/country_alpha_2_continent.csv | 246 ++ data/honorarium.csv | 148 + data/library.csv | 240 ++ data/mentor_feedback/post_cohort/OLS-1.csv | 13 + data/mentor_feedback/post_cohort/OLS-2.csv | 41 + data/mentor_feedback/post_cohort/OLS-3.csv | 38 + data/mentor_feedback/post_cohort/OLS-4.csv | 24 + data/mentor_feedback/post_cohort/OLS-5.csv | 22 + data/mentor_feedback/post_cohort/OLS-6.csv | 21 + data/mentor_feedback/post_cohort/OLS-7.csv | 31 + data/microgrants.csv | 296 ++ .../naturalearth_lowres.cpg | 1 + .../naturalearth_lowres.dbf | Bin 0 -> 531808 bytes .../naturalearth_lowres.prj | 1 + .../naturalearth_lowres.shp | Bin 0 -> 180924 bytes .../naturalearth_lowres.shx | Bin 0 -> 1516 bytes .../ne_110m_admin_0_countries.README.html | 547 ++++ .../ne_110m_admin_0_countries.VERSION.txt | 1 + .../participant_feedback/mid_cohort/OLS-1.csv | 24 + .../participant_feedback/mid_cohort/OLS-2.csv | 16 + .../participant_feedback/mid_cohort/OLS-3.csv | 24 + .../participant_feedback/mid_cohort/OLS-4.csv | 12 + .../participant_feedback/mid_cohort/OLS-5.csv | 34 + .../participant_feedback/mid_cohort/OLS-6.csv | 15 + .../participant_feedback/mid_cohort/OLS-7.csv | 33 + .../participant_feedback/mid_cohort/OLS-8.csv | 14 + .../post_cohort/OLS-1.csv | 23 + .../post_cohort/OLS-2.csv | 33 + .../post_cohort/OLS-3.csv | 36 + .../post_cohort/OLS-4.csv | 20 + .../post_cohort/OLS-5.csv | 24 + .../post_cohort/OLS-6.csv | 31 + .../post_cohort/OLS-7.csv | 32 + .../post_cohort/OLS-8.csv | 38 + data/people.csv | 585 ++++ data/projects.csv | 988 +++++++ data/roles/expert.csv | 171 ++ data/roles/facilitator.csv | 31 + data/roles/mentor.csv | 139 + data/roles/organizer.csv | 6 + data/roles/participant.csv | 387 +++ data/roles/role.csv | 557 ++++ data/roles/speaker.csv | 100 + figures/figure-3-based_training_program.png | Bin 0 -> 223377 bytes figures/figure-4-microgrant-honoraria.png | Bin 0 -> 226272 bytes figures/figure-5-feedback.png | Bin 0 -> 376283 bytes ...bal_community-based_training_program.ipynb | 2072 ++++++++++++++ ...verview_microgrant_honoraria_process.ipynb | 864 ++++++ results/participants_mentors_feedback.ipynb | 2438 +++++++++++++++++ results/results.md | 3 + .../training_materials_video_library.ipynb | 770 ++++++ 55 files changed, 11204 insertions(+), 8 deletions(-) create mode 100644 data/country_alpha_2_continent.csv create mode 100644 data/honorarium.csv create mode 100644 data/library.csv create mode 100644 data/mentor_feedback/post_cohort/OLS-1.csv create mode 100644 data/mentor_feedback/post_cohort/OLS-2.csv create mode 100644 data/mentor_feedback/post_cohort/OLS-3.csv create mode 100644 data/mentor_feedback/post_cohort/OLS-4.csv create mode 100644 data/mentor_feedback/post_cohort/OLS-5.csv create mode 100644 data/mentor_feedback/post_cohort/OLS-6.csv create mode 100644 data/mentor_feedback/post_cohort/OLS-7.csv create mode 100644 data/microgrants.csv create mode 100644 data/naturalearth_lowres/naturalearth_lowres.cpg create mode 100755 data/naturalearth_lowres/naturalearth_lowres.dbf create mode 100755 data/naturalearth_lowres/naturalearth_lowres.prj create mode 100755 data/naturalearth_lowres/naturalearth_lowres.shp create mode 100755 data/naturalearth_lowres/naturalearth_lowres.shx create mode 100644 data/naturalearth_lowres/ne_110m_admin_0_countries.README.html create mode 100644 data/naturalearth_lowres/ne_110m_admin_0_countries.VERSION.txt create mode 100644 data/participant_feedback/mid_cohort/OLS-1.csv create mode 100644 data/participant_feedback/mid_cohort/OLS-2.csv create mode 100644 data/participant_feedback/mid_cohort/OLS-3.csv create mode 100644 data/participant_feedback/mid_cohort/OLS-4.csv create mode 100644 data/participant_feedback/mid_cohort/OLS-5.csv create mode 100644 data/participant_feedback/mid_cohort/OLS-6.csv create mode 100644 data/participant_feedback/mid_cohort/OLS-7.csv create mode 100644 data/participant_feedback/mid_cohort/OLS-8.csv create mode 100644 data/participant_feedback/post_cohort/OLS-1.csv create mode 100644 data/participant_feedback/post_cohort/OLS-2.csv create mode 100644 data/participant_feedback/post_cohort/OLS-3.csv create mode 100644 data/participant_feedback/post_cohort/OLS-4.csv create mode 100644 data/participant_feedback/post_cohort/OLS-5.csv create mode 100644 data/participant_feedback/post_cohort/OLS-6.csv create mode 100644 data/participant_feedback/post_cohort/OLS-7.csv create mode 100644 data/participant_feedback/post_cohort/OLS-8.csv create mode 100644 data/people.csv create mode 100644 data/projects.csv create mode 100644 data/roles/expert.csv create mode 100644 data/roles/facilitator.csv create mode 100644 data/roles/mentor.csv create mode 100644 data/roles/organizer.csv create mode 100644 data/roles/participant.csv create mode 100644 data/roles/role.csv create mode 100644 data/roles/speaker.csv create mode 100644 figures/figure-3-based_training_program.png create mode 100644 figures/figure-4-microgrant-honoraria.png create mode 100644 figures/figure-5-feedback.png create mode 100644 results/global_community-based_training_program.ipynb create mode 100644 results/overview_microgrant_honoraria_process.ipynb create mode 100644 results/participants_mentors_feedback.ipynb create mode 100644 results/results.md create mode 100644 results/training_materials_video_library.ipynb diff --git a/.github/workflows/deploy-book.yml b/.github/workflows/deploy-book.yml index e552a35..61f03c9 100644 --- a/.github/workflows/deploy-book.yml +++ b/.github/workflows/deploy-book.yml @@ -17,7 +17,7 @@ jobs: with: # channels: conda-forge,defaults # channel-priority: true - activate-environment: ols-stats + activate-environment: open-seeds-paper-2024 environment-file: environment.yml - shell: bash -el {0} run: | diff --git a/.gitignore b/.gitignore index 3516c68..ecd223b 100644 --- a/.gitignore +++ b/.gitignore @@ -11,4 +11,5 @@ *.ipynb_checkpoints /.quarto/ .DS_Store -_build \ No newline at end of file +_build +results/images/ diff --git a/_config.yml b/_config.yml index 92bac0b..e17b933 100644 --- a/_config.yml +++ b/_config.yml @@ -5,7 +5,7 @@ title: "Open Seeds: An inclusive training and mentoring program for Open Science author: OLS community logo: assets/images/ols-logo.png -exclude_patterns: [_build, Thumbs.db, .DS_Store, "**.ipynb_checkpoints", results, README.md] +exclude_patterns: [_build, Thumbs.db, .DS_Store, "**.ipynb_checkpoints", README.md] # Force re-execution of notebooks on each build. # See https://jupyterbook.org/content/execute.html diff --git a/_toc.yml b/_toc.yml index 266edea..0fbd14d 100644 --- a/_toc.yml +++ b/_toc.yml @@ -4,11 +4,16 @@ format: jb-book root: index parts: + - caption: Results + chapters: + - file: results/global_community-based_training_program + - file: results/training_materials_video_library + - file: results/overview_microgrant_honoraria_process - caption: Supplementary Data chapters: - - file: supplementary/supplementary-data-1-application-template.md - - file: supplementary/supplementary-data-2-review-rubric.md - - file: supplementary/supplementary-data-3-mid-term-participant-survey.md - - file: supplementary/supplementary-data-4-post-cohort-participant-survey.md - - file: supplementary/supplementary-data-5-post-cohort-mentor-survey.md + - file: supplementary/supplementary-data-1-application-template + - file: supplementary/supplementary-data-2-review-rubric + - file: supplementary/supplementary-data-3-mid-term-participant-survey + - file: supplementary/supplementary-data-4-post-cohort-participant-survey + - file: supplementary/supplementary-data-5-post-cohort-mentor-survey diff --git a/data/country_alpha_2_continent.csv b/data/country_alpha_2_continent.csv new file mode 100644 index 0000000..e4fb9d8 --- /dev/null +++ b/data/country_alpha_2_continent.csv @@ -0,0 +1,246 @@ +Country,Continent +"AB","Asia" +"AD","Europe" +"AE","Asia" +"AF","Asia" +"AG","North America" +"AI","North America" +"AL","Europe" +"AM","Asia" +"AO","Africa" +"AR","South America" +"AS","Oceania" +"AT","Europe" +"AU","Oceania" +"AW","North America" +"AX","Europe" +"AZ","Asia" +"BA","Europe" +"BB","North America" +"BD","Asia" +"BE","Europe" +"BF","Africa" +"BG","Europe" +"BH","Asia" +"BI","Africa" +"BJ","Africa" +"BL","North America" +"BM","North America" +"BN","Asia" +"BO","South America" +"BQ","North America" +"BR","South America" +"BS","North America" +"BT","Asia" +"BV","Antarctica" +"BW","Africa" +"BY","Europe" +"BZ","North America" +"CA","North America" +"CC","Asia" +"CD","Africa" +"CF","Africa" +"CG","Africa" +"CH","Europe" +"CI","Africa" +"CK","Oceania" +"CL","South America" +"CM","Africa" +"CN","Asia" +"CO","South America" +"CR","North America" +"CU","North America" +"CV","Africa" +"CW","North America" +"CX","Asia" +"CY","Asia" +"CZ","Europe" +"DE","Europe" +"DJ","Africa" +"DK","Europe" +"DM","North America" +"DO","North America" +"DZ","Africa" +"EC","South America" +"EE","Europe" +"EG","Africa" +"ER","Africa" +"ES","Europe" +"ET","Africa" +"FI","Europe" +"FJ","Oceania" +"FK","South America" +"FM","Oceania" +"FO","Europe" +"FR","Europe" +"GA","Africa" +"GB","Europe" +"GD","North America" +"GE","Asia" +"GF","South America" +"GG","Europe" +"GH","Africa" +"GI","Europe" +"GL","North America" +"GM","Africa" +"GN","Africa" +"GP","North America" +"GQ","Africa" +"GR","Europe" +"GS","South America" +"GT","North America" +"GU","Oceania" +"GW","Africa" +"GY","South America" +"HK","Asia" +"HM","Antarctica" +"HN","North America" +"HR","Europe" +"HT","North America" +"HU","Europe" +"ID","Asia" +"IE","Europe" +"IL","Asia" +"IM","Europe" +"IN","Asia" +"IO","Asia" +"IQ","Asia" +"IR","Asia" +"IS","Europe" +"IT","Europe" +"JE","Europe" +"JM","North America" +"JO","Asia" +"JP","Asia" +"KE","Africa" +"KG","Asia" +"KH","Asia" +"KI","Oceania" +"KM","Africa" +"KN","North America" +"KP","Asia" +"KR","Asia" +"KW","Asia" +"KY","North America" +"KZ","Asia" +"LA","Asia" +"LB","Asia" +"LC","North America" +"LI","Europe" +"LK","Asia" +"LR","Africa" +"LS","Africa" +"LT","Europe" +"LU","Europe" +"LV","Europe" +"LY","Africa" +"MA","Africa" +"MC","Europe" +"MD","Europe" +"ME","Europe" +"MF","North America" +"MG","Africa" +"MH","Oceania" +"MK","Europe" +"ML","Africa" +"MM","Asia" +"MN","Asia" +"MO","Asia" +"MP","Oceania" +"MQ","North America" +"MR","Africa" +"MS","North America" +"MT","Europe" +"MU","Africa" +"MV","Asia" +"MW","Africa" +"MX","North America" +"MY","Asia" +"MZ","Africa" +"NA","Africa" +"NC","Oceania" +"NE","Africa" +"NF","Oceania" +"NG","Africa" +"NI","North America" +"NL","Europe" +"NO","Europe" +"NP","Asia" +"NR","Oceania" +"NU","Oceania" +"NZ","Oceania" +"OM","Asia" +"OS","Asia" +"PA","North America" +"PE","South America" +"PF","Oceania" +"PG","Oceania" +"PH","Asia" +"PK","Asia" +"PL","Europe" +"PM","North America" +"PR","North America" +"PS","Asia" +"PT","Europe" +"PW","Oceania" +"PY","South America" +"QA","Asia" +"RE","Africa" +"RO","Europe" +"RS","Europe" +"RU","Europe" +"RW","Africa" +"SA","Asia" +"SB","Oceania" +"SC","Africa" +"SD","Africa" +"SE","Europe" +"SG","Asia" +"SH","Africa" +"SI","Europe" +"SJ","Europe" +"SK","Europe" +"SL","Africa" +"SM","Europe" +"SN","Africa" +"SO","Africa" +"SR","South America" +"SS","Africa" +"ST","Africa" +"SV","North America" +"SY","Asia" +"SZ","Africa" +"TC","North America" +"TD","Africa" +"TG","Africa" +"TH","Asia" +"TJ","Asia" +"TK","Oceania" +"TM","Asia" +"TN","Africa" +"TO","Oceania" +"TP","Asia" +"TR","Asia" +"TT","North America" +"TV","Oceania" +"TW","Asia" +"TZ","Africa" +"UA","Europe" +"UG","Africa" +"US","North America" +"UY","South America" +"UZ","Asia" +"VC","North America" +"VE","South America" +"VG","North America" +"VI","North America" +"VN","Asia" +"VU","Oceania" +"WF","Oceania" +"WS","Oceania" +"XK","Europe" +"YE","Asia" +"YT","Africa" +"ZA","Africa" +"ZM","Africa" +"ZW","Africa" \ No newline at end of file diff --git a/data/honorarium.csv b/data/honorarium.csv new file mode 100644 index 0000000..0974c67 --- /dev/null +++ b/data/honorarium.csv @@ -0,0 +1,148 @@ +Cohort,Role,Amount,Currency,Country +OLS-6,speaker,212.93,GBP,Colombia +OLS-6,facilitator,377.49,GBP,United Kingdom +OLS-6,speaker,211.53,GBP,United Kingdom +OLS-6,speaker,212.57,GBP, +OLS-6,speaker,211.07,GBP,Netherlands +OLS-6,speaker,211.14,GBP,China +OLS-6,speaker,207.97,GBP,Italy +OLS-6,speaker,250,USD,United Kingdom +OLS-6,speaker,209.94,GBP,Germany +OLS-6,facilitator,92.12,GBP,Kenya +OLS-6,mentor,444.9,GBP,Cameroon +OLS-5,speaker,250,USD,Brazil +OLS-5,speaker,191.87,GBP,Germany +OLS-5,speaker,191.18,GBP,United Kingdom +OLS-5,speaker,250,USD,Brazil +OLS-5,speaker,202.25,GBP,South Africa +OLS-5,speaker,202.81,GBP,United Kingdom +OLS-5,speaker,202.8,GBP,Singapore +OLS-5,speaker,203.12,GBP,Spain +OLS-5,speaker,200.4,GBP,Brazil +OLS-5,speaker,250,USD,Australia +OLS-5,speaker,232.45,EUR,Germany +OLS-5,speaker,200.78,GBP, +OLS-5,mentor,500,USD,Greece +OLS-5,mentor,500,USD,United Kingdom +OLS-5,mentor,467.7,EUR,Sweden +OLS-5,mentor,500,USD,Switzerland +OLS-5,mentor,500,USD,Netherlands +OLS-5,mentor,500,USD,Saudi Arabia +OLS-5,mentor,420.77,GBP,South Africa +OLS-5,mentor,419.9,GBP,Colombia +OLS-5,mentor,412.86,GBP,United Kingdom +OLS-5,mentor,503.43,USD,Netherlands +OLS-5,mentor,408.41,GBP,Canada +OLS-5,mentor,475.04,EUR,Germany +OLS-5,mentor,205.89,GBP,United Kingdom +OLS-5,mentor,250,USD,United Kingdom +OLS-5,mentor,415.43,GBP,Kenya +OLS-5,mentor,425.21,GBP,Argentina +OLS-5,facilitator,681.65,GBP,Kenya +OLS-5,facilitator,300,USD,Saudi Arabia +OLS-5,facilitator,172.9,GBP,France +OLS-5,mentor,500,USD,United Kingdom +OLS-5,mentor,500,USD,United Kingdom +OLS-5,mentor,411.37,GBP,United Kingdom +OLS-5,facilitator,145.32,GBP,Kenya +OLS-5,mentor,52,GBP,Netherlands +OLS-5,"facilitator, mentor",897.78,EUR,Spain +OLS-5,"facilitator, mentor",134.27,GBP,Spain +OLS-7,mentor,311.64,GBP, +OLS-8,Speaker,203.57,GBP, +OLS-8,Facilitator,62.33,GBP,Egypt +OLS-6,speaker,250,USD,United States +OLS-8,speaker,250,USD, +OLS-6,Speaker,206.65,GBP, +OLS-8,Speaker,199.1,GBP, +OLS-8,Speaker,250,USD, +OLS-6,Speaker,234.55,EUR,Cameroon +OLS-6,speaker,205.87,GBP,Canada +OLS-6,facilitator role (transcript check - week 2 and 3 cohort calls),122.02,GBP,Spain +OLS-8,Speaker,200.96,GBP, +OLS-8,Speaker,198.75,GBP,Hong Kong +OLS-6,Speaker,202.66,GBP,Ireland +OLS-8,speaker,225.48,USD,Chile +OLS-8,speaker,199.27,GBP, +OLS-6,facilitator (co-host a session),40.68,GBP,Spain +OLS-7,Mentor,403.81,GBP,Cameroon +OLS-7,Facilitator,187.5,GBP,Cameroon +OLS-7,Mentor,395.49,GBP,Argentina +OLS-7,Facilitator,307.17,GBP,Argentina +OLS-7,Mentor,414.95,GBP,Cameroon +OLS-8,Speaker (Expert talk),211.18,GBP,Cameroon +OLS-7,mentor,500,USD,Argentina +OLS-7,mentor,397.82,GBP,Colombia +OLS-7,Mentor,394.81,GBP,Canada +OLS-8,Speaker,198.96,GBP,Spain +OLS-7,Mentor,457.64,EUR,Netherlands +OLS-7,Mentor,395.94,GBP,India +OLS-7,Mentor,195.7,GBP,United Kingdom +OLS-7,Mentor,383.99,GBP,United Kingdom +OLS-7,Mentor and expert,393.59,GBP,Canada +OLS-7,Mentor,458.74,EUR,Netherlands +OLS-7,Mentor,398.43,GBP,Kenya +OLS-8,Facilitator,75,USD,Nigeria +OLS-7,"co-facilitator, transcriber",150,USD,Ireland +OLS-7,Mentor,457.92,EUR,Ireland +OLS-7,Mentor,456.58,EUR,Switzerland +OLS-7,mentor,394.76,GBP,Kenya +OLS-8,facilitator; transcription check,94.53,GBP,Kenya +OLS-7,mentor,397.71,GBP,Kenya +OLS-7,Mentor,389.08,GBP,Kenya +OLS-7,Facilitator,156.17,GBP,Kenya +OLS-8,Facilitator,240.97,GBP,Kenya +OLS-8,Facilitator,373.05,GBP,Cameroon +OLS-6,Mentor,392.8,GBP,Kenya +OLS-8,Facilitator,201.35,GBP,Kenya +OLS-7,Mentor,500,USD, +OLS-8,Facilitator,68.46,EUR,France +OLS-7,Mentor,457.44,EUR,Germany +OLS-7,Mentor,500,USD,United States +OLS-8,Speaker,233.74,EUR,France +OLS-8,Facilitator,59.92,GBP,Nigeria +OLS-7,Mentor,503.66,USD,Chile +OLS-7,Mentor,457.44,EUR,Ireland +OLS-8,Call facilitator,61,GBP,Nigeria +OLS-8,speaker,251.77,USD,Canada +OLS-8,Speaker,197.84,GBP, +OLS-6,Facilitator (co-hosted 2 meetings and Transcription of the three (3) graduation videos,251.68,GBP,Kenya +OLS-6,"Transcription of the videos, preparing guideline for the transcription",448.41,GBP,Canada +OLS-6,Facilitator and Speaker,370.58,GBP,Spain +OLS-6,speaker,206.02,GBP,Germany +OLS-6,Facilitator - transcription check,189.14,GBP,South Africa +OLS-7,Speaker,201.46,GBP,Nigeria +OLS-7,Speaker,253.62,USD, +OLS-7,Speaker,198.08,GBP,United Kingdom +OLS-7,Speaker,253.58,USD, +OLS-7,Speaker,250.39,USD,Argentina +OLS-7,Speaker,229.91,EUR,Germany +OLS-7,Speaker,202.2,GBP, +OLS-7,speaker,202.83,GBP,India +OLS-7,Speaker,203.62,GBP,Australia +OLS-7,speaker for Open Data,250,USD,Netherlands +OLS-7,Ally Skills workshop facilitator,100,USD,Netherlands +OLS-7,speaker,250,USD,United States +OLS-7,Speaker,200.94,GBP,Nigeria +OLS-7,Facilitator,59.63,GBP,Nigeria +OLS-7,facilitator,81.99,GBP,Kenya +OLS-7,facilitator,61.71,GBP,Kenya +OLS-7,transcription check,52.32,GBP,Kenya +OLS-7,Speaker,250.39,USD,United States +OLS-7,Facilitator,121.37,GBP, +OLS-7,Facilitator,69.41,EUR,France +OLS-6,Mentor,416.98,GBP,Germany +OLS-7,Mentor,458.07,EUR,Germany +OLS-7,Mentor,396.39,GBP, +OLS-3,Mentor,160,USD,United Kingdom +OLS-3,Mentor,160,USD,United Kingdom +OLS-3,Mentor,160,USD, +OLS-3,Mentor,160,USD,Brasil +OLS-3,Mentor,160,USD,Kenya +OLS-3,Mentor,160,USD,Spain +OLS-3,Mentor,160,USD,USA +OLS-3,Mentor,160,USD,Switzerland +OLS-4,Facilitator,350,GBP,Kenya +OLS-4,Facilitator,300,GBP,Kenya +OLS-4,Facilitator,250,GBP,United Kingdom +OLS-4,Facilitator,250,GBP,United Kingdom \ No newline at end of file diff --git a/data/library.csv b/data/library.csv new file mode 100644 index 0000000..625f52e --- /dev/null +++ b/data/library.csv @@ -0,0 +1,240 @@ +,slides,speakers,title,date,cohort,tag,subtag,recording +0,https://docs.google.com/presentation/d/1w_WWb7Mj7NgX4pLBejB4Vc_ofK7ZHOUYOT1MCeKVi20/present?token=AC4w5VjvHWSZBrOwwb1EcSm8v45lUi3nqQ%3A1599724146314&includes_info_params=1&eisi=CLPd6-uM3usCFdIWswUdsiINRA#slide=id.g6e457e6ac5_0_69,Bérénice Batut,Welcome to OLS!,"September 10, 2020",ols-2,Open Life Science,OLS Introduction, +1,https://docs.google.com/presentation/d/e/2PACX-1vT_e2ngwmyjwApVc1CC-dUpSHSArCPsZQjw4oo-0USZFn1lw4OtwPB6LsTSAStocYGIScfgrq5Esea7/pub?start=false&loop=false&delayms=3000,Malvika Sharan,Welcome to OLS!,"February 17, 2021",ols-3,Open Life Science,OLS Introduction,https://youtu.be/lFaMk01Z_gY?t=1595 +2,https://docs.google.com/presentation/d/1B-TiVAHx6OVririv88-H59_BlPwniS5xDnhZtoDU280/edit#slide=id.g6e457e6ac5_0_69,Yo Yehudi,Welcome to OLS!,"September 22, 2021",ols-4,Open Life Science,OLS Introduction, +3,https://docs.google.com/presentation/d/1B-TiVAHx6OVririv88-H59_BlPwniS5xDnhZtoDU280/edit#slide=id.g6e457e6ac5_0_69,Malvika Sharan,Welcome to OLS!,"September 29, 2021",ols-4,Open Life Science,OLS Introduction, +4,https://docs.google.com/presentation/d/1B-TiVAHx6OVririv88-H59_BlPwniS5xDnhZtoDU280/edit#slide=id.g6e457e6ac5_0_69,Emmy Tsang,Welcome to OLS!,"March 07, 2022",ols-5,Open Life Science,OLS Introduction,https://youtu.be/O3yk0yrOHGM?t=1234 +5,https://docs.google.com/presentation/d/1B-TiVAHx6OVririv88-H59_BlPwniS5xDnhZtoDU280/edit#slide=id.g6e457e6ac5_0_69,Yo Yehudi,Welcome to OLS!,"March 16, 2022",ols-5,Open Life Science,OLS Introduction,https://youtu.be/CnTWxXVM0Qw?t=726 +6,https://docs.google.com/presentation/d/1huJSmgaQMqB3go3XUcw_H61p6my0gkZE/edit#slide=id.p2,Yo Yehudi,Welcome to OLS!,"September 27, 2022",ols-6,Open Life Science,OLS Introduction,https://youtu.be/bAS74USoPxk?t=878 +7,https://docs.google.com/presentation/d/1huJSmgaQMqB3go3XUcw_H61p6my0gkZE/edit#slide=id.p2,Yo Yehudi,Welcome to OLS!,"October 05, 2022",ols-6,Open Life Science,OLS Introduction,https://youtu.be/Q1ae8ip4o54?t=1792 +8,https://docs.google.com/presentation/d/16M5R6YhvAeK0-old_hV9RjrshdA0sdJPgZBRO_MyRLA/edit?usp=sharing,Emmy Tsang,Welcome to OLS!,"March 07, 2023",ols-7,Open Life Science,OLS Introduction,https://youtu.be/AMliNkrJIaQ?t=1110 +9,https://docs.google.com/presentation/d/1B-TiVAHx6OVririv88-H59_BlPwniS5xDnhZtoDU280/edit#slide=id.g6e457e6ac5_0_69,Yo Yehudi,Welcome to OLS!,"March 15, 2023",ols-7,Open Life Science,OLS Introduction,https://youtu.be/XulHUHQru2I?t=1113 +10,https://docs.google.com/presentation/d/e/2PACX-1vSppfTwD16P5ilQYB6jnthyumfvM4mNuumHgy6NFuJHWIarRF-locPwZoJVO7H5DbzWdU30KhMh0gm4/pub,Yo Yehudi,Welcome to Open Seeds,"September 26, 2023",ols-8,Open Life Science,OLS Introduction, +11,https://docs.google.com/presentation/d/e/2PACX-1vSppfTwD16P5ilQYB6jnthyumfvM4mNuumHgy6NFuJHWIarRF-locPwZoJVO7H5DbzWdU30KhMh0gm4/pub,Malvika Sharan,Welcome to Open Seeds,"October 04, 2023",ols-8,Open Life Science,OLS Introduction,https://www.youtube.com/watch?v=otxpdHSaqyw&list=UULFs12-ZgnDJOWIWN3Vo1XHXA&index=10 +12,https://docs.google.com/presentation/d/14LsolqKJdd1T7XMV8PK6yQrjjrz9VPFHRDtjrL_55Js/edit?usp=sharing,Yo Yehudi,Introducing Open Canvas,"January 29, 2020",ols-1,Tooling for Project Design,Open Canvas,https://youtu.be/3-cvl7UfSTY?t=1751 +13,https://docs.google.com/presentation/d/14LsolqKJdd1T7XMV8PK6yQrjjrz9VPFHRDtjrL_55Js/edit?usp=sharing,Yo Yehudi,Introducing Open Canvas,"September 10, 2020",ols-2,Tooling for Project Design,Open Canvas,https://youtu.be/5lkkHPm6aj8?t=982 +14,https://docs.google.com/presentation/d/e/2PACX-1vR8j2NXWFyWKldK2OoTseN1t5YhLgeCG2OWNIjER5PKfnfGSdYQSjo8LeUCoYFyc3nZedBaNxc-aneH/pub?start=false&loop=false&delayms=3000,Yo Yehudi,Introducing Open Canvas,"February 17, 2021",ols-3,Tooling for Project Design,Open Canvas,https://youtu.be/lFaMk01Z_gY?t=2311 +15,https://docs.google.com/presentation/d/10CkS3j8LZBULwpy6zzwO2GBHbNBBStD6v4jceuP1TDg/edit?usp=sharing,Bérénice Batut,Introducing Open Canvas,"September 22, 2021",ols-4,Tooling for Project Design,Open Canvas,https://youtu.be/NsVX4a3ZOF8?t=1866 +16,https://docs.google.com/presentation/d/10CkS3j8LZBULwpy6zzwO2GBHbNBBStD6v4jceuP1TDg/edit?usp=sharing,Emmy Tsang,Introducing Open Canvas,"September 29, 2021",ols-4,Tooling for Project Design,Open Canvas,https://youtu.be/gcDNb_-JbDI?t=1968 +17,https://docs.google.com/presentation/d/10CkS3j8LZBULwpy6zzwO2GBHbNBBStD6v4jceuP1TDg/edit?usp=sharing,Yo Yehudi,Introducing Open Canvas,"March 07, 2022",ols-5,Tooling for Project Design,Open Canvas,https://youtu.be/O3yk0yrOHGM?t=2455 +18,https://docs.google.com/presentation/d/10CkS3j8LZBULwpy6zzwO2GBHbNBBStD6v4jceuP1TDg/edit?usp=sharing,Emmy Tsang,Introducing Open Canvas,"March 16, 2022",ols-5,Tooling for Project Design,Open Canvas,https://youtu.be/CnTWxXVM0Qw?t=1398 +19,https://docs.google.com/presentation/d/18YFRfG6zmoOcpGFH_H2tl6HziY7dWQ0u/edit#slide=id.p19,Malvika Sharan,Introducing Open Canvas,"September 27, 2022",ols-6,Tooling for Project Design,Open Canvas,https://youtu.be/bAS74USoPxk?t=1899 +20,https://docs.google.com/presentation/d/18YFRfG6zmoOcpGFH_H2tl6HziY7dWQ0u/edit#slide=id.p19,Yo Yehudi,Introducing Open Canvas,"October 05, 2022",ols-6,Tooling for Project Design,Open Canvas,https://youtu.be/Q1ae8ip4o54?t=2458 +21,https://docs.google.com/presentation/d/1gmVQqDxxbGMqBqVbRRoeBx2nDSMkfUU2g3wGw82-mqs/edit?usp=sharing,Bérénice Batut,Introducing Open Canvas,"March 07, 2023",ols-7,Tooling for Project Design,Open Canvas,https://youtu.be/AMliNkrJIaQ?t=2325 +22,https://docs.google.com/presentation/d/1gmVQqDxxbGMqBqVbRRoeBx2nDSMkfUU2g3wGw82-mqs/edit?usp=sharing,Malvika Sharan,Introducing Open Canvas,"March 15, 2023",ols-7,Tooling for Project Design,Open Canvas,https://youtu.be/XulHUHQru2I?t=2168 +23,https://docs.google.com/presentation/d/e/2PACX-1vQ2cXlk-3EGLFQph6qD8PN24_nfCaCwij69CAd2GZ5PzgAZ1AEuNQE_m1w9DyAbrONwXrsOYZmKOA5T/pub,Yo Yehudi,Open Canvas,"September 26, 2023",ols-8,Tooling for Project Design,Open Canvas, +24,https://docs.google.com/presentation/d/e/2PACX-1vQ2cXlk-3EGLFQph6qD8PN24_nfCaCwij69CAd2GZ5PzgAZ1AEuNQE_m1w9DyAbrONwXrsOYZmKOA5T/pub,,Open Canvas,"October 04, 2023",ols-8,Tooling for Project Design,Open Canvas, +25,https://docs.google.com/presentation/d/1IqvBjHlqXk8tkKj7nbp5pneQq19z6yuUq9Bkp3eTYPE/edit?usp=sharing,Bérénice Batut,Road Mapping,"January 29, 2020",ols-1,Tooling for Project Design,Project Roadmapping,https://youtu.be/3-cvl7UfSTY?t=2427 +26,https://docs.google.com/presentation/d/1IqvBjHlqXk8tkKj7nbp5pneQq19z6yuUq9Bkp3eTYPE/edit?usp=sharing,,Road Mapping,"September 10, 2020",ols-2,Tooling for Project Design,Project Roadmapping, +27,https://docs.google.com/presentation/d/e/2PACX-1vRwCxOy-Xl240eB2j0xwuyA-1wPhQMiJV1nfQsbtsiGSUxPiuJZotZb91o23dtRS_RbYeyFHlq_z8XN/pub?start=false&loop=false&delayms=3000,Emmy Tsang,Road Mapping,"February 17, 2021",ols-3,Tooling for Project Design,Project Roadmapping,https://youtu.be/lFaMk01Z_gY?t=3055 +28,https://docs.google.com/presentation/d/1ncWeisU45m5INf-xNBMHtM-GGPvZ6v0mPlrwOh6FY_I/edit?usp=sharing,Emmy Tsang,Introducing Road Mapping,"September 22, 2021",ols-4,Tooling for Project Design,Project Roadmapping,https://youtu.be/NsVX4a3ZOF8?t=2642 +29,https://docs.google.com/presentation/d/1ncWeisU45m5INf-xNBMHtM-GGPvZ6v0mPlrwOh6FY_I/edit?usp=sharing,Yo Yehudi,Introducing Road Mapping,"September 29, 2021",ols-4,Tooling for Project Design,Project Roadmapping,https://youtu.be/gcDNb_-JbDI?t=3069 +30,https://docs.google.com/presentation/d/1ncWeisU45m5INf-xNBMHtM-GGPvZ6v0mPlrwOh6FY_I/edit?usp=sharing,Emmy Tsang,Introducing Road Mapping,"March 07, 2022",ols-5,Tooling for Project Design,Project Roadmapping,https://youtu.be/O3yk0yrOHGM?t=3053 +31,https://docs.google.com/presentation/d/1ncWeisU45m5INf-xNBMHtM-GGPvZ6v0mPlrwOh6FY_I/edit?usp=sharing,Malvika Sharan,Introducing Road Mapping,"March 16, 2022",ols-5,Tooling for Project Design,Project Roadmapping,https://youtu.be/CnTWxXVM0Qw?t=2821 +32,https://docs.google.com/presentation/d/1ZwsxOkiik6QnJtwt5BU42_Uu9u1TbnJC/edit#slide=id.p1,Emmy Tsang,Introducing Road Mapping,"September 27, 2022",ols-6,Tooling for Project Design,Project Roadmapping,https://youtu.be/bAS74USoPxk?t=2845 +33,https://docs.google.com/presentation/d/1ZwsxOkiik6QnJtwt5BU42_Uu9u1TbnJC/edit#slide=id.p1,Yo Yehudi,Introducing Road Mapping,"October 05, 2022",ols-6,Tooling for Project Design,Project Roadmapping,https://youtu.be/Q1ae8ip4o54?t=3061 +34,https://docs.google.com/presentation/d/1xpVo-66m0mWs8_ZFGuHQwPBTT-vkfBRXwr6WJEb5QRw/edit?usp=sharing,Bérénice Batut,Introducing Road Mapping,"March 07, 2023",ols-7,Tooling for Project Design,Project Roadmapping,https://youtu.be/AMliNkrJIaQ?t=3166 +35,https://docs.google.com/presentation/d/1ncWeisU45m5INf-xNBMHtM-GGPvZ6v0mPlrwOh6FY_I/edit?usp=sharing,Paz Bernaldo,Introducing Road Mapping,"March 15, 2023",ols-7,Tooling for Project Design,Project Roadmapping,https://youtu.be/XulHUHQru2I?t=2887 +36,,Bérénice Batut,Project Roadmapping,"September 26, 2023",ols-8,Tooling for Project Design,Project Roadmapping, +37,,,Project Roadmapping,"October 04, 2023",ols-8,Tooling for Project Design,Project Roadmapping, +38,https://docs.google.com/presentation/d/e/2PACX-1vT-icafDLq0mDuOlniwWaCj5pv-RM5duDAs-cgiWSxoYmh_sz9VqCq_ijIAa_uHqMYqqgPnHPBmY7LO/pub,Bérénice Batut,Tooling for Project Design Introduction,"September 26, 2023",ols-8,Tooling for Project Design,Tooling for Project Design Introduction, +39,https://docs.google.com/presentation/d/e/2PACX-1vT-icafDLq0mDuOlniwWaCj5pv-RM5duDAs-cgiWSxoYmh_sz9VqCq_ijIAa_uHqMYqqgPnHPBmY7LO/pub,,Tooling for Project Design Introduction,"October 04, 2023",ols-8,Tooling for Project Design,Tooling for Project Design Introduction, +40,https://docs.google.com/presentation/d/1ymSOc9vPnFJpU0FwFBqw25qhSmJVAv5scpi-N9KVopc/edit?usp=sharing,Josh Simmons,A Primer on Open Licenses,"February 12, 2020",ols-1,Tooling for Collaboration,Open Licensing,https://youtu.be/y9y8a3O4fjg?t=383 +41,https://docs.google.com/presentation/d/1qep_rtGuiD7MXOul1KJrgjNYjYw_4WOvdpUO1tTUj1w/edit?usp=sharing,Christine Rogers,A Primer on Open Licenses,"September 24, 2020",ols-2,Tooling for Collaboration,Open Licensing,https://youtu.be/aX40ntw0uIg?t=1946 +42,https://docs.google.com/presentation/d/1-Ns22S18_eP6VvEwMx6Mxo5cukFYVSG8W6kaZctyWpc/edit?usp=sharing,Hao Ye,A Primer on Open Licenses,"March 03, 2021",ols-3,Tooling for Collaboration,Open Licensing,https://youtu.be/Enn2NGMGC2k?t=1176 +43,https://docs.google.com/presentation/d/1JX7IBxHBlMBd5xf3Qxu-ZbInqgIXA-Y0eulHJiv5dA0/edit?usp=sharing,Kaitlin Thaney,Open Licensing,"October 06, 2021",ols-4,Tooling for Collaboration,Open Licensing,https://youtu.be/kAxVZDI18RU?t=973 +44,https://docs.google.com/presentation/d/1JX7IBxHBlMBd5xf3Qxu-ZbInqgIXA-Y0eulHJiv5dA0/edit?usp=sharing,Raniere Silva,Open Licensing,"March 23, 2022",ols-5,Tooling for Collaboration,Open Licensing,https://youtu.be/d0A2TaLyhlY?t=1604 +45,https://docs.google.com/presentation/d/1YGZVJhEuvuv1YKEVH_DW8aCVnwqCoBRC/edit#slide=id.p1,Anna e só,Open Licensing,"October 12, 2022",ols-6,Tooling for Collaboration,Open Licensing,https://youtu.be/M0szFcbGdBU?t=856 +46,https://docs.google.com/presentation/d/1-Ns22S18_eP6VvEwMx6Mxo5cukFYVSG8W6kaZctyWpc/edit?usp=sharing,Hao Ye,Open Licensing,"March 22, 2023",ols-7,Tooling for Collaboration,Open Licensing,https://youtu.be/DG3La_p22N0?t=2065 +47,https://docs.google.com/presentation/d/e/2PACX-1vQsH4kNQ838uk6mHw8w6YuR8hgg4JXZ10lkNdaVC05zfMEZpU1xDRyT_B6A3s9rqirP2RhAndi-G6dd/pub,Yo Yehudi,A Primer on Open Licenses,"October 11, 2023",ols-8,Tooling for Collaboration,Open Licensing, +48,https://docs.google.com/presentation/d/1APGIvU1aZ_zNkLmC5SYlLXBh6LZK_Qe97-3C_3oXcFI/edit?usp=sharing,Mateusz Kuzak,READMEs for Open Projects,"February 12, 2020",ols-1,Tooling for Collaboration,README,https://youtu.be/y9y8a3O4fjg?t=1831 +49,https://docs.google.com/presentation/d/12nifeGLgbZWeq7D1EMjLZIvMieM4pEa522sQLQNnT2g/edit?usp=sharing,Mateusz Kuzak,READMEs for Open Projects,"September 24, 2020",ols-2,Tooling for Collaboration,README,https://youtu.be/aX40ntw0uIg?t=2939 +50,https://docs.google.com/presentation/d/1APGIvU1aZ_zNkLmC5SYlLXBh6LZK_Qe97-3C_3oXcFI/edit?usp=sharing” with “https://docs.google.com/presentation/d/1K-to88_TV4UI7-ek2ph5PIsqEZcYEprT1KkEXysCWiA/edit?usp=sharing,Carlos Martinez-Ortiz,README,"March 03, 2021",ols-3,Tooling for Collaboration,README,https://youtu.be/Enn2NGMGC2k?t=2138 +51,https://docs.google.com/presentation/d/1CYTTEzAzSLUOR6-dwBfhZc5a753OJ2wfu2EXJvXBPkY/edit?usp=sharing,Alex Chan,README,"October 06, 2021",ols-4,Tooling for Collaboration,README,https://youtu.be/kAxVZDI18RU?t=2270 +52,https://docs.google.com/presentation/d/1CYTTEzAzSLUOR6-dwBfhZc5a753OJ2wfu2EXJvXBPkY/edit?usp=sharing,Hao Ye,README,"March 23, 2022",ols-5,Tooling for Collaboration,README,https://youtu.be/d0A2TaLyhlY?t=714 +53,https://docs.google.com/presentation/d/1Sh_9lEJ50HtWecB_Zaews-3Shah4TFld/edit?usp=drive_web&ouid=113583685317579296794&rtpof=true,Alexander Martinez Mendez,README,"October 12, 2022",ols-6,Tooling for Collaboration,README,https://youtu.be/M0szFcbGdBU?t=1711 +54,https://docs.google.com/presentation/d/1V2-6PbJiPOYGBGsHJbKj9Y49iPHsHnAIKnhCuV40U3I/edit#slide=id.g2224fafcba8_0_37,Eric Kariuki,README & Contributing for Open Projects,"March 22, 2023",ols-7,Tooling for Collaboration,README,https://youtu.be/DG3La_p22N0?t=1080 +55,https://docs.google.com/presentation/d/16xlUE0NW7W4hW2PBMs89bNcXM9pqcmM9WnuAEgqo3DM/edit?usp=sharing,Mariana Meireles,ReadMe files: how to make your project welcoming to others,"October 11, 2023",ols-8,Tooling for Collaboration,README, +56,https://docs.google.com/presentation/d/1aLaDBwH64PCRtCLIftVkjBYT60ifWuIV7Im2t8BXN8Q/edit?usp=sharing,Karin Lagesen,Contributing Guidelines and Codes of Conduct for Open Projects,"February 12, 2020",ols-1,Tooling for Collaboration,Code of Conduct,https://youtu.be/y9y8a3O4fjg?t=2605 +57,https://docs.google.com/presentation/d/196NOwvIx2A_cSOKE7YEyDvww7lehxBmef9O4B_FLodc/edit?usp=sharing,Lilly Winfree,Contributing Guidelines and Codes of Conduct for Open Projects,"September 24, 2020",ols-2,Tooling for Collaboration,Code of Conduct,https://youtu.be/aX40ntw0uIg?t=3747 +58,https://docs.google.com/presentation/d/e/2PACX-1vSohISYePu3i64JyoI3Lc_GRBTNuWT9x98uFd2HVI0zGQSODiNv03ZSGTcPZcm_cz38K-vhtRRzdhfI/pub?start=false&loop=false&delayms=3000,Malvika Sharan,Contributing Guidelines and Code of Conduct,"March 03, 2021",ols-3,Tooling for Collaboration,Code of Conduct,https://youtu.be/Enn2NGMGC2k?t=3066 +59,https://docs.google.com/presentation/d/1ko91U3CXbuFd3hiXRtrLxVtNcoMQgzvhAVeKId0dFZc/edit?usp=sharing,Emma Karoune,Contributing Guidelines and Code of Conduct,"October 06, 2021",ols-4,Tooling for Collaboration,Code of Conduct,https://youtu.be/kAxVZDI18RU?t=3329 +60,https://docs.google.com/presentation/d/1ko91U3CXbuFd3hiXRtrLxVtNcoMQgzvhAVeKId0dFZc/edit?usp=sharing,Sarah Stamps,Contributing Guidelines and Code of Conduct,"March 23, 2022",ols-5,Tooling for Collaboration,Code of Conduct,https://youtu.be/d0A2TaLyhlY?t=2455 +61,https://docs.google.com/presentation/d/1hN_aYQT_uL3CczvB-62MSlhPa8Opnukh/edit#slide=id.p2,Andres Sebastian Ayala Ruano,Contributing Guidelines and Code of Conduct,"October 12, 2022",ols-6,Tooling for Collaboration,Code of Conduct,https://youtu.be/M0szFcbGdBU?t=2571 +62,https://docs.google.com/presentation/d/1-Ns22S18_eP6VvEwMx6Mxo5cukFYVSG8W6kaZctyWpc/edit?usp=sharing,Andrea Sánchez Tapia,Code of Conduct,"March 22, 2023",ols-7,Tooling for Collaboration,Code of Conduct,https://youtu.be/DG3La_p22N0?t=3131 +63,https://docs.google.com/presentation/d/1E0HBEzzuO3VjNLwM3ThWLJ27R6h359j0DO4jwfcFkCw/edit#slide=id.g21280744133_2_56,Saskia Freytag,Designing and enforcing a Code of Conduct,"October 11, 2023",ols-8,Tooling for Collaboration,Code of Conduct, +64,https://docs.google.com/presentation/d/1qymN0F-kToQfFIPjXOrXe7lHPy_UB0Buew2kAI1WfWg/edit?usp=sharing,Malvika Sharan,Introduction to GitHub,"October 13, 2021",ols-4,Tooling for Collaboration,GitHub Introduction,https://youtu.be/lRW8mlpTw5M +65,https://docs.google.com/presentation/d/1qymN0F-kToQfFIPjXOrXe7lHPy_UB0Buew2kAI1WfWg/edit?usp=sharing,Malvika Sharan,Introduction to GitHub,"March 28, 2022",ols-5,Tooling for Collaboration,GitHub Introduction,https://youtu.be/90BOler9hqI +66,https://docs.google.com/presentation/d/1a14DBUdW2LOAtlNv181gZ_KTc_W_xAqy/edit#slide=id.p1,Patricia Herterich,Introduction to GitHub,"October 18, 2022",ols-6,Tooling for Collaboration,GitHub Introduction,https://youtu.be/7Oq81K27NmU?t=46 +67,https://docs.google.com/presentation/d/1qymN0F-kToQfFIPjXOrXe7lHPy_UB0Buew2kAI1WfWg/edit#slide=id.g6e56d02ad9_0_0,,Introduction to GitHub,"March 28, 2023",ols-7,Tooling for Collaboration,GitHub Introduction,https://youtu.be/hXRw33CbDJk +68,https://docs.google.com/presentation/d/e/2PACX-1vTBcMEhNCbU2KVuFaMonMCXFGH5xd8zs6FKkEC27lwbG2elPc22XrxjMesjkNZ_YH1-yKsHGuwIKedW/pub,Bérénice Batut,Introduction to GitHub,"October 17, 2023",ols-8,Tooling for Collaboration,GitHub Introduction, +69,https://docs.google.com/presentation/d/e/2PACX-1vRYkiKWXU3CKdmpKl3LRD4BS2nSk3QDYWCAl5FPhYDimkUhN0rrZmTUjzMbMzVQ6t-kW141xYFfmyZG/pub,Yo Yehudi,Creating a small website with GitHub,"October 17, 2023",ols-8,Tooling for Collaboration,GitHub Introduction, +70,,,Project Structure,"March 23, 2022",ols-5,Tooling for Collaboration,Setting up a project, +71,,,Project Structure,"March 22, 2023",ols-7,Tooling for Collaboration,Setting up a project, +72,https://docs.google.com/presentation/d/e/2PACX-1vT6Xn-rv8tA_YttEhJoO_aqOx36REJVZ9l44Orz69sm8y1bxuiC-HLj41-e7QAAw-drhPmucehO-Clv/pub,Malvika Sharan,Setting up a project,"October 11, 2023",ols-8,Tooling for Collaboration,Setting up a project, +73,https://drive.google.com/file/d/1w8AUnsbwSpqfEK0YxKmSZGIeIlEbppSN/view?usp=share_link,Gemma Turon,"Code style, testing","November 30, 2022",ols-6,Tooling for Collaboration,Good Coding Practices,https://youtu.be/n3JkOyt6bRM?t=271 +74,https://olscoding.netlify.app/,Yanina Bellini,Programming for science,"May 10, 2023",ols-7,Tooling for Collaboration,Good Coding Practices,https://youtu.be/hOiDzn4Iqp4?t=2920 +75,https://mgomezn.github.io/talk_openlifesci/,None,Good Coding Practices ,"November 29, 2023",ols-8,Tooling for Collaboration,Good Coding Practices,https://youtu.be/tRFSQ4w9udE?si=4cb6g92bua79xJLy&t=416 +76,,Gracielle Higino,Code-review,"November 30, 2022",ols-6,Tooling for Collaboration,Code Review,https://youtu.be/n3JkOyt6bRM?t=1911 +77,https://docs.google.com/presentation/d/1snmV5BMFIuTAs60-PcejRj0NUhpvswvb/edit?usp=sharing&ouid=113583685317579296794&rtpof=true&sd=true,Olaitan Awe,Writing reproducible code,"May 10, 2023",ols-7,Tooling for Collaboration,Code Review,https://youtu.be/hOiDzn4Iqp4?t=332 +78,https://docs.google.com/presentation/d/e/2PACX-1vTP-ZX_nWdX-xHEy8PNnm7yNmlxPVrsxFvfHuiGriyQoUBuX6l1qJNYe1K7UDAQbzuvRPfeMMKM-ISK/pub?start=false&loop=false&delayms=60000&slide=id.g2a014cc8695_0_580,Riva Quiroga,Code Review,"November 29, 2023",ols-8,Tooling for Collaboration,Code Review,https://youtu.be/tRFSQ4w9udE?si=4cb6g92bua79xJLy&t=1437 +79,,Ruth Nanjala,Package Managements,"November 29, 2023",ols-8,Tooling for Collaboration,Package Management,https://youtu.be/tRFSQ4w9udE?si=4cb6g92bua79xJLy&t=2890 +80,https://docs.google.com/presentation/d/1w_WWb7Mj7NgX4pLBejB4Vc_ofK7ZHOUYOT1MCeKVi20/edit?usp=sharing,Malvika Sharan,Welcome to OLS!,"January 29, 2020",ols-1,Open Science,Open Science Introduction,https://youtu.be/3-cvl7UfSTY?t=278 +81,https://docs.google.com/presentation/d/1eKRgozsGmJvjPELyP4KMgrgHchp7o58YowC5RkgLNd4/edit?usp=sharing,Yo Yehudi,Open Science,"April 04, 2023",ols-7,Open Science,Open Science Introduction,https://youtu.be/ViqeEI3J9dY?t=262 +82,https://docs.google.com/presentation/d/e/2PACX-1vTfp4FBmrsu0Hb5H-w2Howm2QNVbEaTQGVo9h-dQcgFNT-TN30Pm_S3kv6JARcdhPp1JkN0go_ulIGP/pub,Yo Yehudi,Open Science Introduction,"October 24, 2023",ols-8,Open Science,Open Science Introduction, +83,https://docs.google.com/presentation/d/1JJWt0OtVWTMHbouXOF0w1QJsxwv-rUXiqHmkEx-A5B8/edit?usp=sharing,Julieta Arancio,Open Science Hardware,"February 26, 2020",ols-1,Open Science,Open Hardware,https://youtu.be/hiLDGLfXa2s?t=1141 +84,,Julieta Arancio,"Open tools, for opening science","October 08, 2020",ols-2,Open Science,Open Hardware,https://www.youtube.com/watch?v=BtUNjoTr5eg +85,https://docs.google.com/presentation/d/1p9y7hBmz-ky38JsosaSYi2LmB1fPD0IyIB_BnLAidmo/edit?usp=sharing,Andre Maia Chagas,Open Source/Science Hardware,"March 17, 2021",ols-3,Open Science,Open Hardware,https://youtu.be/XkzCr3fiSCg?t=3593 +86,https://docs.google.com/presentation/d/1SJJjYujbAjRUgrjbT7ZSofqp4tgZ5eNf5wPMqHRfmn4/edit#slide=id.g175a0ec481e_1_88,Paz Bernaldo,Open science hardware,"October 25, 2022",ols-6,Open Science,Open Hardware,https://youtu.be/AggJQTgsaaU?t=3678 +87,https://docs.google.com/presentation/d/1ecLEm7aNPeswOCnpiQQE8rnSyl6Equce_6YAJrR2_oc/edit?usp=sharing,Andre Maia Chagas,Open Source Hardware,"May 02, 2023",ols-7,Open Science,Open Hardware,https://youtu.be/iAckka2c6yc?t=147 +88,https://docs.google.com/presentation/d/1aluBnA6hziHb0gHulR6PkkJTPsZMaXDN/edit?usp=sharing&ouid=118073970427420961369&rtpof=true&sd=true,None,Open Hardware,"December 06, 2023",ols-8,Open Science,Open Hardware,https://youtu.be/Xu9TgBXRVZw?si=Gldnku-8UJ6212Fb&t=2694 +89,https://ajstewartlang.github.io/talks/OLS_talk/assets/player/KeynoteDHTMLPlayer.html,Andrew Stewart,Open Software in Research,"February 26, 2020",ols-1,Open Science,Open Source Software,https://youtu.be/hiLDGLfXa2s?t=2239 +90,https://docs.google.com/presentation/d/1uZuqgoJp67uRB6t0LCZJ06V8YYyff9-iqrv6zfqtOhk,Aleksandra Nenadic,Open Source Software,"October 08, 2020",ols-2,Open Science,Open Source Software,https://youtu.be/fyz4gB4XPJk?t=1266 +91,https://drive.google.com/file/d/1LtG_gVhszVl13yohYuxTipaKnxV77cqP/view?usp=sharing,Fotis Psomopoulos,FAIR Research Software,"November 05, 2020",ols-2,Open Science,Open Source Software,https://youtu.be/ylqDx_ELfus?t=2848 +92,https://docs.google.com/presentation/d/19fZRMPzK2OrynrOdVzkq703j2fz6knAiFjn2JEPfmIQ/edit?usp=sharing,Helena Rasche,Open Source in Research,"March 17, 2021",ols-3,Open Science,Open Source Software,https://youtu.be/XkzCr3fiSCg?t=1190 +93,https://doi.org/10.6084/m9.figshare.14410751.v1,Neil Chue Hong,Good enough practices for FAIR software,"April 14, 2021",ols-3,Open Science,Open Source Software,https://youtu.be/j-rPaiojNFk?t=2915 +94,https://docs.google.com/presentation/d/1cfeNl3URWS-IOrG-gwfEzIsg1VN9JQepQhcP54xvAkY/edit?usp=sharing,Sam Van Stroud,Open Source in Research,"October 20, 2021",ols-4,Open Science,Open Source Software,https://youtu.be/kjhrrfF2fvM?t=4383 +95,https://github.com/Nikoleta-v3/talks/blob/master/talks/2021-11-17-Open-Life-Science/main.pdf,Nikoleta Glynatsi,Publishing & Citing Open Research Code,"November 17, 2021",ols-4,Open Science,Open Source Software,https://youtu.be/SfGHnCedkwY?t=3485 +96,https://doi.org/10.5281/zenodo.5783459,Stephan Druskat,Software citation with the Citation File Format,"December 15, 2021",ols-4,Open Science,Open Source Software,https://youtu.be/DbqsS1-ueqI?t=2997 +97,https://tinyurl.com/59754uzx,Andrew Stewart,Open Source Software in Research,"April 04, 2022",ols-5,Open Science,Open Source Software,https://youtu.be/yCCNZH9JS-0?t=1387 +98,,Stephan Druskat,Steps towards FAIRer and more citable software,"May 30, 2022",ols-5,Open Science,Open Source Software,https://youtu.be/rUusShaYC4o?t=2438 +99,https://2022-10-25-lpc-oss.netlify.app/#8,Luis Pedro Coelho,Open Science Software,"October 25, 2022",ols-6,Open Science,Open Source Software,https://youtu.be/AggJQTgsaaU?t=1288 +100,https://docs.google.com/presentation/d/12hqzyIdYqSKnFokcTT2i8QhO74vcx7OkluUdiRd_ah8/edit?usp=share_link,Hao Ye,Open Source Software ,"November 30, 2022",ols-6,Open Science,Open Source Software,https://youtu.be/n3JkOyt6bRM?t=2996 +101,https://docs.google.com/presentation/d/1HRxtMemWWYrBniYkW60twA3Fd0AuEDdNryGREagDypk/edit#slide=id.g21f04b7f88a_0_77,Michelle Barker,Open Source Software,"May 02, 2023",ols-7,Open Science,Open Source Software,https://youtu.be/iAckka2c6yc?t=884 +102,https://docs.google.com/presentation/d/1V0ns7MiBRlKWgJHq15Xy-q0HZOeJYdkKs0PMAMoKXn8/edit?usp=sharing,Leah Wasser,Open Source Drives Open Science - pyOpenSci,"May 10, 2023",ols-7,Open Science,Open Source Software,https://youtu.be/hOiDzn4Iqp4?t=1594 +103,https://docs.google.com/presentation/d/1mainogyd9OzOGA3BfKVQXIPbzCB08oaeyCUhz8gxTjc/edit#slide=id.g2a2d191dc2e_5_303,None,Open Source Software,"December 06, 2023",ols-8,Open Science,Open Source Software,https://youtu.be/Xu9TgBXRVZw?si=We1w4nwOMWsXqvzu&t=377 +104,https://docs.google.com/presentation/d/e/2PACX-1vTm51ExlLfv1L_oI59D_9EZlBWf1UbSXmHVAIutII9Cs8AnGqLkH9meXGiwBajn-r_u297hdV7MdWCL/pub?start=false&loop=false&delayms=3000,Lilly Winfree,Open Data,"February 26, 2020",ols-1,Open Science,Open Data,https://youtu.be/hiLDGLfXa2s?t=3848 +105,https://doi.org/10.6084/m9.figshare.13065308.v1,Paula Andrea Martinez,Open Data,"October 08, 2020",ols-2,Open Science,Open Data,https://youtu.be/fyz4gB4XPJk?t=2304 +106,https://docs.google.com/presentation/d/1ER_ZQ_Fe_PFWBPrP87dU6jRaPT2dlB4hCu-wGXJwnBA/edit?usp=sharing,Philippe Rocca-Serra,FAIR Data: Insights and perspectives,"November 05, 2020",ols-2,Open Science,Open Data,https://youtu.be/ylqDx_ELfus?t=268 +107,https://doi.org/10.5281/zenodo.4609017,Esther Plomp,Open Data,"March 17, 2021",ols-3,Open Science,Open Data,https://youtu.be/XkzCr3fiSCg?t=2182 +108,https://docs.google.com/presentation/d/1p-hNZTifBNHo_gbFPQlUW6YmLKIGH1jWJnWXIGoWQYs/edit#slide=id.p,Emma Anne Harris,FAIR data,"April 14, 2021",ols-3,Open Science,Open Data,https://youtu.be/j-rPaiojNFk?t=206 +109,https://doi.org/10.5281/zenodo.5582718,Sara El-Gebali,Research data management,"October 20, 2021",ols-4,Open Science,Open Data,https://youtu.be/kjhrrfF2fvM?t=261 +110,https://docs.google.com/presentation/d/19jspjhFN2kb9H3S-4UEBb5q9aZt22eUdDdxfWWbb6CI/edit?usp=sharing,Patricia Herterich,The future of Open Science? DMPs and FAIR data,"December 15, 2021",ols-4,Open Science,Open Data,https://youtu.be/DbqsS1-ueqI?t=204 +111,https://docs.google.com/presentation/d/e/2PACX-1vQ__5JVOhFNoKufqIPflvEfUE1Vuxi9Euj975yCI14nJfeeyansg1RpuIteyTtmlQCyfacWTwB_QZ3N/pub?start=false&loop=false&delayms=3000#slide=id.p,Renato Alves,Open Data,"April 04, 2022",ols-5,Open Science,Open Data,https://youtu.be/yCCNZH9JS-0?t=199 +112,https://docs.google.com/presentation/d/1UhSKnz0deqsgzEHYdJGfFlOEN64_BIZ2GRjY6fKk44Y/edit?usp=sharing,Lilly Winfree,Agile & Iterative Project Management Methods,"April 04, 2022",ols-5,Open Science,Open Data,https://youtu.be/yCCNZH9JS-0?t=2381 +113,https://docs.google.com/presentation/d/147I53rNPEMHqixXPDc6vt0Eg9O9mIPBQ/edit?usp=drive_web&ouid=113583685317579296794&rtpof=true,Sara Petti,Managing & developing research data (RDM),"October 25, 2022",ols-6,Open Science,Open Data,https://youtu.be/AggJQTgsaaU?t=346 +114,https://docs.google.com/presentation/d/1lwPYHKFaH221S-Y8T8tk1phJpk7fsPA64kn3TfaGWHQ/edit#slide=id.g7e28a7e96f_0_0,Dasapta Erwin Irawan,"Earthquakes, preprints and everything in between","November 22, 2022",ols-6,Open Science,Open Data,https://youtu.be/HKsK9CCcQYU?t=2195 +115,https://osf.io/w3v7j,Bethan Iley,Applying FAIR principles to (open) data management,"December 20, 2022",ols-6,Open Science,Open Data,https://youtu.be/I1Jks2PE0ME?t=581 +116,https://doi.org/10.5281/zenodo.7938759,Esther Plomp,Open Data,"May 17, 2023",ols-7,Open Science,Open Data,https://youtu.be/CzkkO4wO2eQ?t=145 +117,https://docs.google.com/presentation/d/1wiZuFoBXaoCIB92t9EcXtMRYXuFe5a2sg4R2E0Key5s/edit#slide=id.g2922b4986f7_0_744,Sarah Lippincott,"Prepare, curate, connect: amplifying your data’s impact through reuse","October 24, 2023",ols-8,Open Science,Open Data, +118,https://www.slideshare.net/gedankenstuecke/2020-0311openlifesciences,Bastian Greshake Tzovaras,Citizen science using your own personal data,"March 11, 2020",ols-1,Open Science,Open Engagement of Social Actors,https://youtu.be/HaQyv48sMPY?t=891 +119,https://zenodo.org/record/4651431,Georgia Aitkenhead,Participatory Citizen Science,"March 31, 2021",ols-3,Open Science,Open Engagement of Social Actors,https://youtu.be/Vizk7fni5Eo?t=3792 +120,,Yvan Le Bras,"Open / citizen sience, the only way to ","December 15, 2021",ols-4,Open Science,Open Engagement of Social Actors,https://youtu.be/DbqsS1-ueqI?t=1705 +121,,Gilbert Beyamba,"Public engagement: Open Infrastructure, Citizen Science, Science Communication","May 30, 2022",ols-5,Open Science,Open Engagement of Social Actors,https://youtu.be/rUusShaYC4o?t=466 +122,https://www.canva.com/design/DAFR7veE-rw/C_LmTG_0lzCxAYcSM-QZhQ/view?utm_content=DAFR7veE-rw&utm_campaign=designshare&utm_medium=link2&utm_source=sharebutton,Marco Anteghini,"Public engagement: Open Infrastructure, Citizen Science, Science Communication","December 20, 2022",ols-6,Open Science,Open Engagement of Social Actors,https://youtu.be/I1Jks2PE0ME?t=2115 +123,,Umar Farouk Ahmad,Open engagement of social actors,"April 04, 2023",ols-7,Open Science,Open Engagement of Social Actors,https://youtu.be/ViqeEI3J9dY?t=3046 +124,https://www.dropbox.com/scl/fi/gp2fy0bxspwmnbs8o0b1k/AOL_OLS.pdf?rlkey=s997hicfjfl54x1g05fipn5h7&dl=0 ,None,Open Engagement of Social Actors,"November 21, 2023",ols-8,Open Science,Open Engagement of Social Actors,https://youtu.be/NxWpBicnqC0?si=PqoCZ1lNQLwo5n7s&t=205 +125,https://docs.google.com/presentation/d/1T3Z51l8XIRtUQtSooZvUZzH60rFS-n73bDQwGwH639Y/edit?usp=sharing,Caleb Kibet,Open Education and Training,"March 11, 2020",ols-1,Open Science,Open Educational Resources,https://youtu.be/HaQyv48sMPY?t=1879 +126,,Laura Ación,Open Education and Training - MetaDocencia Case Study,"October 22, 2020",ols-2,Open Science,Open Educational Resources,https://youtu.be/0BkHqudkjWg?t=929 +127,https://f1000research.com/slides/9-1294,Melissa Burke,Making training materials FAIR in 10 steps,"November 05, 2020",ols-2,Open Science,Open Educational Resources,https://youtu.be/ylqDx_ELfus?t=1108 +128,https://docs.google.com/presentation/d/1MPxp0Y3qN6H35QNMrtcXOXkRhtx6Tbo89-GiBsrBkaA/edit#slide=id.g7e28a7e96f_0_60,Alexandra Holinski,FAIR training,"April 14, 2021",ols-3,Open Science,Open Educational Resources,https://youtu.be/j-rPaiojNFk?t=1380 +129,https://docs.google.com/presentation/d/1AaZETO7piGCfhJP9_UoQGFOWKD5LA5Pg7X0r7rlfkts/edit?usp=sharing,Bérénice Batut,"Usable, comprehensive, accessible, FAIR and empowering training - The case of the Galaxy Training Network","November 17, 2021",ols-4,Open Science,Open Educational Resources,https://youtu.be/SfGHnCedkwY?t=205 +130,https://docs.google.com/presentation/d/18g_OfcwiUmX-vZnshM0mfs8xutOkeF3iA-RSaTpJs0Y/edit#slide=id.g7e28a7e96f_0_0,Piraveen Gopalasingam,"Open access, Preprints","May 02, 2022",ols-5,Open Science,Open Educational Resources,https://youtu.be/TqzM6cAeBoI?t=3508 +131,https://docs.google.com/presentation/d/1owHgPuJSTo4Y-flOlDI7FH4pPzSM2KHsiU9sGHk4JPs/edit?usp=sharing,Toby Hodges,Open Educational Resources,"November 21, 2023",ols-8,Open Science,Open Educational Resources,https://youtu.be/NxWpBicnqC0?si=kQOh0FUTS64sRJRi&t=1978 +132,https://f1000-my.sharepoint.com/:p:/g/personal/demitra_ellina_f1000_online/Ed5_RBaVrrlGmZzicLlHESsBzCy2eW52SzoNTE3VBkzEDQ?e=tLWn2E,Demitra Ellina,Pre-print and open review,"March 11, 2020",ols-1,Open Science,Open Access Publication,https://youtu.be/HaQyv48sMPY?t=2895 +133,https://bit.ly/OLS-AfricArXiv,Umar Ahmad,Preprint in the Context of Open Science,"October 22, 2020",ols-2,Open Science,Open Access Publication,https://youtu.be/0BkHqudkjWg?t=2064 +134,https://docs.google.com/presentation/d/18g_OfcwiUmX-vZnshM0mfs8xutOkeF3iA-RSaTpJs0Y/edit#slide=id.g7e28a7e96f_0_0,Iratxe Puebla,Let's talk #preprint,"March 31, 2021",ols-3,Open Science,Open Access Publication,https://youtu.be/Vizk7fni5Eo?t=710 +135,https://docs.google.com/presentation/d/1ThmPqDzvdNvThXK0Q0hlCiRX6rG3Ha5IDbvfyy4YuPw/edit#slide=id.g7e28a7e96f_0_146,Marcel LaFlamme,Getting started with preprints,"November 17, 2021",ols-4,Open Science,Open Access Publication,https://youtu.be/SfGHnCedkwY?t=1862 +136,,Alex Mendonça,Preprints,"May 02, 2022",ols-5,Open Science,Open Access Publication,https://youtu.be/TqzM6cAeBoI?t=209 +137,https://docs.google.com/presentation/d/14wVZJauH4wT4GBJwz4gCA2AeV6kTPTRZRW1ZMhnJ2Yk/edit,Mallory Freeberg,"FAIR Principles +Promoting openness in science","November 22, 2022",ols-6,Open Science,Open Access Publication,https://youtu.be/HKsK9CCcQYU?t=198 +138,https://doi.org/10.5281/zenodo.7946506,Godwyns Onwuchekwa,Brief overview of Open access publication,"May 17, 2023",ols-7,Open Science,Open Access Publication,https://youtu.be/CzkkO4wO2eQ?t=1341 +139,https://docs.google.com/presentation/d/1_1Kn835pvhujGH6vQCyjUNrK-5R7BoTy/edit?usp=drive_link&ouid=102593070323036946386&rtpof=true&sd=true ,Scott Edmunds,Open Access Publication,"November 21, 2023",ols-8,Open Science,Open Access Publication,https://youtu.be/NxWpBicnqC0?si=sPc3fbZXk5l4zFu8&t=3733 +140,https://docs.google.com/presentation/d/13d3BgND53cviFRnuQpmWk5UtMYtpSDqpUu9jq4ykNrM/edit?usp=sharing,Anita Bröllochs,Open Protocols,"March 11, 2020",ols-1,Open Science,Open Evaluation,https://youtu.be/HaQyv48sMPY?t=3708 +141,https://docs.google.com/presentation/d/1_8Fp5DKh_XXwj34DwR-dzTvUCk1c0ynhy7MvmaHFFoA/edit?usp=sharing,Emma Ganley,Open Protocols,"October 22, 2020",ols-2,Open Science,Open Evaluation,https://youtu.be/0BkHqudkjWg?t=3557 +142,https://docs.google.com/presentation/d/1lrodEXOSuh_01-EuLOi5hyZmDJ7xJBQaQ4iF3Ylvlyo/edit?usp=sharing,Lenny Teytelman,Open Protocols,"March 31, 2021",ols-3,Open Science,Open Evaluation,https://youtu.be/Vizk7fni5Eo?t=2287 +143,https://drive.google.com/file/d/1BQ641IWIKjgC33ltqdAkEaxUkGljh3eL/view?usp=share_link,Olexandr Konovalov,Open Evaluation in JOSS - Journal of Open Source Software,"April 04, 2023",ols-7,Open Science,Open Evaluation,https://youtu.be/ViqeEI3J9dY?t=962 +144,https://docs.google.com/presentation/d/1rwio6fCGD-Z1a3mAulE5r5bhQwPCpkNtQLm7jBM5u84/edit#slide=id.g2148fd0666b_0_292,Monica Granados,Why open reviews?,"October 24, 2023",ols-8,Open Science,Open Evaluation, +145,,Bastian Greshake Tzovaras,Citizen Science,"October 22, 2020",ols-2,Open Science,Openness to Diversity of Knowledge,https://youtu.be/HaQyv48sMPY?t=860 +146,https://docs.google.com/presentation/d/1i9ZS2bw_zefmjYBVTZSieyp4xI_T9PrH-pIiPeP3wY0/edit#slide=id.g21280744133_2_33 ,Batool Almarzouq,Openness to diversity of knowledge,"May 02, 2023",ols-7,Open Science,Openness to Diversity of Knowledge,https://youtu.be/iAckka2c6yc?t=2577 +147,https://drive.google.com/file/d/1wBojj4JRtJ8JY55PRwpAKcMrqSuLZXNd/view?usp=sharing,Miguel Silan,How do we learn from each other in global large-scale collaborative research networks?,"October 24, 2023",ols-8,Open Science,Openness to Diversity of Knowledge, +148,https://docs.google.com/presentation/d/18r-Zpec769BwP4TUAfG_ChGsOrdnU7Ber9ofjbLdwS8/edit?usp=sharing,Joy Owango,Open training in low and middle income settings ,"May 02, 2022",ols-5,Open Science,Open Science Infrastructures,https://youtu.be/TqzM6cAeBoI?t=2309 +149,https://docs.google.com/presentation/d/1c5r83gUCdg_2_sS5LAB-7NLQccYfeN6OmkUSj_WFwGs/edit?usp=sharing,Owen Iyoha,Nigerian Open Science Highlights,"April 04, 2023",ols-7,Open Science,Open Science Infrastructures,https://youtu.be/ViqeEI3J9dY?t=1753 +150,https://docs.google.com/presentation/d/1LemOmMyiAbL9_gjwPdxWE83C92WTfBRTL71tyPA-gcM/edit?usp=sharing,None,Open Science Infrastructures,"December 06, 2023",ols-8,Open Science,Open Science Infrastructures,https://youtu.be/Xu9TgBXRVZw?si=pHiUfXcq_uI7I5JB&t=1411 +151,https://docs.google.com/presentation/d/1C_RurOY1W__HLRbPTTzmdYT-qdTpuF2qi7leL4Hzdok/edit#slide=id.g7e28a7e96f_0_0,Yo Yehudi,Agile and iterative project management methods,"February 26, 2020",ols-1,"Project, Community & Personal Management",Agile & Iteractive Project Management,https://youtu.be/hiLDGLfXa2s?t=165 +152,https://docs.google.com/presentation/d/1CWnHXZHFDYFTqE2KKgZ8R5i_46XqAqnjy12gYSDESxk/edit?usp=sharing,Renato Alves,Agile and iterative project management methods,"October 08, 2020",ols-2,"Project, Community & Personal Management",Agile & Iteractive Project Management,https://youtu.be/fyz4gB4XPJk?t=410 +153,https://docs.google.com/presentation/d/1MQZS-Nh_mlUJ2JMxzAHAbqP8q1ny_Ktxx0GX0vaj2a4/edit#slide=id.g7e28a7e96f_0_0,Renato Alves,Agile and iterative project management methods,"March 17, 2021",ols-3,"Project, Community & Personal Management",Agile & Iteractive Project Management,https://youtu.be/XkzCr3fiSCg?t=207 +154,https://docs.google.com/presentation/d/1I_mQbmVHC1HHzqwyb8UvE3OYt4dALs4V/edit?usp=sharing&ouid=113525991197089671289&rtpof=true&sd=true,Nick Barlow,Agile & Iterative Project Management Methods,"October 20, 2021",ols-4,"Project, Community & Personal Management",Agile & Iteractive Project Management,https://youtu.be/kjhrrfF2fvM?t=2548 +155,https://docs.google.com/presentation/d/1UhSKnz0deqsgzEHYdJGfFlOEN64_BIZ2GRjY6fKk44Y/edit?usp=sharing,,Using project management skills during development stage,"April 04, 2022",ols-5,"Project, Community & Personal Management",Agile & Iteractive Project Management,https://youtu.be/yCCNZH9JS-0?t=2381 +156,https://docs.google.com/presentation/d/12pcWhXgmYwuAXo_h--lIFEqGgJoGmXcprguTKg8obLA/edit#slide=id.g6e56d0296c_0_0,Alex Chan,Agile & Iterative Project Management,"October 25, 2022",ols-6,"Project, Community & Personal Management",Agile & Iteractive Project Management,https://youtu.be/AggJQTgsaaU?t=2699 +157,https://docs.google.com/presentation/d/1yaLMBcU1awyFZpeOQC2_QYDwlN-Z_dJ2GXNYDAm2jA8/edit?usp=sharing,Alex Chan,Inclusion can't be an afterthought,"March 25, 2020",ols-1,"Project, Community & Personal Management","Equity, Diversity and Inclusion (EDI)",https://youtu.be/81mG4L7S3Oc?t=749 +158,https://alexwlchan.net/2020/03/inclusion-cant-be-an-afterthought/,Alex Chan,Inclusion not an afterthought,"December 03, 2020",ols-2,"Project, Community & Personal Management","Equity, Diversity and Inclusion (EDI)",https://youtu.be/Tl8MOTVznXs?t=742 +159,https://drive.google.com/file/d/1Xofpeq6TUGKVhJRounufGnW62q_lewP6/view?usp=sharing,Rowland Mosbergen,Inclusion is not an afterthought or (Unconscious bias: Does it really matter?),"May 12, 2021",ols-3,"Project, Community & Personal Management","Equity, Diversity and Inclusion (EDI)",https://youtu.be/GdZ3kfKP43A?t=438 +160,https://drive.google.com/file/d/1Xofpeq6TUGKVhJRounufGnW62q_lewP6/view?usp=sharing,,Inclusion is not an afterthought or (Unconscious bias: Does it really matter?),"December 01, 2021",ols-4,"Project, Community & Personal Management","Equity, Diversity and Inclusion (EDI)",https://youtu.be/tT-hmAWUFKI?t=965 +161,https://drive.google.com/file/d/1Xofpeq6TUGKVhJRounufGnW62q_lewP6/view?usp=sharing,Rowland Mosbergen,Inclusion is not an afterthought or (Unconscious bias: Does it really matter?),"May 18, 2022",ols-5,"Project, Community & Personal Management","Equity, Diversity and Inclusion (EDI)",https://youtu.be/WH9Z3lyw9ik?t=433 +162,https://docs.google.com/presentation/d/1Kf6Xw0pZr34JAYp1D48PdLxZKMfI2O_NLZ2SHyrMrl0/edit?usp=sharing,Piraveen Gopalasingam,Diversity and Inclusion,"December 07, 2022",ols-6,"Project, Community & Personal Management","Equity, Diversity and Inclusion (EDI)",https://youtu.be/M3fN65m00PU?t=33 +163,https://drive.google.com/open?id=1ipIUc1t6ogOpyK9gU_PPgD-UvW0Gs73pMIAdCLOG72Y,Malvika Sharan,Mountain of Engagement & Community Interactions,"March 25, 2020",ols-1,"Project, Community & Personal Management",Mountain of Engagement,https://youtu.be/81mG4L7S3Oc?t=2264 +164,https://docs.google.com/presentation/d/1NldyVwPU-_3lLCd8sZqWNeD3kKmF9VspTDzs58iKCk0/edit?usp=sharing,Tania Allard,Community interactions and mountain of engagements,"December 03, 2020",ols-2,"Project, Community & Personal Management",Mountain of Engagement,https://youtu.be/Tl8MOTVznXs?t=2322 +165,https://docs.google.com/presentation/d/1-yxiApKB96HIeyLGl7m7uyNjcHW74VP-XV457B-Euw4/edit#slide=id.g459038e743_0_73,Emmy Tsang,Mountain of Engagement,"May 12, 2021",ols-3,"Project, Community & Personal Management",Mountain of Engagement,https://youtu.be/GdZ3kfKP43A?t=3725 +166,https://docs.google.com/presentation/d/1-yxiApKB96HIeyLGl7m7uyNjcHW74VP-XV457B-Euw4/edit#slide=id.g459038e743_0_73,Chad Sansing,Mountain of Engagement,"November 03, 2021",ols-4,"Project, Community & Personal Management",Mountain of Engagement,https://youtu.be/Mu5Dq6KAMqA?t=1715 +167,https://docs.google.com/presentation/d/1n_UBrrMoHcfdqtFIg0sDcA0H3yojsHMwbW8P38_W9-s/edit?usp=sharing,Chad Sansing,Mountain of Engagement,"April 20, 2022",ols-5,"Project, Community & Personal Management",Mountain of Engagement,https://youtu.be/X7RbljtdgAQ?t=146 +168,https://docs.google.com/presentation/d/1ZmgEnKaED_4Nc9H_UhXC1G3J61qOcjAcuN7Un_RxxWo/edit#slide=id.gf6411d1bc9_1_1,Chad Sansing,Mountain of Engagement,"November 09, 2022",ols-6,"Project, Community & Personal Management",Mountain of Engagement,https://youtu.be/6ZlrGVxjd5Q?t=217 +169,https://docs.google.com/presentation/d/1LBD99tpqT2GURtx6D4J8fl-Evjl9zxG43sj8GQlWGWc/edit#slide=id.p,Zannah Marsh,The Mountain of Engagement,"April 19, 2023",ols-7,"Project, Community & Personal Management",Mountain of Engagement,https://youtu.be/ycMEiZXmHp8?t=247 +170,https://docs.google.com/presentation/d/1h0XAN45QdYZox2aWPi3VoYR-rpBKp09OA4-LQrFu00o/edit,Stefanie Butland,"Mountain of Engagement +","November 08, 2023",ols-8,"Project, Community & Personal Management",Mountain of Engagement, +171,https://docs.google.com/presentation/d/1-rdQipVmJ5lWelQ1oEbi86EbFwTpDh5TLeJ2TAg-oo4/edit?usp=sharing,Kirstie Whitaker,Using Personas and Pathways to Build Community,"March 25, 2020",ols-1,"Project, Community & Personal Management",Personas & Pathways,https://youtu.be/81mG4L7S3Oc?t=2980 +172,https://docs.google.com/presentation/d/1zAjdIylwTfavFDhPDB9-ykmW_DB-zUnpFjJ7tiNexcw/edit,Benjamin Krikler,Using Personas and Pathways to Build Community,"December 03, 2020",ols-2,"Project, Community & Personal Management",Personas & Pathways,https://youtu.be/Tl8MOTVznXs?t=4051 +173,https://docs.google.com/presentation/d/e/2PACX-1vQBX5k9RiqQdh9Vjt4O07dUVKku4qI8UyE7Bhy9i0iJpEJETq4KbHeFhHmbv1IM5I0Z1qK-NQLlqNfX/pub?start=false&loop=false&delayms=3000,Anelda van der Walt,Personas & Pathways,"May 12, 2021",ols-3,"Project, Community & Personal Management",Personas & Pathways,https://youtu.be/GdZ3kfKP43A?t=2263 +174,https://docs.google.com/presentation/d/e/2PACX-1vQBX5k9RiqQdh9Vjt4O07dUVKku4qI8UyE7Bhy9i0iJpEJETq4KbHeFhHmbv1IM5I0Z1qK-NQLlqNfX/pub?start=false&loop=false&delayms=3000,Batool Almarzouq,Using Personas and Pathways to Build Community,"November 03, 2021",ols-4,"Project, Community & Personal Management",Personas & Pathways,https://youtu.be/Mu5Dq6KAMqA?t=199 +175,https://docs.google.com/presentation/d/1tYKBiCJdpXmTwwinsk4gF8eb9LIteJWnxEOfZOJgZbo/edit?usp=sharing,Anelda van der Walt,Designing & empowering for inclusivity: Personas & Pathways,"April 20, 2022",ols-5,"Project, Community & Personal Management",Personas & Pathways,https://youtu.be/X7RbljtdgAQ?t=1402 +176,https://docs.google.com/presentation/d/1JmO4S1XVnsVUg2HCKHeoGHhWAF_Gbz8Vmd9mVwtFR_k/edit?usp=sharing,Meag Doherty,Using Personas and Pathways to Build Community,"April 19, 2023",ols-7,"Project, Community & Personal Management",Personas & Pathways,https://youtu.be/ycMEiZXmHp8?t=2341 +177,,Stephane Fadanka,Personas and Pathways,"November 08, 2023",ols-8,"Project, Community & Personal Management",Personas & Pathways, +178,https://drive.google.com/open?id=18_gZqCMGDg2VvNOYM17k4vU9tcpXX7KlqKoXlCT1VkU,Yo Yehudi,Personal Ecology and Self Care ,"April 01, 2020",ols-1,"Project, Community & Personal Management",Personal Ecology,https://youtu.be/un4lsSMdAB0?t=3299 +179,https://docs.google.com/presentation/d/e/2PACX-1vSyGYllxLypVdHxfc7wTPQTFshsGpwDxXTgxlQWm19Zd959-GiD098DMOdcW0K0KGYyLefyPrdhFeHF/pub?start=false&loop=false&delayms=3000#slide=id.p,,Personal Ecology and Self Care,"October 29, 2020",ols-2,"Project, Community & Personal Management",Personal Ecology, +180,https://docs.google.com/presentation/d/1lL8XQlP_lpqEbjGOhnivXq9oiAgVNCq164qntp-2Wp4/edit#slide=id.g70ef43ea53_0_132,Emmy Tsang,Personal Ecology and Self Care,"April 07, 2021",ols-3,"Project, Community & Personal Management",Personal Ecology, +181,https://docs.google.com/presentation/d/1lL8XQlP_lpqEbjGOhnivXq9oiAgVNCq164qntp-2Wp4/edit#slide=id.g70ef43ea53_0_132,Malvika Sharan,Personal Ecology and Self Care,"December 08, 2021",ols-4,"Project, Community & Personal Management",Personal Ecology,https://youtu.be/94FySX0WwPM?t=154 +182,https://docs.google.com/presentation/d/1lL8XQlP_lpqEbjGOhnivXq9oiAgVNCq164qntp-2Wp4/edit#slide=id.g70ef43ea53_0_132,,Personal Ecology and Self Care,"May 23, 2022",ols-5,"Project, Community & Personal Management",Personal Ecology, +183,https://drive.google.com/file/d/1wtX0_5ZMO03dsoFliWyWSgbnTCkjpjY2/view?usp=share_link,Wendy Ingram,Personal Ecology and Self Care,"December 13, 2022",ols-6,"Project, Community & Personal Management",Personal Ecology, +184,https://docs.google.com/presentation/d/1LBD99tpqT2GURtx6D4J8fl-Evjl9zxG43sj8GQlWGWc/edit#slide=id.p,"Malvika Sharan, Mayya Sundukova",Personal Ecology and Self Care,"May 23, 2023",ols-7,"Project, Community & Personal Management",Personal Ecology,https://youtu.be/4KEakWZjJJA?t=21 +185,,,Personal Ecology and Self Care,"December 12, 2023",ols-8,"Project, Community & Personal Management",Personal Ecology, +186,,Sara Villa,Personal Ecology and Self Care,"December 14, 2023",ols-8,"Project, Community & Personal Management",Personal Ecology, +187,https://docs.google.com/presentation/d/1-eaxorHL76DGMjcpmTzVDqcO-4Wz-W4VBoOtJa2py3U/edit?usp=sharing,Malvika Sharan,Ally Skills,"April 01, 2020",ols-1,"Project, Community & Personal Management",Ally Skills for Open Leaders,https://youtu.be/un4lsSMdAB0?t=3851 +188,https://docs.google.com/presentation/d/1aIdwn5Jc1OM5gW9h6GW69ZIDNA7W3s9806-i1gzhNp8/edit?usp=sharing,,Ally skills - Optional,"December 01, 2021",ols-4,"Project, Community & Personal Management",Ally Skills for Open Leaders,https://youtu.be/tT-hmAWUFKI?t=2126 +189,https://docs.google.com/presentation/d/1aIdwn5Jc1OM5gW9h6GW69ZIDNA7W3s9806-i1gzhNp8/edit?usp=sharing,,Ally skills - Optional,"May 18, 2022",ols-5,"Project, Community & Personal Management",Ally Skills for Open Leaders,https://youtu.be/WH9Z3lyw9ik?t=2263 +190,,"Yo Yehudi, Ismael Kherroubi Garcia, Paz Bernaldo",Ally skills,"December 07, 2022",ols-6,"Project, Community & Personal Management",Ally Skills for Open Leaders, +191,https://docs.google.com/presentation/d/1s0uV2klFu8RyTCfpWIqL0lUjYlk6u_vx92v48nk-TU8/edit#slide=id.g6e991a6896_0_209,Bérénice Batut,Welcoming new contributions to your project,"May 12, 2021",ols-3,"Project, Community & Personal Management",Community Interactions,https://youtu.be/GdZ3kfKP43A?t=3927 +192,https://docs.google.com/presentation/d/1z8rPZbaxJCQaRvNMhy72sfq6xJcf9RSturrPQtugLGU/edit#slide=id.g6e991a6896_0_209,Yo Yehudi,Community interactions,"May 12, 2021",ols-3,"Project, Community & Personal Management",Community Interactions, +193,https://docs.google.com/presentation/d/1s0uV2klFu8RyTCfpWIqL0lUjYlk6u_vx92v48nk-TU8/edit#slide=id.g6e991a6896_0_209,Anna e só,Welcoming new contributors + Thinking about community interactions,"November 03, 2021",ols-4,"Project, Community & Personal Management",Community Interactions,https://youtu.be/Mu5Dq6KAMqA?t=2752 +194,https://docs.google.com/presentation/d/1kTyCM574JDxFdXqhqKFWPZnCvI2FUFdtCTq6Lhpx7Nw,Yo Yehudi,Welcoming New Contributors on Your Project,"April 20, 2022",ols-5,"Project, Community & Personal Management",Community Interactions,https://youtu.be/X7RbljtdgAQ?t=2971 +195,https://docs.google.com/presentation/d/1p_r-mgcOWJD34Tc4V_dgkksmoPjUsILHecSdQuxwyQE/edit?usp=sharing,Jeffrey Warren,Hardware and inclusive structures for collaborative work,"November 09, 2022",ols-6,"Project, Community & Personal Management",Community Interactions,https://youtu.be/6ZlrGVxjd5Q?t=3117 +196,"https://www.canva.com/design/DAFzgYpRlK0/mZMFILlfyqntsOZMw81zcg/edit?utm_content=DAFzgYpRlK0&utm_campaign=designshare&utm_medium=link2&utm_source=sharebutton +",None,Community Interaction ,"November 08, 2023",ols-8,"Project, Community & Personal Management",Community Interactions, +197,https://docs.google.com/presentation/d/1_0LMMqMrcDh9IfGOv45jXNkxPku3mdehcb51QjVaTCI/present,Melissa Black,"Personas, community design for inclusivity","November 09, 2022",ols-6,"Project, Community & Personal Management",Community Design for Inclusivity,https://youtu.be/6ZlrGVxjd5Q?t=1998 +198,https://docs.google.com/presentation/d/13FfUMZ-_jd1bUNyVXG_Rwk51GLOp8rsFHRMCRpXebBE/edit?usp=sharing,Fotis Psomopoulos,Leadership in Academia,"April 01, 2020",ols-1,Open Leadership,Open Leadership in Practice,https://youtu.be/un4lsSMdAB0?t=246 +199,https://docs.google.com/presentation/d/1Cx6XAxZMt3jlU8O8DM8fCYemjmzgHUd6Sx8-MI3kIz0/edit?usp=sharing,Beth Duckles,Becoming a Post Academic ,"April 01, 2020",ols-1,Open Leadership,Open Leadership in Practice,https://youtu.be/un4lsSMdAB0?t=1433 +200,,Jason Williams,Leadership in training and education,"April 01, 2020",ols-1,Open Leadership,Open Leadership in Practice,https://youtu.be/un4lsSMdAB0?t=2256 +201,https://docs.google.com/presentation/d/1jeTk_PzsWpaR4DRmBrbrDGol2_drPEizp26o4d8jnnA/edit?usp=sharing,Rachael Ainsworth,Community building,"November 19, 2020",ols-2,Open Leadership,Open Leadership in Practice,https://youtu.be/hS-6GE0X2UY?t=149 +202,https://docs.google.com/presentation/d/1RsvcKd_5uW-TtawLAOw6N95gOLO6MinN0I94dUIII8s/edit,Natasha Wood,Navigating a career through academia and industry/start-up,"November 19, 2020",ols-2,Open Leadership,Open Leadership in Practice,https://youtu.be/hS-6GE0X2UY?t=917 +203,,Andrew Stewart,Academia,"November 19, 2020",ols-2,Open Leadership,Open Leadership in Practice,https://youtu.be/hS-6GE0X2UY?t=1495 +204,https://drive.google.com/file/d/1i1g9pxmkW8gr4f3S380NBJ6-k8GGVnrx/view?usp=sharing,Ekin Bolukbasi,"Data Challenges Manager, Wellcome","November 19, 2020",ols-2,Open Leadership,Open Leadership in Practice,https://youtu.be/hS-6GE0X2UY?t=2333 +205,https://docs.google.com/presentation/d/1Sac0MqvkmgK4vWSDrdiEkEWUdgyznySX45WDpV-XkyQ/edit?usp=sharing,David Selassie Opoku,Social entrepreneurship,"November 19, 2020",ols-2,Open Leadership,Open Leadership in Practice,https://youtu.be/hS-6GE0X2UY?t=3016 +206,,David Selassie Opoku,Social entrepreneurship,"April 28, 2021",ols-3,Open Leadership,Open Leadership in Practice,https://youtu.be/EMVGOapd0M4?t=146 +207,,Thomas Mboa,Open Lab and Makers movement,"April 28, 2021",ols-3,Open Leadership,Open Leadership in Practice,https://youtu.be/EMVGOapd0M4?t=888 +208,,Zulidyana Rusnalasari,Journal and public relations,"April 28, 2021",ols-3,Open Leadership,Open Leadership in Practice,https://youtu.be/EMVGOapd0M4?t=1595 +209,,Natalie Banner,Talking about data in trustworthy ways,"April 28, 2021",ols-3,Open Leadership,Open Leadership in Practice,https://youtu.be/EMVGOapd0M4?t=2951 +210,,Manuel Corpas,"Post-academia career path, Social entrepreneurship","November 10, 2021",ols-4,Open Leadership,Open Leadership in Practice, +211,,,"Academic leadership, group or project leaders","November 10, 2021",ols-4,Open Leadership,Open Leadership in Practice, +212,,,"Community building, Science Communication","November 10, 2021",ols-4,Open Leadership,Open Leadership in Practice, +213,,Aki MacFarlane,"Policymakers, funders, meta-researchers","November 10, 2021",ols-4,Open Leadership,Open Leadership in Practice, +214,,Mayya Sundukova,"Academic leadership, group or project leaders","April 25, 2022",ols-5,Open Leadership,Open Leadership in Practice,https://youtu.be/xIYmPhYsqrE?t=215 +215,,Jason Williams,"Post-academia career path, Social entrepreneurship","April 25, 2022",ols-5,Open Leadership,Open Leadership in Practice,https://youtu.be/xIYmPhYsqrE?t=2420 +216,,Melissa Weber Mendonça,"Post-academia career path, Social entrepreneurship","April 25, 2022",ols-5,Open Leadership,Open Leadership in Practice,https://youtu.be/xIYmPhYsqrE?t=3512 +217,,Angela Okune,Open Leadership in Practice,"April 25, 2022",ols-5,Open Leadership,Open Leadership in Practice, +218,https://docs.google.com/presentation/d/1a9OlvL9AY8EMbZm3JPg6dESfbqIdVudpA1IbnznzG2M/edit#slide=id.g7e28a7e96f_0_0,Elisee Jafsia,"Academic leadership, group or project leaders","November 15, 2022",ols-6,Open Leadership,Open Leadership in Practice,https://youtu.be/5fTXmHIKaL4?t=149 +219,https://docs.google.com/presentation/d/1MzbVKP8zcKC-SRJlpXUwFOHxl1OxssZO_lq4sKghzLo/edit?usp=sharing,Daniela Duca,Open secrets to finding your path,"November 15, 2022",ols-6,Open Leadership,Open Leadership in Practice,https://youtu.be/5fTXmHIKaL4?t=1813 +220,,Olya Vvedenskaya,Post Academia Career Path & Social Entrepreneurship,"November 15, 2022",ols-6,Open Leadership,Open Leadership in Practice,https://youtu.be/5fTXmHIKaL4?t=3370 +221,,Chris Hartgerink,Social enterprise,"April 25, 2023",ols-7,Open Leadership,Open Leadership in Practice,https://youtu.be/8xfQrbnm_Io?t=221 +222,https://docs.google.com/presentation/d/1DvXK_F28DRRTQWjTSx1JpBzcH-YP6EIL0_JszOvmn9U/edit?usp=sharing,Anshu Bharadwaj,Open Science and its impact on global science and community,"April 25, 2023",ols-7,Open Leadership,Open Leadership in Practice,https://youtu.be/8xfQrbnm_Io?t=1185 +223,,Pragya Chaube,"Policymakers, funders, meta-researchers","April 25, 2023",ols-7,Open Leadership,Open Leadership in Practice,https://youtu.be/8xfQrbnm_Io?t=2799 +224,https://docs.google.com/presentation/d/e/2PACX-1vTGvkY_nR0q7jpeq03zeusawgIEZP5BIA0NZM-I85OoCGuJkxef8CJuOuoyO7NMfifXcX3MN4a7PCCX/pub,,Introduction to Open Leadership in Practice,"November 14, 2023",ols-8,Open Leadership,Open Leadership in Practice, +225,,Gemma Turon,Open Leadership in Practice,"November 14, 2023",ols-8,Open Leadership,Open Leadership in Practice, +226,,Neema Iyer,Open Leadership in Practice,"November 14, 2023",ols-8,Open Leadership,Open Leadership in Practice, +227,,Yo Yehudi,Open Leadership in Practice,"November 14, 2023",ols-8,Open Leadership,Open Leadership in Practice, +228,https://docs.google.com/presentation/d/e/2PACX-1vQ5k5Bw3DOSu4asYY2qnHZQSyQqaeqxFcqzUV6oxeBdHlopJ7OZQ-YEG4h3Z_kn-kUyccY8qNdXd69k/pub,Yo Yehudi,GitHub for Collaboration,"October 17, 2023",ols-8,Not sorted,Not tagged, +229,https://docs.google.com/presentation/d/e/2PACX-1vTCjL3-TcltgCN9RcRvooI-wUViuSFgtfm0pnXNGer5K7APtZKdtN4ITy8HdZkJBEcRzQFhOmmnH-23/pub,,Open Science Garden(s),"October 24, 2023",ols-8,Not sorted,Not tagged, +230,https://docs.google.com/presentation/d/e/2PACX-1vRLTEtATIrUcuxbjrPv3nBNNWqxPE4bX8U3n-bkIaNd2DxXsWWFXsdwzQyGsBurNXp9QAcT0yPA-ocv/pub,,Community Design for Inclusivity,"November 08, 2023",ols-8,Not sorted,Not tagged, +231,https://docs.google.com/presentation/d/e/2PACX-1vQv96-8vH1QoMyZ6oKj_BL0Bma3j195KI2rUkGBJvXmPjNZ-_unXkZWAkPlzixw8M5ykgiAkD0hNEMW/pub?start=false&loop=false&delayms=3000,,Open Science Garden(s),"November 21, 2023",ols-8,Not sorted,Not tagged, +232,https://docs.google.com/presentation/d/e/2PACX-1vRQmPldM2vu5hoUX2FpdUKuSY8-krnsaqoLP_mg-H3OdGOiTLZO99Ey-1a_PAkhlsi09TzLiPgp__dc/pub,,Open-source software in practice,"November 29, 2023",ols-8,Not sorted,Not tagged, +233,https://docs.google.com/presentation/d/e/2PACX-1vRoO3gcS1koiKYhncvBBnvI9qdMqYjEQ-BH3OKcMGHuCVdsB1nVOXpjg0_9DNXg9D4XfL8BhRpXpH_K/pub,,Open Science Garden(s),"December 06, 2023",ols-8,Not sorted,Not tagged,https://youtu.be/Xu9TgBXRVZw?si=FOd5dm8Q78Pn_t7K&t=131 +234,https://docs.google.com/presentation/d/15fHd7EiNt4G1tRDb-Eaycz9U3Ko5L1RI6_sWBVw8Yq4/edit?usp=sharing,Diana Pilvar,Documentation and metadata,"December 08, 2023",ols-8,Not sorted,Not tagged, +235,,Rachael Ainsworth,How to run inclusive meetings and get community input,"December 20, 2023",ols-8,Not sorted,Not tagged, diff --git a/data/mentor_feedback/post_cohort/OLS-1.csv b/data/mentor_feedback/post_cohort/OLS-1.csv new file mode 100644 index 0000000..cc42528 --- /dev/null +++ b/data/mentor_feedback/post_cohort/OLS-1.csv @@ -0,0 +1,13 @@ +How were your overall mentorship training and support experience in OLS?,What expectations from the OLS program were met and where can we do better?,How was your overall experience with the mentoring calls with your mentee?,"If you followed the cohort calls (notes or videos), which of the following topics introduced in these cohort calls were useful for you?","Would you be interested in returning to the next cohort as a mentor or expert, and/or join our steering committee?",Anything else you would like to share with us? +I felt supported as a mentor and the training offered in the OLS-1 was adequate,"My expectations were to get to know other people interested in this kind of work, and to learn specifically from - and with - my mentee about these topics. Both of these things happened. My mentee and I struggled in our communication somewhat, I suspect because our cultural backgrounds were so very different. However, I am still very happy that we worked together. ",Mentoring calls were somewhat constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Open agenda and social calls",Yes I'd like to return as a mentor, +"I felt supported as a mentor but the training offered in the OLS-1 can be improved, I enjoyed my participation and did not find the experience overwhelming",more learning opportunities for mentors,Mentoring calls were always constructive,"Licensing and Code of Conduct, Mountain of engagement and Community interactions",Yes I'd like to return as a mentor, +I felt supported as a mentor but the training offered in the OLS-1 can be improved,I think some more prep calls ahead of the programme would be useful especially for those who are not familiar with the syllabus,Mentoring calls were mostly constructive,"Mountain of engagement and Community interactions, Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor, +"I felt supported as a mentor and the training offered in the OLS-1 was adequate, I enjoyed my participation and did not find the experience overwhelming","The mentorship program wad well organized: sufficient support to both mentors and mentees, clear and timely communications etc. Great work!","Mentoring calls were somewhat constructive, Mentoring calls were mostly constructive","Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: Citizen science, open education, Preprints, open protocols, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Final presentation call (open and live streamed)",I am not sure yet but ask me later,Thank you for the amazing work you did with OLS. Excited about the continued impact and community you are building. +I felt supported as a mentor but the training offered in the OLS-1 can be improved,"it would have been helpful for me to chat more with the other mentors, even about practicalities of how to use the website, calendar, gitter, slack, docs, etc to make things streamlined for me. I was lost in the web of things, and didn't give this enough attention to get organised (that's on me!) + +I felt distant - but it's been a tough time. In normal times & with more energy dedicated to this, I think what you have already would be enough!",Mentoring calls were mostly constructive,,"Yes, but I don't know how yet! Could be any of the three ways...", +"I felt supported as a mentor and the training offered in the OLS-1 was adequate, I enjoyed my participation and did not find the experience overwhelming","I felt quite well-matched with my mentees, in terms of the project they were working on and the kind of guidance they needed. I would have liked a clearer process through which to connect with an expert/experts and invite them to join a meeting with mentees. Maybe that info exists already somewhere already and i simply missed it.",Mentoring calls were mostly constructive,Ally skills,Yes I'd like to return as an expert, +I felt supported as a mentor and the training offered in the OLS-1 was adequate,I really enjoyed the whole experience.,Mentoring calls were always constructive,I didn't have the time to attend all of these calls - but all looked really helpful. ,Yes I'd like to return as a mentor, +"I missed out on some mentor trainings (due to scheduling conflicts, and my feeling comfortable from previous experience mentoring for MozOL), but the ones I attended were great! ","I think it was a great program -- speaking as a mentor where dealing with OLS is adjacent to my day job, I would ask for nudges in the direction of: +1. formatting and structuring in e-mails to call out deadlines and action items +2. converging on digital platforms for communications, and collating links through the website or a central google doc",Mentoring calls were always constructive,,I am not sure yet but ask me later, \ No newline at end of file diff --git a/data/mentor_feedback/post_cohort/OLS-2.csv b/data/mentor_feedback/post_cohort/OLS-2.csv new file mode 100644 index 0000000..e45de4d --- /dev/null +++ b/data/mentor_feedback/post_cohort/OLS-2.csv @@ -0,0 +1,41 @@ +How were your overall mentorship training and support experience in OLS?,What expectations from the OLS program were met and where can we do better?,How was your overall experience with the mentoring calls with your mentee?,"If you followed the cohort calls (notes or videos), which of the following topics introduced in these cohort calls were useful for you?","Would you be interested in returning to the next cohort as a mentor or expert, and/or join our steering committee?",Anything else you would like to share with us? +"I felt supported as a mentor and the training offered in the OLS-2 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were mostly constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: open education, Preprints, open protocols",I would take a break but please keep me informed about the next cohort,"A suggested topic, which might have been covered under mental health day, and may only be a concern if you do community organization long term: + +Keeping it real. + +Community people *sell* community. And it *has* to be a community we believe in. We also have to be *authentic*. But, some days we don't feel that enthusiasm as keenly as we do on most days. How do we get through those tough days without misrepresenting ourselves? + +Can we do things, because they are great things to do, and still balance that with the knowledge this is a great idea *that will sell.* + +I think anyone who does this type of work for any period of time has to learn to walk the line between being authentic and being cynical. + +Um, sorry, what was the question? :-) Thanks for listening, and for all your efforts. +Dave C + + + +" +I felt supported as a mentor and the training offered in the OLS-2 was adequate,,Mentoring calls were mostly constructive,,I would take a break but please keep me informed about the next cohort, +"I felt supported as a mentor and the training offered in the OLS-2 was adequate, I enjoyed my participation and did not find the experience overwhelming","Y'all are amazing!! All the work you do makes the experience of mentoring so smooth. As a mentor, I really only need to focus on the mentee's project and how to make their experience better, everything else is readily available (templates, schedule, content, nicely organized, etc.), so nice!",Mentoring calls were always constructive,,Yes I'd like to return as an expert, +I felt supported as a mentor and the training offered in the OLS-2 was adequate,"Most of my expectations were actually surpassed. The cohort calls were more informative than what I was expecting (I didn't participate in them personally because of time constrains, but watched them on youtube afterwards), the slack group was more amazing and supportive than what I was expecting, and I was not expecting a mentor training at all (thanks for the opportunity!). The only very tiny issue I had (but maybe totally my limitation) is the difficulty of keeping track of the hackmd or google docs files of each mentoring and cohort session. Perhaps these could be outlined in an issue in the main repo of OLS so that people can always go there to find these documents.",Mentoring calls were always constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Open agenda and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as an expert,"Thanks for creating this program! It was amazing to be part of it, and would love to stay engaged with it (as an expert for next semester, but hopefully as a mentor in the future again)." +"I felt supported as a mentor and the training offered in the OLS-2 was adequate, I enjoyed my participation and did not find the experience overwhelming, It would have been good to maybe have a reflection / consolidation session for mentors at the end of the programme but I really appreciated the training organised and the support from other mentors ","I think having a bit more structure and theming to the mentoring calls might have been useful, sometimes it was hard to keep them structured and ensure we were covering everything (this could also be me as a first-time mentor)",Mentoring calls were mostly constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Final presentation call (open and live streamed)",Yes I'd like to return as an expert,Thanks for having me as a mentor on this programme - it's been a brilliant experience and I've learnt so much! +"I felt supported as a mentor and the training offered in the OLS-2 was adequate, I enjoyed my participation and did not find the experience overwhelming","It was an amazing experience! +I would like to suggest to move the mentor onboarding to week ""0"", i.e. before the program starts and to have the option of having two mentors per project",Mentoring calls were mostly constructive,"Unfortunately, I haven't had the time to follow them",Yes I'd like to return as a mentor,Thank You very much for organizing this wonderful curriculum +"I felt supported as a mentor and the training offered in the OLS-2 was adequate, I enjoyed my participation and did not find the experience overwhelming","It was my first time, I was a little lost about what we had to do or not, maybe the first 3-4 weeks, new mentors could have a meeting with the organizers to make sure everything is going well.","Mentoring calls were not structured or constructive, Mentoring calls were somewhat constructive",,Yes I'd like to return as an expert, +"I felt supported as a mentor and the training offered in the OLS-2 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were mostly constructive,,Yes I'd like to return as a mentor, +I felt supported as a mentor and the training offered in the OLS-2 was adequate,Really amazingly perfect!,Mentoring calls were mostly constructive,Unfortunately I was not able to follow cohort calls,but maybe relevant only if there is applicants from ecology / biodiversity fields like it was in OLS2,GOOD JOB !!!!!!! YOU ARE AMAAAZZZZZZIIIIIIIIIIIIIIIIIIIIIIIIIIIIIIIIIIIINNNNNNNNNNNNNNNGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGGG +I felt supported as a mentor and the training offered in the OLS-2 was adequate,"i felt supported, everything was organized really well, and my experience with the project lead and co-mentor was good.",Mentoring calls were mostly constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Applying FAIR principles, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mental health, self care, personal ecology, Ally skills, Final presentation call (open and live streamed)",I have signed up as both an expert and mentor for OLS-3,"Thank you for an amazing program, this was genuinely one of highlights of 2020. You've given me opportunities to mentor, to learn, and have given me more confidence in a range of areas. Bring on OLS-3!!" +I felt supported as a mentor and the training offered in the OLS-2 was adequate,"Overall, I really enjoyed the experience but since this was my first time mentoring, I don't have any other experiences to compare it to. I really enjoyed the mentoring workshop as I was able to learn a lot from it. +I also liked how supportive and helpful the community is and I enjoyed listening to the stories and experiences from other mentors during our mentor check in call. I think it would have been great to have more exchange in from of informal chats with other mentors throughout the program.","Mentoring calls were somewhat constructive, Mentoring calls were mostly constructive","Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Designing for inclusion: Implicit bias, Diversity and Inclusion",I would take a break but please keep me informed about the next cohort,Thank you for all the wonderful work you're doing! +"I felt supported as a mentor and the training offered in the OLS-2 was adequate, I enjoyed my participation and did not find the experience overwhelming","I expected more engagement from my mentee in the OLS-2 cohort topics throughout the program, rather than specifically with the science of their project. Maybe this is my fault, for not discussing expectations more clearly upfront, or maybe this is ok. It just wasn't what I was expecting. ",Mentoring calls were mostly constructive,"Applying FAIR principles, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mental health, self care, personal ecology, Ally skills, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor, +"I felt supported as a mentor and the training offered in the OLS-2 was adequate, I found the experience frustrating. I think that the mentees and I failed to clarify and describe what we expected from the relationship. My feeling through the whole program was that they were looking for a mentor who gave them specific knolwedge, ideas for solutions to their problems - while I wanted to be more of a coach, someone to listen and provide structure to their discussions. I was left feeling that i had done a poor job as a mentor.",,Mentoring calls were somewhat constructive,,Yes I'd like to return as a mentor, +"I felt supported as a mentor and the training offered in the OLS-2 was adequate, I enjoyed my participation and did not find the experience overwhelming","Mentee expected to achieve 100% of the project milestones within program time period. However, milestones that needed infrastructure development stalled due to lack of funds. Funds set aside for such cases will be of help in the future.","Mentoring calls were mostly constructive, Mentoring calls were always constructive","Designing for inclusion: Implicit bias, Diversity and Inclusion, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Final presentation call (open and live streamed)",I would take a break but please keep me informed about the next cohort, +I felt supported as a mentor and the training offered in the OLS-2 was adequate,I think clarification around co-mentoring can be improved. I felt much more at ease when I didn't have to worry about treading on my co-mentor's toes.,Mentoring calls were mostly constructive,,Yes I'd like to return as a mentor, +"I felt supported as a mentor and the training offered in the OLS-2 was adequate, I enjoyed my participation and did not find the experience overwhelming","This takes practice but I was able to contribute just enough and not overdue my commitment. This meant I showed up every other week for my mentor, was an ""expert"" for two other groups, and would jump into Slack when I could.",Mentoring calls were always constructive,Final presentation call (open and live streamed),"Yes I'd like to return as a mentor, Yes I'd like to return as an expert", +Other,Other,Mentoring calls were always constructive,,I would like to not use platform that collects data (more details in email), +I enjoyed my participation and did not find the experience overwhelming,"The OLS-2 programme provided great guidelines, resources and spaces to improve my mentorship as well as gain the support I needed. ",Mentoring calls were always constructive,"Applying FAIR principles, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mental health, self care, personal ecology, Final presentation call (open and live streamed)",I would take a break but please keep me informed about the next cohort, +I felt supported as a mentor and the training offered in the OLS-2 was adequate,,Mentoring calls were somewhat constructive,"Ally skills, Career Guidance calls",I would take a break but please keep me informed about the next cohort, +"I felt supported as a mentor and the training offered in the OLS-2 was adequate, I felt supported as a mentor but the training offered in the OLS-2 can be improved",The OLS organization is perfect. I love the topics which are relevant and practical.,Mentoring calls were mostly constructive,,I would take a break but please keep me informed about the next cohort,None at the moment. Thank you for growing Open Leaders. +Other,Other,Mentoring calls were somewhat constructive,,, +Other,Other,Mentoring calls were always constructive,,, +"I felt supported as a mentor and the training offered in the OLS-2 was adequate, I enjoyed my participation and did not find the experience overwhelming",The mentorship training workshops were extremely valuable in my opinion. For any new mentor in the program I would certainly try to repeat this offer.,Mentoring calls were mostly constructive,"Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open agenda and social calls",I've signed up as both expert and mentor but I'm happy to relay the baton and give this excellent opportunity to others., \ No newline at end of file diff --git a/data/mentor_feedback/post_cohort/OLS-3.csv b/data/mentor_feedback/post_cohort/OLS-3.csv new file mode 100644 index 0000000..fd583c7 --- /dev/null +++ b/data/mentor_feedback/post_cohort/OLS-3.csv @@ -0,0 +1,38 @@ +How were your overall mentorship training and support experience in OLS?,What expectations from the OLS program were met and where can we do better?,How was your overall experience with the mentoring calls with your mentee?,"If you followed the cohort calls (notes or videos), which of the following topics introduced in these cohort calls were useful for you?","Would you be interested in returning to the next cohort as a mentor or expert, and/or join our steering committee?",Anything else you would like to share with us? +I felt supported as a mentor and the training offered in the OLS-3 was adequate,It was great!,Mentoring calls were somewhat constructive,,Yes I'd like to return as an expert, +"I felt supported as a mentor and the training offered in the OLS-3 was adequate, I enjoyed my participation and did not find the experience overwhelming, I found mentoring this project really inspiring. Sometimes Annalee had queries I did not know the answer to but the community allowed me to suggest others for her to engage with (thanks all!) and we talked through the challenges together.","The mentor training, peer support, slack channel and general communcation are all excellent!",Mentoring calls were mostly constructive,"Licensing and Code of Conduct, GitHub and README files, Applying FAIR principles, Final presentation call (open and live streamed), All above! I have marked those I joined or re-watched. I did hope to re-join more but time was limited.","I am not sure yet, but ask me later when you have launched OLS-4, I am keen to open this up and invite more building energy researchers - this network is developing informally so I would like to plan further developing a community, either as a mentee, mentor or expert. I just need to think it through/discuss.","I remain very inspired by this work and continue to evolve my own knowledge, skills and practices in open science. Thank you for the opportunty to mentor in OLS3!" +"I felt supported as a mentor and the training offered in the OLS-3 was adequate, I enjoyed my participation and did not find the experience overwhelming","It was a very positive experience. The training for mentors at the beginning of the cohort was very good, it was very valuable in providing a framework for the mentoring relationship and tips for how to handle conversations. I also really enjoyed getting to meet other mentors. + +The relationship with the mentees has been very good, I am happy I had an opportunity to meet a group whom I may not have come across otherwise. I think their project was slightly too large in scope, I tried to guide them around that while allowing them to shape their work (instead of trying to make the project look like what I may have done). The project has now taken a different line where they’ll pursue a collaboration with another group, I see it a very positive outcome even though it’s different from what they set out to do at the beginning. I am also planning to keep in touch with the mentees. +",Mentoring calls were always constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Knowledge Dissemination: Preprints, open protocols, citizen science, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert", +"I felt supported as a mentor and the training offered in the OLS-3 was adequate, I enjoyed my participation and did not find the experience overwhelming",I was really impressed by the mentor training and community calls. I particularly appreciated how well the calls were moderated. ,Mentoring calls were always constructive,"Knowledge Dissemination: Preprints, open protocols, citizen science, Designing for inclusion: Implicit bias, Diversity and Inclusion","Yes I'd like to return as a mentor, Yes I'd like to return as an expert",Great work! I learned so much and was really inspired by the participants. +"I felt supported as a mentor and the training offered in the OLS-3 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were mostly constructive,,"Yes I'd like to return as a mentor, I am not sure yet but ask me later", +"I felt supported as a mentor and the training offered in the OLS-3 was adequate, I enjoyed my participation and did not find the experience overwhelming",Participating exceeded my expectations regarding networking with other folks from low-middle income countries. I have no suggestion for improvements.,Mentoring calls were always constructive, I wish the rest of my duties would have allowed me to follow all this amazing content :_(,"I am not sure yet, but ask me later",Thank you! +"I felt supported as a mentor and the training offered in the OLS-3 was adequate, I enjoyed my participation and did not find the experience overwhelming",All my expectations were met or exceeded and I really can't think of anything that could have been done better. I think the structural approach and the application process work really well! ,Mentoring calls were always constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Mental health, self care, personal ecology, Ally skills, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a collaborator to run this program in my network, I should have more time in September to be able to put in more time into this during working hours: especially if I can get the credits for the PhDs sorted out and have some of them apply. ",I want to write a blog on mentoring and the lessons I learned thanks to the OLS programme. I'm not making any promises on when that will actually happen but I was thinking it might be nice to publish it on the OLS website whenever it is done. Feedback is also always welcome! :) Thank you for everything! +I felt supported as a mentor and the training offered in the OLS-3 was adequate,"Thank you to the leadership team for being so visible and highly responsive! I don't know how you do it but for me it's really refreshing and incredibly comforting to see you so active in the Slack groups, hosting the online meetings, and generally making sure people know they can reach out to you +",Mentoring calls were always constructive,"So sorry, I didn't attend any of the cohort calls this time, but find all the topics very applicable","Yes I'd like to return as a mentor, Yes I'd like to return as a collaborator to run this program in my network",Thanks for this wonderful opportunity to stay connected despite the isolation! +I felt supported as a mentor and the training offered in the OLS-3 was adequate,,Mentoring calls were always constructive,I did not attend any as I was a project lead in OLS2,"Yes I'd like to return as a mentor, Yes I'd like to return as an expert","As always, thanks for being open science super stars! " +I felt supported as a mentor and the training offered in the OLS-3 was adequate,OLS-3 was again a great success - thank you very much for running it,Mentoring calls were always constructive,,Yes I'd like to return as a mentor,"I have a comment/concern: a leader of a small, one person project might be overwhelmed by the size (diversity of topics) of the OLS program. +(I will get in contact with you within the next few weeks in order to explain in more details)" +"I felt supported as a mentor and the training offered in the OLS-3 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were somewhat constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert", +"I felt supported as a mentor and the training offered in the OLS-3 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were always constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert", +"I felt supported as a mentor and the training offered in the OLS-3 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were mostly constructive,"Ally skills, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert", +I felt supported as a mentor and the training offered in the OLS-3 was adequate,everything was excellent,Mentoring calls were always constructive,,"Yes I'd like to return as a mentor, Yes I'd like to return as an expert",excellent work everyone! looking forward to the next cohort! +"I felt supported as a mentor and the training offered in the OLS-3 was adequate, I enjoyed my participation and did not find the experience overwhelming","Initially I was paired with a project lead who I didn't feel I could mentor as effectively as another mentor, and switched project leads before the cohort kicked off. This was not a difficult process and ended up being beneficial for me and, I feel, the project lead I mentored.",Mentoring calls were always constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor, +"I felt supported as a mentor and the training offered in the OLS-3 was adequate, I enjoyed my participation and did not find the experience overwhelming","One thing I would find useful is feedback on my mentee's experience. Sarah and I had a very productive time together but sometimes I left wondering ""Am I doing this right? Should I be doing more?""",Mentoring calls were always constructive,,"Yes I'd like to return as a mentor, Yes I'd like to return as an expert", +I felt supported as a mentor and the training offered in the OLS-3 was adequate,"The resources provided for mentors - from communication channels, through calls with other mentors, to hackmd templates for notetaking during calls - were all excellent. If there is something more that you can do to help us figure out the expectations mentees will have of mentors before they start the project (e.g. asking for more detail in their answers to the question on that point in the application form), I think that would have helped us. I felt that my mentees expected more hands-on input, on the technical side of the project, than I had intended to provide. Indeed, I had assumed at the start of the project that I would not have anything to offer them in terms of programming knowledge, that they did not already possess. In the end, I started giving them practical guidance, example code snippets, etc, to help them get unstuck with the project - perhaps shifting more into an ""expert"" role at that stage. But I think we found a balance that worked for us, so this was not really a problem in the end. ",Mentoring calls were mostly constructive,,I would take a break but please keep me informed about the next cohort,💐💐💐 +I enjoyed my participation and did not find the experience overwhelming,,Mentoring calls were mostly constructive,Could not attend to cohort calls,I am not sure yet but ask me later,"I have to say that I am not sure if my mentees graduated or not. They were supposed to contact me every time they would like to talk because they could not set a fixed call due to their schedules, and for the final call to show me their presentation, they didn't. I am also not sure if they had a clear idea of what this program is, because they were not very active in contacting the people I put them in contact with." +I felt supported as a mentor and the training offered in the OLS-3 was adequate,I think the OLS team have successfully developed a welcoming and inclusive community of both mentors and mentees. ,Mentoring calls were somewhat constructive,,Yes I'd like to return as a mentor, +I felt supported as a mentor and the training offered in the OLS-3 was adequate,"I think y'all have a great program and I enjoy what you offered to the mentors. + +Confidentially, I don't think that my mentee Jennifer and I clicked very well on a personal level and that meant that there didn't seem to be much that came of what we talked about in our mentorship meetings. There were a lot of really good reasons for us to be connected as mentor/mentee (great topic, qual research, approach to openness) but somehow our personalities made our calls feel unproductive to me and seem as though I wasn't able to offer much to her. + +Jennifer is clearly dedicated to the work and to making this open, and did a good job of pulling together her team and getting the work out there. I'm very glad that she was able to do that. I did my best to offer suggestions to support her but ultimately I got the sense that my suggestions weren't things she wanted to do - which is absolutely fine, but it felt a bit awkward to continue when it seemed like it wasn't helpful and we didn't have much more to talk about. It felt like our meetings were the same and didn't do much to support her. I did my best to listen and walk through what she needed and talk about her next steps, I'm hopeful that was of use to her, but it felt pretty insignificant. + +I don't think this means that anything needs to change in the program, I just think that sometimes the connection between two people can just kind of not work very well. I'm quite open if there's feedback about how I could have handled things differently, but ultimately I think there was a personality mismatch. ","Mentoring calls were not structured or constructive, Mentoring calls were somewhat constructive",,Yes I'd like to return as a mentor, +I felt supported as a mentor and the training offered in the OLS-3 was adequate,"Eeverything is very well organized and my expectations for traning, interactions were very well met. ",Mentoring calls were mostly constructive,"GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Applying FAIR principles, Mountain of engagement and Community interactions, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as a collaborator to run this program in my network",Nothing yet +"I felt supported as a mentor and the training offered in the OLS-3 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were always constructive,,Yes I'd like to return as a mentor,"This year was particularly complicated for me as my mentee bit, even if taking the minimum of time, we both have learn a lot" +I felt supported as a mentor and the training offered in the OLS-3 was adequate,,Mentoring calls were always constructive,,"I'd like to take a break for OLS-4, but please contact me for OLS-5 :)", +I enjoyed my participation and did not find the experience overwhelming,The inputs that were needed were judicious and great support was met!,Mentoring calls were mostly constructive,"Licensing and Code of Conduct, GitHub and README files, Applying FAIR principles, Designing for inclusion: Implicit bias, Diversity and Inclusion",Yes I'd like to return as a mentor,"No, you are awesome, OLS!" +I felt supported as a mentor and the training offered in the OLS-3 was adequate,,Mentoring calls were mostly constructive,"Designing for inclusion: Implicit bias, Diversity and Inclusion, Mental health, self care, personal ecology, Ally skills, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-4",Y'all are the best :) +"I felt supported as a mentor and the training offered in the OLS-3 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were always constructive,"Licensing and Code of Conduct, GitHub and README files","Yes I'd like to return as an expert, Yes I'd like to return as a collaborator to run this program in my network, I checked yes to the collaborator option, but actually, I want to know what this means exactly.", \ No newline at end of file diff --git a/data/mentor_feedback/post_cohort/OLS-4.csv b/data/mentor_feedback/post_cohort/OLS-4.csv new file mode 100644 index 0000000..a5603d6 --- /dev/null +++ b/data/mentor_feedback/post_cohort/OLS-4.csv @@ -0,0 +1,24 @@ +How were your overall mentorship training and support experience in OLS?,What expectations from the OLS program were met and where can we do better?,How was your overall experience with the mentoring calls with your mentee?,"If you followed the cohort calls (notes or videos), which of the following topics introduced in these cohort calls were useful for you?","Would you be interested in returning to the next cohort as a mentor or expert, and/or join our steering committee?",Do you think your mentee was able to effectively engage with OLS throughout the program?,Anything else you would like to share with us? +I felt supported as a mentor and the training offered in the OLS-4 was adequate,,Mentoring calls were somewhat constructive,"Licensing and Code of Conduct, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science","Yes I'd like to return as a mentor, Yes I'd like to return as an expert","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-4 was adequate, I enjoyed my participation and did not find the experience overwhelming",I really like having some initial training for mentors. It was really helpful and set the stage for my mentoring activities. It empowered me to provide my mentees the necessary support and at the same time set boundaries to make sure I don't feel overwhelmed and/or guilty of not supporting them sufficiently.,Mentoring calls were mostly constructive,"Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor,I think they were able to engage most of the time. They often had to catch up between the calls and what they effectively used in their project.,Thanks. Awesome program and organizers! +"I felt supported as a mentor and the training offered in the OLS-4 was adequate, I enjoyed my participation and did not find the experience overwhelming, I could not invest as much time as I wanted. I understimated the issue of getting to meeting in the evenings due to time differences",,Mentoring calls were mostly constructive,,"Yes I'd like to return as a mentor, Yes I'd like to return as an expert","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-4 was adequate, I enjoyed my participation and did not find the experience overwhelming",My mentee enjoyed the program and learnt a lot. So the expectations were fully met.,Mentoring calls were mostly constructive,"Mental health, self care, personal ecology","Yes I'd like to return as an expert, I would take a break but please keep me informed about the next cohort","Yes, they were able to engage", +I enjoyed my participation and did not find the experience overwhelming,"As usual, run excellently and a very worthwhile program to be part of.",Mentoring calls were mostly constructive,"Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation",Yes I am interesting in joining the OLS steering committee,"Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-4 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were mostly constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I am interesting in joining the OLS steering committee","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-4 was adequate, I enjoyed my participation and did not find the experience overwhelming",The training was great and it is nice to have a channel where we can ask questions if additional support is needed.,Mentoring calls were always constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Diversity and Inclusion, Mountain of engagement and Community interactions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a collaborator to run this program in my network, Yes I am interesting in joining the OLS steering committee",I think Arent was very much capable to effectively engage but I also received his feedback that he wished he had more time to really get the most out of it. I guess that's life :) Gill had a very busy time with teaching and the project changed focus in the middle of OLS so it was a bit more rough there. I think she managed to get at least something out of the programme but she has also been out of touch over christmas so I'm not sure if she's managing to graduate. I think in general people are just worn out over the pandemic: I myself was also not at my best in December and feel a bit more recharged right now. , +"I felt supported as a mentor and the training offered in the OLS-4 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were mostly constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Ally skills, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I am interesting in joining the OLS steering committee","No, they had difficulty engaging or attending calls","You guys are doing an incredible job! Well done! + +One thing I would say is I had a few last minute invites to present that I missed - it would be good to know if I was on the line up for particular topics in advance so I'm better able to respond to requests when they come through. " +"I felt supported as a mentor and the training offered in the OLS-4 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were somewhat constructive,,Yes I am interesting in joining the OLS steering committee,"No, they had difficulty engaging or attending calls", +"I felt supported as a mentor and the training offered in the OLS-4 was adequate, I enjoyed my participation and did not find the experience overwhelming","My expectations that were met: I got to mentor an interesting person working on a cool project & watch both the person & project grow; I got to learn from other mentors and from the cohort; I had fun! Things to change (maybe): I have mixed feelings about how cohort calls are optional to attend. I like that it is flexible for the mentees (say, they can't attend a call because they have a work obligation), but I think that my mentee took advantage of that and ended up not attending most things. I think she would have gotten more out of it if she had to attend. Maybe a solution is that mentees get 2 free passes to skip 2 meetings (or something)? I tried to hold her accountable, but I think it would be more successful if it was in the official rules/protocols. But again, we are entering year 3 of COVID (someone I know called it ""sophomore year of COVID"" and now I have to call it that...) so having flexibility is really important.",Mentoring calls were mostly constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Project development: Agile and iterative project management methods & Open Aspects, Citizen Science",I am not sure yet but ask me later,"No, they had difficulty engaging or attending calls","All the resources (notes, syllabus, videos, Slack) are so helpful and useful to me personally for various aspects of work. Thank you for creating them and hosting them!" +"I felt supported as a mentor and the training offered in the OLS-4 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were mostly constructive,Final presentation call (open and live streamed),"No, I would not be able to return","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-4 was adequate, I enjoyed my participation and did not find the experience overwhelming",I felt my experience in open science was useful and I could help the team to boost their project ideas. It was really rewarding! The organization and support from OLS exceeded my expectations.,Mentoring calls were always constructive,,"Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I am interesting in joining the OLS steering committee","No, they had difficulty engaging or attending calls", +"I felt supported as a mentor and the training offered in the OLS-4 was adequate, I enjoyed my participation and did not find the experience overwhelming","Helped mentee develop OS skills, reinforced my own, and gained mentoring experience",Mentoring calls were mostly constructive,"Licensing and Code of Conduct, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Diversity and Inclusion, Mountain of engagement and Community interactions, Ally skills",I would take a break but please keep me informed about the next cohort,"Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-4 was adequate, I enjoyed my participation and did not find the experience overwhelming","I enjoyed the interactions with the mentee and with other mentors. I think the peer support in both mentor and mentee groups is one of the strengths of the program. +The mentor training session is excellent. +The cohort calls cover a wide range of topics and are very informative -although I have to say I was not able to attend them in this program cycle. +",Mentoring calls were always constructive,,Yes I'd like to return as an expert,"I think she was able to engage but did not attend a number of cohort calls, My guess (but take this as my hypothesis) is that thai partly related to being busy, and partly to the nature of the project, which involved organizing an event and thus some of the topics of the cohort calls would not have been applicable.", +I felt supported as a mentor and the training offered in the OLS-4 was adequate,,Mentoring calls were always constructive,,Yes I'd like to return as an expert,"Yes, they were able to engage","I've loved being a mentor for the last two rounds. Unfortunately, due to my schedule I need to take a break from mentoring, but would love to be available as an expert." +I felt supported as a mentor and the training offered in the OLS-4 was adequate,Improve my knowledge in open science and develop mentoring skills,Mentoring calls were always constructive,"Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Diversity and Inclusion",Yes I'd like to return as a mentor,"Yes, they were able to engage",I love this community and the work done +"I felt supported as a mentor and the training offered in the OLS-4 was adequate, Due to circumstances, the mentees were not able to fully engage with the project and OLS in general.",,Mentoring calls were somewhat constructive,,"Yes I'd like to return as a mentor, Yes I'd like to return as an expert","No, they had difficulty engaging or attending calls","Although this might be an overarching theme, but I'd argue that the OLS is better suited for mentees in the early stages of their career - mostly due to the respective time commitment. In this context, it may be useful to have an additional layer of filtering for future OLS projects." +I felt supported as a mentor and the training offered in the OLS-4 was adequate,"I greatly appreciate the openness and flexibility of this program (and forgiveness when other obligations get in the way) - so please keep up the great, welcoming work on that. But as a mentor I wondered if it was my, OLS organizers, or anyone's ""job"" to make sure a mentee was participating (my mentee ultimately ended up discontinuing). The cohort calls are not strictly required (and have a voluntary sign in), but after a few missed mentor-mentee meetings I found myself wondering if my mentee was participating in them as a way to gauge overall OLS-4 participation.",Mentoring calls were mostly constructive,Project development: Agile and iterative project management methods & Open Aspects,Yes I'd like to return as an expert,"No, they had difficulty engaging or attending calls", \ No newline at end of file diff --git a/data/mentor_feedback/post_cohort/OLS-5.csv b/data/mentor_feedback/post_cohort/OLS-5.csv new file mode 100644 index 0000000..90abce6 --- /dev/null +++ b/data/mentor_feedback/post_cohort/OLS-5.csv @@ -0,0 +1,22 @@ +How were your overall mentorship training and support experience in OLS?,What expectations from the OLS program were met and where can we do better?,How was your overall experience with the mentoring calls with your mentee?,"If you followed the cohort calls (notes or videos), which of the following topics introduced in these cohort calls were useful for you?","Would you be interested in returning to the next cohort as a mentor or expert, and/or join our steering committee?",Do you think your mentee was able to effectively engage with OLS throughout the program?,Anything else you would like to share with us? +I felt supported as a mentor and the training offered in the OLS-5 was adequate,,Mentoring calls were mostly constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct",Yes I'd like to return as a mentor,"No, they had difficulty engaging or attending calls", +I felt supported as a mentor and the training offered in the OLS-5 was adequate,,Mentoring calls were always constructive,,"Yes I'd like to return as a mentor, Yes I'd like to return as an expert","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-5 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were somewhat constructive,,Yes I'd like to return as a mentor,"No, they had difficulty engaging or attending calls", +I felt supported as a mentor and the training offered in the OLS-5 was adequate,,Mentoring calls were always constructive,"Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Diversity and Inclusion, Open Leadership: Career Guidance call, Open office/co-working hours and social calls","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a collaborator to run this program in my network, Yes I am interesting in joining the OLS steering committee","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-5 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were mostly constructive,"Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Mountain of engagement and Community interactions, Open Leadership: Career Guidance call, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor,"Yes, they were able to engage","I had some connectivity and power issues with my mentees during our calls, but we handled these inconveniences by continuing our conversation via slack. Maybe, we could propose some recommendations for these situations and improve mentor-mentee communication." +I felt supported as a mentor and the training offered in the OLS-5 was adequate,,Mentoring calls were mostly constructive,Final presentation call (open and live streamed),"Yes I'd like to return as a mentor, Yes I'd like to return as an expert","They were engaged with mentor calls, didn't manage to attend as many cohort calls as they wanted I think and probably also struggled with time to dig into all the material.","Spread exercises more across the 16 weeks but I think you know that already. Thanks for the mentor check ins, they were really helpful" +"I felt supported as a mentor and the training offered in the OLS-5 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were always constructive,,"Yes I'd like to return as a mentor, Yes I'd like to return as an expert",Perhaps not all members of the team but most of them, +I felt supported as a mentor and the training offered in the OLS-5 was adequate,,Mentoring calls were always constructive,,"Yes I'd like to return as a mentor, Yes I am interesting in joining the OLS steering committee","Yes, they were able to engage","OLS continues to be a fantastic program with tremendous impact. It defines open leadership in the life sciences. I am looking forward to localised mentorship programs targeting specific communities like Bioinformatics, Ecology, etc. Communities like BHki can spearhead such an initiative. " +I felt supported as a mentor and the training offered in the OLS-5 was adequate,,Mentoring calls were always constructive,"Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Mental health, self care, personal ecology, Open Leadership: Career Guidance call, Final presentation call (open and live streamed)","Yes I'd like to return as an expert, I love this community",,I think I already wrote a lot :D +I felt supported as a mentor and the training offered in the OLS-5 was adequate,,Mentoring calls were mostly constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Data management plans, software citation, Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as an expert,"Yes, they were able to engage", +I felt supported as a mentor and the training offered in the OLS-5 was adequate,,Mentoring calls were somewhat constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls","I am not sure yet but ask me later, I would like to continue being involved in OLS, but need to assess my possible time commitments over the next few months first","No, they had difficulty engaging or attending calls", +I felt supported as a mentor and the training offered in the OLS-5 was adequate,,Mentoring calls were always constructive,,"Yes I'd like to return as a mentor, Yes I'd like to return as an expert","Yes, they were able to engage", +I enjoyed my participation and did not find the experience overwhelming,,Mentoring calls were mostly constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Persona and pathways and inviting contributions, Mental health, self care, personal ecology","Yes I'd like to return as a mentor, Yes I'd like to return as an expert","Yes, they were able to engage","My mentee was struggling with structure at the beginning and I feel guilty that I didn't give her more guidance at that point. Not sure what I want to say, I guess it's a note to self to be ready to put more effort in the initial phase of the project, not to wait until things somewhat settle down" +I felt supported as a mentor and the training offered in the OLS-5 was adequate,,Mentoring calls were mostly constructive,"Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Mental health, self care, personal ecology",Yes I'd like to return as a mentor,"Yes, they were able to engage", +I felt supported as a mentor and the training offered in the OLS-5 was adequate,,Mentoring calls were mostly constructive,,I am not sure yet but ask me later,"Yes, they were able to engage",N/A +"I felt supported as a mentor and the training offered in the OLS-5 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were mostly constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Project development: Agile and iterative project management methods & Open Aspects, Data management plans, software citation, Diversity and Inclusion, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Open Leadership: Career Guidance call, Final presentation call (open and live streamed)",I am not sure yet but ask me later,"Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-5 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were always constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Mental health, self care, personal ecology, Open Leadership: Career Guidance call","Yes I'd like to return as a mentor, Yes I'd like to return as an expert","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-5 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were mostly constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert","Yes, they were able to engage", +I felt supported as a mentor but the training offered in the OLS-5 can be improved,,Mentoring calls were mostly constructive,,I am not sure yet but ask me later,"No, they had difficulty engaging or attending calls",Apologies for my low actitivy in the OLS-5 cohort. I've experienced exciting but difficult months learning how to raise my newborn daughter and also delivering outputs of my main project at the Turing. I hope to be more active in future OLS cohorts! +I felt supported as a mentor and the training offered in the OLS-5 was adequate,,Mentoring calls were always constructive,"Final presentation call (open and live streamed), I only attend the first call and then the graduation this time.","Yes I'd like to return as a mentor, Yes I'd like to return as an expert","Yes, they were able to engage", +I felt supported as a mentor and the training offered in the OLS-5 was adequate,,Mentoring calls were always constructive,"Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a collaborator to run this program in my network, Yes I am interesting in joining the OLS steering committee","Yes, they were able to engage", \ No newline at end of file diff --git a/data/mentor_feedback/post_cohort/OLS-6.csv b/data/mentor_feedback/post_cohort/OLS-6.csv new file mode 100644 index 0000000..cffdf14 --- /dev/null +++ b/data/mentor_feedback/post_cohort/OLS-6.csv @@ -0,0 +1,21 @@ +How were your overall mentorship training and support experience in OLS?,What expectations from the OLS program were met and where can we do better?,How was your overall experience with the mentoring calls with your mentee?,"If you followed the cohort calls (notes or videos), which of the following topics introduced in these cohort calls were useful for you?","Would you be interested in returning to the next cohort as a mentor or expert, and/or join our steering committee?",Do you think your mentee was able to effectively engage with OLS throughout the program?,Anything else you would like to share with us? +I felt supported as a mentor and the training offered in the OLS-6 was adequate,,Mentoring calls were not structured or constructive,,Participant,"Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-6 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were mostly constructive,"Licensing and Code of Conduct, Persona and pathways and inviting contributions, Final presentation call (open and live streamed)","Yes I'd like to return as an expert, Also happy to be a reviewer this round (have registered already)","I think Alden struggled in the beginning to keep up with all the homework, especially since her project wasn't actually funded yet so she was limited in what she could actually implement during the OLS program.", +I felt supported as a mentor and the training offered in the OLS-6 was adequate,"I felt really well supported! There were many opportunities to get help and get in touch with other mentors. I particularly liked reminders for concrete actions, like to have a reflection chat at the end. Maybe more reminders like this could be useful in case the project doesn't use the template regularly ",Mentoring calls were always constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Citizen Science, Open Leadership: Career Guidance call, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a collaborator to run this program in my network","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-6 was adequate, I enjoyed my participation and did not find the experience overwhelming","I was really pleased by the Mentor training session which was very useful and gave me more tools to go about this first mentorship experience, I also received a lot of encouragement and confidence from the training and from the OLS organisers. I would have loved to have more mentor meetings and more active participation in talks and training for mentees. ",Mentoring calls were mostly constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Knowledge Dissemination: Preprints, Training and Code Publishing, Citizen Science, Diversity and Inclusion, Open Leadership: Career Guidance call, Final presentation rehearsals","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a collaborator to run this program in my network, Yes I am interesting in joining the OLS steering committee","Yes, they were able to engage", +I felt supported as a mentor and the training offered in the OLS-6 was adequate,,Mentoring calls were somewhat constructive,,"Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I am interesting in joining the OLS steering committee","No, they had difficulty engaging or attending calls", +"I felt supported as a mentor and the training offered in the OLS-6 was adequate, I enjoyed my participation and did not find the experience overwhelming","Programme was very useful for the project and I felt very supported as mentor. Haven't been 100% in due to other responsibilities, so I don't have any other feedback for improvements. It's all been v good to me :)",Mentoring calls were mostly constructive,N/A,"Yes I'd like to return as a mentor, Yes I am interesting in joining the OLS steering committee, Not sure about the time/duties of the steering committee, but would be happy to know more about it","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-6 was adequate, I enjoyed my participation and did not find the experience overwhelming","The mentoring training and support with the microgrants is a positive point. As for the unmet expectations, I don't see any.",Mentoring calls were always constructive,"Citizen Science, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a collaborator to run this program in my network, Yes I am interesting in joining the OLS steering committee","Yes, they were able to engage", +I felt supported as a mentor and the training offered in the OLS-6 was adequate,,Mentoring calls were somewhat constructive,,I am not sure yet but ask me later,"Did not manage to engage with Mahmood Usman, so not sure. ", +"I felt supported as a mentor and the training offered in the OLS-6 was adequate, I enjoyed my participation and did not find the experience overwhelming",the program is getting better with each cohort ,Mentoring calls were mostly constructive,,,she couldn't engage as much as she wanted, +I felt supported as a mentor and the training offered in the OLS-6 was adequate,,Mentoring calls were mostly constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity and Inclusion, Mountain of engagement and Community interactions, Mental health, self care, personal ecology",I would take a break but please keep me informed about the next cohort,"No, they had difficulty engaging or attending calls", +"I felt supported as a mentor and the training offered in the OLS-6 was adequate, I enjoyed my participation and did not find the experience overwhelming, enriching and overall great. ","Just a suggestion: while mentoring groups I would suggest prior to meeting the group, to meet 1:1 with each member to get a sense of who they are out of group dynamics. For instance men in a group tend to be more outspoken and can overshadow other members specially if it's a smaller group of only 2 people. ",Mentoring calls were mostly constructive,"Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Ally skills",Yes I'd like to return as an expert,"No, they had difficulty engaging or attending calls", +I felt supported as a mentor and the training offered in the OLS-6 was adequate,,Mentoring calls were always constructive,,"Yes I'd like to return as an expert, Yes I'd like to return as a collaborator to run this program in my network, Yes I am interesting in joining the OLS steering committee","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-6 was adequate, I enjoyed my participation and did not find the experience overwhelming, I expressed some doubts and insecurity about the future relationship with my mentee becasue of age and gender difference and it was great to have Paz and Mayya checking in about how it was going :)","In terms of supporting the mentors with training and presence, I think OLS did great! ",Mentoring calls were mostly constructive,"GitHub and README files, Knowledge Dissemination: Preprints, Training and Code Publishing, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call",I would take a break but please keep me informed about the next cohort,"I think they were able to engage enough with the materials, a little less with th community per se becasue of language barriers", +"I felt supported as a mentor and the training offered in the OLS-6 was adequate, I enjoyed my participation and did not find the experience overwhelming, Some more (structured) communication between mentors would be great.","I appreciated a lot the weekly emails to have some structure, they helped having a notion of what was going on every week. I wish the communication in slack was more fluent and that mentors had some calls to check how everything is going. Fabio and Ivo had some difficulties navigating the site and the schedules, and to socialize in slack.",Mentoring calls were mostly constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Mountain of engagement and Community interactions",Yes I'd like to return as a mentor,"No, they had difficulty engaging or attending calls", +I enjoyed my participation and did not find the experience overwhelming,,Mentoring calls were somewhat constructive,,Yes I'd like to return as a mentor,"No, they had difficulty engaging or attending calls", +I felt supported as a mentor and the training offered in the OLS-6 was adequate,I felt much more comfortable in the role of mentor in this cohort.,Mentoring calls were mostly constructive,"GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Mental health, self care, personal ecology",Yes I'd like to return as a mentor,"no, he had personal difficulty engaging or attending calls related to his VISA ", +"I felt supported as a mentor and the training offered in the OLS-6 was adequate, For this round of mentoring I found it tougher to engage because of other commitments. ",,Mentoring calls were somewhat constructive,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert","No, they had difficulty engaging or attending calls", +"I felt supported as a mentor and the training offered in the OLS-6 was adequate, I enjoyed my participation and did not find the experience overwhelming","I felt supported as a mentor throughout the program which made it very pleasant to do my job as a mentor. I have no real critique, but as my mentee unexpectedly struggled to work on their project/realized that meeting their goals would require to work the project full-time for a couple of weeks, it was not entirely clear how to make the best out of this situation. We had enough ""meta"" things to talk about (a lot of which related to the question of what it would actually take to achieve the projects' goals), so we didn't run out of topics at all, but I retrospectively thought that it would still have been good to have a few suggestions from OLS' side on what one could do in such cases. (E. g., one thing we wondered about was whether it would still make sense to present something at the OLS graduation - while I thought that it might be valuable to share their journey, my mentee felt slightly uncomfortable to give a presentation without being able to put any checkmarks behind the projects' goals.) Obviously, I did not ask anyone from OLS on that matter (which I am totally sure I could have done without any problems, and I would have gotten a supportive, suitable answer!).",Mentoring calls were always constructive,,Yes I'd like to return as an expert,"No, they had difficulty engaging or attending calls", +"I felt supported as a mentor but the training offered in the OLS-6 can be improved, I enjoyed my participation and did not find the experience overwhelming","I guess all the events OLS organizes like the coworking ones and the teaching ones are absolutely great. Aman made big chunks of his progress while attending to these. +Something to improve to the mentees would be a better system where we can connect them to experts. Aman really benefited from going to a Turing Way's workshop where he met people that were doing exactly the same kind of technical work that he needed. Maybe it was a lack on my side to not be able to come up with a mentor for him, but it's harder to imagine these things when you're by yourself. So, some kind of networking, connection, between mentors would be helpful for this.",Mentoring calls were always constructive,,No I would not be able to return,"Yes, they were able to engage", \ No newline at end of file diff --git a/data/mentor_feedback/post_cohort/OLS-7.csv b/data/mentor_feedback/post_cohort/OLS-7.csv new file mode 100644 index 0000000..d694d93 --- /dev/null +++ b/data/mentor_feedback/post_cohort/OLS-7.csv @@ -0,0 +1,31 @@ +How were your overall mentorship training and support experience in OLS?,What expectations from the OLS program were met and where can we do better?,How was your overall experience with the mentoring calls with your mentee?,"If you followed the cohort calls (notes or videos), which of the following topics introduced in these cohort calls were useful for you?","Would you be interested in returning to the next cohort as a mentor or expert, and/or join our steering committee?",Do you think your mentee was able to effectively engage with OLS throughout the program?,Anything else you would like to share with us? +"I felt supported as a mentor and the training offered in the OLS-6 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were not structured or constructive,I have been to these calls before so did not attend this time,"Yes I'd like to return as a mentor, Yes I'd like to return as an expert","No, they had difficulty engaging or attending calls", +"I felt supported as a mentor and the training offered in the OLS-6 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were mostly constructive,,"I am not sure yet, but ask me later","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-6 was adequate, I enjoyed my participation and did not find the experience overwhelming",Yes - I love how the programme is structured and how the community is cared for and looked after throughout the programme!,Mentoring calls were always constructive,"Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Final presentation call (open and live streamed)","Yes, I'd like to return as a mentor","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-6 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were mostly constructive,"Licensing and Code of Conduct, GitHub and README files, Final presentation call (open and live streamed), Attended some of these sessions in the last cycle.","I am not sure yet, but ask me later, I am on the last leg of my PhD so I dont have abandwidth to take up other commitments. While I woould like to remain a pat of the network , I may join back as a mentor after my defence (probably after september.))","Yes, they were able to engage", +I enjoyed my participation and did not find the experience overwhelming,"I think Overall, the OLS7 program cohort was well organized as the previous editions. It's difficult to predict if the mentees will successfully be engaged and motivated till the end of the session. I think emphasizing the monitoring and evaluation of student progress could be a good approach to identifying early intervention strategies (more aggressive reminders and tracking mechanisms, to proactively identify struggling students and provide timely support to ensure their success. Also, regular mentor meetings would be great to share experiences and help mentors face some challenges.",Mentoring calls were mostly constructive,"Tooling and Roadmapping (open canvas, project vision, etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Data management plans, software citation, Citizen Science, Diversity and Inclusion, Mountain of engagement and Community interactions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes, I'd like to return as a mentor, Yes, I am interesting in joining the OLS steering committee","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-7 was adequate, I enjoyed my participation and did not find the experience overwhelming",A sense of learning while being in a welcoming community,Mentoring calls were mostly constructive,"Tooling and Roadmapping (open canvas, project vision, etc.), Licensing and Code of Conduct, Mental health, self care, personal ecology","Yes, I'd like to return as an expert, I am not sure yet, but ask me later","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-7 was adequate, I enjoyed my participation and did not find the experience overwhelming","It was great to see the leaders of a very ambitious project actually organizing their thoughts with the help of the OLS training. They had already a lot of the Open values on the design of their project, but they learned new tools and methods which were just what they needed.",Mentoring calls were always constructive,,"No, I would not be able to return to OLS-8, I've been thinking on a way to get the students on my community to participate on OLS regularly. Let's chat!","Yes, they were able to engage", +I felt supported as a mentor and the training offered in the OLS-7 was adequate,"I was supported as a mentor, the mentor slack channel allowed me to direct mentor-specific questions and before embarking on the journey Tracy provided a lot of clarity on expectations and the roles of a mentor.",Mentoring calls were always constructive,"Diversity and Inclusion, Mountain of engagement and Community interactions, Open Leadership: Career Guidance call","Yes, I'd like to return as a mentor, Yes, I'd like to return as an expert","Yes, they were able to engage", +I felt supported as a mentor and the training offered in the OLS-7 was adequate,,Mentoring calls were always constructive,"Mountain of engagement and Community interactions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes, I'd like to return as a mentor, Yes, I'd like to return as an expert","Yes, they were able to engage", +I felt supported as a mentor and the training offered in the OLS-7 was adequate,"The OLS was a supportive and inclusive community, and during my mentorship experience I felt supported by everyone in this amazing community. Something that can be improved could be the interaction among the mentors to share their experiences. We have the slack channel and the calls in the middle of the program, but maybe more frequent calls could be useful.",Mentoring calls were not structured or constructive,Citizen Science,"Yes, I'd like to return as a mentor, Yes, I'd like to return as an expert, Yes, I am interesting in joining the OLS steering committee","Yes, they were able to engage", +I enjoyed my participation and did not find the experience overwhelming,,Mentoring calls were always constructive,"Tooling and Roadmapping (open canvas, project vision, etc.), Licensing and Code of Conduct","Yes, I'd like to return as a mentor","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-7 was adequate, Maybe it could be useful for future mentors to plan their training before they meet their mentees for the first time so they feel more confident. ","All expectation were met, I felt very supported, despite my mentee not willing to accept my help or suggestions.",Mentoring calls were somewhat constructive,My mentee refused to follow the structure of the program and my recommendations to use any of the above.,"Yes, I'd like to return as a mentor, Yes, I'd like to return as a collaborator to run this program in my network, Yes, I am interesting in joining the OLS steering committee","No, they had difficulty engaging or attending calls", +I felt supported as a mentor and the training offered in the OLS-7 was adequate,"Support for me and my mentee were perfect. I think it has been discussed before, and there is a session of introduction before starting the cohort (and also very different types of projects), but I still feel there should be a bit more on project management/planning?",Mentoring calls were somewhat constructive,,"Yes, I'd like to return as a mentor, Yes, I'd like to return as an expert","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-7 was adequate, I enjoyed my participation and did not find the experience overwhelming","I was able to meet extraordinary people and very interesting projects, the networks created have been the best. I can't think of many things apart from what I talked about with Paz at the mid-cohort meeting.",Mentoring calls were always constructive,Final presentation call (open and live streamed),"Yes, I'd like to return as a mentor, Yes, I'd like to return as an expert","Yes, they were able to engage", +"I felt supported as a mentor but the training offered in the OLS-7 can be improved, I enjoyed my participation and did not find the experience overwhelming","I missed the mentor check-ins at half way as I couldn't make any of them at short notice. It was fine for me as this wasn't my first time mentoring in OLS, but I wished they'd be announced sooner",Mentoring calls were always constructive,"Mental health, self care, personal ecology, Open office/co-working hours and social calls","Yes, I'd like to return as an expert, Happy to leave mentoring to other people, but can be a mentor in OLS-8 if needed","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-7 was adequate, I enjoyed my participation and did not find the experience overwhelming",The program's structure is set to facilitate the learning and growth of the mentee with practical tools. Mentors also have resources to lean on.,Mentoring calls were always constructive,,"I am not sure yet, but ask me later","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-7 was adequate, I enjoyed my participation and did not find the experience overwhelming",,Mentoring calls were somewhat constructive,"Mountain of engagement and Community interactions, Mental health, self care, personal ecology, Open office/co-working hours and social calls","Yes, I'd like to return as a mentor, Yes, I'd like to return as a collaborator to run this program in my network","No, they had difficulty engaging or attending calls", +"I felt supported as a mentor and the training offered in the OLS-7 was adequate, I enjoyed my participation and did not find the experience overwhelming","I felt the program planning was very well done and helped me keep on track of where we 'should be' eg. roadmap planning etc. The training at the start and drop-in meet ups were an excellent addition and the Slack is a great support network. The program met my expectations in enabling me to support and mentor the team. For our team, I don't think there is anything extra that you could have provided or done better.",Mentoring calls were always constructive,"Tooling and Roadmapping (open canvas, project vision, etc.), Licensing and Code of Conduct, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes, I'd like to return as a mentor, Yes, I'd like to return as an expert, Yes, I'd like to return as a collaborator to run this program in my network, Yes, I am interesting in joining the OLS steering committee, I would be happy to help out in anyway. There is wonderful overlap with the eLife Ambassadors community. Looking forward to discussing","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-7 was adequate, I enjoyed my participation and did not find the experience overwhelming",I think it might be useful to have examples of successful projects as a guide for mentees.,Mentoring calls were always constructive,"Tooling and Roadmapping (open canvas, project vision, etc.), Project development: Agile and iterative project management methods & Open Aspects, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes, I'd like to return as a mentor","Yes, they were able to engage", +"I felt supported as a mentor and the training offered in the OLS-7 was adequate, I enjoyed my participation and did not find the experience overwhelming","The bi-weekly meeting worked out well, it was a good frequency. + +I did not feel well integrated into the mentos community. I had a recurring calendar which did not have a link and asking last minutes was not a comfortable experience for me. + +Using Github was mainly the work of the mentee, however they would use some mentorship help on Github challenges, which I was a little short in. ",Mentoring calls were always constructive,"GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Diversity and Inclusion","Yes, I'd like to return as a mentor","No, they had difficulty engaging or attending calls", +"I felt supported as a mentor and the training offered in the OLS-7 was adequate, I found the mentorship responsibilities overwhelming","I don’t know how the relationship with the mentor are described to the mentee, how optional parts of this relationship are. ",Mentoring calls were somewhat constructive,"Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions","No, I would not be able to return to OLS-8, I won’t have time :/ ",They had difficulty engaging with the mentorship side of the program but they were very active attending the community calls., +I felt supported as a mentor and the training offered in the OLS-7 was adequate,"I have found the trainings, talks and support provided by OLS, both for myself as a mentor but also for my mentee, very onto the point, helpful and enlightening in many ways. I guess you are doing everything amazingly by providing such a family and welcoming environment for every one. It feels so natural to blend in and take an action in helping or engage with all the practices offered. So I can only share my admiration for what you all are doing. ",Mentoring calls were always constructive,"Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Mountain of engagement and Community interactions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Final presentation call (open and live streamed)","Yes, I'd like to return as a mentor","Yes, they were able to engage", +I felt supported as a mentor and the training offered in the OLS-7 was adequate,"From the OLS side, my expectations as a mentor were met and even went beyond. It was great to have a structured google doc to take notes during the mentoring call. Overall, I felt very supported during the program. However, I am not sure I can say the same for my mentees. Having been a project lead myself, I remember the orientation emails and the detailed instructions to help the project leads. I worry that my mentees might have had different expectations from the program and from my mentoring. Maybe it would be helpful for the mentees if there was a (mandatory or otherwise) check-in with the equivalent of HR at OLS. This is one approach I can think of, but maybe there is a better way to do this from OLS' side. ",Mentoring calls were somewhat constructive,"Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Citizen Science, Mental health, self care, personal ecology","Yes, I'd like to return as a mentor","No, they had difficulty engaging or attending calls", +I enjoyed my participation and did not find the experience overwhelming,,Mentoring calls were always constructive,"Tooling and Roadmapping (open canvas, project vision, etc.), Final presentation call (open and live streamed)","I am not sure yet, but ask me later","Yes, they were able to engage", +I enjoyed my participation and did not find the experience overwhelming,,Mentoring calls were always constructive,"Tooling and Roadmapping (open canvas, project vision, etc.), Final presentation call (open and live streamed)","I am not sure yet, but ask me later","No, they had difficulty engaging or attending calls", +I felt supported as a mentor and the training offered in the OLS-7 was adequate,,Mentoring calls were always constructive,,"Yes, I'd like to return as a mentor","Yes, they were able to engage", \ No newline at end of file diff --git a/data/microgrants.csv b/data/microgrants.csv new file mode 100644 index 0000000..b880ba0 --- /dev/null +++ b/data/microgrants.csv @@ -0,0 +1,296 @@ +Cohort,Country,Cost,Currency,Item +OLS-3,India,7,USD,Headset +OLS-3,United Kingdom,112.81,USD,Internet +OLS-3,India,43.25,GBP,"Headset, Webcam" +OLS-3,Nepal,224.25,USD,"Webcam, Laptop, Other" +OLS-3,Nigeria,49.94,GBP,Headset +OLS-3,Nigeria,9.36,USD,Webcam +OLS-4,India,42.38,GBP,"Webcam, Mouse" +OLS-4,India,83.26,GBP,"Headset, Webcam, Other" +OLS-4,Nigeria,9.4,GBP,"Headset, Internet" +OLS-5,India,4499,INR,Headset +OLS-5,France,38.68,EUR,Headset +OLS-5,Bolivia,144,USD,Webcam +OLS-5,Cameroon,63000,XAF,"Headset, Internet, Modem" +OLS-5,Uzbekistan,76.51,USD,Headset +OLS-5,Bolivia,144,USD,Webcam +OLS-5,Kenya,84.51,USD,Internet +OLS-5,Netherlands,40.27,EUR,Headset +OLS-5,South Africa,879,ZAR,"Webcam, Other" +OLS-5,Cameroon,667.32,GBP,"Headset, Battery, Laptop" +OLS-5,Argentina,9469,ARS,"Headset, Webcam" +OLS-5,India,3699,INR,Headset +OLS-5,India,3699,INR,Headset +OLS-5,Netherlands,29.99,EUR,Headset +OLS-5,India,42.62,GBP,Other +OLS-5,Kenya,150.55,GBP,Other +OLS-6,Nigeria,75,GBP,"A month internet: 48,900 naira +Book nuclear for life: 39,999 naira  +" +OLS-7,Colombia,101.37,GBP,A microphone to improve the audio in my virtual meetings (Linux doesn't get on well with my PC's audio hardware). This is available for delivery in Colombia https://www.amazon.com/dp/B07QKQJL17?tag=georiot-us-default-20&th=1&ascsubtag=pcg-row-5438070539143454000-20&geniuslink=true +OLS-6,Switzerland,452.99,GBP,"Through the OLS microgrant, we would like to support our marketing and merchandising expenses - including swag for the OpSciHack event. Here are a few expenses we would like covered through this microgrant: + +1. Stickers - https://www.vistaprint.ch/etiketten-aufkleber/personalisierte-etiketten-aufkleber/separate-aufkleber - 250 stk, CHF100.79 +2. Notepads- https://www.vistaprint.ch/einladungen-und-schreibwaren/notizblocke - 30 stk, CHF212.00 +3. Pens - https://www.vistaprint.ch/werbeartikel/schreib-und-burobedarf/personalisierte-kugelschreiber/premium-kugelschreiber 50 stk, CHF131.52 +4. Flyers ETH print shop https://www.print-publish.ethz.ch/office/flyers/einfacher-flyer-mit-eigener-formateingabe.html 30 stk, CHF 6.10 +5. Twitter campaign - CHF 50.00 +Total CHF500.41" +OLS-6,India,44.98,GBP,headset https://www.boat-lifestyle.com/products/airdopes-601-anc Airpods 601-anc +OLS-6,Netherlands,22.91,GBP,"webcam (from OLS-6 form). Webcam 1080p with Microphone and Webcam Cover, Tripod, Plug & Play with Automatic Light Correction for Laptop PC, Desktop for Live Streaming Video Call, Conference, Online Education, Game. Brand: NIVEOLI https://www.amazon.nl/Webcam-webcamafdekking-automatische-lichtcorrectie-videogesprekken/dp/B08P5RC39C" +OLS-6,Kenya,345,GBP,"1. Internet bundles - $33 + +2. Headset - $45 (https://www.mobilehub.co.ke/product/jbl-tune-500bt-wireless-headphones/) + +3. Childcare - $42 + +5. Webcam - $58 (https ://www.mobilehub.co.ke/product/logitech-c270/)" +OLS-6,Nigeria,1020,GBP,"Battery, power inverter+charger, data plan, headset, laptop" +OLS-6,Kenya,92,GBP,"Link to headset: https://www.mobilehub.co.ke/product/jbl-live-400bt-headphones-wireless-on-ear-headphones/ +Link to Internet: https://zuku.co.ke/triple-play/ " +OLS-6,Spain,50,EUR,I would expect something between 20 and max 50 USD for total (1 to 2 hours) for the childcare. +OLS-6,Kenya,354,GBP,"webcam +headphones +internet +childcare " +OLS-6,United Kingdom,30.57,GBP,Logitech Signature M650 Wireless Mouse: https://www.amazon.in/dp/B09QWY7JYK?ref_=cm_sw_r_cp_ud_dp_2BQ77ZQEVZ37JDWXN7PB +OLS-6,Cameroon,193.1,EUR,"Internet bundle ~16eur / month +modem 70 eur" +OLS-6,United Kingdom,26.99,GBP,Microphone +OLS-7,United Kingdom,37.48,GBP,"Webcam: https://www.amazon.co.uk/dp/B08T9GHKJX/ref=syn_sd_onsite_desktop_0?ie=UTF8&psc=1&pd_rd_plhdr=t; +zoom with otter.ai" +OLS-7,Cameroon,87.42,GBP,"headset: https://glotelho.cm/en/wireless-headset-lenovo-hd100-bluetooth-v5-0-500mah.html (30,000 fcfa) +high speed internet: https://www.orange.cm/fr/internet-giga/offres-et-services-internet/forfaits-giga-data-30-jours.html (10000 fcfa/ mo - 40000 fcfa)" +OLS-7,Nigeria,417.34,GBP,"Backup batteries, webcam, headset, Mobile data top-ups + +Internet: https://www.mtn.ng/personal/data/data-plans/ (10,000ngn /mo -> 18GBP/mo) + +Webcam: https://www.jumia.com.ng/generic-usb-full-hd-1080p-video-camera-auto-focusing-webcam-63958263.html (9800 ngn -> 18 GBP) + +headphone + microphone: https://www.jumia.com.ng/generic-3.5mm-wired-gaming-and-microphone-headphone-for-xbox-one-ps4-71474930.html (6941 ngn -> 12.5 gbp) + +Battery: https://www.konga.com/product/solar-generator-with-inbuilt-lithium-battery-1000w-5801801 (240,000ngn = 433.05 GBP)" +OLS-7,Cameroon,380.4,GBP,"Data subscription: 21500 fcfa/ mo (86000 fcfa/115.63GBP for 4 mo) + +Modem: https://glotelho.cm/en/flybox-olax-ax6-pro-modem-4g-lte-300mbps-double-sim-4000-mah-6-mois.html (33900 fcfa/ 45.79GBP) + +Headset-https://glotelho.cm/en/telephones-tablettes/wired-headset-logitech-h111-with-noise-canceling-mic-for-customer-service-6-month-warranty.html (19999fcfa/27.01GBP) + +Mouse- https://glotelho.cm/en/wireless-mouse-premax.html (3500 fcfa/ 4.73gbp) + +Keyboard - https://glotelho.cm/en/hp-k500f-wired-rgb-lighted-qwerty-keyboard-06-months-warranty.html (29900 fcfa / 40.37GBP) + +Webcam- https://glotelho.cm/en/logitech-webcam-c270-hd-720p-compatible-facebook-skype-msn.html (67200 fcfa / 90.77GBP) + +Powerbank (50000 MAh) - 38000 fcfa." +OLS-7,Egypt,32.25,GBP,"Internet subscription: https://web.vodafone.com.eg/en/mobile-internet-bundles?c_id=DACW0037&c_content=Website&c_medium=PPC&c_name=PureBrandEN&c_source=Search&c_term=InternetBundlesExtEN&c_type=Anonymous&c_phase=awareness&c_date=1218&gclid=CjwKCAiA0cyfBhBREiwAAtStHEL5GAk3VKkqJWFUCvVhzhho_Rm4a7Q-01Y8Cmr9MM1wqpTmbFT4kRoCsy4QAvD_BwE (Doaa quoted initially at 65LE /mo but didn't realize it was 95 LE /mo when tax is included -> we're topping this up to 95*4 LE) + +headphones: https://www.amazon.eg/-/en/dp/B091J7JWT4?psc=1&smid=A239XCWS8NYATG&ref_=chk_typ_imgToDp + +(2023/5/26) microphone top up: https://www.amazon.eg/-/en/Microphone-Omnidirectional-Condenser-Camcorder-Interview/dp/B07QZ32QZ4/ref=asc_df_B07QZ32QZ4/?tag=egoshpadsp-21&linkCode=df0&hvadid=545257881359&hvpos=&hvnetw=g&hvrand=10410682899582455131&hvpone=&hvptwo=&hvqmt=&hvdev=m&hvdvcmdl=&hvlocint=&hvlocphy=9073641&hvtargid=pla-928488088499&psc=1" +OLS-7,Uganda,209.49,GBP,"Webcam: https://www.jumia.ug/generic-rotatable-1080p-full-hd-webcam-digital-usb-2.0-camera-cam-for-pc-21005764.html (108003 UGX/ 24.15GBP) +Router: https://www.jumia.ug/dlink-dwr-m960-4g-dual-band-2.4ghz-5ghz-ac1200-lte-router-for-all-networks-black-53797127.html ( 298,500/ 66.74 GBP) +headphones: https://www.jumia.ug/generic-3.5mm-plug-jack-mic-headphone-microphone-compatible-with-razer-black-shark-v2v2-prov2-se-wireless-gaming-headsets-40204649.html (84900 ugx / 19GBP) +Office chair: https://www.jumia.ug/simple-office-chair-mesh-black-generic-mpg86612.html (480979 ugx / 107.54 GBP) +Internet bundle: 100,000 ugx / mo (22.36 GBP/mo) for 4mo +Withdrawal fees for mobile money: 15000 ugx (" +OLS-7,Chile,65.78,GBP,High quality wireless headphones. The cost in Amazon is approximately US$60. The link to the item is the following https://www.amazon.com/-/es/Auriculares-est%C3%A9reo-aislamiento-inal%C3%A1mbricos-ligeros/dp/B00X85DZNI/ref=sr_1_1?__mk_es_US=%C3%85M%C3%85 +OLS-7,Brazil,113.76,GBP,"Webcam: https://www.mercadolivre.com.br/cmera-web-logitech-c922-pro-full-hd-30fps-cor-preto/p/MLB18931397?pdp_filters=category:MLB73364#searchVariation=MLB18931397&position=1&search_layout=grid&type=product&tracking_id=a8714dd9-00ff-4917-8a51-c1855e6e79e9 (61GBP) + +Headset: https://produto.mercadolivre.com.br/MLB-2621976162-fone-headset-gamer-razer-hammerhead-duo-xbox-ps5-pc-lacrado-_JM?searchVariation=174438054864#searchVariation=174438054864&position=3&search_layout=grid&type=item&tracking_id=cc537c3a-31f0-4afd-b23f-e8cbfe3de63c (19GBP) + +Internet: approx 6USD /mo - 24 USD /mo (20GBP)" +OLS-7,Nigeria,130.08,GBP,"I would like to please get headphones (or earpods) and a back-lit mechanical keyboard, as power outages occur at regular/unpredictable intervals, making me unable to type in the dark. + +Keyboard - https://www.amazon.com/Wireless-Mechanical-Triple-Mode-Bluetooth-Efficient/dp/B0BGH6MP4B/ref=sr_1_19?keywords=mechanical%2Bkeyboard&qid=1676898382&sprefix=mecha%2Caps%2C206&sr=8-19&ufe=app_do%3Aamzn1.fos.c1e7b9a2-53cf-44f5-ab39-5386af17669d&th=1 (54.83 EUR) +Earbuds - https://www.amazon.com/gp/product/B08FT3ZMF3/ref=ox_sc_act_title_1?smid=A14EEANAI4EN1Q&psc=1 (65.24EUR)" +OLS-7,Nigeria,79.8,GBP,Headphones: https://www.jumia.com.ng/soundcore-life-q20-active-noise-cancelling-40h-playtime-anker-mpg1653620.html +OLS-7,Argentina,83.85,USD,"I have some problems with the audio of my computer so I would benefit from assistance to buy a headset. + https://www.mercadolibre.com.ar/auriculares-inalambricos-jbl-tune-510bt-jblt510bt-negro/p/MLA17968066" +OLS-7,Cameroon,341.4,GBP,"I will like to have a new computer. The reason is that, what I am using now is really bad; battery can't stay for 10mins and with no webcam. Also, electricity is not stable. This will really help me as can work at anytime and anywhere I will be. + +I will like to buy a second-hand computer. A price estimate will be 250,000FRS (Two hundred and fifty thousand francs). " +OLS-7,Nigeria,787.45,EUR,"The items shown in the link are as follows: + +1. Universel router ₦18,000. ($39.09) +2. Oraimo Powerbank ₦29,480. ($64.02) +3. Wireless headset. ₦19,500. ($42.35) +4. Mouse. ₦3,500. ($8) +5. Webcam (Logitech). ₦20,000. ($43.43) +6. Used Dell Latitude 5420 ₦300,000.($652) +Total ₦390,480. ($848) + +The items are all found with local vendors. I can reach them directly through their local contacts, but their products can be found online, for your easy verification. + +Thank you as I look forward to your response. + +Warm regards, +Chukwuka U Ogbonna. + +Check out this product I found: +https://www.jumia.com.ng/airtel-unlocked-mini-sized-router-with-30gig-data2antennas4lan-telephone-ports-backup-battery-works-with-all-networks-except-spectranet-swift-214614279.html?utm_medium=social&utm_campaign=pdpshare-apps + +Check out this product I found: +https://www.jumia.com.ng/oraimo-40000mah-superior-quality-ultra-fast-charging-power-bank-134176451.html?utm_medium=social&utm_campaign=pdpshare-apps + +https://ng.oraimo.com/oraimo-boompop-over-ear-bluetooth-wireless-headphone-oraimo-x-boomplay-collaboration-limited-edition.html + +Check out this product I found: +https://www.jumia.com.ng/generic-m107-2.4g-wireless-mouse-ergonomic-office-mouse-with-3-gear-105583403.html? utm_medium=social&utm_campaign=pdpshare-apps + +Check out this product I found: +https://www.jumia.com.ng/logitech-hd-c310-webcam-simple-video-calling-in-hd-720p-55044443.html?utm_medium=social&utm_campaign=pdpshare-apps + +https://jiji.ng/ikeja/computers-and-laptops/laptop-dell-latitude-5420-16gb-intel-core-i5-ssd-256gb-v6nncKyu9Ln7Iz29fvfvAwd7.html?utm_campaign=shareButton&utm_source=android_share&utm_medium=android-share-button&via=whatsapp" +OLS-7,Ireland,105.64,GBP,"Hard disk, Web cam and a mouse. Approximate cost - 100 £ +Webcam: https://www.amazon.in/dp/B008QS9J6Y?ref_=cm_sw_r_cp_ud_dp_A167GT4BZ5D1ZYMVDXYD (2195 INR / 22.32 GBP) +Harddisk: https://www.amazon.in/dp/B08ZJG6TVT?_encoding=UTF8&psc=1&ref_=cm_sw_r_cp_ud_dp_DFXV4J437G6VJ453WSC8 (5599 INR / 56.93 GBP) +drawing pad: https://www.amazon.in/dp/B078YNBFXG?_encoding=UTF8&psc=1&ref_=cm_sw_r_cp_ud_dp_5NFZE51DGT49NTYVXZBR (2599 INR / 26.43 GBP)" +OLS-7,Cameroon,101.02,GBP,"Internet Bundle for the period of the training program: 30000 XAF (10000 XAF/month), It would be great to also have a good headset to attend the various meetings. Good headset device can be found locally. For about 35 000 XAF. + +Emmy - note, ols-7 is 4 months, so 75000 XAF total. +Emmy - note 14/7/23: headphone price increased to 39,999 fcfa" +OLS-7,Cameroon,168.63,GBP,"mobile data for 4 months , headset , high speed internet, modem + +Data: 10000f x 4 months = 40,000f (https://www.orange.cm/fr/internet-giga/offres-et-services-internet/forfaits-giga-data-30-jours.html) +Webcam: 67200f (https://glotelho.cm/fr/network-and-telecom/logitech-webcam-c270-hd-720p-compatible-facebook-skype-msn.html) +headphones: 17999f (https://glotelho.cm/fr/merry-christmas/casque-bluetooth-sans-fil-oraimo-oeb-h89d-bluetooth-version-5-0-jusqu-a-10-heures-d-autonomie-350mah.html) +total: 125199f " +OLS-7,Cameroon,442.63,GBP,"headphones: 40,000fcfa +data: 10000fcfa per month * 4 mo = 40,000fcfa +childcare: 60,000 fcfa per month * 4 mo = 240,000 fcfa +total: 320,000 fcfa" +OLS-7,Cameroon,144.12,GBP,"Headphones: 80000 fcfa / 108 GBP +Router: 27000 fcfa/ 36.45GBP" +OLS-7,United States,64.94,USD,A webcam: https://www.bestbuy.com/site/logitech-c920s-pro-1080-webcam-with-privacy-shutter-black/6321794.p?skuId=6321794 +OLS-7,Ireland,46.98,EUR,headphones +OLS-7,Colombia,237,USD,"internet, 40 USD /mo - top up on 2023/05/19, additional 70 USD for May and June as internet subscription costs had increased." +OLS-7,Nigeria,138.3,EUR,"Headset- https://www.jumia.com.ng/oraimo-freepods-3-2baba-edition-bt5.2-wireless-stereo-earbuds-enc-calling-noise-cancellation-80649723.html (49.67 GBP) + +Internet subscription: https://www.mtn.ng/personal/data/data-plans/ - 3month plan (50k Naira/ 109 USD)" +OLS-7,Nigeria,138.33,GBP,"Headphones: https://nl.aliexpress.com/item/1005004832634723.html?spm=a2g0o.productlist.main.17.5adf6009ZMjo23&algo_pvid=71e14310-73c3-465d-8c30-88b86f849b74&aem_p4p_detail=20230304091534548371120365200015794985&algo_exp_id=71e14310-73c3-465d-8c30-88b86f849b74-8&pdp_ext_f=%7B%22sku_id%22%3A%2212000031356037319%22%7D&pdp_npi=3%40dis%21NGN%2121253.44%219457.67%21%21%21%21%21%402145294416779501340353589d0718%2112000031356037319%21sea%21NG%210&curPageLogUid=A3ocXr0g8CSc&ad_pvid=20230304091534548371120365200015794985_9&ad_pvid=20230304091534548371120365200015794985_9&gatewayAdapt=glo2nld (20 EUR) + +webcam: https://nl.aliexpress.com/item/1005001762607076.html?spm=a2g0o.productlist.main.5.44b03da9j2NS6z&algo_pvid=ec2d03a4-3344-4c7b-bc56-5a45a1154390&aem_p4p_detail=2023030408532315034109054406000014980709&algo_exp_id=ec2d03a4-3344-4c7b-bc56-5a45a1154390-2&pdp_ext_f=%7B%22sku_id%22%3A%2212000017469059297%22%7D&pdp_npi=3%40dis%21NGN%2141907.45%2114543.27%21%21%21%21%21%402145277316779488036832750d06be%2112000017469059297%21sea%21NG%210&curPageLogUid=12U39mbopuxZ&ad_pvid=2023030408532315034109054406000014980709_3&ad_pvid=2023030408532315034109054406000014980709_3&gatewayAdapt=glo2nld (39.76 EUR) + +internet: https://www.mtn.ng/personal/data/data-plans/, 50000 Naira / 100 EUR + +blue ray glasses: https://www.jumia.com.ng/fashion-anti-blue-rays-computer-glasses-202241889.html?utm_medium=social&utm_campaign=pdpshare-apps (1999 naira / 5 GBP)" +OLS-7,Nigeria,155.79,GBP,"High Speed Internet Data- 3 months Subscription +https://www.mtn.ng/personal/data/data-plans/ + +Protective eye glasses +https://www.jumia.com.ng/fashion-photochromic-anit-blue-light-glasses-rectangle-eyewear-frame-75683383.html + +Headsets +https://www.jumia.com.ng/oraimo-necklace-5c-neckband-wireless-earphone-216721295.html + +Webcam +https://www.jumia.com.ng/generic-webcam-hd-1080p-web-cam-with-built-in-microphone-45-degree-adjust-web-camera-213286485.html" +OLS-7,Argentina,85.17,USD,"Headset, internet +headset: https://www.mercadolibre.com.ar/auriculares-inalambricos-jbl-tune-125bt-black/p/MLA17771452#searchVariation=MLA17771452&position=4&search_layout=stack&type=product&tracking_id=037bcf34-43fc-44c7-ad38-5d44b1dc93da: 10499 ars -> 54 USD + +Internet: 8 USD/mo -> 32 USD" +OLS-7,Cameroon,62.69,GBP,New headphones: https://glotelho.cm/fr/accessoires/ecouteurs-sans-fil-xiaomi-redmi-buds-4-annulation-active-du-bruit-hybride-jusqu-a-30h-d-autonomie.html (45000 fcfa) +OLS-7,Cameroon,122.67,GBP,Internet subscription +OLS-7,Nigeria,545,GBP,"4 PV cells to charge battery due to power outage: 120,000 naira + +Internet subscription: https://www.coollink.ng/konnect-nigeria/unlimited40/ 31,900 naira/month = 159,500 naira for 16 weeks + +Webcam: 21,000 naira" +OLS-7,Kenya,317.69,GBP,"Webcam- The camera broke so It is not working anymore, I am considering buying one (https://dukatech.co.ke/logitech-hd-webcam-c270-720p.html) (55 USD) + +Internet bundles are paid per month ($USD 33 * 4 = USD 132) the link (https://zuku.co.ke/triple-play/) (speed-20mbps) + +Childcare for four months: paid in cash or via bank (USD 47.26 * 4 = USD 190)" +OLS-7,India,53.1,GBP,I would like to purchase an external microphone. https://www.amazon.in/dp/B092PQBKR9?psc=1&smid=A3LD4MMBBTHP7M&ref_=chk_typ_imgToDp +OLS-7,Kenya,71.66,GBP,Internet. 2799ksh / month: https://zuku.co.ke/triple-play/ +OLS-8,Kenya,133.14,GBP,"Headset - https://www.mobilehub.co.ke/product/jbl-tune-500bt-headphones/ + +Internet - https://zuku.co.ke/triple-play/ (10mbps for 4 months) + +Webcam - https://dukatech.co.ke/logitech-hd-webcam-c270-720p.html" +OLS-8,Kenya,336.42,GBP,"1. Internet bundles are paid per month ($USD 33 * 4 = USD 132) the link (https://zuku.co.ke/triple-play/) (speed-20mbps) + +2. Childcare for four months: paid in cash or via bank (USD 54.53 * 4 = USD 218.12) + +3. Computer Mouse - ordering online ( USD 23.74) the link (https://www.jumia.co.ke/generic-2.4ghz-usb-wireless-optical-mouse-mice-for-apple-mac-macbook-pro-air-pc-laptop-lbq-68538073.html) + +4. Ethernet port cable- ordering online (USD 17.83) the link (https://www.jumia.co.ke/generic-usb-c-ethernet-rj45-lan-adapter-3-port-usb-type-c-hub-101001000mbps-gigabit-ethernet-usb-3.0-network-card-for-macbook-silver-50501664.html) + +5. Headset- in person buying 37.49 USD the link (https://www.mobilehub.co.ke/product/jbl-tune-500bt-headphones/)" +OLS-8,Colombia,223.55,USD,Internet (55 USD/month) +OLS-8,Nigeria,450,USD,"Childcare: 12,000 naira/mentor-mentee call time (8 mentor-mentee call for 16 weeks = 12,000naira * 8) = 96,000 naira + +Noise Cancellation Wireless Microphone: 14,500 naira + +2 PV cells to charge battery: 60,000 naira + +Keyboard: 9,900 naira + +Wireless mouse: 8,650 naira + +Internet subscription: https://www.coollink.ng/konnect-nigeria/unlimited40/ 31,900 naira/month = 159,500 naira for 16 weeks + +Total: 348,550 naira" +OLS-8,Argentina,50,USD,Wireless mouse https://www.mercadolibre.com.ar/mouse-inalambrico-recargable-trust-ozaa-white/p/MLA18213325?product_trigger_id=MLA18213323&pdp_filters=category%3AMLA1714&applied_product_filters=MLA18213325&quantity=1 +OLS-8,Cameroon,311.12,GBP,"Powerbank to cope with electricity issues (120000 FCFA): https://cm.loozap.com/ads/power-bank-dorigine-pour-ordinateur-yaounde/38706.html + +Internet data (2 GO per day for 30 days/ 21500 FCFA * 4 months=86000 FCFA): https://www.orange.cm/fr/internet-giga/offres-et-services-internet/forfaits-giga-data-30-jours.html + +ecouteurs sans fil (25500 FCFA) : https://glotelho.cm/fr/telephones-tablettes/ecouteurs-sans-fil-soundpeats-s5-bluetooth-v5-0.html" +OLS-8,Argentina,65.63,USD,"Internet (12.50 USD or 4,399 Argentine pesos/month for September to January)" +OLS-8,United Kingdom,36.97,GBP,Ergonomic mouse +OLS-8,Netherlands,60,EUR, +OLS-8,Kenya,40.49,GBP,"Internet (Wi-Fi subscription) - 3 months +11.80 USD/month - 35.40USD + +Wireless headset - 13.88USD" +OLS-8,Nigeria,264.36,GBP,Solar battery and panel - to be followed up by me if we have budget closer to cohort start date +OLS-8,Netherlands,50,EUR,Headphones https://www.sony.nl/electronics/oordopjes/wi-c310 +OLS-8,Kenya,99.16,GBP,"Internet +Earbuds " +OLS-8,Eswatini,58.22,GBP,Set of headphones +OLS-8,Nigeria,86.2,GBP,"Internet for 90 days +Adaptive eyewear +Headphones +Webcam +Book ?" +OLS-8,Malaysia,80.08,GBP,"Headphones +Speaker +Internet and broadband +Child care +Flash drive +Power bank" +OLS-8,Kenya,40.5,GBP,"Wireless internet 3 months @USD 11.80 = 35.40 +Headset 1 @13.88 USD" +OLS-8,Nigeria,116.65,GBP,"1. Wireless headphone = $15 +2. Power bank = $28 +3. Micro phone = $12 +4. Internet (WiFi Airtel 25GB) = $40 (4x $10/month) +5 Memory card (32gb) = $10 +6. Gasoline (50litres for 620 per litre) = $31 +Total = $106" +OLS-8,Nigeria,144,GBP,"1. Wireless headphone = $20 + +2. Power bank = $40 + +3. Microphone = $20 + +4. Internet (WiFi Airtel 25GB) = $15 + +5 Memory card = $15 + +6. Gasoline (50litres for 620 per litre) = $50 + +7. Internet subscription = $20 + +Total = $180" +OLS-8,Nigeria,145,GBP,"External hard drive (1TB) 39$ +Microphone 13$ +Headset. 16$ +Mouse. 10$ +Data for internet. 39$ +Powerbank for backup. 19$ +Fuel (50litres). 46$ +Total 182$ +" \ No newline at end of file diff --git a/data/naturalearth_lowres/naturalearth_lowres.cpg b/data/naturalearth_lowres/naturalearth_lowres.cpg new file mode 100644 index 0000000..3ad133c --- /dev/null +++ b/data/naturalearth_lowres/naturalearth_lowres.cpg @@ -0,0 +1 @@ +UTF-8 \ No newline at end of file diff --git a/data/naturalearth_lowres/naturalearth_lowres.dbf b/data/naturalearth_lowres/naturalearth_lowres.dbf new file mode 100755 index 0000000000000000000000000000000000000000..e0acd0664f4b920d58ea77e572c2af6ea31a1a3c GIT binary patch literal 531808 zcmeFaYj70VwkB5NJ2RfS_u6+n5fdJd=Z^EnOx$zN%u(ISde<4hq(TS|AcTav@4@zT z6jC)*BUF7#Qul?JhyjUL1KmLLrg^CmlAw7=JQ|5-ICQSV{v!%U*plFnj@1JCNJRLD z!yeDrVSj7y%&e@e%$>VRRkC%ENV0bBwf1Z6ota;)T6?YE+xa*C*09Ip`IEnQ@elA( 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N-SSli8jap;$vaDp3*=dz@-9Gg#Iv>t;e*gFTe?QNG`33yv zCv|2r2WI^1%hdIs`K=k%YUqX32kI>3^ufh* zVD>l^%FFY#wLw{jaRX5PsIj}@nqrt~%8j%2Pr%J7*#)=sNbB7ChVf~*Z7Si?Mdr1` z9V6;VxbtI^`(as=R98L$7utJGoJ-%DY56d$tut>79;$%c>)??_?X}Vz>S6tT_H$p4 zty6E5-?}05o?M~shYdxLXWZsy`#M*{R_ht}RGim(jZ3um!qfH(>Sq=wy6I;*4$Z^X z(f@3#x*VSSG||s*u}&6R8njo#i=*0|sa1b!J-ig_l*0BJ?X@!Q*EwGHe8KtJcFHuo z;_hPpt8tEv@LFHOo#w|m+xM!MLr0$ZFSJg^}wD@NnF=z{Y~(? z@u>>vwqEpitC@l~$K-&fuB853XN{W)`wGWk$h9LP=l2Ruuxd(h`4?&Dxawt3a+*yoe-r2nCtwD-WFDd~Iz z`(-U0F8zm%#yjU=i}X&0=4toLL%U=)(n-ae_zU_zZr!`Iu5tA%f-WjTCTCI>vSI^Nq4 z8#uS;AJ@rV_{scu&!@J?jIKPNKV84XeXCEuAk*;caajy!PU)P2-zL=7``!DD^G;tN z?K2(kPyI)${z>?&L7j!O?jj5lsBn%Oe7(17A0gyCsJ)($JDlhld*yOMo^!ajkQeW< zg^<6*xKdXf<9i4NMcOmcokgBkqP>D}zUN9UAQZMieg~n*Jm1$)WS#sSgcAFEZ=uBh zfz%1YrH$%Q!kk!F&P}U(<)7+Jgn7;#=bT^VUbYbyc>YuY;R^j!6Rxb5orJPn + + + + + +Natural Earth » Blog Archive » Admin 0 – Countries - Free vector and raster map data at 1:10m, 1:50m, and 1:110m scales + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + + +

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Admin 0 – Countries

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There are 258 countries in the world. Greenland as separate from Denmark. Most users will want this file instead of sovereign states, though some users will want map units instead when needing to distinguish overseas regions of France.
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Natural Earth shows de facto boundaries by default according to who controls the territory, versus de jure.

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About

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Countries distinguish between metropolitan (homeland) and independent and semi-independent portions of sovereign states. If you want to see the dependent overseas regions broken out (like in ISO codes, see France for example), use map units instead.

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Each country is coded with a world region that roughly follows the United Nations setup.

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Includes some thematic data from the United Nations, U.S. Central Intelligence Agency, and elsewhere.

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Disclaimer

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Natural Earth Vector draws boundaries of countries according to defacto status. We show who actually controls the situation on the ground. Please feel free to mashup our disputed areas (link) theme to match your particular political outlook.

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Known Problems

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None.

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Version History

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The master changelog is available on Github »

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    […] earlier. It’s the result of a conversion of a polygon shapefile of country boundaries (from Natural Earth, a fantastic, public domain, physical/cultural spatial data source) to a raster data […]

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    […] Le mappe sono scaricate da https://www.naturalearthdata.com […]

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    […] Le mappe sono scaricate da https://www.naturalearthdata.com […]

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+ + + + + + + + + + \ No newline at end of file diff --git a/data/naturalearth_lowres/ne_110m_admin_0_countries.VERSION.txt b/data/naturalearth_lowres/ne_110m_admin_0_countries.VERSION.txt new file mode 100644 index 0000000..d7445e2 --- /dev/null +++ b/data/naturalearth_lowres/ne_110m_admin_0_countries.VERSION.txt @@ -0,0 +1 @@ +5.1.1 diff --git a/data/participant_feedback/mid_cohort/OLS-1.csv b/data/participant_feedback/mid_cohort/OLS-1.csv new file mode 100644 index 0000000..6f960ae --- /dev/null +++ b/data/participant_feedback/mid_cohort/OLS-1.csv @@ -0,0 +1,24 @@ +OLS is helping me work openly,OLS is helping me encourage others to work openly,Which of the following aspects of the cohort call work well?,What should we improve in cohort calls?,Which of the following statements is true regarding the usefulness of the topics introduced at the OLS?,How much time do you spend on assignments on average? (not meetings),Which of the following mode of communication you find most effective?,To what extent did your mentor meet your expectations?,Would you like to work with your mentor in future? +5,5,Talks by the guest speakers,Breakout room activities,I have been able to use MOST concepts introduced at OLS so far,<1 hour / week,Weekly emails from the organisers,5,Yes +5,5,Shared note-taking on the google doc,Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,Gitter channel to connect with others,4,Maybe +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc",Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,All of the above,4,Yes +5,5,"Information on before, during and after the call, Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others",,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,Google groups for tracking weekly information,5,Yes +5,5,"All of the above, Side chats on twitter by members.",,I have been able to use MOST concepts introduced at OLS so far,I usually read more on the assignments and materials during my free hours. I am not sure how many hours I spend on them though.,All of the above,5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others, All of the above, I like the engagement feeling. It's not a webinar where one can fall asleep","Breakout room activities, Opportunity to get to know others",I have been able to use SOME concepts introduced at OLS so far,<1 hour / week,"Weekly emails from the organisers, Gitter channel to connect with others",5,Yes +3,4,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others",Talks by the guest speakers,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Google groups for tracking weekly information",4,Maybe +5,3,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others, All of the above",,I have been able to use SOME concepts introduced at OLS so far,"As I'm severely behind schedule with my project work at the moment (extensive work travelling followed by the current chaotic situation), I can't answer this and the previous question reliably. I'm sure I'll use (almost) ALL the concepts introduced as soon as I'll manage catching up. I've been spending 0-2 hours / week with the assignments, but I would have needed / will need much more time to keep up.","Weekly emails from the organisers, Gitter channel to connect with others, Google groups for tracking weekly information, Website with links to various resources, All of the above",5,Yes +4,4,All of the above,,I have been able to use MOST concepts introduced at OLS so far,<1 hour / week,"Weekly emails from the organisers, Website with links to various resources",5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc",Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,3+ hours / week,"Weekly emails from the organisers, Website with links to various resources",5,Yes +4,4,All of the above,Talks by the guest speakers,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Gitter channel to connect with others",5,Yes +5,5,"Information on before, during and after the call, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others","Breakout room activities, Opportunity to get to know others",I have been able to use ALL concepts introduced at OLS so far,<1 hour / week,Weekly emails from the organisers,5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others, All of the above",breakout room instruction,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Gitter channel to connect with others",5,Yes +5,4,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Shared note-taking on the google doc, Opportunity to get to know others, Shared insights by the mentor on the answers shared by the mentee",Talks by the guest speakers,I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Website with links to various resources",5,Yes +5,5,All of the above,,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Website with links to various resources",5,Yes +5,5,All of the above,Talks by the guest speakers,I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,All of the above,4,Yes +4,4,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc",Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Website with links to various resources, I think there might be too many methods of communication about OLS? Sometimes I have a hard time finding information about something specific, especially if it's in a Google Doc from a cohort call. ",4,Yes +5,5,All of the above,Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,<1 hour / week,"Google groups for tracking weekly information, Website with links to various resources",4,Yes +5,5,All of the above,Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Gitter channel to connect with others, Google groups for tracking weekly information, Website with links to various resources, All of the above",5,Yes +4,4,"Talks by the guest speakers, Breakout room activities, Opportunity to get to know others",,I have been able to use MOST concepts introduced at OLS so far,<1 hour / week,Weekly emails from the organisers,5,Yes +5,5,All of the above,I have no suggestions,I have been able to use MOST concepts introduced at OLS so far,<1 hour / week,"Weekly emails from the organisers, Website with links to various resources",5,Yes +4,4,"Information on before, during and after the call, Talks by the guest speakers, Opportunity to get to know others","Cohort calls were rather long and it was difficult to find time to participate in, so I usually saw the Youtube videos. I guess I would participate more often if calls were shorter.",I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Website with links to various resources",5,Maybe +5,5,All of the above,Shared note-taking on the google doc,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week the weeks before situation got crazy in Spain (first week of March),"Weekly emails from the organisers, Website with links to various resources",3,No \ No newline at end of file diff --git a/data/participant_feedback/mid_cohort/OLS-2.csv b/data/participant_feedback/mid_cohort/OLS-2.csv new file mode 100644 index 0000000..a13c985 --- /dev/null +++ b/data/participant_feedback/mid_cohort/OLS-2.csv @@ -0,0 +1,16 @@ +OLS is helping me work openly,OLS is helping me encourage others to work openly,Which of the following aspects of the cohort call work well?,What should we improve in cohort calls?,Which of the following statements is true regarding the usefulness of the topics introduced at the OLS?,How much time do you spend on assignments on average? (not meetings),Which of the following mode of communication you find most effective?,To what extent did your mentor meet your expectations?,Would you like to work with your mentor in future? +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Opportunity to get to know others","Breakout room activities, Shared note-taking on the google doc",I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Website with links to various resources",5,Yes +5,4,"Introduction and icebreaker led by the hosts, Talks by the guest speakers, Shared note-taking on the google doc","Information on before, during and after the call, Opportunity to get to know others",I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,Weekly emails from the organisers,5,Yes +5,4,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities","Opportunity to get to know others, shared note taking has been difficult on hack md",I have been able to use MOST concepts introduced at OLS so far,3+ hours / week,Weekly emails from the organisers,4,Yes +5,4,All of the above,Shared note-taking on the google doc,I have been able to use SOME concepts introduced at OLS so far,2-3 hours / week,Weekly emails from the organisers,5,Yes +4,4,"Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others, Wasn't the shared note taking on HackMD? It's also on gDocs?","Information on before, during and after the call, Introduction and icebreaker led by the hosts, Breakout room activities",I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Website with links to various resources",4,Maybe +5,4,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Opportunity to get to know others, All of the above",Shared note-taking on the google doc,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Website with links to various resources, Slack channel",4,Yes +4,4,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers",Breakout room activities,I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Website with links to various resources",4,Maybe +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers",Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,Hard to say as some weeks were a lot and then some weeks I didn't do the homeworks,"Google groups for tracking weekly information, Slack",4,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others","sometimes at the beginning it was hard to find all of the links to assignments, so it would be nice to have those all in the schedule too",I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Website with links to various resources",5,Yes +5,4,All of the above,No suggestions in this regard.,I have been able to use SOME concepts introduced at OLS so far,3+ hours / week,"Weekly emails from the organisers, Google groups for tracking weekly information, Website with links to various resources, Slack instead of Gitter",5,Yes +4,4,All of the above,,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,Weekly emails from the organisers,3,Yes +5,5,All of the above,nothing ,I have been able to use MOST concepts introduced at OLS so far,3+ hours / week,"Website with links to various resources, youtube recorded cohort-calls",4,Yes +5,5,All of the above,Opportunity to get to know others,I have been able to use SOME concepts introduced at OLS so far,3+ hours / week,Weekly emails from the organisers,5,Yes +5,5,All of the above,Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Google groups for tracking weekly information, Website with links to various resources",5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others, All of the above",Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Website with links to various resources, I didn't use Gitter nor the Google Groups. Slack is pretty useful and the weekly emails too. The website & GitHub are helpful as well.",5,Yes \ No newline at end of file diff --git a/data/participant_feedback/mid_cohort/OLS-3.csv b/data/participant_feedback/mid_cohort/OLS-3.csv new file mode 100644 index 0000000..10a84ae --- /dev/null +++ b/data/participant_feedback/mid_cohort/OLS-3.csv @@ -0,0 +1,24 @@ +OLS is helping me work openly,OLS is helping me encourage others to work openly,Which of the following aspects of the cohort call work well?,What should we improve in cohort calls?,Which of the following statements is true regarding the usefulness of the topics introduced at the OLS?,How much time do you spend on assignments on average? (not meetings),Which of the following mode of communication you find most effective?,How many cohort calls have been able to attend or watch in this round?,To what extent did your mentor meet your expectations?,Would you like to work with your mentor in future? +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Shared note-taking on the google doc, Written breakout room activities",Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,Weekly emails from the organisers,"I have attended all the cohort calls except one, which I watched on YouTube",5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Shared note-taking on the google doc",Breakout room activities,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Google groups for tracking weekly information","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others, All of the above",The talks are very interesting,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,Weekly emails from the organisers,I have attended all the cohort calls so far,5,Yes +4,3,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities",Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Google groups for tracking weekly information",I have attended all the cohort calls so far,5,Yes +5,4,"All of the above, Having spoken and written spaces",More time for questions for the speakers,I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Website with links to various resources",I have attended all the cohort calls so far,4,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others, All of the above",Shared note-taking on the google doc,I have been able to use ALL concepts introduced at OLS so far,3+ hours / week,"Weekly emails from the organisers, Slack channels to connect with others, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +3,4,"Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others","Information on before, during and after the call",I have been able to use SOME concepts introduced at OLS so far,<1 hour / week,"Slack channels to connect with others, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",4,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others",Breakout room activities,I have been able to use ALL concepts introduced at OLS so far,3+ hours / week,"Weekly emails from the organisers, Slack channels to connect with others, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +4,4,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Shared note-taking on the google doc",Breakout room activities,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others",I have yet to watch all the cohort call videos,5,Maybe +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Recording the call and making it available on YouTube",Shared note-taking on the google doc,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +4,4,"Information on before, during and after the call, Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others",Everything is fine,I have been able to use MOST concepts introduced at OLS so far,1 hr / week sometimes + <1 hr / week some time depending upon the commitments or assignments,"Weekly emails from the organisers, Slack channels to connect with others, Website with links to various resources","I have attended 4 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Shared note-taking on the google doc","Breakout room activities, Opportunity to get to know others",I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Website with links to various resources",I have attended all the cohort calls so far,5,Yes +5,5,"Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Opportunity to get to know others",Shared note-taking on the google doc,I have been able to use SOME concepts introduced at OLS so far,<1 hour / week,"Weekly emails from the organisers, Website with links to various resources",I have attended all the cohort calls so far,4,Maybe +4,4,"Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others","Information on before, during and after the call",I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others",Opportunity to get to know others,I have been able to use ALL concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others",I have attended all the cohort calls so far,5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others, All of the above, Mentorship by mentors","Information on before, during and after the call",I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",4,Maybe +4,4,"Information on before, during and after the call, Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others",Breakout room activities,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Talks by the guest speakers, Shared note-taking on the google doc",Breakout room activities,I have been able to use ALL concepts introduced at OLS so far,<1 hour / week,"Weekly emails from the organisers, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,All of the above,Nothing,I have been able to use ALL concepts introduced at OLS so far,<1 hour / week,Website with links to various resources,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Maybe +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others","Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others",I have been able to use SOME concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Google groups for tracking weekly information, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Maybe +4,4,"Information on before, during and after the call, Talks by the guest speakers, Shared note-taking on the google doc",Breakout room activities,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",4,Yes +4,3,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others","Information on before, during and after the call",I have been able to use MOST concepts introduced at OLS so far,<1 hour / week,Weekly emails from the organisers,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others",Everything works fine:),I have been able to use ALL concepts introduced at OLS so far,1-2 hours / week,All of the above,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes \ No newline at end of file diff --git a/data/participant_feedback/mid_cohort/OLS-4.csv b/data/participant_feedback/mid_cohort/OLS-4.csv new file mode 100644 index 0000000..123b8a8 --- /dev/null +++ b/data/participant_feedback/mid_cohort/OLS-4.csv @@ -0,0 +1,12 @@ +OLS is helping me work openly,OLS is helping me encourage others to work openly,Which of the following aspects of the cohort call work well?,What should we improve in cohort calls?,Which of the following statements is true regarding the usefulness of the topics introduced at the OLS?,How much time do you spend on assignments on average? (not meetings),Which of the following mode of communication you find most effective?,How many cohort calls have been able to attend or watch in this round?,To what extent did your mentor meet your expectations?,Would you like to work with your mentor in future? +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc",Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Shared note-taking on the google doc",Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Website with links to various resources",I have attended all the cohort calls so far,4,Yes +5,4,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers","Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others",I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +4,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc",Opportunity to get to know others,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Website with links to various resources, I miss some live/online meetings to get to know people, not via tools.","I have attended 1-2 cohort calls, and watched the missed call on YouTube",4,Maybe +5,4,"Information on before, during and after the call, Talks by the guest speakers, Breakout room activities, Opportunity to get to know others",NA,I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities","Information on before, during and after the call, Opportunity to get to know others",I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others",I have attended all the cohort calls so far,4,Maybe +5,5,All of the above,na,I have been able to use MOST concepts introduced at OLS so far,<1 hour / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Maybe +5,5,All of the above,Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others",I have attended all the cohort calls so far,5,Yes +5,5,All of the above,Ocasionally I lioked for the recording and it was not up after a few days but it is completely understandable ,I have been able to use MOST concepts introduced at OLS so far,<1 hour / week,Weekly emails from the organisers,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +4,5,"Information on before, during and after the call, Talks by the guest speakers, Shared note-taking on the google doc",Breakout room activities,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Maybe +5,5,All of the above,Talks by the guest speakers,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",4,Yes \ No newline at end of file diff --git a/data/participant_feedback/mid_cohort/OLS-5.csv b/data/participant_feedback/mid_cohort/OLS-5.csv new file mode 100644 index 0000000..d1cfb75 --- /dev/null +++ b/data/participant_feedback/mid_cohort/OLS-5.csv @@ -0,0 +1,34 @@ +OLS is helping me work openly,OLS is helping me encourage others to work openly,Which of the following aspects of the cohort call work well?,What should we improve in cohort calls?,Which of the following statements is true regarding the usefulness of the topics introduced at the OLS?,How much time do you spend on assignments on average? (not meetings),Which of the following mode of communication you find most effective?,How many cohort calls have been able to attend or watch in this round?,To what extent did your mentor meet your expectations?,Would you like to work with your mentor in future? +4,4,"Information on before, during and after the call, Talks by the guest speakers, Opportunity to get to know others, Love the trainings!","Maybe include brief, regular project updates, to add extra accountability and make it easier to see ways to collaborate/assist?",I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Shared note-taking on the google doc",Breakout room activities,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others, All of the above",Breakout room activities,I have been able to use ALL concepts introduced at OLS so far,3+ hours / week,"Weekly emails from the organisers, Slack channels to connect with others, Google groups for tracking weekly information, Website with links to various resources, All of the above",I have attended all the cohort calls so far,5,Yes +5,5,All of the above,Maybe more discussions/talks by the experts,I have been able to use ALL concepts introduced at OLS so far,1-2 hours / week,All of the above,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,4,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers","Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others",I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",4,Maybe +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Opportunity to get to know others","Breakout room activities, Shared note-taking on the google doc",I have been able to use ALL concepts introduced at OLS so far,1-2 hours / week,Weekly emails from the organisers,I have attended all except one,4,Yes +4,5,"Introduction and icebreaker led by the hosts, Talks by the guest speakers, Opportunity to get to know others","Information on before, during and after the call",I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I watched all the cohort calls on YouTube, but have not attended any call so far",5,Yes +4,4,All of the above,Opportunity to get to know others,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,Weekly emails from the organisers,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +4,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others, All of the above","Information on before, during and after the call",I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I watched all the cohort calls on YouTube, but have not attended any call so far",4,Yes +5,4,All of the above,"Breakout room activities, Opportunity to get to know others",I have been able to use MOST concepts introduced at OLS so far,<1 hour / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Maybe +4,4,"Information on before, during and after the call, Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others",Opportunity to get to know others,I have been able to use ALL concepts introduced at OLS so far,<1 hour / week,"Weekly emails from the organisers, Slack channels to connect with others","I watched all the cohort calls on YouTube, but have not attended any call so far",4,Yes +4,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers","Breakout room activities, Opportunity to get to know others, I have not been getting much out of the breakout room activities yet. I think that meeting with experts there will be more opportunity to get to know other folks in the cohort",I have been able to use MOST concepts introduced at OLS so far,<1 hour / week,"Weekly emails from the organisers, Slack channels to connect with others, Website with links to various resources",I have attended all the cohort calls so far,5,Yes +4,4,All of the above,"Information on before, during and after the call",I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Maybe +4,4,"Introduction and icebreaker led by the hosts, Shared note-taking on the google doc","Information on before, during and after the call, Breakout room activities",I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Introduction and icebreaker led by the hosts, Talks by the guest speakers, Shared note-taking on the google doc","Information on before, during and after the call",I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Website with links to various resources","I watched all the cohort calls on YouTube, but have not attended any call so far",4,Yes +4,4,"Information on before, during and after the call, Talks by the guest speakers",Breakout room activities,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Maybe +5,5,All of the above,Breakout room activities,I have been able to use ALL concepts introduced at OLS so far,1-2 hours / week,All of the above,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,3,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc",Opportunity to get to know others,I have been able to use SOME concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Website with links to various resources","I watched all the cohort calls on YouTube, but have not attended any call so far",2,Maybe +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others, All of the above","Breakout room activities, Opportunity to get to know others",I have been able to use ALL concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Slack channels to connect with others, Google groups for tracking weekly information, Website with links to various resources, All of the above","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc",Is there a way to set automated email for checking in individually with different projects (personal email asking how they are doing?),I have been able to use MOST concepts introduced at OLS so far,<1 hour / week,"Slack channels to connect with others, Google groups for tracking weekly information, Website with links to various resources",I have attended all the cohort calls so far,4,Yes +5,4,All of the above,Shared note-taking on the google doc,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others",Breakout room activities,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others",I have missed two cohort calls and watched the missed one on YouTube,5,Yes +4,3,"Information on before, during and after the call, Talks by the guest speakers, Opportunity to get to know others",Timming. Es mucho para hacer en poco tiempo.,I have been able to use SOME concepts introduced at OLS so far,3+ hours / week,All of the above,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",3,Yes +5,5,"Information on before, during and after the call, Talks by the guest speakers",Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Talks by the guest speakers, Breakout room activities","Information on before, during and after the call, Breakout room activities",I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,Slack channels to connect with others,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,4,"Information on before, during and after the call, Talks by the guest speakers, Shared note-taking on the google doc",Opportunity to get to know others,I have been able to use SOME concepts introduced at OLS so far,<1 hour / week,Website with links to various resources,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc","The timing, narrative and speed of the calls has been good for me! I o",I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Review notes from mentor mentors, ","I've been able to join most cohort calls, but have caught up on some missed sessions on YouTube.",4,Yes +5,5,"Information on before, during and after the call, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others",None ,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Shared note-taking on the google doc, Opportunity to get to know others",Breakout room activities,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,Weekly emails from the organisers,I have attended all calls except one,4,Yes +5,5,"Information on before, during and after the call, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc","Introduction and icebreaker led by the hosts, Opportunity to get to know others",I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",4,Maybe +4,4,"Introduction and icebreaker led by the hosts, Shared note-taking on the google doc","Information on before, during and after the call, Introduction and icebreaker led by the hosts",I have been able to use SOME concepts introduced at OLS so far,2-3 hours / week,Slack channels to connect with others,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",4,Yes +5,5,"Information on before, during and after the call, Talks by the guest speakers",Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,,"Weekly emails from the organisers, Slack channels to connect with others, Website with links to various resources",I have yet to watch all the cohort call videos,4,Yes +5,5,"Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Opportunity to get to know others","Information on before, during and after the call",I have been able to use MOST concepts introduced at OLS so far,<1 hour / week,"Weekly emails from the organisers, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes \ No newline at end of file diff --git a/data/participant_feedback/mid_cohort/OLS-6.csv b/data/participant_feedback/mid_cohort/OLS-6.csv new file mode 100644 index 0000000..df1f00b --- /dev/null +++ b/data/participant_feedback/mid_cohort/OLS-6.csv @@ -0,0 +1,15 @@ +OLS is helping me work openly,OLS is helping me encourage others to work openly,Which of the following aspects of the cohort call work well?,What should we improve in cohort calls?,Which of the following statements is true regarding the usefulness of the topics introduced at the OLS?,How much time do you spend on assignments on average? (not meetings),Which of the following mode of communication you find most effective?,How many cohort calls have been able to attend or watch in this round?,To what extent did your mentor meet your expectations?,Would you like to work with your mentor in future? +4,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Shared note-taking on the google doc",Breakout room activities,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others",Timing,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,Weekly emails from the organisers,I have attended all the cohort calls so far,4,Maybe +4,3,All of the above,"Introduction and icebreaker led by the hosts, Maybe read the ice breaker responses for more acknowledgment of responses. ",I have been able to use SOME concepts introduced at OLS so far,3+ hours / week,"Weekly emails from the organisers, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",4,Yes +4,4,All of the above,Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,All of the above,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",4,Yes +5,5,"All of the above, calls are recorded so i can watch later (I am in an odd timezone)",none,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,All of the above,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +4,4,"Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc","nothing, it works",I have been able to use MOST concepts introduced at OLS so far,"""some"" hours when I can, unfortunately not on a regular basis","Weekly emails from the organisers, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,All of the above,Nonr,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,All of the above,"I watched all the cohort calls on YouTube, but have not attended any call so far",5,Yes +4,4,All of the above,Opportunity to get to know others,I have been able to use ALL concepts introduced at OLS so far,1-2 hours / week,Weekly emails from the organisers,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +4,4,All of the above,n/a,I have been able to use SOME concepts introduced at OLS so far,3+ hours / week,All of the above,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",4,Yes +4,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Shared note-taking on the google doc",It's really great! I've loved the speakers and have learnt so much. ,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +4,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Opportunity to get to know others",Shared note-taking on the google doc,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,Weekly emails from the organisers,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +4,4,"Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc",N/A,I have been able to use SOME concepts introduced at OLS so far,<1 hour / week,Slack channels to connect with others,3-4 cohort calls and the rest on Youtube,4,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others, All of the above",Breakout room activities,I have been able to use ALL concepts introduced at OLS so far,1-2 hours / week,Weekly emails from the organisers,I have attended all the cohort calls so far,4,Maybe +4,4,All of the above,Opportunity to get to know others,I have been able to use SOME concepts introduced at OLS so far,3+ hours / week,All of the above,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",4,Yes \ No newline at end of file diff --git a/data/participant_feedback/mid_cohort/OLS-7.csv b/data/participant_feedback/mid_cohort/OLS-7.csv new file mode 100644 index 0000000..60efee1 --- /dev/null +++ b/data/participant_feedback/mid_cohort/OLS-7.csv @@ -0,0 +1,33 @@ +OLS is helping me work openly,OLS is helping me encourage others to work openly,Which of the following aspects of the cohort call work well?,What should we improve in cohort calls?,Which of the following statements is true regarding the usefulness of the topics introduced at the OLS?,How much time do you spend on assignments on average? (not meetings),Which of the following mode of communication you find most effective?,How many cohort calls have been able to attend or watch in this round?,To what extent did your mentor meet your expectations?,Would you like to work with your mentor in future? +5,5,All of the above,All of the above,I have been able to use SOME concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Slack channels to connect with others, Website with links to various resources",Attended 3 calls and watched the missed call on youtube. ,5,Yes +3,3,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others, All of the above",None of the above ,I have been able to use SOME concepts introduced at OLS so far,<1 hour / week,Weekly emails from the organisers,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",4,Yes +5,5,"Information on before, during and after the call",Shared note-taking on the google doc,I have been able to use SOME concepts introduced at OLS so far,2-3 hours / week,Weekly emails from the organisers,"I have attended 1-2 cohort calls, and watched the missed call on YouTube, I have yet to watch all the cohort call videos",5,Yes +5,4,"Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities","Information on before, during and after the call, Opportunity to get to know others",I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Slack channels to connect with others, Website with links to various resources",I have missed 2 cohort calls and watched the call on YouTube,5,Yes +5,5,All of the above,"Breakout room activities, Add more time for break out room activities ",I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,All of the above,i have attended most of the cohort calls ,5,Yes +4,4,All of the above,scheduling,I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,Weekly emails from the organisers,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,3,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Opportunity to get to know others",Time the calls are scheduled to start ,I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Slack channels to connect with others, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +4,4,All of the above,Talks by the guest speakers,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Slack channels to connect with others, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",4,Yes +4,4,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others","maybe let some presentations be longer, more in depth",I have been able to use MOST concepts introduced at OLS so far,<1 hour / week,"Weekly emails from the organisers, Slack channels to connect with others, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,All of the above,"Information on before, during and after the call, Talks by the guest speakers, Shared note-taking on the google doc",I have been able to use SOME concepts introduced at OLS so far,<1 hour / week,"Website with links to various resources, Whatsapp ","I watched all the cohort calls on YouTube, but have not attended any call so far",4,Yes +5,3,"Information on before, during and after the call, Talks by the guest speakers, Shared note-taking on the google doc",Nothing in particular comes to mind,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,Weekly emails from the organisers,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +4,4,"Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities","Information on before, during and after the call, Shared note-taking on the google doc, Which of the following aspects of the cohort call work well",I have been able to use SOME concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Slack channels to connect with others",I was not able to attend the first call or last week's call. ,4,Yes +5,5,All of the above,"Breakout room activities, Opportunity to get to know others, Break out rooms are often too short to get to know other people",I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,All of the above,Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,3+ hours / week,"Weekly emails from the organisers, Slack channels to connect with others, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others, All of the above",nothing as of now,I have been able to use SOME concepts introduced at OLS so far,3+ hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Opportunity to get to know others",Translation in french ,I have been able to use SOME concepts introduced at OLS so far,3+ hours / week,"Weekly emails from the organisers, Slack channels to connect with others, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",3,Maybe +5,5,All of the above,"Breakout room activities, Shared note-taking on the google doc",I have been able to use SOME concepts introduced at OLS so far,3+ hours / week,All of the above,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",4,Yes +5,5,"Information on before, during and after the call, Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others",Breakout room activities,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Website with links to various resources","I have attended 3 cohort calls, and watched the missed call on YouTube",5,Yes +5,4,"Information on before, during and after the call, Talks by the guest speakers, Opportunity to get to know others",Breakout room activities,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,Weekly emails from the organisers,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Opportunity to get to know others",-,I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +4,5,"Information on before, during and after the call, Opportunity to get to know others",Breakout room activities,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others","Breakout room activities, Opportunity to get to know others",I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others, All of the above",Breakout room activities,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,practice how to work with other people,short videos to be shared with students instead of online face to face talks (e-meetings),I have been able to use VERY FEW concepts introduced at OLS so far,3+ hours / week,Weekly emails from the organisers,"I watched all the cohort calls on YouTube, but have not attended any call so far",1,No +5,5,Introduction and icebreaker led by the hosts,Breakout room activities,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,Weekly emails from the organisers,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,Introduction and icebreaker led by the hosts,Breakout room activities,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Google groups for tracking weekly information","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,All of the above,One hour or 30mins reminders before cohort calls,I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,All of the above,"Information on before, during and after the call",I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended more than 2 cohort calls, and watched some missed calls on YouTube but there are some of them that I have yet to watch",5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Shared note-taking on the google doc, Opportunity to get to know others, All of the above, Learning from others ",Adding more time for breakout rooms,I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Slack channels to connect with others, Google groups for tracking weekly information, Website with links to various resources, All of the above",i have attended in most cohort calls and watched 2 on youtube ,5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Opportunity to get to know others",-,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,Weekly emails from the organisers,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others","Introduction and icebreaker led by the hosts, Breakout room activities",I have been able to use SOME concepts introduced at OLS so far,2-3 hours / week,"Weekly emails from the organisers, Slack channels to connect with others","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +4,4,"Information on before, during and after the call, Introduction and icebreaker led by the hosts","Haven't attended much. Was seeing mainly in Youtube, so would like to skip the question.",I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,OLS Calendar,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes \ No newline at end of file diff --git a/data/participant_feedback/mid_cohort/OLS-8.csv b/data/participant_feedback/mid_cohort/OLS-8.csv new file mode 100644 index 0000000..934dc9e --- /dev/null +++ b/data/participant_feedback/mid_cohort/OLS-8.csv @@ -0,0 +1,14 @@ +OLS is helping me work openly,OLS is helping me encourage others to work openly,Which of the following aspects of the cohort call work well?,What should we improve in cohort calls?,Which of the following statements is true regarding the usefulness of the topics introduced at the OLS?,How much time do you spend on assignments on average? (not meetings),Which of the following mode of communication you find most effective?,How many cohort calls have been able to attend or watch in this round?,To what extent did your mentor meet your expectations?,Would you like to work with your mentor in future? +4,4,"Information on before, during and after the call, Talks by the guest speakers","Introduction and icebreaker led by the hosts, Breakout room activities, Opportunity to get to know others",I have been able to use MOST concepts introduced at OLS so far,3+ hours / week,"Weekly emails from the organisers, Slack channels to connect with others",I have attended all the cohort calls so far,4,Maybe +4,4,All of the above,Breakout room activities,I have been able to use ALL concepts introduced at OLS so far,2-3 hours / week,Weekly emails from the organisers,I have attended all the cohort calls so far,5,Yes +4,5,"Talks by the guest speakers, Breakout room activities, Opportunity to get to know others","Information on before, during and after the call, Talks by the guest speakers",I have been able to use VERY FEW concepts introduced at OLS so far,2-3 hours / week,Weekly emails from the organisers,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Talks by the guest speakers, Breakout room activities",Opportunity to get to know others,I have been able to use MOST concepts introduced at OLS so far,3+ hours / week,"Weekly emails from the organisers, Slack channels to connect with others, Google groups for tracking weekly information",I have attended all the cohort calls so far,5,Yes +5,5,All of the above,"Information on before, during and after the call",I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,All of the above,Some,5,Yes +5,5,All of the above,Breakout room activities,I have been able to use SOME concepts introduced at OLS so far,<1 hour / week,"Weekly emails from the organisers, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",3,Yes +4,4,"Introduction and icebreaker led by the hosts, Talks by the guest speakers, Breakout room activities, Opportunity to get to know others","Information on before, during and after the call",I have been able to use MOST concepts introduced at OLS so far,3+ hours / week,"Slack channels to connect with others, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +3,4,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others, Providing recordings/notes of calls in a timely manner afterwards. ","Opportunity to get to know others, Sharing recording transcripts also would be helpful. ",I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Google groups for tracking weekly information, Website with links to various resources, Slack is useful, but is a shame that is a free version so lose access to some posts after 90 days. Perhaps could migrate info to open source version, Mattermost instead? ","I have attended 1-2 cohort calls, and watched the missed call on YouTube",4,Yes +4,4,"Information on before, during and after the call, Shared note-taking on the google doc",NA,I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others, Website with links to various resources",I have yet to watch all the cohort call videos,4,Maybe +5,4,"Information on before, during and after the call, Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others","Breakout room activities, I think is more my difficulty to adapt. You are making and excellent job!",I have been able to use MOST concepts introduced at OLS so far,2-3 hours / week,All of the above,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Maybe +4,4,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Shared note-taking on the google doc","Information on before, during and after the call, Breakout room activities, Opportunity to get to know others",I have been able to use MOST concepts introduced at OLS so far,<1 hour / week,"Weekly emails from the organisers, Slack channels to connect with others",I have attended all the cohort calls so far,5,Yes +4,4,"Introduction and icebreaker led by the hosts, Breakout room activities, Shared note-taking on the google doc",Opportunity to get to know others,I have been able to use SOME concepts introduced at OLS so far,1-2 hours / week,Weekly emails from the organisers,"I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes +5,5,"Information on before, during and after the call, Introduction and icebreaker led by the hosts, Talks by the guest speakers, Shared note-taking on the google doc, Opportunity to get to know others","Information on before, during and after the call, Talks by the guest speakers, Breakout room activities",I have been able to use MOST concepts introduced at OLS so far,1-2 hours / week,"Weekly emails from the organisers, Slack channels to connect with others, Website with links to various resources","I have attended 1-2 cohort calls, and watched the missed call on YouTube",5,Yes \ No newline at end of file diff --git a/data/participant_feedback/post_cohort/OLS-1.csv b/data/participant_feedback/post_cohort/OLS-1.csv new file mode 100644 index 0000000..4b39fc1 --- /dev/null +++ b/data/participant_feedback/post_cohort/OLS-1.csv @@ -0,0 +1,23 @@ +How was your overall project leadership experience in OLS?,How was your overall experience with the mentor-mentee calls?,How was your overall experience with the cohort calls?,Which of the following topics introduced in these cohort calls were useful for your open science journey?,"Would you be interested in joining as a mentor, call facilitator, or expert in the next cohort?",Would you recommend this program to others? +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Project development: Agile and iterative project management methods & Open Aspects, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Final presentation call (open and live streamed)",,Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Knowledge Dissemination: Citizen science, open education, Preprints, open protocols, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mental health, self care, personal ecology, Ally skills, Final presentation rehearsals, Final presentation call (open and live streamed)","No, I would not be able to return to OLS-2",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Project development: Agile and iterative project management methods & Open Aspects, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able to meet MOST of my goals,Mentoring calls were somewhat useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions","I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able to meet ALL my goals,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Knowledge Dissemination: Citizen science, open education, Preprints, open protocols, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open agenda and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were mostly useful,"GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Mental health, self care, personal ecology, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were somewhat useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Project development: Agile and iterative project management methods & Open Aspects, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Open agenda and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as a collaborator to run an OLS cohort for my network,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Citizen science, open education, Preprints, open protocols, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Final presentation call (open and live streamed)","No, I would not be able to return to OLS-2",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Citizen science, open education, Preprints, open protocols, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor,Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Citizen science, open education, Preprints, open protocols, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Open agenda and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Citizen science, open education, Preprints, open protocols, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Open agenda and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as a collaborator to run an OLS cohort for my network, I would like to receive mentoring training and I will be good to help a mentor in some of the mentoring work in either OLS-2 or subsequent cohorts.",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Mental health, self care, personal ecology, Career Guidance calls, Open agenda and social calls",Yes I'd like to return as a mentor,Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: Citizen science, open education, Preprints, open protocols, Mountain of engagement and Community interactions, Open agenda and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Citizen science, open education, Preprints, open protocols, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Open agenda and social calls, Final presentation call (open and live streamed)",Yes I'd like to return as a collaborator to run an OLS cohort for my network,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Citizen science, open education, Preprints, open protocols, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open agenda and social calls",Yes I'd like to return as a mentor,Yes +I was able to meet ALL my goals,Mentoring calls were mostly useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Open agenda and social calls","No, I would not be able to return to OLS-2, I don't feel qualified yet, and I feel I would do a disservice to the mentee",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"Licensing and Code of Conduct, Knowledge Dissemination: Citizen science, open education, Preprints, open protocols, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Mental health, self care, personal ecology, Ally skills","I am not sure yet, but ask me later when you have launched OLS-2",Yes +Goals evolved as we learned but we were very productive ,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Knowledge Dissemination: Citizen science, open education, Preprints, open protocols, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Ally skills","Yes I'd like to return as an expert, I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Open agenda and social calls, Final presentation rehearsals","I am not sure yet, but ask me later when you have launched OLS-2, definitely, tho depending on the role. I'd love to be a mentor but not sure my experience will be as useful to academics ",Yes +I was able to meet MOST of my goals,Mentoring calls were somewhat useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Citizen science, open education, Preprints, open protocols, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Open agenda and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Ally skills, Career Guidance calls, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Citizen science, open education, Preprints, open protocols, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Open agenda and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-2, I'm not sure I have the skills as a mentor/expert?",Yes \ No newline at end of file diff --git a/data/participant_feedback/post_cohort/OLS-2.csv b/data/participant_feedback/post_cohort/OLS-2.csv new file mode 100644 index 0000000..51abab1 --- /dev/null +++ b/data/participant_feedback/post_cohort/OLS-2.csv @@ -0,0 +1,33 @@ +How was your overall project leadership experience in OLS?,How was your overall experience with the mentor-mentee calls?,How was your overall experience with the cohort calls?,Which of the following topics introduced in these cohort calls were useful for your open science journey?,"Would you be interested in joining as a mentor, call facilitator, or expert in the next cohort?",Would you recommend this program to others? +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Applying FAIR principles on research components, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Open agenda and social calls, Final presentation rehearsals, Final presentation call (open and live streamed), Breakout rooms were really nice exploit to get to know other participants and share experience. ","Well, I would love to but I dont think I have suffiecent expertise yet. ",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions","I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions","I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were somewhat useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Persona and pathways and inviting contributions, Ally skills, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Licensing and Code of Conduct, Project development: Agile and iterative project management methods & Open Aspects, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mental health, self care, personal ecology","I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a collaborator to run an OLS cohort for my network, I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mental health, self care, personal ecology, Ally skills, Final presentation rehearsals, Final presentation call (open and live streamed), The ones I haven't ticked are mainly because I haven't caught up with them yet. Generally - all useful (in varying amounts). The less useful ones were only less useful because I knew a moderate amount about them already. Several, that I thought I knew a fair amount about, turns out I didn't / there was still a lot for me to learn!","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Open agenda and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Open agenda and social calls, Final presentation call (open and live streamed)",I would like to return as a mentor or expert but not in the next year since I promised myself to not commit to more projects. Please keep in touch though!,Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Open agenda and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor,Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Open agenda and social calls, Final presentation rehearsals, Final presentation call (open and live streamed), Breakout rooms was so useful too.","Not yet actually. I attended this project as a helper. My contribution was not much. I surely need to improve myself. Maybe after an individual attendence to a project for OLS-3, I can find opportunity for improvements. Then I love to join as a mentor.",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: open education, Preprints, open protocols, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mental health, self care, personal ecology, Ally skills, Final presentation call (open and live streamed)","No, I would not be able to return to OLS-2",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: open education, Preprints, open protocols, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Career Guidance calls","Yes I'd like to return as a mentor, Yes I'd like to return as an expert",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Mental health, self care, personal ecology","I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Open agenda and social calls, Final presentation rehearsals, Final presentation call (open and live streamed), As I read this list I am reminded on all I learnt and all I hope to read further into!","Yes I'd like to return as a mentor, I am open to discussing further engagement but do not want to take on more than I am equipped to deliver.",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were somewhat useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Designing for inclusion: Implicit bias, Diversity and Inclusion, Ally skills, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, I'd love to be involved in the future (e.g., as a mentor or expert, as I indicated), but probably not until next year at least, as I need to prioritize some other aspects of my life/work this year. ",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: open education, Preprints, open protocols, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open agenda and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-2",Yes +"I was able to meet ALL my project goals, I had some personal goals which were not completed - but that's fine :)",Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Career Guidance calls, They were all useful! The ones I've ticked were just the particularly relevant ones at this stage.","I would like to return to OLS, but right now I'm crazy busy and need to focus on some work projects. I'm happy to do coordinate a coworking call for OLS-3 (or something similar which is low threshold) and I can be in the loop for OLS-4 or later for a mentor/expert role (I'm happily assuming it continues forever) ",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Open agenda and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Final presentation call (open and live streamed)",I would not be able to return to OLS-3 but I am hopeful to return to OLS-4 with an active role.,Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills","I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Project development: Agile and iterative project management methods & Open Aspects, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Persona and pathways and inviting contributions, Mental health, self care, personal ecology","Yes I'd like to return as a mentor, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,"They were mostly useful, They were always useful","Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Open agenda and social calls, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Knowledge Dissemination: open education, Preprints, open protocols, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Ally skills, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were somewhat useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Career Guidance calls, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-2",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were somewhat useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Career Guidance calls, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were somewhat useful,They were somewhat useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: open education, Preprints, open protocols, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion",Yes I'd like to return as a mentor,Yes \ No newline at end of file diff --git a/data/participant_feedback/post_cohort/OLS-3.csv b/data/participant_feedback/post_cohort/OLS-3.csv new file mode 100644 index 0000000..a9518de --- /dev/null +++ b/data/participant_feedback/post_cohort/OLS-3.csv @@ -0,0 +1,36 @@ +How was your overall project leadership experience in OLS?,How was your overall experience with the mentor-mentee calls?,How was your overall experience with the cohort calls?,Which of the following topics introduced in these cohort calls were useful for your open science journey?,"Would you be interested in joining as a mentor, call facilitator, or expert in the next cohort?",Would you recommend this program to others? +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were mostly useful,"Licensing and Code of Conduct, Mental health, self care, personal ecology, Career Guidance calls, Final presentation call (open and live streamed)","No, I would not be able to return to OLS-4",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, open protocols, citizen science, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Career Guidance calls",Yes I'd like to return as an expert,Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-4",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Open office/co-working hours and social calls","I am not sure yet, but ask me later when you have launched OLS-4",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles on research components, Mental health, self care, personal ecology, Career Guidance calls, Open office/co-working hours and social calls",Yes I'd like to return as a mentor,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles on research components, Mountain of engagement and Community interactions, Final presentation rehearsals","No, but only because I really would not have the time",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mental health, self care, personal ecology, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-4",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were somewhat useful,"Knowledge Dissemination: Preprints, open protocols, citizen science, Designing for inclusion: Implicit bias, Diversity and Inclusion","I am not sure yet, but ask me later when you have launched OLS-4",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles on research components, Persona and pathways and inviting contributions, Final presentation call (open and live streamed)","I may join as a mentee cause ı need to learn more, still ! :)",Yes +I was able to meet MOST of my goals,Mentoring calls were somewhat useful,They were not useful for me,"Designing for inclusion: Implicit bias, Diversity and Inclusion","I am not sure yet, but ask me later when you have launched OLS-4",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Mental health, self care, personal ecology, Open office/co-working hours and social calls, Final presentation rehearsals",Yes I'd like to return as a collaborator to run an OLS cohort for my network,Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, open protocols, citizen science, Mental health, self care, personal ecology, Final presentation rehearsals","I am not sure yet, but ask me later when you have launched OLS-4",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Designing for inclusion: Implicit bias, Diversity and Inclusion, Mental health, self care, personal ecology, Ally skills, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","No, I would not be able to return to OLS-4, Please contact me for OLS-5 :)",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: Preprints, open protocols, citizen science, Designing for inclusion: Implicit bias, Diversity and Inclusion","I am not sure yet, but ask me later when you have launched OLS-4",Yes +I was able to meet MOST of my goals,Mentoring calls were somewhat useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Applying FAIR principles on research components, Persona and pathways and inviting contributions, Ally skills, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor,Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles on research components","No, I would not be able to return to OLS-4",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions","I am not sure yet, but ask me later when you have launched OLS-4",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles on research components, Final presentation rehearsals","I am not sure yet, but ask me later when you have launched OLS-4",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles on research components, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a collaborator to run an OLS cohort for my network, I am not sure yet, but ask me later when you have launched OLS-4",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions","No, I would not be able to return to OLS-4",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Licensing and Code of Conduct, Career Guidance calls","No, I would not be able to return to OLS-4",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Applying FAIR principles on research components","I am not sure yet, but ask me later when you have launched OLS-4",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,Persona and pathways and inviting contributions,Yes I'd like to return as a collaborator to run an OLS cohort for my network,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Knowledge Dissemination: Preprints, open protocols, citizen science, Designing for inclusion: Implicit bias, Diversity and Inclusion, Persona and pathways and inviting contributions","I am not sure yet, but ask me later when you have launched OLS-4",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Ally skills, Career Guidance calls, Open office/co-working hours and social calls, Final presentation rehearsals","I am not sure yet, but ask me later when you have launched OLS-4",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were somewhat useful,"Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles on research components, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-4",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mental health, self care, personal ecology","No, I would not be able to return to OLS-4",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mental health, self care, personal ecology, Final presentation call (open and live streamed)",Maybe OLS-5. I will need to re-assimilate all I was taught in OLS-3,Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Project development: Agile and iterative project management methods & Open Aspects, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as an expert, for OLS-4 or later (whatever can fit your )",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-4",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Open office/co-working hours and social calls, Final presentation call (open and live streamed)","Yes I'd like to return as an expert, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles on research components, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later when you have launched OLS-4",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,"They were mostly useful, They were always useful","Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Career Guidance calls, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor,No +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, open protocols, citizen science, Applying FAIR principles on research components, Designing for inclusion: Implicit bias, Diversity and Inclusion, Ally skills, Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor,Yes \ No newline at end of file diff --git a/data/participant_feedback/post_cohort/OLS-4.csv b/data/participant_feedback/post_cohort/OLS-4.csv new file mode 100644 index 0000000..abb1f7a --- /dev/null +++ b/data/participant_feedback/post_cohort/OLS-4.csv @@ -0,0 +1,20 @@ +How was your overall project leadership experience in OLS?,How was your overall experience with the mentor-mentee calls?,How was your overall experience with the cohort calls?,Which of the following topics introduced in these cohort calls were useful for your open science journey?,"Would you be interested in joining as a mentor, call facilitator, or expert in the next cohort?",Would you recommend this program to others? +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call",Yes I'd like to return as an expert,Yes +I was able to meet ALL my goals,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls",Yes I'd like to return as a mentor,Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation rehearsals","Yes I'd like to return as a mentor, Yes I'd like to return as an expert",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Diversity & Inclusion, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Actually all were useful, those ones were just my favourite ones :)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Not sure whether I'm totally prepared for it, but I'd like to :)",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Citizen Science, Diversity & Inclusion, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Diversity & Inclusion, Open Leadership: Career Guidance call","Yes I'd like to return as a mentor, Yes I'd like to return as an expert",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Ally skills, Open Leadership: Career Guidance call, Final presentation rehearsals, Final presentation call (open and live streamed)","No, I would not be able to return to OLS-5",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Citizen Science, Ally skills, Open Leadership: Career Guidance call, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as an expert, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Project development: Agile and iterative project management methods & Open Aspects, Diversity & Inclusion, Persona and pathways and inviting contributions, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)",I don't have much experience as an active OS community member or developer. I would feel comfortable with mentoring someone taking their first steps on programming or web dev.,Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as an expert,Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Data management plans, software citation, Persona and pathways and inviting contributions, Open Leadership: Career Guidance call, Open office/co-working hours and social calls",Yes I'd like to return as a mentor,Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor,Yes +"I worked consistently on my project, and met part of my goals.",Mentoring calls were somewhat useful,They were always useful,"Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Diversity & Inclusion, Mental health, self care, personal ecology, Final presentation rehearsals","Yes I'd like to return as a mentor, I'd like to return as a mentor not now, but in the near future (e. g., OLS-6)",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Ally skills","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a call facilitator",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Citizen Science, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Final presentation rehearsals, Final presentation call (open and live streamed)",I have applied for OLS-5 as a mentee to build my project further.,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Final presentation rehearsals, Final presentation call (open and live streamed), I still need to watch some of the recordings","Yes I'd like to return as a call facilitator, I am not sure yet, but ask me later",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Data management plans, software citation, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes \ No newline at end of file diff --git a/data/participant_feedback/post_cohort/OLS-5.csv b/data/participant_feedback/post_cohort/OLS-5.csv new file mode 100644 index 0000000..dbd670d --- /dev/null +++ b/data/participant_feedback/post_cohort/OLS-5.csv @@ -0,0 +1,24 @@ +How was your overall project leadership experience in OLS?,How was your overall experience with the mentor-mentee calls?,How was your overall experience with the cohort calls?,Which of the following topics introduced in these cohort calls were useful for your open science journey?,"Would you be interested in joining as a mentor, call facilitator, or expert in the next cohort?",Would you recommend this program to others? +I was able to meet ALL my goals,Mentoring calls were mostly useful,They were somewhat useful,"Tooling and Roadmapping (open canvas, project vision etc.), Persona and pathways and inviting contributions",Yes I'd like to return as a call facilitator,Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls",I will return as a mentee,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were somewhat useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions","I am not sure yet, but ask me later",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Diversity & Inclusion, Persona and pathways and inviting contributions, Open Leadership: Career Guidance call","Yes I'd like to return as a mentor, Yes I'd like to return as a call facilitator, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Ally skills, Open Leadership: Career Guidance call, Final presentation rehearsals","Yes I'd like to return as an expert, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Mental health, self care, personal ecology","Yes I'd like to return as a call facilitator, I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,"Mentoring calls were mostly useful, Mentoring calls were always useful",They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Open Leadership: Career Guidance call, Open office/co-working hours and social calls","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a call facilitator, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: Preprints, Training and Code Publishing, Diversity & Inclusion, Persona and pathways and inviting contributions, Open Leadership: Career Guidance call, Open office/co-working hours and social calls","Yes I'd like to return as a mentor, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Licensing and Code of Conduct, Knowledge Dissemination: Preprints, Training and Code Publishing, Diversity & Inclusion, Open office/co-working hours and social calls","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a call facilitator",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were mostly useful,They were somewhat useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Persona and pathways and inviting contributions","No, I would not be able to return to OLS-6",Maybe +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a call facilitator",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Persona and pathways and inviting contributions, Final presentation rehearsals, Final presentation call (open and live streamed)","No, I would not be able to return to OLS-6",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: Preprints, Training and Code Publishing, Citizen Science, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology","I am not sure yet, but ask me later, ",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Data management plans, software citation",Yes I'd like to return as a mentor,Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Diversity & Inclusion, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Data management plans, software citation, Mountain of engagement and Community interactions, Mental health, self care, personal ecology","I am not sure yet, but ask me later, ",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Open office/co-working hours and social calls, Final presentation rehearsals","Yes I'd like to return as a collaborator to run an OLS cohort for my network, I am not sure yet, but ask me later",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Final presentation call (open and live streamed)",Maybe in OLS-7?,Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Open Leadership: Career Guidance call, Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes \ No newline at end of file diff --git a/data/participant_feedback/post_cohort/OLS-6.csv b/data/participant_feedback/post_cohort/OLS-6.csv new file mode 100644 index 0000000..8b71bd5 --- /dev/null +++ b/data/participant_feedback/post_cohort/OLS-6.csv @@ -0,0 +1,31 @@ +How was your overall project leadership experience in OLS?,How was your overall experience with the mentor-mentee calls?,How was your overall experience with the cohort calls?,Which of the following topics introduced in these cohort calls were useful for your open science journey?,"Would you be interested in joining as a mentor, call facilitator, or expert in the next cohort?",Would you recommend this program to others? +I was able to meet ALL my goals,Mentoring calls were mostly useful,They were somewhat useful,"Tooling and Roadmapping (open canvas, project vision etc.), Persona and pathways and inviting contributions",Yes I'd like to return as a call facilitator,Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls",I will return as a mentee,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were somewhat useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions","I am not sure yet, but ask me later",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Diversity & Inclusion, Persona and pathways and inviting contributions, Open Leadership: Career Guidance call","Yes I'd like to return as a mentor, Yes I'd like to return as a call facilitator, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Ally skills, Open Leadership: Career Guidance call, Final presentation rehearsals","Yes I'd like to return as an expert, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Mental health, self care, personal ecology","Yes I'd like to return as a call facilitator, I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,"Mentoring calls were mostly useful, Mentoring calls were always useful",They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Open Leadership: Career Guidance call, Open office/co-working hours and social calls","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a call facilitator, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: Preprints, Training and Code Publishing, Diversity & Inclusion, Persona and pathways and inviting contributions, Open Leadership: Career Guidance call, Open office/co-working hours and social calls","Yes I'd like to return as a mentor, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Licensing and Code of Conduct, Knowledge Dissemination: Preprints, Training and Code Publishing, Diversity & Inclusion, Open office/co-working hours and social calls","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a call facilitator",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were mostly useful,They were somewhat useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Persona and pathways and inviting contributions","No, I would not be able to return to OLS-6",Maybe +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a call facilitator",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Persona and pathways and inviting contributions, Final presentation rehearsals, Final presentation call (open and live streamed)","No, I would not be able to return to OLS-6",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: Preprints, Training and Code Publishing, Citizen Science, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology","I am not sure yet, but ask me later, ",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Data management plans, software citation",Yes I'd like to return as a mentor,Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Diversity & Inclusion, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Data management plans, software citation, Mountain of engagement and Community interactions, Mental health, self care, personal ecology","I am not sure yet, but ask me later, ",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Open office/co-working hours and social calls, Final presentation rehearsals","Yes I'd like to return as a collaborator to run an OLS cohort for my network, I am not sure yet, but ask me later",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Final presentation call (open and live streamed)",Maybe in OLS-7?,Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Open Leadership: Career Guidance call, Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mental health, self care, personal ecology","Yes I'd like to return as an expert, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were somewhat useful,"Licensing and Code of Conduct, Data management plans, software citation","I am not sure yet, but ask me later",Maybe +I was able work on my project but only PARTIALLY,Mentoring calls were mostly useful,They were mostly useful,Can't accurately answer as haven't worked through all of the sessions,"I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Data management plans, software citation, Persona and pathways and inviting contributions, Ally skills",Yes I'd like to return as a call facilitator,Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Final presentation call (open and live streamed)",Yes I'd like to return as an expert,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,"They were somewhat useful, I could not attend","Tooling and Roadmapping (open canvas, project vision etc.), Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as a collaborator to run an OLS cohort for my network,Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Data management plans, software citation, Mountain of engagement and Community interactions, Mental health, self care, personal ecology, Open office/co-working hours and social calls","Yes I'd like to return as a call facilitator, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes \ No newline at end of file diff --git a/data/participant_feedback/post_cohort/OLS-7.csv b/data/participant_feedback/post_cohort/OLS-7.csv new file mode 100644 index 0000000..3624d52 --- /dev/null +++ b/data/participant_feedback/post_cohort/OLS-7.csv @@ -0,0 +1,32 @@ +How was your overall project leadership experience in OLS?,How was your overall experience with the mentor-mentee calls?,How was your overall experience with the cohort calls?,Which of the following topics introduced in these cohort calls were useful for your open science journey?,"Would you be interested in joining as a mentor, call facilitator, or expert in the next cohort?",Would you recommend this program to others? +I was able to meet ALL my goals,Mentoring calls were always useful,I could not attend,"Licensing and Code of Conduct, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Diversity & Inclusion, Ally skills","I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Mountain of engagement and Community interactions","Yes I'd like to return as a mentor, Yes I'd like to return as a call facilitator",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call",Yes I'd like to return as an expert,Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Mental health, self care, personal ecology, Open Leadership: Career Guidance call, Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor,Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: Preprints, Training and Code Publishing, Diversity & Inclusion, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Open Leadership: Career Guidance call, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"GitHub and README files, Diversity & Inclusion, Mental health, self care, personal ecology",Yes I'd like to return as a call facilitator,Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Ally skills, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Data management plans, software citation, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation rehearsals, Social entreprise, hardware ",Yes I'd like to return as a mentor,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation rehearsals","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a call facilitator, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation rehearsals","I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Ally skills, Final presentation call (open and live streamed)","Yes I'd like to return as an expert, I am not sure yet, but ask me later, I don't know how but I'd like to stay involved!",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Final presentation rehearsals",Yes I'd like to return as a mentor,Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Final presentation rehearsals, I have not been able to take advantage of the co-working due to a lack of time, but I would have liked to do it.","Yes I'd like to return as a mentor, Yes I'd like to return as a call facilitator",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Diversity & Inclusion, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor,Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Diversity & Inclusion, Mental health, self care, personal ecology, Ally skills, Open office/co-working hours and social calls, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Data management plans, software citation, Mountain of engagement and Community interactions, Mental health, self care, personal ecology, Ally skills, Open office/co-working hours and social calls","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a call facilitator",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a call facilitator, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as a call facilitator, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Data management plans, software citation, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as a call facilitator",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as a call facilitator",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were somewhat useful,"Tooling and Roadmapping (open canvas, project vision etc.), Project development: Agile and iterative project management methods & Open Aspects, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as an expert,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Mountain of engagement and Community interactions","I am not sure yet, but ask me later",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Diversity & Inclusion, Persona and pathways and inviting contributions, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were somewhat useful,GitHub and README files,"No, I would not be able to return to OLS-8",Maybe +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,"They were somewhat useful, I could not attend","Tooling and Roadmapping (open canvas, project vision etc.), Diversity & Inclusion","No, I would not be able to return to OLS-8",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology","I am not sure yet, but ask me later, I'd like to help but would need to know expected time allocations",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were somewhat useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Project development: Agile and iterative project management methods & Open Aspects, Data management plans, software citation, Persona and pathways and inviting contributions, Open Leadership: Career Guidance call, Final presentation rehearsals","Yes I'd like to return as a mentor, Yes I'd like to return as a call facilitator",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"GitHub and README files, Mental health, self care, personal ecology",Yes I'd like to return as a mentor,Yes \ No newline at end of file diff --git a/data/participant_feedback/post_cohort/OLS-8.csv b/data/participant_feedback/post_cohort/OLS-8.csv new file mode 100644 index 0000000..323ee9d --- /dev/null +++ b/data/participant_feedback/post_cohort/OLS-8.csv @@ -0,0 +1,38 @@ +How was your overall project leadership experience in OLS?,How was your overall experience with the mentor-mentee calls?,How was your overall experience with the cohort calls?,Which of the following topics introduced in these cohort calls were useful for your open science journey?,"Would you be interested in joining as a mentor, call facilitator, or expert in the next cohort?",Would you recommend this program to others? +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Project development: Agile and iterative project management methods & Open Aspects, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a call facilitator",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were somewhat useful,"Licensing and Code of Conduct, GitHub and README files","No, I would not be able to return to OLS-8",Maybe +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Diversity & Inclusion, Persona and pathways and inviting contributions","Yes I'd like to return as a mentor, Yes I'd like to return as a call facilitator, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Data management plans, software citation, Ally skills, Final presentation rehearsals, Final presentation call (open and live streamed)","No, I would not be able to return to OLS-8",Maybe +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Mountain of engagement and Community interactions","Yes I'd like to return as a mentor, Yes I'd like to return as an expert",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call","I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Project development: Agile and iterative project management methods & Open Aspects, Mental health, self care, personal ecology, Ally skills","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a call facilitator",Yes +I was able to meet MOST of my goals,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mental health, self care, personal ecology, Open Leadership: Career Guidance call","I am not sure yet, but ask me later",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Open Leadership: Career Guidance call",Yes I'd like to return as a call facilitator,Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Open Leadership: Career Guidance call, Final presentation rehearsals",Yes I'd like to return as a mentor,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were somewhat useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Diversity & Inclusion, Mountain of engagement and Community interactions, Mental health, self care, personal ecology",Yes I'd like to return as a mentor,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Persona and pathways and inviting contributions, Mental health, self care, personal ecology","I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Knowledge Dissemination: Preprints, Training and Code Publishing","Yes I'd like to return as a collaborator to run an OLS cohort for my network, I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Knowledge Dissemination: Preprints, Training and Code Publishing, Citizen Science, Diversity & Inclusion",I do not define myself an expert,Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Diversity & Inclusion, Mountain of engagement and Community interactions, Mental health, self care, personal ecology, Ally skills","Yes I'd like to return as a mentor, Yes I'd like to return as an expert",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Final presentation rehearsals",Yes I'd like to return as an expert,Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Project development: Agile and iterative project management methods & Open Aspects, Data management plans, software citation, Diversity & Inclusion, Mountain of engagement and Community interactions, Mental health, self care, personal ecology, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, I am not sure yet, but ask me later",Yes +I was able to meet ALL my goals,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Data management plans, software citation, Citizen Science, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Citizen Science, Diversity & Inclusion, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation rehearsals","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a call facilitator, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Project development: Agile and iterative project management methods & Open Aspects, Diversity & Inclusion, Mental health, self care, personal ecology, Ally skills","I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Open Leadership: Career Guidance call, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a call facilitator, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were mostly useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Data management plans, software citation, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +"Over the course of OLS, we changed our original project scope and were able to meet our new set goals",Mentoring calls were always useful,They were somewhat useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Diversity & Inclusion, Persona and pathways and inviting contributions, Open Leadership: Career Guidance call, Final presentation call (open and live streamed)","Yes I'd like to return as an expert, Yes I'd like to return as a call facilitator",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were somewhat useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Open office/co-working hours and social calls","I am not sure yet, but ask me later",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,"They were always useful, I could not attend","Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a call facilitator, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Mental health, self care, personal ecology, Open Leadership: Career Guidance call, Final presentation call (open and live streamed)","No, I would not be able to return to OLS-8",Yes +I was able to meet ALL my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Diversity & Inclusion, Mental health, self care, personal ecology, Open Leadership: Career Guidance call, Final presentation call (open and live streamed)",Yes I'd like to return as a mentor,Yes +I was able work on my project but only PARTIALLY,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Data management plans, software citation, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills","Yes I'd like to return as a mentor, Yes I'd like to return as an expert, Yes I'd like to return as a call facilitator, Yes I'd like to return as a collaborator to run an OLS cohort for my network",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were mostly useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were somewhat useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct","No, I would not be able to return to OLS-8",Maybe +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Diversity & Inclusion, Open Leadership: Career Guidance call",Yes I'd like to return as a call facilitator,Yes +I was able to meet ALL my goals,Mentoring calls were always useful,I could not attend,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Knowledge Dissemination: Preprints, Training and Code Publishing, Data management plans, software citation, Citizen Science, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Ally skills, Open Leadership: Career Guidance call, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,"They were somewhat useful, I could not attend","Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, Diversity & Inclusion, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Mental health, self care, personal ecology, Open Leadership: Career Guidance call, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were somewhat useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Diversity & Inclusion, Ally skills, Final presentation rehearsals, Final presentation call (open and live streamed)","I am not sure yet, but ask me later",Yes +I was able to meet MOST of my goals,Mentoring calls were always useful,They were always useful,"Tooling and Roadmapping (open canvas, project vision etc.), Licensing and Code of Conduct, GitHub and README files, Project development: Agile and iterative project management methods & Open Aspects, Mountain of engagement and Community interactions, Persona and pathways and inviting contributions, Ally skills, Open office/co-working hours and social calls, Final presentation rehearsals, Final presentation call (open and live streamed)",Yes I'd like to return as a collaborator to run an OLS cohort for my network,Yes \ No newline at end of file diff --git a/data/people.csv b/data/people.csv new file mode 100644 index 0000000..ff58e74 --- /dev/null +++ b/data/people.csv @@ -0,0 +1,585 @@ +,city,country,first-name,last-name,pronouns,country_3,continent,longitude,latitude,ols-1-role,ols-1-participant,ols-1-mentor,ols-1-expert,ols-1-speaker,ols-1-facilitator,ols-1-organizer,ols-2-role,ols-2-participant,ols-2-mentor,ols-2-expert,ols-2-speaker,ols-2-facilitator,ols-2-organizer,ols-3-role,ols-3-participant,ols-3-mentor,ols-3-expert,ols-3-speaker,ols-3-facilitator,ols-3-organizer,ols-4-role,ols-4-participant,ols-4-mentor,ols-4-expert,ols-4-speaker,ols-4-facilitator,ols-4-organizer,ols-5-role,ols-5-participant,ols-5-mentor,ols-5-expert,ols-5-speaker,ols-5-facilitator,ols-5-organizer,ols-6-role,ols-6-participant,ols-6-mentor,ols-6-expert,ols-6-speaker,ols-6-facilitator,ols-6-organizer,ols-7-role,ols-7-participant,ols-7-mentor,ols-7-expert,ols-7-speaker,ols-7-facilitator,ols-7-organizer,ols-8-role,ols-8-participant,ols-8-mentor,ols-8-expert,ols-8-speaker,ols-8-facilitator,ols-8-organizer,mastodon +0sahene,Tamale,Ghana,Sitsofe,Morgah,He,GHA,Africa,-0.8423986,9.4051992,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Developing a carbon footprint database for buildings in Ghana,,,,,,,,,,,,,,,,,,,,,,,,,,, +0x174,Boston,United States,William,Jackson,He/Him,USA,North America,-71.060511,42.3554334,,,,,,,,,,,,,,,participant,Opensource Transpiler of Synthetic Biology Lab Protocols for Wetlab Robotics,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +4iro,Buenos Aires,Argentina,Irene,Vazano,She/her/hers,ARG,South America,-58.4370894,-34.6075682,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Mapping open-science communities, organizations, and events in Latin America",,,,,,mentor,,Creating an online repository for open collaboration in psychology,,,,, +abdulelahsm,Dammam,Saudi Arabia,Abdulelah,Al Mesfer,he/him,SAU,Asia,50.1039991,26.4367824,,,,,,,,,,,,,,,participant,Documentation enhancement with open science practices in sktime,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +abraham-dabengwa,Johannesburg,South Africa,Abraham,Dabengwa,he/ him,ZAF,Africa,28.049722,-26.205,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community,,,,,,,,,,,,,,,,,,,,,,,,,,, +abretaud,Rennes,France,Anthony,Bretaudeau,He/him,FRA,Europe,-1.6800198,48.1113387,,,,,,,,,,,,,,,,,,,,,,mentor,,Developing a library in Python for applying measures of emergence and complexity,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +acocac,London,United Kingdom,Alejandro,Coca Castro,His/Him,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,,,,,,,,participant,The Environmental AI Book,,,,,,mentor,,Multilingual Open Science: Creating Open Educational Resources in Central Asian Languages,,,,,,,,,,,,,,,,,,,,,,,,,, +adam-gristwood,Heidelberg,Germany,Adam,Gristwood,he/him,DEU,Europe,8.694724,49.4093582,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +agossoubido2021,Abomey Calavi,Benin,Agossou,Bidossessi Emmanuel,He/Him/His,BEN,Africa,2.3303076367454025,6.51096225,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open Science for Improve diagnostics of Cancer through Artificial Intelligence and Digital Pathology,,,,,,,,,,,,,,,,,,,,,,,,,,, +aida-turing,London,United Kingdom,Aida,Mehonic,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,participant,Developing and embedding open science practices within the Research Application Management team at Turing,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +aidanbudd,Heidelberg,Germany,Aidan,Budd,he/him,DEU,Europe,8.694724,49.4093582,"expert, mentor",,Media Lab Nepal for Computational Biology,expert,,,,"expert, mentor",,Open Innovation in Life Sciences,expert,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +ajstewartlang,Manchester,United Kingdom,Andrew,Stewart,he/him,GBR,Europe,-2.2451148,53.4794892,"expert, mentor, speaker",,Open Science UMontreal (OSUM),expert,speaker,,,"expert, mentor, speaker",,Open Science Office Hours to support trainees in Montreal to help make their research more open and reproducible,expert,speaker,,,,,,,,,,expert,,,expert,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,, +akalikadien,Delft,Netherlands,Adarsh,Kalikadien,,NLD,Europe,4.362724538543995,51.999457199999995,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Increasing the usability of ChemSpaX, a Python tool for chemical space exploration",,,,,,,,,,,,,,,,,,,,,,,,,,, +aldenc,London,United Kingdom,Alden,Conner,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Preparing IceNet stakeholder engagement framework for open and collaborative development,,,,,,,,,,,,,,,,,,,, +aleesteele,London,United Kingdom,Anne Lee,Steele,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Exploring ""Governance Models"" for Open Science community projects as per their maturity stage",,,,,,"expert, mentor",,Mapping the RSSE landscape in Africa,expert,,,,,,,,,,,,,,,,,, +alettes,Makhanda Grahamstown,South Africa,Alette,Schoon,she/her,ZAF,Africa,26.496243,-33.2885486,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,An Open Handbook and MOOC on Computational Methods for African Media Researchers,,,,,, +aliaslaurel,Córdoba,Argentina,Laura,Ascenzi,She/her/ella,ARG,South America,-4.7760138,37.8845813,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,, +alihumayun,London,United Kingdom,Ali,Humayun,He/Him,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,participant,The Turing Way - Developing a community health report and assessing its impact on the wider data science community,,,,,,participant,"Learning about open science communities and help build ""community health"" report for The Turing Way",,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +amangoel185,Manchester,United Kingdom,Aman,Goel,he/him/his,GBR,Europe,-2.2451148,53.4794892,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,The Undergraduates Guide To Research Software Engineering,,,,,,facilitator,,,,,facilitator,,,,,,,,, +amber-koert,Amsterdam,Netherlands,Amber,Koert,,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open Science in Neuroscience: A Practical Guide for Researchers,,,,,, +anafinovas,Budapest,Hungary,Saule,Anafinova,,HUN,Europe,19.14609412691246,47.48138955,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open Science Awareness Project for Central Asian Universities,,,,,,,,,,,,, +anayan321,Bangkok,Thailand,Anunya,Opasawatchai,"She, her",THA,Asia,100.6224463,13.8245796,participant,AMRITA: an online database for herbal medicine,,,,,,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +andre-vargas-de,Cochabamba,Bolivia,Alvaro Andre,Vargas Aguilar,,,,-66.1568983,-17.3936114,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Training Latin American scientists' community to create high-quality open journals with good editorial standards,,,,,,,,,,,,,,,,,,,,,,,,,,, +andreasancheztapia,"Merced, CA",Colombia,Andrea,Sánchez Tapia,She/her,COL,South America,-120.7678602,37.1641544,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,"expert, mentor, mentor",,"Making Science simple and accessible, An extensible notebook for open specimens",expert,,,,"mentor, speaker",,An extensible notebook for open specimens,,speaker,,,,,,,,,, +andreea-avramescu,Manchester,United Kingdom,Andreea,Avramescu,,GBR,Europe,-2.2451148,53.4794892,,,,,,,,,,,,,,,,,,,,,,participant,A guide towards reproducible research for Decision Sciences researchers,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +anelda,Overberg,South Africa,Anelda,van der Walt,she/her,ZAF,Africa,5.4964645,52.0390484,,,,,,,,mentor,,Autistica - Turing Citizen Science Project,,,,,"mentor, speaker",,Open Science Community in Saudi Arabia,,speaker,,,,,,,,,,speaker,,,,speaker,,,participant,Mapping the RSSE landscape in Africa,,,,,,,,,,,,,,,,,,,, +anenadic,Manchester,United Kingdom,Aleksandra,Nenadic,she/her/hers,GBR,Europe,-2.2451148,53.4794892,expert,,,expert,,,,"expert, speaker",,,expert,speaker,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +annakrystalli,Sheffield,United Kingdom,Anna,Krystalli,she/her,GBR,Europe,-1.4702278,53.3806626,expert,,,expert,,,,,,,,,,,"expert, mentor",,Open Source Project for Evaluating Reproducibility Trends in AI Research Projects,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +annalee-sekulic,Columbus,United States,Annalee,Sekulic,She/Her/Hers,USA,North America,-83.0007065,39.9622601,,,,,,,,,,,,,,,participant,Memory Collecting: Croatian Homeland War,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +annambiller,Munich,Germany,Anna Magdalena,Biller,she/her/hers,DEU,Europe,11.5753822,48.1371079,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"momenTUM Research Platform: An open-source, reproducible research infrastructure for digital health",,,,,,,,,,,,, +annefou,Oslo,Norway,Anne,Fouilloux,she/her,NOR,Europe,10.7389701,59.9133301,,,,,,,,,,,,,,,,,,,,,,"expert, mentor",,Building the Research Software Engineering (RSE) Association in Asia region,expert,,,,mentor,,Building a Cloud-SPAN community of practice,,,,,,,,,,,,,,,,,,,,,,,,,, +annemtreasure,Cape Town,South Africa,Anne,Treasure,,ZAF,Africa,18.417396,-33.928992,,,,,,,,,,,,,,,,,,,,,,,,,,,,,"expert, mentor",,Developing a carbon footprint database for buildings in Ghana,expert,,,,mentor,,"Life Science in 2022, India.",,,,,,,,,,,,,,,,,,, +anshika-sah,New Delhi,India,Anshika,Sah,SHE,IND,Asia,77.2090057,28.6138954,,,,,,,,,,,,,,,participant,COMPUTATIONAL DRUG DISCOVERY (CORONAVIRUS),,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +antonioggsousa,Oeiras,Portugal,António,Sousa,he/him,PRT,Europe,-9.271300382407272,38.7124971,,,,,,,,,,,,,,,participant,metaNanoPype: a reproducible Nanopore python pipeline for metabarcoding,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +antonis-koutsoumpis,Amsterdam,Netherlands,Antonis,Koutsoumpis,,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Creating an online repository for open collaboration in psychology,,,,,, +arentkievits,Delft,Netherlands,Arent,Kievits,,NLD,Europe,4.362724538543995,51.999457199999995,,,,,,,,,,,,,,,,,,,,,,participant,Multibeam electron microscopy for imaging large tissue volumes,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +arianna-cortesi,Rio De Janeiro,Brazil,Arianna,Cortesi,,BRA,South America,-43.2093727,-22.9110137,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Closer to the sky: co-creating astronomical knowledge in a favela of Rio de Janeiro,,,,,,,,,,,,, +ariannazuanazzi,New York City,United States,Arianna,Zuanazzi,she/her,USA,North America,-74.0060152,40.7127281,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Developing an Open Community Repository for SciArt,,,,,, +arielle-bennett,Stevenage,United Kingdom,Arielle,Bennett,she/her,GBR,Europe,-0.2027155,51.9016663,,,,,,,,"expert, mentor",,Towards open and citizen-led data informing the decarbonisation of existing housing,expert,,,,expert,,,expert,,,,"expert, mentor",,"Learning about open science communities and help build ""community health"" report for The Turing Way",expert,,,,mentor,,Publishing development plan for the Open access journals of TU Delft OPEN Publishing,,,,,"expert, mentor",,Open collaborative journal,expert,,,,mentor,,Open NeuroScience,,,,,"facilitator, mentor",,Open-source handbooks infrastructure at VU Amsterdam,,,facilitator,, +ashutosh-tiwari,"Bilaspur, Chhattisgarh",India,Ashutosh,Tiwari,He/him/his,IND,Asia,82.1476475,22.0785627,,,,,,,,,,,,,,,participant,Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +augustincaitlin,Orlando,United States,Caitlin,Augustin,she/her,USA,North America,-81.3790304,28.5421109,,,,,,,,,,,,,,,,,,,,,,participant,Encouraging Responsible AI Through An Open Framework for Synthetic Data Generation and Assessment,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +ayeshadunk,London,United Kingdom,Ayesha,Dunk,She/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Data Science and AI Educators' Programme AND Tools, Practices & Systems Peer Mentorship Programme",,,,,,,,,,,,,,,,,,,,,,,,,,, +aymd23,Ibadan,Nigeria,Ayomide,Akinlotan,He/his,NGA,Africa,3.8972497,7.3777462,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Bioinformatics Secondary school Outreach in Nigeria,,,,,,,,,,,,, +b14-rsa,Johannesburg,South Africa,Biandri,Joubert,She/Her,ZAF,Africa,28.049722,-26.205,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Why R, for those with legal backgrounds using examples from South Africa",,,,,,,,,,,,,,,,,,,,,,,,,,, +babari-a-babari-michelle-freddia,Yaoundé,Cameroon,Babari A Babari,Michelle Freddia,,CMR,Africa,11.5213344,3.8689867,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,From invisible to Citizens: Apparent Age for Primary School children without birth certificates,,,,,,,,,,,,, +babasaraki,Bauchi,Nigeria,Umar,Ahmad,Data Science,NGA,Africa,10.0287754,10.6228284,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,participant,Transcriptomics profiling of bladder cancer using publicly available datasets,,,,,,participant,Open Science Community Nigeria (OSCN),,,,,,,,,,,,,,,,,,,, +batoolmm,Liverpool,Saudi Arabia,Batool,Almarzouq,She/Her,SAU,Asia,-2.99168,53.4071991,,,,,,,,,,,,,,,participant,Open Science Community in Saudi Arabia,,,,,,"facilitator, participant, speaker",Culture-independent discovery of natural products from soil metagenomes,,,speaker,facilitator,,"facilitator, mentor",,"Why R, for those with legal backgrounds using examples from South Africa",,,facilitator,,"expert, facilitator, mentor",,An extensible notebook for open specimens,expert,,facilitator,,"mentor, speaker",,An extensible notebook for open specimens,,speaker,,,,,,,,,, +bduckles,"Portland, Oregon",United States,Beth,Duckles,"she, her",USA,North America,-122.674194,45.5202471,speaker,,,,speaker,,,expert,,,expert,,,,"expert, mentor",,Postdoc Empirical Legal Research Open Notebook,expert,,,,"expert, mentor",,Building Open Science and Data Analysis Skills by Leading the OLS Survey Data Project,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +beatrizserrano,Freiburg,Germany,Beatriz,Serrano-Solano,she/her,DEU,Europe,7.8494005,47.9960901,,,,,,,,participant,Growing the Galaxy Community,,,,,,expert,,,expert,,,,,,,,,,,mentor,,NGS-HuB: An open educational resource for NGS data analysis,,,,,,,,,,,,participant,Euro-BioImaging Scientific Ambassadors Program,,,,,,,,,,,,, +bebatut,Clermont-Ferrand,France,Bérénice,Batut,she/her,FRA,Europe,3.0819427,45.7774551,"organizer, speaker",,,,speaker,,organizer,"expert, organizer, speaker",,,expert,speaker,,organizer,"expert, organizer, mentor, mentor, mentor, mentor, speaker",,"Open Life Science (OLS) Program, a driver of open science skills among early stage researchers and young leaders: mentee perspective, Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers, Seeding, FAIR MAFIL: FAIRification of imaging/neurophysiological data of MAFIL CEITEC MUNI laboratory for EOSC",expert,speaker,,organizer,"expert, organizer, mentor, speaker, speaker",,Culture-independent discovery of natural products from soil metagenomes,expert,speaker,,organizer,organizer,,,,,,organizer,organizer,,,,,,organizer,"organizer, speaker, speaker",,,,speaker,,organizer,"organizer, speaker, speaker",,,,speaker,,organizer, +bethaniley,"Belfast, Northern Ireland",United Kingdom,Bethan,Iley,she/her,GBR,Europe,-5.9301829,54.596391,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,mentor,,The invisible society: Misgendering in Facial Recognition Systems:,,,,, +birgül-çolak-al,Istanbul,Turkey,Birgül,Çolak-Al,,TUR,Asia,29.052495,41.0766019,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,NGS-HuB: An open educational resource for NGS data analysis,,,,,,,,,,,,,,,,,,,,,,,,,,, +bisola15,Yaba,Nigeria,Bisola,Ahmed,She/her,NGA,Africa,-2.8848131505798653,12.811960299999999,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,The Impact of Sleep Deprivation on Mental Health,,,,,,,,,,,,, +bobbwang,Amsterdam,Netherlands,Bo,Wang,,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,"participant, participant","Gender Differences in the Impostor Phenomenon: A Preregistered and Open-Science Meta-Analysis, Creating an online repository for open collaboration in psychology",,,,,, +booktrackergirl,Exeter,United Kingdom,Aditi,Dutta,She/Her,GBR,Europe,-3.5269497,50.7255794,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open Science platform for humanities and computational social scientists,,,,,,,,,,,,, +bruno-soares,Rio De Janeiro,Brazil,Bruno,Soares,He/Him,BRA,South America,-43.2093727,-22.9110137,participant,@Diversidade em Foco,,,,,,mentor,,"Global land-use and land-cover data under historical, current, and future climatic conditions for ecologists",,,,,mentor,,"Field and laboratory based research project researching, surveying, and discovering the palaeoecology and palaeogeography of West Cork",,,,,"expert, mentor",,Citizen Scientists as Data Explorers,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +bsolodzi,"Ashaiman, Zenu",Ghana,Bernard Kwame,Solodzi,,GHA,Africa,-0.0499836,5.7121199,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Knowledge and perspectives of open science among researchers in Ghana, West Africa",,,,,,,,,,,,, +burkemlou,Brisbane,Australia,Melissa,Burke,She/Her,AUS,Oceania,-122.402794,37.687165,,,,,,,,"expert, speaker",,,expert,speaker,,,"expert, mentor",,Junto Labs - Advancing Virtual Environments for Life Science Research and Active Learning,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +c-martinez,Amsterdam,Netherlands,Carlos,Martinez-Ortiz,he/him,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,"expert, speaker",,,expert,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +callummole,London,United Kingdom,Callum,Mole,He/Him,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,,,,,,,,participant,Hub23: An open source community and infrastructure for Turing's BinderHub,,,,,,participant,Hub23: An open source community and infrastructure for Turing's BinderHub,,,,,,,,,,,,,,,,,,,,,,,,,,, +camachoreina,Paris,France,Reina,Camacho Toro,She/her,FRA,Europe,2.3200410217200766,48.8588897,,,,,,,,,,,,,,,participant,LA-CoNGA physics (Latin American alliance for Capacity buildiNG in Advanced physics),,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +camila-gómez,Cochabamba,Bolivia,Camila,Gómez,,,,-66.1568983,-17.3936114,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Training Latin American scientists' community to create high-quality open journals with good editorial standards,,,,,,,,,,,,,,,,,,,,,,,,,,, +carmel-carne,Cape Town,South Africa,Carmel,Carne,She/her,ZAF,Africa,18.417396,-33.928992,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Investigating effective strategies for radical inclusion at academic events,,,,,,,,,,,,, +carogiraldo,Bogota,Colombia,Carolina,Giraldo Olmos,,COL,South America,-74.0835643,4.6529539,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Data analysis in soil physics: an opportunity of teaching data management and reproducibility,,,,,,expert,,,expert,,,, +cassgvp,Oxford,United Kingdom,Cassandra,Gould Van Praag,she/her,GBR,Europe,-1.2578499,51.7520131,participant,Oxford Neuroscience Open Science Co-ordinator: Changing Culture,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,, +cbolibaugh,York,United Kingdom,Cylcia,Bolibaugh,she/her,GBR,Europe,-1.0743052444639218,53.96565785,,,,,,,,,,,,,,,,,,,,,,participant,EROS Stories: Conversation and case studies in open research across educational disciplines,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +cel31,Barcelona,Spain,Celine,Kerfant,,ESP,Europe,2.1774322,41.3828939,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community,,,,,,,,,,,,,,,,,,,,,,,,,,, +cemonks,Perth,Australia,Carly,Monks,She/Her,AUS,Oceania,-3.4286805,56.3958186,,,,,,,,,,,,,,,participant,"Intellectual Property, Indigenous Knowledges, and the Rise of Open Data in Australian Environmental Archaeology",,,,,,mentor,,"Generic data stewards in the Netherlands: who they are, what they do, and who they could become",,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +cgentemann,Santa Rosa,United States,Chelle,Gentemann,she/her,USA,North America,-122.7141049,38.4404925,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,, +christinerogers,Montreal,Canada,Christine,Rogers,she/her,CAN,North America,-73.5698065,45.5031824,participant,Improving open platform accessibility,,,,,,"expert, speaker",,,expert,speaker,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +chucklesongithub,Buenos Aires,Argentina,Cecilia,Herbert,She/Her,ARG,South America,-58.4370894,-34.6075682,,,,,,,,,,,,,,,,,,,,,,participant,Talleres Open Source community platform,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +chukaogbo,"Abeokuta, Ogun State.",Nigeria,Chukwuka,Ogbonna,"He, him, his",NGA,Africa,3.3467344,7.1547129,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Biodegradability of Drilling Fluids in different soil types,,,,,,,,,,,,, +cibele-zolnier-sousa-do-nascimento,Curitiba,Brazil,Cibele,Zolnier Sousa do Nascimento,She/her,BRA,South America,-49.2712724,-25.4295963,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Building a Searchable Open Data Repository of DNA Collections that are Freely-Shared under OpenMTA, with an Associated Landscape Map Visualisation of the Collection Users",,,,,, +cl379,Barcelona,Spain,Carla,Lancelotti,she-her,ESP,Europe,2.1774322,41.3828939,,,,,,,,,,,,,,,participant,Towards FAIRer phytolith data,,,,,,,,,,,,,participant,International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community,,,,,,,,,,,,,,,,,,,,,,,,,,, +claudiamig,Roma,Italy,Claudia,Mignone,she/her,ITA,Europe,12.4829321,41.8933203,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Closer to the sky: co-creating astronomical knowledge in a favela of Rio de Janeiro,,,,,,,,,,,,, +codito22,Lima,Peru,Rodrigo,Gallegos,,PER,South America,-77.0365256,-12.0621065,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,SciHack: Promoting the Open Source and DIY movements in Peru,,,,,,,,,,,,,,,,,,,,,,,,,,, +complexbrains,Montreal,Canada,Isil,Poyraz Bilgin,Dr. or Miss,CAN,North America,-73.5698065,45.5031824,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Development of an Open Source Platform for the Storage, Sharing, Synthesis and Meta-Analysis of Clinical Data",,,,,,facilitator,,,,,facilitator,,mentor,,Ethical Implications of Open Source AI: Transparency and Accountability,,,,,,,,,,,, +coopersmout,Brisbane,Australia,Cooper,Smout,He/him,AUS,Oceania,-122.402794,37.687165,,,,,,,,participant,Using collective action to change cultural norms and drive progress in the life sciences,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +da5nsy,Washington Dc,United States,Danny,Garside,he/him,USA,North America,-77.0365427,38.8950368,,,,,,,,participant,Registered Reports in Primate Neurophysiology,,,,,,expert,,,expert,,,,facilitator,,,,,facilitator,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +dadditolu,Glasgow,United Kingdom,John,Ogunsola,he/him,GBR,Europe,-4.2501687,55.861155,,,,,,,,,,,,,,,participant,Global Distribution of APOL1 Genetic variants,,,,,,,,,,,,,,,,,,,,mentor,,Developing effective online communities to build tools for genomic equity,,,,,,,,,,,,,,,,,,, +daniel-kochin,Oxford,United Kingdom,Daniel,Kochin,he/him,GBR,Europe,-1.2578499,51.7520131,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Investigating effective strategies for radical inclusion at academic events,,,,,,,,,,,,, +danielagduca,London,United Kingdom,Daniela,Duca,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,danielagduca@hachyderm.io +danwchan,New York City,,Daniel,Chan,he/they,,,-74.0060152,40.7127281,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Translate Science,,,,,,,,,,,,, +darwin-diaz,Lima,Peru,Darwin,Diaz,She/Her,PER,South America,-77.0365256,-12.0621065,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,SciHack: Promoting the Open Source and DIY movements in Peru,,,,,,,,,,,,,,,,,,,,,,,,,,, +david-selassie-opoku,Berlin,Germany,David Selassie,Opoku,,DEU,Europe,13.3888599,52.5170365,,,,,,,,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +dbrisaro,Carapachay,Argentina,Daniela,Risaro,she/her,ARG,South America,-58.5358156,-34.5265799,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,JICMar Network: towards better opportunities and greater collaboration among young marine science researchers in Latin America,,,,,, +deepakunni3,Basel,Switzerland,Deepak,Unni,He/Him,CHE,Europe,7.5878261,47.5581077,,,,,,,,,,,,,,,,,,,,,,,,,,,,,"expert, mentor",,Finding paths through the FAIR forest; linking metadata from forestry models and datasets to assist analysis and hypothesis generation,expert,,,,expert,,,expert,,,,,,,,,,,,,,,,,, +delphine-l,Raleigh,United States,Delphine,Lariviere,She/her,USA,North America,-78.6390989,35.7803977,,,,,,,,mentor,,BioLab Open Source Projects,,,,,,,,,,,,"expert, mentor",,The Environmental AI Book,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +demellina,London,United Kingdom,Demitra,Ellina,She/her,GBR,Europe,-0.14405508452768728,51.4893335,"expert, speaker",,,expert,speaker,,,expert,,,expert,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +dexwel,Ogbomoso,Nigeria,Daniel,Adediran,He,NGA,Africa,4.25,8.133,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Bioinformatics and Health Data Science Internship,,,,,, +diana-pilvar,Tartu,Estonia,Diana,Pilvar,,EST,Europe,26.72245,58.3801207,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Data management materials for ELIXIR Estonia,,,,,,"expert, mentor",,Making corporate social responsibility data available and accessible for other researchers,expert,,,, +dianakaran,Kilifi,Kenya,Diana,Karan,She/Her,KEN,Africa,39.67507159193717,-3.15073925,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Bioinformatics codeathon,,,,,, +didik-utomo,Malang,Indonesia,Didik,Utomo,,IDN,Asia,112.6340291,-7.9771206,,,,,,,,,,,,,,,participant,Boosting research visibility using Preprints,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +diegoonna,"Ciudad Autonoma De Buenos Aires , Argentina",Argentina,Diego,Onna,He/Him,ARG,South America,-58.4370894,-34.6075682,,,,,,,,,,,,,,,,,,,,,,participant,Open data for nanosystem synthesis experimental conditions,,,,,,mentor,,SciHack: Promoting the Open Source and DIY movements in Peru,,,,,mentor,,Open collaborative journal,,,,,mentor,,Data analysis in soil physics: an opportunity of teaching data management and reproducibility,,,,,mentor,,A Fiji plugin for SOFI analysis,,,,, +dimmestp,Edinburgh,United Kingdom,Sam,Haynes,He/Him,GBR,Europe,-3.1883749,55.9533456,,,,,,,,,,,,,,,mentor,,Global Distribution of APOL1 Genetic variants,,,,,"expert, mentor",,Genestorian: An Open Source web application for model organism collections,expert,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,, +dingaaling,London,United Kingdom,Jennifer,Ding,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open Data Custodianship tool,,,,,,,,,,,,,,,,,,,, +doaamkader,Obour City,Egypt,Doaa,Abdelkader,She.her,EGY,Africa,31.465685617766244,30.2288224,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Build community,,,,,,,,,,,,, +dozie-onunkwo,Umuahia,Nigeria,Dozie,Onunkwo,He,NGA,Africa,7.4924165,5.5324032,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Digitalization for sustainable Agricultural practices and climate change mitigation,,,,,, +dudova,Brno,Czechia,Zdenka,Dudova,,CZE,Europe,16.6113382,49.1922443,,,,,,,,,,,,,,,participant,FAIR MAFIL: FAIRification of imaging/neurophysiological data of MAFIL CEITEC MUNI laboratory for EOSC,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +duerrsimon,Lausanne,Switzerland,Simon,Duerr,he/him,CHE,Europe,6.6327025,46.5218269,,,,,,,,,,,,,,,participant,A virtual conference management system with seamless open science integration,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +ealescak,Anchorage,United States,Emily,Lescak,"she, her",USA,North America,-149.1107333,61.1758781,,,,,,,,,,,,,,,"expert, mentor",,A virtual conference management system with seamless open science integration,expert,,,,"expert, mentor",,open and international River University,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +ecsalomon,"Chicago, Il",United States,Erika,Salomon,they/them,USA,North America,-87.6244212,41.8755616,,,,,,,,,,,,,,,,,,,,,,participant,Encouraging Responsible AI Through An Open Framework for Synthetic Data Generation and Assessment,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +eduardacenteno,Amsterdam,Netherlands,Eduarda,Centeno,she/her,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open Science in Neuroscience: A Practical Guide for Researchers,,,,,, +eirinibotsari,Dem Haag,Netherlands,Eirini,Botsari,she/her,NLD,Europe,4.2696802205364515,52.07494555,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Art as a means to open science,,,,,,,,,,,,,,,,,,,,,,,,,,, +ekaroune,Portsmouth,United Kingdom,Emma,Karoune,she/her,GBR,Europe,-1.0906023,50.800031,,,,,,,,participant,Creating community awareness of open science practices in phytolith research,,,,,,"expert, mentor",,Towards FAIRer phytolith data,expert,,,,"expert, facilitator, mentor, speaker",,Balconnect - A network of private outdoor areas improving urban ecoliteracy and biodiversity,expert,speaker,facilitator,,"mentor, participant",International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community,"Exploring ""Governance Models"" for Open Science community projects as per their maturity stage",,,,,"expert, mentor",,A FAIRer training module on Open Science,expert,,,,,,,,,,,,,,,,,, +ekin-bolukbasi,London,United Kingdom,Ekin,Bolukbasi,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +elena-beretta,Amsterdam,Netherlands,Elena,Beretta,She/her,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,The invisible society: Misgendering in Facial Recognition Systems:,,,,,, +elena-giglia,Turin,Italy,Elena,Giglia,,ITA,Europe,7.6824892,45.0677551,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,A FAIRer training module on Open Science,,,,,,,,,,,,,,,,,,,, +elisa-on-github,Amsterdam,Netherlands,Elisa,Rodenburg,she/her,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,participant,"Generic data stewards in the Netherlands: who they are, what they do, and who they could become",,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,"expert, participant",Open-source handbooks infrastructure at VU Amsterdam,,expert,,,, +emma-anne-harris,Berlin,Germany,Emma Anne,Harris,,DEU,Europe,13.3888599,52.5170365,,,,,,,,,,,,,,,"expert, speaker",,,expert,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +emma-lawrence,London,United Kingdom,Emma,Lawrence,She/hers,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,participant,The UKCRC Tissue Directory and Coordination Centre,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +emmanuel19-ada,Ogbomosho,Nigeria,Emmanuel,Adamolekun,He/His,NGA,Africa,4.25,8.133,,,,,,,,,,,,,,,,,,,,,,participant,Bioinformatics Secondary school Outreach in Nigeria,,,,,,participant,Bioinformatics Secondary school Outreach in Nigeria,,,,,,participant,Bioinformatics Secondary school Outreach in Nigeria,,,,,,participant,Bioinformatics Secondary school Outreach in Nigeria,,,,,,facilitator,,,,,facilitator,, +esbusis,Istanbul,Turkey,Esra Büşra,Işık,,TUR,Asia,29.052495,41.0766019,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,NGS-HuB: An open educational resource for NGS data analysis,,,,,,,,,,,,,,,,,,,,,,,,,,, +estherplomp,The Hague,Netherlands,Esther,Plomp,she/her/hers,NLD,Europe,4.2696802205364515,52.07494555,,,,,,,,,,,,,,,"expert, mentor, speaker",,"Intellectual Property, Indigenous Knowledges, and the Rise of Open Data in Australian Environmental Archaeology",expert,speaker,,,"expert, mentor, mentor",,"Multibeam electron microscopy for imaging large tissue volumes, EROS Stories: Conversation and case studies in open research across educational disciplines",expert,,,,mentor,,"Increasing the usability of ChemSpaX, a Python tool for chemical space exploration",,,,,"expert, mentor",,Mapping the Open Life Science Cohorts,expert,,,,speaker,,,,speaker,,,expert,,,expert,,,, +ewallace,Edinburgh,United Kingdom,Edward,Wallace,"he, him",GBR,Europe,-3.1883749,55.9533456,,,,,,,,,,,,,,,expert,,,expert,,,,expert,,,expert,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,, +fabienne-lucas,Boston,United States,Fabienne,Lucas,she/hers,USA,North America,-71.060511,42.3554334,,,,,,,,,,,,,,,participant,MiSET Publication Standards: A tool for AI-assisted peer-review of experimental information,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +fabioperdigao,Rio De Janeiro,Brazil,Fabio,Ivo Perdigão,,BRA,South America,-43.2093727,-22.9110137,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Making Science simple and accessible,,,,,,,,,,,,,,,,,,,, +fadanka,Yaounde,Cameroon,Stephane,Fadanka,He/Him,CMR,Africa,11.5213344,3.8689867,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open Science for Improve diagnostics of Cancer through Artificial Intelligence and Digital Pathology,,,,,,mentor,,The hub portal and academy,,,,,"participant, mentor",From invisible to Citizens: Apparent Age for Primary School children without birth certificates,Biodegradability of Drilling Fluids in different soil types,,,,,"mentor, speaker",,Assessing the Zinc Finger Protein Mutation and Expression Profile in Kenyan Women with Breast Cancer,,speaker,,, +farukustunel,Istanbul,Turkey,Faruk,Üstünel,,TUR,Asia,29.052495,41.0766019,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,NGS-HuB: An open educational resource for NGS data analysis,,,,,,,,,,,,,,,,,,,,,,,,,,, +fatma366,Mombasa,Kenya,Fatma,Omar,Miss,KEN,Africa,39.667169,-4.05052,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Identification and Prediction of Bacterial Pathogens Colonizing Yellowing Disease in Coastal Kenyan Coconuts: A Machine Learning Approach,,,,,, +federico-cestares,Buenos Aires,Argentina,Federico,Cestares,He- él,ARG,South America,-58.4370894,-34.6075682,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Argentinean Public Health Research on Data Science and Artificial Intelligence for Epidemic Prevention (ARPHAI),,,,,,,,,,,,,,,,,,,,,,,,,,, +fpsom,Thessaloniki,Greece,Fotis,Psomopoulos,he/him,GRC,Europe,22.9352716,40.6403167,"expert, mentor, speaker",,Enabling open science practices in biology education,expert,speaker,,,"expert, speaker",,,expert,speaker,,,"expert, mentor",,Best practices for online collaboration/peer-production in citizen science,expert,,,,"expert, mentor",,Encouraging Responsible AI Through An Open Framework for Synthetic Data Generation and Assessment,expert,,,,"mentor, mentor",,"NGS-HuB: An open educational resource for NGS data analysis, The Ersilia Model Hub: encouraging deployment of computer-based research tools for non-expert usage",,,,,mentor,,Mapping the Open Life Science Cohorts,,,,,,,,,,,,mentor,,dr,,,,, +fredbelliard,Delft,Netherlands,Frédérique,Belliard,she/her,NLD,Europe,4.362724538543995,51.999457199999995,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Publishing development plan for the Open access journals of TU Delft OPEN Publishing,,,,,,,,,,,,,,,,,,,,,,,,,,, +gabriela-rufino,Rio De Janeiro,Brazil,Gabriela,Rufino,She/her,BRA,South America,-43.2093727,-22.9110137,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Closer to the sky: co-creating astronomical knowledge in a favela of Rio de Janeiro,,,,,,,,,,,,, +gareth-j,Bristol,United Kingdom,Gareth,Jones,He/ Him,GBR,Europe,-2.5972985,51.4538022,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,OpenGHG - a cloud platform for greenhouse gas data analysis and collaboration,,,,,,,,,,,,,,,,,,,,,,,,,,, +gedaloop,Barcelona,Spain,Adel,Sarvary,she/her,ESP,Europe,2.1774322,41.3828939,,,,,,,,,,,,,,,,,,,,,,participant,Balconnect - A network of private outdoor areas improving urban ecoliteracy and biodiversity,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +gedankenstuecke,Paris,France,Bastian,Greshake Tzovaras,he/him,FRA,Europe,2.3200410217200766,48.8588897,"expert, speaker",,,expert,speaker,,,"expert, speaker",,,expert,speaker,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +gemmaturon,Barcelona,Spain,Gemma,Turon,she/her,ESP,Europe,2.1774322,41.3828939,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,The Ersilia Model Hub: encouraging deployment of computer-based research tools for non-expert usage,,,,,,,,,,,,,,,,,,,,"expert, mentor",,Estructura e infraestructura para la formación por cohortes virtuales,expert,,,, +georgiahca,London,United Kingdom,Georgia,Aitkenhead,She/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,participant,Autistica - Turing Citizen Science Project,,,,,,speaker,,,,speaker,,,,,,,,,,"expert, mentor",,Easy Access Autism Resources for Rural Parents,expert,,,,,,,,,,,,,,,,,,,,,,,,, +ghammad,Liège,Belgium,Grégory,Hammad,,BEL,Europe,5.773545903524977,50.47081585,,,,,,,,,,,,,,,participant,Open data schema for actigraphy data in chronobiology and sleep research,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +gill-francis,York,United Kingdom,Gill,Francis,She/her,GBR,Europe,-1.0743052444639218,53.96565785,,,,,,,,,,,,,,,,,,,,,,participant,EROS Stories: Conversation and case studies in open research across educational disciplines,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +glado718,Nairobi,Kenya,Gladys,Rotich,She/her,KEN,Africa,36.82884201813725,-1.3026148499999999,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,The hub portal and academy,,,,,,facilitator,,,,,facilitator,,facilitator,,,,,facilitator,, +gladys-jerono-rotich,Nairobi,Kenya,Gladys,Rotich,She/her,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,mentor,,"Development of an online open science platform, easy and accessible for agricultural students in Cameroon.",,,,,mentor,,Making corporate social responsibility data available and accessible for other researchers,,,,, +graciellehigino,Vancouver,Canada,Gracielle,Higino,She/her,CAN,North America,-123.113952,49.2608724,,,,,,,,expert,,,expert,,,,,,,,,,,"expert, mentor",,Open data for nanosystem synthesis experimental conditions,expert,,,,"mentor, mentor",,"Exploring ""Governance Models"" for Open Science community projects as per their maturity stage, International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community",,,,,"expert, mentor",,Making Science simple and accessible,expert,,,,mentor,,Closer to the sky: co-creating astronomical knowledge in a favela of Rio de Janeiro,,,,,,,,,,,, +guille1107,Buenos Aires,Argentina,Guillermo Luciano,Fiorini,He; Him,ARG,South America,-58.4370894,-34.6075682,,,,,,,,,,,,,,,,,,,,,,participant,Open data for nanosystem synthesis experimental conditions,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +ha0ye,Gainesville,United States,Hao,Ye,he/him,USA,North America,-82.3249846,29.6519684,"expert, mentor",,Improving open platform accessibility,expert,,,,expert,,,expert,,,,"expert, speaker",,,expert,speaker,,,expert,,,expert,,,,"expert, speaker",,,expert,speaker,,,expert,,,expert,,,,speaker,,,,speaker,,,,,,,,,, +hans-ket,Amsterdam,Netherlands,Hans,Ket,he/him,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Gender Differences in the Impostor Phenomenon: A Preregistered and Open-Science Meta-Analysis,,,,,, +harinilakshminarayanan,Zurich,Switzerland,Harini,Lakshminarayanan,,CHE,Europe,8.5410422,47.3744489,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,OpSciHack: Open Life Science Hackathon,,,,,,mentor,,Facilitating easier academic selection of research students using ML,,,,,mentor,,The Open Umbrella & Hybrid Learning Field Guide,,,,, +harpreetsingh05,Jalandhar,India,Harpreet,Singh,,IND,Asia,75.576889,31.3323762,,,,,,,,,,,,,,,"expert, participant, mentor, mentor",Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers,"Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers, ProCancer-I - An AI Platform integrating imaging data and models, supporting precision care through prostate cancer's continuum",expert,,,,mentor,,FarawayFermi- A platform for open source bioinformatic tools to detect biosignatures in astrobiology,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +helendagenb,London,United Kingdom,Youzi,Bi,She/they,GBR,Europe,-0.12765,51.5073359,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +henricountevans,Kwaluseni,Eswatini,Henri-Count,Evans,He/Him,SWZ,Africa,31.6390919,-27.2216427,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,An Open Handbook and MOOC on Computational Methods for African Media Researchers,,,,,, +hexylena,Rotterdam,Netherlands,Helena,Rasche,,NLD,Europe,4.47775,51.9244424,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +heylf,Freiburg,Germany,Florian,Heyl,,DEU,Europe,7.8494005,47.9960901,,,,,,,,,,,,,,,participant,Implementing a series of pedagogical games to teach pupils and citizens (metagenomic) data analysis,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +hrhotz,Basel,Switzerland,Hans-Rudolf,Hotz,,CHE,Europe,7.5878261,47.5581077,,,,,,,,mentor,,Practical Guide to Reproducibility in Bioinformatics,,,,,mentor,,metaNanoPype: a reproducible Nanopore python pipeline for metabarcoding,,,,,mentor,,Open and reproducible data analysis for wet lab neuroscientists,,,,,,,,,,,,"expert, mentor",,Multiomics profiling and analysis of cardiovascular diseases,expert,,,,,,,,,,,,,,,,,, +hylary-emmanuela-ndegala-nhana,Yaounde,Cameroon,Hylary Emmanuela,Ndegala Nhana,,CMR,Africa,11.5213344,3.8689867,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,From invisible to Citizens: Apparent Age for Primary School children without birth certificates,,,,,,,,,,,,, +hzahroh,Jakarta,Indonesia,Hilyatuz,Zahroh,She/her,IDN,Asia,106.8270488,-6.175247,,,,,,,,,,,,,,,participant,Boosting research visibility using Preprints,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +iramosp,Mexico City,Mexico,Irene,Ramos,she / her,MEX,North America,-99.1331785,19.4326296,,,,,,,,,,,,,,,participant,Skills for Open Agrobiodiversity Data,,,,,,expert,,,expert,,,,expert,,,expert,,,,expert,,,expert,,,,expert,,,expert,,,,"expert, mentor",,Digitalization for sustainable Agricultural practices and climate change mitigation,expert,,,, +iratxepuebla,Cambridge,United Kingdom,Iratxe,Puebla,she/her,GBR,Europe,0.1186637,52.2055314,,,,,,,,,,,,,,,"expert, mentor, speaker",,Boosting research visibility using Preprints,expert,speaker,,,"expert, mentor",,"Online event ""Women in Data Science - Perspectives in Industry and Academia"" Part II",expert,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,, +irena-maus,Bielefeld,Germany,Irena,Maus,,DEU,Europe,8.531007,52.0191005,,,,,,,,,,,,,,,,,,,,,,participant,"Online event ""Women in Data Science - Perspectives in Industry and Academia"" Part II",,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +iris-san-pedro,Madrid,Spain,Iris,San Pedro,,ESP,Europe,-3.7035825,40.4167047,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +irisbotas,Majadahonda,Spain,Iris,San Pedro,She/her,ESP,Europe,-3.8724138,40.473055,,,,,,,,,,,,,,,participant,Creating a network of Open Science ambassadors in Spanish Health Research Institutes,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +isahmadbbr,Kano,Nigeria,Ibrahim Said,Ahmad,,NGA,Africa,8.5364136,11.8948389,,,,,,,,,,,,,,,participant,Development of language resources for Hausa Natural Language Processing,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +ismael-kg,London,United Kingdom,Ismael,Kherroubi Garcia,He/him,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,participant,The Turing Way - Guide for Ethical Research,,,,,,,,,,,,,,,,,,,,participant,An Incomplete History of Research Ethics,,,,,,"facilitator, speaker",,,,speaker,facilitator,,,,,,,,,,,,,,,, +ivotron,Hermosillo,Mexico,Ivo,Jimenez,he/him,MEX,North America,-110.9692202,29.0948207,,,,,,,,mentor,,Registered Reports in Primate Neurophysiology,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +iván-gabriel-poggio,Toay,Argentina,Iván Gabriel,Poggio,,ARG,South America,-64.3796809,-36.6738649,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Gobernanza 2.0 de MetaDocencia,,,,,, +jafari-amir,Rio De Janeiro,Brazil,Amir,Jafari,,BRA,South America,-43.2093727,-22.9110137,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open-source object recognition software specifically designed for mice in Alzheimers disease,,,,,,,,,,,,, +jafsia,Yaounde,Cameroon,Elisee,Jafsia,He/Him,CMR,Africa,11.5213344,3.8689867,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open Science for Improve diagnostics of Cancer through Artificial Intelligence and Digital Pathology,,,,,,mentor,,Development of a Multi-Adaptor Quality Control Kit for Integration with Radiographic Equipment,,,,,"facilitator, participant, mentor",From invisible to Citizens: Apparent Age for Primary School children without birth certificates,"Comparison of three growth curves for the diagnosis of extrauterine growth retardation at 40 weeks postconceptional age and associated factors in preterm infants in the city of Yaoundé, Cameroon",,,facilitator,,"expert, mentor",,Identification and Prediction of Bacterial Pathogens Colonizing Yellowing Disease in Coastal Kenyan Coconuts: A Machine Learning Approach,expert,,,, +javier-ruiz-pérez,Barcelona,Spain,Javier,Ruiz Pérez,,ESP,Europe,2.1774322,41.3828939,,,,,,,,,,,,,,,participant,Towards FAIRer phytolith data,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +jbuczny,Amsterdam,Netherlands,Jacek,Buczny,,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Gender Differences in the Impostor Phenomenon: A Preregistered and Open-Science Meta-Analysis,,,,,, +jcolomb,Berlin,Germany,Julien,Colomb,he/his,DEU,Europe,13.3888599,52.5170365,,,,,,,,expert,,,expert,,,,,,,,,,,"expert, mentor",,"An open educational resource to introduce fundamental concepts of GNU/Linux, terminal usage, Bash/AWK scripting, and Git/GitHub for Bioinformatics",expert,,,,mentor,,Publishing development plan for the Open access journals of TU Delft OPEN Publishing,,,,,,,,,,,,mentor,,From invisible to Citizens: Apparent Age for Primary School children without birth certificates,,,,,expert,,,expert,,,, +jesperdramsch,Bonn,Germany,Jesper,Dramsch,they/them,DEU,Europe,7.10066,50.735851,,,,,,,,,,,,,,,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,, +jessica-sims,London,United Kingdom,Jessica,Sims,She/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,participant,The UKCRC Tissue Directory and Coordination Centre,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +jessicas11,Durham,United States,Jessica,Scheick,she/her,USA,North America,-1.75,54.666667,,,,,,,,,,,,,,,,,,,,,,"expert, mentor",,A guide towards reproducible research for Decision Sciences researchers,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +jezcope,Harrogate,United Kingdom,Jez,Cope,he/him,GBR,Europe,-1.5391039,53.9921491,,,,,,,,"expert, mentor",,The Turing Way - Guide for Ethical Research,expert,,,,"expert, mentor",,Towards an infrastructure for open-source (online) training in data science and AI,expert,,,,,,,,,,,expert,,,expert,,,,expert,,,expert,,,,,,,,,,,,,,,,,, +jformoso,Ciudad Autónoma De Buenos Aires,Argentina,Jesica,Formoso,she/her,ARG,South America,-58.4370894,-34.6075682,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Mapping open-science communities, organizations, and events in Latin America",,,,,,"facilitator, mentor",,Creating an online repository for open collaboration in psychology,,,facilitator,, +jhon-anderson-pérez-silva,Lima,Peru,Jhon Anderson,Pérez Silva,He/him,PER,South America,-77.0365256,-12.0621065,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,SciHack: Promoting the Open Source and DIY movements in Peru,,,,,,,,,,,,,,,,,,,,,,,,,,, +jhrudey,Amsterdam,Netherlands,Jessica,Hrudey,she/her/hers,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open-source handbooks infrastructure at VU Amsterdam,,,,,, +jilaga,Lagos,Nigeria,Nneoma,Jilaga,She/her,NGA,Africa,103.378253,20.0171109,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +jmmaok,"Cary, Nc",United States,Jennifer,Miller,,USA,North America,-78.7812081,35.7882893,,,,,,,,,,,,,,,participant,Postdoc Empirical Legal Research Open Notebook,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,participant,Translate Science,,,,,,,,,,,,, +joelfan,Milan,Italy,Dario,Basset,,ITA,Europe,9.1896346,45.4641943,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open science spread,,,,,,,,,,,,,,,,,,,, +joelostblom,Vancouver,Canada,Joel,Ostblom,he/him,CAN,North America,-123.113952,49.2608724,expert,,,expert,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +johanssen-obanda,Kisumu,Kenya,Johanssen,Obanda,he/him,KEN,Africa,34.7541761,-0.1029109,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,mentor,,"Knowledge and perspectives of open science among researchers in Ghana, West Africa",,,,,,,,,,,, +johav,Berlin,Germany,Jo,Havemann,,DEU,Europe,13.3888599,52.5170365,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +jonny-heath,Brighton,United Kingdom,Jonny,Heath,He/him,GBR,Europe,-0.1400561,50.8214626,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +joyceykao,Aachen,Germany,Joyce,Kao,She/Her,DEU,Europe,6.083862,50.776351,,,,,,,,participant,Open Innovation in Life Sciences,,,,,,"expert, mentor",,Creating a network of Open Science ambassadors in Spanish Health Research Institutes,expert,,,,expert,,,expert,,,,expert,,,expert,,,,"expert, mentor",,Mapping the RSSE landscape in Africa,expert,,,,mentor,,Euro-BioImaging Scientific Ambassadors Program,,,,,mentor,,UbuntuEdu (Concept title),,,,, +jruizperez,College Station,United States,Javier,Ruiz-Pérez,,USA,North America,-96.3071042,30.5955289,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community,,,,,,,,,,,,,,,,,,,,,,,,,,, +jsheunis,Juelich,Germany,Stephan,Heunis,he/him,DEU,Europe,6.3611015,50.9220931,,,,,,,,,,,,,,,,,,,,,,,,,,,,,"expert, mentor",,Easy Access Autism Resources for Rural Parents,expert,,,,,,,,,,,,,,,,,,,,,,,,, +juanjo-garcía-granero,Barcelona,Spain,Juan José,García-Granero,He/him/his,ESP,Europe,2.1774322,41.3828939,,,,,,,,,,,,,,,participant,Towards FAIRer phytolith data,,,,,,,,,,,,,participant,International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community,,,,,,,,,,,,,,,,,,,,,,,,,,, +julianbuede,Córdoba,Argentina,Julián,Buede,Él,ARG,South America,-4.7760138,37.8845813,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Estructura e infraestructura para la formación por cohortes virtuales,,,,,, +jvillcavillegas,Buenos Aires,Argentina,Jose Luis,Villca Villegas,Bolivia,ARG,South America,-58.4370894,-34.6075682,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Training Latin American scientists' community to create high-quality open journals with good editorial standards,,,,,,,,,,,,,,,,,,,,mentor,,JICMar Network: towards better opportunities and greater collaboration among young marine science researchers in Latin America,,,,, +jyoti-bhogal,"Ahmednagar, Maharashtra",India,Jyoti,Bhogal,she/her,IND,Asia,74.74267631763158,19.043620599999997,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Building Pathways for Onboarding to Research Software Engineering (RSE) Asia Association and Adoption of Code of Conduct,,,,,,,,,,,,,,,,,,,,,,,,,,, +jywarren,"Providence, RI",United States,Jeffrey,Warren,,USA,North America,-71.4128343,41.8239891,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,, +k-c-martin,Stellenbosch,South Africa,Kim,Martin,,ZAF,Africa,18.869167,-33.934444,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Finding paths through the FAIR forest; linking metadata from forestry models and datasets to assist analysis and hypothesis generation,,,,,,mentor,,"Developing an ontology to connect open science technology, RSEs and the different skills and services that follow",,,,,,,,,,,,,,,,,,, +k8hertweck,"Seattle, Wa",United States,Kate,Hertweck,perceived pronouns (anything works),USA,North America,-122.330062,47.6038321,,,,,,,,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +karegapauline,Nairobi,Kenya,Pauline,Karega,she/her,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,,,participant,Database for coordinating training needs in Kenya to faciliatate preparation and collaboration,,,,,,,,,,,,,,,,,,,,,,,,,,,"facilitator, participant",The hub portal and academy,,,,facilitator,,mentor,,"Building an open, structured, knowledge listing system",,,,,mentor,,Bioinformatics and Health Data Science Internship,,,,, +karvovskaya,Amsterdam,Netherlands,Lena,Karvovskaya,She/her,NLD,Europe,4.8924534,52.3730796,participant,Creating network of Data Champions at the library of Free University of Amsterdam,,,,,,"expert, mentor",,Western Cape-H3ABioNet Open Learning Circles,expert,,,,expert,,,expert,,,,"expert, mentor",,EROS Stories: Conversation and case studies in open research across educational disciplines,expert,,,,"expert, mentor",,Art as a means to open science,expert,,,,"expert, mentor",,Open Communities: building a supportive community of practice across the AI for Multiple Long Term Conditions Research Support Facility.,expert,,,,mentor,,Building a searchable project database,,,,,participant,Open-source handbooks infrastructure at VU Amsterdam,,,,,, +katesimpson,London/ Great Union Canal/ Leeds,United Kingdom,Kate,Simpson,She/her,GBR,Europe,,,,,,,,,,participant,Towards open and citizen-led data informing the decarbonisation of existing housing,,,,,,"expert, mentor",,Memory Collecting: Croatian Homeland War,expert,,,,mentor,,Creating an open database for carbon foot printing of buildings in Ghana,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +katoss,Paris,France,Katharina,Kloppenborg,she/her,FRA,Europe,2.3200410217200766,48.8588897,,,,,,,,participant,Autistica - Turing Citizen Science Project,,,,,,participant,Best practices for online collaboration/peer-production in citizen science,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +kenmurithi,Chogoria,Kenya,Ken,Mugambi,,KEN,Africa,37.631994,-0.228851,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,The hub portal and academy,,,,,,,,,,,,,,,,,,,, +khanteymoori,Freiburg,Germany,Alireza,Khanteymoori,,DEU,Europe,7.8494005,47.9960901,,,,,,,,,,,,,,,participant,Implementing a series of pedagogical games to teach pupils and citizens (metagenomic) data analysis,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +klauer2207,Cambridge,United Kingdom,Katharina,Lauer,she/her,GBR,Europe,0.1186637,52.2055314,,,,,,,,"expert, mentor",,Science For All (Sci4All) - Citizens' daily problem solving by engaging multidisciplinary scientific communities,expert,,,,,,,,,,,,,,,,,,"expert, mentor",,Building an open community around the Turing-Roche Strategic Partnership,expert,,,,,,,,,,,,,,,,,,,,,,,,, +kllewers,"Boulder, Co",United States,Kit,Lewers,she/her,USA,North America,-105.270545,40.0149856,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Understanding Natural History Organizational Structures, Data Sharing, and Coordination through Biodiversity Informatics and Biocollections",,,,,, +kmexter,Oostende,Belgium,Katrina,Exter,,BEL,Europe,2.9226366807233966,51.184683899999996,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +koen-leuveld,Amsterdam,Netherlands,Koen,Leuveld,,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open-source handbooks infrastructure at VU Amsterdam,,,,,, +koerding,Philadelphia,United States,Konrad,Kording,he/ him,USA,North America,-75.1635262,39.9527237,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,participant,dr,,,,,, +kon0925,Heraklion,Greece,Haridimos,Kondylakis,,GRC,Europe,25.1332843,35.33908,,,,,,,,,,,,,,,participant,"ProCancer-I - An AI Platform integrating imaging data and models, supporting precision care through prostate cancer's continuum",,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +kswhitney,Rochester,United States,Kaitlin,Stack Whitney,she/her,USA,North America,-77.615214,43.157285,expert,,,expert,,,,,,,,,,,expert,,,expert,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +lalmehlisy,Riyadh,Saudi Arabia,Leena,AlMehlisy,she/her,SAU,Asia,46.7160104,24.638916,,,,,,,,,,,,,,,,,,,,,,participant,Culture-independent discovery of natural products from soil metagenomes,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +landimi2,Nairobi,Kenya,Michael,Landi,He/Him,KEN,Africa,36.8288420082562,-1.3026148499999999,participant,Bioinformatics Hub of Kenya (BHK),,,,,,,,,,,,,mentor,,MBiO: Designing an open-collaborative website in the field of molecular biology,,,,,facilitator,,,,,facilitator,,facilitator,,,,,facilitator,,mentor,,Bioinformatics Secondary school Outreach in Nigeria,,,,,"mentor, mentor",,"Build community, Bioinformatics Secondary school Outreach in Nigeria",,,,,"expert, facilitator",,,expert,,facilitator,, +lauracarter,London,United Kingdom,Laura,Carter,she/her,GBR,Europe,-0.12765,51.5073359,,,,,,,,participant,The Turing Way - Guide for Ethical Research,,,,,,"expert, mentor",,Development of language resources for Hausa Natural Language Processing,expert,,,,expert,,,expert,,,,expert,,,expert,,,,expert,,,expert,,,,expert,,,expert,,,,mentor,,"Understanding Natural History Organizational Structures, Data Sharing, and Coordination through Biodiversity Informatics and Biocollections",,,,, +lauracion,Ciudad Autónoma De Buenos Aires,Argentina,Laura,Ación,she/ella,ARG,South America,-58.43562340522388,-34.61612315,,,,,,,,"expert, speaker",,,expert,speaker,,,"expert, mentor",,LA-CoNGA physics (Latin American alliance for Capacity buildiNG in Advanced physics),expert,,,,,,,,,,,participant,Argentinean Public Health Research on Data Science and Artificial Intelligence for Epidemic Prevention (ARPHAI),,,,,,,,,,,,,,,,,,,,facilitator,,,,,facilitator,, +lauradascenzi,Córdoba,Argentina,Laura,Ascenzi,she/her/ella,ARG,South America,-4.7760138,37.8845813,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Gobernanza 2.0 de MetaDocencia,,,,,, +laurah-nyasita-ondari,Nairobi,Kenya,Laurah,Ondari,She/Her,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,facilitator,,,,,facilitator,,facilitator,,,,,facilitator,, +lauramb8909,Bucaramanga,Colombia,Laura Marcela,Becerra Bayona,,COL,South America,-73.1047294009737,7.16698415,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,LA-CoNGA Physics Citizen Science Project,,,,,,,,,,,,, +lcbreedt,Amsterdam,Netherlands,Lucas,Breedt,he/him/his,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open Science in Neuroscience: A Practical Guide for Researchers,,,,,, +lessa-maker,Centre,Cameroon,Lessa Tchohou,Fabrice,,CMR,Africa,1.7324062,47.5490251,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Development of an online open science platform, easy and accessible for agricultural students in Cameroon.",,,,,,facilitator,,,,,facilitator,, +lisanna,Heidelberg,Germany,Lisanna,Paladin,She/they,DEU,Europe,8.694724,49.4093582,,,,,,,,,,,,,,,,,,,,,,participant,Grassroots: Nurturing the EMBL Bio-IT Community,,,,,,mentor,,An Incomplete History of Research Ethics,,,,,mentor,,Developing effective online communities to build tools for genomic equity,,,,,,,,,,,,,,,,,,, +lomaxboydphd,New York,United States,Lomax,Boyd,He/him,USA,North America,-74.0060152,40.7127281,,,,,,,,,,,,,,,participant,Junto Labs - Advancing Virtual Environments for Life Science Research and Active Learning,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +loreleyls,Falmouth,United States,Loreley,Lago,she/her,USA,North America,-5.0688262,50.1552197,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,JICMar Network: towards better opportunities and greater collaboration among young marine science researchers in Latin America,,,,,, +loubez,Cape Town,South Africa,Louise,Bezuidenhout,she/her,ZAF,Africa,18.417396,-33.928992,,,,,,,,,,,,,,,"expert, mentor",,FAIR MAFIL: FAIRification of imaging/neurophysiological data of MAFIL CEITEC MUNI laboratory for EOSC,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +luispedro,Shanghai,China,Luis Pedro,Coelho,he/them,CHN,Asia,121.4700152,31.2312707,"expert, mentor",,Benchmarking environment for bioinformatics tools,expert,,,,"expert, mentor",,Using collective action to change cultural norms and drive progress in the life sciences,expert,,,,,,,,,,,,,,,,,,"expert, mentor",,Developing thermally stable loop mediated isothermal amplification kit for a non invasive detection of malaria,expert,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,, +lukehare,London,United Kingdom,Luke,Hare,he/him,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,,,,,,,,participant,Hub23: An open source community and infrastructure for Turing's BinderHub,,,,,,participant,Hub23: An open source community and infrastructure for Turing's BinderHub,,,,,,,,,,,,,,,,,,,,,,,,,,, +lwbwalma,Delft,Netherlands,Lisanne,Walma,she/her,NLD,Europe,4.362724538543995,51.999457199999995,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Build a community around the TU Delft Open Science MOOC,,,,,,,,,,,,,,,,,,,,,,,,,,, +lwinfree,Austin,United States,Lilly,Winfree,she/her,USA,North America,-97.7436995,30.2711286,speaker,,,,speaker,,,"expert, speaker",,,expert,speaker,,,,,,,,,,"expert, mentor",,Environmental mapping for urban farming project,expert,,,,speaker,,,,speaker,,,expert,,,expert,,,,,,,,,,,,,,,,,, +lydiafrance,London,United Kingdom,Lydia,France,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,,,,,,,,participant,Hub23: An open source community and infrastructure for Turing's BinderHub,,,,,,participant,Hub23: An open source community and infrastructure for Turing's BinderHub,,,,,,,,,,,,,,,,,,,,,,,,,,, +macelik,Istanbul,Turkey,Muhammet,Celik,He/Him,TUR,Asia,29.052495,41.0766019,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +macziatko,Dublin,Ireland,Nina,Trubanová,she/her/hers,IRL,Europe,-6.2605593,53.3493795,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,AGAPE: Building an open science practicing community in Ireland,,,,,,"facilitator, mentor",,Open-source object recognition software specifically designed for mice in Alzheimers disease,,,facilitator,,"expert, facilitator, mentor",,Gender Differences in the Impostor Phenomenon: A Preregistered and Open-Science Meta-Analysis,expert,,facilitator,, +mai-alajaji,Riyadh,Saudi Arabia,Mai,Alajaji,,SAU,Asia,46.7160104,24.638916,,,,,,,,,,,,,,,,,,,,,,participant,Culture-independent discovery of natural products from soil metagenomes,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +malloryfreeberg,Cambridge,United Kingdom,Mallory,Freeberg,she/her,GBR,Europe,0.1186637,52.2055314,,,,,,,,mentor,,Creating a single pipeline for metagenome classification,,,,,mentor,,Open data schema for actigraphy data in chronobiology and sleep research,,,,,,,,,,,,,,,,,,,"expert, mentor, speaker",,Preparing IceNet stakeholder engagement framework for open and collaborative development,expert,speaker,,,,,,,,,,mentor,,Molerhealth,,,,, +malvikasharan,London,United Kingdom,Malvika,Sharan,she/her,GBR,Europe,-0.14405508452768728,51.4893335,"organizer, mentor, mentor, mentor, speaker, speaker, speaker",,"Bioinformatics Hub of Kenya (BHK), Media Lab Nepal for Computational Biology, EMBL Bio-IT Community Project",,speaker,,organizer,"expert, organizer, mentor, mentor",,"Mapping Science using Open Scholarship, Target approach in the stages of liver cirrhosis to reverse back in good condition",expert,,,organizer,"expert, organizer, mentor, mentor, mentor, speaker, speaker",,"Open Life Science (OLS) Program, a driver of open science skills among early stage researchers and young leaders: mentee perspective, The Turing Way - Developing a community health report and assessing its impact on the wider data science community, Developing and embedding open science practices within the Research Application Management team at Turing",expert,speaker,,organizer,"organizer, speaker",,,,speaker,,organizer,"organizer, participant, mentor, mentor, mentor, speaker","Exploring ""Governance Models"" for Open Science community projects as per their maturity stage","International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community, Building Pathways for Onboarding to Research Software Engineering (RSE) Asia Association and Adoption of Code of Conduct, Transcriptomics profiling of bladder cancer using publicly available datasets",,speaker,,organizer,"organizer, mentor, speaker",,Open Data Custodianship tool,,speaker,,organizer,"organizer, mentor, speaker",,Investigating effective strategies for radical inclusion at academic events,,speaker,,organizer,"organizer, speaker, speaker",,,,speaker,,organizer, +manulera,Paris,France,Manuel,Lera Ramirez,He/him,FRA,Europe,2.3200410217200766,48.8588897,,,,,,,,,,,,,,,,,,,,,,"facilitator, participant",Genestorian: An Open Source web application for model organism collections,,,,facilitator,,facilitator,,,,,facilitator,,,,,,,,,,,,,,,,,,,,,,, +marco-madella,Barcelona,Spain,Marco,Madella,he/his,ESP,Europe,2.1774322,41.3828939,,,,,,,,,,,,,,,participant,Towards FAIRer phytolith data,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +marcoanteghini,Berlin,Germany,Marco,Anteghini,,DEU,Europe,13.3888599,52.5170365,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,, +marcotxma,Munich,Germany,Marco,Ma,he/him,DEU,Europe,11.5753822,48.1371079,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"momenTUM Research Platform: An open-source, reproducible research infrastructure for digital health",,,,,,,,,,,,, +maria-andrea-gonzales-castillo,Lima,Peru,Maria Andrea,Gonzales Castillo,She/Her,PER,South America,-77.0365256,-12.0621065,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,SciHack: Promoting the Open Source and DIY movements in Peru,,,,,,,,,,,,,,,,,,,,,,,,,,, +mariangelap,Genova,Italy,Mariangela,Panniello,she/her,ITA,Europe,8.9338624,44.40726,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Open Science, Open Future",,,,,,,,,,,,,,,,,,,,,,,,,,, +marie-nugent,London,United Kingdom,Marie,Nugent,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Developing effective online communities to build tools for genomic equity,,,,,,,,,,,,,,,,,,,, +marielaraj,Ciudad De Buenos Aires,Argentina,Mariela,Rajngewerc,She/her,ARG,South America,-58.4370894,-34.6075682,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open educational hands-on tutorial for evaluating fairness in AI classification models,,,,,,mentor,,"Building a Searchable Open Data Repository of DNA Collections that are Freely-Shared under OpenMTA, with an Associated Landscape Map Visualisation of the Collection Users",,,,, +marimeireles,Berlin,Germany,Mariana,Meireles,she/her,DEU,Europe,13.3888599,52.5170365,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,"expert, mentor",,The Undergraduates Guide To Research Software Engineering,expert,,,,,,,,,,,speaker,,,,speaker,,, +markuskonk,Enschede,Netherlands,Markus,Konkol,,NLD,Europe,6.870595664097989,52.22336325,,,,,,,,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +marlouramaekers,Amsterdam,Netherlands,Marlou,Ramaekers,she/her,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Making corporate social responsibility data available and accessible for other researchers,,,,,, +marta-lloret-llinares,Cambridge,United Kingdom,Marta,Lloret Llinares,She/her,GBR,Europe,0.1186637,52.2055314,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +marta-marin,Madrid,Spain,Marta,Marin,She/her,ESP,Europe,-3.7035825,40.4167047,,,,,,,,,,,,,,,participant,Creating a network of Open Science ambassadors in Spanish Health Research Institutes,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +martinagvilas,Frankfurt Am Main,Germany,Martina,Vilas,She/her,DEU,Europe,8.6820917,50.1106444,,,,,,,,"expert, mentor",,sktime - a unified toolbox for machine learning with time series,expert,,,,"expert, participant",Open Source Project for Evaluating Reproducibility Trends in AI Research Projects,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +martlj,London,United Kingdom,Martin,Jones,he/him,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,,,,,,,,mentor,,Multibeam electron microscopy for imaging large tissue volumes,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,, +marzia-di-filippo,Milano,Italy,Marzia,Di Filippo,,ITA,Europe,9.1896346,45.4641943,,,,,,,,,,,,,,,participant,Seeding,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +masako-kaufmann,Freiburg,Germany,Masako,Kaufmann,"She, her",DEU,Europe,7.8494005,47.9960901,,,,,,,,,,,,,,,participant,Implementing a series of pedagogical games to teach pupils and citizens (metagenomic) data analysis,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +matouse,London,United Kingdom,Matous,Elphick,He/Him,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,, +mcnanton,Buenos Aires,Argentina,María Cristina,Nanton,she/her,ARG,South America,-58.4370894,-34.6075682,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +meagdoh,Washington,United States,Meag,Doherty,she/her,USA,North America,-77.0365427,38.8950368,,,,,,,,"expert, mentor",,OpenWorkstation - A modular and open-source concept for customized automation equipment,expert,,,,"expert, mentor",,An Open Source Service Area for Turing research projects,expert,,,,"expert, mentor",,Bioinformatics Secondary school Outreach in Nigeria,expert,,,,mentor,,Bioinformatics Secondary school Outreach in Nigeria,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,, +megmugure,Nairobi,Kenya,Margaret,Wanjiku,she/her,KEN,Africa,36.8288420082562,-1.3026148499999999,participant,Bioinformatics Hub of Kenya (BHK),,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +mehak-chopra,Puducherry,India,Mehak,Chopra,she/her,IND,Asia,79.8306447,11.9340568,,,,,,,,,,,,,,,participant,Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +melibleq,São Paulo,Brazil,Melissa,Black,she/her,BRA,South America,-47.1583944,-1.2043218,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,"expert, speaker",,,expert,speaker,,,"facilitator, mentor",,LA-CoNGA Physics Citizen Science Project,,,facilitator,,participant,Estructura e infraestructura para la formación por cohortes virtuales,,,,,, +melissawm,Florianópolis,Brazil,Melissa,Weber Mendonça,,BRA,South America,-48.5496098,-27.5973002,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +merrcury,Kurukshetra,India,Himanshu,Garg,He / Him,IND,Asia,76.8482787,29.9693747,,,,,,,,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +mgawe-cavin,"Nairobi, Kenya",Kenya,Cavin,Mgawe,He,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Developing thermally stable loop mediated isothermal amplification kit for a non invasive detection of malaria,,,,,,facilitator,,,,,facilitator,,,,,,,,,,,,,,,, +michael-addy,Kumasi,Ghana,Michael,Addy,He,GHA,Africa,-1.6233086,6.6985605,,,,,,,,,,,,,,,,,,,,,,participant,Creating an open database for carbon foot printing of buildings in Ghana,,,,,,mentor,,OpenGHG - a cloud platform for greenhouse gas data analysis and collaboration,,,,,,,,,,,,,,,,,,,,,,,,,, +michal-javornik,Brno,Czechia,Michal,Javornik,,CZE,Europe,16.6113382,49.1922443,,,,,,,,,,,,,,,participant,FAIR MAFIL: FAIRification of imaging/neurophysiological data of MAFIL CEITEC MUNI laboratory for EOSC,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +michal-ruzicka,Brno,Czechia,Michal,Růžička,,CZE,Europe,16.6113382,49.1922443,,,,,,,,,,,,,,,participant,FAIR MAFIL: FAIRification of imaging/neurophysiological data of MAFIL CEITEC MUNI laboratory for EOSC,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +miguel-silan,Metro Manila / Grenoble,France,Miguel,Silan,,FRA,Europe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,expert,,,expert,,,,speaker,,,,speaker,,, +mihaelanemes,London,United Kingdom,Mishka,Nemes,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,participant,Towards an infrastructure for open-source (online) training in data science and AI,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +miketrizna,"Washington, Dc",United States,Mike,Trizna,he/him/his,USA,North America,-77.0365427,38.8950368,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Building an open, structured, knowledge listing system",,,,,,,,,,,,, +milagro-urricariet,Ciudad Autónoma De Buenos Aires,Argentina,Milagro,Urricariet,she/her,ARG,South America,-58.4370894,-34.6075682,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,"expert, participant",JICMar Network: towards better opportunities and greater collaboration among young marine science researchers in Latin America,,expert,,,, +milagros-miceli,Berlin,Germany,Milagros,Miceli,she/her/hers,DEU,Europe,13.3888599,52.5170365,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,mentor,,Queering the law: How to make AI with a Queer Perspective from the Majority of the World,,,,,,,,,,,, +mishrose123,Cambridge,United Kingdom,Michelle,Mendonca,she/her,GBR,Europe,0.1186637,52.2055314,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +mitch-kitoi,Nairobi,Kenya,Michael,Kitoi,He/Him,KEN,Africa,36.82884201813725,-1.3026148499999999,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Assessing the Zinc Finger Protein Mutation and Expression Profile in Kenyan Women with Breast Cancer,,,,,, +miytek,Delft,Netherlands,Miyase,Tekpinar,,NLD,Europe,4.362724538543995,51.999457199999995,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,A Fiji plugin for SOFI analysis,,,,,, +mlagisz,Sydney,Australia,Malgorzata,Lagisz,,AUS,Oceania,-60.194092,46.137977,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Evaluating criteria of ""best paper"" awards from research journals across disciplines",,,,,,,,,,,,,,,,,,,, +mmasibidi,Potchefstroom,South Africa,Mmasibidi,Setaka,She/her,ZAF,Africa,27.095833,-26.707778,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Assessing word stability in Corpora and its influence on learner dictionaries,,,,,, +mohan-gupta,Kathmandu,Nepal,Mohan,Gupta,He/Him,NPL,Asia,85.3205817,27.708317,,,,,,,,,,,,,,,participant,GyaNamuna: Virtual School Connecting Rural Students To The World,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +mona-zimmermann,Amsterdam,Netherlands,Mona,Zimmermann,She/Her,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open Science in Neuroscience: A Practical Guide for Researchers,,,,,, +msundukova,Bilbao,Spain,Mayya,Sundukova,she/her,ESP,Europe,-2.9350039,43.2630018,,,,,,,,,,,,,,,facilitator,,,,,facilitator,,facilitator,,,,,facilitator,,"expert, facilitator, mentor",,Argentinean Public Health Research on Data Science and Artificial Intelligence for Epidemic Prevention (ARPHAI),expert,,facilitator,,"expert, facilitator, mentor, participant",Developing policy briefs on mental well-being of researchers in academia across different countries,An open support resource for primary mental health for researchers.,expert,,facilitator,,,,,,,,,,,,,,,, +mtthsdzwn,Amsterdam,Netherlands,Matthijs,de Zwaan,,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Is my research used in clinical trials? - Tool(s) to assess societal impact using open scholarly data,,,,,, +mxrtinez,Bucaramanga,Colombia,Alexander,Martinez Mendez,,COL,South America,-73.1047294009737,7.16698415,,,,,,,,,,,,,,,participant,LA-CoNGA physics (Latin American alliance for Capacity buildiNG in Advanced physics),,,,,,"expert, mentor",,"An open educational resource to introduce fundamental concepts of GNU/Linux, terminal usage, Bash/AWK scripting, and Git/GitHub for Bioinformatics",expert,,,,mentor,,Training Latin American scientists' community to create high-quality open journals with good editorial standards,,,,,"expert, speaker",,,expert,speaker,,,"mentor, participant",LA-CoNGA Physics Citizen Science Project,"Mapping open-science communities, organizations, and events in Latin America",,,,,mentor,,JICMar Network: towards better opportunities and greater collaboration among young marine science researchers in Latin America,,,,, +nadia-odaliz-chamana-chura,Lima,Peru,Nadia Odaliz,Chamana Chura,She/her/hers,PER,South America,-77.0365256,-12.0621065,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,SciHack: Promoting the Open Source and DIY movements in Peru,,,,,,,,,,,,,,,,,,,,,,,,,,, +nadinespy,Brighton,United Kingdom,Nadine,Spychala,she/her,GBR,Europe,-0.1400561,50.8214626,,,,,,,,,,,,,,,,,,,,,,participant,Developing a library in Python for applying measures of emergence and complexity,,,,,,,,,,,,,"expert, mentor",,Open sourcing the Pyxium learning platform,expert,,,,,,,,,,,"expert, mentor",,PyOrb 1.0 – Automated Analysis Tool for Orbital Interactions,expert,,,, +nahuele,Vicente Lopez,Argentina,Nahuel,Escobedo,he,ARG,South America,-58.5036282,-34.5244484,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,An interactive map of socio-ecological projects,,,,,,,,,,,,, +nanje-patrick-itarngoh,Buea,Cameroon,Nanje Patrick,Itarngoh,He,CMR,Africa,9.2315519,4.1567995,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Wind Power System Stability Analysis for Grid Integration: A Statistical Mechanics Approach to the Swing Equation.,,,,,, +natalie-banner,London,United Kingdom,Natalie,Banner,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,mentor,,Developing policy briefs on mental well-being of researchers in academia across different countries,,,,,,,,,,,,,,,,,,, +natasha_wood,Cape Town,South Africa,Natasha,Wood,,ZAF,Africa,18.417396,-33.928992,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +nathanael-kedmayla,Yaounde,Cameroon,Nathanael,Kedmayla,He/Him,CMR,Africa,11.5213344,3.8689867,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,From invisible to Citizens: Apparent Age for Primary School children without birth certificates,,,,,,,,,,,,, +nea-bridget,London,United Kingdom,Bridget,Nea,she/her/hers,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Data Science and AI Educators' Programme AND Tools, Practices & Systems Peer Mentorship Programme",,,,,,,,,,,,,,,,,,,,,,,,,,, +nelson-franco,Cochabamba,Bolivia,Nelson Franco,Condori Salluco,Nelson,,,-66.1568983,-17.3936114,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Training Latin American scientists' community to create high-quality open journals with good editorial standards,,,,,,,,,,,,,,,,,,,,,,,,,,, +nessa111987,Oxford,United Kingdom,Vanessa,Fairhurst,she/her,GBR,Europe,-1.2578499,51.7520131,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,expert,,,expert,,,, +nickynicolson,London,United Kingdom,Nicky,Nicolson,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,An extensible notebook for open specimens,,,,,,participant,An extensible notebook for open specimens,,,,,,mentor,,"Understanding Natural History Organizational Structures, Data Sharing, and Coordination through Biodiversity Informatics and Biocollections",,,,, +niels-reijner,Amsterdam,Netherlands,Niels,Reijner,,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open Science in Neuroscience: A Practical Guide for Researchers,,,,,, +nihansultan,İstanbul,Turkey,Nihan Sultan,Milat,,TUR,Asia,29.052495,41.0766019,,,,,,,,,,,,,,,participant,MBiO: Designing an open-collaborative website in the field of molecular biology,,,,,,,,,,,,,participant,NGS-HuB: An open educational resource for NGS data analysis,,,,,,,,,,,,,,,,,,,,,,,,,,, +nlois,Buenos Aires,Argentina,Nicolás,Lois,He/him,ARG,South America,-58.4370894,-34.6075682,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,JICMar Network: towards better opportunities and greater collaboration among young marine science researchers in Latin America,,,,,, +nodiraibrogimova,Tashkent,Uzbekistan,Nodira,Ibrogimova,She/Hers,UZB,Asia,69.2787079,41.3123363,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open Science for Improve diagnostics of Cancer through Artificial Intelligence and Digital Pathology,,,,,,,,,,,,,,,,,,,,,,,,,,, +nomadscientist,Cambridge,United Kingdom,Wendi,Bacon,She/her,GBR,Europe,0.1186637,52.2055314,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +nomalu,Pretoria,South Africa,Nomalungelo Octavia,Maphanga,,ZAF,Africa,28.1879101,-25.7459277,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Mapping the RSSE landscape in Africa,,,,,,,,,,,,,,,,,,,, +npalopoli,Buenos Aires,Argentina,Nicolás,Palopoli,Él/He/Him,ARG,South America,-58.4370894,-34.6075682,,,,,,,,expert,,,expert,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,"mentor, participant",Estructura e infraestructura para la formación por cohortes virtuales,openTECR - an open database on thermodynamics of enzyme-catalyzed reactions,,,,, +npdebs,Port Harcourt.,Nigeria,Deborah,Udoh,She/her,NGA,Africa,7.0188527,4.7676576,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,The Impact of Sleep Deprivation on Mental Health,,,,,,facilitator,,,,,facilitator,, +nwakaego-gloria-ashiegbu,Umudike / Abia State,Nigeria,Nwakaego Gloria,Ashiegbu,She,NGA,Africa,7.533333,5.5,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Digitalization for sustainable Agricultural practices and climate change mitigation,,,,,, +nyasita,Nairobi,Kenya,Laurah,Ondari,,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,The hub portal and academy,,,,,,mentor,,Open Science platform for humanities and computational social scientists,,,,,mentor,,Bioinformatics codeathon,,,,, +olayile,Pretoria,South Africa,Olayile,Ejekwu,She/Her,ZAF,Africa,28.1879101,-25.7459277,,,,,,,,,,,,,,,participant,"BioFerm: A web application used for kinetic modeling, parameter estimation and simulation of bioprocesses",,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +olsjuju,Seoul,South Korea,Juyeon,Kim,,,,126.9782914,37.5666791,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open collaborative network and incentive system for brain health,,,,,,mentor,,"Evaluating criteria of ""best paper"" awards from research journals across disciplines",,,,,,,,,,,,,,,,,,, +olufemi-adesope,Port Harcourt,Nigeria,Olufemi,Adesope,Him/His,NGA,Africa,7.0188527,4.7676576,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Digitalization for sustainable Agricultural practices and climate change mitigation,,,,,, +olya-vvedenskaya,Dresden,Germany,Olya,Vvedenskaya,,DEU,Europe,13.7381437,51.0493286,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +onwumere.joseph,"Umudike, Abia State",Nigeria,Joseph,Chimere Onwumere,He,NGA,Africa,7.533333,5.5,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Digitalization for sustainable Agricultural practices and climate change mitigation,,,,,, +osatashamim,Nairobi,Kenya,Shamim,Wanjiku Osata,,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,An open support resource for primary mental health for researchers.,,,,,,,,,,,,,,,,,,,, +paolo-pedaletti,Milano,Italy,Paolo,Pedaletti,,ITA,Europe,9.1896346,45.4641943,,,,,,,,,,,,,,,participant,Seeding,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +patriloto,Resistencia - Chaco,Argentina,Patricia,Loto,Ella/She,ARG,South America,-59.19320025100798,-27.6048829,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Mapping open-science communities, organizations, and events in Latin America",,,,,,mentor,,Creating an online repository for open collaboration in psychology,,,,, +paulinegachanja,Kilifi,Kenya,Pauline,Wambui Gachanja,Her/She,KEN,Africa,39.67507159193717,-3.15073925,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Bioinformatics codeathon,,,,,, +paulmaxus,Amsterdam,Netherlands,Maximillian,Paulus,he/him/his,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Is my research used in clinical trials? - Tool(s) to assess societal impact using open scholarly data,,,,,, +pazmiguez,Buenos Aires,Argentina,Paz,Míguez,she/her,ARG,South America,-58.4370894,-34.6075682,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,"expert, participant",Estructura e infraestructura para la formación por cohortes virtuales,,expert,,,, +peranti,Paris,France,Pradeep,Eranti,,FRA,Europe,2.3483915,48.8534951,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,facilitator,,,,,facilitator,,facilitator,,,,,facilitator,, +pescini,Milan,Italy,Dario,Pescini,he/him,ITA,Europe,9.1896346,45.4641943,,,,,,,,,,,,,,,participant,Seeding,,,,,,mentor,,Developing a library in Python for applying measures of emergence and complexity,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +petraag,Bamenda,Cameroon,Agien,Petra Ukeh,She,CMR,Africa,10.1516505,5.9614117,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,liforient,,,,,,,,,,,,, +phaarouknucleus,Kano,Nigeria,Umar Farouk,Ahmad,,NGA,Africa,8.5364136,11.8948389,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Development of a Multi-Adaptor Quality Control Kit for Integration with Radiographic Equipment,,,,,,"facilitator, speaker",,,,speaker,facilitator,,"expert, facilitator, mentor, mentor",,"Digitalization for sustainable Agricultural practices and climate change mitigation, Wind Power System Stability Analysis for Grid Integration: A Statistical Mechanics Approach to the Swing Equation.",expert,,facilitator,, +pherterich,Edinburgh,United Kingdom,Patricia,Herterich,she/her,GBR,Europe,-3.1883749,55.9533456,"expert, mentor, mentor",,"How to build an healthy and open lab, Creating network of Data Champions at the library of Free University of Amsterdam",expert,,,,"expert, mentor",,APBioNetTalks,expert,,,,,,,,,,,speaker,,,,speaker,,,"expert, mentor",,Build a community around the TU Delft Open Science MOOC,expert,,,,expert,,,expert,,,,mentor,,Data management materials for ELIXIR Estonia,,,,,,,,,,,, +piero-beraun,Lima,Peru,Piero,Beraun,He/Him,PER,South America,-77.0365256,-12.0621065,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,SciHack: Promoting the Open Source and DIY movements in Peru,,,,,,,,,,,,,,,,,,,,,,,,,,, +pinheirochagas,San Francisco,United States,Pedro,Pinheiro-Chagas,He / him / his,USA,North America,-122.419906,37.7790262,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Development of an Open Source Platform for the Storage, Sharing, Synthesis and Meta-Analysis of Clinical Data",,,,,,,,,,,,,,,,,,,,,,,,,,, +pivg,Cambridge,United Kingdom,Piraveen,Gopalasingam,he/him,GBR,Europe,0.1186637,52.2055314,,,,,,,,mentor,,Chronic Learning,,,,,"expert, mentor",,Skills for Open Agrobiodiversity Data,expert,,,,,,,,,,,speaker,,,,speaker,,,speaker,,,,speaker,,,,,,,,,,,,,,,,, +prakriti-karki,Kathmandu,Nepal,Prakriti,Karki,She/her,NPL,Asia,85.3205817,27.708317,,,,,,,,,,,,,,,participant,GyaNamuna: Virtual School Connecting Rural Students To The World,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +prashbio,Jaipur,India,Prash,Suravajhala,He/Him,IND,Asia,75.8189817,26.9154576,,,,,,,,,,,,,,,"expert, participant, mentor",Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers,Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +princehoodie,Buenos Aires,Argentina,Tobías,Aprea,He/His,ARG,South America,-58.4370894,-34.6075682,,,,,,,,,,,,,,,,,,,,,,participant,Open data for nanosystem synthesis experimental conditions,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +proccaserra,Oxford,United Kingdom,Philippe,Rocca-Serra,he/him,GBR,Europe,-1.2578499,51.7520131,,,,,,,,speaker,,,,speaker,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +profgiuseppe,Bologna,Italy,Giuseppe,Profiti,he/him/his,ITA,Europe,11.3426327,44.4938203,expert,,,expert,,,,expert,,,expert,,,,expert,,,expert,,,,expert,,,expert,,,,,,,,,,,expert,,,expert,,,,,,,,,,,expert,,,expert,,,, +r-huo,Delft,Netherlands,Ran,Huo,,NLD,Europe,4.362724538543995,51.999457199999995,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Building a Platform for Open and Reproducible Super-resolution Imaging Hardware and Analytical Tools,,,,,,,,,,,,,,,,,,,, +rainsworth,Manchester,United Kingdom,Rachael,Ainsworth,she/her,GBR,Europe,-2.2451148,53.4794892,expert,,,expert,,,,"expert, speaker",,,expert,speaker,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +raoofphysics,Bristol,United Kingdom,Achintya,Rao,he/him,GBR,Europe,-2.5972985,51.4538022,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Cultivating a Community of Practice of AI researchers,,,,,,,,,,,,,,,,,,,,,,,,,,, +raphaels1,London,United Kingdom,Raphael,Sonabend,They/He,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,, +reinout-de-vries,Amsterdam,Netherlands,Reinout,de Vries,,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Gender Differences in the Impostor Phenomenon: A Preregistered and Open-Science Meta-Analysis,,,,,, +rgiessmann,Berlin,Germany,Robert,Giessmann,he/him,DEU,Europe,13.3888599,52.5170365,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,openTECR - an open database on thermodynamics of enzyme-catalyzed reactions,,,,,, +richarddushime,Kampala,Uganda,Richard,Dushime,He/Him,UGA,Africa,32.5813539,0.3177137,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Implementing Facial Recognition and Biometric Attendance Monitoring in Educational and Corporate Settings,,,,,,expert,,,expert,,,, +rivaquiroga,Valparaíso,Chile,Riva,Quiroga,she/her/ella,CHL,South America,-71.6196749,-33.0458456,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,mentor,,Open Science platform for humanities and computational social scientists,,,,,mentor,,Assessing word stability in Corpora and its influence on learner dictionaries,,,,, +robandeep-kaur,Jalandhar,India,Robandeep,Kaur,She/her,IND,Asia,75.576889,31.3323762,,,,,,,,,,,,,,,participant,Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +robert-schreiber,Hermanus,South Africa,Robert,Schreiber,He/him,ZAF,Africa,19.2361111,-34.4175,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Easy Access Autism Resources for Rural Parents,,,,,,,,,,,,,,,,,,,,,,,,,,, +robin-lewando,Drimoleague,Ireland,Robin,Lewando,,IRL,Europe,-9.2599704,51.6608501,,,,,,,,,,,,,,,participant,"Field and laboratory based research project researching, surveying, and discovering the palaeoecology and palaeogeography of West Cork",,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +romina-pendino,"Rosario, Santa Fe",Argentina,Romina,Pendino,,ARG,South America,-60.6617024,-32.9593609,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Gobernanza 2.0 de MetaDocencia,,,,,, +romina-trinchin,Montevideo,Uruguay,Romina,Trinchin,,URY,South America,-56.1913095,-34.9058916,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,JICMar Network: towards better opportunities and greater collaboration among young marine science researchers in Latin America,,,,,, +romullo-lima,Rio De Janeiro,Brazil,Romullo,Lima,,BRA,South America,-43.2093727,-22.9110137,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Making Science simple and accessible,,,,,,,,,,,,,,,,,,,, +roné-wierenga,Pretoria,South Africa,Roné,Wierenga,Mrs/she/her,ZAF,Africa,28.1879101,-25.7459277,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,UbuntuEdu (Concept title),,,,,, +ruben-lacroix,Amsterdam,Netherlands,Ruben,Lacroix,,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Is my research used in clinical trials? - Tool(s) to assess societal impact using open scholarly data,,,,,, +rukynas,Porto,Portugal,Ruqayya Nasir,Iro,She,PRT,Europe,-8.6107884,41.1494512,,,,,,,,,,,,,,,participant,Development of language resources for Hausa Natural Language Processing,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +sairajdillikar,Mysore,India,Sairaj R,Dillikar,,IND,Asia,76.6553609,12.3051828,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,FarawayFermi - A platform for open source bioinformatic tools to detect biosignatures in astrobiology,,,,,,,,,,,,,,,,,,,,,,,,,,, +samvanstroud,London,United Kingdom,Sam,Van Stroud,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,participant,Turing Data Stories,,,,,,expert,,,expert,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +sandra-larriega,Ñima,Peru,Sandra Mirella,Larriega Cruz,"She, her",PER,South America,23.8675381,47.0759396,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,SciHack: Promoting the Open Source and DIY movements in Peru,,,,,,,,,,,,,,,,,,,,,,,,,,, +sandrine-kengne,Yaounde,Cameroon,Sandrine,Kengne,,CMR,Africa,11.5213344,3.8689867,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Comparison of three growth curves for the diagnosis of extrauterine growth retardation at 40 weeks postconceptional age and associated factors in preterm infants in the city of Yaoundé, Cameroon",,,,,,,,,,,,, +santi-rello-varona,Madrid,Spain,Santi,Rello Varona,he/him,ESP,Europe,-3.7035825,40.4167047,,,,,,,,,,,,,,,participant,Creating a network of Open Science ambassadors in Spanish Health Research Institutes,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +santosrac,Piracicaba,Brazil,Renato Augusto,Correa Dos Santos,He,BRA,South America,-47.6493269,-22.725165,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,, +sapetti9,Bologna,Italy,Sara,Petti,she/her,ITA,Europe,11.3426327,44.4938203,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,"expert, speaker",,,expert,speaker,,,,,,,,,,,,,,,,, +sarah-nietopski,London,United Kingdom,Sarah,Nietopski,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Community engagement: Building an open online learning community,,,,,,,,,,,,,,,,,,,,,,,,,,, +saranjeetkaur,Gurgaon,India,Saranjeet Kaur,Bhogal,She/her,IND,Asia,77.00270014657752,28.42826235,,,,,,,,,,,,,,,,,,,,,,participant,Building the Research Software Engineering (RSE) Association in Asia region,,,,,,,,,,,,,participant,Mapping the Open Life Science Cohorts,,,,,,mentor,,Open Science Awareness Project for Central Asian Universities,,,,,mentor,,Developing an Open Community Repository for SciArt,,,,, +saravilla,London,United Kingdom,Sara,Villa,she/her,GBR,Europe,-0.12765,51.5073359,,,,,,,,,,,,,,,,,,,,,,participant,Open and reproducible data analysis for wet lab neuroscientists,,,,,,mentor,,"Open Science, Open Future",,,,,"expert, mentor",,AGAPE: Building an open science practicing community in Ireland,expert,,,,mentor,,Collective and Open Research in Climate Science,,,,,"expert, mentor",,"Building a Searchable Open Data Repository of DNA Collections that are Freely-Shared under OpenMTA, with an Associated Landscape Map Visualisation of the Collection Users",expert,,,, +sarenaz,Astana (Nursultan),Kazakhstan,Zarena,Syrgak,she/they,KAZ,Asia,71.4306682,51.1282205,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Multilingual Open Science: Creating Open Educational Resources in Central Asian Languages,,,,,,,,,,,,,,,,,,,,,,,,,,, +saryace,Santiago,Chile,Sara,Acevedo,she/her,CHL,South America,-83.7980749,9.8694792,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Data analysis in soil physics: an opportunity of teaching data management and reproducibility,,,,,,,,,,,,, +saskiafreytag,Melbourne,Australia,Saskia,Freytag,,AUS,Oceania,144.9631732,-37.8142454,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,, +sayalaruano,Maastricht,Netherlands,Andres Sebastian,Ayala Ruano,he/him,NLD,Europe,5.6969881818221095,50.85798545,,,,,,,,,,,,,,,,,,,,,,participant,"An open educational resource to introduce fundamental concepts of GNU/Linux, terminal usage, Bash/AWK scripting, and Git/GitHub for Bioinformatics",,,,,,mentor,,Open Science for Improve diagnostics of Cancer through Artificial Intelligence and Digital Pathology,,,,,"expert, speaker",,,expert,speaker,,,mentor,,Open educational hands-on tutorial for evaluating fairness in AI classification models,,,,,mentor,,Is my research used in clinical trials? - Tool(s) to assess societal impact using open scholarly data,,,,, +selgebali,Gothenburg,Sweden,Sara,El-Gebali,"She, her",SWE,Europe,-100.1619896,40.9277324,,,,,,,,,,,,,,,,,,,,,,"expert, speaker",,,expert,speaker,,,"expert, mentor",,"Development of an Open Source Platform for the Storage, Sharing, Synthesis and Meta-Analysis of Clinical Data",expert,,,,"expert, mentor",,Building a Platform for Open and Reproducible Super-resolution Imaging Hardware and Analytical Tools,expert,,,,,,,,,,,mentor,,An Open Handbook and MOOC on Computational Methods for African Media Researchers,,,,, +serahrono,Tallinn,Estonia,Serah,Rono,"she, her, hers",EST,Europe,24.7453688,59.4372155,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +seunolufemi123,Ogbomoso,Nigeria,Seun Elijah,Olufemi,,NGA,Africa,4.25,8.133,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Bioinformatics Secondary school Outreach in Nigeria,,,,,,"expert, facilitator",,,expert,,facilitator,, +sgibson91,London,United Kingdom,Sarah,Gibson,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,"expert, mentor",,Database for coordinating training needs in Kenya to faciliatate preparation and collaboration,expert,,,,"expert, participant, mentor",An Open Source Service Area for Turing research projects,The UKCRC Tissue Directory and Coordination Centre,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +shmuhammad2004,Kano,Nigeria,Shamsuddeen,Muhammad,He/Him,NGA,Africa,8.5364136,11.8948389,,,,,,,,,,,,,,,participant,Development of language resources for Hausa Natural Language Processing,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +shubhamrj7,Bhopal,India,Shubham,Jathar,he/him,IND,Asia,77.401989,23.2584857,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +sivasubramanian-murugappan,Limerick,Ireland,Sivasubramanian,Murugappan,,IRL,Europe,-8.6301239,52.661252,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Facilitating easier academic selection of research students using ML,,,,,,,,,,,,, +sjb287,Urbana,United States,Steven,Burgess,He/His/Him,USA,North America,-88.207301,40.1117174,,,,,,,,,,,,,,,participant,Open Phototroph,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +sladjana-lukic,New York City,United States,Sladjana,Lukic,she/her,USA,North America,-74.0060152,40.7127281,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Development of an Open Source Platform for the Storage, Sharing, Synthesis and Meta-Analysis of Clinical Data",,,,,,,,,,,,,,,,,,,,,,,,,,, +slldec,Buenos Aires,Argentina,Sabrina,López,she/her/ella,ARG,South America,-58.4370894,-34.6075682,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Argentinean Public Health Research on Data Science and Artificial Intelligence for Epidemic Prevention (ARPHAI),,,,,,,,,,,,,"facilitator, mentor",,Open educational hands-on tutorial for evaluating fairness in AI classification models,,,facilitator,,,,,,,,, +smhall97,Oxford,United Kingdom,Siobhan Mackenzie,Hall,she/her,GBR,Europe,-1.2578499,51.7520131,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,mentor,,Ethical standards and reproducibility of computer models in Neurobiology,,,,,participant,Investigating effective strategies for radical inclusion at academic events,,,,,,mentor,,Open Science in Neuroscience: A Practical Guide for Researchers,,,,, +smklusza,Morrow,United States,Stephen,Klusza,he/him/his,USA,North America,-82.7771661,40.4574358,,,,,,,,participant,Synthetic Biology Chassis Toolkit for Public Domain Use,,,,,,"expert, mentor",,Open Phototroph,expert,,,,expert,,,expert,,,,mentor,,Multilingual Open Science: Creating Open Educational Resources in Central Asian Languages,,,,,,,,,,,,,,,,,,,,,,,,,, +sofia-kirke-forslund,Berlin,Germany,Sofia,Kirke Forslund,she/her,DEU,Europe,13.3888599,52.5170365,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +spitschan,Munich,Germany,Manuel,Spitschan,he/him/his,DEU,Europe,11.5753822,48.1371079,,,,,,,,,,,,,,,participant,Open data schema for actigraphy data in chronobiology and sleep research,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"momenTUM Research Platform: An open-source, reproducible research infrastructure for digital health",,,,,,,,,,,,, +stefaniebutland,Kamloops,Canada,Stefanie,Butland,she/her,CAN,North America,-120.339415,50.6758269,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,, +tai-rocha,Rio De Janeiro,Brazil,Tainá,Rocha,,BRA,South America,-43.2093727,-22.9110137,,,,,,,,participant,"Global land-use and land-cover data under historical, current, and future climatic conditions for ecologists",,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +teddygroves,Copenhagen,Denmark,Teddy,Groves,He/him,DNK,Europe,12.5700724,55.6867243,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,openTECR - an open database on thermodynamics of enzyme-catalyzed reactions,,,,,, +teresa-cisneros,London,United Kingdom,Teresa,Cisneros,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,, +teresa-m,Freiburg,Germany,Teresa,Müller,She/Her,DEU,Europe,7.8494005,47.9960901,,,,,,,,,,,,,,,participant,Implementing a series of pedagogical games to teach pupils and citizens (metagenomic) data analysis,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +thatspacegirl,Bengaluru,India,Sagarika,Valluri,She/Her,IND,Asia,77.590082,12.9767936,,,,,,,,,,,,,,,,,,,,,,participant,FarawayFermi- A platform for open source bioinformatic tools to detect biosignatures in astrobiology,,,,,,participant,FarawayFermi - A platform for open source bioinformatic tools to detect biosignatures in astrobiology,,,,,,,,,,,,,,,,,,,,,,,,,,, +thessaly,Bristol,United Kingdom,Julieta,Arancio,She/her,GBR,Europe,-2.5972985,51.4538022,speaker,,,,speaker,,,"expert, speaker",,,expert,speaker,,,expert,,,expert,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +tlaguna,Madrid,Spain,Teresa,Laguna,,ESP,Europe,-3.7035825,40.4167047,,,,,,,,participant,Science For All (Sci4All) - Citizens' daily problem solving by engaging multidisciplinary scientific communities,,,,,,mentor,,GyaNamuna: Virtual School Connecting Rural Students To The World,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +tobyhodges,Heidelberg,Germany,Toby,Hodges,he/him,DEU,Europe,8.694724,49.4093582,mentor,,Bioinformatics Hub of Kenya (BHK),,,,,expert,,,expert,,,,"expert, mentor, mentor",,"MBiO: Designing an open-collaborative website in the field of molecular biology, Documentation enhancement with open science practices in sktime",expert,,,,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,speaker,,,,speaker,,, +tokioblues,Salta,Argentina,Paola Andrea,Lefer,sher/her,ARG,South America,-64.3494964,-25.1076701,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Gobernanza 2.0 de MetaDocencia,,,,,, +torigijzen,Amsterdam,Netherlands,Tori,Gijzen,,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,PyOrb 1.0 – Automated Analysis Tool for Orbital Interactions,,,,,, +trallard,Manchester,United Kingdom,Tania,Allard,she/her,GBR,Europe,-2.2451148,53.4794892,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +tsonika,Melbourne,Australia,Sonika,Tyagi,she/her,AUS,Oceania,144.9631732,-37.8142454,,,,,,,,"expert, mentor",,Target approach in the stages of liver cirrhosis to reverse back in good condition,expert,,,,"expert, mentor",,MiSET Publication Standards: A tool for AI-assisted peer-review of experimental information,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +ujwal-shrestha,Kathmandu,Nepal,Ujwal,Shrestha,He/Him,NPL,Asia,85.3205817,27.708317,,,,,,,,,,,,,,,participant,GyaNamuna: Virtual School Connecting Rural Students To The World,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +umutpajaro,Cartagena,Colombia,Umut,Pajaro Velasquez,They/Them,COL,South America,-75.5443419,10.4266746,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Queering the law: How to make AI with a Queer Perspective from the Majority of the World,,,,,,mentor,,Gender Differences in the Impostor Phenomenon: A Preregistered and Open-Science Meta-Analysis,,,,, +unode,Heidelberg,Germany,Renato,Alves,he/him,DEU,Europe,8.694724,49.4093582,"expert, mentor, participant",EMBL Bio-IT Community Project,@Diversidade em Foco,expert,,,,"expert, mentor, speaker",,OSUM - Open Science UMontreal,expert,speaker,,,"expert, mentor, mentor, speaker",,"BioFerm: A web application used for kinetic modeling, parameter estimation and simulation of bioprocesses, MBiO: Designing an open-collaborative website in the field of molecular biology",expert,speaker,,,"expert, mentor",,Hub23: An open source community and infrastructure for Turing's BinderHub,expert,,,,"mentor, speaker",,Hub23: An open source community and infrastructure for Turing's BinderHub,,speaker,,,,,,,,,,,,,,,,,,,,,,,, +varlottaang,Rionero In Vulture,Italy,Angelo,Varlotta,He/him,ITA,Europe,15.6694407,40.9261881,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Collective and Open Research in Climate Science,,,,,,,,,,,,, +vborghe,Montréal,Canada,Valentina,Borghesani,she/her/hers,CAN,North America,-73.5698065,45.5031824,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Development of an Open Source Platform for the Storage, Sharing, Synthesis and Meta-Analysis of Clinical Data",,,,,,,,,,,,,,,,,,,,,,,,,,, +veroxgithub,"Avellaneda, Pba.",Argentina,Verónica,Xhardez,She/ella,ARG,South America,-58.3628061,-34.6648394,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Argentinean Public Health Research on Data Science and Artificial Intelligence for Epidemic Prevention (ARPHAI),,,,,,,,,,,,,,,,,,,,mentor,,Gobernanza 2.0 de MetaDocencia,,,,, +vhellon,London,United Kingdom,Vicky,Hellon,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Building an open community around the Turing-Roche Strategic Partnership,,,,,,,,,,,,,,,,,,,,,,,,,,, +vickygisel,Oro Verde,Argentina,Victoria,Dumas,"She, Her",ARG,South America,-64.29891743033643,-31.132197599999998,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Argentinean Public Health Research on Data Science and Artificial Intelligence for Epidemic Prevention (ARPHAI),,,,,,,,,,,,,,,,,,,,,,,,,,, +vskentrou,Amsterdam,Netherlands,Vasiliki,Kentrou,she/her,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Creating an online repository for open collaboration in psychology,,,,,, +web-learning,Johannesburg,South Africa,Derek,Moore,He/Him,ZAF,Africa,28.049722,-26.205,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,The Open Umbrella & Hybrid Learning Field Guide,,,,,, +wykhuh,Los Angeles,United States,Wai-Yin,Kwan,,USA,North America,-118.242766,34.0536909,,,,,,,,,,,,,,,,,,,,,,participant,Citizen Scientists as Data Explorers,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +xaxasm,Bucaramanga,Colombia,Alexandra,Serrano Mendoza,,COL,South America,-73.1047294009737,7.16698415,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,LA-CoNGA Physics Citizen Science Project,,,,,,,,,,,,, +yanick-diapa-nana,Yaoundé,Cameroon,Yanick,Diapa Nana,,CMR,Africa,11.5213344,3.8689867,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,From invisible to Citizens: Apparent Age for Primary School children without birth certificates,,,,,,,,,,,,, +yhordijk,Amsterdam,Netherlands,Yuman,Hordijk,,NLD,Europe,4.8924534,52.3730796,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,PyOrb 1.0 – Automated Analysis Tool for Orbital Interactions,,,,,, +yvanlebras,Concarneau,France,Yvan,Le Bras,He,FRA,Europe,-3.9223889,47.8757017,,,,,,,,"expert, mentor, mentor",,"Creating community awareness of open science practices in phytolith research, Global land-use and land-cover data under historical, current, and future climatic conditions for ecologists",expert,,,,"expert, mentor",,Implementing a series of pedagogical games to teach pupils and citizens (metagenomic) data analysis,expert,,,,"mentor, speaker",,Creating an open database for carbon foot printing of buildings in Ghana,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +zdunseth,Providence,United States,Zachary,Dunseth,he/his,USA,North America,-71.4128343,41.8239891,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community,,,,,,,,,,,,,,,,,,,,,,,,,,, +zenita-milla-luthfiya,Solo,Indonesia,Zenita Milla,Luthfiya,She,IDN,Asia,110.828448,-7.5692489,,,,,,,,,,,,,,,participant,Boosting research visibility using Preprints,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +aath0,,Switzerland,Athina,Tzovara,she/her,CHE,Europe,,,expert,,,expert,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +afzal442,,India,Afzal,Ansari,he/him,IND,Asia,,,,,,,,,,,,,,,,,participant,Documentation enhancement with open science practices in sktime,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +agbeltran,,United Kingdom,Alejandra,Gonzalez-Beltran,,GBR,Europe,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +ahoyi,,Nigeria,Owen,Iyoha,,NGA,Africa,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,, +ailís-o'carroll,,Ireland,Ailís,O'Carroll,she/her,IRL,Europe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,mentor,,Translate Science,,,,,,,,,,,, +alecandian,,Netherlands,Alessandra,Candian,she/her/hers,NLD,Europe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Build a community around the TU Delft Open Science MOOC,,,,,,"expert, mentor",,Open science spread,expert,,,,,,,,,,,,,,,,,, +alex-mendonça,,Brazil,Alex,Mendonça,,BRA,South America,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,, +alexholinski,,United Kingdom,Alexandra,Holinski,She/her,GBR,Europe,,,,,,,,,,,,,,,,,"expert, speaker",,,expert,speaker,,,"expert, mentor",,"Generic data stewards in the Netherlands: who they are, what they do, and who they could become",expert,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,, +alexwlchan,,United Kingdom,Alex,Chan,they/she,GBR,Europe,,,speaker,,,,speaker,,,"expert, speaker",,,expert,speaker,,,expert,,,expert,,,,"expert, speaker",,,expert,speaker,,,expert,,,expert,,,,speaker,,,,speaker,,,,,,,,,,expert,,,expert,,,, +amchagas,,United Kingdom,Andre,Maia Chagas,,GBR,Europe,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,, +angelicamaineri,,Netherlands,Angelica,Maineri,She/her,NLD,Europe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Building a searchable project database,,,,,,expert,,,expert,,,, +anita-broellochs,,United States,Anita,Bröllochs,she/her,USA,North America,,,speaker,,,,speaker,,,"expert, mentor",,Synthetic Biology Chassis Toolkit for Public Domain Use,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +anjali-mazumder,,United Kingdom,Anjali,Mazumder,she/her,GBR,Europe,,,,,,,,,,mentor,,The Turing Way - Guide for Ethical Research,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +anneclinio,,Brazil,Anne,Clinio,she/her,BRA,South America,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +anproulx,,Canada,Andréanne,Proulx,,CAN,North America,,,,,,,,,,participant,OSUM - Open Science UMontreal,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +anshulbharadwaj,,India / France,Anshu,Bharadwaj,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +aoduor,,Kenya,Angela,Oduor,,KEN,Africa,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +arvinpreet-kaur,,India,Arvinpreet,Kaur,she/her/hers,IND,Asia,,,,,,,,,,,,,,,,,participant,Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +astroakanksha24,,India,Akanksha,Chaudhari,She/ Her,IND,Asia,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Visualisation of participants by their countries,,,,,,,,,,,,,,,,,,,,,,,,,,, +bailey-harrington,,United States,Bailey,Harrington,she/her,USA,North America,,,,,,,,,,participant,Chronic Learning,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +bakary-n'tji diallo,,Mali,Bakary,N'tji Diallo,,MLI,Africa,,,,,,,,,,participant,BioLab Open Source Projects,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +banshee1221,,South Africa,Eugene,de Beste,,ZAF,Africa,,,,,,,,,,participant,Developing the Research Software and Systems Engineering Community to support Life Sciences in Africa,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +bbartholdy,,Netherlands,Bjørn Peare,Bartholdy,he/him,NLD,Europe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,mentor,,An online repository of tools and methods for automated archaeological survey,,,,, +beapdk,,Canada,Béatrice,P.De Koninck,,CAN,North America,,,,,,,,,,participant,OSUM - Open Science UMontreal,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +benkrikler,,United Kingdom,Benjamin,Krikler,,GBR,Europe,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +bgruening,,Germany,Björn,Grüning,he/him,DEU,Europe,,,"expert, mentor",,EDAM ontology,expert,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +bhuvanameenakshik,,India,Bhuvana,Meenakshi Koteeswaran,she/her,IND,Asia,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +billbrod,,United States,Billy,Broderick,he/him,USA,North America,,,participant,Expanding plenoptic Python Package,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,mentor,,Developing an online snake venomics catalog for easy access to venom proteomics data,,,,,,,,,,,, +boi-kone,,Mali,Boï,Kone,,MLI,Africa,,,,,,,,,,participant,BioLab Open Source Projects,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +bonetcarne,,Spain,Elisenda,Bonet-Carne,she/her,ESP,Europe,,,participant,Open Science Community Barcelona (OSCBa),,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +brainonsilicon,,United Kingdom,Sophia,Batchelor,she/her,GBR,Europe,,,,,,,,,,participant,The Turing Way - Guide for Ethical Research,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open Communities: building a supportive community of practice across the AI for Multiple Long Term Conditions Research Support Facility.,,,,,,,,,,,,,,,,,,,, +burceelbasan,,Germany,Burce,Elbasan,,DEU,Europe,,,,,,,,,,,,,,,,,,,,,,,,participant,Building Open Science and Data Analysis Skills by Leading the OLS Survey Data Project,,,,,,mentor,,Visualisation of participants by their countries,,,,,,,,,,,,,,,,,,,,,,,,,, +carol-o'brien,,Denmark,Carol,O'Brien,,DNK,Europe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Developing an online snake venomics catalog for easy access to venom proteomics data,,,,,,,,,,,,, +cassmurph,,Ireland,Cassandra,Murphy,She/Her,IRL,Europe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,AGAPE: Building an open science practicing community in Ireland,,,,,,facilitator,,,,,facilitator,,,,,,,,, +chadsansing,,United States,Chad,Sansing,he/him,USA,North America,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,speaker,,,,speaker,,,speaker,,,,speaker,,,,,,,,,,,,,,,,, +chartgerink,,Germany,Chris,Hartgerink,,DEU,Europe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +chiarabertipaglia,,United States,Chiara,Bertipaglia,she/her,USA,North America,,,participant,Infusing a culture of open science within the community of researchers at the Zuckerman Institute,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +christina-ambrosi,,Switzerland,Christina,Ambrosi,,CHE,Europe,,,,,,,,,,participant,Open Innovation in Life Sciences,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +contraexemplo,,Brazil,Anna,e só,,BRA,South America,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,, +crangelsmith,,United Kingdom,Camila,Rangel Smith,she/her,GBR,Europe,,,,,,,,,,participant,Turing Data Stories,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +danae-carelis-davila-espinoza,,Bolivia,Danae Carelis,Davila Espinoza,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Training Latin American scientists' community to create high-quality open journals with good editorial standards,,,,,,,,,,,,,,,,,,,,,,,,,,, +dannycolin,,Canada,Danny,Colin,he/him,CAN,North America,,,participant,Open Science UMontreal (OSUM),,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +dasaderi,,United States,Daniela,Saderi,she/her,USA,North America,,,"expert, mentor",,How to build an healthy and open lab,expert,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +dasaptaerwin,,India,Dasapta Erwin,Irawan,,IND,Asia,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,, +davidbeavan,,United Kingdom,David,Beavan,,GBR,Europe,,,,,,,,,,participant,Turing Data Stories,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +davidviryachen,,Japan,David,Chentanaman,he/him,JPN,Asia,,,participant,AMRITA: an online database for herbal medicine,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +dlebauer,,United States,David,LeBauer,he/him,USA,North America,,,participant,Improving Documentation for Open Data and Software in the Agricultural Research Community,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +dsarahstamps,,United States,Sarah,Stamps,,USA,North America,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,, +dustin-schetters,,Netherlands,Dustin,Schetters,,NLD,Europe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open Science in Neuroscience: A Practical Guide for Researchers,,,,,, +dylan-bastiaans,,Switzerland,Dylan,Bastiaans,,CHE,Europe,,,,,,,,,,participant,Sharing 3D Modeling Workflows for Biomechanists and Palaeontologists,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +eirini-zormpa,,United Kingdom,Eirini,Zormpa,,GBR,Europe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open Communities: building a supportive community of practice across the AI for Multiple Long Term Conditions Research Support Facility.,,,,,,,,,,,,,,,,,,,, +ekeluv,,South Africa,Ekeoma,Festus,they/them,ZAF,Africa,,,,,,,,,,participant,Western Cape-H3ABioNet Open Learning Circles,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +elsasci,,United Kingdom,Elsa,Loissel,she/her,GBR,Europe,,,participant,How to build an healthy and open lab,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +emmyft,,Netherlands,Emmy,Tsang,she/her,NLD,Europe,,,expert,,,expert,,,,expert,,,expert,,,,"organizer, speaker, speaker",,,,speaker,,organizer,"organizer, mentor, speaker, speaker",,Grassroots: Nurturing the EMBL Bio-IT Community,,speaker,,organizer,"organizer, mentor, speaker, speaker, speaker",,"Data Science and AI Educators' Programme AND Tools, Practices & Systems Peer Mentorship Programme",,speaker,,organizer,"organizer, speaker",,,,speaker,,organizer,"organizer, speaker",,,,speaker,,organizer,organizer,,,,,,organizer, +evaherbst,,Switzerland,Eva,Herbst,she/her,CHE,Europe,,,,,,,,,,participant,Sharing 3D Modeling Workflows for Biomechanists and Palaeontologists,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +evelyngreeves,,United Kingdom,Evelyn,Greeves,she/her,GBR,Europe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Building a Cloud-SPAN community of practice,,,,,,,,,,,,,,,,,,,,,,,,,,, +ewa-leś,,Poland,Ewa,Leś,,POL,Europe,,,,,,,,,,,,,,,,,,,,,,,,participant,open and international River University,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +ewuramaminka,,United Kingdom,Deborah,Akuoko,she/her,GBR,Europe,,,participant,"Investigate feasible solutions to help create a system that creates, collects and processes data efficiently for impactful research especially for driving health research and driving health related policies",,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +flavioazevedo,,United Kingdom,Flavio,Azevedo,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +fnyasimi,,Kenya,Festus,Nyasimi,He/Him,KEN,Africa,,,participant,Bioinformatics Hub of Kenya (BHK),,,,,,,,,,,,,,,,,,,,facilitator,,,,,facilitator,,facilitator,,,,,facilitator,,facilitator,,,,,facilitator,,,,,,,,,,,,,,,, +gabimusaubach,,Argentina,Maria Gabriela,Musaubach,,ARG,South America,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community,,,,,,,,,,,,,,,,,,,,,,,,,,, +ganleyemma,,United Kingdom,Emma,Ganley,,GBR,Europe,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +georgianaelena,,Romania,Georgiana,Dolocan,she/her,ROU,Europe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,expert,,,expert,,,,expert,,,expert,,,, +gigikenneth,,Nigeria,Gift,Kenneth,She/Her,NGA,Africa,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Ethical Implications of Open Source AI: Transparency and Accountability,,,,,,facilitator,,,,,facilitator,, +hdinkel,,Germany,Holger,Dinkel,he/him,DEU,Europe,,,"expert, mentor",,AMRITA: an online database for herbal medicine,expert,,,,"expert, mentor",,Sharing 3D Modeling Workflows for Biomechanists and Palaeontologists,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +henk-wierenga,,South Africa,Henk,Wierenga,,ZAF,Africa,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,UbuntuEdu (Concept title),,,,,, +hilyatuz-zahroh,,Indonesia,Hilyatuz,Zahroh,she/her,IDN,Asia,,,,,,,,,,participant,APBioNetTalks,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +homo-sapiens34,,Russian Federation,Zoe,Chervontseva,she/her,RUS,Europe,,,participant,Benchmarking environment for bioinformatics tools,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +honoluluskye,,United States,Angela,Okune,,USA,North America,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +hpdang,,Singapore,Hong,Phuc Dang,,SGP,Asia,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +ibrahssali1,,Uganda,Ibrahim,Ssali,he/him,UGA,Africa,,,,,,,,,,participant,Arua City Open Learning Circles,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +inquisitivevi,,Germany,Vinodh,Ilangovan,he/him,DEU,Europe,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +jasonjwilliamsny,,United States,Jason,Williams,he/him,USA,North America,,,"expert, speaker",,,expert,speaker,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +jelioth-muthoni,,Kenya,Jelioth,Muthoni,,KEN,Africa,,,,,,,,,,participant,Building a Database for Open Access Immunology Pre-prints and Publications on COVID-19,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +joel-hancock,,Austria,Joel,Hancock,he/his,AUT,Europe,,,,,,,,,,participant,Supervised Classification with UMAP and Network Propagation,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +jolien-s,,Netherlands,Jolien,Scholten,,NLD,Europe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open-source handbooks infrastructure at VU Amsterdam,,,,,, +joshsimmons,,United States,Josh,Simmons,,USA,North America,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +kariljordan,,United States,Kari,L. Jordan,she/her,USA,North America,,,expert,,,expert,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +karinlag,,Norway,Karin,Lagesen,she/her,NOR,Europe,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +katrinleinweber,,Germany,Katrin,Leinweber,she/her,DEU,Europe,,,"expert, mentor",,Improving Documentation for Open Data and Software in the Agricultural Research Community,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +kaythaney,,United States,Kaitlin,Thaney,,USA,North America,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +kevinxufs,,United Kingdom,Kevin,Xu,,GBR,Europe,,,,,,,,,,participant,Turing Data Stories,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +kipkurui,,Kenya,Caleb,Kibet,he/him,KEN,Africa,,,"expert, mentor, speaker",,Open Connect Platform in Africa,expert,speaker,,,"expert, mentor, mentor",,"Arua City Open Learning Circles, Western Cape-H3ABioNet Open Learning Circles",expert,,,,,,,,,,,,,,,,,,mentor,,Community engagement: Building an open online learning community,,,,,"expert, mentor",,Open Science Community Nigeria (OSCN),expert,,,,mentor,,liforient,,,,,,,,,,,, +kiragu-mwaura,,Kenya,David,Kiragu Mwaura,he/him,KEN,Africa,,,participant,Bioinformatics Hub of Kenya (BHK),,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,facilitator,,,,,facilitator,, +kiri93,,Switzerland,Markus,Kirolos Youssef,he/his,CHE,Europe,,,,,,,,,,participant,Supervised Classification with UMAP and Network Propagation,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +kirstiejane,,United Kingdom,Kirstie,Whitaker,she/her,GBR,Europe,,,"expert, speaker",,,expert,speaker,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +koudyk,,Canada,Kendra,Oudyk,she/her,CAN,North America,,,,,,,,,,participant,Open Science Office Hours to support trainees in Montreal to help make their research more open and reproducible,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +kristinariemer,,United States,Kristina,Riemer,she/her,USA,North America,,,participant,Improving Documentation for Open Data and Software in the Agricultural Research Community,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +lakillo,,United Kingdom,Lucy,Killoran,she/her,GBR,Europe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,An online repository of tools and methods for automated archaeological survey,,,,,, +laurichi13,,Spain,Laura Judith,Marcos-Zambrano,,ESP,Europe,,,,,,,,,,participant,Science For All (Sci4All) - Citizens' daily problem solving by engaging multidisciplinary scientific communities,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +lazycipher,,India,Himanshu,Singh,he/him,IND,Asia,,,participant,InterMine Similarity Explorer,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +lilian9,,Kenya,Lilian,Juma,she/her,KEN,Africa,,,participant,Open Connect Platform in Africa,,,,,,mentor,,Using collective action to change cultural norms and drive progress in the life sciences,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +lpantano,,Spain,Lorena,Pantano,she/her,ESP,Europe,,,,,,,,,,mentor,,Database for coordinating training needs in Kenya to faciliatate preparation and collaboration,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +lwasser,,United States,Leah,Wasser,,USA,North America,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +magicmilly,,United States,Emily,Cain,she/her,USA,North America,,,participant,Improving Documentation for Open Data and Software in the Agricultural Research Community,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +mannyco,,United Kingdom,Manuel,Corpas,,GBR,Europe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +marbarrantescepas,,Spain,Mar,Barrantes Cepas,she/her,ESP,Europe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open Science in Neuroscience: A Practical Guide for Researchers,,,,,, +marcel-laflamme,,United States,Marcel,LaFlamme,,USA,North America,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +martenson,,Czechia,Martin,Čech,he/him,CZE,Europe,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +matuskalas,,Norway,Matúš,Kalaš,he/him,NOR,Europe,,,participant,EDAM ontology,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +mblue9,,Australia,Maria,Doyle,she/her,AUS,Oceania,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +mdbarker,,Australia,Michelle,Barker,,AUS,Oceania,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,, +mesfind,,Ethiopia,Mesfin,Diro,he/him,ETH,Africa,,,,,,,,,,mentor,,Developing the Research Software and Systems Engineering Community to support Life Sciences in Africa,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +mgomezn,,Mexico,Mariana Patricia,Gomez Nicolas,,MEX,North America,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +mkuzak,,Netherlands,Mateusz,Kuzak,he/him,NLD,Europe,,,"expert, mentor, speaker",,Infusing a culture of open science within the community of researchers at the Zuckerman Institute,expert,speaker,,,"expert, speaker",,,expert,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +mloning,,United Kingdom,Markus,Löning,he/him,GBR,Europe,,,,,,,,,,"mentor, participant",sktime - a unified toolbox for machine learning with time series,Supervised Classification with UMAP and Network Propagation,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +monica-alonso,,Argentina,Monica,Alonso,she/her,ARG,South America,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Estructura e infraestructura para la formación por cohortes virtuales,,,,,, +monsurat-onabajo,,Nigeria,Onabajo,Monsurat,she/her,NGA,Africa,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Molerhealth,,,,,, +morphofun,,United States,Sandy,Kawano,she/her,USA,North America,,,participant,Enabling open science practices in biology education,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +mruizvelley,,Germany,Mariana,Ruiz Velasco,she/her,DEU,Europe,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +muhammetcelik,,Turkey,Muhammet,Celik,he/him,TUR,Asia,,,,,,,,,,participant,Creating a single pipeline for metagenome classification,,,,,,participant,"Open Life Science (OLS) Program, a driver of open science skills among early stage researchers and young leaders: mentee perspective",,,,,,,,,,,,,mentor,,Visualisation of participants by their countries,,,,,,,,,,,,,,,,,,,,,,,,,, +mvdbeek,,France,Marius,van den Beek,he/him,FRA,Europe,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +myreille-larouche,,Canada,Myreille,Larouche,,CAN,North America,,,,,,,,,,participant,OSUM - Open Science UMontreal,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +naralb,,Brazil,Naraiana,Loureiro Benone,she/her,BRA,South America,,,participant,@Diversidade em Foco,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +natty2012,,Kenya,Harriet,Natabona Mukhongo,she/her,KEN,Africa,,,,,,,,,,participant,Building a Database for Open Access Immunology Pre-prints and Publications on COVID-19,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +neemaiyer,,Australia,Neema,Iyer,,AUS,Oceania,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +nehamoopen,,Netherlands,Neha,Moopen,she/her,NLD,Europe,,,,,,,,,,participant,Embedding Accessibility in The Turing Way Open Source Community Guidance,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +nerantzis,,Greece,Nikolaos,Nerantzis,he/him,GRC,Europe,,,expert,,,expert,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +nick-barlow,,United Kingdom,Nick,Barlow,,GBR,Europe,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +npscience,,United Kingdom,Naomi,Penfold,she/her/they/them,GBR,Europe,,,"expert, mentor",,Oxford Neuroscience Open Science Co-ordinator: Changing Culture,expert,,,,"expert, mentor",,Building a Database for Open Access Immunology Pre-prints and Publications on COVID-19,expert,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +nsoranzo,,United Kingdom,Nicola,Soranzo,he/him,GBR,Europe,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +olexandr-konovalov,,United Kingdom / Ukraine,Olexandr,Konovalov,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,, +orchid00,,Australia,Paula,Andrea Martinez,she/her,AUS,Oceania,,,expert,,,expert,,,,"expert, speaker",,,expert,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +paulineligonie,,Canada,Pauline,Ligonie,,CAN,North America,,,,,,,,,,participant,OSUM - Open Science UMontreal,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +paulowoicho,,Nigeria,Paul,Owoicho,he/him,NGA,Africa,,,,,,,,,,participant,Embedding Accessibility in The Turing Way Open Source Community Guidance,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +paulvill,,France,Paul,Villoutreix,he/him,FRA,Europe,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +pazbc,,Argentina,Paz,Bernaldo,she/her,ARG,South America,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,organizer,,,,,,organizer,"organizer, speaker, speaker",,,,speaker,,organizer,"organizer, speaker",,,,speaker,,organizer,organizer,,,,,,organizer, +pradeep-eranti,,France,Pradeep,Eranti,he/his,FRA,Europe,,,,,,,,,,participant,Open platform for Indian Bioinformatics community,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,mentor,,Bioinformatics codeathon,,,,, +pvanheus,,South Africa,Peter,van Heusden,he/him,ZAF,Africa,,,,,,,,,,participant,Developing the Research Software and Systems Engineering Community to support Life Sciences in Africa,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Mapping the RSSE landscape in Africa,,,,,,,,,,,,,,,,,,,, +rgaiacs,,Brazil,Raniere,Silva,he/him,BRA,South America,,,,,,,,,,"expert, mentor",,Developing the Research Software and Systems Engineering Community to support Life Sciences in Africa,expert,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,, +rodrigocam,,Brazil,Rodrigo,Oliveira Campos,,BRA,South America,,,mentor,,Expanding plenoptic Python Package,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +rossmounce,,United Kingdom,Ross,Mounce,he/him,GBR,Europe,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +rowlandm,,Australia,Rowland,Mosbergen,,AUS,Oceania,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,mentor,,"momenTUM Research Platform: An open-source, reproducible research infrastructure for digital health",,,,,,,,,,,, +rs_khetani,,United States,Radhika,Khetani,she/her,USA,North America,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +rushda-patel,,India,Rushda,Patel,,IND,Asia,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Multiomics profiling and analysis of cardiovascular diseases,,,,,,,,,,,,,,,,,,,, +samguay,,Canada,Samuel,Guay,he/him,CAN,North America,,,participant,Open Science UMontreal (OSUM),,,,,,mentor,,Embedding Accessibility in The Turing Way Open Source Community Guidance,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +samuelorion,,Canada,Samuel,Burke,he/his,CAN,North America,,,,,,,,,,participant,OSUM - Open Science UMontreal,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +sarah-lippincott,,United States,Sarah,Lippincott,,USA,North America,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,, +satagopam7,,Luxembourg,Venkata,Satagopam,he/him,LUX,Europe,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +scottbgi,,Hong Kong,Scott,Edmunds,,HKG,Asia,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,, +sdopoku,,Ghana,David,Selassie Opoku,he/him,GHA,Africa,,,,,,,,,,"expert, mentor, speaker",,Open platform for Indian Bioinformatics community,expert,speaker,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +sdruskat,,Germany,Stephan,Druskat,,DEU,Europe,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,, +sebastianeggert,,Germany,Sebastian,Eggert,he/his,DEU,Europe,,,,,,,,,,participant,OpenWorkstation - A modular and open-source concept for customized automation equipment,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +sithyphus,,United States,Jorge,Barrios,he/him,USA,North America,,,participant,Improving Documentation for Open Data and Software in the Agricultural Research Community,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +sk-sahu,,India,Sangram,Sahu,he/him,IND,Asia,,,,,,,,,,participant,Practical Guide to Reproducibility in Bioinformatics,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +sonibk,,Kenya,Brenda,Muthoni,,KEN,Africa,,,,,,,,,,participant,Building a Database for Open Access Immunology Pre-prints and Publications on COVID-19,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +stefan-gaillard,,Netherlands,Stefan,Gaillard,he/him,NLD,Europe,,,,,,,,,,participant,Mapping Science using Open Scholarship,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +sudarshangc,,Nepal,Sudarshan,GC,he/him,NPL,Asia,,,participant,Media Lab Nepal for Computational Biology,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +susana465,,United Kingdom,Susana,Roman Garcia,,GBR,Europe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Ethical standards and reproducibility of computer models in Neurobiology,,,,,,,,,,,,,,,,,,,, +tajuddeen1,,Nigeria,Tajuddeen,Gwadabe,he/his/him,NGA,Africa,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,mentor,,UbuntuEdu (Concept title),,,,, +thomas-mboa,,Cameroon,Thomas,Mboa,,CMR,Africa,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +tklingstrom,,Sweden,Tomas,Klingström,he/him,SWE,Europe,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +tnabtaf,,United States,Dave,Clements,he/him,USA,North America,,,,,,,,,,"expert, mentor",,Growing the Galaxy Community,expert,,,,,,,,,,,"expert, mentor",,Grassroots: Nurturing the EMBL Bio-IT Community,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +valerie-parent,,Canada,Valerie,Parent,,CAN,North America,,,,,,,,,,participant,OSUM - Open Science UMontreal,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +vcheplygina,,Netherlands,Veronika,Cheplygina,she/her,NLD,Europe,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +vickynembaware,,South Africa,Vicky,Nembaware,she/her,ZAF,Africa,,,"expert, mentor",,"Investigate feasible solutions to help create a system that creates, collects and processes data efficiently for impactful research especially for driving health research and driving health related policies",expert,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +virginiagarciaalonso,,Argentina,Virginia Andrea,García Alonso,she/her,ARG,South America,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,JICMar Network: towards better opportunities and greater collaboration among young marine science researchers in Latin America,,,,,, +wasifarahman,,Bangladesh,Wasifa,Rahman,,BGD,Asia,,,,,,,,,,participant,Target approach in the stages of liver cirrhosis to reverse back in good condition,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +wingram,,United States,Wendy,Ingram,,USA,North America,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +yabellini,,Argentina,Yanina,Bellini,,ARG,South America,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +ykho001,,United Kingdom,Yan-Kay,Ho,she/her,GBR,Europe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Building a Searchable Open Data Repository of DNA Collections that are Freely-Shared under OpenMTA, with an Associated Landscape Map Visualisation of the Collection Users",,,,,, +yochannah,,United Kingdom,Yo,Yehudi,they/them,GBR,Europe,,,"organizer, mentor, speaker, speaker, speaker",,InterMine Similarity Explorer,,speaker,,organizer,"expert, organizer, mentor, mentor, speaker",,"Mapping Science using Open Scholarship, Turing Data Stories",expert,speaker,,organizer,"expert, organizer, mentor, mentor, mentor, speaker, speaker",,"Global Distribution of APOL1 Genetic variants, Open Life Science (OLS) Program, a driver of open science skills among early stage researchers and young leaders: mentee perspective, COMPUTATIONAL DRUG DISCOVERY (CORONAVIRUS)",expert,speaker,,organizer,"organizer, mentor, speaker, speaker",,Talleres Open Source community platform,,speaker,,organizer,"organizer, mentor, mentor, speaker, speaker, speaker",,"Transcriptomics profiling of bladder cancer using publicly available datasets, Cultivating a Community of Practice of AI researchers",,speaker,,organizer,"organizer, mentor, speaker, speaker, speaker, speaker, speaker",,OpSciHack: Open Life Science Hackathon,,speaker,,organizer,"organizer, mentor, mentor, speaker, speaker",,"Implementing Facial Recognition and Biometric Attendance Monitoring in Educational and Corporate Settings, An interactive map of socio-ecological projects",,speaker,,organizer,"organizer, speaker, speaker, speaker, speaker",,,,speaker,,organizer, +zebetus,,United Kingdom,Harry,Smith,,GBR,Europe,,,mentor,,Open Science Community Barcelona (OSCBa),,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +zulidyana-rusnalasari,,Indonesia,Zulidyana,Rusnalasari,,IDN,Asia,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +aki-macfarlane,,,Aki,MacFarlane,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +andrés-felipe-ortiz-ferreira,,,Andrés Felipe,Ortiz Ferreira,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,LA-CoNGA Physics Citizen Science Project,,,,,,,,,,,,, +ariana-bethany-subroyen,,,Ariana Bethany,Subroyen,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Developing an ontology to connect open science technology, RSEs and the different skills and services that follow",,,,,,,,,,,,,,,,,,,, +aurigandrea,,,Andrea,Kocsis,she/her,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Data Science and AI Educators' Programme AND Tools, Practices & Systems Peer Mentorship Programme",,,,,,,,,,,,,,,,,,,,,,,,,,, +biscuitnapper,,,Florence,Okoye,She/her,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Environmental mapping for urban farming project,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +bresearcher101,,,Aswathi,Surendran,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,AGAPE: Building an open science practicing community in Ireland,,,,,,mentor,,The Impact of Sleep Deprivation on Mental Health,,,,,,,,,,,, +camille-gonz-va,,,Camille,Gonzalez,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +chiara-damiani,,,Chiara,Damiani,,,,,,,,,,,,,,,,,,,,participant,Seeding,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +ekariuki-sleepy,,,Eric,Kariuki,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,, +gilbert-beyamba,,,Gilbert,Beyamba,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,, +godwyns-onwuchekwa,,,Godwyns,Onwuchekwa,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,, +gugy89,,,Gudrun,Gygli,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,,,,,,,,, +harisood,,,Hari,Sood,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open sourcing the Pyxium learning platform,,,,,,,,,,,,,,,,,,,, +joy-owango,,,Joy,Owango,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,, +kabobbo,,,Khatijat,Bobbo,Git/GitHub,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +laitanawe,,,Olaitan,Awe,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +lenny-teytelman,,,Lenny,Teytelman,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +maria-clara-heringer-lourenço,,,Maria Clara,Heringer Lourenço,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Closer to the sky: co-creating astronomical knowledge in a favela of Rio de Janeiro,,,,,,,,,,,,, +megan-lisa-stock,,,Megan Lisa,Stock,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Developing an ontology to connect open science technology, RSEs and the different skills and services that follow",,,,,,,,,,,,,,,,,,,, +moengels,,,Moritz,Engelhardt,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Building a Platform for Open and Reproducible Super-resolution Imaging Hardware and Analytical Tools,,,,,,,,,,,,,,,,,,,, +monica-granados,,,Monica,Granados,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,, +nadza-dzinalija,,,Nadza,Dzinalija,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open Science in Neuroscience: A Practical Guide for Researchers,,,,,, +nanjalaruth,,,Ruth,Nanjala,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +nikoleta-v3,,,Nikoleta,Glynatsi,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +nilabha1512,,,Nilabha,Mukherjea,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Life Science in 2022, India.",,,,,,,,,,,,,,,,,,,, +nina-roux,,,Nina,Roux,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Developing an ontology to connect open science technology, RSEs and the different skills and services that follow",,,,,,,,,,,,,,,,,,,, +npch,,,Neil,Chue Hong,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +pol-arranz-gibert,,,Pol,Arranz-Gibert,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open collaborative journal,,,,,,,,,,,,,,,,,,,, +pragya-chaube,,,Pragya,Chaube,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +rhoné-roux,,,Rhoné,Roux,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,"Developing an ontology to connect open science technology, RSEs and the different skills and services that follow",,,,,,,,,,,,,,,,,,,, +sgsfak,,,Stelios,Sfakianakis,,,,,,,,,,,,,,,,,,,,participant,"ProCancer-I - An AI Platform integrating imaging data and models, supporting precision care through prostate cancer's continuum",,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,, +tallmar,,,Marta,Lloret Llinares,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,expert,,,expert,,,,,,,,,,,,,,,,,, +trevor-hamlin,,,Trevor,Hamlin,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,PyOrb 1.0 – Automated Analysis Tool for Orbital Interactions,,,,,, +usmood,,,Mahmood,Usman,Kano,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Open Science Community Nigeria (OSCN),,,,,,,,,,,,,,,,,,,, +wendy-andrews,,,Wendy,Andrews,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,participant,Gender Differences in the Impostor Phenomenon: A Preregistered and Open-Science Meta-Analysis,,,,,, +zee-moz,,,Zannah,Marsh,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,,speaker,,,,speaker,,,,,,,,,, diff --git a/data/projects.csv b/data/projects.csv new file mode 100644 index 0000000..4b6a3f4 --- /dev/null +++ b/data/projects.csv @@ -0,0 +1,988 @@ +,name,participants,mentors,description,cohort,keywords,status,graduation,collaboration +0,Open Science Community Barcelona (OSCBa),Elisenda Bonet-Carne,Harry Smith,"This project aims to create a community of local scientists to share and promote open science in Barcelona, Spain. I would like to use as an example the OSCU and other initiatives like openscience beers in Montreal. The initial goal would be to reach researchers from different institutions: UB, UPC, UPF, UOC, UAB, etc. and meet informally in a bar/pub periodically.
+During the meetings we would present/talk about what we do, we will promote knowledge exchange and will discuss on how we could improve our research in terms of open science, for example performing more transparent research and sharing data/code. Later on, the plan is to use this community to create workshops and symposia about open science and to agree on some common needs. For example, a common need in life science research group would be to have resources to help researchers in terms of data sharing or interactive paper publication. If we can define common needs we will be able to apply for some funding to cover them.
+We will also use this plantform to motivate colleages from other parts of the country to create their own local community and then connect for some events. +",1,,,, +1,"Investigate feasible solutions to help create a system that creates, collects and processes data efficiently for impactful research especially for driving health research and driving health related policies",Deborah Akuoko,Vicky Nembaware,"Most sub Saharan African countries barely have quality health data for national policy making, especially on cancer. Thus, more work might be needed to improve the data quality, especially from regions with insufficient health data registries. This project seeks to investigate feasible solutions to help create a system that creates, collects and processes data efficiently for impactful research especially for driving health research and driving health related policies.
+In this project, I will focus on: improving quality of gender data generated in sub Saharan Africa for research and driving health policies, creating room to make health surveillance possible and easy for policy makers to take data driven decisions, and helping establish framework to run health data registries in more regions within sub-Saharan Africa. +",1,,,, +2,Infusing a culture of open science within the community of researchers at the Zuckerman Institute,Chiara Bertipaglia,Mateusz Kuzak,"The community of Columbia University’s Zuckerman Institute is composed of neuroscientists at all career stages (graduate students, postdocs, faculty members). The Office of Scientific Programs, where I work, was established to build and nurture the community by fostering a professional environment that is welcoming, safer, diverse and inclusive. In its first year of life, the Office has identified relevant issues that seeks to pursue in order to support a collaborative climate of interdisciplinary research and discovery. Transparency is a key value of the Zuckerman Institute’s mission, and the Open Life Science mentor program is the perfect platform for me as the Assistant Director of Scientific Programs, to elaborate a strategy that will infuse open science best practices in the community. I hope that with the help of the cohort and the mentor, I can design a strategy to infuse a culture of open science within the community of researchers at the Zuckerman Institute. Ideally this would include power mapping, stakeholder mapping, action plans, and outreach. In the long run, work done in this project aims at developing community engagement for policy development, and will ultimately pave the way to establish the Zuckerman Institute as a golden standard for open science. +",1,,graduated,, +3,Bioinformatics Hub of Kenya (BHK),"Festus Nyasimi, Margaret Wanjiku, David Kiragu Mwaura, Michael Landi","Toby Hodges, Malvika Sharan","The Bioinformatics Hub of Kenya is an entity that develops and manages training in bioinformatics and computational biology and provides a space in which research in bioinformatics is practiced.
+The aim of the hub is to provide a vibrant environment that fosters research excellence, facilitating the immersive engagement of established and upcoming bioinformaticians with computational and data intensive activities in biology and the life sciences, and promoting the discipline of bioinformatics in Kenya.
+Our mission is to bridge the gap between well established and aspiring bioinformaticians through peer training and mentorship to provide a pool of qualified bioinformaticians who will focus on innovation and bringing novelty to assigned projects promising quality, integrity, reliability and trust in their services. +",1,,graduated,https://www.youtube.com/watch?v=KNHpQqBTpxI&list=PL1CvC6Ez54KB6U9GtjOjwESMurHgT41qM&index=4, +4,Expanding plenoptic Python Package,Billy Broderick,Rodrigo Oliveira Campos,"plenoptic is a Python package for computational vision with two main components: standard differentiable models of the visual system and synthesis methods. The models operate on images and make predictions about perception or neural activity, and are relatively simple, with a small number of parameters; they can thus be used out-of-the-box on arbitrary images. To start, we will focus on spatial vision, so the inputs are expected to be static grayscale images. Synthesis methods are used to better understand models of this type. The most common applications of computational models are simulation (holding the parameters and input constant, while predicting the output) and learning (holding the input and output constant, while fitting the parameters). In synthesis, the output and parameters are held constant while the input is fit. This allows scientists to develop better intuition about which aspects of images their models consider relevant and which they ignore, as well as to carry out more efficient and effective model comparison and validation experiments. We will include four such methods, all of which have been described in the literature, but none of which have standard, accessible implementations that work on more than a handful of specific models. +",1,,graduated,https://www.youtube.com/watch?v=FkbgqWa_Hr4&list=PL1CvC6Ez54KB6U9GtjOjwESMurHgT41qM&index=5, +5,@Diversidade em Foco,"Bruno Soares, Naraiana Loureiro Benone",Renato Alves,"[Biodiversidade em Foco](https://www.abc.org.br/atuacao/nacional/projeto-de-ciencia-para-o-brasil/biodiversidade-em-foco/) (@Biodiversity in Focus, in English) will merge a twitter account and a blog to promote science communication about Brazilian biodiversity. The project will coordinate daily posts communicating recent research findings about Brazilian biodiversity in twitter from researchers in different degrees of scientific career and thematic areas. Different researchers will administrate the twitter account during a week, time when they will provide daily posts about their area of expertise. Posts will be published in Portuguese in order to have higher national reach. Blog will present general information about the project and will summarize individual and community-level efforts, as well as semesterly reports of the project. Reports will be published in Portuguese and in English to share our experience to a broad audience and promote science communication. Reports will consider the number of tweets, participants, their experience during the account administration time, the number of followers and reach information in the twitter account and the blog. +",1,,graduated,https://www.youtube.com/watch?v=FkbgqWa_Hr4&list=PL1CvC6Ez54KB6U9GtjOjwESMurHgT41qM&index=6, +6,Media Lab Nepal for Computational Biology,Sudarshan GC,"Aidan Budd, Malvika Sharan","Media Lab Nepal is only one community bio lab of Nepal focusing on democratization of life sciences through open science. It is an interdisciplinary team of students and experts with different backgrounds- basic science, engineering, journalism and management. It acted as a community partner for Darwin- India’s biggest evolutionary movement and innovation partner for Hult Prize Purbanchal University. The team is connecting innovations to entrepreneurship for maintaining sustainability. We are also partnering with community bio labs of our neighbouring countries like India, Bangladesh and Pakistan.
+I want to initiate computational biology in Nepal to more number of enthusiasts from different fields during this program. Getting the support from mentors, like minded people and their mentoring will help for the sustainability of our project. At least if we can initiate this step and give platform to more number of students, we can benefit life sciences sector of whole country through open science initiative. I also want to make this initiative feasible and sustainable by creating incoming generating platform with computational biology. +",1,,graduated,https://www.youtube.com/watch?v=KNHpQqBTpxI&list=PL1CvC6Ez54KB6U9GtjOjwESMurHgT41qM&index=4, +7,InterMine Similarity Explorer,Himanshu Singh,Yo Yehudi,"InterMine is a powerful open source data warehouse system. It allows users to integrate diverse data sources with a minimum of effort, providing powerful web-services and an elegant web-application with minimal configuration. But InterMine warehouses are fragmented as there’re 30 InterMines which are not interconnected. Project BlueGenes aims to integrate all the sources and provide a single interface to access the data of all 30 InterMines.
+This project aims to develop a javascript based tool which will be embedded on BlueGenes list pages (which can be of genes or proteins). This tool will allow users to find similarities between different genes or proteins that are provided in the list. In order to enable this, we’ll make an explorable graph visualization of the relationships between InterMine entities (proteins or genes). Each entity or object will be represented as a node.
+The idea is that visualizing things helps us to spot patterns. So, we’ll have this tool, which will visualize the interactions and similarities between different entities and there will be options to tweak the appearance/structure to make things more explorable. +",1,,,, +8,Open Connect Platform in Africa,Lilian Juma,Caleb Kibet,"In Open community, there is disconnect between Open practitioners and advocates hence need for platform to connect everyone within open landscape. Therefore, Open Connect will be a platform where everyone across the divide will be part of the solution through lessons, trainings and mentorship. This is an interactive platform targeting students, early career researchers, policy makers and senior researchers in shaping Open policies each country at a time in Africa. Since Africa poses different and unique development dynamics, development of all phases of this project will put into consideration various divides such as rich vs poor, rural vs urban, research literate vs research illiterate among others. +",1,,graduated,https://www.youtube.com/watch?v=KNHpQqBTpxI&list=PL1CvC6Ez54KB6U9GtjOjwESMurHgT41qM&index=4, +9,EMBL Bio-IT Community Project,Renato Alves,Malvika Sharan,"Bio-IT project at the European Molecular Biology Laboratory (EMBL) is an initiative established in 2010 to support the development and technical capacity of its diverse bio-computational community.
+After finishing my PhD recently at EMBL, I took the next role as a Bio-IT community coordinator within the same organisation. In order to perform effectively in my job, I want to formally gain community management skills and understand the various tasks and responsibilities within the Bio-IT project. With my application to the Open Life Science program, I want to be paired with a mentor, potentially Malvika Sharan, who is my predecessor in Bio-IT. I want to take this opportunity to ensure a smooth knowledge transfer within the management team of the Bio-IT project and navigate my own path and future prospects as a community manager. +",1,,graduated,https://www.youtube.com/watch?v=FkbgqWa_Hr4&list=PL1CvC6Ez54KB6U9GtjOjwESMurHgT41qM&index=5, +10,Oxford Neuroscience Open Science Co-ordinator: Changing Culture,Cassandra Gould Van Praag,Naomi Penfold,"The Wellcome Centre for Integrative Neuroscience (WIN) and other centres in Oxford Neuroscience recently received large awards which include substantial components of open science. These centres have thus far focused on developing the infrastructure required to share data and tools, and are now ready to turn their attention to the ethical, ecological and social challenges of supporting the uptake of open science practices. I have been recruited as an Open Science Co-ordinator for Oxford Neuroscience, to work between departments and alongside partners in other institutions to develop policies and recommendations for good governance that work for individual facilities (e.g. WIN), across departmental boundaries within medical sciences (e.g. Oxford Neuroscience), and then beyond into the wider University and national networks. The aim is to develop an open science community through an understanding of the principles of behavior change, including recognizing scientific and individual risks and benefits for research participants, researchers (at all levels), and the institution. +",1,,graduated,https://www.youtube.com/watch?v=KNHpQqBTpxI&list=PL1CvC6Ez54KB6U9GtjOjwESMurHgT41qM&index=4, +11,AMRITA: an online database for herbal medicine,"Anunya Opasawatchai, David Chentanaman",Holger Dinkel,"In South East Asia, herbal medicine has been used over the century as preventive and therapeutics intervention. However, due to the scarcity of scientific evidence, the use of herbal medicines is limited to local wisdom. Several constraints such as the absence of funding, patent issues, and most importantly, the lack of modern scientific approaches have prevented the pathway to this gold mine of drug discovery. Here, we propose the development of AMRITA, an online web-based library of medicinal herbs that include their phylogeny, medicinal properties, known active components and related scientific literatures that is open publicly to the research community world-wide. This platform would facilitate the collaboration of researchers across the fields of biological, pharmaceutical, and clinical sciences in establishing a solid foundation of medicinal plants and enabling the use of these plants in modern medicine. +",1,,graduated,https://www.youtube.com/watch?v=2wuy56LcHEw&list=PL1CvC6Ez54KB6U9GtjOjwESMurHgT41qM, +12,How to build an healthy and open lab,Elsa Loissel,"Daniela Saderi, Patricia Herterich","I would like to create a one-stop shop for new life science PIs who want to start their labs using principles, resources and practices found in the open space, but who may struggle to find and access this content themselves. More importantly, I would like to design an efficient communication strategy to bring this relevant content to young PIs in a way that saves them time and energy. This would first require understanding what PIs most needed when they started (and therefore which already existing resources are actually useful), and how it should be delivered to them - in which form, through which channels (e.g. young PIs newsletter), at what time(s). Then, I would like to curate existing content, repackage it in an easily accessible and “digestable” form, add to it, but also create readily usable tools (e.g. templates - not just things people have to read). Topics would include how to work openly and inclusively (e.g. lab codes of conduct, lab manuals, leading inclusive meetings, setting up a healthy lab culture etc.); how to do research open (preprints, toolkits with software to work open, project management tools etc.); how to train the next generation of open scientists; and how to open your work to the public. Finally, I would like to approach organisations and institutions to help more young PIs get access to these resources. +",1,,graduated,, +13,Benchmarking environment for bioinformatics tools,Zoe Chervontseva,Luis Pedro Coelho,"The aim of this project is to provide a flexible protocol and unified instruments for iterative benchmarking of bioinformatics tools solving various problems. The results of benchmarking for each particular task are to be published as a blog post. The posts are to be automatically updated each time somebody provide new data on the performance of any considered tool. There should be an ability to add new tools as well as new datasets to an existing comparison. +",1,,graduated,https://www.youtube.com/watch?v=FkbgqWa_Hr4&list=PL1CvC6Ez54KB6U9GtjOjwESMurHgT41qM&index=5, +14,EDAM ontology,Matúš Kalaš,Björn Grüning,"EDAM ontology is a long-established project, defining a common, controlled vocabulary in the form of a network of concepts and terms. EDAM covers topics, operations, types of data, and data formats used in computational life science, i.e. in analysis of biological data, with some bias towards molecular life science and cellular bioimaging. Bioimage informatics was the first larger extension of EDAM beyond mainstream bioinformatics and computational biology, with highly successful development model engaging a broad community of bioimaging and bioimage analysis experts. The EDAM-bioimaging + work was initiated by Jon Ison, Josh Moore, and others, and I have been +responsible for its further coordination.
+EDAM is used in applications such as registries of computational tools or training materials (contributing to open science), in the Common Workflow Language (CWL), or in automated workflow composition. It is also in the process of implementation in various parts of the Galaxy project. EDAM is developed in a transparent and participatory manner, similar to modern open source software (it is available under CC BY-SA).
+The goal of this concrete mentorship project is to further extend EDAM, so that other communities can benefit from it, and from the applications and use cases it fosters. +",1,,graduated,https://www.youtube.com/watch?v=KNHpQqBTpxI&list=PL1CvC6Ez54KB6U9GtjOjwESMurHgT41qM&index=4, +15,Improving Documentation for Open Data and Software in the Agricultural Research Community,"Kristina Riemer, David LeBauer, Emily Cain, Jorge Barrios",Katrin Leinweber,"We are members of the Data Infrastructure for Agriculture Group at The University of Arizona. Our mission is to provide scientists with open software, data, and computing that improves development of productive and sustainable agricultural systems. One of our persistent hurdles has been enabling and motivating the community to use our software and data.
+To address this, our project will focus on improving documentation for data and software that our group develops, as well as identifying and sharing best practices with the broader community. We will include the TERRA REF project, which produces high-resolution sensor data on crop plants, and the drone pipeline, which automates steps in the use of drones to study crops. Both projects produce open data (CC0 and CC-BY) and software (MIT/BSD compatible).
+Our goal is to make our products more usable for our intended audience, which is primarily scientists across a range of disciplines from computer science to remote sensing. We plan to have each person in the group complete a sub-project that can be finished in 15 weeks. Each sub-project would result in an accompanying blog post describing the best practices implemented. +",1,,graduated,https://www.youtube.com/watch?v=m4xp5t_mtxE&list=PL1CvC6Ez54KB6U9GtjOjwESMurHgT41qM&index=3, +16,Improving open platform accessibility,Christine Rogers,Hao Ye,"I'm a member of the technical team for LORIS (github.com/aces/loris), an open-source neuroinformatics platform that allows researchers to collaboratively collect, curate and share data on the brain, behaviour and genes.
+Aside from Jupyter notebooks, gitlab, and a few platforms that focus on data storage and linear processing paths, it can be hard to find platforms where researchers can safely collaborate with real transparency, while sharing as they go through a data collection lifecycle the actual workflows of their open science practices. I work already with an open-source project that provides these tools, but our platform can be challenging to adopt for new projects without dedicated technical resources, given the depth of knowledge and time required.
+My objective for this project is to begin tackling this from a few angles, including documentation, publication, and nudges in our code development process. I believe it is feasible in this timeline to also pilot open tools with a new project or as an extension to an existing project -- to start putting this idea into action. What problem(s) +",1,,graduated,https://www.youtube.com/watch?v=FkbgqWa_Hr4&list=PL1CvC6Ez54KB6U9GtjOjwESMurHgT41qM&index=5, +17,Enabling open science practices in biology education,Sandy Kawano,Fotis Psomopoulos,"The proposed project would establish a foundation for developing a tutorial on training researchers in biology to adopt more open science practices. The main goal would be to design a website (e.g., through GitHub) that would contain different chapters on how to accomplish different open science achievements (e.g., designing a Code of Conduct for collaboration, developing a data management plan, setting up an Open Lab Notebook) and that could be easily cloned to their personal websites and modified for their specific purposes. As an extension, I am hoping that this could then be expanded into a university course for undergraduate and/or graduate students or even as a workshop that could be help at different education centers, museums, or conferences. Not only would this allow junior faculty to get on the right foot of developing an open and inclusive lab, it would also help train the next generation of open scientists who trained under the faculty member. By making these resources freely available, it would also help maintain open lines of communication between lab members and make sure that expectations of the faculty mentor and student / staff mentees are fully transparent so that the mentoring process can be improved for science mentees. +",1,,graduated,, +18,Open Science UMontreal (OSUM),"Samuel Guay, Danny Colin",Andrew Stewart,"In 2019, we founded Open Science UMontreal (OSUM) because we believe in an Open by Design approach when it comes to Science. As a student initiative, we want to establish an inclusive and collaborative community where students and researchers at all stages of their careers feel welcome to learn, share, and discuss open science values, principles, and practices. By raising awareness of current issues, we hope this project will instigate a culture shift and help people realize how they can immediately benefit from using open and reproducible practices. As open science is a broad and wide-ranging concept with domain-specific definitions, we want to provide opportunities to meet and encourage the exchange of ideas within and across fields because we can all learn from each other. Throughout the Open Life Science mentorship program, we will focus on laying the foundations of our initiative by developing our web platform and organizing some-on campus activities.
Ultimately, we aim to facilitate networking between local ""open initiatives"" through Open Science Canada. Inspired by the Australia and New Zealand Open Research Network and the Open Science Communities in Europe, we hope that Open Science Canada will draw together like-minded people across the country and foster collaborations and the sharing of open resources and knowledge.
If you're reading this and you're interested in open research feel free to come chat with us on chat.openscience.ca, an open-source alternative to Slack! We want to get to know you (and your initiative)! +",1,,graduated,https://www.youtube.com/watch?v=KNHpQqBTpxI&list=PL1CvC6Ez54KB6U9GtjOjwESMurHgT41qM&index=4, +19,Creating network of Data Champions at the library of Free University of Amsterdam,Lena Karvovskaya,Patricia Herterich,"From February 1st I am starting a new position as community manager RDM at the library of Free University of Amsterdam (VU). My ultimate goal is to bridge the gap between researchers and support personal by creating opportunities for networking and collaboration. The project that I would like to develop as part of the Innovation Leaders programme is setting up a network of Data Champions. Data Champions are local community member willing to share their discipline-specific expertise with colleagues; they advocate good RDM practice and advise and proper handling of research data.
Similar programs have been launched at the University of Cambridge, TU Delft, and Wageningen University. The main goal of the Data Champion programme is to drive cultural change towards open science and open data. +",1,,graduated,https://www.youtube.com/watch?v=FkbgqWa_Hr4&list=PL1CvC6Ez54KB6U9GtjOjwESMurHgT41qM&index=5, +20,Practical Guide to Reproducibility in Bioinformatics,Sangram Sahu,Hans-Rudolf Hotz,"Reproducibility in life science always been in debate. +Althogly lately standard practices have adopted in different aspects, +sometimes these might not practically applicable by the end researcher. +Reproducibility practices need to be used by all, then only it will be +successful in both ends (research producer and research reader). +To bridge this gap, a lot of practical training is required. +This is where this project comes in picture. +Here we aim of creating training materials for doing +reproducible research in a more practical and application-oriented way +with a specific focus on niche areas of respective research +(for now bioinformatics as a starting point). +Not only limited to materials, as well as virtual training +by promoting the practuce of creating and sharing of Computational +Environment and Analysis in a reproducible manner with systems in scaling. +",2,,graduated,, +21,Mapping Science using Open Scholarship,Stefan Gaillard,"Malvika Sharan, Yo Yehudi","I want to work out a way to use data visualization to map the current state +of scientific knowledge within the life sciences. +Some literature on mapping science already exists, but most was written before +the machine learning revolution. The more contemporary literature suffers +from other mistakes, such as flawed comparisons of studies (using the same +terminology in different manners) and, most importantly, not all scientific +research is easily available. Thus, Open Science should be an integral +component of any effort to map scientific knowledge. In this project, I +aim to outline which Open Science practices currently exist that facilitate +the mapping of science, which Open Science practices are needed to facilitate +the mapping of science and how a prototype for a collaborative effort to map +science could look like. +",2,,,, +22,Creating community awareness of open science practices in phytolith research,Emma Karoune,Yvan Le Bras,"I have been conducting my own research to assess the state of data sharing +in phytolith analysis. The results show that data sharing practices are +minimal (articles are currently being written!). Therefore, I am aware that +my discipline needs to focus on open science practices to develop more +transparent and robust methodologies. I want to raise awareness of the need +for open science practices, initially focusing on data sharing. This will +involve distributing my current research findings widely through blogs and +conference talks, and these efforts will enable the formation of community +connections to initiate a working group for open science in my field. +There are currently working groups for nomenclature and morphometrics in +phytolith analysis as part of the International Phytolith Society. Initial +efforts of the working group would be to investigate the best ways to share +data, developing resources/training opportunities for students and early +career researchers, and recommending/publishing guidelines for colleagues +to follow. +",2,,graduated,, +23,Synthetic Biology Chassis Toolkit for Public Domain Use,Stephen Klusza,Anita Bröllochs,"A synthetic biology platform that is compatible with existing and future +public-domain biotechnologies in the Biosafety-Level -1 (BSL-1) organism +Bacillus subtilis. Bacillus subtilis has the ability to secrete biomaterials +outside of the cell and also undergoes sporulation under certain conditions, +which provides a stable way of storing DNA at room temperature without a +need for refrigeration. +Despite the tremendous progress in synthetic biology and biomanufacturing +industries, most innovations are patented with various restrictions on +use and impedes global access and use of these tools. A synthetic biology +toolkit that exclusively uses technologies in the public domain is the first +step towards providing scientists and non-scientists the tools to conduct +science and create valuable biomaterials for their communities without restriction. +",2,,graduated,, +24,Creating a single pipeline for metagenome classification,Muhammet Celik,Mallory Freeberg,"Metagenomics has been increasingly becoming very important in studies of +human and animal health. It has become clear that bacteria in and on our +bodies are very significant. Thus there is a big boost in science society +who are willing to study metagenomics. When we want to do downstream analysis +in our microbial community, the first step is to find out about our community, +what the community ultimately looks like. My idea is that benchmark the state +of the art tools (such as Kraken2, Centrifuge and CLARK) and create a single +pipeline that will produce a single pdf file with cutoff-significance-sensitivity +values for each tool. Later we can set that pipeline on web-based system that +would make the researchers easier for the scientists. +",2,,graduated,https://www.youtube.com/watch?v=IGyoiFnCvis&list=PL1CvC6Ez54KDcaZbH8YXvXGU_XLFW3eRH, +25,Chronic Learning,Bailey Harrington,Piraveen Gopalasingam,"Chronic Learning is an open resource for academics and individuals who are +trying to teach or learn something new; the scope is not limited to science. +The project currently consists of a WordPress site (unlaunched), a Dropbox +for material storage, and a Twitter account for dissemination. I own the +copyright for all of the materials, and they are free to use for academic +purposes, such as lecture slides or handouts. The materials are made up of +a mixture of graphical abstracts, tutorials, and reference pdfs; I hope to +incorporate more formats, such as videos, as well. +",2,,graduated,https://www.youtube.com/watch?v=IGyoiFnCvis&list=PL1CvC6Ez54KDcaZbH8YXvXGU_XLFW3eRH, +26,Open Innovation in Life Sciences,"Joyce Kao, Christina Ambrosi",Aidan Budd,"Open Innovation in Life Sciences is an open science organization that +promotes the practice of open science in the Zurich-area life science +research community. We are a bottom-up approach focusing on early career +researchers (ECRs) that complements the Swiss national and institutional +top-down open science initiatives. We are currently establishing an official +Swiss association in collaboration with Life Science Zurich and expanding +our program to include open science workshops/courses for ECRs and public +lectures to complement our annual conference and keep the discussion on +open science active all year round. The association will be operated by +ECRs working with a board of academic and industry leaders thus it doubles +as a career training program adding hands-on experience of practicing soft +skills (e.g. teamwork, communication, etc.) and learning non-scientific +expertise (e.g. project management, budgeting, advertising, etc.) to +enhance traditional Ph.D. and Postdoctoral training. +",2,,graduated,https://www.youtube.com/watch?v=28OiRoBz3ww&list=PL1CvC6Ez54KDcaZbH8YXvXGU_XLFW3eRH&index=2, +27,Using collective action to change cultural norms and drive progress in the life sciences,Cooper Smout,"Luis Pedro Coelho, Lilian Juma","Open Science practices have the potential to benefit everyone in the life +science community (and broader society), but their adoption is limited by +incentive structures that reward ‘fast’ and unreliable science at the +individual level. ‘Crowd-acting’ platforms (e.g., Kickstarter, Collaction) +can overcome such collective action problems by organising ‘pledges’ for a +particular behaviour, which are only acted on if and when a predetermined +critical mass of support is met. By protecting individuals’ interests until +such time that they have the support of their community, crowd-acting +platforms can thus resolve the collective action problem and increase the +uptake of the beneficial behaviour in question. Similarly, Project Free Our +Knowledge aims to organise collective action in the global research +community. Researchers can create and sign campaigns asking their peers to +adopt a new behaviour, but only act on that pledge if a certain threshold +of support is met (e.g., 1000 signatures). If and when the threshold is +reached, everyone who has signed that campaign will be listed on the website +and directed to carry out the new behaviour in unison, with the protection +of their peers. +",2,,graduated,https://www.youtube.com/watch?v=28OiRoBz3ww&list=PL1CvC6Ez54KDcaZbH8YXvXGU_XLFW3eRH&index=3, +28,Developing the Research Software and Systems Engineering Community to support Life Sciences in Africa,"Peter van Heusden, Eugene de Beste","Mesfin Diro, Raniere Silva","Bioinformatics and other computational life sciences (e.g. disease modelling) +rely on computing infrastructure built and maintained by software engineers +and sysadmins/systems engineers. The [RSSE Africa (Research Software & Systems +Engineers) forum](https://rsse-africa.sanbi.ac.za/) was established last year +just prior to the [ASBCB conference](https://www.iscb.org/iscbafrica2019) to +provide a home for people whose main contribution to research is software and +computing systems. The aim for 2020 is to grow the project in terms of +visibility and participation. +",2,,,, +29,Growing the Galaxy Community,Beatriz Serrano-Solano,Dave Clements,"Galaxy is an open-source framework that enables scientists to perform +computational biology analysis. A worldwide community supports the Galaxy +project providing tools, workflows, computational resources and training +materials in many different scientific areas. At the beginning of +September 2020, I’ll be starting a new position at the University +of Freiburg to help with the community management within the European +Galaxy team. European Galaxy community has grown both in number and +fields, standing in need of coordination across several countries that +need to work collaboratively to achieve common goals. My new role will +include the responsibility of coordinating the European Galaxy and +scientific community as well as strengthening the relationship with the +Australian community, helping build the Asian and African communities, +and event organisation around Bioconda, BioContainers and Galaxy. With +this personal project, I would like to advance my community building and +project management skill while enhancing the connection with the +communities outside Europe. +",2,,graduated,, +30,"Global land-use and land-cover data under historical, current, and future climatic conditions for ecologists",Tainá Rocha,"Bruno Soares, Yvan Le Bras","Land-Use Land-cover (LULC) data are important predictors of species +occurrence and biodiversity threats. Although there are LULC datasets +available for ecologists under current conditions, there is a lack of +such data under past and future climatic conditions. This hinders +projecting the predictions from niche and distribution models over +global change scenarios at different time periods. The Land Use +Harmonization Project ([LUH2](https://luh.umd.edu/data.shtml)) is a global +dataset in raster format covering continental areas, and provides massive +LULC data from 850 to 2300. However, these data are compressed in a file +format (NetCDF) that are intractable by most ecologists. We aim to selected +the most useful LULC data for ecologists, transformed the existing dataset +into regular GIS formats and derived new LULC data often used in +macroecology and ecological niche modeling and provide this data LULC data +for thirty-seven time slices from year 900 to 2100, with the following +temporal resolution - every 100 years from 900 to 1950, every 10 years from +1950 to 2010, and every five years from 2010 to 2300. +",2,,graduated,, +31,BioLab Open Source Projects,"Boï Kone, Bakary N'tji Diallo",Delphine Lariviere,"BioLab Open Source Projects is the beginning of a platform where biomedical +researchers, and computer scientists will work closely with to solve some +main tropical infectious diseases through collaboration and sharing ideas. +Being the main source of problems in Africa, tropical diseases are +affecting the socio-economic development of this part of the world. The +time is now the raise the state of the consciousness of the problem by +creating an environment where the only interest is sharing. Sharing ideas, +knowledge, skills, and opportunities about biology. The main challenge in +African biomedical research science is the lack of resources and sharing +skills, especially amount young generation of the scientist whom most of +the time doesn’t have the orientation and necessary information to address. +The project stands to build a community around the main challenge surrounding +tropical infectious diseases as Malaria, Tuberculosis… To tackle this challenge +of the biological understanding of the proportion of burden, the need for more +training prospective and collaboration between students, young researchers, +and potential supervising programs. We will try to build an open-source +project around these challenges to better understand these diseases' +interaction modes with drugs via bioinformatics tools. The benefit will +provide training support to the students, young researchers together and +bring solutions for general health problems, and be able to share them on +collaboration purposes and training. +",2,,,, +32,Target approach in the stages of liver cirrhosis to reverse back in good condition,Wasifa Rahman,"Sonika Tyagi, Malvika Sharan","This is a brand new project for the target approach in the stages of liver +cirrhosis. This project will identify the significant reasons behind +developing cirrhosis and to prevent that staging development in continuation +of this damage. The major focuses to reverse the damage into healthy +condition are the enzymes, mutations, snp, genetic factors related to +disease progression. These are the key aspects to target the stages of +liver cirrhosis and to identify there role to a healthy growing liver or +decrease there damaging features. +",2,,,, +33,Science For All (Sci4All) - Citizens' daily problem solving by engaging multidisciplinary scientific communities,"Teresa Laguna, Laura Judith Marcos-Zambrano",Katharina Lauer,"The project concept is to establish a collaboration between the general +public and scientists, where the citizens can expose their daily issues and +scientists can collaborate to try to find solutions for them. For that purpose, +we aim to establish a multidisciplinary scientific network who help citizens +to improve their daily life. +To start the project, we think it is more appropriate to first create +local communities, starting in Madrid as it the location of the applicants. +In the future, the local network can be expanded or occasionally contact +other local communities, such as the ones already established by means of +this program (Barcelona, Utrecht, Montreal), to work collaboratively in +global public issues. Connections with companies can also be established +(for example, to help in the production of prototypes) but with the +requirement of use open licenses and follow the precepts of this program. +",2,,graduated,, +34,Supervised Classification with UMAP and Network Propagation,"Joel Hancock, Markus Kirolos Youssef",Markus Löning,"Using UMAP and network propagation to make a fast, accurate and +interpretable supervised learning algorithm. We will benchmark our +novel method against other state-of-the art machine learning algorithms +using image analysis data, and other single-cell readouts. +Supervised tasks using features with many artifacts and strange +distributions and are typically solved using computationally intensive +neural nets. This kind of data frequently occurs in morphological image +analysis and bioinformatics generally. +We would like to apply the technique to different datasets, investigate +its theoretical underpinnings and see whether GPUs and other computational +resources can be leveraged to improve the speed of classifications. +Publish the results in an open science journal and make the code available +to the community. +",2,,,, +35,Building a Database for Open Access Immunology Pre-prints and Publications on COVID-19,"Harriet Natabona Mukhongo, Brenda Muthoni, Jelioth Muthoni",Naomi Penfold,"This project aims to develop a database of open-access Immunology +pre-prints and publications on COVID-19. As the COVID-19 pandemic unfolds, +scientists are working round-the-clock to generate data, resulting in an +upsurge of information on various aspects of the virus. Various publishers +such as Lancet, Elsevier, Oxford, New England Journal of Medicine (NEJM), +Nature, have open access early journal releases and publications on a wide +range of fields covering the COVID-19 topic. Many efforts are still underway +to develop a feasible vaccine with trials taking place at different research +centers globally. An open repository of open access pre-prints and journal +articles in the area of COVID-19 immunology and vaccinology will easily +connect researchers on current data available for efficient communication +of scientific research and open science principles. The repository will be +divided into subsections of publications from the 7 continents to be able +to easily identify how the disease is affecting different geographical +locations. +",2,,graduated,https://www.youtube.com/watch?v=28OiRoBz3ww&list=PL1CvC6Ez54KDcaZbH8YXvXGU_XLFW3eRH&index=3, +36,Sharing 3D Modeling Workflows for Biomechanists and Palaeontologists,"Eva Herbst, Dylan Bastiaans",Holger Dinkel,"We recently received some funding from our university to host a workshop +about 3D modeling methods for biomechanics. This sparked the idea of creating +some sort of online database of workflows in our field. This website will +serve early career researchers or researchers starting out with biomechanical +analyses, or those wishing to switch their workflows (for example to be more +freeware based). Currently there is a need for a central repository of such +workflows. Usually they are only circulated within lab groups or between +collaborators. However, an online hub with modeling resources would +significantly reduce the time researchers need to invest in choosing +programs and figuring out how to set up their models, giving them more +time to do research and develop new methods. For this project, we +specifically want to build a website with open source workflows, tips and +tricks for setting up models for finite element analysis, as well as other +3D workflows (such as fossil reconstruction in freeware programs). +",2,,graduated,https://www.youtube.com/live/28OiRoBz3ww?feature=shared&t=1535, +37,Open Science Office Hours to support trainees in Montreal to help make their research more open and reproducible,Kendra Oudyk,Andrew Stewart,"The goal of this project is to establish Open-Science Office Hours, a +meeting space where students in Montreal can come throughout the year +to get help making their research more open and reproducible. This +initiative will promote Open Education in life science, particularly in +the area of neuroimaging data science. Students in this field often learn +hard skills in open science at weekend workshops, summer schools, and +hackathons, but there is a gap in the learning experience regarding +long-term support. The main measurable outcome of this project would be +having a group of senior trainees who take turns hosting Open-Science +office hours at regular intervals throughout the year. These meetings +would take place virtually and/or in person in Montreal, Canada (depending +on COVID-19). +Although we hope to spark this initiative, it would need community support +to be sustainable. In the first stage, I would welcome collaborators to +help plan. Later, we would need support in the form of funding so that we +can compensate TA’s; this would help enable less-privileged trainees to get +involved as TA's. Finally, we would need to recruit the TA's. Thus, this +project will involve community contributions at all stages, in various capacities. +",2,,graduated,https://www.youtube.com/watch?v=28OiRoBz3ww&list=PL1CvC6Ez54KDcaZbH8YXvXGU_XLFW3eRH&index=2, +38,Registered Reports in Primate Neurophysiology,Danny Garside,Ivo Jimenez,"In this new project I aim to explore the specific challenges (both +practical and metascience related) to adoption of registered reports in +primate neurophysiology. As far as we aware there has not yet been a +registered report within the field of non-human-primate (NHP) +neurophysiology. There are specific challenges for using this format +within this field; some practical and some metascientific. A central issue +is that the existing format for registered reports focuses on hypothesis +testing, whereas neurophysiology is quite often an exploratory and +iterative process. Working with NHPs is a necessarily limited privilege +and comes with considerable responsibility; the cost of having experiments +where the results are not robust, or where opportunities for discovery +are missed, is particularly high, since opportunity for replication is +limited. Therefore, peer review in advance of performing an experiment +seems a particularly valuable idea. This project would explore ways in +which to find compromise in the conflict between existing registered +report formats and current methodologies in primate neurophysiology. +",2,,graduated,https://www.youtube.com/watch?v=28OiRoBz3ww&list=PL1CvC6Ez54KDcaZbH8YXvXGU_XLFW3eRH&index=2, +39,OSUM - Open Science UMontreal,"Samuel Burke, Andréanne Proulx, Pauline Ligonie, Myreille Larouche, Valerie Parent, Béatrice P.De Koninck",Renato Alves,"We are building Open Science UMontreal (OSUM) - a student initiative - +whose aims are to create an onboarding experience to the practice of +open science (in all of its forms) for the predominantly french-speaking +scientific community in Quebec (and beyond). We aim to attract as many +stakeholders as possible (from scientists at the level of undergraduate, +all the way to emeritus status); to unite those who already have a strong +open science mindset and to build our resources such that we become the +first point of contact for the local scientific community. OSUM will +discuss open science values, principles, and practices. By raising awareness +of current issues, we hope this project will continue to drive the culture +shift and help people realize how they can immediately benefit from using +open and reproducible practices. Furthermore, we strive to navigate our +institution towards becoming an institutional member of OSF, just as the +University of British-Columbia has done in the last year. As open science +is a broad and wide-ranging concept with domain-specific definitions, +we want to provide opportunities to meet and encourage the exchange of +ideas within and across fields because we can all learn from each other. +",2,,graduated,, +40,APBioNetTalks,Hilyatuz Zahroh,Patricia Herterich,"APBioNetTalks is a new program to be launched by Asia Pacific +Bioinformatics Network (APBioNet) by the mid of 2020. It will serve as an +online platform to host and stream bioinformatics related talks, tutorials, +and training. The program aims to facilitate the learning of bioinformatics +to be more inclusive and accessible. It will invite experts, early career +researchers/scientists, and Ph.D. students from different countries and +institutions to share their knowledge and skills with the audiences. Upon +the completion of live streaming, the videos will be archived and available +on-demand. The program will help provide people with open bioinformatics +resources and foster the growth of bioinformatics. Additionally, the +program is also expected to reach wider audiences and introduce more people +to the bioinformatics. +",2,,graduated,, +41,Database for coordinating training needs in Kenya to faciliatate preparation and collaboration,Pauline Karega,"Lorena Pantano, Sarah Gibson","There are many universities in Kenya in different counties offering +life sciences as part of their curriculum. There’s, however, a difference +in accessibility to resources. There are a number of science clubs in +these universities. In light of the recent pandemic, there has been a +change in how conferences and science events are being conducted, which +has proven that online training is an effective mode of training and so is +remote distribution of resources. With increasing need to adopt online +trainings and conferences, and to narrow the gap in distribution of +resources to different institutions and also encourage collaboration, +I propose a platform that contains data of all science clubs in Kenyan +institutions. The platform will allow submissions of training needs from +the different institutions to allow narrowed down preparation and it will +also allow collaboration of students from various institutions. From +requests obtained, organization of talks and trainings can be more +efficient and organized. These can transition into physical meetups eventually +",2,,graduated,, +42,Open platform for Indian Bioinformatics community,Pradeep Eranti,David Selassie Opoku,"The Bioinformatics community is one of the ever-growing communities in India, +which has its presence across the length and breadth of the country. Likewise, +the education and research programs spread across different branches of the +Bioinformatics topic as its focus. There is a need for establishing open +platform(s) where students, (early-career and established) researchers, policy +makers could exchange knowledge freely across these different areas through +open science practices and principles. In realizing such a platform, the +benefits of following open principles need to be widely communicated for +bringing awareness among the community by building pathways and encouraging +contributors & ambassadors. The aim of this project is to explore the scope +and path towards establishing an open platform and provide opportunities to +participate, contribute and organize open initiatives. +",2,,graduated,, +43,OpenWorkstation - A modular and open-source concept for customized automation equipment,Sebastian Eggert,Meag Doherty,"The OpenWorkstation project presents a modular and open-source concept to +develop customized automation equipment. Inspired by assembly lines, the +concept consists of ready-to-use and customizable hardware modules which +can be plugged into the base frame. In contrast to current commercial and +open-source standalone solutions, this concept enables the combination of +single hardware modules – each with a specific set of functionalities – to +a modular workstation to provide a fully automated setup. +The base setup consists of a pipetting and transport module and is designed +to execute basic protocol steps for in vitro research applications, +including pipetting operations for non-viscous and viscous liquids and +transportation of cell culture vessels between the modules. +The successful application of this concept is presented within a case study +by the development of a storage module to facilitate high-throughput studies +and a crosslinker module to initiate polymerization of hydrogel solutions. +By combining capabilities from various open source instrumentations into a +modular technology platform, this concept has the potential to facilitate +the development of customized automation equipment for efficient and +reliable experimentation for in vitro research. Ultimately, the +OpenWorkstation concept will allow empower academic groups to the develop +their own equipment to automated their research workflows. +",2,,graduated,, +44,The Turing Way - Guide for Ethical Research,"Sophia Batchelor, Ismael Kherroubi Garcia, Laura Carter","Jez Cope, Anjali Mazumder","The Turing Way project aims to provide all the information that data +scientists in academia, industry, government and in the third sector need +at the start of their projects to ensure that they are easy to reproduce +and reuse at the end. The Guide for Ethical Research is one book of the +project (complementing the other four which cover reproducible research, +project design, communication, and collaboration). +Producing an initial a full draft of the Guide for Ethical Research aims to +positively impact research in the following ways: + +1. Equipping data science researchers to approach their work in a more reflective way and to +think holistically about their research, its processes and outcomes +2. Equipping scientists working in a range of fields to advocate for ethical +research at all stages of the research process. +3. Compiling diverse research ethics resources in one area. +",2,,graduated,https://www.youtube.com/watch?v=28OiRoBz3ww&list=PL1CvC6Ez54KDcaZbH8YXvXGU_XLFW3eRH&index=2, +45,sktime - a unified toolbox for machine learning with time series,Markus Löning,Martina Vilas,"sktime is a new Python toolbox for machine learning with time series. +We provide state-of-the-art time series algorithms and scikit-learn +compatible tools for building, optimising and evaluating complex models, +based on a clear taxonomy of learning tasks and clear design principles and +patterns. We want to enable understandable and accessible machine learning +with time series by providing instructive documentation and by building a +friendly, collaborative and inclusive community. The aim is to unify the +time series analysis field by providing a common framework for multiple +learning tasks, bringing together contributors from academia and the wider +data science community into a joint framework and embedding best practices +into the time series analysis field. +",2,,graduated,https://www.youtube.com/watch?v=28OiRoBz3ww&list=PL1CvC6Ez54KDcaZbH8YXvXGU_XLFW3eRH&index=3, +46,Turing Data Stories,"Camila Rangel Smith, David Beavan, Sam Van Stroud, Kevin Xu",Yo Yehudi,"Our goal at Turing Data Stories is to produce educational data science +content through the storytelling medium for the general public. Our +content will be split into different stories, which begin with an +interesting and relevant real-world hypothesis and walks the user through +the entire data science process - from gathering and cleaning the data, +to using it for data analysis. The aim of the Turing Data Stories is to +spark curiosity and motivate more people to play with data. +The Turing Data Stories are detailed and pedagogic Jupyter Notebooks that +document an interesting insight or result using real world open data. +A Turing Data Story follows these principles: +1. The story should be told in an engaging and educational way, describing +both the context of the story and the methods used in the analysis. +2. The analysis must be fully reproducible (the notebooks should be +executable by others using a provided computer environment, requiring no +installation of software) +3. The results should be transparent, all data sources are correctly referred to +or included. +4. In order to maintain the quality of the results, the story +should be peer-reviewed by other contributors before being published. +",2,,graduated,, +47,Embedding Accessibility in The Turing Way Open Source Community Guidance,"Neha Moopen, Paul Owoicho",Samuel Guay,"The Turing Way book is a community-driven book for reproducible research +in data science. It is written by data scientists, academics, researchers, +students, technologists, software engineers, policymakers, educators and +other stakeholders from varying technical backgrounds. +I will be contributing to the project as a technical writer from +September 2020 to December 2020 where I will have the following +responsibilities: +1. Helping authors in effectively engaging with the +project and collaborating in groups to write, edit and review current and +new chapters in the book. +2. Developing resources that will ensure +consistency across all chapters and make the book more comprehensible for +readers. +3. Making pages more responsive and discoverable so that readers +can read it on any device (like a smartphone or a tablet) with the same +efficiency. +4. Participating in the community discussions of the project +to learn about the experience of its readers, authors, collaborators, and +other members through their stories of using the book. + +All these tasks in The Turing Way will require me to integrate Open +Science principles and community practices, which I am confident to learn +with my participation in the Open Life Science training and mentoring program. +",2,,graduated,, +48,Towards open and citizen-led data informing the decarbonisation of existing housing,Kate Simpson,Arielle Bennett,"The Design for Retrofit project I work on at The Alan Turing Institute, +within the Data-Centric Engineering programme aims to use data-driven methods +to address uncertainty in design stage decision-making towards reducing the +carbon impact of homes through retrofit. This involves quantification of the +current energy demand of housing archetypes and physics-based modelling to +evaluate the impact of energy-efficiency technologies available to be installed +in the home during the retrofit process. However, uncertainty exists due to a +lack of monitored data on indoor air temperature, which leads to a performance +gap between modelled and monitored energy demand as heating practices are the +most sensitive parameter within building energy modelling. Further uncertainty +is acknowledged due to a lack of longitudinal data following retrofit. Such +data could inform the evaluation of long-term impacts of technologies installed, +to inform future decision making. Motivated householders who are planning or +recently completed a retrofit project might be interested to share data, perhaps +in return for research insight on the impacts and success of similar projects +through a citizen science approach. This is an idea in development for follow-on +research which requires data collection protocols, ethical guidelines and data +repositories. +",2,,graduated,, +49,Autistica - Turing Citizen Science Project,"Georgia Aitkenhead, Katharina Kloppenborg",Anelda van der Walt,"This project is to build an online citizen science platform with the +collaboration of autistic people and their families. The platform will +then be used to gather experiences in order to investigate how sensory +processing might affect the ways autistic people navigate the world +around them. We are also using learning from the project to create a +framework to support researchers in making their own work more participatory. +The project is a collaboration between The Alan Turing Institute – the +UK's national institute for data science and AI research, and Autistica, +a UK autism research charity. I am working under the supervision of +Dr. Kirstie Whitaker, an academic who is committed to the principles of +open research and building welcoming and inclusive online communities. +The funding for the project is a result of a James Lind priority setting +alliance run by Autistica. It is a complex project with multiple +stakeholders. Open Humans, a foundation who have provided the back end +for the platform, and a development team from Fujitsu are currently +co-designing the front-end interface with the input of the autistic +community. Most important are a diverse and growing number of autistic +participants and (sometimes overlapping) open source developers. +",2,,graduated,, +50,Arua City Open Learning Circles,Ibrahim Ssali,Caleb Kibet,"The H3ABioNet Open Learning Circles (OLC) Initiative aims to build a +community of peers committed to learning and teaching each other +different skills (coding, data analysis, etc.) through lectures, +tutorials and work on collaborative projects. The goal is to have +regular meetups for scientists, researchers and students to openly work +together, learn/share code, learn new tools/software or simply improve +their general coding skills. The project also allows space for continued +learning and growth in various bioinformatics tools for our ex-trainees +in this instance. In the beginning, learning circles will enable continuity +of learning after IBT. To start a bioinformatics department and resource +Centre at Muni University, Faculty of health sciences located in Arua City, +West Nile, Uganda. The aim is to develop a critical mass of practitioners in +this region who can develop and utilize Bioinformatics approaches to Biosciences. +To enhance bioinformatics training at all levels and increase the size and +quality of the pool of potential students and researchers. I am at a stage of +proposal writing to start a bioinformatics department and resource centre at Muni +University, Faculty of health sciences located in Arua City, West Nile, Uganda. +The aim is to develop a critical mass of practitioners in this region who can +develop and utilize Bioinformatics approaches to Biosciences. To enhance +bioinformatics training at all levels and increase the size and quality of +the pool of potential students and researchers. +",2,,,, +51,Western Cape-H3ABioNet Open Learning Circles,Ekeoma Festus,"Caleb Kibet, Lena Karvovskaya","The H3ABioNet Open Learning Circles (OLC) Initiative aims to build a +community of peers committed to learning and teaching each other +different skills (coding, data analysis, etc.) through lectures, +tutorials and work on collaborative projects. The goal is to have +regular meetups for scientists, researchers and students to openly work +together, learn/share code, learn new tools/software or simply improve +their general coding skills. The project also allows space for continued +learning and growth in various bioinformatics tools for our ex-trainees +in this instance. Through my participation in OLS, I will adapt the Open +learning Circles Concept to our community in UWC. +",2,,,, +52,Best practices for online collaboration/peer-production in citizen science,Katharina Kloppenborg,Fotis Psomopoulos,"Citizen science revolves around the idea of integrating the public in scientific research. However, there are different interpretations of this idea. An important part of citizen science projects allows laymen only to participate in a limited scope of microtasks and keeps thus reinforcing the power gap between academic scientists and the public. Literature has called for more autonomy of citizen scientists by allowing them to participate in more phases of the research cycle. Commons-based peer-production, an alternative mode of production in which people self-organize to develop complex knowledge-commons like Wikipedia or open software, seems to be a promising approach to facilitate this. However, a design-centred approach implementing this for a specific use case is yet to be done. In my PhD project I am trying to fill this gap by redesigning the online ecosystem of Open Humans - an existing community of practice around citizen science - collaborating closely with this community in a user-centered design approach. As one of the first steps, I am working on a best practices guide, summarizing the experiences of existing similar projects.",3,"Citizen Science, Peer-production, Participatory design",graduated,https://www.youtube.com/live/pU-HosUM5-8?feature=shared&t=527, +53,A virtual conference management system with seamless open science integration,Simon Duerr,Emily Lescak,"VCMS (vcms.simonduerr.eu) is convenient tool to setup a website for a virtual conference including an abstract submission portal, timezone adapted scheduling of talks and an interactive virtual poster session with video chat and spotlights for posters with some features still in development. The tool is currently in beta and will be released as FOSS under MPL once the software is battle tested (in mid february).",3,"Conferences, Virtual, Poster session",graduated,https://www.youtube.com/live/kNQz0ap71yg?feature=shared&t=602, +54,Memory Collecting: Croatian Homeland War,Annalee Sekulic,Kate Simpson,"The “Memory Collecting: Croatian Homeland War” project aims to create a platform where survivors can submit video recordings of their own memories and reflections of the 1992 Homeland War. The repository will also store them in a publicly accessible database. By having the software be open to citizen scientists, the database will be one of the most inclusive and easily accessible memory banks. This initiative seeks to preserve the memory of the role of Croatian-Americans in the creation of free, modern Croatia during the Homeland War in the 1990s.",3,"Database, Video, Generational memory, Record, Document, Historical, Croatia, Diaspora",graduated,https://www.youtube.com/watch?v=2tezbbfJGu8&list=PL1CvC6Ez54KD01eg-XVq0AUHNEpG9dnrA&index=3, +55,Open Phototroph,Steven Burgess,Stephen Klusza,"I want to help build a culture of open science and good practice (as well as fun) within the plant synthetic biology community, with an initial emphasis on the US. + +I hope to do this by (1) establishing an open toolset for genetic manipulation of algae and photosynthesis enzymes (2) developing an open repository of protocols for genetic manipulation (3) producing educational resources to aid experimentation, both in academia and for citizen scientists (4) building a community of interested individuals to expand and contribute to the project.",3,"Synthetic biology, Community building, Citizen science",,, +56,Opensource Transpiler of Synthetic Biology Lab Protocols for Wetlab Robotics,William Jackson,,"An open-source software tool and associated protocol repository that translates wet-lab protocols into instruction sets for commonly available robotic liquid handlers. Protocols will be hosted on a publically accessible website, and community members can edit, annotate, and report on different protocols. Think Github for biological protocols with an issue tracker.",3,"Robotics, Synthetic Biology, Open Source, Community Enhancement",,, +57,"Field and laboratory based research project researching, surveying, and discovering the palaeoecology and palaeogeography of West Cork",Robin Lewando,Bruno Soares,"This project is a field and laboratory based research project researching, surveying, and discovering the palaeoecology and palaeogeography of West Cork. The project will make use of:- paper research methods; sampling and scientific analysis of sediments; digital mapping; field and site visits and landscape analysis; scientific processing, analysis and identification of microfossils from sediments; site visits and surveys; ecological surveys; and local enquiry. Results and findings will be published on a website in the form of:- stories, accounts, photographs, digital interactive maps, and graphics, with a prime emphasis on accessibility, understandability, relevance. Principal attention will be paid to environmental areas that are productive of microfossils (bog and lake sediments); that have distinctive landscape features and sediment types (relict glacial and past and present fluvial landscape features); different natural habitat types and plant and animal communities; geological distinctiveness; and archaeological sites. Emphasis will be placed on the interconnectedness of these aspects of the current and past environments. The final step will be to show how, in each area, however local, these many and varied aspects have contributed to the present landscape and environment and thus to give an understanding how the future development may progress.",3,"Palaeoecology, Palaeoenvironment, Palynology, Interdependence, Onterconnectedness, Landscape, Public, Geomorphology, Geology, Geography, Microscopy, Microfossils",graduated,, +58,Open data schema for actigraphy data in chronobiology and sleep research,"Manuel Spitschan, Grégory Hammad",Mallory Freeberg,"Actigraphy provides a measure of the 24h rest-activity cycles based on movement counts, typically of the wrist. It is obtained using wearable devices and is a widely used, non-invasive way to determine sleep and circadian properties. Importantly, metrics derived from actigraphy are being increasingly used in clinical contexts, where groups of psychiatric and neurological patients in specific conditions have found to be exhibit abnormal rest-activity rhythms and sleep. Sleep and circadian parameters from actigraphy are derived measures. These are obtained by converting the movements counts (usually obtained at a resolution of 1 minutes) into sleep parameters and circadian metrics using algorithms raging from threshold-based computations to machine learning techniques. Unfortunately, at present, there are no standards or schemas for specifying and sharing actigraphy data and corresponding algorithms. + +The goal of this project is to develop a common schema for the use, analysis, reporting and open and interoperable sharing of actigraphy data across different actigraphy devices produced by different commercial manufacturers and for use by researchers and research users. This project builds upon core research and technical expertise amongst the team members, and provides a framework to structure the work of the newly funded Chronobiology Data Standards Interest Group (CDSIG).",3,"Open data, Open science, Data schemas, Metadata, Actigraphy, Actimetry, Rest-activity cycles, Circadian rhythms, Chronobiology, Sleep research",graduated,https://www.youtube.com/watch?v=pU-HosUM5-8&list=PL1CvC6Ez54KD01eg-XVq0AUHNEpG9dnrA, +59,"BioFerm: A web application used for kinetic modeling, parameter estimation and simulation of bioprocesses",Olayile Ejekwu,Renato Alves,"BioFerm is a web application platform which can be used for kinetic study, simulation and optimization of bioprocesses. The user is able to calculate the best initial conditions as well as overall operating conditions which will result in the highest product yield (or any user specified output). Kinetic modelling can also be done to further analyse the process and to calculate and estimate yield and kinetic parameters respectively. This allows the prediction of substrate, product and biomass concentrations over the bioprocess period. The BioFerm web application will be able to take in a variety of bioreactor configurations (batch, fed batch, continuous) and fit the results to a variety of models(inhibition and non-inhibition) to return the above mentioned parameters. The software is currently being written in Python using an open-source app framework(streamlit) to run the app but will later be written using Django, also a popular web framework.",3,"Kinetic modelling, optimization, Bioprocesses, Microbial growth, parameter estimation",graduated,https://www.youtube.com/live/pU-HosUM5-8?feature=shared&t=2315, +60,"Intellectual Property, Indigenous Knowledges, and the Rise of Open Data in Australian Environmental Archaeology",Carly Monks,Esther Plomp,"This project will investigate existing literature on the benefits, risks, and limitations of open data practices in Australian environmental archaeology, seeking to characterise the ethical and practical issues associated with the dissemination of data owned or stewarded (either wholly or in part) by Indigenous communities. Environmental archaeology, and its partner field of palaeoecology, is inherently interdisciplinary, drawing on diverse lines of evidence including faunal and botanical remains, geomorphological records, and Indigenous knowledges in order to understand past and present human-environmental relationships. +The project will consider the tensions between Western scientific and Indigenous epistemologies, including the ways in which ‘data’ are understood and connected (or disconnected) to people and places, and where the boundaries of ‘archaeological’ and ‘non-archaeological’ environmental records lie. This project will provide the groundwork for the development of a larger, collaborative project engaging Indigenous and non-Indigenous researchers to advance a Code of Conduct for Australian archaeologists and palaeoecologists seeking to work openly while supporting the rights of Indigenous communities to manage access as they consider appropriate.",3,"Australian archaeology, Open data, Indigenous Knowledge",graduated,, +61,MiSET Publication Standards: A tool for AI-assisted peer-review of experimental information,Fabienne Lucas,Sonika Tyagi,"The MiSET initiative aims to develop a minimum set of quality standards in the form of a quality assessment tool that evaluates the technical aspects of cytometry publications, and to fully integrate these flow cytometry standards into grant submission and publication requirements across scientific fields (Lucas et al., Cytometry A 2019).",3,"Rigor, Reproducibility, Peer-review, Publishing, Research quality defects, Experimental methods, Flow cytometry, Tool, AI-assisted peer-review",graduated,https://www.youtube.com/watch?v=2tezbbfJGu8&list=PL1CvC6Ez54KD01eg-XVq0AUHNEpG9dnrA&index=3, +62,Global Distribution of APOL1 Genetic variants,John Ogunsola,"Sam Haynes, Yo Yehudi","Genetic variants of APOL1 commonly found in people of recent African ancestry can predispose to chronic kidney disease. It is however unknown if and to what extent the variants are present outside of Africa. This project aims to create a visual representation of the global distribution of the frequencies of these genetic variants, by mining genomic information from publicly available datasets.",3,"Bioinformatics, Data visualization, Open educational resource",graduated,, +63,LA-CoNGA physics (Latin American alliance for Capacity buildiNG in Advanced physics),"Reina Camacho Toro, Alexander Martinez Mendez",Laura Ación,"LA-CoNGA physics is an Erasmus+ project, an European-Latinamerican network of 11 universities, 9 research institutions and 3 industrial partners (2 of them being in the data science field) in advanced physics. We aim to create a set of postgraduate courses in Advanced Physics (high energy physics and complex systems) that will be common and inter-institutional, supported by the installation of interconnected instrumentation laboratories. This program will be inserted as a specialization in the Physics masters of the 8 Latinamerican partners in Colombia, Ecuador, Peru and Venezuela. It will comply with the Bologna protocols and is based on three pillars: courses in physics theory/phenomenology, data science and instrumentation. + +We are guided by the principles of open science and education: +*Content should be engaging and pedagogical +*The content will be created and made available following the FAIR principles +*Reproducibility is the base of the data science pillar. We want to teach the students how to use the correct tools to work with large amounts of data but also create an environment where the reproducibility of their work, tasks and projects is inculcated and applied from the first day + +Our website: https://laconga.redclara.net +Our github repository: https://github.com/LA-CoNGA",3,"Open educational content, Data science training, Open science training",graduated,, +64,Junto Labs - Advancing Virtual Environments for Life Science Research and Active Learning,Lomax Boyd,Melissa Burke,"Inspired by the social clubs founded by Benjamin Franklin, the Junto Labs initiative seeks to provide life science researchers with an online space for pursuing collaborative research and supporting active learning. Life science laboratories can be open and highly collaborative spaces for in person research, learning and discovery. While online tools, such as Git and Jupyter notebooks, help facilitate openness and reproducibility among peers, they can also provide a highly creative and flexible medium for designing interactive educational experiences. The Junto Labs initiative aims to create a catalog of Jupyter notebooks that exemplify how to design virtual environments optimized for conducting research, facilitating mentorship, and encouraging active learning. Researchers would be able to more easily collaborate on active projects, but also expand active learning opportunities for students who may not otherwise have the chance to participate in research. Importantly, life science laboratories could use the resource to design and provide research and mentorship opportunities to students from under-resourced communities or universities where opportunities to participate in life science research are limited or nonexistent.",3,"Online research, Mentorship, Virtual environments, Jupyter notebooks",,, +65,metaNanoPype: a reproducible Nanopore python pipeline for metabarcoding,António Sousa,Hans-Rudolf Hotz,"The emergence of short-read NGS technologies have brought a profound knowledge to the field of microbial ecology/evolution through the taxonomic identification of microbial communities - metabarcoding. Although its main limitation resides on their short read-length that has been suppressed by long-read/real-time sequencing technologies such as Oxford Nanopore MinION. Currently, there are many standalone tools/algorithms to process this data inclusive bioinformatic pipelines but they lack a better integration. My proposal is the development of a modular python pipeline for nanopore metabarcoding data - metaNanoPype - with the following modules: (I) demultiplexing; (II) quality-assessment; (III) quality-filtering and trimming; (IV) taxonomic classification; (V) diversity analyses. Each module could include several options to allow flexibility. Each step could generate a log file used later to build a report in html/pdf format describing the versions, commands and references of software used. The report built would ensure reproducibility, transparency, acknowledgement and could be used as supplementary material of papers. metaNanoPype could be publicly available on github (open source) with further documentation published with github pages.",3,"Metabarcoding, Python, Reproducible",graduated,https://www.youtube.com/watch?v=kNQz0ap71yg&list=PL1CvC6Ez54KD01eg-XVq0AUHNEpG9dnrA&index=2, +66,MBiO: Designing an open-collaborative website in the field of molecular biology,Nihan Sultan Milat,"Michael Landi, Renato Alves, Toby Hodges","The field of molecular biology is a concept to discover, identify and explain mechanisms of everything about DNA, RNA and protein level in a cell. Despite it is a relatively young discipline, its prominence in the life sciences is becoming more and more popular. Within the scope of my project, I aim to evaluate the paper on molecular biology studies and make them available for everyone. Choosing a weekly topic and summarizing it that everyone can understand is the main idea. As a workflow, I aim to write a brief introduction to introduce the paper and its authors, the purpose of the study, and present the results. Briefly, I would like to design a website which is publicly accessible. I aim to make this website as a resource for the academic community, students and all other folks who want to read and learn. At the same time, I plan to prepare a section where questions can be asked in order to share with other readers to make a discussing community about the related article. I want to provide a connection between students or researchers in this field of science to improve knowledge, share and even find new ideas.",3,"Open educational resource, Open-collaborative, Molecular biology",graduated,https://www.youtube.com/watch?v=2tezbbfJGu8&list=PL1CvC6Ez54KD01eg-XVq0AUHNEpG9dnrA&index=3, +67,"Open Life Science (OLS) Program, a driver of open science skills among early stage researchers and young leaders: mentee perspective",Muhammet Celik,"Bérénice Batut, Yo Yehudi, Malvika Sharan","OLS is a great platform to open life science with the objective of train young researchers towards the practices in open science skills. I am a graduand of OLS-2 that recently concluded and coming out of that program I felt that there is tremendous value in the program. However, this might not be reaching out to as many as possible. I think, one way of the extending the outreach beyond what else has been done is perhaps to pen down the experience of the participants of the previous program. As a participant myself, I can see how there many ways, one could promote this and share the journey with the readers, especially with the young generation and highlight the essence of this program. Thus, I took it motivation to myself to contribute in this direction by re-joining the OLS-3 program and having this it self as a project with the goal of coming up as a tangible document in the form of a publication to be shared with the community at large.",3,"Value of OLS, Participant perspective, Internalize openess, Pendown",graduated,, +68,Documentation enhancement with open science practices in sktime,"Afzal Ansari, Abdulelah Al Mesfer",Toby Hodges,"sktime is a new Python toolbox for machine learning with time series (https://github.com/alan-turing-institute/sktime). It provides state-of-the-art time series algorithms and scikit-learn compatible tools for building, tuning and evaluating complex models. The goal of this project is to improve sktime’s online documentation with a specific focus on documenting algorithm contributors. Algorithms form a major part of sktime. They require special expertise in their development and maintenance. We plan to enhance the existing documentation by making algorithm contributors more visible. The aim is (i) to make it easier for users and other developers to directly get in touch with the algorithm experts to ask questions or suggest code improvements and (ii) to recognize their contributions more visibly and formally to encourage long-term maintenance of their contributions. sktime has already defined a new community role as part of their governance guidelines to ensure that algorithm contributors have extra rights and responsibilities with regard to their algorithm. However, up-to-date documentation listing the current contributors and links to their algorithms is currently missing. Optionally, we can add other information like literature references. We plan to automate the generation of this documentation by making use of the existing documentation and other components such as CODEOWNERS file and __author__ strings in Python files.",3,"sktime, Documentation, Algorithm maintainer, Codeowner",graduated,https://www.youtube.com/watch?v=2tezbbfJGu8&list=PL1CvC6Ez54KD01eg-XVq0AUHNEpG9dnrA&index=3, +69,An Open Source Service Area for Turing research projects,Sarah Gibson,Meag Doherty,"This project is to develop a Turing Service Area in Open Source that will provide formal support in open working and embedding best practices of open software development into Turing projects. This service area will create an Open Developer Advocate position whose role will be to work with and guide projects into working openly and either build a community around their open project, or make a contribution to an existing open project. +This guidance would take the form of regular meetings, co-working and/or drop-in sessions and would address roadmapping of the project in terms of its open goals, and developing project policies for engaging openly. The area would work with the Turing Way project to draw on existing material and contribute new processes there.",3,"Open-source, Research, Strategy",graduated,, +70,Towards FAIRer phytolith data,"Javier Ruiz Pérez, Juan José García-Granero, Carla Lancelotti, Marco Madella",Emma Karoune,"Phytoliths are microfossils of plants used world-wide to address a variety of questions in fields like archaeology, palaeoecology and palaeontology. Diverse laboratory procedures, analyses and identification criteria are used resulting from different research traditions. Some steps, such as the normalisation of nomenclature through the International Phytolith Society, have been promoted to standardise the phytolith analysis and the subsequent publication of data. However, the standardisation of phytolith research and data publication is still far from being achieved. Moreover, a recent assessment of the data sharing practices within the phytolith community found only half of the publications share some form of data and the majority do not provide reusable data. This project has grown from initial efforts by Emma Karoune during OLS2 to raise awareness of issues with poor data sharing practice. It is part of a broader initiative supported by the International Phytolith Society on data sharing and represents the first steps towards the FAIRification of phytolith data: an evaluation of sharing practices in phytolith research; the creation of a GitHub repository for collaborative use by this working group and in the forthcoming FAIRification project; and the development of a webpage to provide the community with information as the project proceeds.",3,"FAIR, Data sharing, Palaeobotany, Phytolith research, Archaeology, Palaeoecology",graduated,, +71,Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers,"Arvinpreet Kaur, Ashutosh Tiwari, Robandeep Kaur, Mehak Chopra, Harpreet Singh, Prash Suravajhala","Prash Suravajhala, Harpreet Singh, Bérénice Batut","Obesity causes approximately 4.7 million premature deaths annually, which accounts for a loss of ca. 8% globally. Obesity is an outcome of complex, heritable, and multi-factorial interaction of multiple genes, environmental factors, and behavioral traits that makes management and prevention challenging in the human population (Rao et al., 2014). Experimental research has demonstrated that altered metabolites in multiple metabolic pathways are associated with obesity (Zhao et al.,2016). Alteration in the proportion of bacteroidetes and firmicutes in the gut microbiome can trigger obesity. The gut microbiome's influence on obesity is much more complicated than the imbalance of these bacteria species. Modulation of the gut microbiome through diet, prebiotics, surgery, and antibiotics significantly affects the obesity epidemic (John & Mullin, 2016). It is one of the enormous global health problems associated with increased morbidity and mortality mediated by its association with several other metabolic disorders (Saini et al., 2018). We aim to target obesity and diabetes-associated metabolic disorders and annotate the genes common to these complex diseases using a systems genomic integrated approach, thereby using Galaxy as a platform.",3,"Obesity, Diabetes, Gut microbiome, Linkage disequilibrium, pleiotropy",graduated,https://www.youtube.com/live/kNQz0ap71yg?feature=shared&t=2547, +72,Boosting research visibility using Preprints,"Didik Utomo, Hilyatuz Zahroh, Zenita Milla Luthfiya",Iratxe Puebla,"AKADEMISI PREPRINTS is a free distribution service of preprints from multidisciplinary fields. The server plans to include connection hub to journals and open peer review community. By doing so, we hope to promote the transparency and quick visibility of research results to the public.",3,"Preprints, Open resource, Open access, Publishing",graduated,https://www.youtube.com/live/kNQz0ap71yg?feature=shared&t=2547, +73,Open Science Community in Saudi Arabia,Batool Almarzouq,Anelda van der Walt,"Although there is an increasing number of initiatives in Saudi Arabia to raise awareness in Data Science (DS) and connect researchers in artificial intelligence (AI), there is no single community dedicated to stimulating responsible research practices and Open Science policies. I wish (with the help of a mentor) to establish an open science community in Saudi Arabia. Our target groups are researchers and students who are open and curious about open science but have little to no experience with open science practices.",3,"Open science, Saudi Arabia, Community",graduated,, +74,COMPUTATIONAL DRUG DISCOVERY (CORONAVIRUS),Anshika Sah,Yo Yehudi,"Biological activity data was retrieved from the ChEMBL database and pre-processed by selecting the target which was SARS coronavirus 3C-like proteinase in the project and the data frame of the target protein was filtered by removing the molecules which do not have the standard type as IC50 and those having missing value for standard value. +The data was distributed as active, inactive, and intermediate by the IC50 values. +The SMILES notation (representing the unique chemical structure of compounds) from the dataset was used to compute the molecular descriptors. +Lipinski's descriptors are used in the project which considers molecular weight, LogP, number of hydrogen bond donors, and number of hydrogen bond acceptors. These descriptors are related to the pharmacokinetic properties of molecules. +The exploratory data analysis was performed via Lipinski's descriptors. Simple box plots and scatter plots were plotted to discern differences between the active and inactive sets of compounds. +Mann-Whitney U test was performed for each descriptor to determine the statistically significant difference between active and inactive molecules.",3,"SARS coronavirus 3C-like proteinase, IC50, pIC50, Bioactivity, Lipinski's rule, Scatter plot, Frequency plot, Box plot, Mann-Whitney test",graduated,https://www.youtube.com/live/kNQz0ap71yg?feature=shared&t=1102, +75,Skills for Open Agrobiodiversity Data,Irene Ramos,Piraveen Gopalasingam,"I aim to develop training materials to support the use of open data by researchers working on agrobiodiversity conservation. At CONABIO (Mexico), a governmental agency that coordinates biodiversity data collection, I collaborate in the development of an Agrobiodiversity Information System (SIAgroBD); my role involves technical and community management responsibilities. Currently, twelve teams of students and researchers from different institutions contribute to field data collection for SIAgroBD. While we are committed to open practices at CONABIO and all collected data are open, some external contributors lack the skills to use these data, even if they have helped collect them, and are not familiar with open practices. Thus my project consists in developing training materials (OER) for an introductory workshop on open data with a focus on FAIR principles, biodiversity standards, effective management strategies, among other skills that encourage contributors to become active users of data apart from collectors. The integration of social and biological information and the use of Indigenous data are distinctive features of agrobiodiversity research in Mexico that will also be addressed. I expect this serves as a prototype for advanced training modules that could be used by future contributors or other researchers working on agrobiodiversity topics.",3,"Agrobiodiversity, Open Data, Open Education Resource",graduated,, +76,Postdoc Empirical Legal Research Open Notebook,Jennifer Miller,Beth Duckles,"The project is an open notebook living systematic review of legal documents related to postdoctoral scholars and appointments (postdocs). The project aims to use the methods of empirical legal scholarship to describe and categorize the ways postdoctoral scholars and their appointments have been involved in the legal system. Briefly, empirical legal scholarship is a form of qualitative or mixed-methods research, often involving content analysis, that uses legal documents or decisions as its data source. We are not aware of any other research applying this method or data source to the study of postdocs. In fact, there has been little research of any kind on the legal aspects of postdoc appointments. + +Building on a “file drawer” paper by Jennifer Miller (with Kristina Van Buskirk), we frame our project around the question of whether postdocs are employees or students. Based on economic theory, we expect the types of cases to reflect whether postdocs are employees producing in a labor market or students consuming in a services market. + +More information about the project is available on GitHub https://github.com/JMMaok/postdoc/projects and Zotero https://www.zotero.org/groups/",3,"Postdoc, Empirical legal research, Systematic review, Public policy, Open notebook science",graduated,https://www.youtube.com/watch?v=2tezbbfJGu8&list=PL1CvC6Ez54KD01eg-XVq0AUHNEpG9dnrA&index=3, +77,The UKCRC Tissue Directory and Coordination Centre,"Emma Lawrence, Jessica Sims",Sarah Gibson,"The mission of the UKCRC Tissue Directory and Coordination Centre (UKCRC TDCC) is to maximise the use, value and impact of the UK's human sample resources in the UK, and beyond. The UKCRC TDCC is creating a world-leading, research-enabling, and networked biobanking infrastructure to facilitate the discovery and use of the UK's human samples and data. +The UKCRC TDCC works to help researchers discover samples and data, help sample resources improve their data systems for sharing, and harmonise policy relating to the discovery and use of samples and data. +The work of the UKCRC TDCC is guided by the belief that the biomedical research ecosystem should be based on open standards, open-science, and pre-competitive collaboration.",3,"Biobanking, Research, Samples, Biospecimens, COVID 19",graduated,https://www.youtube.com/live/pU-HosUM5-8?feature=shared&t=2315, +78,Development of language resources for Hausa Natural Language Processing,"Shamsuddeen Muhammad, Ibrahim Said Ahmad, Ruqayya Nasir Iro",Laura Carter,"This work aims to create a Nigerian sentiment corpus, sentiment, and hate speech lexicon through manual annotation for three different languages (Hausa, Igbo, Yoruba). Our method for the creation of these language resources is as follows: + + Nigerian Sentiment Corpus: To create the sentiment corpus, tweets from major Nigerian news headlines for each of the three languages will be crawled from Twitter using an existing Python crawler we developed. Ten thousand tweets will be extracted per language via the Twitter API. Thereafter, the tweets will be annotated by native annotators for each of the languages. These annotators will be hired and trained to perform the annotation. The annotation tasks consist of labeling each tweet as either positive, negative or neutral.To mitigate errors and bias, each dataset will be annotated by three different annotators. After which the project team will compute the kappa agreement between the annotators + + Nigerian Sentiment Lexicon: In the same way, manual annotation of the tweets will be used to create the sentiment lexicon for each of the three languages. The sentiment lexicon annotation task involves Identifying sentiment bearing words from each tweet and assigning a sentiment score between +1 to +5 (with 1 being the most negative sentiment and +5 the most positive sentiment). + + Nigerian Hate Speech Lexicon: Extreme negative sentiment from the sentiment lexicon will be used to develop the hate speech lexicon. + + Annotation tool: We plan to use a web-based annotation tool, brat (Stenetorp et al., 2012) which has been proved to be efficient for this type of task by many researchers. The annotators must be native speakers of the language and follow the annotation guidelines provided by the project teams. + + HausaNLP aims to create more language resources that can be used to train models in machine learning.",3,"Natural Language Processing, Low-resources, Machine Learning, Corpus, Language resources",graduated,https://www.youtube.com/watch?v=2tezbbfJGu8&list=PL1CvC6Ez54KD01eg-XVq0AUHNEpG9dnrA&index=3, +79,"ProCancer-I - An AI Platform integrating imaging data and models, supporting precision care through prostate cancer's continuum","Haridimos Kondylakis, Stelios Sfakianakis",Harpreet Singh,"In Europe, prostate cancer (PCa) is the second most frequent type of cancer in men and the third most lethal. Current clinical practices, often leading to overdiagnosis and overtreatment of indolent tumors, suffer from a lack of precision calling for advanced AI models to go beyond SoA. The ProCAncer-I project brings together 20 partners, including PCa centers of reference, world leaders in AI, and innovative SMEs, with the objective to design, develop, and sustain a cloud-based, secure European Image Infrastructure with tools and services for data handling. The platform hosts the largest collection of PCa multi-parametric (mp)MRI, anonymized image data worldwide (>17,000 cases), based on data donorship, in line with EU legislation (GDPR). Robust AI models are developed, based on novel ensemble learning methodologies, leading to vendor-specific and -neutral AI models for addressing 8 PCa clinical scenarios. To accelerate the clinical translation of PCa AI models, we focus on improving the trust of the solutions with respect to fairness, safety, explainability, and reproducibility. A roadmap for AI models certification is defined, interacting with regulatory authorities, thus contributing to a European regulatory roadmap for validating the effectiveness of AI-based models for clinical decision making.",3,"Prostate Cancer, Open Data, PCA",graduated,https://www.youtube.com/watch?v=2tezbbfJGu8&list=PL1CvC6Ez54KD01eg-XVq0AUHNEpG9dnrA&index=3, +80,Seeding,"Dario Pescini, Marzia Di Filippo, Chiara Damiani, Paolo Pedaletti",Bérénice Batut,"The long term project objective is to establish in my university a core-team/lab able to aid the community to design and implement open science projects. + In order to start this long term project I believe that working on a use case would help various aspects. + It will help to coalesce and uniform the team domain knowledge, to start to get involved also the technical and administrative part and, to gain visibility and credibility. + The use case is a computational framework to aid the metabolism modelling, that we are currently developing in my lab and it is on the way to be published. + The publication that will accompany this framework is near to be ready to be submitted and the framework itself is wholly developed with open software. + This use case, in particular, is suitable to follow various aspects of the Open Science approach, from the journal paper management to the software publication. + I think that this application can be great opportunity to learn the open science approach in an organic way and to discover how to do it.",3,"community building, Systems Biology, Metabolism, Quantitative Life Science, Technology, Infrastructure",graduated,, +81,Creating a network of Open Science ambassadors in Spanish Health Research Institutes,"Marta Marin, Santi Rello Varona, Iris San Pedro",Joyce Kao,"This project will create a network of Open Science (OS) ambassadors in Spanish Health Research Institutes (HRI). Thus, aiming to implement OS in HRI by raising consciousness about its principles that apply to this particular field (i.e., reproducibility, transparency, dissemination and data sharing). To induce an easy and comprehensive transition to OS, researchers will be provided with access to the best practices’ Toolkits for OS implementation. As part of their activity, OS ambassadors will be encouraged to engage with the general public, patients and the future generations of scientists. + + To accomplish that, professionals in the HRI willing to be trained to become OS ambassadors will be identified and recruited. This network will be in charge of promoting OS in their institutions. The ambassadors will identify potential OS activities that can be kickstarted, give solutions to questions raised and advice on best practices on their institutions. + + At the end of this project: a network will be created, together with a framework to maintain this group active, and ambassadors will disseminate the knowledge gathered about application of OS principles in health research in their institutes. That would allow the progressive implementation of OS in HRI.",3,"Health Research Institutes, Network of Open Science Ambassadors, Best practices' Toolkits, Open Science implementation",graduated,https://www.youtube.com/live/kNQz0ap71yg?feature=shared&t=173, +82,FAIR MAFIL: FAIRification of imaging/neurophysiological data of MAFIL CEITEC MUNI laboratory for EOSC,"Michal Růžička, Michal Javornik, Zdenka Dudova","Louise Bezuidenhout, Bérénice Batut","Multimodal and Functional Imaging Laboratory (MAFIL, https://mafil.ceitec.cz/en/) is one of core facilities at CEITEC MUNI and part of national large research infrastructure Czech-BioImaging and European research infrastructure Euro-BioImaging. The main role is to provide access to medical imaging technologies – mainly magnetic resonance imaging accompanied with various electrophysiological methods. + Within this project we aim at preparing our data and metadata of neuroimaging datasets processed in MAFIL to follow FAIR principles and be ready for publication and cloud-based processing in EOSC. As MAFIL is “open access” laboratory, i.e. provides researchers outside of CEITEC access to the laboratories, technologies, and experts of CEITEC to conduct their analysis and support their research needs, the procedures will be document and training provided to MAFIL users (“customers”) to be aware of FAIRification procedures and able to apply them on their data making them “EOSC ready”. The outputs and experiences will also be shared with other labs/nodes within Czech-BioImaging/Euro-BioImaging infrastructures. + Thus, we would very appreciate and welcome any training, help, advice, or good practise on FAIRification and anonymisation of neuroimaging datasets.",3,,graduated,https://www.youtube.com/live/kNQz0ap71yg?feature=shared&t=1887, +83,The Turing Way - Developing a community health report and assessing its impact on the wider data science community,Ali Humayun,Malvika Sharan,"In The Turing Way, we want to systematically understand community practices including the community engagement pathways, contributors’ roles and nature of their participation that have been successful at supporting its community of diverse contributors. Simultaneously, we want to identify factors that may currently prohibit short or long term commitments of our contributors and how they can be further supported. + + With my participation in OLS-3, I will develop a community health report of the project, capturing community development aspects from growth to retention. I will build upon the Open Source community health metric (https://wiki.mozilla.org/Contribute/Community_Health), which involves evaluating contributors’ group that is actively involved in a project, number of new contributors that join the project, and members who leave. For online projects, it can also involve tracking the number of community ambassadors, the number of return attendees to events and the rate of churned attendees. Developing an ideal metric in this project will require further deliberation and consultation from The Turing Way team and core contributors. Hence, this project will be collaboratively designed with other community members by actively inviting their contributions and thoughts.",3,,,, +84,Developing and embedding open science practices within the Research Application Management team at Turing,Aida Mehonic,Malvika Sharan,"I have just started a new role as a Research Application Manager at the Turing Institute. My responsibility is to define my own workplan as well as guide the development of the workplans of 2 other Research Application Managers once they are recruited. This is a new role and we do not yet have a blueprint for what a good research application manager at Turing looks like. + + My goal is to embed open science practices into the philosophy and the workflow of the RAM team, as much as possible within the constraints of a given project and Theme. + + Since I am personally new to the open science community, I would benefit from OLS training and mentorship. My ambition is to ensure that we create a good basis for open science practices within ASG and hopefully in other parts of Turing that RAMs interface with.",3,"Open Science workflow, Open source code, Stakeholder engagement, Research application, ASG",graduated,, +85,GyaNamuna: Virtual School Connecting Rural Students To The World,"Prakriti Karki, Mohan Gupta, Ujwal Shrestha",Teresa Laguna,"Project aims to connect rural school students to the cities of Nepal and other countries. Pandemic has helped few Nepalese rural schools get internet facilities. Our project will take help of internet, online conferencing tool and team of young people from different disciplines to connect our little heroes to the outer world to help them learn language, better understand external culture, meeting new friends, learning science, doing DIY innovations and initiating makerspace movement through virtual collaborative environment.",3,"online, village, education, DIY, Makerspace",graduated,https://www.youtube.com/watch?v=2tezbbfJGu8&list=PL1CvC6Ez54KD01eg-XVq0AUHNEpG9dnrA&index=3, +86,Open Source Project for Evaluating Reproducibility Trends in AI Research Projects,Martina Vilas,Anna Krystalli,"In The Turing Way, we define reproducible research as work that can be independently recreated using the same data and code from the original study. Reproducible research is necessary to ensure that scientific output can be trusted and built upon. Despite this importance, many studies are difficult to reproduce, including those involving the application of a computational model. + + To overcome this ""Reproducibility Crisis"" we need to identify and standardized reproducible practices that researchers can apply in their projects from the start. But these may vary across fields and methods. In this context, this project will quantitatively assess and derive those research practices that can ensure the reproducibility of studies involving the development and application of AI models for understanding cognitive-systems, with the overarching goal of increasing their transparency and trustworthiness. + + As a cognitive neuroscientist, I will develop a prototype of this assessment by identifying and openly documenting reproducible practices of computational modelling projects in my field. With my participation in OLS-3, I will review the reproducible practices of gold-standard studies and assess the level of transparency maintained in their research. I will also curate relevant guidelines and expert-recommendations. The findings will be collaboratively reported as chapters in The Turing Way.",3,"Reproducibility, AI trends, Data Science, Reproducible research practices, Computational research methods, Research software",graduated,, +87,Towards an infrastructure for open-source (online) training in data science and AI,Mishka Nemes,Jez Cope,"This project aims to devise, develop and implement an online tool that allows interested users to suggest or contribute to training courses in an open source fashion. The tool could involve a GitHub repository where users can suggest training ideas, review and comment on existing courses, or share their resources for the larger community. As the national institute for data science and AI promoting open, expert and ethical leadership, I believe the Institute and my team would be well placed to support such an engagement stream with the wider community of trainers and researchers.",3,"Education, Training, Data science, AI, Open infrastructure, Community",graduated,https://www.youtube.com/watch?v=2tezbbfJGu8&list=PL1CvC6Ez54KD01eg-XVq0AUHNEpG9dnrA&index=3, +88,Implementing a series of pedagogical games to teach pupils and citizens (metagenomic) data analysis,"Teresa Müller, Alireza Khanteymoori, Masako Kaufmann, Florian Heyl",Yvan Le Bras,"As part of the Street Science Community, we successfully developed the BeerDeCoded project: a hands-on workshop for pupils and citizens with the general aim of scientific outreach. During these workshops, we help participants to extract and identify different yeasts contained in a beer sample. The identification is performed by sequencing the extracted yeast DNA, using our self-developed protocols, and analyzing the generated reads via an easy and straightforward Galaxy workflow. + Because of the pandemic situation, we cannot run face-to-face workshops. For a more scalable outreach to the public and the long term sustainability of the project, we want to implement the data analysis as a series of fun and easy-to-understand online games. We will use already existing games to get participants interested and give them the biological background necessary for our project. Primarily we will develop a game, which teaches the data analysis of the BeerDeCoded project. Here, participants will get familiar with Galaxy, run and play with their first data analysis pipeline. They are going to compare their results with others and use different available datasets. For this game, we will work with the Galaxy community on the technical part and with teachers on the pedagogical and gamification side.",3,"Citizens Science, DNA sequencing, Metagenomics, Galaxy",graduated,https://www.youtube.com/live/kNQz0ap71yg?feature=shared&t=602, +89,"An open educational resource to introduce fundamental concepts of GNU/Linux, terminal usage, Bash/AWK scripting, and Git/GitHub for Bioinformatics",Andres Sebastian Ayala Ruano,"Alexander Martinez Mendez, Julien Colomb","This project aims to create an **open educational resource** that introduces important concepts for aspiring Bioinformaticians, **written in Spanish**. Topics included in this resource are: + +* The basics of GNU/Linux +* Jupyter Lab +* Terminal usage +* Text and file processing command-line tools (i.e. grep, sed), regex, and pipes +* Text and file processing Bioinformatics exercises +* Make to install software +* SAM Tools: useful pipelines and software for Bioinformatics +* AWK: A programming language for text file processing +* Bash: Shell and programming language +* Git and GitHub for version control + +As part of a boot camp organized by [RSG Ecuador](https://https://rsg-ecuador.iscbsc.org) and [iGEM Ecuador](https://www.facebook.com/iGEMECUADOR), we generated the first version of this resource, available as an [e-book](https://rsg-ecuador.github.io/unix.bioinfo.rsgecuador/) powered by [Jupyter Book](https://jupyterbook.org) and GitHub. However, this resource has not been launched yet because we have doubts about open licenses, permissions to use external images, and other topics that it would be nice to learn at the *OLS-4*.",4,"version control, training and education, programming",graduated,, +90,Genestorian: An Open Source web application for model organism collections,Manuel Lera Ramirez,Sam Haynes,"I want to develop [Genestorian](https://www.genestorian.org/), a web application to manage collections of model organism strains and recombinant DNA, which will store the genetic engineering steps followed to generate new entities from existing ones. The project would consist on developing: + +1. A standard file format to document genetic engineering steps +2. A web application to generate this documentation in the browser or programmatically +3. A web application with a database to store such information + +None of the above software pieces, which are all essential for open reproducible science, exists as Open Source, and proprietary solutions do not cover the use-case of model organism research. + +Essentially, Genestorian will be a web application that researchers use routinely to consult the ""genealogy"" of existing biological resources, plan the generation of new resources, and attach experimental data supporting their successful generation. + +The cornerstone of this project is the mentioned file format. It will be similar to a data structure for a family tree: it will store a list of entities, and a list of objects describing their relation. Something like this: + +``` +{ + ""entities"": [{id:1, ...},{id:2, ...},{id:3, ...}], + ""steps"": [ + { + ""inputs_ids"": [1,2], + ""output_id"": 3, + ""method"": {...}, + ""proofs"": [{...},{...}] + }, + {...} + ] +} +```",4,"web application, genetic engineering, reproducible research",,, +91,Multibeam electron microscopy for imaging large tissue volumes,Arent Kievits,"Esther Plomp, Martin Jones","Recent developments in electron microscopy have led to a significant scale-up in the imaging of biological tissues, making throughput a major bottleneck for further progress. Electron microscopes are inherently throughput limited. A new type of scanning electron microscopy, the multibeam electron microscopy, speeds up imaging by scanning the sample with an array of beams instead of a single beam. Furthermore, this microscope makes use of a new detection system based on transmitted electrons and scintillation photons, which provides comparable information to conventional detection methods. To make use of the full potential of this microscope, new methods for data management, data analysis and visualization have to be designed. For example, we would like to employ deep learning methods for automatic segmentation. We would like to apply the multibeam electron microscope to study mitotic cells, zebrafish development and pancreatic stress.",4,"electoron microscopy and imaging, deep learning",graduated,https://www.youtube.com/watch?v=EdQU32ap500&list=PL1CvC6Ez54KCQDLgMKuFlcj2H6zsBi35D, +92,Open data for nanosystem synthesis experimental conditions,"Guillermo Luciano Fiorini, Diego Onna, Tobías Aprea",Gracielle Higino,"We propose to build a database that compiles literature data for the Stöber synthesis of sílica nanoparticles. This data is aimed to generate a database for other studies, such as statistical and machine learning models to guide the design and synthesis of calibrated and monodispersed silica nanoparticles by the Stöber method. The data should follow the FAIR principles to make it findable, accessible, interoperable, and reusable, making it public and available for any person that is interested in the study of this synthesis. We also aim at building a community of contributors of new synthesis data to enrich the dataset that will allow better models for Stöber synthesis to be studied. Our long-term vision is that the nanosynthesis research community opens and shares its data as this will advance the nanosynthesis field in a more sustainable way globally.",4,"database, FAIR principles, research community",graduated,, +93,Grassroots: Nurturing the EMBL Bio-IT Community,Lisanna Paladin,"Emmy Tsang, Dave Clements","[**Bio-IT**](https://bio-it.embl.de) project at the [European Molecular Biology Laboratory](https://www.embl.org) (EMBL) is a community initiative aiming at: + +- delivering **training** in computational research skills; +- creating connections between **community** members; +- developing and maintaining resources and supporting **infrastructure**; +- disseminating relevant **information** throughout the community. + +In order to strengthen the community interactions, Bio-IT launched the [**Grassroots** consulting initiative](https://bio-it.embl.de/grassroots-consulting/), listing volunteers among EMBL Staff interested in providing assistance on a wide range of computational topics. Building on this effort, I aim at expanding the crowdsourcing of Bio-IT's activities and supporting the **community of practice at EMBL**. In line with Open Science objectives, a culture of sharing (of skills, resources, data and ideas) within the institute will also foster the same culture beyond it. Within OLS program, I will elaborate a **Grassroots project strategic plan** by: + +- identifying actionable information on the current interaction with the community; +- performing a SWOT analysis of community building strategies at EMBL, in particular: +- analysing EMBL-specific challenges and developing strategies to address them; +- defining the project goals, milestones and deliverables and stating them publicly. + +The objectives of the project are: +- strengthening peer-consulting and internal **communication**, +- acknowledging Bio-IT **contributors** and give them visibility, +- renewing the **community interest** in Bio-IT and computational best practices.",4,"training and education, research community, peer consulting",,, +94,Balconnect - A network of private outdoor areas improving urban ecoliteracy and biodiversity,Adel Sarvary,Emma Karoune,"Balconnect is a social and environmental intervention with the long-term goal of using open-source, emerging data-driven technologies and open science tools to motivate and enable urbanites to bring active daily experiences of real nature into their lives, as well as to provide them with tools not only to improve their direct, individual natural environment, but to conserve local biodiversity and ecosystem services as well. + +Balconnect aims at building knowledge-based people-plant interactions using open, community-focused practices and augmented collaborative learning, while mapping and building a structured network of metropolitan outdoor ornamental plants raised on window sills, balconies, terraces and backyards. +As the open database is being built, participants could gradually: +- Document and visualize their personal eco-legacy by learning and sharing nature with their communities (through data, experiences, plants, cultural products). +- Increase demand for locally cultivated and native plants. +- Consciously create biodiverse green patches in private outdoor areas. +- Collect valuable data and conduct open research for science. +- Make cities more liveable, reducing urban green inequalities. +- Influence local government decisions on city planning, green infrastructure and nature-based solutions.",4,"biodiversity, research community, green infrastructure, policymaking",graduated,https://www.youtube.com/watch?v=EdQU32ap500&list=PL1CvC6Ez54KCQDLgMKuFlcj2H6zsBi35D, +95,"Generic data stewards in the Netherlands: who they are, what they do, and who they could become",Elisa Rodenburg,"Carly Monks, Alexandra Holinski","In my project, I want to interview several colleagues/peers who were hired or recently started working as generic data stewards at Dutch universities, and, to some extent, Dutch Universities of Applied Sciences – I am one of them. I will rework these interviews into blog posts and analyse what I learnt from these interviews. The interviews will focus on the following elements: +1. What is their background, how did they enter this job? +2. What is expected from them in this role? +3. What is their role/position within the landscape of RDM and Open Science support at their institution? +4. What skills and competencies do they already have? +5. What skills and competencies would they like or need to acquire? +6. What does a possible career path look like for them? + +I will analyse these interviews to make suggestions about necessary training for new generic data stewards, why (and how) they are necessary for the institution, and their possible career paths. We have a blog about the RDM Community at the VU, which is meant to showcase the RDM Community. This is a possible location for my blogs and other progress made in the project.",4,"data stewards, research community, interview",,, +96,Open and reproducible data analysis for wet lab neuroscientists,Sara Villa,Hans-Rudolf Hotz,"My project aims to tackle the big gap between the new trend of RNA sequencing analysis and massive expansion of datasets, and the difficulties for wet lab scientists to use this data and even review it when being published. I would also like to create awareness in my community about the necessity on implementing open science and reproducibility tools. +I would like to: +1st, publish a tutorial from basics level to help people understand the technology and the data analysis behind RNA sequencing. Implement open science tools for this, and introduce every scientist to its existence and need. +2nd, create a reproducible analysis pipeline, based on my existent one, but incorporating reproducibility basics such as version control and workflows, so researchers can see how the tutorial would work from an existent example.",4,"training and education, reproducible research, sequencing",graduated,, +97,Building the Research Software Engineering (RSE) Association in Asia region,Saranjeet Kaur Bhogal,Anne Fouilloux,"We plan to create a ""Research Software Engineering Association in Asia region -- RSE Association (Asia) "". The motive of this association would be to emphasize the importance of good software practices to be adopted by researchers in the Asian academia. Software and programming plays an important part of most of the research in these times. Yet, academia has not fully adopted good modern software practices and principles. We also plan to create an awareness of the Research Software Engineering (RSE) role in Asian academia so that people who have an expertise in software as well as research find a firm footing in academia. The plan in this project is to first build a community of interested people. We would also like to build the technical set-up required for this project like a GitHub repository for easy collaboration; a website which would describe the aims of this association, and would include information on further events of this association; a mailing list which people can use to join this association easily, a Twitter account, and a slack channel in the global RSE slack. This project is highly inspired from the [Society of Research Software Engineering](https://society-rse.org/) in the UK. Saranjeet Kaur Bhogal is the primary applicant of this project, and the one who initiated the project, and came up with the idea.",4,"research community, research software engineering",graduated,https://www.youtube.com/watch?v=EdQU32ap500&list=PL1CvC6Ez54KCQDLgMKuFlcj2H6zsBi35D, +98,Encouraging Responsible AI Through An Open Framework for Synthetic Data Generation and Assessment,"Erika Salomon, Caitlin Augustin",Fotis Psomopoulos,"Operating from a place of data for co-liberation, we have three complementary goals: conduct a landscape analysis of open source synthetic data projects, ask critical questions about the embedded assumptions and ethical considerations in generating synthetic data, and recommend appropriate approaches to synthetic generation for multiple case studies. + +We see an urgent need for this work - while methodologies have become more common in the financial policy realm, most applied data researchers outside of large financial or tech companies do not have access to - nor an understanding of - the state of the art approaches, how to evaluate appropriateness of generation for their use cases, and how to evaluate synthetic data fitness for use. + +We are expressly sector-agnostic, bringing expertise from health, environment, and education backgrounds to this problem - all sectors with a need for privacy-protecting solutions. Building on sector-agnostic frameworks such as Datasheets for Datasets, and the very recent CDEI-UK PETs Adoption Guide we aim to deliver a similarly sector-agnostic framework for synthetic data generation. With our interdisciplinary background, we will approach the development of such a framework in a way that acknowledges the political nature of data production and openly consider questions of bias, fairness, and ethical AI.",4,"synthetic data, Ethical AI",,, +99,Talleres Open Source community platform,Cecilia Herbert,Yo Yehudi,"Our initiative is called “Talleres Open Source” (Open Source Workshops in Spanish), a community of scientists teaching and learning about open source tools in Spanish. We organize workshops in which a trainer with experience in a certain method shows others how to apply it using open source tools, and attendees give it a try with short exercises. For example, “Data visualization using Python”, or “Digital Fabrication with FreeCAD”. We have hosted two cycles of 4 workshops spanning 1 month, with both software and hardware tools, as well as two stand-alone events about design heuristics with a local fablab. + +The goal of this project is to find common problems within Latin American scientific communities and hold workshops and training courses to tackle these problems. Each of these workshops serve as a way to connect people facing the same problem, introduce them to open source tools and concepts, and enable sharing resources. We hope attendees finish each workshop with a concrete first impression about the method and hands-on experience with the tool to reduce the barrier to adoption.",4,"training and education, data visualisation, research community",graduated,, +100,Creating an open database for carbon foot printing of buildings in Ghana,Michael Addy,"Yvan Le Bras, Kate Simpson","There is a considerable gap in cases of sub-Saharan African countries regarding assessment of embodied energy of building materials and operational energy of various building types. Lack of open data remains a critical barrier to closing this gap. Creating an open and accessible database of embodied energy of building materials, and operational energy of building typologies will be key in establishing the carbon footprint of buildings in Ghana. The development of an online platform will also allow interested groups, individuals and cooperation’s to submit key information needed for the computation of energy outputs in buildings. The aim of the project is to set up the infrastructure to launch an open database for carbon foot printing of buildings in Ghana, following best practice in open science principles.",4,"energy, database, carbon footprinting",graduated,https://www.youtube.com/watch?v=EdQU32ap500&list=PL1CvC6Ez54KCQDLgMKuFlcj2H6zsBi35D, +101,Environmental mapping for urban farming project,Florence Okoye,Lilly Winfree,"Portable land is an urban DIY Agriculture project which aims to create a distributed farm. Currently we have four dedicated sites based in the West Midlands - a washyard which has been converted into a growing space, a community grow room, a patio for urban farming and an indoor DIY aquaponics setup. We are also part of a larger community of urban farmers and DIY horticulturalists in the West Midlands, sharing knowledge and supporting collective organising of growers and urban naturalists. + +The primary goal of the project is to create a distributed network of growers and land guardians, but in order to achieve this, we need to develop consistent protocols for understanding environmental quality and biodiversity across our sites as well as shared repositories of data and reports.",4,"agriculture, DIY and makerspace, biodiversity",,, +102,Culture-independent discovery of natural products from soil metagenomes,"Mai Alajaji, Batool Almarzouq, Leena AlMehlisy",Bérénice Batut,"We are working on establishing a Research Hub in the National Guard. This hub is a virtual platform linked to TDM to support academics (particularly young Female researchers), scientists, and physicians. It aims to bridge the boundaries between research, cross-subject collaboration, and establish a community of like-minded people. It will work towards increasing the visibility of ECRs and invite them to apply Open Science practices in their reserach. A part of this Research Hub is to establish a Citizen Science Soil Collection program in Saudi Arabia. This project aims to adapt the Citizen Science approach in Saudi Arabia to bring together researchers with citizens. Our lab focus is the use of metagenomics of Natural Products (NPs) and it is based on King Abdullah International Medical Research Center (KAIMRC). Metagenomics of NPs is an innovative approach that utilizes next-generation sequencing to study microorganisms via the analysis of their DNA acquired directly from an environmental sample. The screening of natural product extracts has traditionally been the most effective method for identifying new compounds with unique cellular targets which are potentially useful as lead structures for the development of new therapeutics. + +However, there is hardly any known project which utilises Citizen Science in Saudi Arabia. Therefore, we are collaborating with Open Science community Saudi Arabia (OSASA) to adapt this approach in our current project. This project will engage citizen scientists in collecting and examining soil samples from various regions in Saudi Arabia and bring awareness about the role of Citizen Science in research as part of the Research Hub.",4,"citizen science, therapeutics, soil sample, sequencing, metagenomics",graduated,https://www.youtube.com/watch?v=EdQU32ap500&list=PL1CvC6Ez54KCQDLgMKuFlcj2H6zsBi35D, +103,Developing a library in Python for applying measures of emergence and complexity,Nadine Spychala,"Dario Pescini, Anthony Bretaudeau","I aim to develop a Python library which allows to call and apply several measures of emergence and complexity to either empirical or simulated data, and provide guidance for comparisons among and conclusions about different measures.   + +Measures of complexity operationalize the idea that a system of interconnected parts is both segregated (i.e., parts act independently), and integrated (i.e., parts show unified behaviour). Emergence, on the other hand, is a phenomenon in which a property occurs only in a collection of elements, but not in the individual elements themselves. Both emergence and complexity are promising concepts in the study of the brain (with a close relationship between the two).   + +Quantifications thereof can take on very different flavours, and there is no one-size-fits-all way to do it. While a plethora of complexity measures have been investigated quite substantially in the last couple of decades, quantifying emergence is completely new territory. A few measures exist (see, e. g., https://arxiv.org/pdf/2106.06511.pdf, or https://journals.plos.org/ploscompbiol/article?id=10.1371/journal.pcbi.1008289), but they are not readily implementable - they are scattered over different github repositories (or people, if repositories are not existent), programming languages (including Matlab which is not open source).   + +A way to easily use & compare a set of state of the art emergence and complexity measures by using a few lines of code is thus missing – this is the gap that I’d like to fill.",4,"complexity measures, programming, Python library",graduated,, +104,The Environmental AI Book,Alejandro Coca Castro,Delphine Lariviere,"We propose a **living**, **free** and **open** document, named The Environmental AI book, compiling research in the application of AI and Data Science for monitoring and modelling a wide diversity of settings of the natural and urban environments. + +Through a set of **interactive use-cases**, the document, powered by Jupyter Book (https://jupyterbook.org), aims to inform and guide the scientific community about information extraction and analysis from environmental sensors (including ground sensors, drones, and satellite Earth observations) using data-driven methods. + +In addition to the book, our goal is to **build a community** dedicated to making collaborative, reusable, and transparent research in environmental science. In this regard, inspired by The Turing Way (h https://the-turing-way.netlify.app), we are hosting online +Collaboration Cafes to engage anyone interested in learning and discussing relevant themes in AI and data science to help understand our changing planet. + +While the scientific community is broad, we think the target audience of this book is: +- Researchers with some background in **environmental science** interested in data-driven methods. +- Researchers with some background in **computer science** interested in environmental studies. +- Anyone else interested in **reproducibility**, **inclusive**, **shareable** and **collaborative** AI and data science for environmental applications.",4,"artificial intelligence, data science, reproducible research, research community",graduated,https://www.youtube.com/watch?v=EdQU32ap500&list=PL1CvC6Ez54KCQDLgMKuFlcj2H6zsBi35D, +105,Bioinformatics Secondary school Outreach in Nigeria,Emmanuel Adamolekun,Meag Doherty,Bioinformatics Secondary School Outreach (BSSO) is an initiative to develop bioinformatics capacity among High school students in Nigeria and this will create early interest in genomics data analysis among the students and equip them with the relevant skills and knowledge in Bioinformatics. Bioinformatics Hub Nigeria will be training these students on how to use Bioinformatics tools and pipelines and this can be achieved by establishing Bioinformatics research clubs in the visited schools to facilitate the trainings. We would be working alongside with other sister organizations to achieve this goal,4,"outreach, secondary school outreach, training and education",,, +106,Citizen Scientists as Data Explorers,Wai-Yin Kwan,Bruno Soares,"I want to develop a project that gives iNaturalist citizen scientists the chance to move from data collectors to data explorers. I want to use my programming skills and outreach experience to create an online tool where users can browse through iNaturalist and environmental data. By creating online data exploration tools, I want users to form their own questions and look for answer to their questions.",4,"citizen science, environmental data, outreach",graduated,https://www.youtube.com/watch?v=EdQU32ap500&list=PL1CvC6Ez54KCQDLgMKuFlcj2H6zsBi35D, +107,EROS Stories: Conversation and case studies in open research across educational disciplines,"Cylcia Bolibaugh, Gill Francis","Lena Karvovskaya, Esther Plomp","Established in 2018, EROS (education researchers for open science) is an open research working group at the University of York. We monitor and communicate ongoing developments within the open research landscape, provide guidance and training on adopting open practices, and influence incentive structures to recognise commitment to open research practices. + +The aim of the *EROS Stories* project is to deepen EROS as a community of practice by providing a mechanism for junior and senior researchers to engage in dialogue about their experiences with particular open research practices, and to showcase the resulting conversations as publicly available case studies. + +Concretely, *EROS Stories* will pair researchers, at least one of whom must be an ECR, and at least one of whom must have experience with a particular research practice. The less experienced partner (who may be senior) commits to reading at least one primer on a particular open research practice, and then leads a conversation with their partner, asking about their experiences, motivations, and insights and top tips for working with the practice. + +The project will help the EROS community build a shared repertoire of experiences, stories, tools and ways of addressing common challenges in doing open, inclusive research.",4,"research community, case study, training",,, +108,FarawayFermi- A platform for open source bioinformatic tools to detect biosignatures in astrobiology,Sagarika Valluri,Harpreet Singh,"The project focuses on building tools to understand the evolution of life. We develop bioinformatic tools to determine evolutionary processes to detect early stage life development. The project looks at data from two specific parts of detecting life - co-evolution of life and environment and biosignature assessment within the context of habitability. We use data from current experimental projects and develop new models to aid the growth of astrobiology search for life. The platform will cater to multiple sections such as- data management from all astrobiology projects, experiments, research labs and conferences; new tools to analyse data, predictive model section to simulations from the data set and collaborative forum to encourage citizen science.The platform will help create open source bioinformatic tools to help detect biosignature, assess habitability, promote involvement within astrobiology.",4,"astrobiology, environmental data, citizen science",,, +109,A guide towards reproducible research for Decision Sciences researchers,Andreea Avramescu,Jessica Scheick,"In academia today there is a certain pressure for young research to publish, and given the time constraints and continuous deadlines, the aspects of reproducibility and replicability are often overlooked. The Turing Way is a great starting point and a guide for people that want get familiar with what needs to be done to make their results, data, hypothesis, etc available to the research community and the public. However, currently it is orientated towards issues encountered mostly in Data Science, and while many of the resources are extendable towards other fields, I consider that it could benefit from specific chapters focused on different research areas. The aim of this project is to create such a chapter by understanding the exact barriers for young researchers when considering reproducible research in Decision Sciences. The guide would be instead of a collection of resources that can be simply used at the end to make “your research more reproducible”, a way of thinking in a way and contain resources that help you consider reproducibility towards the entire research.",4,"reproducible research, data science",graduated,, +110,Building Open Science and Data Analysis Skills by Leading the OLS Survey Data Project,Burce Elbasan,Beth Duckles,"Although my research areas are mostly related to wet-lab, with the developed technologies, I am aware that computational and data analysis approaches in research promise great opportunities. Therefore, I am proposing the Open Life Science Survey analysis project to participate in the Open Life Science (OLS) community and make a contribution to the program. In this project, I will be working on already collected survey data from their 3 cohorts. In my opinion, in this era, barriers to open research are not technical but rather socio-cultural. Therefore, by analyzing OLS participant’s survey data, we could gain insight into the demography and socio-culture of the participants. In this way, both OLS team will get a chance to enhance their program for the future and I will learn how to perform data analysis, deal with the survey data and gain some programming skills as well. I believe this opportunity will help me develop my academic skills and give me different perspectives in open research, which are different from but beneficial for my current research.",4,"survey data, data visualisation, programming",graduated,https://www.youtube.com/watch?v=EdQU32ap500&list=PL1CvC6Ez54KCQDLgMKuFlcj2H6zsBi35D, +111,Hub23: An open source community and infrastructure for Turing's BinderHub,"Lydia France, Luke Hare, Callum Mole",Renato Alves,"Binderhub is a service that allows users to share reproducible interactive computing environments through public code repositories. The subject of our project, Hub23, is an organisational deployment of Binderhub, designed to allow Turing Researchers to use binder (the user interface) to collaborate on repositories internal to Turing. This is sometimes necessary if the underlying repository can not be shared for some reason, or is not yet ready to publish openly. During the OLS program, we aim to build an open community around Hub23 to help to guide future technical developments, and encourage use and contributions from the wider Turing community. We will host a series of [Zero-to-Binder workshops](https://bit.ly/zero-to-binder-python) aimed at introducing Turing researchers to regular binder, followed by structured discussion of what the ideal features of a collaborative reproducible environment for research would be. Any conclusions and subsequent technical development will be fed upstream to Binderhub, and we also aim to open source the methodologies used to create an internal binderhub deployment, allowing other organisations to do so.",4,"research community, technical development",,, +112,"Online event ""Women in Data Science - Perspectives in Industry and Academia"" Part II",Irena Maus,Iratxe Puebla,"The project is about the conception, organization, and coordination of an online event with a focus on identifying the key driving factors for a scientific career as a woman in data sciences. During the event, we will try to get to the bottom of the large gender gap in the data science field and present efforts to get women into this field, further driving progress towards gender equality. The aim of such an event is to show how diverse and attractive the job of a data scientist can be including open and fair data principles. My colleagues and I already organized such an event in July 2021. The number of participants, and therefore, the response and demand were so great that we decided to held the meeting again in autumn 2021 with a slightly different thematic focus.",4,"scientific events, data science, gender equality",graduated,https://www.youtube.com/watch?v=EdQU32ap500&list=PL1CvC6Ez54KCQDLgMKuFlcj2H6zsBi35D, +113,open and international River University,Ewa Leś,Emily Lescak,"The international and open RIVER UNIVERSITY started in Poland with its pilot in 2018 and the 1st edition in 2020. +Its professional river education has the ambition to change the reality by creating a strong center/network of modern knowledge, linking experts and giving the opportunity to participants to learn about the peculiarities of different rivers in the Baltic region and in Europe. +We provide tools to use in practice, exchange information and experience about inland waters and its impact on the Baltic Sea, to spark joint initiatives for the sake of rivers’ good condition. +Riverine topics always reflect source-to-sea approach and relation to current trends, challenges, legislation regarding freshwaters, and free-flowing rivers: restore nature law, UN restoration decade, Biodiversity strategy 2030, European Green Deal, national recovery plans, etc. +In 2018, the River University mostly served for the purpose of gathering river experts from several transboundary basins of Poland (Odra, Vistula/Western Bug, Neman) with their counterparts from Belarus and Ukraine to discuss i.a. issues related to inland navigation and large infrastructure projects on straightening river flows in these countries. 1st edition of River University in 2020 provided general solid knowledge about healthy rivers, their benefits and threats, presented one of the most stunning rivers in Poland – Drawa river and highlighted current riverine challenges impacting the society. All these looking towards European community goals, as usual. + +During the 2nd edition in 2021, we swim into Lithuania’s waters, to dive deep – finally live! – into water challenges in the next country in the Baltic region. We will get to know best practices of good water management, experience with transboundary river cooperation, also innovations and developments within sewerage system management. We can already read about flood risk management and about river barriers to remove or mitigate in the Baltic Sea Region (https://ccb.se/wp-content/uploads/2021/04/ccb_flood-risk-management-in-the-baltic-sea-region_2021.pdf, https://ccb.se/wp-content/uploads/2021/04/ccb_report_dam_removal_april_2021.pdf). This time we ask – how are the Lithuanian rivers? +Being a visitor of the largest protected area in Lithuania, crossing rivers outdoor, stepping into practical lectures in the national park, we will also ask about how to limit riverine pollution from tourism and how the connectivity of amazing Lithuanian rivers is ensured. +Checking the European background: how the situation of rivers in Europe looks like in general? Later in time, I may widen it to Europe, not only the Baltic region. + +River University has been granted patronage from European Parliament and I seek and encourage water-related institution patronage at every edition. It engages top-level lecturers and universities and practitioners, e.g.: the University of Lausanne, Warsaw University of Life +Sciences, Leibniz Institute of Freshwater Ecology and Inland Fisheries.",4,"biodiversity, training and education, river and freshwater ecology, environmental data",graduated,https://www.youtube.com/watch?v=EdQU32ap500&list=PL1CvC6Ez54KCQDLgMKuFlcj2H6zsBi35D, +114,"Learning about open science communities and help build ""community health"" report for The Turing Way",Ali Humayun,Arielle Bennett,"In _The Turing Way,_ we want to systematically understand community practices including the community engagement pathways, contributors' roles and nature of their participation that have been successful at supporting its community of diverse contributors. Simultaneously, we want to identify factors that may currently prohibit short or long term commitments of our contributors and how they can be further supported. + +With my participation in OLS-3, I will develop a community health report of the project, capturing community development aspects from growth to retention. I will build upon the Open Source community health metric ([https://wiki.mozilla.org/Contribute/Community\_Health](https://wiki.mozilla.org/Contribute/Community_Health)), which involves evaluating contributors' group that is actively involved in a project, number of new contributors that join the project, and members who leave. For online projects, it can also involve tracking the number of community ambassadors, the number of return attendees to events and the rate of churned attendees. Developing an ideal metric in this project will require further deliberation and consultation from The Turing Way team and core contributors. Hence, this project will be collaboratively designed with other community members by actively inviting their contributions and thoughts.",4,"research community, community health metric, reproducible research",,, +115,Multilingual Open Science: Creating Open Educational Resources in Central Asian Languages,Zarena Syrgak,"Alejandro Coca Castro, Stephen Klusza","The project *Multilingual Open Science* aims to create an open educational resource about FAIR research in Central Asian (CA) languages. The goal is to popularise and raise local researchers' awareness of open science practices and platforms and thus to tackle the existing structural barriers (e.g., linguistic, epistemic, etc.) in accessing the information and disseminating the research from Central Asia. Currently, the local scholarship is located - geographically, linguistically, epistemically - in the global periphery which hinders the knowledge production, use, and dissemination in the region. Many scholars, as the result, become trapped in fraudulent research and publication practices. Moreover, there are cases when openly accessible educational resources are offered to researchers as a marketable product. So, to address these and other issues related to inaccessibility of knowledge production infrastructure, this project aims to create an openly accessible, fair, and multilingual educational resource about open science with the particular focus on Central Asia. To this end, I am planning to use Jupyter Notebook and create a platform similar to [The Turing Way](https://the-turing-way.netlify.app/welcome).",5,"equity, diversity, inclusion, open scholarship, multilingual open science, epistemic/linguistic, justice",,, +116,Training Latin American scientists' community to create high-quality open journals with good editorial standards,"Camila Gómez, Danae Carelis Davila Espinoza, Alvaro Andre Vargas Aguilar, Nelson Franco Condori Salluco, Jose Luis Villca Villegas",Alexander Martinez Mendez,"Our initiative is called ""Training Latin American scientists community to create high-quality open journals with good editorial standards"". We intend to build a community of native spanish speaking scientists who teach and learn about creating editorial boards and open access scientific journals that meet international high editorial quality standards. We intend to organise hands-on workshops about different steps in the editorial process of creating scientific open access journals, with experienced trainers and with open source tools. Some of the topics we would like to cover are: +- Acquiring ISSN code for online journals, +- Acquiring plug-ins for displaying online journal view statistics, +- Implementing DOIs for scientific articles, +- Implementing Ithenticate to stop plagiarism in articles submitted to the OJS system. + +These workshops would merge synchronic and asynchronic activities throughout a period of 6 weeks, so that trainees get to learn all the necessary concepts through, familiarize with the required software and conceptualize and brainstorm solutions to the local needs for the journals they intend to develop, with peer support and mentoring.",5,"training and education, research community, editorial community, open journals systems.",graduated,, +117,Building a Cloud-SPAN community of practice,Evelyn Greeves,Anne Fouilloux,"Cloud-SPAN trains researchers, and the research software engineers that support them, to run specialised analyses for environmental omics datasets on cloud-based high-performance computing infrastructure. It is a collaboration between the University of York and The Software Sustainability Institute funded by the UKRI Innovation Scholars award (Project Reference: MR/V038680/1). The primary objective of the project is to generate training materials and opportunities which are open, accessible and reusable (FAIR) for all researchers. We aim to build an engaged community of practice around the participation in, and the development and maintenance of, the materials. The community-building element would be the main focus of the OLS scheme project.",5,"Education, Training, Environmental biotechnology, Omics, Community",graduated,, +118,Developing a carbon footprint database for buildings in Ghana,Sitsofe Morgah,Anne Treasure,"There is a considerable gap in cases of sub-Saharan African countries regarding assessment of embodied energy of building materials and operational energy of various building types. Lack of data remains a critical barrier to closing this gap. Creating a database of embodied energy of building materials and operational energy of building typologies will be key in establishing the carbon footprint of buildings in Ghana. The development of an online platform will also allow interested groups, individuals and cooperation's to submit key information needed for the computation of energy outputs in buildings. The aim of this project is to explore the scope and path towards establishing an open database and an inclusive community.",5,"Sustainabilty, Open science, Carbon footprint, Buildings",,, +119,Publishing development plan for the Open access journals of TU Delft OPEN Publishing,Frédérique Belliard,"Arielle Bennett, Julien Colomb","TU Delft OPEN Publishing, Open Access academic publisher of the TU Delft, publishes open access (OA) journals and open (text)-books. The OA journals currently receive not enough support regarding their development. This project aims to bring all OA journals to the same high level of quality expected of any TU Delft product. This project will establish the identity of TU Delft OPEN Publishing as a trustworthy academic publisher within and beyond TU Delft. +The success of the plan is linked to the open collaboration of the journal editorial boards. The publishing plan will help journals +- Identify their readership by targeting the correct authors, +- Evaluate the quality of their publications (Impact), +- Determine their publishing priorities, +- Consider other publishing options (special Issues, new article types, publishing peer review comments, cascading), +- Growth, +- Improve communications and networking, +- Diversify the editorial board +- Take part in the education of young researchers + +The plan needs to integrate as much as possible open science principles such as Open Data, Open peer review or authorship transparency in their publishing processes. While the plan will benefit all, It should consider the specificity of each journal. Overall the plan has to demonstrate its value to the editorial board.",5,"open publishing, open access, open peer review, scholarly communication",graduated,, +120,"Why R, for those with legal backgrounds using examples from South Africa",Biandri Joubert,Batool Almarzouq,"This project is envisioned as one that ends up as something that can explain the “why” when encouraging people from legal backgrounds to learn R and some data science. A case for open and reproducible research in a field that does not typically use R and qualitative methods. The idea is to get to that point by creating different data sets derived from commonly used legal sources that law students or graduates would be familiar with and incorporating them into a single platform with a few examples of practical use and application as well as code to encourage such persons to see the “why”. On this platform, I would like to share resources to places where the intro to R courses are available, etc. At this stage, this is an idea I have and I hope to develop it as the week's progress.",5,"Rstudio, qualitative research, quantitative research, legal research, law",graduated,, +121,NGS-HuB: An open educational resource for NGS data analysis,"Nihan Sultan Milat, Faruk Üstünel, Esra Büşra Işık, Birgül Çolak-Al","Beatriz Serrano-Solano, Fotis Psomopoulos","Next-generation sequencing (NGS) is a revolutionary technique with wide applications in biology. Its applications are widely being used from young researchers to pioneer researchers of the field. The NGS data analysis has various approaches and many resources are explaining these methods. However, it can be difficult for beginners in this field to quickly understand and apply these methods. Also, beginner researchers might not have enough knowledge to overcome the most common errors that are encountered during these analyses. Due to the challenges that we mentioned above, in this project, we aimed to create a comprehensive open educational resource explaining NGS data analysis and its different methods and offer an example for the application of methodology and solutions to the most common errors. We believe that this project will be enlightening for anyone interested in NGS data analysis by providing a necessary roadmap.",5,"Next-generation sequencing, data analysis, bioinformatics, genomics, open education, open resource",graduated,, +122,Community engagement: Building an open online learning community,Sarah Nietopski,Caleb Kibet,"This project aims to establish and nurture an active (virtual) community of learners with the Turing. The Institute is in the process of creating an open online learning platform to host training and learning materials, covering a range of subjects related to Data Science and AI. In order to ensure that the offering is useful to our audience, that it is responsive to their needs, and that it continues to grow, it is key to involve them in the creation and direction of the resources. Having real user voices and input will help to create an open learning space that is truly useful and valuable. Not only that, but the platform can serve as a central meeting point where learners can come together over shared interests and issues, and collaborate on projects that may have a wider impact. +In order to do this, learners will need a way to connect and communicate effectively.",5,"community, community engagement, open learning, Data Science and AI education, training",graduated,, +123,Finding paths through the FAIR forest; linking metadata from forestry models and datasets to assist analysis and hypothesis generation,Kim Martin,Deepak Unni,"This project aims to assist researchers in the field of wood formation and ecophysiology to explore datasets and computational models in a flexible and integrative way. The goal is to provide a platform - in the form of an open knowledge graph and associated interface - that will allow researchers (even those with minimal familiarity with the underlying technology) to explore linked representations of metadata for the included datasets and models. Researchers should be able to survey a variety of models that target phenomena at different scales; ranging from process-based models of the cellular determinants of wood formation, to empirical models of gross tree growth in different environmental contexts. The linked information should allow complex questions to be asked, including: how similar models differ; which datasets can be repurposed to test different model outputs; and identifying whether and how different models can be composed together. This will promote open scientific practices in this research area (through the use of common metadata standards and terms), and may serve as a valuable framework for collaborative knowledge capture and exploration.",5,"forestry, xylogenesis, wood formation, ecophysiology, FAIR, metadata, models, data, ontologies, knowledge graph",graduated,, +124,SciHack: Promoting the Open Source and DIY movements in Peru,"Maria Andrea Gonzales Castillo, Nadia Odaliz Chamana Chura, Piero Beraun, Darwin Diaz, Sandra Mirella Larriega Cruz, Jhon Anderson Pérez Silva, Rodrigo Gallegos",Diego Onna,"We propose SciHack, as the first Open Community Lab in Peru. Our principal aim is to make available the tools and resources necessary for anyone, including non-professionals, to conduct biological engineering research and learning. As part of our activities, we will focus on democratizing science and biotechnology knowledge in low-income populations of Peru where there's little to no presence of science and technology education. To address these issues, we will conduct workshops about DIY lab equipment, Bioinformatics open source projects and educational resources, and molecular biology tools to train teachers and teach students how to make and analyze scientific experiments. Furthermore, by the end of our activities, we would like to implement a space for bio-makers of all ages and backgrounds to conduct research projects and build prototypes. In this way, we would be fighting against misinformation of science methodology and results that are primordial not only for the current COVID19 situation but also for the progress of science.",5,"DIY Bio, Open Source, Biohacking, Computational Biology, Python programming, R programming",,, +125,"Data Science and AI Educators' Programme AND Tools, Practices & Systems Peer Mentorship Programme","Ayesha Dunk, Bridget Nea, Andrea Kocsis",Emmy Tsang,"I would like to work with the Skills Team at the Alan Turing institute in order to create a peer-mentoring training programme from the main topics of The Turing Way. Our aim is to turn the five main areas in The Turing Way, namely research reproducibility, project design, collaboration, communication, and ethics into modules which the participants of the peer-mentoring programme can work on together. They would apply it on their own research/ projects, therefore they could put the learnt knowledge in use immediately. The aim of The Turing Way has been to be an open source, collaborative, applicable, and practical tool, and with this programme we would like to facilitate the use of it. We would like to see how people in their different stages of their career (PhD, Post-Doc, Researcher, Admin) can collaborate to deepen their knowledge about the contents of The Turing Way, while understand each other's perspective on the subject. If the prototype is successful, we would like open it up for any applicants interested in applying the practices of The Turing Way to their own projects as part of the other trainings offered by the Institute.",5,"peer-mentoring, open source, collaboration, academic, Turing Way, ethics, communication",,, +126,"Increasing the usability of ChemSpaX, a Python tool for chemical space exploration",Adarsh Kalikadien,Esther Plomp,"Together with co-workers, I have developed a Python-based tool ([Source code](https://github.com/epics-group/chemspax), [publication 1](https://doi.org/10.1002/zaac.202100078), [publication 2](https://doi.org/10.26434/chemrxiv-2021-46d50-v3)) which can be used to explore the local chemical space of an existing molecular scaffold. Homogeneous catalysts are important in many of our daily processes, but also in our fight against climate change. Our goal was to create a tool that can automatically generate large datasets that can be used in research for data-driven catalyst discovery. + +The issue was that a simple SMILES representation of a molecular scaffold does not work when it contains a transition metal complex. With this tool we use the 3D coordinates of a molecular scaffold and let the user place molecular fragments to create many variations of this scaffold. Other inorganic chemistry fields that use transition-metal containing molecules might benefit from this tool as well. A first prototype is published, but several things can be done to increase the usability of our tool.",5,"software, homogeneous catalysis, data-driven chemistry, chemical space, transition, metal complexes, open-source",graduated,, +127,The Ersilia Model Hub: encouraging deployment of computer-based research tools for non-expert usage,Gemma Turon,Fotis Psomopoulos,"We have created the [Ersilia Model Hub](https://github.com/ersilia-os/ersilia), a FLOSS platform containing AI/ML models for infectious and neglected disease research . These models can be accessed with little to no-coding expertise, solving a major roadblock in the applicability of such technologies to day-to-day research. The Hub currently includes a hundred open source models, both from the literature and developed by the [Ersilia organization](https://ersilia.io). With this project, we aim to open the Hub to the whole computer science community, encouraging third-author model depositions so that the code they develop is not simply open source but also deployed in a user-friendly manner. By leveraging the Hub architecture, computer scientists can reach more users, interact with them and further the impact of the assets they have developed by facilitating its implementation in real case scenarios. To this end, the project will focus on establishing clear guidelines on the quality of the software and its reproducibility (as it won't necessarily be yet peer-reviewed) and creating a standard model deposition form and minimum required documentation. The ultimate goal of the project is to build a community of contributors by facilitating their access.",5,"reproducibility, sustainability, accessibility, artificial intelligence, community engagement",graduated,, +128,Easy Access Autism Resources for Rural Parents,Robert Schreiber,"Georgia Aitkenhead, Stephan Heunis","Living in South Africa, and in much of the world, you can see a large gap in the accessibility of healthcare resources based on a person's income and education level. I am privileged enough to have had access to good quality healthcare resources throughout my life, which resulted in me being seen by numerous different therapists, counsellors and psychologists and being diagnosed with Autism Spectrum Disorder, more specifically Asperger's syndrome. I am also privileged in that I am able to comfortably speak and read English. Unfortunately, a large percentage of our country has a very poor level of education, often not being able to read or speak English very well. Most South African resources I have found for individuals with, and parents of children with, autism are only available in English. My project aims to create a database of resources in a variety of South African languages, both written and as a video format (due to poor literacy rates, especially among older generations due to historical discrimination), in easy to understand language and with concepts that are easy to grasp. This is also useful as more people will be able to access online resources than resources at a healthcare facility.",5,"free resources, autism, translation",,, +129,"Exploring ""Governance Models"" for Open Science community projects as per their maturity stage","Malvika Sharan, Anne Lee Steele","Gracielle Higino, Emma Karoune","As open science projects mature, they attract, engage and retain members who actively participate and contribute to the project. They build *Communities of Practice* around the project through knowledge exchange, maintenance or development practices and ultimately guide the future directions for both the projects and their communities. To build a more equitable, resilient and sustainable open infrastructure for a diverse community, it is important to select governance models that give voices to people (users, contributors and wider society) from different socio-technical and socio-cultural backgrounds, identities, career stages, contextual needs and research communities. The Turing Way is a guide for reproducible, ethical and collaborative research and data science. Open Life Science is a training and mentoring program to help researchers learn and apply open principles in their work. They are mission-aligned open science projects that involve participants from around the world to create something deeply meaningful for them. The Turing Way has grown exponentially in the last three years that offers more than 200 pages co-created by more than 300 contributors. Open Life Science has offered 4 cohorts in the last 2 years and currently supports a community of over 300 members (present and past mentees, mentors and experts). To support the governance work in these projects in 2022, I would like to carry out a systematic study of governance models suitable for decentralised and distributed communities such as these. By creating a portfolio of governance models suitable for projects at different maturity levels, members from these projects will be able to identify the right model for their respective projects. The aim is to establish norms, workflows and processes that ensure a democratic structure for decision-making and leadership in a way that contributes to projects' own visions while collaborating on the shared mission for global open science.",5,"Open Source, Community, Governance, Research",graduated,, +130,International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community,"Carla Lancelotti, Javier Ruiz-Pérez, Maria Gabriela Musaubach, Abraham Dabengwa, Emma Karoune, Celine Kerfant, Zachary Dunseth, Juan José García-Granero","Gracielle Higino, Malvika Sharan","The International Committee on Open Phytolith Science (ICOPS) was initiated as a new committee within the International Phytolith Society in September 2021 and the first committee meeting took place in December 2021. This committee aims to increase the knowledge of and implementation of open science practices in phytolith research. We are embracing an open source approach to our work in this committee so that the work of our committee is transparent. This will include open documentation, regularly communicating with our community, and providing guidelines and communication channels to enable our community to engage with us. Therefore, we want to establish a solid base for this work going forward by further developing our GitHub repository - adding clear contributing guidelines and documentation on how the committee is to be run. All members of the committee will also benefit from training in all aspects of open science practices. This will allow us to gain further insight into the training and initiatives that we want to work on with our community. +We will also start to develop training packages specific to phytolith research such as in open publishing and open and FAIR data.",5,"Community Building, Open Science, Open Data, Open Access, Phytolith, Archaeology, Palaeoecology.",graduated,, +131,Building an open community around the Turing-Roche Strategic Partnership,Vicky Hellon,Katharina Lauer,"The Turing-Roche strategic partnership was established in June 2021 with the goal of establishing a collaboration in advanced analytics between the two organisations to develop new data science methods to investigate large, complex, clinical and healthcare datasets to better understand how and why patients respond differently to treatment, and how treatment can be improved. As Community Manager for the project I am developing a collaborative and open community between both organisations and beyond. As the partnership is just beginning and is flexible in nature there are opportunities to embed open practices such as open publication, reproducibility, open data, training, co-working as well as establishing networks such as an early career researchers.",5,"treatment heterogeneity, missing health data, academia-industry partnership, open science",graduated,, +132,Art as a means to open science,Eirini Botsari,Lena Karvovskaya,"On of my goals from my current position, as a community manager at the open science community Rotterdam, is to engage and include as many as possible; I want to sustain and grow the community. One of my ambitions is curating events and engage public to open discussions around open science. One of the events that I really want to arrange is through art (as a means) to raise awareness around open science practices, and create the floor for an open discussion around open science. It is still a general idea, so I am aware that I still need to go over all the details and I am still not sure what blockages will rise through this journey. But I am really positive and I truly believe that art is open and can act as a mediator towards connection, expression, openness, and understanding.",5,,,, +133,An Incomplete History of Research Ethics,Ismael Kherroubi Garcia,Lisanna Paladin,"[_A History of Research Ethics_](https://www.tiki-toki.com/timeline/entry/1753034/A-History-of-Research-Ethics/) is a free, online resource for researchers, governance professionals, and even college students to learn about science and ethics, and be inspired to develop practical tools for the assurance of adequately conducted research. A key purpose of _A History of Research Ethics_ is to demonstrate the variety of disciplines and backgrounds that research ethics can draw on. In other words, interdisciplinarity is critical for its success. This means both interdisciplinary contributions _and_ adapting to audiences from diverse fields and sectors. By embracing the collaborative nature of GitHub and OLS' open science community, I expect to take _A History of Research Ethics_ to its next stage of development.",5,"History of Science, Philosophy of Science, Research Ethics",graduated,, +134,Developing thermally stable loop mediated isothermal amplification kit for a non invasive detection of malaria,Cavin Mgawe,Luis Pedro Coelho,"This study aims to develop a diagnostic LAMP kit that's sensitive and robust to Plasmodium falciparum from saliva and urine to enhance simple and easy non-invasive molecular testing. The first phase of this study involved target validation, primer, and probe design using open-access tools. Here, a principal component analysis (PCA) of the R/adegenet package (Jombart et al, 2010) and phylogenetic tree (Neighbour-joining) using R/ape package (Paradis et al, 2004) to cluster repeats of the chosen amplification target. These clusters were aligned to generate a consensus sequence for designing primers and probes for establishing the LAMP assay. I have designed an incorporated strand displacement probe using the engineering guideline of Juan et al, 2015 and the open-access Nupack software tool. The assay has and the master mix is being lyophilized for further experimental evaluation. + +The sensitivity of this kit will be evaluated on extracted DNA from three sample types: saliva, urine, and clinical blood, with crude samples, lysed using lysis buffer. Correlation generated from these results will inform the best sensitive amplification. Further, a possible decay of the lyophilised master mix will be evaluated for six months to ascertain possible shelf-life.",5,"Non invasive diagnostics, molecular kit development, molecular assays, molecular diagnostics, R programming",graduated,, +135,Building Pathways for Onboarding to Research Software Engineering (RSE) Asia Association and Adoption of Code of Conduct,Jyoti Bhogal,Malvika Sharan,"In October 2021, the RSE Asia Association was launched. This was done to create awareness in the Asia region about the field of Research Software Engineering. The digital infrastructure for the association has been built during the Open Life Science Cohort 4 (OLS-4) program. The webpage is in place, the contact addresses have also been created for communication with people. A small community has also started emerging. It is time that the community can expand. With the expanding community, it is now required that we create well-defined pathways for people to get onboard to the association. This project aims at building such pathways. Also, a basic Code of Conduct is already present on the RSE Asia webpage. It is to be modified to make it more appropriate for the Asian region.",5,"Community Building, Creating Pathway, Onboarding, modifying Code of Conduct",graduated,, +136,Transcriptomics profiling of bladder cancer using publicly available datasets,Umar Ahmad,"Malvika Sharan, Yo Yehudi","We are to process bladder cancer RNA-Seq datasets that are publicly available. The co-authors of this manuscript will work on the analysis and apply bioinformatics methods for analysis of this large scale, heterogeneous RNA-sequencing dataset (20 + samples - 3Gb) that will be downloaded from any of the following databases; Genome Atlas (TCGA) database, Genotype-Tissue Expression (GTEx), cBio Cancer GenCancer Genomics Portal (cBioPortal) database and SRA NCBI database (choose any suitable database you are familiar with). The biological questions of particular interest include +1. identification of differentially expressed transcripts (DEGs) +2. pathways and gene networks +3. hub genes associated with cancer progression and recurrence +4. small molecular identification 5) survival analysis. + +Open source software such as R/Bioconductor (DESeq2), Unix/Linux, Python and Jupyter notebook will be mainly used for the analyses.",5,"RNA-Seq, Bladder Cancer, Transcriptomics, Bioinformatics",graduated,, +137,Bioinformatics Secondary school Outreach in Nigeria,Emmanuel Adamolekun,Meag Doherty,Bioinformatics Secondary School Outreach (BSSO) is an initiative to develop bioinformatics capacity among High school students in Nigeria and this will create early interest in genomics data analysis among the students and equip them with the relevant skills and knowledge in Bioinformatics. Bioinformatics Hub Nigeria will be training these students on how to use Bioinformatics tools and pipelines and this can be achieved by establishing Bioinformatics research clubs in the visited schools to facilitate the trainings. We would be working alongside with other sister organizations to achieve this goal,5,"Bioinformatics, Students, data analysis",,, +138,OpenGHG - a cloud platform for greenhouse gas data analysis and collaboration,Gareth Jones,Michael Addy,"The [OpenGHG project](https://github.com/openghg/openghg) is a NERC funded project that aims to be a community platform for greenhouse gas data science. There is currently no central platform for greenhouse gas / atmospheric chemistry researchers to access standardised data / workflows, or easily share and analyse their measurements. Currently our prototype service processes and standardises the raw measurement data taken from sensor networks worldwide (such as the [DECC](https://www.bris.ac.uk/chemistry/research/acrg/current/decc.html) and [AGAGE](https://agage.mit.edu/) networks), records associated metadata and makes this data searchable. We are currently in the process of adding the ability to process data from other sources, such as satellite and meteorological models.",5,"Greenhouse gases, repeatable science, data science, data sharing, data analysis, open source",graduated,, +139,Visualisation of participants by their countries,Akanksha Chaudhari,"Muhammet Celik, Burce Elbasan","**Visualization of participants by their countries** I would like to work on a project 'Visualization of participants by their countries' from the projects listed [here](https://github.com/open-life-science/open-life-science.github.io/issues/297). + +With this project, I would try to represent participants and mentors participating in OLS on the map by their countries, and year of participation. I am planning to achieve this using [Mapbox](https://www.mapbox.com/about/maps/) and [OpenStreetMap](https://www.openstreetmap.org/about/). When hovering over a particular flag we can see that particular participants/mentors all info which is listed [here](/openseeds/ols-4/projects-participants.html) or [this one](https://github.com/open-life-science/open-life-science.github.io/blob/main/_data/people.yaml). + +I would like to make something like [this](https://drive.google.com/file/d/1Ikd8Tylp_gpNi5Yt7ewqdJKqb4TcuMTG/view?usp=sharing) but would do a lot of brainstorming about design and representation. Also, we can add something like showing mentors vs ols-1/2/3/4 participants or showing number per country, or anything else creative. The next step would be to implement this on the official site of OLS. I want to practice my coding and visualization skills through this project and would appreciate the opportunity to meet, interact and work with like-minded people.",5,"Data Visualization, database, web application",,, +140,Build a community around the TU Delft Open Science MOOC,"Alessandra Candian, Lisanne Walma",Patricia Herterich,"In this project we want to develop and implement new ways of building, engaging and maintaining the community around the TU Delft Open Science MOOC. We are part of the teaching team of the TU Delft Open Science MOOC called: 'Open Science: sharing your research with the world'. The MOOC''s next run starts in [May 2022](https://www.edx.org/course/open-science-sharing-your-research-with-the-world). + +The course runs for 6 weeks and discusses a variety of open science topics, course materials are also available on [TU OpenCourseWare](https://ocw.tudelft.nl/courses/open-science-sharing-research-world/). + +The first Open Science MOOC started in 2018 and on average the course attracts about 1000 participants from an international environment. As the course runs participants engage with the teachers and each other through discussion forums. Here they introduce themselves, post assignments, and share and reply to each other''s thoughts. While a few participants actively contribute and respond in the fora, engagement is still quite limited. Moreover, there is not yet a strategy in place to maintain the community after the course has finished. We would like to strengthen the community building taking place during and after this course by implementing additional strategies to engage participants during the course run and keeping up with participants after the course has finished.",5,"Open Science, Community Building, Open Education, Engagement",graduated,, +141,Hub23: An open source community and infrastructure for Turing's BinderHub,"Callum Mole, Lydia France, Luke Hare",Renato Alves,"Binderhub is a service that allows users to share reproducible interactive computing environments through public code repositories. The subject of our project, Hub23, is an organisational deployment of Binderhub, designed to allow Turing Researchers to use binder (the user interface) to collaborate on repositories internal to Turing. This is sometimes necessary if the underlying repository can not be shared for some reason, or is not yet ready to publish openly. During the OLS program, we aim to build an open community around Hub23 to help to guide future technical developments, and encourage use and contributions from the wider Turing community. We will host a series of Zero-to-Binder workshops aimed at introducing Turing researchers to regular binder, followed by structured discussion of what the ideal features of a collaborative reproducible environment for research would be. Any conclusions and subsequent technical development will be fed upstream to Binderhub, and we also aim to open source the methodologies used to create an internal binderhub deployment, allowing other organisations to do so.",5,"Open Source, Reproducibility, Community, Open Infrastructure, Research",graduated,, +142,"Development of an Open Source Platform for the Storage, Sharing, Synthesis and Meta-Analysis of Clinical Data","Valentina Borghesani, Isil Poyraz Bilgin, Pedro Pinheiro-Chagas, Sladjana Lukic",Sara El-Gebali,"We aim to build an online platform and community that allows open sharing, storage, and synthesis of clinical (meta)data, crucial for the development of modern, transdiagnostic, FAIR neuropsychology. First, published peer-reviewed papers will be scrapped to collect already available (meta)data. Second, our platform will allow direct uploading of clinical brain maps and their corresponding metadata. + +A basic automated preprocessing and data-quality check pipeline will be implemented. Key data will be automatically extracted, synthesized, and made available alongside the one directly uploaded. All the available demographic, behavioral, clinical, and cognitive data will be properly organized and mapped onto the neural data to allow statistical analysis (i.e., data-driven lesion-symptom mapping). Ultimately, probabilistic maps synthesizing transdiagnostic information on lesion-symptom mapping would be constantly updated as more data are gathered. To this end, data visualization will be critical (e.g. https://speechbrainviewer.com/). Overall, the platform will + +1. enable sharing of FAIR neuropsychological datasets across research centres and groups; +2. foster understanding of the topographical distribution and morphological characteristics of brain lesions; +3. allow large-scale, data-driven exploration of the associations between behavior and cognitive symptoms and brain regions.",5,"neuropsychology, neuroimaging, data sharing, cognitive neuroscience, clinical neuroscience, data visualization, meta-analysis",graduated,, +143,"Open Science, Open Future",Mariangela Panniello,Sara Villa,"Open science is vital for reproducible, fair, and rigorous research. For its principles to thrive, we need OS practices to be shared and adopted by as many scientists as possible, from the earliest stages of their career. A 2017 survey by the European Commission reports that, among 1277 researchers at all career stages, the majority were unaware of the OS concept, and had never attended an OS initiative (from the Open Science Skills Working Group Report, July 2017). + +For open research to become an established reality, those who are moving their first steps into research must have the opportunity to develop the necessary skillset to apply and disseminate the OS framework. ""Open Science, Open Future"" aims to be an educational resource to be used online by young scientists: undergraduates, MSc students, and potentially high-school pupils. The curriculum will consist of several modules explaining why each aspect of the OS practice can improve research and make it fairer (e.g. best practices in sharing protocols, storing data, publishing, collaborating). I'm the co-founder of a pan-european collective of scientists, https://biotop.co/, aiming at rethinking the way we do science. Fellow members are willing to take part to the project.",5,"open education, student training, community building, educational resources, neuroscience",graduated,, +144,Open Science for Improve diagnostics of Cancer through Artificial Intelligence and Digital Pathology,"Nodira Ibrogimova, Elisee Jafsia, Stephane Fadanka, Agossou Bidossessi Emmanuel",Andres Sebastian Ayala Ruano,"Open Science for Improve diagnostics of Cancer through Artificial Intelligence and Digital Pathology. + +Cancer is becoming increasingly prevalent among the group of treatable diseases in African countries. In sub-Saharan Africa, only 10% of histopathology needs are met and this is a major barrier to comprehensive management of cancers + +1. There is a shortage of clinicians and pathologists available for cancer diagnosis and treatment. One of the critical factors in treatment efficiency is the correct and timely diagnosis of specimens by pathologists. However, there is currently a significant shortage of cancer care clinicians in Africa and an even more considerable shortage of pathologists. In Cameroon, there are 19 pathologists currently in practice for 22,179,707 inhabitants +2. The absolute number of patients with cancer in Cameroon was estimated to be 25,000 cases a year. + +Diagnosis of cancer relies on histology in nearly 80% of cases, cytology in 10%, and clinical diagnosis in 10% (1). There is, therefore, an urgent need to develop a rapid, highly sensitive and diagnostic tool for the diagnosis of cancers, to increase cancer treatment efficacy and reduce overtreatment of tumors clinically suspicious for malignancy. We propose a hybrid diagnosis method with a deep Learning algorithm applied on hematoxylin and eosin histology slides. Digital microscopy and telepathology were already successfully used to mitigate the lack of pathologists in Cameroon, thus confirming the availability of a robust dataset for our project (1). Following splitting into training, validation and test sets, we will use CNNs as algorithms on the collected images to train the algorithm before deployment and tests. In addition to automated diagnostic, the developed program will have specific features such as sample information storage and tracking software as well as image optimization and analysis tools. +1. Gruber-Mösenbacher, U., Katzell, L., McNeely, M., Neier, E., Jean, B., Kuran, A., & Chamala, S. (2021). Digital pathology in Cameroon. JCO Global Oncology, 7, 1380-1389. +2. Ministry of Public Health (2017) Health analytical profile 2016 Cameroon. Ministry of Public Health, Cameroon, Yaounde.",5,"AI, Cancer, Diagnostics, Digital pathology",graduated,, +145,Cultivating a Community of Practice of AI researchers,Achintya Rao,Yo Yehudi,"The ""AI for Science and Government"" (ASG) programme at The Alan Turing Institute seeks to produce three community-led white papers that will capture the outcomes of research into deploying AI and data science in priority areas to support the UK's economy. The papers will also highlight advances in practices towards open and reproducible research in the fields of AI and data science. The process of authoring the white papers will itself be collaborative, open and transparent, soliciting contributions from the wider ASG community at every step of the way.",5,"community management, open and reprodicible data science, Artificial Intelligence, community white papers",graduated,, +146,Argentinean Public Health Research on Data Science and Artificial Intelligence for Epidemic Prevention (ARPHAI),"Verónica Xhardez, Sabrina López, Victoria Dumas, Federico Cestares, Laura Ación",Mayya Sundukova,"ARPHAI is an interdisciplinary research consortium, whose mission is to develop technological tools and recommendations to anticipate and manage epidemiological events. ARPHAI pilots data-driven open source tools using artificial intelligence and data science towards upgrading Argentina's electronic health record (EHR) system. ARPHAI is part of the [Global South AI4COVID Program](https://covidsouth.ai/). + +ARPHAI includes persons from 20 institutions. ARPHAI started in October 2020 and has grown very fast from scratch. More specifically, ARPHAI is piloting three EHR-based components in parallel to anticipate and detect potential epidemic outbreaks +1. The extraction of computable phenotypes of diseases, symptoms, and syndromes using natural language processing to analyze EHR structured and free-text; +2. Models for understanding and prediction of relevant epidemiological variables using computable phenotypes and open data information as input; and +3. Dashboard visualization of the results from both points above, along with additional open data sources to inform decisions made by the public sector epidemiological authorities. + +There are two additional lines of work ARPHAI undertakes that are transversal to these three research developments, which include a) diversity, equity, and inclusion (DEI) with a focus on gender and b) responsible use of health data.",5,,graduated,, +147,FarawayFermi - A platform for open source bioinformatic tools to detect biosignatures in astrobiology,"Sagarika Valluri, Sairaj R Dillikar",,"The project focuses on building tools to understand the evolution of life. We develop bioinformatic tools to determine evolutionary processes to detect early stage life development. The project looks at data from two specific parts of detecting life - co-evolution of life and environment and biosignature assessment within the context of habitability. We use data from current experimental projects and develop new models to aid the growth of astrobiology search for life. The platform will cater to multiple sections such as- data management from all astrobiology projects, experiments, research labs and conferences; new tools to analyse data, predictive model section to simulations from the data set and collaborative forum to encourage citizen science.The platform will help create open source bioinformatic tools to help detect biosignature, assess habitability, promote involvement within astrobiology. In addition to using bioinformatic tools, a part of the platform will use game theory and gamification to test the citizen science component. Using both the platform as a destination for tool testing and science education, we hope to advance the research in astrobiology.",5,"Bioinformatics, data, astrobiology, biosignatures, life evolution, game theory",,, +148,Open collaborative network and incentive system for brain health,Juyeon Kim,," 1. Scientific perspectives Depression is becoming more common mental illness caused by the complicate network of various extrinsic and intrinsic stimulators.For the healthier and happier brain status, three key diets such as Emotional,Physical, and Nutritional diets should be considered. Scientific researchers are mostly focusing on research in unraveling the key molecule associated the mechanism of depression. However, we need to pull and process more extensive dataset from individuals, public health, and professionals in psychology, nutrition science, physical science, and neuroscience to improve or treat the brain kept or recovered to the healthy status. +2. Open science perspectives. For comprehensive data, we need to build up the collaborative digital network with trust through benefiting to each participant to accelerate innovation from the open dataset. Effective collaboration tool or co-creation platform for the intersectoral collaboration would be required for the practice in this project.",5,"Collaboration, building trust, intersectoral collaboration, Emotional/Physical/Nutritional diet for brain, global connectivity, Digitalization, Incentives to public and scientists",graduated,, +149,"Evaluating criteria of ""best paper"" awards from research journals across disciplines",Malgorzata Lagisz,Juyeon Kim,"This project aims to create a template for an engaging Open Science course tailored to the needs and abilities of high school students. It will use a catchy premise of learning Data Science to introduce students to good (open) scientific practices and explain the importance of such practices. The teaching materials will be composed of several modules, each including short presentation on key topics, reading, quizzes, and hands-on activities, and a mini-project. For the latter, we will apply Data Science techniques to investigate science itself, specifically a corpus of scientific literature (Big Data, accessed via free Dimensions accounts). Students will plan and conduct meta-science projects on chosen topics. In other exercises, students will track the life cycle of a scientific publication and get into the shoes of one of the researchers. We will explore some of the fundamental issues that modern science and scientists face, including incentives, fraud, questionable research practices and biases, and how science intersects with the broader society and policy. Overall, this course will deepen students understanding of science as a collective activity and a complex system with many players - helping young people to navigate their career in research and develop critical skills for other career paths.",6,"Open Science, Education, Outreach, Meta-research, Big Data, Data Science, Bibliometrics",graduated,https://youtu.be/lplbwoq6ZTg, +150,Open science spread,Dario Basset,Alessandra Candian,"The project consists of finding the right ways (media, news and tools) to spread open science concept and find adepts",6,,graduated,https://youtu.be/VlWA7vygULc, +151,Open collaborative journal,Pol Arranz-Gibert,"Arielle Bennett, Diego Onna","I want to create a platform to publish scientific articles from all science disciplines that would allow: - Open peer review -- by sharing reviews with names of reviewers, we ensure a more fair reviewing process - Open post-publication review -- allow for people to comment on articles to share their view, experience reproducing results, etc. - Free publication - Random assignation of reviewers to articles -- ensures fairness in the publication process, allows junior scientists to participate in the process",6,,,, +152,Development of a Multi-Adaptor Quality Control Kit for Integration with Radiographic Equipment,Umar Farouk Ahmad,Elisee Jafsia,"It was reported that ""there are over 4000 x-ray machines in Nigeria with less than 5% of them under any form of regulatory control of the Nigerian Nuclear Regulatory Authority (NNRA).There is, therefore, a need for proper Quality Assurance QA testing during installation and control tests at regular intervals as this will further help to reduce repeated radiograph and rejected films thereby saving cost and reducing patient doses. This project is aimed at deterring the level of compliance of QA across radiology centres in Kano State and to also move ahead to develop a robust, multi-adaptor quality control kit for all forms of x-ray equipment. This will help to develop local capacity, improve healthcare and promote wellbeing for all ages of Nigerians in-line with Sustainable Development Goal 3.",6,,graduated,https://youtu.be/Rvs4d5JzCPo, +153,A FAIRer training module on Open Science,Elena Giglia,Emma Karoune,"Objective: to provide a FAIR by design training course on Open Science The project aims at creating FAIRer teaching material on my subject of expertise, Open Science, improving my teaching skills by attending your course on opening up every step of the research cycle alongiside researchers in different fields.",6,"Scholarly communication, Open Science, FAIR data management, training",graduated,https://youtu.be/VlWA7vygULc, +154,Ethical standards and reproducibility of computer models in Neurobiology,Susana Roman Garcia,Siobhan Mackenzie Hall,"Working with the Alan Turing Institute I want to create a framework that allows questioning of ethical standards and reproducibility of Computer Models in Computational Neurobiology, both specifically within my PhD work, and taking this as an example for others to learn too. - My PhD project work includes working with open source software (MCell https://mcell.org/, BioNetGen https://bionetgen.org/ and Biodynamo https://biodynamo.org/) to create biological predictions of how memory works. It is therefore, both, intrinsically embedded and important that the work I create for my PhD is as accessible and collaborative as possible. - I plan to implement the Turing Way (https://the-turing-way.netlify.app/welcome), Turing Commons (https://turing-commons.netlify.app/welcome/) and Data Hazards (https://datahazards.com/) principles, as I think about ethical implications of my work. This way, I will use my PhD as a case study and share it with the wider peer community. - Explore these questions by designing seminars and workshops with people knowledgeable in different fields. E.g.,workshop where people with expertise in research of Ethics and people researching in Computational Neuroscience come together. - Offering workshops and collaboration cafés where we can work through these topics with an intersectional and collaborative approach, offering different solutions to problems that arise.",6,"ethics, neuroscience, open-research, computer models reproducibility, open source software",graduated,https://youtu.be/Rvs4d5JzCPo, +155,Open Data Custodianship tool,Jennifer Ding,Malvika Sharan,"ODC (Open Data Custodians) is an open tool for connecting public domain Github repo data to a DB/API. Inspired by the BigScience Data Governance Framework, this project seeks to empower repo maintainers to do more with their data and create new pathways for responsible data sharing in the open AI ecosystem.",6,"civic tech, data collection, urban data science, mapping",graduated,https://youtu.be/VlWA7vygULc, +156,"Life Science in 2022, India.",Nilabha Mukherjea,Anne Treasure,"Generation Z stands to become the new entrants into the world of research from 2024. I believe new systems and easier ways of accessing information with more vocal communities are needed to usher in the new generation. But to do so, the new bachelor and high school students must be the recipient of effective scientific communication to help them realize the existing communities and opportunities in life science research in India. As a penultimate bioengineering student, my exposure to existing communities is recent and new. This fact allows me to understand and appreciate the importance of such communities in guiding students with a passion for research in life sciences. Life Science in 2022 India is a concept that seeks to unite parallel enterprises by individuals across the nation under one banner. The goal is to provide a complete and interconnected picture of Life Science research and communities in India. Simultaneously, as a founder of a Bioengineering Chapter in my institution, I will be applying our findings to build and train my colleagues and juniors to have the tools and awareness to choose their next steps in research. Finally, we measure the success of this project through the successful publication of a paper that encompasses the findings and suggestions for building a better and more robust open community of life science research in India.",6,"Generation Z researchers, Research Trends, Open Community, Life Science, 2022",graduated,https://youtu.be/Rvs4d5JzCPo, +157,An open support resource for primary mental health for researchers.,Shamim Wanjiku Osata,Mayya Sundukova,"Mental health among researchers is a huge neglected burden that has significant impact on their lives and the people around them. Majority of the focus on mental health is in capacity building for mental health research or offering sustainable mental healthcare. The lack of conversations around how students undertaking research fail to complete projects or progress beyond certain levels in research shines a bright light on the intensity of neglect on the mental health of researchers. It is therefore paramount to create awareness and avail tools catered to researchers needs. The project focus is to develop an open online support resource for primary mental health catered to researchers particularly scientific researchers. This platform will contain educational materials concerning emotional health which sits at the core of mental health. It will also contain self-assessment tools and techniques for developing mental resilience. In addition to that, the resource will contain a peer support network that will offer help and emotional support. The overall objective is to avail help, progress monitoring and increased understanding of the importance of mental health wellbeing among researchers.",6,"Mental health, researchers, Tools and techniques, open resource",graduated,https://youtu.be/Rvs4d5JzCPo, +158,Mapping the Open Life Science Cohorts,Saranjeet Kaur Bhogal,"Esther Plomp, Fotis Psomopoulos","This project is about creating an interactive map that locates all the past and present mentors, mentees, experts, and speakers who participated in the Open Life Science (OLS) programme. The map will be created using the Shiny R package. It will help provide the geographical reach of the programme. The aim will be to create a map that automatically updates whenever new information in stored in the database. It will also have an option to display only the mentors/only the mentees/only the experts/only the speakers. If time permits, the project will be further expanded to visually summarise other information like a table with area of expertise of the mentors, experts, and speakers.",6,"Mapping, Visualisation",graduated,https://youtu.be/VlWA7vygULc, +159,Developing effective online communities to build tools for genomic equity,Marie Nugent,"Lisanna Paladin, John Ogunsola","The Diverse Data initiative at Genomics England intends to build community spaces to: Facilitate effective engagement; enable creates crowdsourcing of tools and collaborative opportunities, and; build relationships and understanding across communities around the complex nature of diverse data for genomic medicine. These communities will involve a range of researchers, clinicians and healthcare professionals, patients, publics and cultural partners.",6,"community building, crowdsourcing, collective intelligence, engagement, participatory research, genomics medicine, bioinformatics, healthcare, data science, population genetics, diversity, equity, health outcomes",,, +160,AGAPE: Building an open science practicing community in Ireland,"Nina Trubanová, Cassandra Murphy, Aswathi Surendran",Sara Villa,"Under Agape, would like to build a community of open science practice to grow our work up to date in a way that can catalyse changes in researchers' perceptions of open science across Ireland and later internationally. The first step we underwent was creating a massive online open course (MOOC) by early career researchers (ECRs) for ECRs and other academics. The content of the MOOC is currently under review and is planned to launch in the late summer. We hope to grow the learning experience further by hosting workshops and events where individuals can learn from experts and share their own experiences about open science practices.",6,"community, introductory course, early career researchers, practitioners, Ireland",graduated,https://youtu.be/Rvs4d5JzCPo, +161,Open sourcing the Pyxium learning platform,Hari Sood,Nadine Spychala,"Over 2020/21 I was working on launching a social justice learning platform called Pyxium: https://app.pyxium.co/. It became apparent after working on it for a while that this should exist as an open, free and community driven platform, rather than a private for-profit enterprise. The codebase is currently private, written exclusively by me. There is a lot of work that needs to be done to prepare it for open sourcing - I see it as fitting into a few different categories: * *Technical*: Commenting throughout the code, cleaning the code up, clarifying folder/file structure, rewriting confusing functions/variables, ensuring basic security * *Collaboration*: Documentation, contributing guidelines, code of conduct, role distribution * *Governance*: Strategy, project management, community roles, contribution process and requirements * *Community*: Engaging developers (and educators, SJ advocates, designers...) with the project And probably much more!",6,"education, pedagogy, social justice, online learning",,, +162,Open Science Community Nigeria (OSCN),"Umar Ahmad, Mahmood Usman",Caleb Kibet,"Inspired by the Open Science (OS) movement that focuses on making science more open, improves the quality, accessibility, and efficiency of science and education, Open Science Community Nigeria (OSCN) was established to provide a space that will encourage and promote openness, transparency and reproducibility in science among scientists, network of researchers and societal stakeholders in Nigeria. There are quite a number of some initiatives in Nigeria such as AI Hub, Nigeria, Python Nigeria and R User groups that mainly promote data science and computational sciences. However, none there exist a single community that instilled responsible conduct of research, promote the principles of open science and or establish a guiding principles and core values or policies that support scientists, researchers, and societal stakeholders to meet, inspire and co-create important things together as a community. Thus, we aim to establish and develop an open science community in Nigeria where newcomers and experienced peers interact, inspire each other to adopt Open Science practices and values, identify opportunities and pitfalls, and provide feedback on policies, infrastructure, and support services as does in other regions of the World. We aim to specifically target scientists, researchers and students who are passionate about open science but have little to no experience with open science principles and practices.",6,"Open science, Community, Nigeria",graduated,https://youtu.be/Rvs4d5JzCPo, +163,"Developing an ontology to connect open science technology, RSEs and the different skills and services that follow","Megan Lisa Stock, Nina Roux, Rhoné Roux, Ariana Bethany Subroyen",Kim Martin,"Our project aims to map the relationship between people, skills and technologies, structured under the AI and data-science landscape, in order to develop an ontology that can assist Research Software Engineers (RSE's) to better manage their teams and affiliates. It also aims to enable better collaboration within the RSE community and between research institutions. This project is driven by the growing need for RSE's by researchers, as research is becoming increasingly reliant on data-driven technologies, and within the academic community itself, there is an emphasis on providing reusable, reproducible data which is not a skill that most researchers have. By creating a semantic overview of the interaction between skills, technologies and the key role-players in the RSE community, this ontology will be able to provide information on the research fields that each RSE has background knowledge in, their development skills, and the services that they are willing to provide clients, enabling a way in which suitable RSEs can be assigned to projects where they will be able to provide software development and software-development-related assistance. This project also aligns with the thinking supported by Open Science, as the ontology is aimed to be reusable and reproducible.",6,"Ontology, RSE (Research software engineer), Semantic technology, Data science, Artificial Intelligence (AI), Knowledge engineering",graduated,https://youtu.be/Rvs4d5JzCPo, +164,Mapping the RSSE landscape in Africa,"Nomalungelo Octavia Maphanga, Anelda van der Walt, Peter van Heusden","Joyce Kao, Anne Lee Steele","This project aims to identify African research groups that are heavily involved in in-house research software development and could potentially benefit from being part of RSSE-Africa and the larger global RSE movement. This may, for example, include data science research initiatives at universities, bioinformatics or astronomy groups, computational social sciences and digital humanities groups, and many more. Furthermore, the project will identify open communities of practice related to research software and systems engineering, such as RLadies, Python User Groups, and HPC User Groups that could potentially supplement the support RSSE-Africa is providing. For communities of practice, we will collect information on several attributes, including their focus area, communication platforms, activities offered, and more. This information will be shared in a Google Spreadsheet on the RSSE-Africa website and will be open for the community to contribute to and update as necessary. The RSSE-Africa website will simultaneously be updated to improve content and navigation. The project will build on work done by members of the RSSE-Africa community and the Research Software Alliance (ReSA).",6,"Research landscape, RSSE, RSE, community",graduated,https://youtu.be/lplbwoq6ZTg, +165,Open Communities: building a supportive community of practice across the AI for Multiple Long Term Conditions Research Support Facility.,"Eirini Zormpa, Sophia Batchelor",Lena Karvovskaya,"The AI for Multiple Long-term Conditions (AIM) research programme consists of seven consortia, all working with artificial intelligence methods to understand multiple long-term medical conditions. The Research Support Facility (AIM RSF) is a collaboration aimed at supporting those consortia. Our project aims to foster a community formed from the AIM RSF and seven AIM consortia and support collaboration from three core approaches: - supporting the upskilling of researchers so that their work may meet the highest ethical, technical, and reproducibility standards - ensuring that existing technical and domain expertise is well-documented and understandable to a wide audience - leading by example and empowering community members to champion open and collaborative research practices. We propose to do this through hosting workshops and events centred around collaborative work. We will start by collating and contributing to training materials around open science and reproducibility and supplement with workshops on tools that support openness, collaboration, and reproducibility. We aim to host regular ""Collaborations Cafe"" sessions, where community members exchange knowledge, propose projects, and get feedback. Ideally, our project would culminate in a ReproHack, where teams check the computational reproducibility of research, provide feedback, and further develop their technical skillset.",6,"community building, training, health reseach, artificial intelligence, collaboration, reproducibility, reprohacks",graduated,https://youtu.be/lplbwoq6ZTg, +166,Building a Platform for Open and Reproducible Super-resolution Imaging Hardware and Analytical Tools,"Ran Huo, Moritz Engelhardt",Sara El-Gebali,"*Super-resolution microscopy (SRM)* bypasses the diffraction limit and makes the nanoscale visualization of subcellular structures and dynamics possible. Yet the complexity and high expense of SRM setups often obstruct access to the sub-diffraction information for biologists. As a team working at the interface of optics and cell biology, we are motivated to build up an online platform that documents our homemade, powerful, and cost-efficient super-resolution imaging systems and analytical tools that are currently running and under development in our group, as well as to contribute to the expanding global community of open science. The proposed platform will provide adequate information for researchers in need of reproducible SRM. It can benefit cell biologists who are interested in advancing their research with the assistance of super-resolution imaging techniques, such as *single-molecule localization microscopy (SMLM)* and *super-resolution optical fluctuation microscopy (SOFI)* that our team focuses on, but lack the experience in selecting optical components, constructing light microscopes and processing the data acquired. We plan to build the platform around three main topics: SRM open hardware (including the open control software), image analysis tools, and an educational core around optics.",6,"Bioimaging, super-resolution, open hardware, open microscopy, image analysis",graduated,, +167,OpSciHack: Open Life Science Hackathon,Harini Lakshminarayanan,Yo Yehudi,"OpSciHack is an open science-focused hackathon that we, Open innovation in life sciences - OILS would like to organize as an annual event. The hackathon aims to solve problems in open science and open science problems. In each iteration of the hackathon, we would like to focus on one pillar of open science (OS) and develop solutions to encourage a culture of OS in research communities. At the hackathon, participants can either come up with their own problem statements or chose one to work on from our list. The questions will focus on: (1) difficulties that prevent them from fully implementing and practicing some or all aspects of OS in their science networks/ institutions/universities, and (2) problems that can be solved through OS. OILS will provide support to the participants by tapping into the OS network in Switzerland and introducing them to necessary experts and tools. An example of such a problem could be the absence of a searchable data repository in their university that contains links to all published datasets from the participating research groups - such an infrastructure would encourage the generation and sharing of well-annotated data. At the end of the event, ideally, the participants would have actionable steps and solutions that either can be directly implemented by them or proposed to competent authorities. Starting out at the swiss national level, we hope to grow OpSciHack involving global participation.",6,"Open Science, Implementation hurdles, Hackathon, Life Science",graduated,https://youtu.be/lplbwoq6ZTg, +168,The hub portal and academy,"Laurah Ondari, Pauline Karega, Gladys Rotich, Ken Mugambi",Stephane Fadanka,"The Hub portal and academy seeks to create a curriculum and a data portal targeting young researchers and incoming biology students to be equipped with data management skills, project planning skills and basic bioinformatics skills. Pauline Karega has already kickstarted the hub portal where we hope to gather bioinformatics interested undergraduates and connect them to a platform where they can interact and get connected to opportunities which will be automatically gathered from sources such as twitter using keywords and integrated to the backend of the hub portal at BHKi. Initial value proposition will be create an academy that gives basic scientific research training and skills to these students who will be embarking on their research projects in the final year of study; we hope to equip them with basic programming skills that will help in analysing biological data and guide them through designing and planning a research project. Eventually we hope to evaluate the uptake of knowledge through hackathons and collaborate with high ranking institutions for our mentees.",6,,graduated,https://youtu.be/lplbwoq6ZTg, +169,Making Science simple and accessible,"Romullo Lima, Fabio Ivo Perdigão","Andrea Sánchez Tapia, Gracielle Higino","The idea is to create an online platform that hosts any sort of didactic material. It can be a site that gather in an organized way different educational materials to be used by university professor or schoolteachers with their students. At first it can be a link aggregator from materials dug from internet, but in a long term the site will be open to researchers to upload their material editable enough that others can translate to their own language. This material will be accessible so different professionals can download it and they will be encouraged to rate and comment about the material used. To accomplish this, the idea needs at least two moderators to approve the material uploaded, an curator to organize the site, and a digger to find links and people that wants to upload their material.",6,"Online platform, compendium, didactic schemes, didactic figures, multidiscipline",,, +170,Preparing IceNet stakeholder engagement framework for open and collaborative development,Alden Conner,Mallory Freeberg,"As part of a NERC proposal that would fund three years of further work on the [IceNet]( https://github.com/icenet-ai/IceNet-Project) project, I have proposed a work package called “Demonstrating and deploying real-world solutions”, with the first part of that work package consisting of stakeholder engagement leading to creation of product roadmaps for both the IceNet forecast and the supporting digital infrastructure. I would like to outline a plan for performing this stakeholder engagement openly via the GitHub repository, leading to collaboratively-generated user requirements for the final products. I will consider how to reach stakeholders and engage them in open discussion on GitHub, and how to organise that work to generate a mutually agreed-upon set of user requirements. Stakeholders will include scientists such as polar researchers and AI researchers, who will contribute to requirements for the forecasting capabilities, as well as additional end-users such as conservation researchers and indigenous communities, who will help shape software requirements.",6,"polar science, sea ice, conservation, climate change, environmental science, product management, product roadmap, stakeholder map",graduated,https://youtu.be/VlWA7vygULc, +171,An extensible notebook for open specimens,Nicky Nicolson,"Andrea Sánchez Tapia, Batool Almarzouq","This project is developing a prototype “extensible notebook for open specimens”. This is a link-aware editor for semi-structured data based on personal knowledge management software (Obsidian). This environment plus standard open science tools (reference management tooling and pandoc document production) could help the adoption of open science principles amongst biodiversity researchers. The project is split into three main areas of investigation (effort so far has been focussed on the first): 1. Working environment: can we extend personal knowlege management software to reference biodiversity-relevant data classes (in a similar way to how bibliographic citations are managed) - We have developed a set of Obsidian plugins which facilitate easy access to the data resources needed to (a) work with existing species descriptions from literature and (b) recognise and formally describe new species. (Entry for the forthcoming [Ebbe Neilsen challenge](https://www.gbif.org/article/1G82GL7jw08kS0g6k6MuSa/ebbe-nielsen-challenge)) 1. Review environment: can we generate snapshots for peer-review /publication 2. Publication environment: can we package data for harvesting into data aggregators We aim to enable researchers to develop the ""digital extended specimen"", but without being prescriptive about their workflow: open to access and publish the necessary data - but also open to choose how to organise their work.",6,"biodiversity informatics, species description, specimen citation, research management, record linkage, document production",graduated,, +172,Multiomics profiling and analysis of cardiovascular diseases,Rushda Patel,Hans-Rudolf Hotz,"Cardiovascular diseases are the leading cause of death around the world and account for nearly 32% (2019) of all global deaths. The advancement in omics technologies over the recent years has provided a deeper understanding of the molecular processes and dynamic interactions involved in diseases which have helped in identifying various diagnostic, and prognostic biomarkers along with therapeutic targets. In my project, I aim to build a tool to carry out multi-omics analysis and profiling encompassing major CVD diseases using data from relevant datasets. The biological interests of this tool would be the identification of differentially expressed genes, proteins, metabolites, and transcripts, progression-associated genes, SNPs, pathways and networks involved, survival analysis, and small molecule identification. It would also include a user-friendly repository of data from research articles which would be easy to navigate This tool would be a one-stop solution platform for CVD multi-omics that would help researchers in drug discovery, unveil disease mechanisms, identify biomarkers,",6,"ethics, neuroscience, open-research, computer models reproducibility, open source software",graduated,https://youtu.be/lplbwoq6ZTg, +173,The Undergraduates Guide To Research Software Engineering,Aman Goel,Mariana Meireles,"**The Undergraduate's Guide To Research Software Engineering** aims to provide an *open-source*, *dynamic*, and *accessible* collection of resources on Research Software Engineering to undergraduates and newcomers interested in knowing more about the field. The project aims to develop resources majorly around the following four areas: 1. **Information and Background of Research Software Engineering** * This area would cover all the necessary context, history, background information, and the current situation of the Research Software Engineering movement across the world. 2. **Training and Education Resources** * This area would cover all the necessary resources and materials to help develop skills required by a Research Software Engineer. * It would cover existing resources as well as could be expanded to include new material. 3. **Job Board for Entry Level Positions** * This area would primarily provide entry-level job listings in the field of Research Software Engineering and Open Science to lower the entry barrier for newcomers. 4. **Support and Community Engagement Resources** * This area would provide support to newcomers in the form of open access community platforms as well as aim to provide help from experts on a case-to-case basis.",6,"research software engineering, open science, open education, community",graduated,, +174,Developing policy briefs on mental well-being of researchers in academia across different countries,Mayya Sundukova,Natalie Banner,,6,,graduated,https://youtu.be/Rvs4d5JzCPo, +175,Bioinformatics Secondary school Outreach in Nigeria,Emmanuel Adamolekun,Michael Landi,Bioinformatics Secondary School Outreach (BSSO) is an initiative to develop bioinformatics capacity among High school students in Nigeria and this will create early interest in genomics data analysis among the students and equip them with the relevant skills and knowledge in Bioinformatics. Bioinformatics Hub Nigeria will be training these students on how to use Bioinformatics tools and pipelines and this can be achieved by establishing Bioinformatics research clubs in the visited schools to facilitate the trainings. We would be working alongside with other sister organizations to achieve this goal,6,"Bioinformatics, Students, data analysis",,, +176,Collective and Open Research in Climate Science,Angelo Varlotta,Sara Villa,"The idea is to facilitate the creation of an environment (a working group or a community, eventually) where researchers, students, citizen scientists can collaborate on projects, research projects, articles or just share their work based on open science principles. There are examples of open research environments in the scientific community, in particular in the machine learning field. Examples are [mlcollective](https://mlcollective.org/), [Machine Learning Tokyo](https://machinelearningtokyo.com/) and [Neuromatch Academy](https://academy.neuromatch.io/). Those communities run by volunteers created a friendly environment and study groups for machine learning practitioners and also curricula to introduce students to data science. In e.g., the [mlcollective](https://mlcollective.org/projects/) effort led to the publication of many projects. Eventually, these examples could be used to create or simply design (white paper/report) a similar project in other research areas.",7,"Planetary Sciences, Biology, Chemistry, Global Changes",,, +177,Implementing Facial Recognition and Biometric Attendance Monitoring in Educational and Corporate Settings,Richard Dushime,Yo Yehudi,"This project aims to design and implement a system for tracking attendance using facial recognition or biometric technology in educational and corporate settings. The project will begin by reviewing current attendance tracking systems and analyzing various facial recognition and biometric technologies. Based on this analysis, a suitable technology will be chosen and a prototype system will be developed. The project will also consider the ethical and privacy implications of using such technology and develop strategies to mitigate any potential risks. The end result will be a functional system for tracking attendance and a report detailing the technical, ethical, and privacy considerations involved. This system will provide a reliable and efficient solution for tracking attendance in educational and corporate settings while addressing ethical and privacy concerns.",7,"Attendance Tracking, Facial Recognition, Biometric Technology, Educational Settings, Corporate Settings, Data Management, Data Privacy, Ethics, Machine Learning, Artificial Intelligence, Python, Django, Web Development, Cloud Computing, Data Visualization, Project Management",graduated,https://www.youtube.com/live/S4FEmZh5BqE, +178,From invisible to Citizens: Apparent Age for Primary School children without birth certificates,"Elisee Jafsia, Stephane Fadanka, Nathanael Kedmayla, Yanick Diapa Nana, Hylary Emmanuela Ndegala Nhana, Babari A Babari Michelle Freddia",Julien Colomb,"Ages fraud scandals have tarnished African sport at the international level. In 2009, FIFA adopted MRI as an age determination tool for its youth level competitions but recent studies show that bone age assessment has a very large margin of error and cannot be a standard for determining apparent age when we know that environmental factors greatly influence the development of the child. There are populations in which the disappearance of growth cartilage is 4 to 5 years earlier than in another. The ugly face of the problem is that many children are born out of the healthcare system. In Cameroon, approximately 1.7 million children, or 66 %, do not have a birth certificate. These children are said to be ""invisible"" In other words, they live without being recognised by the country whose citizenship they claim. According to a study carried out by Unicef, 40,000 children, in the Far North region alone, will find it difficult to present their end of year First School Leaving Certificate (FSLC) for lack of a birth certificate. To establish these birth certificates, it will be necessary to make an estimate of their apparent age in a complex process which discourages parents. It is evident that the determination of apparent age should not only be seen from a clinical standpoint. Instead, socio-cultural and environment factors must also be taken into account. To remedy this situation which has reached the alert level, it is urgent to propose a simplified and open system for determining Apparent Age to turn invisible kids to visible ones based on available Data and Machine Learning techniques.",7,"Apparent Age, Children, Process, Determinants, Machine Learning, Birth Certificate",graduated,https://www.youtube.com/live/qcgrHXo1hGY, +179,"Development of an online open science platform, easy and accessible for agricultural students in Cameroon.",Lessa Tchohou Fabrice,Gladys Rotich,"The main aim of the project is to contribute to the quality and adaptable research work through the practice of open science in Cameroon. Specifically, it will be to: - Develop a platform that will connect researchers, students, potential funders and research institutions; - Empower students with skills like research methodology, proposal writing (in the context of Cameroon), and grant writing and management; - Provide job placement opportunities for fresher",7,"Open Science, Agriculture, Cameroon",graduated,https://youtu.be/ImrKuhs6mEI, +180,Data analysis in soil physics: an opportunity of teaching data management and reproducibility,"Sara Acevedo, Carolina Giraldo Olmos",Diego Onna,"The core idea of this project is to create an online repository that hosts as well as examples, datasets and demos for soil science data management. Stakeholders will include early soil scientists who are not familiar with programming, task automatization and open science principles. Overall, we plan to develop online materials that help students to understand how open science + use of scripts + soil science can be merge and create a skillset that is essential in research.",7,"Soil Dataset, Soil Data Reproducibility, Soil Physics",graduated,https://www.youtube.com/live/S4FEmZh5BqE, +181,An interactive map of socio-ecological projects,Nahuel Escobedo,Yo Yehudi,"We seek to bring knowledge to the general public and provide tools for change in order to generate a natural-human environment that is beneficial to both parties. The dissemination of socio-environmental and biodiversity conservation projects, actions and problems is a key point to achieve this objective. Today, with so much information available, but at the same time dispersed in different platforms, there is more than ever a need to concentrate and centralize it, so that it is easily accessible. In this text the fundamental concepts that define us will be explained and we will present the first version of a web tool, which manages to provide information on different socio-environmental projects and detail them in an Interactive Map idealy managed by contributing users.",7,"Socialecology, Sovereignty, Ecology, Enviromental",graduated,https://www.youtube.com/live/S4FEmZh5BqE, +182,"Knowledge and perspectives of open science among researchers in Ghana, West Africa",Bernard Kwame Solodzi,Johanssen Obanda,"Open Science in Africa: The Ghanaian narrative. UNESCO and its stakeholders perceive the Open Science concept as an essential component to advancement of human development through increasing accessibility of the scientific process. To that end, UNESCO has adopted the Open Science recommendations in 2021 to define shared values and principles for OS, identify concrete measures towards OS and provide an international framework for OS policy and practice. However, uptake and adoption of open science in Africa and for that matter, Ghana, has been low, denying researchers and the country in general benefits that the practices accrue. The goal of this project is to assess the knowledge base, understanding and perception of open science in the Ghanaian research space while considering the challenges faced by researchers practising open science. Findings of this study will help establish gaps in practising open science by researchers and advise areas of intervention.",7,"Open Science, Os, Open Access, Low Middle-Income Countries, Ghana, Unesco, Open Science Knowledge, Open Science Challenges",graduated,https://www.youtube.com/live/S4FEmZh5BqE, +183,Open Science Awareness Project for Central Asian Universities,Saule Anafinova,Saranjeet Kaur Bhogal,I would like to conduct a series of open science awareness training on Zoom in frames of which I would like to analyze the developing context of Central Asia and how open science responds OR does not respond to the regional science development needs. I would like to share my findings with Central Asian colleagues.,7,"Open Science, Central Asia, Developing Countries",graduated,https://youtu.be/ImrKuhs6mEI, +184,Open Science platform for humanities and computational social scientists,Aditi Dutta,"Riva Quiroga, Laurah Ondari","Open Data (OD) plays a crucial role in openly sharing scientific knowledge with a worldwide audience (among both academic and non-academic audiences) and encouraging reproducibility. But OD is much less developed in Humanities and Social Science (HSS) research, primarily because of the levels of sensitivity of the data involved, and consent required from participants, which could be difficult for researchers, especially if they are new to data sharing. With the growing interest in computing, researchers working in Computational Social Science (CSS) face similar issues when working with social data in their research, while conforming to legal and ethical restrictions. As per OD guidelines, data must comply with the FAIR principles. But the metrics offered by various OD repositories and publication platforms could be different, which limits the affordances of social activity and the type of OD published. To embrace Open Science projects among HSS and CSS researchers who are working or looking to work with sensitive data, this project proposes a platform (or hub) to promote free, online resources for both professionals and students looking to learn about science and ethics. Here, they can also contribute to discussions related to the topic, post questions, and learn from others' experiences.",7,"Open Research, Open Data, Accessibility, Reproducibility, Humanities, Social Science, Computational Social Science",graduated,https://youtu.be/ImrKuhs6mEI, +185,Open NeuroScience,,Arielle Bennett,"Neuroscience is a vast field of research, ranging from single – cell recordings in animals and primates to electrophysiological and behavioural research in humans and work with patients suffering of brain diseases. This big and diverse field has the unifying goal of studying the underlying structure and function of the brain and uncovering its secrets. Each of the areas in neuroscience use a variety of research practices and while the results they yield are qualitatively different, their ultimate integration towards answering the big ‘how the brain works’ question, is of paramount importance. Open science has a big role to play in this exchange and integration of information. Towards that end I would like to examine closely the degree that the practices of Open Science are used in each of the main areas of Neuroscience and write a scientific report. This report will include literature review, examples of specific cases that Open Science practices are already being used as well as challenges that researchers may be facing while applying these practices in a day to day basis. Finally, the report will conclude with final remarks and future directions.",7,,,, +186,Translate Science,"Daniel Chan, Jennifer Miller",Ailís O'Carroll,"[Translate Science](https://translatescience.org/) is an open volunteer group interested in improving the translation of scientific texts. The group has come together to advocate for and support work on tools, services, and policy for translating science. This encompasses a range of activities to help translations including: providing information, networking, designing and building tools, and advocating for seeing translations as valuable research output. A core activity has been the development of the [Translation Switchboard](https://codeberg.org/translate-science), an open source web application to discover scientific translations. The members of Translate Science are from different backgrounds and motivations, but we are interested in collaborating. For our group, the term “scientific texts"" has a wide spectrum of forms and can mean anything from articles, reports and books, to abstracts, titles, keywords, and indices. We also consider summaries of research for non-research audiences as scientific texts. The project we would like to undertake within the OLS program is to define the scope and mission of the organization and develop shared governance that will have sustainable legitimacy. This project has taken on new urgency with the passing of the organization's founder, Victor Venema.",7,"Translation, Database, Academic Culture, Publishing, Governance, Global, Multilingual",graduated,https://youtu.be/ImrKuhs6mEI, +187,Ethical Implications of Open Source AI: Transparency and Accountability,Gift Kenneth,Isil Poyraz Bilgin,"Exploring the ethical implications of open-source AI is a topic that deals with understanding the potential consequences of making AI systems and their underlying data and algorithms available to the public. One of the main ethical implications of using AI is that it can potentially lead to bias and discrimination, as the data and algorithms used to train these systems may reflect societal biases. Additionally, open data could also raise concerns about data privacy, as the release of sensitive data could lead to negative consequences for individuals and organizations. However, open source AI can also be used to promote transparency and accountability in AI systems. Making the data and algorithms used to train AI systems publicly available, allows for greater oversight and monitoring of these systems to ensure that they are not being used in unethical or harmful ways. Additionally, open source AI can also foster community development and collaboration, allowing for transparency, a wider range of perspectives and expertise to be brought to bear on the development and use of AI. In summary, open source AI has both potential benefits and drawbacks and it is important to consider the ethical implications before implementing it. Therefore, responsible AI governance and social responsibility are crucial.",7,"Ethics, Open Source Ai, Transparency, Accountability, Bias, Machine Learning, Governance, Data Privacy, Algorithmic Fairness, Open Data, Responsible Ai, Explainability",graduated,https://youtu.be/ImrKuhs6mEI, +188,Open-source object recognition software specifically designed for mice in Alzheimers disease,Amir Jafari,Nina Trubanová,"Here are the general steps to developing an open-source object recognition software for mice in Alzheimer's disease studies: 1-Gather a diverse dataset of images of mice commonly used in Alzheimer's research. 2-Preprocess the dataset by cropping, resizing, and converting images to a consistent format. 3-Train a CNN model using the preprocessed dataset with libraries like TensorFlow or PyTorch. 4-Evaluate the model's performance on a test set of images to determine its ability to recognize mice in different scenarios. 5-Integrate the model into a software application for analyzing images of mice in Alzheimer's disease studies, including object detection, tracking, and annotation. 6-Test the software on a diverse set of images and make necessary adjustments. 7-Share the code and dataset on an open-source platform such as GitHub for other researchers to use and improve. To the best of our knowledge, this is a almost exact overview of the process and the actual development that may require more steps and resources depending on the specific requirements.",7,,,, +189,Open educational hands-on tutorial for evaluating fairness in AI classification models,Mariela Rajngewerc,"Andres Sebastian Ayala Ruano, Sabrina López","The main objective of this project is to develop a **hands-on** tutorial for evaluating machine learning models *fairness* in different contexts. Specifically, to generate **open-source class material** (pipeline, slides, code) and a **trainer user guide** to develop and reproduce the tutorial. It is expected to be a ~3 hours class where the tutor presents different datasets and different approaches of *fairness*. The analysis will focus on **understanding which definition of *fairness*** is appropriate in each context; to understand the relations between the selected evaluation method and the implications they could have to disadvantage groups when deployed. On one hand, the focus will be on **alerting and understanding how to evaluate *fairness*** and, on the other hand, **how to do it using open-source libraries**. The code part will be developed on Python using mainly Scikit-Learn and Fairlearn open-source libraries.",7,"Training, Educational, Hands-On Tutorial, Machine Learning, Fairness, Bias Analysis, Classification",graduated,https://www.youtube.com/live/S4FEmZh5BqE, +190,"Comparison of three growth curves for the diagnosis of extrauterine growth retardation at 40 weeks postconceptional age and associated factors in preterm infants in the city of Yaoundé, Cameroon",Sandrine Kengne,Elisee Jafsia,"Extra-uterin growth retardation (EUGR) is defined as weight or height below the 10th percentile relative to the mean for the child's age and sex at 40 weeks post-conceptional age. The objective of this work is to analyze the applicability of growth curves (Intergrowth -21, Fenton and WHO) for the assessment of extra-uterin growth at 40 weeks post-conceptional age and the factors associated with extra-uterin growth retardation in preterm infant in Cameroon. This will be an analytical study of all low birth weight preterm mother-infant pairs present in referral hospitals in the city of Yaoundé whose mothers have given their consent to participate in the study between June 2022 and March 2023. For the diagnosis of EUGR and its associated factors, we will first take the anthropometric parameters of the children at birth at 36 and at 40 PCA as well as information on the parents or their environment. At the end of this analysis, we will be able to choose the appropriate curve for the evaluation of the extra-uterin growth of preterm infants with low birth weight in Yaoundé and to determine the factors associated with the EUGR.",7,"Preterm Infants, Growth Curves, Evaluation, Extra-Uterin Growth Failure, Associated Factors",graduated,https://youtu.be/ImrKuhs6mEI, +191,Euro-BioImaging Scientific Ambassadors Program,Beatriz Serrano-Solano,Joyce Kao,"Euro-BioImaging (https://www.eurobioimaging.eu/) is a research infrastructure that offers open access to imaging technologies, training, and data services in biological and biomedical imaging. Euro-BioImaging consists of imaging facilities, called ‘Nodes’, that have opened their doors to all life science researchers. There are informal community leads within the nodes’ staff and users that often raise awareness about Euro-BioImaging and the provided services. However, there is no official program at the moment that acknowledges them as formal ambassadors. This project aims at launching a Scientific Ambassadors Program for Euro-BioImaging, which will officially reward such contributions and encourage new leads to emerge in the community.",7,"Imaging, Microscopy, Community, Ambassadors, Champions, Community Building",graduated,https://www.youtube.com/live/qcgrHXo1hGY, +192,"momenTUM Research Platform: An open-source, reproducible research infrastructure for digital health","Manuel Spitschan, Anna Magdalena Biller, Marco Ma",Rowland Mosbergen,"Over the past year, we built the new research platform **[momenTUM](https://www.momentumresearch.eu/)**, which consists of an iOS/Android app for delivering interventions and questionnaires to participants in research studies and server software to configure trials, accept data and register them into a REDCap server. Based on the previously developed [schema-app](https://github.com/schema-app/schema), the app uses reproducible JSON files to specify the timing, order and properties of interventions and questionnaires sent to the end-user device. We are beginning to use momenTUM in our research studies examining human sleep and circadian physiology and believe it will be valuable to the scientific community. Currently, while there are various commercial and sometimes pricy solutions to design smartphone-based interventions, we believe that developing an open-source solution is the right thing to do. Our diverse team – consisting of two software developers and two researchers – shares this ethos. Through our participation in OLS-7, we will advance our project, grow our network and learn how to build a community around the project.",7,"Digital Health, Open Source, Smartphone App, Reproducibility, Experience Sampling, Field Studies, Psychology",,, +193,Investigating effective strategies for radical inclusion at academic events,"Siobhan Mackenzie Hall, Daniel Kochin, Carmel Carne",Malvika Sharan,"We are a group of researchers from the University of Oxford looking to establish a discussion about pushing the boundaries of what it means to host an inclusive academic event. This discussion cannot happen in a vacuum and we are mindful of our limited experience and expertise in this space. As such, we intend to take a proactive stance and give voice to thoughts, opinions and lived experiences of conference organisers and attendees with inclusivity concerns. We intend to work towards a publication which is a compilation of our investigation into multiple mediums for collecting viewpoints, debate and strategic implementations. As a first step in achieving this aim and an effective pilot of the discussion points, we have recently hosted our first round of focus groups where we addressed the following topics: * Who are we not seeing at conferences, and what would it actually take to get them there? * Implementation of considerations for constantly changing and sensitive geopolitical issues? * Support for visas and other regulatory considerations * Enforcement of harassment policies and embedding of harassment prevention methods at the earliest planning stages Through this endeavour, we connected with interesting and passionate people. We set up a mailing list where we share regular updates on the ongoing work, and excitingly, we have a list of people potentially interested in collaborating on this project. We hope to draw on their perspectives and experiences in developing a publication and any other potential outputs that will help incite real, tangible change in the space of academic events.",7,"Inclusion, Awareness, Access, Intersectionality, Equal Opportunity",graduated,https://youtu.be/ImrKuhs6mEI, +194,Queering the law: How to make AI with a Queer Perspective from the Majority of the World,Umut Pajaro Velasquez,Milagros Miceli,"For an AI framework with a queer perspective from the Majority World that is going to be used by technologists, final users, policymakers, sociologists, activists, and everyone involved with Artificial Intelligence, we must consider using a common language in all stages of the foundation of any AI: design, development, deployment, and detection of biases. Furthermore, this common language should go around the concepts of fairness, accountability, transparency, and ethics because of actions those could bring in setting the AI foundation and making them less harmful for queer people from the Majority World. This is going to demand that all of us involved in this process think outside the box and bring queer, Majority World theories, methods, and methodologies, also the use of MLP, NLP, neurosciences, and trans theories from the majority world, body theories, cultural studies as a methodology, interviews, focus groups, participatory design, documentary, or case analysis, field research, law-making, regulatory processes, and others, altogether creating this framework. It is understandable, needs to include the language that can transform this specific harmful stereotype into regulations, formal definitions, and actions that can benefit not only queer people but all of us.",7,"Gender, Queer, Theory, Majority World, Frameword, AI",graduated,https://www.youtube.com/live/qcgrHXo1hGY, +195,Data management materials for ELIXIR Estonia,Diana Pilvar,Patricia Herterich,"Online data management materials for researchers should include the following: * Introduction on FAIR principles * Walkthrough of data life cycle * Expanding different life cycle stages with relevant info * Plan - Requirements for data management in Estonia and Europe * Process, Analyse – links to local HPC capabilities * Preserve, Share – links to local and generic repositories * Reuse – Information on how to write good metadata, READMEs, licensing * Open Science * DMP * Current requirements * Programs available for writing DMPs * Tips for writing a good DMP",7,"Data Management, Data Life Cycle, Dmp, Fair, Open Science",graduated,, +196,Build community,Doaa Abdelkader,Michael Landi,"Open science community in Egypt I intend to build up Open science community in Egypt to raise awareness among researchers of the importance of Open Science and how we will guide them to make their research more organized and manageable, increase their visibility, and meet the FAIR principles ( Findable, Accessible, Interoperable, Reusable). also it will be in the line with Egypt Vision 2030. we will have support from FAIR points to meet the researcher's needs by providing workshops, webinars, and conferences to guide them to the right path further Open Science (OS) is an umbrella term that is used to describe movements and practices aimed at increasing the accessibility of scientific knowledge and fostering innovations. To demystify these principles, we briefly describe six of its core components.",7,"Open Science, Research Data Amangement, Research Service",graduated,https://www.youtube.com/live/S4FEmZh5BqE, +197,The Impact of Sleep Deprivation on Mental Health,"Deborah Udoh, Bisola Ahmed",Aswathi Surendran,"Millennials and Gen Zs recently have become obsessed with being online and informed 24/7 so much that it has encroached on sleep time. We tend to attach more importance to skin care, beauty products, exercise and many others ways to live healthy but fail to acknowledge the importance of a good night rest. The need for sleep tends to be underestimated. With the evidence garnered from cumulative research works, one can boldly assert that sleep deprivation has a profound effect on one’s health. This project pays particular attention to the negative impacts of lack of sleep on mental health. Thus, the work will include various sleep disorders, and other causes of sleep loss. It will touch on the normal sleep cycle and factors that distort this cycle. The aim is to provide adequate evidence to enable people make an informed decision about getting better sleep.",7,"Sleep Deprivation, Mental Health, Illness",graduated,https://youtu.be/ImrKuhs6mEI, +198,liforient,Agien Petra Ukeh,Caleb Kibet,"This project is to help every user, be it parents, children or other adults wishing to follow a particular career path find the right pattern towards achieving their life goals. The platform uses the top-down or bottom-up approach to achieve this goal. Using the top-down approach, a user can be interested in a particular field, say Artificial intelligence. The user then keys in the word artificial intelligence and the system gives a detailed guide of all that is required of the field such as academic qualifications needed/natural skills needed too. The program also includes various study programs, schools, scholarships etc, differentiating if it is remote, onsite and hybrid taking note of the locations of the available programs. Each program will also have fees allocation and other details provided by the dataset fed into the system. Statistics such as average salary, working hours etc will also be provided, and related fields as well, which if a user clicks, it will redirect to the clicked field. The bottom up approach uses qualifications be it academic or natural to direct an individual towards available careers for that qualification. Say a student just had the Advanced level passing Biology, chemistry, computer science and maths. The system will also prompt the student to give in natural qualifications such as great organizational skills, working alone or in team, interpersonal skills etc, from which a roadmap to the various available careers based on those qualifications will be given as a guide for the student to follow. Other information such as scholarship opportuinities, internships, schools, programmes etc will be given in the system as well. This system is to take data from contributors all over the world, and updates will be made every now and then to ensure arcuracy of the data.",7,"Artificial Intelligence, Machine Learning, Data Set, Skills, Degrees, Career Path, Internships, Scholarships, Programmes, Schools, Qualifications, Requirements",graduated,https://www.youtube.com/live/S4FEmZh5BqE, +199,Building a searchable project database,Angelica Maineri,Lena Karvovskaya,"Funders, consortia and RIs dealing with a large array of different smaller projects often find it difficult to clearly communicate to the outside what kind of projects they support. While there are efforts to build repositories that focus on data, software or research outputs as primary units, there is less attention to projects as focal points that lead to further outcomes (e.g. data, software, journal articles). I want to build an open, searchable database which connects project descriptions to project members, keywords, and related outcomes. As a use case, I want to build a searchable database of past OLS projects.",7,Project Database,graduated,https://youtu.be/ImrKuhs6mEI, +200,Closer to the sky: co-creating astronomical knowledge in a favela of Rio de Janeiro,"Claudia Mignone, Arianna Cortesi, Gabriela Rufino, Maria Clara Heringer Lourenço",Gracielle Higino,"“Closer to the sky” is an astronomy public engagement project in Rio de Janeiro, Brazil that builds upon workshops for children based on the practice of non-violence developed by the astronomy club, initiated by A. Cortesi and C. Araujo. It entails two parts: 1) The collective exploration of astronomical images and space-based images of Earth (available from open access databases) with children, artists and people in a favela (slum) in Rio. Children will use space imagery to create poems, music, performances and street art together with local artists, to promote a positive and healthy vision of their environment. By exploring images with computers at the local cultural centre, they will practice digital skills while handling data containing information to observe the environment. 2) The creation of a digital map of cultural projects in Rio favelas, including the new artwork and educational material, along with locations linked to the history and practice of astronomy in the city. The project is informed by different aspects of the Open Science framework, from opening a dialogue with the community to creating science and educational material together. The interactive map, all content, lessons learnt and documentation on how to run similar initiatives will be released as open source projects.",7,"Astronomy, Space Science, Public Engagement Of Science, Community Building, Science-Art",graduated,https://youtu.be/ImrKuhs6mEI, +201,"Mapping open-science communities, organizations, and events in Latin America","Jesica Formoso, Irene Vazano, Patricia Loto",Alexander Martinez Mendez,"This project aims to identify communities that actively participate in the **implementation, training, and dissemination of open practices** such as open access, open data, open science, and open educational resources in the **Latin American region**. We will create a **repository** that will collect **information regarding main areas, topics of expertise, and geographical location, as well as the contact information** of the identified organizations and communities. Then, we will create a **website or web-based application** that will feature a **searchable list and an interactive map interface**. Organizations interested in being added to the knowledge base will be able to do so through a pull request on GitHub. The project foresees an automatic update of the list and the map every time a pull request is approved after the new information is curated.",7,"Open Access, Open Source, Open Science Communities, Spanish-Speaking Communities, Mapping, Visualization",graduated,https://www.youtube.com/live/S4FEmZh5BqE, +202,Developing an online snake venomics catalog for easy access to venom proteomics data,Carol O'Brien,Billy Broderick,"Snake venoms are incredibly complex mixtures of many different proteins called toxins. Understanding which particular toxins are in the venoms of each snake is important information for researchers working with snakes, particularly for those developing new anti-venoms against snakebite. There have been many previous studies which have identified which toxins are in which snakes. This is incredibly valuable information for researchers, but the data is trapped in tables, scattered across many different scientific papers. These papers are themselves often trapped behind journal pay-walls. In this project, I propose to; firstly, create a database of snake venom proteomics studies and secondly, create an online platform which will allow easy access to, and visualisation of, the proteins that have been identified in each snake venom. I hope to create a tool which will be useful to anyone interested in understanding snake venoms.",7,"Online Platform, Open Research, Snakebite, Venom, Proteomics, Neglected Tropical Disease",graduated,https://www.youtube.com/live/S4FEmZh5BqE, +203,Biodegradability of Drilling Fluids in different soil types,Chukwuka Ogbonna,Stephane Fadanka,"Drilling fluid is a lubricant used in drilling oil and gas wells and in exploration rigs. It may vary with additives aimed at optimizing and improving the drilling process(Sadiq et al., 2003). They are mixture of natural and synthetic chemical compounds applied to cool and lubricate the drill bit; clean the borehole bottom; drive cuttings to the surface, control formation pressure and improve the function of the drill string and tools in the borehole (API, 1992). The decline of the environment is presently a common and overwhelming challenge globally (Gazali et al., 2017). Studies have shown that uncontrolled disposal of drilling fluid wastes, with accompanying toxic components contribute heavily to the diminishing biodiversity (Vincent-Akpu, 2015; Vincent-Akpu and Sikoki, 2013; Sil et al., 2012). Most drilling firms especially on-shore, prefer to use land spraying (or throwing) as a method of disposing the waste drilling muds. Such unsustainable methods could lead to some hostile environmental impacts (Gazali et al., 2017). Yet, if biodegradation is relied on as a natural and cost-effective option for pollutant breakdown and pollution control (Nrior et al., 2017). The aim of this study is to investigate the biodegradability of drilling fluid in the different soil types. This study, in addition to specifying the ecotoxicological effect of the drilling fluid pollutants in the soil, will chiefly show which soil type most efficiently promotes the drilling waste biodegradability and by implication provide reliable data for policy makers as regards to environmental reclamation",7,"Biodegradability, Drilling Fluid, Soil, Petroleum Hydrocarbons",graduated,, +204,"Building an open, structured, knowledge listing system",Mike Trizna,Pauline Karega,"The project I have in mind for this program has 2 major components. The first component is to build a resource listing system, likely based on Quarto (https://quarto.org/docs/websites/website-listings-custom.html), that will take data from YAML files, and convert to a listing on a static web page that allows for filter and sorting. The we-are-ols.org website actually does an incredible job of displaying structured lists that come from YAML, but uses Jekyll to do this. I also intend to build out a system in GitHub actions that will accept and validate new entries that come through a form or GitHub Issues. The second component would be to create training program that teaches how to use the system -- while also teaching the concepts of version control, metadata schemas, and continuous integration to complete novices.",7,"Knowledge Management, Data Hubs, Awesome Lists, Quarto, Version Control, Schema Validation",,, +205,LA-CoNGA Physics Citizen Science Project,"Alexander Martinez Mendez, Andrés Felipe Ortiz Ferreira, Laura Marcela Becerra Bayona, Alexandra Serrano Mendoza",Melissa Black,"The LA-CoNGA Physics Citizen Science project is a collaborative experience that aims to educate young people about climate change from an open science and data science framework. The project aims to expose secondary school students +in Colombia, Ecuador, Peru and Venezuela to data science research environments and tools at an early age. Through the creation of research workshops and the data generated in a network of weather stations, students will be guided in understanding open science concepts, climate change, statistics and programming. Ultimately, it is hoped that by +carrying out a project, the students will be able to take action to address the effects of climate change in their communities.",7,"Citizen Science, Climate Change, Research Seedbed, Programming",graduated,https://www.youtube.com/live/S4FEmZh5BqE, +206,Facilitating easier academic selection of research students using ML,Sivasubramanian Murugappan,Harini Lakshminarayanan,Our project is to build a machine learning-based tool to match the research students with the most suitable supervisor for them and vice versa by receiving their requirements and expectations. Our ML model uses the responses received from users and classifies them on a high-to-low suitability scale.,7,"Research, Students, Supervisor, Machine Learning",graduated,https://www.youtube.com/live/qcgrHXo1hGY, +207,Bioinformatics Secondary school Outreach in Nigeria,"Emmanuel Adamolekun, Seun Elijah Olufemi, Ayomide Akinlotan",Michael Landi,"Bioinformatics, an interdisciplinary field that combines computer science, statistics, and biology to analyze and interpret biological data. As the amount of biological data generated continues to grow rapidly, there is an increasing demand for professionals with expertise in bioinformatics. To help meet this demand, we propose a university outreach program focused on developing bioinformatics capacity among University students in Nigeria and this will create early interest in genomics data analysis among the students and equip them with the relevant skills set and knowledge in Bioinformatics. Also, we will be creating awareness of Open science among the university students. We would be working alongside other sister organizations to achieve this goal.",7,"Bioinformatics, Open Science, Outreach",graduated,https://www.youtube.com/live/qcgrHXo1hGY, +208,An extensible notebook for open specimens,Nicky Nicolson,"Andrea Sánchez Tapia, Batool Almarzouq","This project is developing a prototype “extensible notebook for open specimens”. This is a link-aware editor for semi-structured data based on personal knowledge management software (Obsidian). This environment plus standard open science tools (reference management tooling and pandoc document production) could help the adoption of open science principles amongst biodiversity researchers. The project is split into three main areas of investigation (effort so far has been focussed on the first): 1. Working environment: can we extend personal knowlege management software to reference biodiversity-relevant data classes (in a similar way to how bibliographic citations are managed) - We have developed a set of Obsidian plugins which facilitate easy access to the data resources needed to (a) work with existing species descriptions from literature and (b) recognise and formally describe new species. (Entry for the forthcoming [Ebbe Neilsen challenge](https://www.gbif.org/article/1G82GL7jw08kS0g6k6MuSa/ebbe-nielsen-challenge)) 1. Review environment: can we generate snapshots for peer-review /publication 2. Publication environment: can we package data for harvesting into data aggregators We aim to enable researchers to develop the ""digital extended specimen"", but without being prescriptive about their workflow: open to access and publish the necessary data - but also open to choose how to organise their work.",7,"biodiversity informatics, species description, specimen citation, research management, record linkage, document production",graduated,https://www.youtube.com/live/qcgrHXo1hGY, +209,PyOrb 1.0 – Automated Analysis Tool for Orbital Interactions,"Tori Gijzen, Yuman Hordijk, Trevor Hamlin",Nadine Spychala,"Introducing PyOrb 1.0, a user-friendly, open-source software designed to streamline the analysis of orbital interactions within various fragments (e.g., atoms in a chemical bond or reactants in a chemical reaction). By harnessing density functional theory computations, this program automates the exploration of Kohn-Sham molecular orbitals (KS-MOs), offering invaluable insights into the fundamental driving forces behind the chemical bond formation and reactions. Our primary objective is to develop an intuitive tool that effortlessly generates and consolidates essential details, including orbital overlaps, energy gaps, orbital Gross Mulliken populations, and coefficients of fragment orbitals within the broader molecular orbitals. The PyOrb 1.0 program will address three major challenges associated with the analysis of MO bonding mechanisms: 1. It automatically identifies the dominant orbital interaction patterns. 2. It presents three different orbital interaction schemes corresponding to different stages of bond formation. 3. It constructs the orbital diagram including a final plot summarizing the key molecular orbitals. While we have already created an initial prototype, there are several enhancements required to enhance the usability of our tool. PyOrb 1.0 holds immense potential in simplifying the systematic analysis of atomic and molecular bonding mechanisms, allowing users to concentrate on advanced analysis tasks. We plan to make the PyOrb 1.0 source code openly accessible online, accompanied by an introductory tutorial, to facilitate easy retrieval and utilization.",8,"Software, Chemistry, Open-Source, Density Functional Calculations, Reaction Mechanism, Activation Strain Model, Bonding Mechanism",graduated,https://www.youtube.com/live/6xJzaQACIzc,VU Amsterdam +210,"Understanding Natural History Organizational Structures, Data Sharing, and Coordination through Biodiversity Informatics and Biocollections",Kit Lewers,"Nicky Nicolson, Laura Carter","An ethnographic study that will using participant observation, open interviews and collection of documents to extract information about networks and information ecosystems of research. Data collection will be in the form of field notes, interview notes and audio recordings and document analysis, respectively. The expected duration of the total study is four years, but this first phase is envisioned as a 4-month project.",8," Science Of Science, Hci, Human Computer Interaction, Information Overload, Collaboration, Networks, Complex Systems, Information Theory, Mutli-Agent Systems",,, +211,Molerhealth,Onabajo Monsurat,Mallory Freeberg,"The Molerhealth project is an initiative aimed at transforming healthcare in Nigeria through the development of an open-source electronic health records (EHR) application. My goal is to address the critical issue of disease misdiagnosis by enabling better information sharing and collaboration between healthcare providers, leading to improved patient outcomes and a more efficient healthcare system. Molerhealth will provide individuals with a secure and user-friendly platform to access, update, and share their comprehensive health records, regardless of their location or healthcare provider. Through this comprehensive EHR system, patients will have seamless continuity of care, as their medical history, test results, medications,allergies and treatment plans will be readily available to healthcare professionals. By harnessing the power of technology, Molerhealth will significantly reduce the rate of misdiagnoses in Nigeria. Doctors will have access to a complete and up-to-date patient profile, enabling accurate diagnoses, appropriate treatment decisions, and timely referrals to specialists when necessary. Moreover, Molerhealth will facilitate better communication between healthcare providers by providing a platform for secure messaging and consultation, enabling the exchange of vital patient information. This collaboration will lead to more informed decision-making, increased efficiency, and ultimately, improved healthcare outcomes. Through its open-source nature, Molerhealth will encourage community participation, innovation, and customization, making it adaptable to the unique healthcare needs of different regions in Nigeria. It will serve as a catalyst for positive change, empowering individuals, and strengthening the healthcare ecosystem as a whole. Together, we will revolutionize healthcare in Nigeria with Molerhealth, ensuring accurate diagnoses, improved patient care, and a healthier future for all.",8,"Healthcare, Africa, Research, Opensource, Disease Misdiagnosis, Technology",graduated,https://www.youtube.com/live/6xJzaQACIzc, +212,Bioinformatics and Health Data Science Internship,Daniel Adediran,Pauline Karega,"My project focuses on creating a dynamic platform that serves as a bridge between bioinformatics, data science students and the pharmaceutical, healthcare and biotechnology industries. By embracing an open-source foundation, the platform would facilitate collaboration and encourage the execution of open-source projects within these industries. This initiative aims to foster a symbiotic relationship where students would enroll in internships and gain practical experience while contributing to the advancement of scientific research and development. Through the platform, bioinformatic and data science students can connect with industry professionals, forming interdisciplinary teams to tackle real-world challenges. By leveraging their specialized skills, these students can apply their knowledge to diverse projects, such as genomics analysis, drug discovery, personalized medicine, and data-driven healthcare solutions. Moreover, the open-source nature of the platform allows for transparency, accessibility, and reproducibility of projects. By participating in these collaborative endeavours, students gain hands-on experience, expand their professional network, and acquire industry-specific insights and simultaneously, the pharmaceutical, healthcare, and biotechnology sectors would benefit from fresh perspectives, innovative ideas and cost-effective solutions provided by the enthusiastic student community. The platform acts as a catalyst for knowledge exchange, empowering students and fostering a culture of open-source collaboration within these industries.",8,"Bioinformatics, Data Science, Open Source Projects, Capacity Building, Industries",,, +213,An Open Handbook and MOOC on Computational Methods for African Media Researchers,"Alette Schoon, Henri-Count Evans",Sara El-Gebali,"This project will revolve around the production of two resources: an open access handbook and a MOOC on computational methods for African Media researchers. These will share various digital, computational and data research methods to study the media in African contexts (including social media) in an easy and accessable manner. We would like to provide some typical African data examples that users will be able to download to follow along. The resources will be based on the winter school Alette has recently convened that was geared specifically for digital media researchers based in Africa.Here we worked with international media researchers from the UK and the Netherlands who shared some of their approaches. They agreed that we could repurpose these into shared open resources as long as their contribution is acknowledged.",8,"Educational Resource Production,Media Studies, Social Media Studies, Research Methods, Big Data, Digital Inequality, African Academic Resources, Scraping, Natural Language Processing, Network Analysis, Data Visualisation, Machine Learning",graduated,https://youtu.be/zJzkGvfDspI,Africa-OLS +214,dr,Konrad Kording,Fotis Psomopoulos,"Inspired by Neuromatch and the many other open educational projects, we will produce high quality notebooks to intuitively teach scientific rigor. These notebooks will combine videos, interactives, text and equations into engaging teaching materials. Results will be jupyter notebooks, jupyter books, and good old fashioned webpages. Community for rigor will build an education team, a tech team, and a community team. All materials will be shared CC-BY. We hope to collaborate with a wider open community in optimizing the materials for a broad range of scientists. If we can lower the incidence of non-rigorous science even just by a few percentage points we would majorly improve biomedical research.",8,"Scientific Rigor, Reproducibility, Neuroscience",,, +215,Digitalization for sustainable Agricultural practices and climate change mitigation,"Nwakaego Gloria Ashiegbu, Olufemi Adesope, Joseph Chimere Onwumere, Dozie Onunkwo","Umar Farouk Ahmad, Irene Ramos","In order to mitigate climate change and ensure global food security, agriculture is essential. Traditional farming methods however causes environmental harm and increase greenhouse gas emissions. Agriculture has a tremendous amount of potential to be transformed into a sustainable and climate-resilient industry as a result of digitalization and cutting-edge technologies. This proposal describes a method for promoting sustainable agriculture and reducing climate change by using digitalization.",8,"Technology, Climate Change, Agricultural Methods, Sustainability, Mitigation",graduated,https://www.youtube.com/live/X9LBc5cYViI, +216,Wind Power System Stability Analysis for Grid Integration: A Statistical Mechanics Approach to the Swing Equation.,Nanje Patrick Itarngoh,Umar Farouk Ahmad,"Stabilizing wind power output for grid integration is a challenge due to variable-speed turbines, causing fluctuating power generation. To prevent voltage overloading, the grid power system must undergo rapid changes to maintain stability. The Swing equation is widely used for stability analysis, but its classical model may lead to erroneous conclusions. A modified Swing equation with forced oscillation and nonlinear damping is proposed, using the Lagrangian of the system derived from the maximum entropy principle. Statistical Mechanics preserves the Swing equation for power systems subjected to forced oscillations. The modified Swing equation is numerically integrated for various external load conditions, including constant, step, periodic, and stochastic loads. The steady state and transient stability of the system are determined by the load nature, magnitude, and damping.",8,"Wind Power, Fluctuation, Stability Analysis, Swing Equation, Statistical Mechanics, Grid Integration",,, +217,Is my research used in clinical trials? - Tool(s) to assess societal impact using open scholarly data,"Maximillian Paulus, Ruben Lacroix, Matthijs de Zwaan",Andres Sebastian Ayala Ruano,"In the past, researchers have relied on commercial databases for scholarly information such as citations. With the acceleration of open science, open scholarly databases have emerged providing access to everyone for free. However, where commercial providers add a layer of abstraction in the form of aggregations and scientometrics, users of open scholarly data are confronted with raw data that can be difficult to work with. As research intelligence, this is where we step in, aiming to turn raw data into useful information. While making custom reports and dashboards is time-consuming and incurs a cost, we are exploring ways to provide a basic set of open-source tools that can be used by everyone, without charge. Our proposal is a tool that allows researchers to check whether their (fundamental) research is being cited by clinical trials. While traditionally only the number of citations has been used to establish impact of a publication, we aim to provide a more inclusive measure of societal impact by investigating the citation network. We will also explore ways to disseminate impact e.g. through visualisations. This implementation will pave the way for a series of similar tools that promote the recognition of research on various levels.",8,"Open Scholarly Data, Clinical Research, Citations, Societal Impact, Scientometrics",graduated,https://www.youtube.com/live/X9LBc5cYViI,VU Amsterdam +218,Assessing the Zinc Finger Protein Mutation and Expression Profile in Kenyan Women with Breast Cancer,Michael Kitoi,Stephane Fadanka,"The most recent evidence (2021) shows that breast cancer is the second leading cause of death in Kenyan women, after cervical cancer. Zinc Finger Proteins (ZNFs) have been shown to play a role in the progression of various types of cancers, including breast cancer. However, the impact of various types of mutations on breast cancer progression and prognosis have not been established in the Kenyan population. Lack of comprehensive knowledge on specific mutations within ZNFs 703,750 and 213 in breast cancer among Kenyan women population has hindered the development of diagnostic and therapeutic strategies for this population.",8,"Znf Proteins, Breast Cancer, Mutation, Gene Expression",,,Africa-OLS +219,openTECR - an open database on thermodynamics of enzyme-catalyzed reactions,"Robert Giessmann, Teddy Groves",Nicolás Palopoli,"I aim to create a reliable, free, machine-actionable data collection of apparent equilibrium constants of enzyme-catalyzed reactions, with a clear change process to integrate new data and correct errors. There exists a data collection of other people in the field, but it is a free-floating csv file, and there are actually different versions of it used by different software packages. I want to unify those. This also includes cross-referencing / integrating other databases to exploit division of labor. Further, I want the project to provide a blueprint on how to set-up databases with no cost for infrastructure / developer capacity, given a specific set of technological skills. Currently I see three big problems: 1) create a FAIR representation of the data, 2) enable the community curation technologically, 3) motivate the community to invest work in the database. In the OLS Open Seeds program, I want to focus on problems 2) and 3).",8,"Enzymes, Thermodynamics, Open Source, Community",graduated,https://www.youtube.com/live/X9LBc5cYViI, +220,The Open Umbrella & Hybrid Learning Field Guide,Derek Moore,Harini Lakshminarayanan,"The umbrella offers a teacher or lecturers who used educational technology, 8 entry points for improving their remote, on campus or in a hybrid courses. The field guide fleshes out these entry points with manageable examples and projects.",8,"Open Education Resources, Open Education Practices, Quality Improvement, Professional Learning",graduated,https://youtu.be/zJzkGvfDspI,Africa-OLS +221,Bioinformatics codeathon,"Pauline Wambui Gachanja, Diana Karan","Laurah Ondari, Pradeep Eranti","This project involves a Bioinformatics codeathon. The purpose is to empower upcoming researchers interested in bioinformatics either as a career or to use bioinformatics tools in their research work. This project aims to provide a platform for bioinformatics enthusiasts to learn, network and appreciate bioinformatics. The codeathon will include two phases, beginning with participants pitching projects using publicly available data. Then followed by application of participants to the successfully selected projects. The project is estimated to run for 16 weeks. The first 4 weeks will be designed to train the participants in basics of bioinformatics, manuscript writing and how to make excellent presentations. During the codeathon, the participants will be expected to divide the roles among themselves and collaboratively work until completion of the project, The participants will present on the progress of their work twice a week. After the 16 weeks, the teams will present their work, the best teams awarded and successful projects published.",8,"Codeathon, Bionformatics, Open Data, Collaboration",graduated,https://youtu.be/zJzkGvfDspI,Africa-OLS +222,Making corporate social responsibility data available and accessible for other researchers,Marlou Ramaekers,"Diana Pilvar, Gladys Rotich","Since 1995, the Center for Philanthropic Studies at VU Amsterdam has conducted a biennial survey measuring corporate social responsibility in the Netherlands. The survey includes questions on corporate philanthropy in the form of giving money, goods and services to charitable causes, sponsorships of organizations, corporate volunteering, and corporate social responsibility behavior, among other topics. The thirteen waves of data have been collected for the Giving in the Netherlands (“Geven in Nederland”) series, which reports macro-economic estimates of the size, composition and trends in philanthropy. The data are rich and unique; they contain extensive information about corporate giving, volunteering and social responsibility as well as background information for large samples of the for-profit landscape in the Netherlands (total n ≈ 12,000). The data have not been documented for external use. As a result, the data have unused potential. The goal of the current project is to make the data publicly available in line with the FAIR principles in a repository that can be used for future editions of the survey.",8,"Fair, Data Sharing, Survey Data, Philanthropy, Corporate Social Responsibility, Business Administration, Economics, Organization Science",graduated,https://www.youtube.com/live/6xJzaQACIzc,VU Amsterdam +223,Gender Differences in the Impostor Phenomenon: A Preregistered and Open-Science Meta-Analysis,"Bo Wang, Jacek Buczny, Wendy Andrews, Hans Ket, Reinout de Vries","Umut Pajaro Velasquez, Nina Trubanová","The impostor phenomenon (IP) refers to self-doubts about one’s abilities and difficulty internalizing individual accomplishments. These individuals attribute their success to external (e.g., oversight or luck), instead of internal (e.g., intelligence or competence) factors. Therefore, they are worried that they will be found out as intellectual frauds or “impostors”. This phenomenon was first described by Clance and Imes in 1978 and received great attention over the last decades. Although initial researchers suggested that especially women suffer from the impostor phenomenon, more recent empirical evidence regarding gender differences is mixed. The aim of the current meta-analysis is to examine whether or not there are gender differences in the impostor phenomenon to examine where these potential gender differences come from moderation and mediation analysis. When conducting the meta-analysis, we want to follow the Preferred Reporting Items for Systematic reviews and Meta-Analysis for Protocols (PRISMA-P; Moher et al., 2015) and use the PRISMA-P templates developed by Moreau and Gamble (2022). We will preregister our study by uploading these templates (e.g., hypotheses, article searching strategies, screening criteria, codebook) and share all study materials and data via the Open Science Framework. We will also keep a logbook to track all details of our project.",8,"Gender, Impostor Feelings, Impostor Phenomenon, Impostor Syndrome, Mental Health, Meta-Analysis",graduated,https://www.youtube.com/live/6xJzaQACIzc,VU Amsterdam +224,Creating an online repository for open collaboration in psychology,"Vasiliki Kentrou, Antonis Koutsoumpis, Bo Wang","Irene Vazano, Jesica Formoso, Patricia Loto","This project aims to develop an online repository to facilitate open collaboration in the field of psychology. The objective is to enable researchers from various locations to share their anonymized data on a centralized platform. The shared datasets will be made accessible to other researchers for further analysis. To accomplish this, the development of machine-readable codebooks is crucial. These codebooks - part of the present project - will enable the automated reading and merging of individual researchers' datasets, resulting in the creation of a comprehensive Giga database in psychology research.",8,"Database, Open Repository, Online Study, Surveys",graduated,https://www.youtube.com/live/6xJzaQACIzc,VU Amsterdam +225,JICMar Network: towards better opportunities and greater collaboration among young marine science researchers in Latin America,"Romina Trinchin, Nicolás Lois, Virginia Andrea García Alonso, Milagro Urricariet, Daniela Risaro, Loreley Lago","Jose Luis Villca Villegas, Alexander Martinez Mendez","The JICMar network (acronym for Young Investigators in Marine Sciences-Latin America) seeks to generate a space for the exchange of ideas and experiences that will serve as input to face the next steps in our professional careers. The virtue of the JICMar network lies in the collaboration to promote inclusion, gender diversity and equal opportunities for anyone studying or working on marine issues. The main activities of JICMar are related to generating a database of researchers, groups and institutes from different countries; socialising academic work with cutting-edge methodologies; centralising and sharing strategies for finding job opportunities and funding, as well as generating a job bank. The communication strategy of the JICMar includes the creation of a mailing list, social networks and a website to disseminate and carry out the various activities.",8,"Young Researchers, Marine Sciences, Latin America, Community, Accessibility, Equality",graduated,https://www.youtube.com/live/X9LBc5cYViI, +226,UbuntuEdu (Concept title),"Roné Wierenga, Henk Wierenga","Tajuddeen Gwadabe, Joyce Kao","I aspire to develop an e-learning platform inspired by Udemy that specifically caters to African individuals, enabling them to upload courses in their native languages. The primary objective of this platform is to promote mother tongue education and offer e-learning opportunities for Africans seeking courses developed by their fellow Africans. Extensive research has consistently demonstrated the advantages of mother tongue education, such as increased literacy rates, enhanced critical thinking abilities, and elevated levels of cognitive processing. While my ultimate vision is to serve the entire African continent, I plan to initiate this endeavor by focusing on South African languages. Accomplishing this goal will entail fostering a sense of community, engaging with educators including teachers, lecturers, and professors, as well as actively involving the general public to encourage content creation and course material publication. While platforms like MijnNederlands have been successfully established for specific languages like Dutch, to the best of my knowledge, no such platform currently exists for African languages. Building this platform will undoubtedly be an immense undertaking, but upon completion of this mentorship program, my aim is to have developed the website and initiated the process of community building.",8,Mother Tongue Education; E-Learning; Education; Short Courses; Multilingualism,graduated,https://youtu.be/qoi0yMS1Idk,Africa-OLS +227,"Building a Searchable Open Data Repository of DNA Collections that are Freely-Shared under OpenMTA, with an Associated Landscape Map Visualisation of the Collection Users","Yan-Kay Ho, Cibele Zolnier Sousa do Nascimento","Sara Villa, Mariela Rajngewerc","The documentation for the Open DNA Collections currently exist in multiple formats, and across three different platforms (the Open Bioeconomy Lab website, Freegenes website, and as collections on Addgene). Despite being a free and open resource, the dispersed nature of the available data makes it difficult for new users to understand which to use, and where to find the most up-to-date information. This project aims to gather all the disparate resources together, reformat the collections into a more standardised data structure, and produce a searchable/FAIR database on the Reclone.org website (the stewarding organisation) to make the collections more informative and accessible for new and old users alike. The outputs of this open data repository project will complement an existing Reclone project that aims to establish Regional Reagent Distribution Hubs in partner institutes (in Argentina, Ghana, and the Philippines) for sharing the physical DNA collections, and to help with capacity building within these institutes and local researchers. A parallel project goal would be to produce a landscape analysis and visualisation map of the current DNA Collections users to help future users in identifying local researchers within the Reclone community who may be able to better support their use of the collections.",8,"Dna Collections, Openmta, Fair, Database, Repository, Github, Visualisation, Mapping, Landscape Analysis, Open Communities, Open Bioeconomy, Open Enzymes, Molecular Diagnostics Toolkits, Synthetic Biology Toolkits, Capacity Building, Biotechnology",graduated,https://www.youtube.com/live/X9LBc5cYViI, +228,Developing an Open Community Repository for SciArt,Arianna Zuanazzi,Saranjeet Kaur Bhogal,"In recent years, the traditional dichotomy between art and science has been increasingly challenged by initiatives and programs (e.g., online resources, mixer programs, “SciArt” projects) that question the rigid definition of either field. These endeavours strive to establish a decentralised collaborative environment where artists and scientists can come together, encouraging them to reconsider and redefine their identities and practices. As part of the open science effort to make scientific data widely available, this project aims to create an Open Community Repository for deposition of raw scientific images. Scientific images are often not accessible to the general audience, educators, and visual artists whose work would benefit from images that portray real scientific spaces, methods, data, and discoveries. We envision that an open repository dedicated to raw scientific images could strengthen collaborations between artists and scientists and kickstart new SciArt partnerships.",8,"Science, Art, Sciart, Raw Images, Community Building, Open Access, Education, Outreach",graduated,https://www.youtube.com/live/X9LBc5cYViI, +229,Assessing word stability in Corpora and its influence on learner dictionaries,Mmasibidi Setaka,Riva Quiroga,"The task of assessing word stability in corpora through addition and removal of words is an important process which can influence which words should be in included or omitted in leaner dictionaries. The aim of the project is to investigate the stability of words in corpora when words are either removed or added, to gain insights into how word frequency distributions found in corpora have an influence on the outcome of learner’s dictionaries. The Oxford and McMillan dictionaries have top 3 000 words they deem important, and this project seeks to follow that example and assess the influence on word selection for learner dictionaries.",8,"Corpora, Dictionaries, Sesotho, Learners, Word Addition, Word Removal",graduated,https://www.youtube.com/live/6xJzaQACIzc,Africa-OLS +230,A Fiji plugin for SOFI analysis,Miyase Tekpinar,Diego Onna,Fluorescence microscopy has significantly contributed to our understanding of cellular processes in recent decades. The development of advanced super-resolution (SR) microscopy techniques has allowed for the examination of cellular structures at the nanoscale. SOFI (Super resolution optical fluctuation imaging method) is an SR method which uses the intensity fluctuations from single emitter and can provide higher resolution even using a couple of hundreds frame from wide-field image. However its analysis are mostly limited with scripted code and is not accessible enough of biologist. Creating an fiji plugin is important to help biologists and spread the method to different research fields.,8,"Sofi, Fiji, Super-Resolution, Microscopy",,, +231,The invisible society: Misgendering in Facial Recognition Systems:,Elena Beretta,Bethan Iley,"Gender is a deeply ingrained constructs in human culture and societies. It permeates our everyday activities, whether real or virtual, from social interactions to our digital lives. By nature, the most significant aspects of culture are reflected in scientific progress, determining its development and evolution. The way technological change is shaped and structured is thus inherently grounded in societal norms and relations, which are themselves equally affected by technological transformations. In this sense, the relationship among technology and gender can be considered as mutually constitutive. This relationship is leading to at least two main consequences: i) individuals increasingly encounter representations of gender embedded in technology; ii) machines are being trained to recognize and react to relevant traits of human identity, including gender. These consequences are made even more evident by the increasingly pervasive use of Automatic Face Analysis Systems (AFAS), especially when those systems are based on face recognition. However, these systems are consistently built on a gender binary construct and almost never take into account non-binary individuals, causing exclusion and reinforce existing prejudices about these communities. The project will break this barrier by analysing how algorithms (un)recognize non-binary faces, to foster the development of inclusive, diverse and trustworthy AI.",8,"Face Recognition, Gender, Non-Binary, Identity, Ethics Of Ai",graduated,https://www.youtube.com/live/6xJzaQACIzc,VU Amsterdam +232,Identification and Prediction of Bacterial Pathogens Colonizing Yellowing Disease in Coastal Kenyan Coconuts: A Machine Learning Approach,Fatma Omar,Elisee Jafsia,"This project aims to investigate the diversity of bacterial pathogens associated with yellowing diseased coconuts along the Kenyan coast. The study will employ a combination of culture-independent methods and NGS techniques for bacterial identification. DNA extraction will be performed using CTAB method, followed by sequencing of 16S rRNA gene using Illumina MiSeq platform. The obtained sequence data will be analyzed using the Qiime2 pipeline. To accurately detect and classify genetic variants, machine learning models including XgBoost, LightGBM, and Random Forest will be trained using Python. The proposed research will shed light on the pathogenic bacteria associated with coconut diseases and facilitate the development of effective control measures.",8,"Coconut, Machine Learning, Next-Generation Sequencing, Bacterial Diversity",graduated,https://www.youtube.com/live/X9LBc5cYViI,OLS-Africa +233,Open-source handbooks infrastructure at VU Amsterdam,"Lena Karvovskaya, Jolien Scholten, Koen Leuveld, Elisa Rodenburg, Jessica Hrudey",Arielle Bennett,"Inspired by the Privacy Handbook (https://utrechtuniversity.github.io/dataprivacyhandbook/about.html ) developed by Utrecht University, colleagues from VU Amsterdam want to create guides on various Research Data Management topics for their own organization. We take the Privacy Handbook and the Turing Way as examples for our work. The goal of the project is to work out the infrastructure which is necessary for a collaboration. We need a template that the team will be able to maintain. We also develop a governance model and contribution guidelines that will make it possible to keep the handbooks as up to date collaborative resources developed and maintained beyond departmental boundaries.",8,"Open Source, Handbook, Github, Rdm, Open Science, Template, Governance, Collaboration",graduated,https://youtu.be/zJzkGvfDspI,VU Amsterdam +234,An online repository of tools and methods for automated archaeological survey,Lucy Killoran,Bjørn Peare Bartholdy,"The aim of this project is to build an online repository which will improve accessibility to automated methods for detecting archaeological features in remote sensing data. The online repository will primarily act as a model garden for archaeological computer vision models, but will also contain example notebooks sharing basic workflows that can be reproduced. I have agreements in place with vision model developers that will allow me to build on their existing technical work to provide the initial set of models. This project is aimed at stakeholders who are (1) interested in gaining an overview of technical research, (2) interested in understanding what is involved in the technical implementation of automated methods, or (3) actively looking for models to apply in their own work. In its first iteration, the model garden will be focused on vision models for archaeological survey but could be expanded in the future to include models for application to different areas of archaeological practice. If possible, and if necessary for the first prototype of the repository, I would also like to collaborate with the Turing's Scivision project to build on their existing catalogue infrastructure to provide access to the models.",8,"Archaeology, Computational Archaeology, Computer Vision, Machine Learning, Heritage Management, Geospatial, Landscape",graduated,https://youtu.be/zJzkGvfDspI, +235,Open Science in Neuroscience: A Practical Guide for Researchers,"Amber Koert, Niels Reijner, Mar Barrantes Cepas, Eduarda Centeno, Dustin Schetters, Lucas Breedt, Nadza Dzinalija, Mona Zimmermann",Siobhan Mackenzie Hall,"Our project aims to develop an innovative and comprehensive Open Science guidebook specifically designed for the neuroscience field, addressing the knowledge gaps and lack of guidance that hinder the implementation of open science(OS) practices among researchers. The guidebook will serve as a go-to resource for researchers, providing them with the necessary knowledge and practical tools to incorporate OS principles into their work. It will offer clear and step-by-step guidance on various aspects of OS, such as data management, pre-registration, sharing protocols, analyzing code, and publishing open access. What sets our guidebook apart is its tailored approach to the neuroscience field. Recognizing the diverse subfields and unique challenges within neuroscience research, we will curate and consolidate existing resources while also developing new content that specifically addresses these considerations. Moreover, this guidebook will offer easily accessible guidance to researchers at all levels: students, early-career scientists, and established professionals alike. It will serve as a valuable resource, supporting them in adopting OS practices and fostering collaboration, reproducibility, and transparency within the neuroscience community Overall, our project aims to bridge the gap between knowledge and implementation, empowering neuroscience researchers to embrace OS and contribute to the advancement of their field.",8,"Neuroscience, Biomedical, Open Science, Resource, Innovation, Collaboration",graduated,https://www.youtube.com/live/X9LBc5cYViI,VU Amsterdam +236,Estructura e infraestructura para la formación por cohortes virtuales,"Nicolás Palopoli, Monica Alonso, Julián Buede, Melissa Black, Paz Míguez",Gemma Turon,"Como parte de nuestro trabajo en la construcción de capacidades científicas y técnicas en forma responsable y con una mirada local, en MetaDocencia ofrecemos cursos virtuales y gratuitos para la comunidad hispanohablante. A partir de la adjudicación de tres subsidios TOPST de NASA y trabajando en conjunto con OLS y 2i2c, dos organizaciones con intereses afines, migraremos hacia la organización de cohortes virtuales de formación enfocadas en ciencia abierta. Este proyecto busca explorar las alternativas disponibles para organizar cohortes virtuales efectivas y avanzar en el diseño y la implementación de una hoja de ruta que facilite la migración de MetaDocencia hacia esta alternativa de entrenamiento, sirviendo también como referencia para otras organizaciones con intereses similares.",8,"Ciencia Abierta, América Latina, Comunidad, Enseñanza, Cohortes Virtuales",graduated,https://www.youtube.com/live/X9LBc5cYViI,MetaDocencia +237,Gobernanza 2.0 de MetaDocencia,"Romina Pendino, Iván Gabriel Poggio, Paola Andrea Lefer, Laura Ascenzi",Verónica Xhardez,"En 2022 comenzamos un proceso de aprendizaje colectivo y colaborativo para diseñar la gobernanza de MetaDocencia. El objetivo fue elaborar un modelo transparente para la toma de decisiones estratégicas, pensado desde y para nuestro contexto cultural y regional. Para ello, definimos una modalidad de trabajo interna y un método de votación para la toma de decisiones por acuerdo mayoritario y de forma democrática. Discutimos, consensuamos y actualizamos nuestra misión y visión, para que reflejen con mayor fidelidad nuestra propuesta actual. Como resultado del proceso, quedaron establecidos órganos de funcionamiento y reglamentos internos, junto a roles ejecutivos, responsabilidades y funciones de quienes lideran cada equipo. La puesta en práctica de nuestra nueva gobernanza comenzó en diciembre de 2022, con la conformación de un nuevo Consejo Asesor (CA) con estructura y roles ampliados, y la convocatoria a una primera reunión de acuerdo a los principios de funcionamiento actualizados. En este proyecto nos proponemos completar la gobernanza de MetaDocencia formalizando y documentando las siguientes secciones: Pautas de Convivencia (PdC). Política de Conflicto de Interés (COI). Política Editorial Abierta (PEA). Plan para la revisión anual de nuestra gobernanza.",8,"Gobernanza, Formalización, Transparencia, Participación, Construcción De Capacidades, Mirada Local",graduated,https://www.youtube.com/live/X9LBc5cYViI,MetaDocencia diff --git a/data/roles/expert.csv b/data/roles/expert.csv new file mode 100644 index 0000000..f8f14cc --- /dev/null +++ b/data/roles/expert.csv @@ -0,0 +1,171 @@ +,city,country,first-name,last-name,pronouns,country_3,continent,longitude,latitude,ols-1,ols-2,ols-3,ols-4,ols-5,ols-6,ols-7,ols-8 +adam-gristwood,Heidelberg,Germany,Adam,Gristwood,he/him,DEU,Europe,8.694724,49.4093582,,,expert,,,,, +aidanbudd,Heidelberg,Germany,Aidan,Budd,he/him,DEU,Europe,8.694724,49.4093582,expert,expert,expert,,,,, +ajstewartlang,Manchester,United Kingdom,Andrew,Stewart,he/him,GBR,Europe,-2.2451148,53.4794892,expert,expert,,expert,,,, +aleesteele,London,United Kingdom,Anne Lee,Steele,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,expert,, +aliaslaurel,Córdoba,Argentina,Laura,Ascenzi,She/her/ella,ARG,South America,-4.7760138,37.8845813,,,,,,expert,, +anayan321,Bangkok,Thailand,Anunya,Opasawatchai,"She, her",THA,Asia,100.6224463,13.8245796,,,,expert,,,, +andreasancheztapia,"Merced, CA",Colombia,Andrea,Sánchez Tapia,She/her,COL,South America,-120.7678602,37.1641544,,,,,,expert,, +anenadic,Manchester,United Kingdom,Aleksandra,Nenadic,she/her/hers,GBR,Europe,-2.2451148,53.4794892,expert,expert,expert,,,,, +annakrystalli,Sheffield,United Kingdom,Anna,Krystalli,she/her,GBR,Europe,-1.4702278,53.3806626,expert,,expert,,,,, +annefou,Oslo,Norway,Anne,Fouilloux,she/her,NOR,Europe,10.7389701,59.9133301,,,,expert,,,, +annemtreasure,Cape Town,South Africa,Anne,Treasure,,ZAF,Africa,18.417396,-33.928992,,,,,expert,,, +arielle-bennett,Stevenage,United Kingdom,Arielle,Bennett,she/her,GBR,Europe,-0.2027155,51.9016663,,expert,expert,expert,,expert,, +batoolmm,Liverpool,Saudi Arabia,Batool,Almarzouq,She/Her,SAU,Asia,-2.99168,53.4071991,,,,,,expert,, +bduckles,"Portland, Oregon",United States,Beth,Duckles,"she, her",USA,North America,-122.674194,45.5202471,,expert,expert,expert,,,, +beatrizserrano,Freiburg,Germany,Beatriz,Serrano-Solano,she/her,DEU,Europe,7.8494005,47.9960901,,,expert,,,,, +bebatut,Clermont-Ferrand,France,Bérénice,Batut,she/her,FRA,Europe,3.0819427,45.7774551,,expert,expert,expert,,,, +bruno-soares,Rio De Janeiro,Brazil,Bruno,Soares,He/Him,BRA,South America,-43.2093727,-22.9110137,,,,expert,,,, +burkemlou,Brisbane,Australia,Melissa,Burke,She/Her,AUS,Oceania,-122.402794,37.687165,,expert,expert,,,,, +c-martinez,Amsterdam,Netherlands,Carlos,Martinez-Ortiz,he/him,NLD,Europe,4.8924534,52.3730796,,,expert,,,,, +camachoreina,Paris,France,Reina,Camacho Toro,She/her,FRA,Europe,2.3200410217200766,48.8588897,,,,expert,,,, +carogiraldo,Bogota,Colombia,Carolina,Giraldo Olmos,,COL,South America,-74.0835643,4.6529539,,,,,,,,expert +cassgvp,Oxford,United Kingdom,Cassandra,Gould Van Praag,she/her,GBR,Europe,-1.2578499,51.7520131,,expert,,,expert,,, +cgentemann,Santa Rosa,United States,Chelle,Gentemann,she/her,USA,North America,-122.7141049,38.4404925,,,,,,expert,, +christinerogers,Montreal,Canada,Christine,Rogers,she/her,CAN,North America,-73.5698065,45.5031824,,expert,expert,,,,, +coopersmout,Brisbane,Australia,Cooper,Smout,He/him,AUS,Oceania,-122.402794,37.687165,,,,expert,,,, +da5nsy,Washington Dc,United States,Danny,Garside,he/him,USA,North America,-77.0365427,38.8950368,,,expert,,,,, +david-selassie-opoku,Berlin,Germany,David Selassie,Opoku,,DEU,Europe,13.3888599,52.5170365,,,,expert,,,, +deepakunni3,Basel,Switzerland,Deepak,Unni,He/Him,CHE,Europe,7.5878261,47.5581077,,,,,expert,expert,, +delphine-l,Raleigh,United States,Delphine,Lariviere,She/her,USA,North America,-78.6390989,35.7803977,,,,expert,,,, +demellina,London,United Kingdom,Demitra,Ellina,She/her,GBR,Europe,-0.14405508452768728,51.4893335,expert,expert,expert,,,,, +diana-pilvar,Tartu,Estonia,Diana,Pilvar,,EST,Europe,26.72245,58.3801207,,,,,,,,expert +dimmestp,Edinburgh,United Kingdom,Sam,Haynes,He/Him,GBR,Europe,-3.1883749,55.9533456,,,,expert,,expert,, +duerrsimon,Lausanne,Switzerland,Simon,Duerr,he/him,CHE,Europe,6.6327025,46.5218269,,,,expert,,,, +ealescak,Anchorage,United States,Emily,Lescak,"she, her",USA,North America,-149.1107333,61.1758781,,,expert,expert,,,, +ekaroune,Portsmouth,United Kingdom,Emma,Karoune,she/her,GBR,Europe,-1.0906023,50.800031,,,expert,expert,,expert,, +elisa-on-github,Amsterdam,Netherlands,Elisa,Rodenburg,she/her,NLD,Europe,4.8924534,52.3730796,,,,,,expert,,expert +emma-anne-harris,Berlin,Germany,Emma Anne,Harris,,DEU,Europe,13.3888599,52.5170365,,,expert,,,,, +emma-lawrence,London,United Kingdom,Emma,Lawrence,She/hers,GBR,Europe,-0.14405508452768728,51.4893335,,,,expert,,,, +estherplomp,The Hague,Netherlands,Esther,Plomp,she/her/hers,NLD,Europe,4.2696802205364515,52.07494555,,,expert,expert,,expert,,expert +ewallace,Edinburgh,United Kingdom,Edward,Wallace,"he, him",GBR,Europe,-3.1883749,55.9533456,,,expert,expert,expert,,, +fpsom,Thessaloniki,Greece,Fotis,Psomopoulos,he/him,GRC,Europe,22.9352716,40.6403167,expert,expert,expert,expert,,,, +gedankenstuecke,Paris,France,Bastian,Greshake Tzovaras,he/him,FRA,Europe,2.3200410217200766,48.8588897,expert,expert,expert,,,,, +gemmaturon,Barcelona,Spain,Gemma,Turon,she/her,ESP,Europe,2.1774322,41.3828939,,,,,,,,expert +georgiahca,London,United Kingdom,Georgia,Aitkenhead,She/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,expert,,, +graciellehigino,Vancouver,Canada,Gracielle,Higino,She/her,CAN,North America,-123.113952,49.2608724,,expert,,expert,,expert,, +ha0ye,Gainesville,United States,Hao,Ye,he/him,USA,North America,-82.3249846,29.6519684,expert,expert,expert,expert,expert,expert,, +harpreetsingh05,Jalandhar,India,Harpreet,Singh,,IND,Asia,75.576889,31.3323762,,,expert,,,,, +hrhotz,Basel,Switzerland,Hans-Rudolf,Hotz,,CHE,Europe,7.5878261,47.5581077,,,,,,expert,, +iramosp,Mexico City,Mexico,Irene,Ramos,she / her,MEX,North America,-99.1331785,19.4326296,,,,expert,expert,expert,expert,expert +iratxepuebla,Cambridge,United Kingdom,Iratxe,Puebla,she/her,GBR,Europe,0.1186637,52.2055314,,,expert,expert,expert,,, +ivotron,Hermosillo,Mexico,Ivo,Jimenez,he/him,MEX,North America,-110.9692202,29.0948207,,,expert,,,,, +jafsia,Yaounde,Cameroon,Elisee,Jafsia,He/Him,CMR,Africa,11.5213344,3.8689867,,,,,,,,expert +jcolomb,Berlin,Germany,Julien,Colomb,he/his,DEU,Europe,13.3888599,52.5170365,,expert,,expert,,,,expert +jesperdramsch,Bonn,Germany,Jesper,Dramsch,they/them,DEU,Europe,7.10066,50.735851,,,,,expert,,, +jessicas11,Durham,United States,Jessica,Scheick,she/her,USA,North America,-1.75,54.666667,,,,expert,,,, +jezcope,Harrogate,United Kingdom,Jez,Cope,he/him,GBR,Europe,-1.5391039,53.9921491,,expert,expert,,expert,expert,, +jmmaok,"Cary, Nc",United States,Jennifer,Miller,,USA,North America,-78.7812081,35.7882893,,,,expert,,,, +joelostblom,Vancouver,Canada,Joel,Ostblom,he/him,CAN,North America,-123.113952,49.2608724,expert,,expert,,,,, +johav,Berlin,Germany,Jo,Havemann,,DEU,Europe,13.3888599,52.5170365,,,expert,,,,, +jonny-heath,Brighton,United Kingdom,Jonny,Heath,He/him,GBR,Europe,-0.1400561,50.8214626,,,expert,,,,, +joyceykao,Aachen,Germany,Joyce,Kao,She/Her,DEU,Europe,6.083862,50.776351,,,expert,expert,expert,expert,, +jsheunis,Juelich,Germany,Stephan,Heunis,he/him,DEU,Europe,6.3611015,50.9220931,,,,,expert,,, +k8hertweck,"Seattle, Wa",United States,Kate,Hertweck,perceived pronouns (anything works),USA,North America,-122.330062,47.6038321,,,,expert,,,, +karvovskaya,Amsterdam,Netherlands,Lena,Karvovskaya,She/her,NLD,Europe,4.8924534,52.3730796,,expert,expert,expert,expert,expert,, +katesimpson,London/ Great Union Canal/ Leeds,United Kingdom,Kate,Simpson,She/her,GBR,Europe,,,,,expert,,,,, +katoss,Paris,France,Katharina,Kloppenborg,she/her,FRA,Europe,2.3200410217200766,48.8588897,,,,expert,,,, +klauer2207,Cambridge,United Kingdom,Katharina,Lauer,she/her,GBR,Europe,0.1186637,52.2055314,,expert,,,expert,,, +kmexter,Oostende,Belgium,Katrina,Exter,,BEL,Europe,2.9226366807233966,51.184683899999996,,,expert,,,,, +koerding,Philadelphia,United States,Konrad,Kording,he/ him,USA,North America,-75.1635262,39.9527237,,,,,,expert,, +kswhitney,Rochester,United States,Kaitlin,Stack Whitney,she/her,USA,North America,-77.615214,43.157285,expert,,expert,expert,,,, +landimi2,Nairobi,Kenya,Michael,Landi,He/Him,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,,,expert +lauracarter,London,United Kingdom,Laura,Carter,she/her,GBR,Europe,-0.12765,51.5073359,,,expert,expert,expert,expert,expert, +lauracion,Ciudad Autónoma De Buenos Aires,Argentina,Laura,Ación,she/ella,ARG,South America,-58.43562340522388,-34.61612315,,expert,expert,,,,, +loubez,Cape Town,South Africa,Louise,Bezuidenhout,she/her,ZAF,Africa,18.417396,-33.928992,,,expert,,,,, +luispedro,Shanghai,China,Luis Pedro,Coelho,he/them,CHN,Asia,121.4700152,31.2312707,expert,expert,,,expert,,, +lwinfree,Austin,United States,Lilly,Winfree,she/her,USA,North America,-97.7436995,30.2711286,,expert,,expert,,expert,, +macziatko,Dublin,Ireland,Nina,Trubanová,she/her/hers,IRL,Europe,-6.2605593,53.3493795,,,,,,,,expert +malloryfreeberg,Cambridge,United Kingdom,Mallory,Freeberg,she/her,GBR,Europe,0.1186637,52.2055314,,,,,,expert,, +malvikasharan,London,United Kingdom,Malvika,Sharan,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,expert,expert,,,,, +marimeireles,Berlin,Germany,Mariana,Meireles,she/her,DEU,Europe,13.3888599,52.5170365,,,,,,expert,, +markuskonk,Enschede,Netherlands,Markus,Konkol,,NLD,Europe,6.870595664097989,52.22336325,,,,expert,,,, +marta-lloret-llinares,Cambridge,United Kingdom,Marta,Lloret Llinares,She/her,GBR,Europe,0.1186637,52.2055314,,,expert,,,,, +martinagvilas,Frankfurt Am Main,Germany,Martina,Vilas,She/her,DEU,Europe,8.6820917,50.1106444,,expert,expert,,,,, +martlj,London,United Kingdom,Martin,Jones,he/him,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,expert,, +matouse,London,United Kingdom,Matous,Elphick,He/Him,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,expert,, +meagdoh,Washington,United States,Meag,Doherty,she/her,USA,North America,-77.0365427,38.8950368,,expert,expert,expert,,,, +megmugure,Nairobi,Kenya,Margaret,Wanjiku,she/her,KEN,Africa,36.8288420082562,-1.3026148499999999,,,expert,,,,, +melibleq,São Paulo,Brazil,Melissa,Black,she/her,BRA,South America,-47.1583944,-1.2043218,,,,,,expert,, +merrcury,Kurukshetra,India,Himanshu,Garg,He / Him,IND,Asia,76.8482787,29.9693747,,,,expert,,,, +miguel-silan,Metro Manila / Grenoble,France,Miguel,Silan,,FRA,Europe,,,,,,,,,expert, +milagro-urricariet,Ciudad Autónoma De Buenos Aires,Argentina,Milagro,Urricariet,she/her,ARG,South America,-58.4370894,-34.6075682,,,,,,,,expert +mishrose123,Cambridge,United Kingdom,Michelle,Mendonca,she/her,GBR,Europe,0.1186637,52.2055314,,,expert,,,,, +msundukova,Bilbao,Spain,Mayya,Sundukova,she/her,ESP,Europe,-2.9350039,43.2630018,,,,,expert,expert,, +mxrtinez,Bucaramanga,Colombia,Alexander,Martinez Mendez,,COL,South America,-73.1047294009737,7.16698415,,,,expert,,expert,, +nadinespy,Brighton,United Kingdom,Nadine,Spychala,she/her,GBR,Europe,-0.1400561,50.8214626,,,,,,expert,,expert +nessa111987,Oxford,United Kingdom,Vanessa,Fairhurst,she/her,GBR,Europe,-1.2578499,51.7520131,,,,,,,,expert +nomadscientist,Cambridge,United Kingdom,Wendi,Bacon,She/her,GBR,Europe,0.1186637,52.2055314,,,expert,,,,, +npalopoli,Buenos Aires,Argentina,Nicolás,Palopoli,Él/He/Him,ARG,South America,-58.4370894,-34.6075682,,expert,expert,,,,, +pazmiguez,Buenos Aires,Argentina,Paz,Míguez,she/her,ARG,South America,-58.4370894,-34.6075682,,,,,,,,expert +phaarouknucleus,Kano,Nigeria,Umar Farouk,Ahmad,,NGA,Africa,8.5364136,11.8948389,,,,,,,,expert +pherterich,Edinburgh,United Kingdom,Patricia,Herterich,she/her,GBR,Europe,-3.1883749,55.9533456,expert,expert,,,expert,expert,, +pivg,Cambridge,United Kingdom,Piraveen,Gopalasingam,he/him,GBR,Europe,0.1186637,52.2055314,,,expert,,,,, +prashbio,Jaipur,India,Prash,Suravajhala,He/Him,IND,Asia,75.8189817,26.9154576,,,expert,,,,, +proccaserra,Oxford,United Kingdom,Philippe,Rocca-Serra,he/him,GBR,Europe,-1.2578499,51.7520131,,,expert,,,,, +profgiuseppe,Bologna,Italy,Giuseppe,Profiti,he/him/his,ITA,Europe,11.3426327,44.4938203,expert,expert,expert,expert,,expert,,expert +rainsworth,Manchester,United Kingdom,Rachael,Ainsworth,she/her,GBR,Europe,-2.2451148,53.4794892,expert,expert,expert,,,,, +raphaels1,London,United Kingdom,Raphael,Sonabend,They/He,GBR,Europe,-0.14405508452768728,51.4893335,,,,,expert,,, +richarddushime,Kampala,Uganda,Richard,Dushime,He/Him,UGA,Africa,32.5813539,0.3177137,,,,,,,,expert +samvanstroud,London,United Kingdom,Sam,Van Stroud,,GBR,Europe,-0.14405508452768728,51.4893335,,,expert,,,,, +santosrac,Piracicaba,Brazil,Renato Augusto,Correa Dos Santos,He,BRA,South America,-47.6493269,-22.725165,,expert,,,expert,,, +sapetti9,Bologna,Italy,Sara,Petti,she/her,ITA,Europe,11.3426327,44.4938203,,,,,,expert,, +saravilla,London,United Kingdom,Sara,Villa,she/her,GBR,Europe,-0.12765,51.5073359,,,,,,expert,,expert +sayalaruano,Maastricht,Netherlands,Andres Sebastian,Ayala Ruano,he/him,NLD,Europe,5.6969881818221095,50.85798545,,,,,,expert,, +selgebali,Gothenburg,Sweden,Sara,El-Gebali,"She, her",SWE,Europe,-100.1619896,40.9277324,,,,expert,expert,expert,, +serahrono,Tallinn,Estonia,Serah,Rono,"she, her, hers",EST,Europe,24.7453688,59.4372155,,,expert,,,,, +seunolufemi123,Ogbomoso,Nigeria,Seun Elijah,Olufemi,,NGA,Africa,4.25,8.133,,,,,,,,expert +sgibson91,London,United Kingdom,Sarah,Gibson,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,expert,expert,,,,, +smklusza,Morrow,United States,Stephen,Klusza,he/him/his,USA,North America,-82.7771661,40.4574358,,,expert,expert,,,, +sofia-kirke-forslund,Berlin,Germany,Sofia,Kirke Forslund,she/her,DEU,Europe,13.3888599,52.5170365,,expert,,,,,, +stefaniebutland,Kamloops,Canada,Stefanie,Butland,she/her,CAN,North America,-120.339415,50.6758269,,,expert,,expert,,, +tai-rocha,Rio De Janeiro,Brazil,Tainá,Rocha,,BRA,South America,-43.2093727,-22.9110137,,,expert,,,,, +teresa-cisneros,London,United Kingdom,Teresa,Cisneros,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,expert,,, +thessaly,Bristol,United Kingdom,Julieta,Arancio,She/her,GBR,Europe,-2.5972985,51.4538022,,expert,expert,expert,,,, +tobyhodges,Heidelberg,Germany,Toby,Hodges,he/him,DEU,Europe,8.694724,49.4093582,,expert,expert,,,expert,, +tsonika,Melbourne,Australia,Sonika,Tyagi,she/her,AUS,Oceania,144.9631732,-37.8142454,,expert,expert,,,,, +unode,Heidelberg,Germany,Renato,Alves,he/him,DEU,Europe,8.694724,49.4093582,expert,expert,expert,expert,,,, +yvanlebras,Concarneau,France,Yvan,Le Bras,He,FRA,Europe,-3.9223889,47.8757017,,expert,expert,,,,, +aath0,,Switzerland,Athina,Tzovara,she/her,CHE,Europe,,,expert,expert,,,,,, +agbeltran,,United Kingdom,Alejandra,Gonzalez-Beltran,,GBR,Europe,,,,expert,,,,,, +alecandian,,Netherlands,Alessandra,Candian,she/her/hers,NLD,Europe,,,,,,,,expert,, +alexholinski,,United Kingdom,Alexandra,Holinski,She/her,GBR,Europe,,,,,expert,expert,expert,,, +alexwlchan,,United Kingdom,Alex,Chan,they/she,GBR,Europe,,,,expert,expert,expert,expert,,,expert +angelicamaineri,,Netherlands,Angelica,Maineri,She/her,NLD,Europe,,,,,,,,,,expert +anita-broellochs,,United States,Anita,Bröllochs,she/her,USA,North America,,,,expert,,,,,, +anneclinio,,Brazil,Anne,Clinio,she/her,BRA,South America,,,expert,,,,,,, +bgruening,,Germany,Björn,Grüning,he/him,DEU,Europe,,,expert,expert,,,,,, +bhuvanameenakshik,,India,Bhuvana,Meenakshi Koteeswaran,she/her,IND,Asia,,,expert,,,,,,, +chiarabertipaglia,,United States,Chiara,Bertipaglia,she/her,USA,North America,,,,expert,,,,,, +dasaderi,,United States,Daniela,Saderi,she/her,USA,North America,,,expert,expert,,,,,, +emmyft,,Netherlands,Emmy,Tsang,she/her,NLD,Europe,,,expert,expert,,,,,, +georgianaelena,,Romania,Georgiana,Dolocan,she/her,ROU,Europe,,,,,,,,,expert,expert +hdinkel,,Germany,Holger,Dinkel,he/him,DEU,Europe,,,expert,expert,,,,,, +inquisitivevi,,Germany,Vinodh,Ilangovan,he/him,DEU,Europe,,,expert,,,,,,, +jasonjwilliamsny,,United States,Jason,Williams,he/him,USA,North America,,,expert,expert,,,,,, +kariljordan,,United States,Kari,L. Jordan,she/her,USA,North America,,,expert,expert,,,,,, +katrinleinweber,,Germany,Katrin,Leinweber,she/her,DEU,Europe,,,expert,,,,,,, +kipkurui,,Kenya,Caleb,Kibet,he/him,KEN,Africa,,,expert,expert,,,,expert,, +kirstiejane,,United Kingdom,Kirstie,Whitaker,she/her,GBR,Europe,,,expert,expert,,,,,, +martenson,,Czechia,Martin,Čech,he/him,CZE,Europe,,,,expert,,,,,, +mblue9,,Australia,Maria,Doyle,she/her,AUS,Oceania,,,,expert,,,,,, +mkuzak,,Netherlands,Mateusz,Kuzak,he/him,NLD,Europe,,,expert,expert,,,,,, +mruizvelley,,Germany,Mariana,Ruiz Velasco,she/her,DEU,Europe,,,expert,,,,,,, +mvdbeek,,France,Marius,van den Beek,he/him,FRA,Europe,,,expert,,,,,,, +nerantzis,,Greece,Nikolaos,Nerantzis,he/him,GRC,Europe,,,expert,expert,,,,,, +npscience,,United Kingdom,Naomi,Penfold,she/her/they/them,GBR,Europe,,,expert,expert,,expert,,,, +nsoranzo,,United Kingdom,Nicola,Soranzo,he/him,GBR,Europe,,,expert,,,,,,, +orchid00,,Australia,Paula,Andrea Martinez,she/her,AUS,Oceania,,,expert,expert,,,,,, +paulvill,,France,Paul,Villoutreix,he/him,FRA,Europe,,,,expert,,,,,, +rgaiacs,,Brazil,Raniere,Silva,he/him,BRA,South America,,,,expert,,,,,, +rossmounce,,United Kingdom,Ross,Mounce,he/him,GBR,Europe,,,,expert,,,,,, +satagopam7,,Luxembourg,Venkata,Satagopam,he/him,LUX,Europe,,,expert,,,,,,, +sdopoku,,Ghana,David,Selassie Opoku,he/him,GHA,Africa,,,,expert,,,,,, +tklingstrom,,Sweden,Tomas,Klingström,he/him,SWE,Europe,,,,expert,,,,,, +tnabtaf,,United States,Dave,Clements,he/him,USA,North America,,,,expert,,expert,,,, +vcheplygina,,Netherlands,Veronika,Cheplygina,she/her,NLD,Europe,,,,expert,,,,,, +vickynembaware,,South Africa,Vicky,Nembaware,she/her,ZAF,Africa,,,expert,expert,,,,,, +yochannah,,United Kingdom,Yo,Yehudi,they/them,GBR,Europe,,,,expert,expert,,,,, +zebetus,,United Kingdom,Harry,Smith,,GBR,Europe,,,,expert,,,,,, +gugy89,,,Gudrun,Gygli,,,,,,,,,,expert,,, +tallmar,,,Marta,Lloret Llinares,,,,,,,,,,,expert,, diff --git a/data/roles/facilitator.csv b/data/roles/facilitator.csv new file mode 100644 index 0000000..21e8a63 --- /dev/null +++ b/data/roles/facilitator.csv @@ -0,0 +1,31 @@ +,city,country,first-name,last-name,pronouns,country_3,continent,longitude,latitude,ols-1,ols-2,ols-3,ols-4,ols-5,ols-6,ols-7,ols-8 +amangoel185,Manchester,United Kingdom,Aman,Goel,he/him/his,GBR,Europe,-2.2451148,53.4794892,,,,,,,facilitator, +arielle-bennett,Stevenage,United Kingdom,Arielle,Bennett,she/her,GBR,Europe,-0.2027155,51.9016663,,,,,,,,facilitator +batoolmm,Liverpool,Saudi Arabia,Batool,Almarzouq,She/Her,SAU,Asia,-2.99168,53.4071991,,,,facilitator,facilitator,facilitator,, +complexbrains,Montreal,Canada,Isil,Poyraz Bilgin,Dr. or Miss,CAN,North America,-73.5698065,45.5031824,,,,,,facilitator,, +da5nsy,Washington Dc,United States,Danny,Garside,he/him,USA,North America,-77.0365427,38.8950368,,,,facilitator,,,, +ekaroune,Portsmouth,United Kingdom,Emma,Karoune,she/her,GBR,Europe,-1.0906023,50.800031,,,,facilitator,,,, +emmanuel19-ada,Ogbomosho,Nigeria,Emmanuel,Adamolekun,He/His,NGA,Africa,4.25,8.133,,,,,,,,facilitator +glado718,Nairobi,Kenya,Gladys,Rotich,She/her,KEN,Africa,36.82884201813725,-1.3026148499999999,,,,,,,facilitator,facilitator +ismael-kg,London,United Kingdom,Ismael,Kherroubi Garcia,He/him,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,facilitator,, +jafsia,Yaounde,Cameroon,Elisee,Jafsia,He/Him,CMR,Africa,11.5213344,3.8689867,,,,,,,facilitator, +jformoso,Ciudad Autónoma De Buenos Aires,Argentina,Jesica,Formoso,she/her,ARG,South America,-58.4370894,-34.6075682,,,,,,,,facilitator +karegapauline,Nairobi,Kenya,Pauline,Karega,she/her,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,facilitator,, +landimi2,Nairobi,Kenya,Michael,Landi,He/Him,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,facilitator,facilitator,,,facilitator +lauracion,Ciudad Autónoma De Buenos Aires,Argentina,Laura,Ación,she/ella,ARG,South America,-58.43562340522388,-34.61612315,,,,,,,,facilitator +laurah-nyasita-ondari,Nairobi,Kenya,Laurah,Ondari,She/Her,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,,facilitator,facilitator +lessa-maker,Centre,Cameroon,Lessa Tchohou,Fabrice,,CMR,Africa,1.7324062,47.5490251,,,,,,,,facilitator +macziatko,Dublin,Ireland,Nina,Trubanová,she/her/hers,IRL,Europe,-6.2605593,53.3493795,,,,,,,facilitator,facilitator +manulera,Paris,France,Manuel,Lera Ramirez,He/him,FRA,Europe,2.3200410217200766,48.8588897,,,,facilitator,facilitator,,, +melibleq,São Paulo,Brazil,Melissa,Black,she/her,BRA,South America,-47.1583944,-1.2043218,,,,,,,facilitator, +mgawe-cavin,"Nairobi, Kenya",Kenya,Cavin,Mgawe,He,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,facilitator,, +msundukova,Bilbao,Spain,Mayya,Sundukova,she/her,ESP,Europe,-2.9350039,43.2630018,,,facilitator,facilitator,facilitator,facilitator,, +npdebs,Port Harcourt.,Nigeria,Deborah,Udoh,She/her,NGA,Africa,7.0188527,4.7676576,,,,,,,,facilitator +peranti,Paris,France,Pradeep,Eranti,,FRA,Europe,2.3483915,48.8534951,,,,,,,facilitator,facilitator +phaarouknucleus,Kano,Nigeria,Umar Farouk,Ahmad,,NGA,Africa,8.5364136,11.8948389,,,,,,,facilitator,facilitator +seunolufemi123,Ogbomoso,Nigeria,Seun Elijah,Olufemi,,NGA,Africa,4.25,8.133,,,,,,,,facilitator +slldec,Buenos Aires,Argentina,Sabrina,López,she/her/ella,ARG,South America,-58.4370894,-34.6075682,,,,,,,facilitator, +cassmurph,,Ireland,Cassandra,Murphy,She/Her,IRL,Europe,,,,,,,,,facilitator, +fnyasimi,,Kenya,Festus,Nyasimi,He/Him,KEN,Africa,,,,,,facilitator,facilitator,facilitator,, +gigikenneth,,Nigeria,Gift,Kenneth,She/Her,NGA,Africa,,,,,,,,,,facilitator +kiragu-mwaura,,Kenya,David,Kiragu Mwaura,he/him,KEN,Africa,,,,,,,,,,facilitator diff --git a/data/roles/mentor.csv b/data/roles/mentor.csv new file mode 100644 index 0000000..a9627e7 --- /dev/null +++ b/data/roles/mentor.csv @@ -0,0 +1,139 @@ +,city,country,first-name,last-name,pronouns,country_3,continent,longitude,latitude,ols-1,ols-2,ols-3,ols-4,ols-5,ols-6,ols-7,ols-8 +4iro,Buenos Aires,Argentina,Irene,Vazano,She/her/hers,ARG,South America,-58.4370894,-34.6075682,,,,,,,,Creating an online repository for open collaboration in psychology +abretaud,Rennes,France,Anthony,Bretaudeau,He/him,FRA,Europe,-1.6800198,48.1113387,,,,Developing a library in Python for applying measures of emergence and complexity,,,, +acocac,London,United Kingdom,Alejandro,Coca Castro,His/Him,GBR,Europe,-0.14405508452768728,51.4893335,,,,,Multilingual Open Science: Creating Open Educational Resources in Central Asian Languages,,, +aidanbudd,Heidelberg,Germany,Aidan,Budd,he/him,DEU,Europe,8.694724,49.4093582,Media Lab Nepal for Computational Biology,Open Innovation in Life Sciences,,,,,, +ajstewartlang,Manchester,United Kingdom,Andrew,Stewart,he/him,GBR,Europe,-2.2451148,53.4794892,Open Science UMontreal (OSUM),Open Science Office Hours to support trainees in Montreal to help make their research more open and reproducible,,,,,, +aleesteele,London,United Kingdom,Anne Lee,Steele,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,Mapping the RSSE landscape in Africa,, +andreasancheztapia,"Merced, CA",Colombia,Andrea,Sánchez Tapia,She/her,COL,South America,-120.7678602,37.1641544,,,,,,"Making Science simple and accessible, An extensible notebook for open specimens",An extensible notebook for open specimens, +anelda,Overberg,South Africa,Anelda,van der Walt,she/her,ZAF,Africa,5.4964645,52.0390484,,Autistica - Turing Citizen Science Project,Open Science Community in Saudi Arabia,,,,, +annakrystalli,Sheffield,United Kingdom,Anna,Krystalli,she/her,GBR,Europe,-1.4702278,53.3806626,,,Open Source Project for Evaluating Reproducibility Trends in AI Research Projects,,,,, +annefou,Oslo,Norway,Anne,Fouilloux,she/her,NOR,Europe,10.7389701,59.9133301,,,,Building the Research Software Engineering (RSE) Association in Asia region,Building a Cloud-SPAN community of practice,,, +annemtreasure,Cape Town,South Africa,Anne,Treasure,,ZAF,Africa,18.417396,-33.928992,,,,,Developing a carbon footprint database for buildings in Ghana,"Life Science in 2022, India.",, +arielle-bennett,Stevenage,United Kingdom,Arielle,Bennett,she/her,GBR,Europe,-0.2027155,51.9016663,,Towards open and citizen-led data informing the decarbonisation of existing housing,,"Learning about open science communities and help build ""community health"" report for The Turing Way",Publishing development plan for the Open access journals of TU Delft OPEN Publishing,Open collaborative journal,Open NeuroScience,Open-source handbooks infrastructure at VU Amsterdam +batoolmm,Liverpool,Saudi Arabia,Batool,Almarzouq,She/Her,SAU,Asia,-2.99168,53.4071991,,,,,"Why R, for those with legal backgrounds using examples from South Africa",An extensible notebook for open specimens,An extensible notebook for open specimens, +bduckles,"Portland, Oregon",United States,Beth,Duckles,"she, her",USA,North America,-122.674194,45.5202471,,,Postdoc Empirical Legal Research Open Notebook,Building Open Science and Data Analysis Skills by Leading the OLS Survey Data Project,,,, +beatrizserrano,Freiburg,Germany,Beatriz,Serrano-Solano,she/her,DEU,Europe,7.8494005,47.9960901,,,,,NGS-HuB: An open educational resource for NGS data analysis,,, +bebatut,Clermont-Ferrand,France,Bérénice,Batut,she/her,FRA,Europe,3.0819427,45.7774551,,,"Open Life Science (OLS) Program, a driver of open science skills among early stage researchers and young leaders: mentee perspective, Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers, Seeding, FAIR MAFIL: FAIRification of imaging/neurophysiological data of MAFIL CEITEC MUNI laboratory for EOSC",Culture-independent discovery of natural products from soil metagenomes,,,, +bethaniley,"Belfast, Northern Ireland",United Kingdom,Bethan,Iley,she/her,GBR,Europe,-5.9301829,54.596391,,,,,,,,The invisible society: Misgendering in Facial Recognition Systems: +bruno-soares,Rio De Janeiro,Brazil,Bruno,Soares,He/Him,BRA,South America,-43.2093727,-22.9110137,,"Global land-use and land-cover data under historical, current, and future climatic conditions for ecologists","Field and laboratory based research project researching, surveying, and discovering the palaeoecology and palaeogeography of West Cork",Citizen Scientists as Data Explorers,,,, +burkemlou,Brisbane,Australia,Melissa,Burke,She/Her,AUS,Oceania,-122.402794,37.687165,,,Junto Labs - Advancing Virtual Environments for Life Science Research and Active Learning,,,,, +cemonks,Perth,Australia,Carly,Monks,She/Her,AUS,Oceania,-3.4286805,56.3958186,,,,"Generic data stewards in the Netherlands: who they are, what they do, and who they could become",,,, +complexbrains,Montreal,Canada,Isil,Poyraz Bilgin,Dr. or Miss,CAN,North America,-73.5698065,45.5031824,,,,,,,Ethical Implications of Open Source AI: Transparency and Accountability, +dadditolu,Glasgow,United Kingdom,John,Ogunsola,he/him,GBR,Europe,-4.2501687,55.861155,,,,,,Developing effective online communities to build tools for genomic equity,, +deepakunni3,Basel,Switzerland,Deepak,Unni,He/Him,CHE,Europe,7.5878261,47.5581077,,,,,Finding paths through the FAIR forest; linking metadata from forestry models and datasets to assist analysis and hypothesis generation,,, +delphine-l,Raleigh,United States,Delphine,Lariviere,She/her,USA,North America,-78.6390989,35.7803977,,BioLab Open Source Projects,,The Environmental AI Book,,,, +diana-pilvar,Tartu,Estonia,Diana,Pilvar,,EST,Europe,26.72245,58.3801207,,,,,,,,Making corporate social responsibility data available and accessible for other researchers +diegoonna,"Ciudad Autonoma De Buenos Aires , Argentina",Argentina,Diego,Onna,He/Him,ARG,South America,-58.4370894,-34.6075682,,,,,SciHack: Promoting the Open Source and DIY movements in Peru,Open collaborative journal,Data analysis in soil physics: an opportunity of teaching data management and reproducibility,A Fiji plugin for SOFI analysis +dimmestp,Edinburgh,United Kingdom,Sam,Haynes,He/Him,GBR,Europe,-3.1883749,55.9533456,,,Global Distribution of APOL1 Genetic variants,Genestorian: An Open Source web application for model organism collections,,,, +ealescak,Anchorage,United States,Emily,Lescak,"she, her",USA,North America,-149.1107333,61.1758781,,,A virtual conference management system with seamless open science integration,open and international River University,,,, +ekaroune,Portsmouth,United Kingdom,Emma,Karoune,she/her,GBR,Europe,-1.0906023,50.800031,,,Towards FAIRer phytolith data,Balconnect - A network of private outdoor areas improving urban ecoliteracy and biodiversity,"Exploring ""Governance Models"" for Open Science community projects as per their maturity stage",A FAIRer training module on Open Science,, +estherplomp,The Hague,Netherlands,Esther,Plomp,she/her/hers,NLD,Europe,4.2696802205364515,52.07494555,,,"Intellectual Property, Indigenous Knowledges, and the Rise of Open Data in Australian Environmental Archaeology","Multibeam electron microscopy for imaging large tissue volumes, EROS Stories: Conversation and case studies in open research across educational disciplines","Increasing the usability of ChemSpaX, a Python tool for chemical space exploration",Mapping the Open Life Science Cohorts,, +fadanka,Yaounde,Cameroon,Stephane,Fadanka,He/Him,CMR,Africa,11.5213344,3.8689867,,,,,,The hub portal and academy,Biodegradability of Drilling Fluids in different soil types,Assessing the Zinc Finger Protein Mutation and Expression Profile in Kenyan Women with Breast Cancer +fpsom,Thessaloniki,Greece,Fotis,Psomopoulos,he/him,GRC,Europe,22.9352716,40.6403167,Enabling open science practices in biology education,,Best practices for online collaboration/peer-production in citizen science,Encouraging Responsible AI Through An Open Framework for Synthetic Data Generation and Assessment,"NGS-HuB: An open educational resource for NGS data analysis, The Ersilia Model Hub: encouraging deployment of computer-based research tools for non-expert usage",Mapping the Open Life Science Cohorts,,dr +gemmaturon,Barcelona,Spain,Gemma,Turon,she/her,ESP,Europe,2.1774322,41.3828939,,,,,,,,Estructura e infraestructura para la formación por cohortes virtuales +georgiahca,London,United Kingdom,Georgia,Aitkenhead,She/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,Easy Access Autism Resources for Rural Parents,,, +gladys-jerono-rotich,Nairobi,Kenya,Gladys,Rotich,She/her,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,,"Development of an online open science platform, easy and accessible for agricultural students in Cameroon.",Making corporate social responsibility data available and accessible for other researchers +graciellehigino,Vancouver,Canada,Gracielle,Higino,She/her,CAN,North America,-123.113952,49.2608724,,,,Open data for nanosystem synthesis experimental conditions,"Exploring ""Governance Models"" for Open Science community projects as per their maturity stage, International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community",Making Science simple and accessible,Closer to the sky: co-creating astronomical knowledge in a favela of Rio de Janeiro, +ha0ye,Gainesville,United States,Hao,Ye,he/him,USA,North America,-82.3249846,29.6519684,Improving open platform accessibility,,,,,,, +harinilakshminarayanan,Zurich,Switzerland,Harini,Lakshminarayanan,,CHE,Europe,8.5410422,47.3744489,,,,,,,Facilitating easier academic selection of research students using ML,The Open Umbrella & Hybrid Learning Field Guide +harpreetsingh05,Jalandhar,India,Harpreet,Singh,,IND,Asia,75.576889,31.3323762,,,"Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers, ProCancer-I - An AI Platform integrating imaging data and models, supporting precision care through prostate cancer's continuum",FarawayFermi- A platform for open source bioinformatic tools to detect biosignatures in astrobiology,,,, +hrhotz,Basel,Switzerland,Hans-Rudolf,Hotz,,CHE,Europe,7.5878261,47.5581077,,Practical Guide to Reproducibility in Bioinformatics,metaNanoPype: a reproducible Nanopore python pipeline for metabarcoding,Open and reproducible data analysis for wet lab neuroscientists,,Multiomics profiling and analysis of cardiovascular diseases,, +iramosp,Mexico City,Mexico,Irene,Ramos,she / her,MEX,North America,-99.1331785,19.4326296,,,,,,,,Digitalization for sustainable Agricultural practices and climate change mitigation +iratxepuebla,Cambridge,United Kingdom,Iratxe,Puebla,she/her,GBR,Europe,0.1186637,52.2055314,,,Boosting research visibility using Preprints,"Online event ""Women in Data Science - Perspectives in Industry and Academia"" Part II",,,, +ivotron,Hermosillo,Mexico,Ivo,Jimenez,he/him,MEX,North America,-110.9692202,29.0948207,,Registered Reports in Primate Neurophysiology,,,,,, +jafsia,Yaounde,Cameroon,Elisee,Jafsia,He/Him,CMR,Africa,11.5213344,3.8689867,,,,,,Development of a Multi-Adaptor Quality Control Kit for Integration with Radiographic Equipment,"Comparison of three growth curves for the diagnosis of extrauterine growth retardation at 40 weeks postconceptional age and associated factors in preterm infants in the city of Yaoundé, Cameroon",Identification and Prediction of Bacterial Pathogens Colonizing Yellowing Disease in Coastal Kenyan Coconuts: A Machine Learning Approach +jcolomb,Berlin,Germany,Julien,Colomb,he/his,DEU,Europe,13.3888599,52.5170365,,,,"An open educational resource to introduce fundamental concepts of GNU/Linux, terminal usage, Bash/AWK scripting, and Git/GitHub for Bioinformatics",Publishing development plan for the Open access journals of TU Delft OPEN Publishing,,From invisible to Citizens: Apparent Age for Primary School children without birth certificates, +jessicas11,Durham,United States,Jessica,Scheick,she/her,USA,North America,-1.75,54.666667,,,,A guide towards reproducible research for Decision Sciences researchers,,,, +jezcope,Harrogate,United Kingdom,Jez,Cope,he/him,GBR,Europe,-1.5391039,53.9921491,,The Turing Way - Guide for Ethical Research,Towards an infrastructure for open-source (online) training in data science and AI,,,,, +jformoso,Ciudad Autónoma De Buenos Aires,Argentina,Jesica,Formoso,she/her,ARG,South America,-58.4370894,-34.6075682,,,,,,,,Creating an online repository for open collaboration in psychology +johanssen-obanda,Kisumu,Kenya,Johanssen,Obanda,he/him,KEN,Africa,34.7541761,-0.1029109,,,,,,,"Knowledge and perspectives of open science among researchers in Ghana, West Africa", +joyceykao,Aachen,Germany,Joyce,Kao,She/Her,DEU,Europe,6.083862,50.776351,,,Creating a network of Open Science ambassadors in Spanish Health Research Institutes,,,Mapping the RSSE landscape in Africa,Euro-BioImaging Scientific Ambassadors Program,UbuntuEdu (Concept title) +jsheunis,Juelich,Germany,Stephan,Heunis,he/him,DEU,Europe,6.3611015,50.9220931,,,,,Easy Access Autism Resources for Rural Parents,,, +jvillcavillegas,Buenos Aires,Argentina,Jose Luis,Villca Villegas,Bolivia,ARG,South America,-58.4370894,-34.6075682,,,,,,,,JICMar Network: towards better opportunities and greater collaboration among young marine science researchers in Latin America +k-c-martin,Stellenbosch,South Africa,Kim,Martin,,ZAF,Africa,18.869167,-33.934444,,,,,,"Developing an ontology to connect open science technology, RSEs and the different skills and services that follow",, +karegapauline,Nairobi,Kenya,Pauline,Karega,she/her,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,,"Building an open, structured, knowledge listing system",Bioinformatics and Health Data Science Internship +karvovskaya,Amsterdam,Netherlands,Lena,Karvovskaya,She/her,NLD,Europe,4.8924534,52.3730796,,Western Cape-H3ABioNet Open Learning Circles,,EROS Stories: Conversation and case studies in open research across educational disciplines,Art as a means to open science,Open Communities: building a supportive community of practice across the AI for Multiple Long Term Conditions Research Support Facility.,Building a searchable project database, +katesimpson,London/ Great Union Canal/ Leeds,United Kingdom,Kate,Simpson,She/her,GBR,Europe,,,,,Memory Collecting: Croatian Homeland War,Creating an open database for carbon foot printing of buildings in Ghana,,,, +klauer2207,Cambridge,United Kingdom,Katharina,Lauer,she/her,GBR,Europe,0.1186637,52.2055314,,Science For All (Sci4All) - Citizens' daily problem solving by engaging multidisciplinary scientific communities,,,Building an open community around the Turing-Roche Strategic Partnership,,, +landimi2,Nairobi,Kenya,Michael,Landi,He/Him,KEN,Africa,36.8288420082562,-1.3026148499999999,,,MBiO: Designing an open-collaborative website in the field of molecular biology,,,Bioinformatics Secondary school Outreach in Nigeria,"Build community, Bioinformatics Secondary school Outreach in Nigeria", +lauracarter,London,United Kingdom,Laura,Carter,she/her,GBR,Europe,-0.12765,51.5073359,,,Development of language resources for Hausa Natural Language Processing,,,,,"Understanding Natural History Organizational Structures, Data Sharing, and Coordination through Biodiversity Informatics and Biocollections" +lauracion,Ciudad Autónoma De Buenos Aires,Argentina,Laura,Ación,she/ella,ARG,South America,-58.43562340522388,-34.61612315,,,LA-CoNGA physics (Latin American alliance for Capacity buildiNG in Advanced physics),,,,, +lisanna,Heidelberg,Germany,Lisanna,Paladin,She/they,DEU,Europe,8.694724,49.4093582,,,,,An Incomplete History of Research Ethics,Developing effective online communities to build tools for genomic equity,, +loubez,Cape Town,South Africa,Louise,Bezuidenhout,she/her,ZAF,Africa,18.417396,-33.928992,,,FAIR MAFIL: FAIRification of imaging/neurophysiological data of MAFIL CEITEC MUNI laboratory for EOSC,,,,, +luispedro,Shanghai,China,Luis Pedro,Coelho,he/them,CHN,Asia,121.4700152,31.2312707,Benchmarking environment for bioinformatics tools,Using collective action to change cultural norms and drive progress in the life sciences,,,Developing thermally stable loop mediated isothermal amplification kit for a non invasive detection of malaria,,, +lwinfree,Austin,United States,Lilly,Winfree,she/her,USA,North America,-97.7436995,30.2711286,,,,Environmental mapping for urban farming project,,,, +macziatko,Dublin,Ireland,Nina,Trubanová,she/her/hers,IRL,Europe,-6.2605593,53.3493795,,,,,,,Open-source object recognition software specifically designed for mice in Alzheimers disease,Gender Differences in the Impostor Phenomenon: A Preregistered and Open-Science Meta-Analysis +malloryfreeberg,Cambridge,United Kingdom,Mallory,Freeberg,she/her,GBR,Europe,0.1186637,52.2055314,,Creating a single pipeline for metagenome classification,Open data schema for actigraphy data in chronobiology and sleep research,,,Preparing IceNet stakeholder engagement framework for open and collaborative development,,Molerhealth +malvikasharan,London,United Kingdom,Malvika,Sharan,she/her,GBR,Europe,-0.14405508452768728,51.4893335,"Bioinformatics Hub of Kenya (BHK), Media Lab Nepal for Computational Biology, EMBL Bio-IT Community Project","Mapping Science using Open Scholarship, Target approach in the stages of liver cirrhosis to reverse back in good condition","Open Life Science (OLS) Program, a driver of open science skills among early stage researchers and young leaders: mentee perspective, The Turing Way - Developing a community health report and assessing its impact on the wider data science community, Developing and embedding open science practices within the Research Application Management team at Turing",,"International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community, Building Pathways for Onboarding to Research Software Engineering (RSE) Asia Association and Adoption of Code of Conduct, Transcriptomics profiling of bladder cancer using publicly available datasets",Open Data Custodianship tool,Investigating effective strategies for radical inclusion at academic events, +marielaraj,Ciudad De Buenos Aires,Argentina,Mariela,Rajngewerc,She/her,ARG,South America,-58.4370894,-34.6075682,,,,,,,,"Building a Searchable Open Data Repository of DNA Collections that are Freely-Shared under OpenMTA, with an Associated Landscape Map Visualisation of the Collection Users" +marimeireles,Berlin,Germany,Mariana,Meireles,she/her,DEU,Europe,13.3888599,52.5170365,,,,,,The Undergraduates Guide To Research Software Engineering,, +martinagvilas,Frankfurt Am Main,Germany,Martina,Vilas,She/her,DEU,Europe,8.6820917,50.1106444,,sktime - a unified toolbox for machine learning with time series,,,,,, +martlj,London,United Kingdom,Martin,Jones,he/him,GBR,Europe,-0.14405508452768728,51.4893335,,,,Multibeam electron microscopy for imaging large tissue volumes,,,, +meagdoh,Washington,United States,Meag,Doherty,she/her,USA,North America,-77.0365427,38.8950368,,OpenWorkstation - A modular and open-source concept for customized automation equipment,An Open Source Service Area for Turing research projects,Bioinformatics Secondary school Outreach in Nigeria,Bioinformatics Secondary school Outreach in Nigeria,,, +melibleq,São Paulo,Brazil,Melissa,Black,she/her,BRA,South America,-47.1583944,-1.2043218,,,,,,,LA-CoNGA Physics Citizen Science Project, +michael-addy,Kumasi,Ghana,Michael,Addy,He,GHA,Africa,-1.6233086,6.6985605,,,,,OpenGHG - a cloud platform for greenhouse gas data analysis and collaboration,,, +milagros-miceli,Berlin,Germany,Milagros,Miceli,she/her/hers,DEU,Europe,13.3888599,52.5170365,,,,,,,Queering the law: How to make AI with a Queer Perspective from the Majority of the World, +msundukova,Bilbao,Spain,Mayya,Sundukova,she/her,ESP,Europe,-2.9350039,43.2630018,,,,,Argentinean Public Health Research on Data Science and Artificial Intelligence for Epidemic Prevention (ARPHAI),An open support resource for primary mental health for researchers.,, +mxrtinez,Bucaramanga,Colombia,Alexander,Martinez Mendez,,COL,South America,-73.1047294009737,7.16698415,,,,"An open educational resource to introduce fundamental concepts of GNU/Linux, terminal usage, Bash/AWK scripting, and Git/GitHub for Bioinformatics",Training Latin American scientists' community to create high-quality open journals with good editorial standards,,"Mapping open-science communities, organizations, and events in Latin America",JICMar Network: towards better opportunities and greater collaboration among young marine science researchers in Latin America +nadinespy,Brighton,United Kingdom,Nadine,Spychala,she/her,GBR,Europe,-0.1400561,50.8214626,,,,,,Open sourcing the Pyxium learning platform,,PyOrb 1.0 – Automated Analysis Tool for Orbital Interactions +natalie-banner,London,United Kingdom,Natalie,Banner,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,Developing policy briefs on mental well-being of researchers in academia across different countries,, +nickynicolson,London,United Kingdom,Nicky,Nicolson,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,,,"Understanding Natural History Organizational Structures, Data Sharing, and Coordination through Biodiversity Informatics and Biocollections" +npalopoli,Buenos Aires,Argentina,Nicolás,Palopoli,Él/He/Him,ARG,South America,-58.4370894,-34.6075682,,,,,,,,openTECR - an open database on thermodynamics of enzyme-catalyzed reactions +nyasita,Nairobi,Kenya,Laurah,Ondari,,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,,Open Science platform for humanities and computational social scientists,Bioinformatics codeathon +olsjuju,Seoul,South Korea,Juyeon,Kim,,,,126.9782914,37.5666791,,,,,,"Evaluating criteria of ""best paper"" awards from research journals across disciplines",, +patriloto,Resistencia - Chaco,Argentina,Patricia,Loto,Ella/She,ARG,South America,-59.19320025100798,-27.6048829,,,,,,,,Creating an online repository for open collaboration in psychology +pescini,Milan,Italy,Dario,Pescini,he/him,ITA,Europe,9.1896346,45.4641943,,,,Developing a library in Python for applying measures of emergence and complexity,,,, +phaarouknucleus,Kano,Nigeria,Umar Farouk,Ahmad,,NGA,Africa,8.5364136,11.8948389,,,,,,,,"Digitalization for sustainable Agricultural practices and climate change mitigation, Wind Power System Stability Analysis for Grid Integration: A Statistical Mechanics Approach to the Swing Equation." +pherterich,Edinburgh,United Kingdom,Patricia,Herterich,she/her,GBR,Europe,-3.1883749,55.9533456,"How to build an healthy and open lab, Creating network of Data Champions at the library of Free University of Amsterdam",APBioNetTalks,,,Build a community around the TU Delft Open Science MOOC,,Data management materials for ELIXIR Estonia, +pivg,Cambridge,United Kingdom,Piraveen,Gopalasingam,he/him,GBR,Europe,0.1186637,52.2055314,,Chronic Learning,Skills for Open Agrobiodiversity Data,,,,, +prashbio,Jaipur,India,Prash,Suravajhala,He/Him,IND,Asia,75.8189817,26.9154576,,,Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers,,,,, +rivaquiroga,Valparaíso,Chile,Riva,Quiroga,she/her/ella,CHL,South America,-71.6196749,-33.0458456,,,,,,,Open Science platform for humanities and computational social scientists,Assessing word stability in Corpora and its influence on learner dictionaries +saranjeetkaur,Gurgaon,India,Saranjeet Kaur,Bhogal,She/her,IND,Asia,77.00270014657752,28.42826235,,,,,,,Open Science Awareness Project for Central Asian Universities,Developing an Open Community Repository for SciArt +saravilla,London,United Kingdom,Sara,Villa,she/her,GBR,Europe,-0.12765,51.5073359,,,,,"Open Science, Open Future",AGAPE: Building an open science practicing community in Ireland,Collective and Open Research in Climate Science,"Building a Searchable Open Data Repository of DNA Collections that are Freely-Shared under OpenMTA, with an Associated Landscape Map Visualisation of the Collection Users" +sayalaruano,Maastricht,Netherlands,Andres Sebastian,Ayala Ruano,he/him,NLD,Europe,5.6969881818221095,50.85798545,,,,,Open Science for Improve diagnostics of Cancer through Artificial Intelligence and Digital Pathology,,Open educational hands-on tutorial for evaluating fairness in AI classification models,Is my research used in clinical trials? - Tool(s) to assess societal impact using open scholarly data +selgebali,Gothenburg,Sweden,Sara,El-Gebali,"She, her",SWE,Europe,-100.1619896,40.9277324,,,,,"Development of an Open Source Platform for the Storage, Sharing, Synthesis and Meta-Analysis of Clinical Data",Building a Platform for Open and Reproducible Super-resolution Imaging Hardware and Analytical Tools,,An Open Handbook and MOOC on Computational Methods for African Media Researchers +sgibson91,London,United Kingdom,Sarah,Gibson,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,Database for coordinating training needs in Kenya to faciliatate preparation and collaboration,The UKCRC Tissue Directory and Coordination Centre,,,,, +slldec,Buenos Aires,Argentina,Sabrina,López,she/her/ella,ARG,South America,-58.4370894,-34.6075682,,,,,,,Open educational hands-on tutorial for evaluating fairness in AI classification models, +smhall97,Oxford,United Kingdom,Siobhan Mackenzie,Hall,she/her,GBR,Europe,-1.2578499,51.7520131,,,,,,Ethical standards and reproducibility of computer models in Neurobiology,,Open Science in Neuroscience: A Practical Guide for Researchers +smklusza,Morrow,United States,Stephen,Klusza,he/him/his,USA,North America,-82.7771661,40.4574358,,,Open Phototroph,,Multilingual Open Science: Creating Open Educational Resources in Central Asian Languages,,, +tlaguna,Madrid,Spain,Teresa,Laguna,,ESP,Europe,-3.7035825,40.4167047,,,GyaNamuna: Virtual School Connecting Rural Students To The World,,,,, +tobyhodges,Heidelberg,Germany,Toby,Hodges,he/him,DEU,Europe,8.694724,49.4093582,Bioinformatics Hub of Kenya (BHK),,"MBiO: Designing an open-collaborative website in the field of molecular biology, Documentation enhancement with open science practices in sktime",,,,, +tsonika,Melbourne,Australia,Sonika,Tyagi,she/her,AUS,Oceania,144.9631732,-37.8142454,,Target approach in the stages of liver cirrhosis to reverse back in good condition,MiSET Publication Standards: A tool for AI-assisted peer-review of experimental information,,,,, +umutpajaro,Cartagena,Colombia,Umut,Pajaro Velasquez,They/Them,COL,South America,-75.5443419,10.4266746,,,,,,,,Gender Differences in the Impostor Phenomenon: A Preregistered and Open-Science Meta-Analysis +unode,Heidelberg,Germany,Renato,Alves,he/him,DEU,Europe,8.694724,49.4093582,@Diversidade em Foco,OSUM - Open Science UMontreal,"BioFerm: A web application used for kinetic modeling, parameter estimation and simulation of bioprocesses, MBiO: Designing an open-collaborative website in the field of molecular biology",Hub23: An open source community and infrastructure for Turing's BinderHub,Hub23: An open source community and infrastructure for Turing's BinderHub,,, +veroxgithub,"Avellaneda, Pba.",Argentina,Verónica,Xhardez,She/ella,ARG,South America,-58.3628061,-34.6648394,,,,,,,,Gobernanza 2.0 de MetaDocencia +yvanlebras,Concarneau,France,Yvan,Le Bras,He,FRA,Europe,-3.9223889,47.8757017,,"Creating community awareness of open science practices in phytolith research, Global land-use and land-cover data under historical, current, and future climatic conditions for ecologists",Implementing a series of pedagogical games to teach pupils and citizens (metagenomic) data analysis,Creating an open database for carbon foot printing of buildings in Ghana,,,, +ailís-o'carroll,,Ireland,Ailís,O'Carroll,she/her,IRL,Europe,,,,,,,,,Translate Science, +alecandian,,Netherlands,Alessandra,Candian,she/her/hers,NLD,Europe,,,,,,,,Open science spread,, +alexholinski,,United Kingdom,Alexandra,Holinski,She/her,GBR,Europe,,,,,,"Generic data stewards in the Netherlands: who they are, what they do, and who they could become",,,, +anita-broellochs,,United States,Anita,Bröllochs,she/her,USA,North America,,,,Synthetic Biology Chassis Toolkit for Public Domain Use,,,,,, +anjali-mazumder,,United Kingdom,Anjali,Mazumder,she/her,GBR,Europe,,,,The Turing Way - Guide for Ethical Research,,,,,, +bbartholdy,,Netherlands,Bjørn Peare,Bartholdy,he/him,NLD,Europe,,,,,,,,,,An online repository of tools and methods for automated archaeological survey +bgruening,,Germany,Björn,Grüning,he/him,DEU,Europe,,,EDAM ontology,,,,,,, +billbrod,,United States,Billy,Broderick,he/him,USA,North America,,,,,,,,,Developing an online snake venomics catalog for easy access to venom proteomics data, +burceelbasan,,Germany,Burce,Elbasan,,DEU,Europe,,,,,,,Visualisation of participants by their countries,,, +dasaderi,,United States,Daniela,Saderi,she/her,USA,North America,,,How to build an healthy and open lab,,,,,,, +emmyft,,Netherlands,Emmy,Tsang,she/her,NLD,Europe,,,,,,Grassroots: Nurturing the EMBL Bio-IT Community,"Data Science and AI Educators' Programme AND Tools, Practices & Systems Peer Mentorship Programme",,, +hdinkel,,Germany,Holger,Dinkel,he/him,DEU,Europe,,,AMRITA: an online database for herbal medicine,Sharing 3D Modeling Workflows for Biomechanists and Palaeontologists,,,,,, +katrinleinweber,,Germany,Katrin,Leinweber,she/her,DEU,Europe,,,Improving Documentation for Open Data and Software in the Agricultural Research Community,,,,,,, +kipkurui,,Kenya,Caleb,Kibet,he/him,KEN,Africa,,,Open Connect Platform in Africa,"Arua City Open Learning Circles, Western Cape-H3ABioNet Open Learning Circles",,,Community engagement: Building an open online learning community,Open Science Community Nigeria (OSCN),liforient, +lilian9,,Kenya,Lilian,Juma,she/her,KEN,Africa,,,,Using collective action to change cultural norms and drive progress in the life sciences,,,,,, +lpantano,,Spain,Lorena,Pantano,she/her,ESP,Europe,,,,Database for coordinating training needs in Kenya to faciliatate preparation and collaboration,,,,,, +mesfind,,Ethiopia,Mesfin,Diro,he/him,ETH,Africa,,,,Developing the Research Software and Systems Engineering Community to support Life Sciences in Africa,,,,,, +mkuzak,,Netherlands,Mateusz,Kuzak,he/him,NLD,Europe,,,Infusing a culture of open science within the community of researchers at the Zuckerman Institute,,,,,,, +mloning,,United Kingdom,Markus,Löning,he/him,GBR,Europe,,,,Supervised Classification with UMAP and Network Propagation,,,,,, +muhammetcelik,,Turkey,Muhammet,Celik,he/him,TUR,Asia,,,,,,,Visualisation of participants by their countries,,, +npscience,,United Kingdom,Naomi,Penfold,she/her/they/them,GBR,Europe,,,Oxford Neuroscience Open Science Co-ordinator: Changing Culture,Building a Database for Open Access Immunology Pre-prints and Publications on COVID-19,,,,,, +pradeep-eranti,,France,Pradeep,Eranti,he/his,FRA,Europe,,,,,,,,,,Bioinformatics codeathon +rgaiacs,,Brazil,Raniere,Silva,he/him,BRA,South America,,,,Developing the Research Software and Systems Engineering Community to support Life Sciences in Africa,,,,,, +rodrigocam,,Brazil,Rodrigo,Oliveira Campos,,BRA,South America,,,Expanding plenoptic Python Package,,,,,,, +rowlandm,,Australia,Rowland,Mosbergen,,AUS,Oceania,,,,,,,,,"momenTUM Research Platform: An open-source, reproducible research infrastructure for digital health", +samguay,,Canada,Samuel,Guay,he/him,CAN,North America,,,,Embedding Accessibility in The Turing Way Open Source Community Guidance,,,,,, +sdopoku,,Ghana,David,Selassie Opoku,he/him,GHA,Africa,,,,Open platform for Indian Bioinformatics community,,,,,, +tajuddeen1,,Nigeria,Tajuddeen,Gwadabe,he/his/him,NGA,Africa,,,,,,,,,,UbuntuEdu (Concept title) +tnabtaf,,United States,Dave,Clements,he/him,USA,North America,,,,Growing the Galaxy Community,,Grassroots: Nurturing the EMBL Bio-IT Community,,,, +vickynembaware,,South Africa,Vicky,Nembaware,she/her,ZAF,Africa,,,"Investigate feasible solutions to help create a system that creates, collects and processes data efficiently for impactful research especially for driving health research and driving health related policies",,,,,,, +yochannah,,United Kingdom,Yo,Yehudi,they/them,GBR,Europe,,,InterMine Similarity Explorer,"Mapping Science using Open Scholarship, Turing Data Stories","Global Distribution of APOL1 Genetic variants, Open Life Science (OLS) Program, a driver of open science skills among early stage researchers and young leaders: mentee perspective, COMPUTATIONAL DRUG DISCOVERY (CORONAVIRUS)",Talleres Open Source community platform,"Transcriptomics profiling of bladder cancer using publicly available datasets, Cultivating a Community of Practice of AI researchers",OpSciHack: Open Life Science Hackathon,"Implementing Facial Recognition and Biometric Attendance Monitoring in Educational and Corporate Settings, An interactive map of socio-ecological projects", +zebetus,,United Kingdom,Harry,Smith,,GBR,Europe,,,Open Science Community Barcelona (OSCBa),,,,,,, +bresearcher101,,,Aswathi,Surendran,,,,,,,,,,,,The Impact of Sleep Deprivation on Mental Health, diff --git a/data/roles/organizer.csv b/data/roles/organizer.csv new file mode 100644 index 0000000..c819122 --- /dev/null +++ b/data/roles/organizer.csv @@ -0,0 +1,6 @@ +,city,country,first-name,last-name,pronouns,country_3,continent,longitude,latitude,ols-1,ols-2,ols-3,ols-4,ols-5,ols-6,ols-7,ols-8 +bebatut,Clermont-Ferrand,France,Bérénice,Batut,she/her,FRA,Europe,3.0819427,45.7774551,organizer,organizer,organizer,organizer,organizer,organizer,organizer,organizer +malvikasharan,London,United Kingdom,Malvika,Sharan,she/her,GBR,Europe,-0.14405508452768728,51.4893335,organizer,organizer,organizer,organizer,organizer,organizer,organizer,organizer +emmyft,,Netherlands,Emmy,Tsang,she/her,NLD,Europe,,,,,organizer,organizer,organizer,organizer,organizer,organizer +pazbc,,Argentina,Paz,Bernaldo,she/her,ARG,South America,,,,,,,organizer,organizer,organizer,organizer +yochannah,,United Kingdom,Yo,Yehudi,they/them,GBR,Europe,,,organizer,organizer,organizer,organizer,organizer,organizer,organizer,organizer diff --git a/data/roles/participant.csv b/data/roles/participant.csv new file mode 100644 index 0000000..46b1a52 --- /dev/null +++ b/data/roles/participant.csv @@ -0,0 +1,387 @@ +,city,country,first-name,last-name,pronouns,country_3,continent,longitude,latitude,ols-1,ols-2,ols-3,ols-4,ols-5,ols-6,ols-7,ols-8 +0sahene,Tamale,Ghana,Sitsofe,Morgah,He,GHA,Africa,-0.8423986,9.4051992,,,,,Developing a carbon footprint database for buildings in Ghana,,, +0x174,Boston,United States,William,Jackson,He/Him,USA,North America,-71.060511,42.3554334,,,Opensource Transpiler of Synthetic Biology Lab Protocols for Wetlab Robotics,,,,, +4iro,Buenos Aires,Argentina,Irene,Vazano,She/her/hers,ARG,South America,-58.4370894,-34.6075682,,,,,,,"Mapping open-science communities, organizations, and events in Latin America", +abdulelahsm,Dammam,Saudi Arabia,Abdulelah,Al Mesfer,he/him,SAU,Asia,50.1039991,26.4367824,,,Documentation enhancement with open science practices in sktime,,,,, +abraham-dabengwa,Johannesburg,South Africa,Abraham,Dabengwa,he/ him,ZAF,Africa,28.049722,-26.205,,,,,International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community,,, +acocac,London,United Kingdom,Alejandro,Coca Castro,His/Him,GBR,Europe,-0.14405508452768728,51.4893335,,,,The Environmental AI Book,,,, +agossoubido2021,Abomey Calavi,Benin,Agossou,Bidossessi Emmanuel,He/Him/His,BEN,Africa,2.3303076367454025,6.51096225,,,,,Open Science for Improve diagnostics of Cancer through Artificial Intelligence and Digital Pathology,,, +aida-turing,London,United Kingdom,Aida,Mehonic,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,Developing and embedding open science practices within the Research Application Management team at Turing,,,,, +akalikadien,Delft,Netherlands,Adarsh,Kalikadien,,NLD,Europe,4.362724538543995,51.999457199999995,,,,,"Increasing the usability of ChemSpaX, a Python tool for chemical space exploration",,, +aldenc,London,United Kingdom,Alden,Conner,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,Preparing IceNet stakeholder engagement framework for open and collaborative development,, +aleesteele,London,United Kingdom,Anne Lee,Steele,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,"Exploring ""Governance Models"" for Open Science community projects as per their maturity stage",,, +alettes,Makhanda Grahamstown,South Africa,Alette,Schoon,she/her,ZAF,Africa,26.496243,-33.2885486,,,,,,,,An Open Handbook and MOOC on Computational Methods for African Media Researchers +alihumayun,London,United Kingdom,Ali,Humayun,He/Him,GBR,Europe,-0.14405508452768728,51.4893335,,,The Turing Way - Developing a community health report and assessing its impact on the wider data science community,"Learning about open science communities and help build ""community health"" report for The Turing Way",,,, +amangoel185,Manchester,United Kingdom,Aman,Goel,he/him/his,GBR,Europe,-2.2451148,53.4794892,,,,,,The Undergraduates Guide To Research Software Engineering,, +amber-koert,Amsterdam,Netherlands,Amber,Koert,,NLD,Europe,4.8924534,52.3730796,,,,,,,,Open Science in Neuroscience: A Practical Guide for Researchers +anafinovas,Budapest,Hungary,Saule,Anafinova,,HUN,Europe,19.14609412691246,47.48138955,,,,,,,Open Science Awareness Project for Central Asian Universities, +anayan321,Bangkok,Thailand,Anunya,Opasawatchai,"She, her",THA,Asia,100.6224463,13.8245796,AMRITA: an online database for herbal medicine,,,,,,, +andre-vargas-de,Cochabamba,Bolivia,Alvaro Andre,Vargas Aguilar,,,,-66.1568983,-17.3936114,,,,,Training Latin American scientists' community to create high-quality open journals with good editorial standards,,, +andreea-avramescu,Manchester,United Kingdom,Andreea,Avramescu,,GBR,Europe,-2.2451148,53.4794892,,,,A guide towards reproducible research for Decision Sciences researchers,,,, +anelda,Overberg,South Africa,Anelda,van der Walt,she/her,ZAF,Africa,5.4964645,52.0390484,,,,,,Mapping the RSSE landscape in Africa,, +annalee-sekulic,Columbus,United States,Annalee,Sekulic,She/Her/Hers,USA,North America,-83.0007065,39.9622601,,,Memory Collecting: Croatian Homeland War,,,,, +annambiller,Munich,Germany,Anna Magdalena,Biller,she/her/hers,DEU,Europe,11.5753822,48.1371079,,,,,,,"momenTUM Research Platform: An open-source, reproducible research infrastructure for digital health", +anshika-sah,New Delhi,India,Anshika,Sah,SHE,IND,Asia,77.2090057,28.6138954,,,COMPUTATIONAL DRUG DISCOVERY (CORONAVIRUS),,,,, +antonioggsousa,Oeiras,Portugal,António,Sousa,he/him,PRT,Europe,-9.271300382407272,38.7124971,,,metaNanoPype: a reproducible Nanopore python pipeline for metabarcoding,,,,, +antonis-koutsoumpis,Amsterdam,Netherlands,Antonis,Koutsoumpis,,NLD,Europe,4.8924534,52.3730796,,,,,,,,Creating an online repository for open collaboration in psychology +arentkievits,Delft,Netherlands,Arent,Kievits,,NLD,Europe,4.362724538543995,51.999457199999995,,,,Multibeam electron microscopy for imaging large tissue volumes,,,, +arianna-cortesi,Rio De Janeiro,Brazil,Arianna,Cortesi,,BRA,South America,-43.2093727,-22.9110137,,,,,,,Closer to the sky: co-creating astronomical knowledge in a favela of Rio de Janeiro, +ariannazuanazzi,New York City,United States,Arianna,Zuanazzi,she/her,USA,North America,-74.0060152,40.7127281,,,,,,,,Developing an Open Community Repository for SciArt +ashutosh-tiwari,"Bilaspur, Chhattisgarh",India,Ashutosh,Tiwari,He/him/his,IND,Asia,82.1476475,22.0785627,,,Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers,,,,, +augustincaitlin,Orlando,United States,Caitlin,Augustin,she/her,USA,North America,-81.3790304,28.5421109,,,,Encouraging Responsible AI Through An Open Framework for Synthetic Data Generation and Assessment,,,, +ayeshadunk,London,United Kingdom,Ayesha,Dunk,She/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,"Data Science and AI Educators' Programme AND Tools, Practices & Systems Peer Mentorship Programme",,, +aymd23,Ibadan,Nigeria,Ayomide,Akinlotan,He/his,NGA,Africa,3.8972497,7.3777462,,,,,,,Bioinformatics Secondary school Outreach in Nigeria, +b14-rsa,Johannesburg,South Africa,Biandri,Joubert,She/Her,ZAF,Africa,28.049722,-26.205,,,,,"Why R, for those with legal backgrounds using examples from South Africa",,, +babari-a-babari-michelle-freddia,Yaoundé,Cameroon,Babari A Babari,Michelle Freddia,,CMR,Africa,11.5213344,3.8689867,,,,,,,From invisible to Citizens: Apparent Age for Primary School children without birth certificates, +babasaraki,Bauchi,Nigeria,Umar,Ahmad,Data Science,NGA,Africa,10.0287754,10.6228284,,,,,Transcriptomics profiling of bladder cancer using publicly available datasets,Open Science Community Nigeria (OSCN),, +batoolmm,Liverpool,Saudi Arabia,Batool,Almarzouq,She/Her,SAU,Asia,-2.99168,53.4071991,,,Open Science Community in Saudi Arabia,Culture-independent discovery of natural products from soil metagenomes,,,, +beatrizserrano,Freiburg,Germany,Beatriz,Serrano-Solano,she/her,DEU,Europe,7.8494005,47.9960901,,Growing the Galaxy Community,,,,,Euro-BioImaging Scientific Ambassadors Program, +birgül-çolak-al,Istanbul,Turkey,Birgül,Çolak-Al,,TUR,Asia,29.052495,41.0766019,,,,,NGS-HuB: An open educational resource for NGS data analysis,,, +bisola15,Yaba,Nigeria,Bisola,Ahmed,She/her,NGA,Africa,-2.8848131505798653,12.811960299999999,,,,,,,The Impact of Sleep Deprivation on Mental Health, +bobbwang,Amsterdam,Netherlands,Bo,Wang,,NLD,Europe,4.8924534,52.3730796,,,,,,,,"Gender Differences in the Impostor Phenomenon: A Preregistered and Open-Science Meta-Analysis, Creating an online repository for open collaboration in psychology" +booktrackergirl,Exeter,United Kingdom,Aditi,Dutta,She/Her,GBR,Europe,-3.5269497,50.7255794,,,,,,,Open Science platform for humanities and computational social scientists, +bruno-soares,Rio De Janeiro,Brazil,Bruno,Soares,He/Him,BRA,South America,-43.2093727,-22.9110137,@Diversidade em Foco,,,,,,, +bsolodzi,"Ashaiman, Zenu",Ghana,Bernard Kwame,Solodzi,,GHA,Africa,-0.0499836,5.7121199,,,,,,,"Knowledge and perspectives of open science among researchers in Ghana, West Africa", +callummole,London,United Kingdom,Callum,Mole,He/Him,GBR,Europe,-0.14405508452768728,51.4893335,,,,Hub23: An open source community and infrastructure for Turing's BinderHub,Hub23: An open source community and infrastructure for Turing's BinderHub,,, +camachoreina,Paris,France,Reina,Camacho Toro,She/her,FRA,Europe,2.3200410217200766,48.8588897,,,LA-CoNGA physics (Latin American alliance for Capacity buildiNG in Advanced physics),,,,, +camila-gómez,Cochabamba,Bolivia,Camila,Gómez,,,,-66.1568983,-17.3936114,,,,,Training Latin American scientists' community to create high-quality open journals with good editorial standards,,, +carmel-carne,Cape Town,South Africa,Carmel,Carne,She/her,ZAF,Africa,18.417396,-33.928992,,,,,,,Investigating effective strategies for radical inclusion at academic events, +carogiraldo,Bogota,Colombia,Carolina,Giraldo Olmos,,COL,South America,-74.0835643,4.6529539,,,,,,,Data analysis in soil physics: an opportunity of teaching data management and reproducibility, +cassgvp,Oxford,United Kingdom,Cassandra,Gould Van Praag,she/her,GBR,Europe,-1.2578499,51.7520131,Oxford Neuroscience Open Science Co-ordinator: Changing Culture,,,,,,, +cbolibaugh,York,United Kingdom,Cylcia,Bolibaugh,she/her,GBR,Europe,-1.0743052444639218,53.96565785,,,,EROS Stories: Conversation and case studies in open research across educational disciplines,,,, +cel31,Barcelona,Spain,Celine,Kerfant,,ESP,Europe,2.1774322,41.3828939,,,,,International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community,,, +cemonks,Perth,Australia,Carly,Monks,She/Her,AUS,Oceania,-3.4286805,56.3958186,,,"Intellectual Property, Indigenous Knowledges, and the Rise of Open Data in Australian Environmental Archaeology",,,,, +christinerogers,Montreal,Canada,Christine,Rogers,she/her,CAN,North America,-73.5698065,45.5031824,Improving open platform accessibility,,,,,,, +chucklesongithub,Buenos Aires,Argentina,Cecilia,Herbert,She/Her,ARG,South America,-58.4370894,-34.6075682,,,,Talleres Open Source community platform,,,, +chukaogbo,"Abeokuta, Ogun State.",Nigeria,Chukwuka,Ogbonna,"He, him, his",NGA,Africa,3.3467344,7.1547129,,,,,,,Biodegradability of Drilling Fluids in different soil types, +cibele-zolnier-sousa-do-nascimento,Curitiba,Brazil,Cibele,Zolnier Sousa do Nascimento,She/her,BRA,South America,-49.2712724,-25.4295963,,,,,,,,"Building a Searchable Open Data Repository of DNA Collections that are Freely-Shared under OpenMTA, with an Associated Landscape Map Visualisation of the Collection Users" +cl379,Barcelona,Spain,Carla,Lancelotti,she-her,ESP,Europe,2.1774322,41.3828939,,,Towards FAIRer phytolith data,,International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community,,, +claudiamig,Roma,Italy,Claudia,Mignone,she/her,ITA,Europe,12.4829321,41.8933203,,,,,,,Closer to the sky: co-creating astronomical knowledge in a favela of Rio de Janeiro, +codito22,Lima,Peru,Rodrigo,Gallegos,,PER,South America,-77.0365256,-12.0621065,,,,,SciHack: Promoting the Open Source and DIY movements in Peru,,, +complexbrains,Montreal,Canada,Isil,Poyraz Bilgin,Dr. or Miss,CAN,North America,-73.5698065,45.5031824,,,,,"Development of an Open Source Platform for the Storage, Sharing, Synthesis and Meta-Analysis of Clinical Data",,, +coopersmout,Brisbane,Australia,Cooper,Smout,He/him,AUS,Oceania,-122.402794,37.687165,,Using collective action to change cultural norms and drive progress in the life sciences,,,,,, +da5nsy,Washington Dc,United States,Danny,Garside,he/him,USA,North America,-77.0365427,38.8950368,,Registered Reports in Primate Neurophysiology,,,,,, +dadditolu,Glasgow,United Kingdom,John,Ogunsola,he/him,GBR,Europe,-4.2501687,55.861155,,,Global Distribution of APOL1 Genetic variants,,,,, +daniel-kochin,Oxford,United Kingdom,Daniel,Kochin,he/him,GBR,Europe,-1.2578499,51.7520131,,,,,,,Investigating effective strategies for radical inclusion at academic events, +danwchan,New York City,,Daniel,Chan,he/they,,,-74.0060152,40.7127281,,,,,,,Translate Science, +darwin-diaz,Lima,Peru,Darwin,Diaz,She/Her,PER,South America,-77.0365256,-12.0621065,,,,,SciHack: Promoting the Open Source and DIY movements in Peru,,, +dbrisaro,Carapachay,Argentina,Daniela,Risaro,she/her,ARG,South America,-58.5358156,-34.5265799,,,,,,,,JICMar Network: towards better opportunities and greater collaboration among young marine science researchers in Latin America +dexwel,Ogbomoso,Nigeria,Daniel,Adediran,He,NGA,Africa,4.25,8.133,,,,,,,,Bioinformatics and Health Data Science Internship +diana-pilvar,Tartu,Estonia,Diana,Pilvar,,EST,Europe,26.72245,58.3801207,,,,,,,Data management materials for ELIXIR Estonia, +dianakaran,Kilifi,Kenya,Diana,Karan,She/Her,KEN,Africa,39.67507159193717,-3.15073925,,,,,,,,Bioinformatics codeathon +didik-utomo,Malang,Indonesia,Didik,Utomo,,IDN,Asia,112.6340291,-7.9771206,,,Boosting research visibility using Preprints,,,,, +diegoonna,"Ciudad Autonoma De Buenos Aires , Argentina",Argentina,Diego,Onna,He/Him,ARG,South America,-58.4370894,-34.6075682,,,,Open data for nanosystem synthesis experimental conditions,,,, +dingaaling,London,United Kingdom,Jennifer,Ding,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,Open Data Custodianship tool,, +doaamkader,Obour City,Egypt,Doaa,Abdelkader,She.her,EGY,Africa,31.465685617766244,30.2288224,,,,,,,Build community, +dozie-onunkwo,Umuahia,Nigeria,Dozie,Onunkwo,He,NGA,Africa,7.4924165,5.5324032,,,,,,,,Digitalization for sustainable Agricultural practices and climate change mitigation +dudova,Brno,Czechia,Zdenka,Dudova,,CZE,Europe,16.6113382,49.1922443,,,FAIR MAFIL: FAIRification of imaging/neurophysiological data of MAFIL CEITEC MUNI laboratory for EOSC,,,,, +duerrsimon,Lausanne,Switzerland,Simon,Duerr,he/him,CHE,Europe,6.6327025,46.5218269,,,A virtual conference management system with seamless open science integration,,,,, +ecsalomon,"Chicago, Il",United States,Erika,Salomon,they/them,USA,North America,-87.6244212,41.8755616,,,,Encouraging Responsible AI Through An Open Framework for Synthetic Data Generation and Assessment,,,, +eduardacenteno,Amsterdam,Netherlands,Eduarda,Centeno,she/her,NLD,Europe,4.8924534,52.3730796,,,,,,,,Open Science in Neuroscience: A Practical Guide for Researchers +eirinibotsari,Dem Haag,Netherlands,Eirini,Botsari,she/her,NLD,Europe,4.2696802205364515,52.07494555,,,,,Art as a means to open science,,, +ekaroune,Portsmouth,United Kingdom,Emma,Karoune,she/her,GBR,Europe,-1.0906023,50.800031,,Creating community awareness of open science practices in phytolith research,,,International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community,,, +elena-beretta,Amsterdam,Netherlands,Elena,Beretta,She/her,NLD,Europe,4.8924534,52.3730796,,,,,,,,The invisible society: Misgendering in Facial Recognition Systems: +elena-giglia,Turin,Italy,Elena,Giglia,,ITA,Europe,7.6824892,45.0677551,,,,,,A FAIRer training module on Open Science,, +elisa-on-github,Amsterdam,Netherlands,Elisa,Rodenburg,she/her,NLD,Europe,4.8924534,52.3730796,,,,"Generic data stewards in the Netherlands: who they are, what they do, and who they could become",,,,Open-source handbooks infrastructure at VU Amsterdam +emma-lawrence,London,United Kingdom,Emma,Lawrence,She/hers,GBR,Europe,-0.14405508452768728,51.4893335,,,The UKCRC Tissue Directory and Coordination Centre,,,,, +emmanuel19-ada,Ogbomosho,Nigeria,Emmanuel,Adamolekun,He/His,NGA,Africa,4.25,8.133,,,,Bioinformatics Secondary school Outreach in Nigeria,Bioinformatics Secondary school Outreach in Nigeria,Bioinformatics Secondary school Outreach in Nigeria,Bioinformatics Secondary school Outreach in Nigeria, +esbusis,Istanbul,Turkey,Esra Büşra,Işık,,TUR,Asia,29.052495,41.0766019,,,,,NGS-HuB: An open educational resource for NGS data analysis,,, +fabienne-lucas,Boston,United States,Fabienne,Lucas,she/hers,USA,North America,-71.060511,42.3554334,,,MiSET Publication Standards: A tool for AI-assisted peer-review of experimental information,,,,, +fabioperdigao,Rio De Janeiro,Brazil,Fabio,Ivo Perdigão,,BRA,South America,-43.2093727,-22.9110137,,,,,,Making Science simple and accessible,, +fadanka,Yaounde,Cameroon,Stephane,Fadanka,He/Him,CMR,Africa,11.5213344,3.8689867,,,,,Open Science for Improve diagnostics of Cancer through Artificial Intelligence and Digital Pathology,,From invisible to Citizens: Apparent Age for Primary School children without birth certificates, +farukustunel,Istanbul,Turkey,Faruk,Üstünel,,TUR,Asia,29.052495,41.0766019,,,,,NGS-HuB: An open educational resource for NGS data analysis,,, +fatma366,Mombasa,Kenya,Fatma,Omar,Miss,KEN,Africa,39.667169,-4.05052,,,,,,,,Identification and Prediction of Bacterial Pathogens Colonizing Yellowing Disease in Coastal Kenyan Coconuts: A Machine Learning Approach +federico-cestares,Buenos Aires,Argentina,Federico,Cestares,He- él,ARG,South America,-58.4370894,-34.6075682,,,,,Argentinean Public Health Research on Data Science and Artificial Intelligence for Epidemic Prevention (ARPHAI),,, +fredbelliard,Delft,Netherlands,Frédérique,Belliard,she/her,NLD,Europe,4.362724538543995,51.999457199999995,,,,,Publishing development plan for the Open access journals of TU Delft OPEN Publishing,,, +gabriela-rufino,Rio De Janeiro,Brazil,Gabriela,Rufino,She/her,BRA,South America,-43.2093727,-22.9110137,,,,,,,Closer to the sky: co-creating astronomical knowledge in a favela of Rio de Janeiro, +gareth-j,Bristol,United Kingdom,Gareth,Jones,He/ Him,GBR,Europe,-2.5972985,51.4538022,,,,,OpenGHG - a cloud platform for greenhouse gas data analysis and collaboration,,, +gedaloop,Barcelona,Spain,Adel,Sarvary,she/her,ESP,Europe,2.1774322,41.3828939,,,,Balconnect - A network of private outdoor areas improving urban ecoliteracy and biodiversity,,,, +gemmaturon,Barcelona,Spain,Gemma,Turon,she/her,ESP,Europe,2.1774322,41.3828939,,,,,The Ersilia Model Hub: encouraging deployment of computer-based research tools for non-expert usage,,, +georgiahca,London,United Kingdom,Georgia,Aitkenhead,She/her,GBR,Europe,-0.14405508452768728,51.4893335,,Autistica - Turing Citizen Science Project,,,,,, +ghammad,Liège,Belgium,Grégory,Hammad,,BEL,Europe,5.773545903524977,50.47081585,,,Open data schema for actigraphy data in chronobiology and sleep research,,,,, +gill-francis,York,United Kingdom,Gill,Francis,She/her,GBR,Europe,-1.0743052444639218,53.96565785,,,,EROS Stories: Conversation and case studies in open research across educational disciplines,,,, +glado718,Nairobi,Kenya,Gladys,Rotich,She/her,KEN,Africa,36.82884201813725,-1.3026148499999999,,,,,,The hub portal and academy,, +guille1107,Buenos Aires,Argentina,Guillermo Luciano,Fiorini,He; Him,ARG,South America,-58.4370894,-34.6075682,,,,Open data for nanosystem synthesis experimental conditions,,,, +hans-ket,Amsterdam,Netherlands,Hans,Ket,he/him,NLD,Europe,4.8924534,52.3730796,,,,,,,,Gender Differences in the Impostor Phenomenon: A Preregistered and Open-Science Meta-Analysis +harinilakshminarayanan,Zurich,Switzerland,Harini,Lakshminarayanan,,CHE,Europe,8.5410422,47.3744489,,,,,,OpSciHack: Open Life Science Hackathon,, +harpreetsingh05,Jalandhar,India,Harpreet,Singh,,IND,Asia,75.576889,31.3323762,,,Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers,,,,, +henricountevans,Kwaluseni,Eswatini,Henri-Count,Evans,He/Him,SWZ,Africa,31.6390919,-27.2216427,,,,,,,,An Open Handbook and MOOC on Computational Methods for African Media Researchers +heylf,Freiburg,Germany,Florian,Heyl,,DEU,Europe,7.8494005,47.9960901,,,Implementing a series of pedagogical games to teach pupils and citizens (metagenomic) data analysis,,,,, +hylary-emmanuela-ndegala-nhana,Yaounde,Cameroon,Hylary Emmanuela,Ndegala Nhana,,CMR,Africa,11.5213344,3.8689867,,,,,,,From invisible to Citizens: Apparent Age for Primary School children without birth certificates, +hzahroh,Jakarta,Indonesia,Hilyatuz,Zahroh,She/her,IDN,Asia,106.8270488,-6.175247,,,Boosting research visibility using Preprints,,,,, +iramosp,Mexico City,Mexico,Irene,Ramos,she / her,MEX,North America,-99.1331785,19.4326296,,,Skills for Open Agrobiodiversity Data,,,,, +irena-maus,Bielefeld,Germany,Irena,Maus,,DEU,Europe,8.531007,52.0191005,,,,"Online event ""Women in Data Science - Perspectives in Industry and Academia"" Part II",,,, +irisbotas,Majadahonda,Spain,Iris,San Pedro,She/her,ESP,Europe,-3.8724138,40.473055,,,Creating a network of Open Science ambassadors in Spanish Health Research Institutes,,,,, +isahmadbbr,Kano,Nigeria,Ibrahim Said,Ahmad,,NGA,Africa,8.5364136,11.8948389,,,Development of language resources for Hausa Natural Language Processing,,,,, +ismael-kg,London,United Kingdom,Ismael,Kherroubi Garcia,He/him,GBR,Europe,-0.14405508452768728,51.4893335,,The Turing Way - Guide for Ethical Research,,,An Incomplete History of Research Ethics,,, +iván-gabriel-poggio,Toay,Argentina,Iván Gabriel,Poggio,,ARG,South America,-64.3796809,-36.6738649,,,,,,,,Gobernanza 2.0 de MetaDocencia +jafari-amir,Rio De Janeiro,Brazil,Amir,Jafari,,BRA,South America,-43.2093727,-22.9110137,,,,,,,Open-source object recognition software specifically designed for mice in Alzheimers disease, +jafsia,Yaounde,Cameroon,Elisee,Jafsia,He/Him,CMR,Africa,11.5213344,3.8689867,,,,,Open Science for Improve diagnostics of Cancer through Artificial Intelligence and Digital Pathology,,From invisible to Citizens: Apparent Age for Primary School children without birth certificates, +javier-ruiz-pérez,Barcelona,Spain,Javier,Ruiz Pérez,,ESP,Europe,2.1774322,41.3828939,,,Towards FAIRer phytolith data,,,,, +jbuczny,Amsterdam,Netherlands,Jacek,Buczny,,NLD,Europe,4.8924534,52.3730796,,,,,,,,Gender Differences in the Impostor Phenomenon: A Preregistered and Open-Science Meta-Analysis +jessica-sims,London,United Kingdom,Jessica,Sims,She/her,GBR,Europe,-0.14405508452768728,51.4893335,,,The UKCRC Tissue Directory and Coordination Centre,,,,, +jformoso,Ciudad Autónoma De Buenos Aires,Argentina,Jesica,Formoso,she/her,ARG,South America,-58.4370894,-34.6075682,,,,,,,"Mapping open-science communities, organizations, and events in Latin America", +jhon-anderson-pérez-silva,Lima,Peru,Jhon Anderson,Pérez Silva,He/him,PER,South America,-77.0365256,-12.0621065,,,,,SciHack: Promoting the Open Source and DIY movements in Peru,,, +jhrudey,Amsterdam,Netherlands,Jessica,Hrudey,she/her/hers,NLD,Europe,4.8924534,52.3730796,,,,,,,,Open-source handbooks infrastructure at VU Amsterdam +jmmaok,"Cary, Nc",United States,Jennifer,Miller,,USA,North America,-78.7812081,35.7882893,,,Postdoc Empirical Legal Research Open Notebook,,,,Translate Science, +joelfan,Milan,Italy,Dario,Basset,,ITA,Europe,9.1896346,45.4641943,,,,,,Open science spread,, +joyceykao,Aachen,Germany,Joyce,Kao,She/Her,DEU,Europe,6.083862,50.776351,,Open Innovation in Life Sciences,,,,,, +jruizperez,College Station,United States,Javier,Ruiz-Pérez,,USA,North America,-96.3071042,30.5955289,,,,,International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community,,, +juanjo-garcía-granero,Barcelona,Spain,Juan José,García-Granero,He/him/his,ESP,Europe,2.1774322,41.3828939,,,Towards FAIRer phytolith data,,International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community,,, +julianbuede,Córdoba,Argentina,Julián,Buede,Él,ARG,South America,-4.7760138,37.8845813,,,,,,,,Estructura e infraestructura para la formación por cohortes virtuales +jvillcavillegas,Buenos Aires,Argentina,Jose Luis,Villca Villegas,Bolivia,ARG,South America,-58.4370894,-34.6075682,,,,,Training Latin American scientists' community to create high-quality open journals with good editorial standards,,, +jyoti-bhogal,"Ahmednagar, Maharashtra",India,Jyoti,Bhogal,she/her,IND,Asia,74.74267631763158,19.043620599999997,,,,,Building Pathways for Onboarding to Research Software Engineering (RSE) Asia Association and Adoption of Code of Conduct,,, +k-c-martin,Stellenbosch,South Africa,Kim,Martin,,ZAF,Africa,18.869167,-33.934444,,,,,Finding paths through the FAIR forest; linking metadata from forestry models and datasets to assist analysis and hypothesis generation,,, +karegapauline,Nairobi,Kenya,Pauline,Karega,she/her,KEN,Africa,36.8288420082562,-1.3026148499999999,,Database for coordinating training needs in Kenya to faciliatate preparation and collaboration,,,,The hub portal and academy,, +karvovskaya,Amsterdam,Netherlands,Lena,Karvovskaya,She/her,NLD,Europe,4.8924534,52.3730796,Creating network of Data Champions at the library of Free University of Amsterdam,,,,,,,Open-source handbooks infrastructure at VU Amsterdam +katesimpson,London/ Great Union Canal/ Leeds,United Kingdom,Kate,Simpson,She/her,GBR,Europe,,,,Towards open and citizen-led data informing the decarbonisation of existing housing,,,,,, +katoss,Paris,France,Katharina,Kloppenborg,she/her,FRA,Europe,2.3200410217200766,48.8588897,,Autistica - Turing Citizen Science Project,Best practices for online collaboration/peer-production in citizen science,,,,, +kenmurithi,Chogoria,Kenya,Ken,Mugambi,,KEN,Africa,37.631994,-0.228851,,,,,,The hub portal and academy,, +khanteymoori,Freiburg,Germany,Alireza,Khanteymoori,,DEU,Europe,7.8494005,47.9960901,,,Implementing a series of pedagogical games to teach pupils and citizens (metagenomic) data analysis,,,,, +kllewers,"Boulder, Co",United States,Kit,Lewers,she/her,USA,North America,-105.270545,40.0149856,,,,,,,,"Understanding Natural History Organizational Structures, Data Sharing, and Coordination through Biodiversity Informatics and Biocollections" +koen-leuveld,Amsterdam,Netherlands,Koen,Leuveld,,NLD,Europe,4.8924534,52.3730796,,,,,,,,Open-source handbooks infrastructure at VU Amsterdam +koerding,Philadelphia,United States,Konrad,Kording,he/ him,USA,North America,-75.1635262,39.9527237,,,,,,,,dr +kon0925,Heraklion,Greece,Haridimos,Kondylakis,,GRC,Europe,25.1332843,35.33908,,,"ProCancer-I - An AI Platform integrating imaging data and models, supporting precision care through prostate cancer's continuum",,,,, +lalmehlisy,Riyadh,Saudi Arabia,Leena,AlMehlisy,she/her,SAU,Asia,46.7160104,24.638916,,,,Culture-independent discovery of natural products from soil metagenomes,,,, +landimi2,Nairobi,Kenya,Michael,Landi,He/Him,KEN,Africa,36.8288420082562,-1.3026148499999999,Bioinformatics Hub of Kenya (BHK),,,,,,, +lauracarter,London,United Kingdom,Laura,Carter,she/her,GBR,Europe,-0.12765,51.5073359,,The Turing Way - Guide for Ethical Research,,,,,, +lauracion,Ciudad Autónoma De Buenos Aires,Argentina,Laura,Ación,she/ella,ARG,South America,-58.43562340522388,-34.61612315,,,,,Argentinean Public Health Research on Data Science and Artificial Intelligence for Epidemic Prevention (ARPHAI),,, +lauradascenzi,Córdoba,Argentina,Laura,Ascenzi,she/her/ella,ARG,South America,-4.7760138,37.8845813,,,,,,,,Gobernanza 2.0 de MetaDocencia +lauramb8909,Bucaramanga,Colombia,Laura Marcela,Becerra Bayona,,COL,South America,-73.1047294009737,7.16698415,,,,,,,LA-CoNGA Physics Citizen Science Project, +lcbreedt,Amsterdam,Netherlands,Lucas,Breedt,he/him/his,NLD,Europe,4.8924534,52.3730796,,,,,,,,Open Science in Neuroscience: A Practical Guide for Researchers +lessa-maker,Centre,Cameroon,Lessa Tchohou,Fabrice,,CMR,Africa,1.7324062,47.5490251,,,,,,,"Development of an online open science platform, easy and accessible for agricultural students in Cameroon.", +lisanna,Heidelberg,Germany,Lisanna,Paladin,She/they,DEU,Europe,8.694724,49.4093582,,,,Grassroots: Nurturing the EMBL Bio-IT Community,,,, +lomaxboydphd,New York,United States,Lomax,Boyd,He/him,USA,North America,-74.0060152,40.7127281,,,Junto Labs - Advancing Virtual Environments for Life Science Research and Active Learning,,,,, +loreleyls,Falmouth,United States,Loreley,Lago,she/her,USA,North America,-5.0688262,50.1552197,,,,,,,,JICMar Network: towards better opportunities and greater collaboration among young marine science researchers in Latin America +lukehare,London,United Kingdom,Luke,Hare,he/him,GBR,Europe,-0.14405508452768728,51.4893335,,,,Hub23: An open source community and infrastructure for Turing's BinderHub,Hub23: An open source community and infrastructure for Turing's BinderHub,,, +lwbwalma,Delft,Netherlands,Lisanne,Walma,she/her,NLD,Europe,4.362724538543995,51.999457199999995,,,,,Build a community around the TU Delft Open Science MOOC,,, +lydiafrance,London,United Kingdom,Lydia,France,,GBR,Europe,-0.14405508452768728,51.4893335,,,,Hub23: An open source community and infrastructure for Turing's BinderHub,Hub23: An open source community and infrastructure for Turing's BinderHub,,, +macziatko,Dublin,Ireland,Nina,Trubanová,she/her/hers,IRL,Europe,-6.2605593,53.3493795,,,,,,AGAPE: Building an open science practicing community in Ireland,, +mai-alajaji,Riyadh,Saudi Arabia,Mai,Alajaji,,SAU,Asia,46.7160104,24.638916,,,,Culture-independent discovery of natural products from soil metagenomes,,,, +malvikasharan,London,United Kingdom,Malvika,Sharan,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,"Exploring ""Governance Models"" for Open Science community projects as per their maturity stage",,, +manulera,Paris,France,Manuel,Lera Ramirez,He/him,FRA,Europe,2.3200410217200766,48.8588897,,,,Genestorian: An Open Source web application for model organism collections,,,, +marco-madella,Barcelona,Spain,Marco,Madella,he/his,ESP,Europe,2.1774322,41.3828939,,,Towards FAIRer phytolith data,,,,, +marcotxma,Munich,Germany,Marco,Ma,he/him,DEU,Europe,11.5753822,48.1371079,,,,,,,"momenTUM Research Platform: An open-source, reproducible research infrastructure for digital health", +maria-andrea-gonzales-castillo,Lima,Peru,Maria Andrea,Gonzales Castillo,She/Her,PER,South America,-77.0365256,-12.0621065,,,,,SciHack: Promoting the Open Source and DIY movements in Peru,,, +mariangelap,Genova,Italy,Mariangela,Panniello,she/her,ITA,Europe,8.9338624,44.40726,,,,,"Open Science, Open Future",,, +marie-nugent,London,United Kingdom,Marie,Nugent,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,Developing effective online communities to build tools for genomic equity,, +marielaraj,Ciudad De Buenos Aires,Argentina,Mariela,Rajngewerc,She/her,ARG,South America,-58.4370894,-34.6075682,,,,,,,Open educational hands-on tutorial for evaluating fairness in AI classification models, +marlouramaekers,Amsterdam,Netherlands,Marlou,Ramaekers,she/her,NLD,Europe,4.8924534,52.3730796,,,,,,,,Making corporate social responsibility data available and accessible for other researchers +marta-marin,Madrid,Spain,Marta,Marin,She/her,ESP,Europe,-3.7035825,40.4167047,,,Creating a network of Open Science ambassadors in Spanish Health Research Institutes,,,,, +martinagvilas,Frankfurt Am Main,Germany,Martina,Vilas,She/her,DEU,Europe,8.6820917,50.1106444,,,Open Source Project for Evaluating Reproducibility Trends in AI Research Projects,,,,, +marzia-di-filippo,Milano,Italy,Marzia,Di Filippo,,ITA,Europe,9.1896346,45.4641943,,,Seeding,,,,, +masako-kaufmann,Freiburg,Germany,Masako,Kaufmann,"She, her",DEU,Europe,7.8494005,47.9960901,,,Implementing a series of pedagogical games to teach pupils and citizens (metagenomic) data analysis,,,,, +megmugure,Nairobi,Kenya,Margaret,Wanjiku,she/her,KEN,Africa,36.8288420082562,-1.3026148499999999,Bioinformatics Hub of Kenya (BHK),,,,,,, +mehak-chopra,Puducherry,India,Mehak,Chopra,she/her,IND,Asia,79.8306447,11.9340568,,,Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers,,,,, +melibleq,São Paulo,Brazil,Melissa,Black,she/her,BRA,South America,-47.1583944,-1.2043218,,,,,,,,Estructura e infraestructura para la formación por cohortes virtuales +mgawe-cavin,"Nairobi, Kenya",Kenya,Cavin,Mgawe,He,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,Developing thermally stable loop mediated isothermal amplification kit for a non invasive detection of malaria,,, +michael-addy,Kumasi,Ghana,Michael,Addy,He,GHA,Africa,-1.6233086,6.6985605,,,,Creating an open database for carbon foot printing of buildings in Ghana,,,, +michal-javornik,Brno,Czechia,Michal,Javornik,,CZE,Europe,16.6113382,49.1922443,,,FAIR MAFIL: FAIRification of imaging/neurophysiological data of MAFIL CEITEC MUNI laboratory for EOSC,,,,, +michal-ruzicka,Brno,Czechia,Michal,Růžička,,CZE,Europe,16.6113382,49.1922443,,,FAIR MAFIL: FAIRification of imaging/neurophysiological data of MAFIL CEITEC MUNI laboratory for EOSC,,,,, +mihaelanemes,London,United Kingdom,Mishka,Nemes,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,Towards an infrastructure for open-source (online) training in data science and AI,,,,, +miketrizna,"Washington, Dc",United States,Mike,Trizna,he/him/his,USA,North America,-77.0365427,38.8950368,,,,,,,"Building an open, structured, knowledge listing system", +milagro-urricariet,Ciudad Autónoma De Buenos Aires,Argentina,Milagro,Urricariet,she/her,ARG,South America,-58.4370894,-34.6075682,,,,,,,,JICMar Network: towards better opportunities and greater collaboration among young marine science researchers in Latin America +mitch-kitoi,Nairobi,Kenya,Michael,Kitoi,He/Him,KEN,Africa,36.82884201813725,-1.3026148499999999,,,,,,,,Assessing the Zinc Finger Protein Mutation and Expression Profile in Kenyan Women with Breast Cancer +miytek,Delft,Netherlands,Miyase,Tekpinar,,NLD,Europe,4.362724538543995,51.999457199999995,,,,,,,,A Fiji plugin for SOFI analysis +mlagisz,Sydney,Australia,Malgorzata,Lagisz,,AUS,Oceania,-60.194092,46.137977,,,,,,"Evaluating criteria of ""best paper"" awards from research journals across disciplines",, +mmasibidi,Potchefstroom,South Africa,Mmasibidi,Setaka,She/her,ZAF,Africa,27.095833,-26.707778,,,,,,,,Assessing word stability in Corpora and its influence on learner dictionaries +mohan-gupta,Kathmandu,Nepal,Mohan,Gupta,He/Him,NPL,Asia,85.3205817,27.708317,,,GyaNamuna: Virtual School Connecting Rural Students To The World,,,,, +mona-zimmermann,Amsterdam,Netherlands,Mona,Zimmermann,She/Her,NLD,Europe,4.8924534,52.3730796,,,,,,,,Open Science in Neuroscience: A Practical Guide for Researchers +msundukova,Bilbao,Spain,Mayya,Sundukova,she/her,ESP,Europe,-2.9350039,43.2630018,,,,,,Developing policy briefs on mental well-being of researchers in academia across different countries,, +mtthsdzwn,Amsterdam,Netherlands,Matthijs,de Zwaan,,NLD,Europe,4.8924534,52.3730796,,,,,,,,Is my research used in clinical trials? - Tool(s) to assess societal impact using open scholarly data +mxrtinez,Bucaramanga,Colombia,Alexander,Martinez Mendez,,COL,South America,-73.1047294009737,7.16698415,,,LA-CoNGA physics (Latin American alliance for Capacity buildiNG in Advanced physics),,,,LA-CoNGA Physics Citizen Science Project, +nadia-odaliz-chamana-chura,Lima,Peru,Nadia Odaliz,Chamana Chura,She/her/hers,PER,South America,-77.0365256,-12.0621065,,,,,SciHack: Promoting the Open Source and DIY movements in Peru,,, +nadinespy,Brighton,United Kingdom,Nadine,Spychala,she/her,GBR,Europe,-0.1400561,50.8214626,,,,Developing a library in Python for applying measures of emergence and complexity,,,, +nahuele,Vicente Lopez,Argentina,Nahuel,Escobedo,he,ARG,South America,-58.5036282,-34.5244484,,,,,,,An interactive map of socio-ecological projects, +nanje-patrick-itarngoh,Buea,Cameroon,Nanje Patrick,Itarngoh,He,CMR,Africa,9.2315519,4.1567995,,,,,,,,Wind Power System Stability Analysis for Grid Integration: A Statistical Mechanics Approach to the Swing Equation. +nathanael-kedmayla,Yaounde,Cameroon,Nathanael,Kedmayla,He/Him,CMR,Africa,11.5213344,3.8689867,,,,,,,From invisible to Citizens: Apparent Age for Primary School children without birth certificates, +nea-bridget,London,United Kingdom,Bridget,Nea,she/her/hers,GBR,Europe,-0.14405508452768728,51.4893335,,,,,"Data Science and AI Educators' Programme AND Tools, Practices & Systems Peer Mentorship Programme",,, +nelson-franco,Cochabamba,Bolivia,Nelson Franco,Condori Salluco,Nelson,,,-66.1568983,-17.3936114,,,,,Training Latin American scientists' community to create high-quality open journals with good editorial standards,,, +nickynicolson,London,United Kingdom,Nicky,Nicolson,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,An extensible notebook for open specimens,An extensible notebook for open specimens, +niels-reijner,Amsterdam,Netherlands,Niels,Reijner,,NLD,Europe,4.8924534,52.3730796,,,,,,,,Open Science in Neuroscience: A Practical Guide for Researchers +nihansultan,İstanbul,Turkey,Nihan Sultan,Milat,,TUR,Asia,29.052495,41.0766019,,,MBiO: Designing an open-collaborative website in the field of molecular biology,,NGS-HuB: An open educational resource for NGS data analysis,,, +nlois,Buenos Aires,Argentina,Nicolás,Lois,He/him,ARG,South America,-58.4370894,-34.6075682,,,,,,,,JICMar Network: towards better opportunities and greater collaboration among young marine science researchers in Latin America +nodiraibrogimova,Tashkent,Uzbekistan,Nodira,Ibrogimova,She/Hers,UZB,Asia,69.2787079,41.3123363,,,,,Open Science for Improve diagnostics of Cancer through Artificial Intelligence and Digital Pathology,,, +nomalu,Pretoria,South Africa,Nomalungelo Octavia,Maphanga,,ZAF,Africa,28.1879101,-25.7459277,,,,,,Mapping the RSSE landscape in Africa,, +npalopoli,Buenos Aires,Argentina,Nicolás,Palopoli,Él/He/Him,ARG,South America,-58.4370894,-34.6075682,,,,,,,,Estructura e infraestructura para la formación por cohortes virtuales +npdebs,Port Harcourt.,Nigeria,Deborah,Udoh,She/her,NGA,Africa,7.0188527,4.7676576,,,,,,,The Impact of Sleep Deprivation on Mental Health, +nwakaego-gloria-ashiegbu,Umudike / Abia State,Nigeria,Nwakaego Gloria,Ashiegbu,She,NGA,Africa,7.533333,5.5,,,,,,,,Digitalization for sustainable Agricultural practices and climate change mitigation +nyasita,Nairobi,Kenya,Laurah,Ondari,,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,The hub portal and academy,, +olayile,Pretoria,South Africa,Olayile,Ejekwu,She/Her,ZAF,Africa,28.1879101,-25.7459277,,,"BioFerm: A web application used for kinetic modeling, parameter estimation and simulation of bioprocesses",,,,, +olsjuju,Seoul,South Korea,Juyeon,Kim,,,,126.9782914,37.5666791,,,,,Open collaborative network and incentive system for brain health,,, +olufemi-adesope,Port Harcourt,Nigeria,Olufemi,Adesope,Him/His,NGA,Africa,7.0188527,4.7676576,,,,,,,,Digitalization for sustainable Agricultural practices and climate change mitigation +onwumere.joseph,"Umudike, Abia State",Nigeria,Joseph,Chimere Onwumere,He,NGA,Africa,7.533333,5.5,,,,,,,,Digitalization for sustainable Agricultural practices and climate change mitigation +osatashamim,Nairobi,Kenya,Shamim,Wanjiku Osata,,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,An open support resource for primary mental health for researchers.,, +paolo-pedaletti,Milano,Italy,Paolo,Pedaletti,,ITA,Europe,9.1896346,45.4641943,,,Seeding,,,,, +patriloto,Resistencia - Chaco,Argentina,Patricia,Loto,Ella/She,ARG,South America,-59.19320025100798,-27.6048829,,,,,,,"Mapping open-science communities, organizations, and events in Latin America", +paulinegachanja,Kilifi,Kenya,Pauline,Wambui Gachanja,Her/She,KEN,Africa,39.67507159193717,-3.15073925,,,,,,,,Bioinformatics codeathon +paulmaxus,Amsterdam,Netherlands,Maximillian,Paulus,he/him/his,NLD,Europe,4.8924534,52.3730796,,,,,,,,Is my research used in clinical trials? - Tool(s) to assess societal impact using open scholarly data +pazmiguez,Buenos Aires,Argentina,Paz,Míguez,she/her,ARG,South America,-58.4370894,-34.6075682,,,,,,,,Estructura e infraestructura para la formación por cohortes virtuales +pescini,Milan,Italy,Dario,Pescini,he/him,ITA,Europe,9.1896346,45.4641943,,,Seeding,,,,, +petraag,Bamenda,Cameroon,Agien,Petra Ukeh,She,CMR,Africa,10.1516505,5.9614117,,,,,,,liforient, +phaarouknucleus,Kano,Nigeria,Umar Farouk,Ahmad,,NGA,Africa,8.5364136,11.8948389,,,,,,Development of a Multi-Adaptor Quality Control Kit for Integration with Radiographic Equipment,, +piero-beraun,Lima,Peru,Piero,Beraun,He/Him,PER,South America,-77.0365256,-12.0621065,,,,,SciHack: Promoting the Open Source and DIY movements in Peru,,, +pinheirochagas,San Francisco,United States,Pedro,Pinheiro-Chagas,He / him / his,USA,North America,-122.419906,37.7790262,,,,,"Development of an Open Source Platform for the Storage, Sharing, Synthesis and Meta-Analysis of Clinical Data",,, +prakriti-karki,Kathmandu,Nepal,Prakriti,Karki,She/her,NPL,Asia,85.3205817,27.708317,,,GyaNamuna: Virtual School Connecting Rural Students To The World,,,,, +prashbio,Jaipur,India,Prash,Suravajhala,He/Him,IND,Asia,75.8189817,26.9154576,,,Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers,,,,, +princehoodie,Buenos Aires,Argentina,Tobías,Aprea,He/His,ARG,South America,-58.4370894,-34.6075682,,,,Open data for nanosystem synthesis experimental conditions,,,, +r-huo,Delft,Netherlands,Ran,Huo,,NLD,Europe,4.362724538543995,51.999457199999995,,,,,,Building a Platform for Open and Reproducible Super-resolution Imaging Hardware and Analytical Tools,, +raoofphysics,Bristol,United Kingdom,Achintya,Rao,he/him,GBR,Europe,-2.5972985,51.4538022,,,,,Cultivating a Community of Practice of AI researchers,,, +reinout-de-vries,Amsterdam,Netherlands,Reinout,de Vries,,NLD,Europe,4.8924534,52.3730796,,,,,,,,Gender Differences in the Impostor Phenomenon: A Preregistered and Open-Science Meta-Analysis +rgiessmann,Berlin,Germany,Robert,Giessmann,he/him,DEU,Europe,13.3888599,52.5170365,,,,,,,,openTECR - an open database on thermodynamics of enzyme-catalyzed reactions +richarddushime,Kampala,Uganda,Richard,Dushime,He/Him,UGA,Africa,32.5813539,0.3177137,,,,,,,Implementing Facial Recognition and Biometric Attendance Monitoring in Educational and Corporate Settings, +robandeep-kaur,Jalandhar,India,Robandeep,Kaur,She/her,IND,Asia,75.576889,31.3323762,,,Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers,,,,, +robert-schreiber,Hermanus,South Africa,Robert,Schreiber,He/him,ZAF,Africa,19.2361111,-34.4175,,,,,Easy Access Autism Resources for Rural Parents,,, +robin-lewando,Drimoleague,Ireland,Robin,Lewando,,IRL,Europe,-9.2599704,51.6608501,,,"Field and laboratory based research project researching, surveying, and discovering the palaeoecology and palaeogeography of West Cork",,,,, +romina-pendino,"Rosario, Santa Fe",Argentina,Romina,Pendino,,ARG,South America,-60.6617024,-32.9593609,,,,,,,,Gobernanza 2.0 de MetaDocencia +romina-trinchin,Montevideo,Uruguay,Romina,Trinchin,,URY,South America,-56.1913095,-34.9058916,,,,,,,,JICMar Network: towards better opportunities and greater collaboration among young marine science researchers in Latin America +romullo-lima,Rio De Janeiro,Brazil,Romullo,Lima,,BRA,South America,-43.2093727,-22.9110137,,,,,,Making Science simple and accessible,, +roné-wierenga,Pretoria,South Africa,Roné,Wierenga,Mrs/she/her,ZAF,Africa,28.1879101,-25.7459277,,,,,,,,UbuntuEdu (Concept title) +ruben-lacroix,Amsterdam,Netherlands,Ruben,Lacroix,,NLD,Europe,4.8924534,52.3730796,,,,,,,,Is my research used in clinical trials? - Tool(s) to assess societal impact using open scholarly data +rukynas,Porto,Portugal,Ruqayya Nasir,Iro,She,PRT,Europe,-8.6107884,41.1494512,,,Development of language resources for Hausa Natural Language Processing,,,,, +sairajdillikar,Mysore,India,Sairaj R,Dillikar,,IND,Asia,76.6553609,12.3051828,,,,,FarawayFermi - A platform for open source bioinformatic tools to detect biosignatures in astrobiology,,, +samvanstroud,London,United Kingdom,Sam,Van Stroud,,GBR,Europe,-0.14405508452768728,51.4893335,,Turing Data Stories,,,,,, +sandra-larriega,Ñima,Peru,Sandra Mirella,Larriega Cruz,"She, her",PER,South America,23.8675381,47.0759396,,,,,SciHack: Promoting the Open Source and DIY movements in Peru,,, +sandrine-kengne,Yaounde,Cameroon,Sandrine,Kengne,,CMR,Africa,11.5213344,3.8689867,,,,,,,"Comparison of three growth curves for the diagnosis of extrauterine growth retardation at 40 weeks postconceptional age and associated factors in preterm infants in the city of Yaoundé, Cameroon", +santi-rello-varona,Madrid,Spain,Santi,Rello Varona,he/him,ESP,Europe,-3.7035825,40.4167047,,,Creating a network of Open Science ambassadors in Spanish Health Research Institutes,,,,, +sarah-nietopski,London,United Kingdom,Sarah,Nietopski,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,Community engagement: Building an open online learning community,,, +saranjeetkaur,Gurgaon,India,Saranjeet Kaur,Bhogal,She/her,IND,Asia,77.00270014657752,28.42826235,,,,Building the Research Software Engineering (RSE) Association in Asia region,,Mapping the Open Life Science Cohorts,, +saravilla,London,United Kingdom,Sara,Villa,she/her,GBR,Europe,-0.12765,51.5073359,,,,Open and reproducible data analysis for wet lab neuroscientists,,,, +sarenaz,Astana (Nursultan),Kazakhstan,Zarena,Syrgak,she/they,KAZ,Asia,71.4306682,51.1282205,,,,,Multilingual Open Science: Creating Open Educational Resources in Central Asian Languages,,, +saryace,Santiago,Chile,Sara,Acevedo,she/her,CHL,South America,-83.7980749,9.8694792,,,,,,,Data analysis in soil physics: an opportunity of teaching data management and reproducibility, +sayalaruano,Maastricht,Netherlands,Andres Sebastian,Ayala Ruano,he/him,NLD,Europe,5.6969881818221095,50.85798545,,,,"An open educational resource to introduce fundamental concepts of GNU/Linux, terminal usage, Bash/AWK scripting, and Git/GitHub for Bioinformatics",,,, +seunolufemi123,Ogbomoso,Nigeria,Seun Elijah,Olufemi,,NGA,Africa,4.25,8.133,,,,,,,Bioinformatics Secondary school Outreach in Nigeria, +sgibson91,London,United Kingdom,Sarah,Gibson,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,An Open Source Service Area for Turing research projects,,,,, +shmuhammad2004,Kano,Nigeria,Shamsuddeen,Muhammad,He/Him,NGA,Africa,8.5364136,11.8948389,,,Development of language resources for Hausa Natural Language Processing,,,,, +sivasubramanian-murugappan,Limerick,Ireland,Sivasubramanian,Murugappan,,IRL,Europe,-8.6301239,52.661252,,,,,,,Facilitating easier academic selection of research students using ML, +sjb287,Urbana,United States,Steven,Burgess,He/His/Him,USA,North America,-88.207301,40.1117174,,,Open Phototroph,,,,, +sladjana-lukic,New York City,United States,Sladjana,Lukic,she/her,USA,North America,-74.0060152,40.7127281,,,,,"Development of an Open Source Platform for the Storage, Sharing, Synthesis and Meta-Analysis of Clinical Data",,, +slldec,Buenos Aires,Argentina,Sabrina,López,she/her/ella,ARG,South America,-58.4370894,-34.6075682,,,,,Argentinean Public Health Research on Data Science and Artificial Intelligence for Epidemic Prevention (ARPHAI),,, +smhall97,Oxford,United Kingdom,Siobhan Mackenzie,Hall,she/her,GBR,Europe,-1.2578499,51.7520131,,,,,,,Investigating effective strategies for radical inclusion at academic events, +smklusza,Morrow,United States,Stephen,Klusza,he/him/his,USA,North America,-82.7771661,40.4574358,,Synthetic Biology Chassis Toolkit for Public Domain Use,,,,,, +spitschan,Munich,Germany,Manuel,Spitschan,he/him/his,DEU,Europe,11.5753822,48.1371079,,,Open data schema for actigraphy data in chronobiology and sleep research,,,,"momenTUM Research Platform: An open-source, reproducible research infrastructure for digital health", +tai-rocha,Rio De Janeiro,Brazil,Tainá,Rocha,,BRA,South America,-43.2093727,-22.9110137,,"Global land-use and land-cover data under historical, current, and future climatic conditions for ecologists",,,,,, +teddygroves,Copenhagen,Denmark,Teddy,Groves,He/him,DNK,Europe,12.5700724,55.6867243,,,,,,,,openTECR - an open database on thermodynamics of enzyme-catalyzed reactions +teresa-m,Freiburg,Germany,Teresa,Müller,She/Her,DEU,Europe,7.8494005,47.9960901,,,Implementing a series of pedagogical games to teach pupils and citizens (metagenomic) data analysis,,,,, +thatspacegirl,Bengaluru,India,Sagarika,Valluri,She/Her,IND,Asia,77.590082,12.9767936,,,,FarawayFermi- A platform for open source bioinformatic tools to detect biosignatures in astrobiology,FarawayFermi - A platform for open source bioinformatic tools to detect biosignatures in astrobiology,,, +tlaguna,Madrid,Spain,Teresa,Laguna,,ESP,Europe,-3.7035825,40.4167047,,Science For All (Sci4All) - Citizens' daily problem solving by engaging multidisciplinary scientific communities,,,,,, +tokioblues,Salta,Argentina,Paola Andrea,Lefer,sher/her,ARG,South America,-64.3494964,-25.1076701,,,,,,,,Gobernanza 2.0 de MetaDocencia +torigijzen,Amsterdam,Netherlands,Tori,Gijzen,,NLD,Europe,4.8924534,52.3730796,,,,,,,,PyOrb 1.0 – Automated Analysis Tool for Orbital Interactions +ujwal-shrestha,Kathmandu,Nepal,Ujwal,Shrestha,He/Him,NPL,Asia,85.3205817,27.708317,,,GyaNamuna: Virtual School Connecting Rural Students To The World,,,,, +umutpajaro,Cartagena,Colombia,Umut,Pajaro Velasquez,They/Them,COL,South America,-75.5443419,10.4266746,,,,,,,Queering the law: How to make AI with a Queer Perspective from the Majority of the World, +unode,Heidelberg,Germany,Renato,Alves,he/him,DEU,Europe,8.694724,49.4093582,EMBL Bio-IT Community Project,,,,,,, +varlottaang,Rionero In Vulture,Italy,Angelo,Varlotta,He/him,ITA,Europe,15.6694407,40.9261881,,,,,,,Collective and Open Research in Climate Science, +vborghe,Montréal,Canada,Valentina,Borghesani,she/her/hers,CAN,North America,-73.5698065,45.5031824,,,,,"Development of an Open Source Platform for the Storage, Sharing, Synthesis and Meta-Analysis of Clinical Data",,, +veroxgithub,"Avellaneda, Pba.",Argentina,Verónica,Xhardez,She/ella,ARG,South America,-58.3628061,-34.6648394,,,,,Argentinean Public Health Research on Data Science and Artificial Intelligence for Epidemic Prevention (ARPHAI),,, +vhellon,London,United Kingdom,Vicky,Hellon,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,Building an open community around the Turing-Roche Strategic Partnership,,, +vickygisel,Oro Verde,Argentina,Victoria,Dumas,"She, Her",ARG,South America,-64.29891743033643,-31.132197599999998,,,,,Argentinean Public Health Research on Data Science and Artificial Intelligence for Epidemic Prevention (ARPHAI),,, +vskentrou,Amsterdam,Netherlands,Vasiliki,Kentrou,she/her,NLD,Europe,4.8924534,52.3730796,,,,,,,,Creating an online repository for open collaboration in psychology +web-learning,Johannesburg,South Africa,Derek,Moore,He/Him,ZAF,Africa,28.049722,-26.205,,,,,,,,The Open Umbrella & Hybrid Learning Field Guide +wykhuh,Los Angeles,United States,Wai-Yin,Kwan,,USA,North America,-118.242766,34.0536909,,,,Citizen Scientists as Data Explorers,,,, +xaxasm,Bucaramanga,Colombia,Alexandra,Serrano Mendoza,,COL,South America,-73.1047294009737,7.16698415,,,,,,,LA-CoNGA Physics Citizen Science Project, +yanick-diapa-nana,Yaoundé,Cameroon,Yanick,Diapa Nana,,CMR,Africa,11.5213344,3.8689867,,,,,,,From invisible to Citizens: Apparent Age for Primary School children without birth certificates, +yhordijk,Amsterdam,Netherlands,Yuman,Hordijk,,NLD,Europe,4.8924534,52.3730796,,,,,,,,PyOrb 1.0 – Automated Analysis Tool for Orbital Interactions +zdunseth,Providence,United States,Zachary,Dunseth,he/his,USA,North America,-71.4128343,41.8239891,,,,,International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community,,, +zenita-milla-luthfiya,Solo,Indonesia,Zenita Milla,Luthfiya,She,IDN,Asia,110.828448,-7.5692489,,,Boosting research visibility using Preprints,,,,, +afzal442,,India,Afzal,Ansari,he/him,IND,Asia,,,,,Documentation enhancement with open science practices in sktime,,,,, +alecandian,,Netherlands,Alessandra,Candian,she/her/hers,NLD,Europe,,,,,,,Build a community around the TU Delft Open Science MOOC,,, +angelicamaineri,,Netherlands,Angelica,Maineri,She/her,NLD,Europe,,,,,,,,,Building a searchable project database, +anproulx,,Canada,Andréanne,Proulx,,CAN,North America,,,,OSUM - Open Science UMontreal,,,,,, +arvinpreet-kaur,,India,Arvinpreet,Kaur,she/her/hers,IND,Asia,,,,,Systems Genomic Integration of Diabetes Related Genes: A Quest for Development of Biomarkers,,,,, +astroakanksha24,,India,Akanksha,Chaudhari,She/ Her,IND,Asia,,,,,,,Visualisation of participants by their countries,,, +bailey-harrington,,United States,Bailey,Harrington,she/her,USA,North America,,,,Chronic Learning,,,,,, +bakary-n'tji diallo,,Mali,Bakary,N'tji Diallo,,MLI,Africa,,,,BioLab Open Source Projects,,,,,, +banshee1221,,South Africa,Eugene,de Beste,,ZAF,Africa,,,,Developing the Research Software and Systems Engineering Community to support Life Sciences in Africa,,,,,, +beapdk,,Canada,Béatrice,P.De Koninck,,CAN,North America,,,,OSUM - Open Science UMontreal,,,,,, +billbrod,,United States,Billy,Broderick,he/him,USA,North America,,,Expanding plenoptic Python Package,,,,,,, +boi-kone,,Mali,Boï,Kone,,MLI,Africa,,,,BioLab Open Source Projects,,,,,, +bonetcarne,,Spain,Elisenda,Bonet-Carne,she/her,ESP,Europe,,,Open Science Community Barcelona (OSCBa),,,,,,, +brainonsilicon,,United Kingdom,Sophia,Batchelor,she/her,GBR,Europe,,,,The Turing Way - Guide for Ethical Research,,,,Open Communities: building a supportive community of practice across the AI for Multiple Long Term Conditions Research Support Facility.,, +burceelbasan,,Germany,Burce,Elbasan,,DEU,Europe,,,,,,Building Open Science and Data Analysis Skills by Leading the OLS Survey Data Project,,,, +carol-o'brien,,Denmark,Carol,O'Brien,,DNK,Europe,,,,,,,,,Developing an online snake venomics catalog for easy access to venom proteomics data, +cassmurph,,Ireland,Cassandra,Murphy,She/Her,IRL,Europe,,,,,,,,AGAPE: Building an open science practicing community in Ireland,, +chiarabertipaglia,,United States,Chiara,Bertipaglia,she/her,USA,North America,,,Infusing a culture of open science within the community of researchers at the Zuckerman Institute,,,,,,, +christina-ambrosi,,Switzerland,Christina,Ambrosi,,CHE,Europe,,,,Open Innovation in Life Sciences,,,,,, +crangelsmith,,United Kingdom,Camila,Rangel Smith,she/her,GBR,Europe,,,,Turing Data Stories,,,,,, +danae-carelis-davila-espinoza,,Bolivia,Danae Carelis,Davila Espinoza,,,,,,,,,,Training Latin American scientists' community to create high-quality open journals with good editorial standards,,, +dannycolin,,Canada,Danny,Colin,he/him,CAN,North America,,,Open Science UMontreal (OSUM),,,,,,, +davidbeavan,,United Kingdom,David,Beavan,,GBR,Europe,,,,Turing Data Stories,,,,,, +davidviryachen,,Japan,David,Chentanaman,he/him,JPN,Asia,,,AMRITA: an online database for herbal medicine,,,,,,, +dlebauer,,United States,David,LeBauer,he/him,USA,North America,,,Improving Documentation for Open Data and Software in the Agricultural Research Community,,,,,,, +dustin-schetters,,Netherlands,Dustin,Schetters,,NLD,Europe,,,,,,,,,,Open Science in Neuroscience: A Practical Guide for Researchers +dylan-bastiaans,,Switzerland,Dylan,Bastiaans,,CHE,Europe,,,,Sharing 3D Modeling Workflows for Biomechanists and Palaeontologists,,,,,, +eirini-zormpa,,United Kingdom,Eirini,Zormpa,,GBR,Europe,,,,,,,,Open Communities: building a supportive community of practice across the AI for Multiple Long Term Conditions Research Support Facility.,, +ekeluv,,South Africa,Ekeoma,Festus,they/them,ZAF,Africa,,,,Western Cape-H3ABioNet Open Learning Circles,,,,,, +elsasci,,United Kingdom,Elsa,Loissel,she/her,GBR,Europe,,,How to build an healthy and open lab,,,,,,, +evaherbst,,Switzerland,Eva,Herbst,she/her,CHE,Europe,,,,Sharing 3D Modeling Workflows for Biomechanists and Palaeontologists,,,,,, +evelyngreeves,,United Kingdom,Evelyn,Greeves,she/her,GBR,Europe,,,,,,,Building a Cloud-SPAN community of practice,,, +ewa-leś,,Poland,Ewa,Leś,,POL,Europe,,,,,,open and international River University,,,, +ewuramaminka,,United Kingdom,Deborah,Akuoko,she/her,GBR,Europe,,,"Investigate feasible solutions to help create a system that creates, collects and processes data efficiently for impactful research especially for driving health research and driving health related policies",,,,,,, +fnyasimi,,Kenya,Festus,Nyasimi,He/Him,KEN,Africa,,,Bioinformatics Hub of Kenya (BHK),,,,,,, +gabimusaubach,,Argentina,Maria Gabriela,Musaubach,,ARG,South America,,,,,,,International Committee on Open Phytolith Science: community building initiative and open science training for the Phytolith Community,,, +gigikenneth,,Nigeria,Gift,Kenneth,She/Her,NGA,Africa,,,,,,,,,Ethical Implications of Open Source AI: Transparency and Accountability, +henk-wierenga,,South Africa,Henk,Wierenga,,ZAF,Africa,,,,,,,,,,UbuntuEdu (Concept title) +hilyatuz-zahroh,,Indonesia,Hilyatuz,Zahroh,she/her,IDN,Asia,,,,APBioNetTalks,,,,,, +homo-sapiens34,,Russian Federation,Zoe,Chervontseva,she/her,RUS,Europe,,,Benchmarking environment for bioinformatics tools,,,,,,, +ibrahssali1,,Uganda,Ibrahim,Ssali,he/him,UGA,Africa,,,,Arua City Open Learning Circles,,,,,, +jelioth-muthoni,,Kenya,Jelioth,Muthoni,,KEN,Africa,,,,Building a Database for Open Access Immunology Pre-prints and Publications on COVID-19,,,,,, +joel-hancock,,Austria,Joel,Hancock,he/his,AUT,Europe,,,,Supervised Classification with UMAP and Network Propagation,,,,,, +jolien-s,,Netherlands,Jolien,Scholten,,NLD,Europe,,,,,,,,,,Open-source handbooks infrastructure at VU Amsterdam +kevinxufs,,United Kingdom,Kevin,Xu,,GBR,Europe,,,,Turing Data Stories,,,,,, +kiragu-mwaura,,Kenya,David,Kiragu Mwaura,he/him,KEN,Africa,,,Bioinformatics Hub of Kenya (BHK),,,,,,, +kiri93,,Switzerland,Markus,Kirolos Youssef,he/his,CHE,Europe,,,,Supervised Classification with UMAP and Network Propagation,,,,,, +koudyk,,Canada,Kendra,Oudyk,she/her,CAN,North America,,,,Open Science Office Hours to support trainees in Montreal to help make their research more open and reproducible,,,,,, +kristinariemer,,United States,Kristina,Riemer,she/her,USA,North America,,,Improving Documentation for Open Data and Software in the Agricultural Research Community,,,,,,, +lakillo,,United Kingdom,Lucy,Killoran,she/her,GBR,Europe,,,,,,,,,,An online repository of tools and methods for automated archaeological survey +laurichi13,,Spain,Laura Judith,Marcos-Zambrano,,ESP,Europe,,,,Science For All (Sci4All) - Citizens' daily problem solving by engaging multidisciplinary scientific communities,,,,,, +lazycipher,,India,Himanshu,Singh,he/him,IND,Asia,,,InterMine Similarity Explorer,,,,,,, +lilian9,,Kenya,Lilian,Juma,she/her,KEN,Africa,,,Open Connect Platform in Africa,,,,,,, +magicmilly,,United States,Emily,Cain,she/her,USA,North America,,,Improving Documentation for Open Data and Software in the Agricultural Research Community,,,,,,, +marbarrantescepas,,Spain,Mar,Barrantes Cepas,she/her,ESP,Europe,,,,,,,,,,Open Science in Neuroscience: A Practical Guide for Researchers +matuskalas,,Norway,Matúš,Kalaš,he/him,NOR,Europe,,,EDAM ontology,,,,,,, +mloning,,United Kingdom,Markus,Löning,he/him,GBR,Europe,,,,sktime - a unified toolbox for machine learning with time series,,,,,, +monica-alonso,,Argentina,Monica,Alonso,she/her,ARG,South America,,,,,,,,,,Estructura e infraestructura para la formación por cohortes virtuales +monsurat-onabajo,,Nigeria,Onabajo,Monsurat,she/her,NGA,Africa,,,,,,,,,,Molerhealth +morphofun,,United States,Sandy,Kawano,she/her,USA,North America,,,Enabling open science practices in biology education,,,,,,, +muhammetcelik,,Turkey,Muhammet,Celik,he/him,TUR,Asia,,,,Creating a single pipeline for metagenome classification,"Open Life Science (OLS) Program, a driver of open science skills among early stage researchers and young leaders: mentee perspective",,,,, +myreille-larouche,,Canada,Myreille,Larouche,,CAN,North America,,,,OSUM - Open Science UMontreal,,,,,, +naralb,,Brazil,Naraiana,Loureiro Benone,she/her,BRA,South America,,,@Diversidade em Foco,,,,,,, +natty2012,,Kenya,Harriet,Natabona Mukhongo,she/her,KEN,Africa,,,,Building a Database for Open Access Immunology Pre-prints and Publications on COVID-19,,,,,, +nehamoopen,,Netherlands,Neha,Moopen,she/her,NLD,Europe,,,,Embedding Accessibility in The Turing Way Open Source Community Guidance,,,,,, +paulineligonie,,Canada,Pauline,Ligonie,,CAN,North America,,,,OSUM - Open Science UMontreal,,,,,, +paulowoicho,,Nigeria,Paul,Owoicho,he/him,NGA,Africa,,,,Embedding Accessibility in The Turing Way Open Source Community Guidance,,,,,, +pradeep-eranti,,France,Pradeep,Eranti,he/his,FRA,Europe,,,,Open platform for Indian Bioinformatics community,,,,,, +pvanheus,,South Africa,Peter,van Heusden,he/him,ZAF,Africa,,,,Developing the Research Software and Systems Engineering Community to support Life Sciences in Africa,,,,Mapping the RSSE landscape in Africa,, +rushda-patel,,India,Rushda,Patel,,IND,Asia,,,,,,,,Multiomics profiling and analysis of cardiovascular diseases,, +samguay,,Canada,Samuel,Guay,he/him,CAN,North America,,,Open Science UMontreal (OSUM),,,,,,, +samuelorion,,Canada,Samuel,Burke,he/his,CAN,North America,,,,OSUM - Open Science UMontreal,,,,,, +sebastianeggert,,Germany,Sebastian,Eggert,he/his,DEU,Europe,,,,OpenWorkstation - A modular and open-source concept for customized automation equipment,,,,,, +sithyphus,,United States,Jorge,Barrios,he/him,USA,North America,,,Improving Documentation for Open Data and Software in the Agricultural Research Community,,,,,,, +sk-sahu,,India,Sangram,Sahu,he/him,IND,Asia,,,,Practical Guide to Reproducibility in Bioinformatics,,,,,, +sonibk,,Kenya,Brenda,Muthoni,,KEN,Africa,,,,Building a Database for Open Access Immunology Pre-prints and Publications on COVID-19,,,,,, +stefan-gaillard,,Netherlands,Stefan,Gaillard,he/him,NLD,Europe,,,,Mapping Science using Open Scholarship,,,,,, +sudarshangc,,Nepal,Sudarshan,GC,he/him,NPL,Asia,,,Media Lab Nepal for Computational Biology,,,,,,, +susana465,,United Kingdom,Susana,Roman Garcia,,GBR,Europe,,,,,,,,Ethical standards and reproducibility of computer models in Neurobiology,, +valerie-parent,,Canada,Valerie,Parent,,CAN,North America,,,,OSUM - Open Science UMontreal,,,,,, +virginiagarciaalonso,,Argentina,Virginia Andrea,García Alonso,she/her,ARG,South America,,,,,,,,,,JICMar Network: towards better opportunities and greater collaboration among young marine science researchers in Latin America +wasifarahman,,Bangladesh,Wasifa,Rahman,,BGD,Asia,,,,Target approach in the stages of liver cirrhosis to reverse back in good condition,,,,,, +ykho001,,United Kingdom,Yan-Kay,Ho,she/her,GBR,Europe,,,,,,,,,,"Building a Searchable Open Data Repository of DNA Collections that are Freely-Shared under OpenMTA, with an Associated Landscape Map Visualisation of the Collection Users" +andrés-felipe-ortiz-ferreira,,,Andrés Felipe,Ortiz Ferreira,,,,,,,,,,,,LA-CoNGA Physics Citizen Science Project, +ariana-bethany-subroyen,,,Ariana Bethany,Subroyen,,,,,,,,,,,"Developing an ontology to connect open science technology, RSEs and the different skills and services that follow",, +aurigandrea,,,Andrea,Kocsis,she/her,,,,,,,,,"Data Science and AI Educators' Programme AND Tools, Practices & Systems Peer Mentorship Programme",,, +biscuitnapper,,,Florence,Okoye,She/her,,,,,,,,Environmental mapping for urban farming project,,,, +bresearcher101,,,Aswathi,Surendran,,,,,,,,,,,AGAPE: Building an open science practicing community in Ireland,, +chiara-damiani,,,Chiara,Damiani,,,,,,,,Seeding,,,,, +harisood,,,Hari,Sood,,,,,,,,,,,Open sourcing the Pyxium learning platform,, +maria-clara-heringer-lourenço,,,Maria Clara,Heringer Lourenço,,,,,,,,,,,,Closer to the sky: co-creating astronomical knowledge in a favela of Rio de Janeiro, +megan-lisa-stock,,,Megan Lisa,Stock,,,,,,,,,,,"Developing an ontology to connect open science technology, RSEs and the different skills and services that follow",, +moengels,,,Moritz,Engelhardt,,,,,,,,,,,Building a Platform for Open and Reproducible Super-resolution Imaging Hardware and Analytical Tools,, +nadza-dzinalija,,,Nadza,Dzinalija,,,,,,,,,,,,,Open Science in Neuroscience: A Practical Guide for Researchers +nilabha1512,,,Nilabha,Mukherjea,,,,,,,,,,,"Life Science in 2022, India.",, +nina-roux,,,Nina,Roux,,,,,,,,,,,"Developing an ontology to connect open science technology, RSEs and the different skills and services that follow",, +pol-arranz-gibert,,,Pol,Arranz-Gibert,,,,,,,,,,,Open collaborative journal,, +rhoné-roux,,,Rhoné,Roux,,,,,,,,,,,"Developing an ontology to connect open science technology, RSEs and the different skills and services that follow",, +sgsfak,,,Stelios,Sfakianakis,,,,,,,,"ProCancer-I - An AI Platform integrating imaging data and models, supporting precision care through prostate cancer's continuum",,,,, +trevor-hamlin,,,Trevor,Hamlin,,,,,,,,,,,,,PyOrb 1.0 – Automated Analysis Tool for Orbital Interactions +usmood,,,Mahmood,Usman,Kano,,,,,,,,,,Open Science Community Nigeria (OSCN),, +wendy-andrews,,,Wendy,Andrews,,,,,,,,,,,,,Gender Differences in the Impostor Phenomenon: A Preregistered and Open-Science Meta-Analysis diff --git a/data/roles/role.csv b/data/roles/role.csv new file mode 100644 index 0000000..fe43432 --- /dev/null +++ b/data/roles/role.csv @@ -0,0 +1,557 @@ +,city,country,first-name,last-name,pronouns,country_3,continent,longitude,latitude,ols-1,ols-2,ols-3,ols-4,ols-5,ols-6,ols-7,ols-8 +0sahene,Tamale,Ghana,Sitsofe,Morgah,He,GHA,Africa,-0.8423986,9.4051992,,,,,participant,,, +0x174,Boston,United States,William,Jackson,He/Him,USA,North America,-71.060511,42.3554334,,,participant,,,,, +4iro,Buenos Aires,Argentina,Irene,Vazano,She/her/hers,ARG,South America,-58.4370894,-34.6075682,,,,,,,participant,mentor +abdulelahsm,Dammam,Saudi Arabia,Abdulelah,Al Mesfer,he/him,SAU,Asia,50.1039991,26.4367824,,,participant,,,,, +abraham-dabengwa,Johannesburg,South Africa,Abraham,Dabengwa,he/ him,ZAF,Africa,28.049722,-26.205,,,,,participant,,, +abretaud,Rennes,France,Anthony,Bretaudeau,He/him,FRA,Europe,-1.6800198,48.1113387,,,,mentor,,,, +acocac,London,United Kingdom,Alejandro,Coca Castro,His/Him,GBR,Europe,-0.14405508452768728,51.4893335,,,,participant,mentor,,, +adam-gristwood,Heidelberg,Germany,Adam,Gristwood,he/him,DEU,Europe,8.694724,49.4093582,,,expert,,,,, +agossoubido2021,Abomey Calavi,Benin,Agossou,Bidossessi Emmanuel,He/Him/His,BEN,Africa,2.3303076367454025,6.51096225,,,,,participant,,, +aida-turing,London,United Kingdom,Aida,Mehonic,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,participant,,,,, +aidanbudd,Heidelberg,Germany,Aidan,Budd,he/him,DEU,Europe,8.694724,49.4093582,"expert, mentor","expert, mentor",expert,,,,, +ajstewartlang,Manchester,United Kingdom,Andrew,Stewart,he/him,GBR,Europe,-2.2451148,53.4794892,"expert, mentor, speaker","expert, mentor, speaker",,expert,speaker,,, +akalikadien,Delft,Netherlands,Adarsh,Kalikadien,,NLD,Europe,4.362724538543995,51.999457199999995,,,,,participant,,, +aldenc,London,United Kingdom,Alden,Conner,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,participant,, +aleesteele,London,United Kingdom,Anne Lee,Steele,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,participant,"expert, mentor",, +alettes,Makhanda Grahamstown,South Africa,Alette,Schoon,she/her,ZAF,Africa,26.496243,-33.2885486,,,,,,,,participant +aliaslaurel,Córdoba,Argentina,Laura,Ascenzi,She/her/ella,ARG,South America,-4.7760138,37.8845813,,,,,,expert,, +alihumayun,London,United Kingdom,Ali,Humayun,He/Him,GBR,Europe,-0.14405508452768728,51.4893335,,,participant,participant,,,, +amangoel185,Manchester,United Kingdom,Aman,Goel,he/him/his,GBR,Europe,-2.2451148,53.4794892,,,,,,participant,facilitator, +amber-koert,Amsterdam,Netherlands,Amber,Koert,,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +anafinovas,Budapest,Hungary,Saule,Anafinova,,HUN,Europe,19.14609412691246,47.48138955,,,,,,,participant, +anayan321,Bangkok,Thailand,Anunya,Opasawatchai,"She, her",THA,Asia,100.6224463,13.8245796,participant,,,expert,,,, +andre-vargas-de,Cochabamba,Bolivia,Alvaro Andre,Vargas Aguilar,,,,-66.1568983,-17.3936114,,,,,participant,,, +andreasancheztapia,"Merced, CA",Colombia,Andrea,Sánchez Tapia,She/her,COL,South America,-120.7678602,37.1641544,,,,,,"expert, mentor, mentor","mentor, speaker", +andreea-avramescu,Manchester,United Kingdom,Andreea,Avramescu,,GBR,Europe,-2.2451148,53.4794892,,,,participant,,,, +anelda,Overberg,South Africa,Anelda,van der Walt,she/her,ZAF,Africa,5.4964645,52.0390484,,mentor,"mentor, speaker",,speaker,participant,, +anenadic,Manchester,United Kingdom,Aleksandra,Nenadic,she/her/hers,GBR,Europe,-2.2451148,53.4794892,expert,"expert, speaker",expert,,,,, +annakrystalli,Sheffield,United Kingdom,Anna,Krystalli,she/her,GBR,Europe,-1.4702278,53.3806626,expert,,"expert, mentor",,,,, +annalee-sekulic,Columbus,United States,Annalee,Sekulic,She/Her/Hers,USA,North America,-83.0007065,39.9622601,,,participant,,,,, +annambiller,Munich,Germany,Anna Magdalena,Biller,she/her/hers,DEU,Europe,11.5753822,48.1371079,,,,,,,participant, +annefou,Oslo,Norway,Anne,Fouilloux,she/her,NOR,Europe,10.7389701,59.9133301,,,,"expert, mentor",mentor,,, +annemtreasure,Cape Town,South Africa,Anne,Treasure,,ZAF,Africa,18.417396,-33.928992,,,,,"expert, mentor",mentor,, +anshika-sah,New Delhi,India,Anshika,Sah,SHE,IND,Asia,77.2090057,28.6138954,,,participant,,,,, +antonioggsousa,Oeiras,Portugal,António,Sousa,he/him,PRT,Europe,-9.271300382407272,38.7124971,,,participant,,,,, +antonis-koutsoumpis,Amsterdam,Netherlands,Antonis,Koutsoumpis,,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +arentkievits,Delft,Netherlands,Arent,Kievits,,NLD,Europe,4.362724538543995,51.999457199999995,,,,participant,,,, +arianna-cortesi,Rio De Janeiro,Brazil,Arianna,Cortesi,,BRA,South America,-43.2093727,-22.9110137,,,,,,,participant, +ariannazuanazzi,New York City,United States,Arianna,Zuanazzi,she/her,USA,North America,-74.0060152,40.7127281,,,,,,,,participant +arielle-bennett,Stevenage,United Kingdom,Arielle,Bennett,she/her,GBR,Europe,-0.2027155,51.9016663,,"expert, mentor",expert,"expert, mentor",mentor,"expert, mentor",mentor,"facilitator, mentor" +ashutosh-tiwari,"Bilaspur, Chhattisgarh",India,Ashutosh,Tiwari,He/him/his,IND,Asia,82.1476475,22.0785627,,,participant,,,,, +augustincaitlin,Orlando,United States,Caitlin,Augustin,she/her,USA,North America,-81.3790304,28.5421109,,,,participant,,,, +ayeshadunk,London,United Kingdom,Ayesha,Dunk,She/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,participant,,, +aymd23,Ibadan,Nigeria,Ayomide,Akinlotan,He/his,NGA,Africa,3.8972497,7.3777462,,,,,,,participant, +b14-rsa,Johannesburg,South Africa,Biandri,Joubert,She/Her,ZAF,Africa,28.049722,-26.205,,,,,participant,,, +babari-a-babari-michelle-freddia,Yaoundé,Cameroon,Babari A Babari,Michelle Freddia,,CMR,Africa,11.5213344,3.8689867,,,,,,,participant, +babasaraki,Bauchi,Nigeria,Umar,Ahmad,Data Science,NGA,Africa,10.0287754,10.6228284,,speaker,,,participant,participant,, +batoolmm,Liverpool,Saudi Arabia,Batool,Almarzouq,She/Her,SAU,Asia,-2.99168,53.4071991,,,participant,"facilitator, participant, speaker","facilitator, mentor","expert, facilitator, mentor","mentor, speaker", +bduckles,"Portland, Oregon",United States,Beth,Duckles,"she, her",USA,North America,-122.674194,45.5202471,speaker,expert,"expert, mentor","expert, mentor",,,, +beatrizserrano,Freiburg,Germany,Beatriz,Serrano-Solano,she/her,DEU,Europe,7.8494005,47.9960901,,participant,expert,,mentor,,participant, +bebatut,Clermont-Ferrand,France,Bérénice,Batut,she/her,FRA,Europe,3.0819427,45.7774551,"organizer, speaker","expert, organizer, speaker","expert, organizer, mentor, mentor, mentor, mentor, speaker","expert, organizer, mentor, speaker, speaker",organizer,organizer,"organizer, speaker, speaker","organizer, speaker, speaker" +bethaniley,"Belfast, Northern Ireland",United Kingdom,Bethan,Iley,she/her,GBR,Europe,-5.9301829,54.596391,,,,,,speaker,,mentor +birgül-çolak-al,Istanbul,Turkey,Birgül,Çolak-Al,,TUR,Asia,29.052495,41.0766019,,,,,participant,,, +bisola15,Yaba,Nigeria,Bisola,Ahmed,She/her,NGA,Africa,-2.8848131505798653,12.811960299999999,,,,,,,participant, +bobbwang,Amsterdam,Netherlands,Bo,Wang,,NLD,Europe,4.8924534,52.3730796,,,,,,,,"participant, participant" +booktrackergirl,Exeter,United Kingdom,Aditi,Dutta,She/Her,GBR,Europe,-3.5269497,50.7255794,,,,,,,participant, +bruno-soares,Rio De Janeiro,Brazil,Bruno,Soares,He/Him,BRA,South America,-43.2093727,-22.9110137,participant,mentor,mentor,"expert, mentor",,,, +bsolodzi,"Ashaiman, Zenu",Ghana,Bernard Kwame,Solodzi,,GHA,Africa,-0.0499836,5.7121199,,,,,,,participant, +burkemlou,Brisbane,Australia,Melissa,Burke,She/Her,AUS,Oceania,-122.402794,37.687165,,"expert, speaker","expert, mentor",,,,, +c-martinez,Amsterdam,Netherlands,Carlos,Martinez-Ortiz,he/him,NLD,Europe,4.8924534,52.3730796,,,"expert, speaker",,,,, +callummole,London,United Kingdom,Callum,Mole,He/Him,GBR,Europe,-0.14405508452768728,51.4893335,,,,participant,participant,,, +camachoreina,Paris,France,Reina,Camacho Toro,She/her,FRA,Europe,2.3200410217200766,48.8588897,,,participant,expert,,,, +camila-gómez,Cochabamba,Bolivia,Camila,Gómez,,,,-66.1568983,-17.3936114,,,,,participant,,, +carmel-carne,Cape Town,South Africa,Carmel,Carne,She/her,ZAF,Africa,18.417396,-33.928992,,,,,,,participant, +carogiraldo,Bogota,Colombia,Carolina,Giraldo Olmos,,COL,South America,-74.0835643,4.6529539,,,,,,,participant,expert +cassgvp,Oxford,United Kingdom,Cassandra,Gould Van Praag,she/her,GBR,Europe,-1.2578499,51.7520131,participant,expert,,,expert,,, +cbolibaugh,York,United Kingdom,Cylcia,Bolibaugh,she/her,GBR,Europe,-1.0743052444639218,53.96565785,,,,participant,,,, +cel31,Barcelona,Spain,Celine,Kerfant,,ESP,Europe,2.1774322,41.3828939,,,,,participant,,, +cemonks,Perth,Australia,Carly,Monks,She/Her,AUS,Oceania,-3.4286805,56.3958186,,,participant,mentor,,,, +cgentemann,Santa Rosa,United States,Chelle,Gentemann,she/her,USA,North America,-122.7141049,38.4404925,,,,,,expert,, +christinerogers,Montreal,Canada,Christine,Rogers,she/her,CAN,North America,-73.5698065,45.5031824,participant,"expert, speaker",expert,,,,, +chucklesongithub,Buenos Aires,Argentina,Cecilia,Herbert,She/Her,ARG,South America,-58.4370894,-34.6075682,,,,participant,,,, +chukaogbo,"Abeokuta, Ogun State.",Nigeria,Chukwuka,Ogbonna,"He, him, his",NGA,Africa,3.3467344,7.1547129,,,,,,,participant, +cibele-zolnier-sousa-do-nascimento,Curitiba,Brazil,Cibele,Zolnier Sousa do Nascimento,She/her,BRA,South America,-49.2712724,-25.4295963,,,,,,,,participant +cl379,Barcelona,Spain,Carla,Lancelotti,she-her,ESP,Europe,2.1774322,41.3828939,,,participant,,participant,,, +claudiamig,Roma,Italy,Claudia,Mignone,she/her,ITA,Europe,12.4829321,41.8933203,,,,,,,participant, +codito22,Lima,Peru,Rodrigo,Gallegos,,PER,South America,-77.0365256,-12.0621065,,,,,participant,,, +complexbrains,Montreal,Canada,Isil,Poyraz Bilgin,Dr. or Miss,CAN,North America,-73.5698065,45.5031824,,,,,participant,facilitator,mentor, +coopersmout,Brisbane,Australia,Cooper,Smout,He/him,AUS,Oceania,-122.402794,37.687165,,participant,,expert,,,, +da5nsy,Washington Dc,United States,Danny,Garside,he/him,USA,North America,-77.0365427,38.8950368,,participant,expert,facilitator,,,, +dadditolu,Glasgow,United Kingdom,John,Ogunsola,he/him,GBR,Europe,-4.2501687,55.861155,,,participant,,,mentor,, +daniel-kochin,Oxford,United Kingdom,Daniel,Kochin,he/him,GBR,Europe,-1.2578499,51.7520131,,,,,,,participant, +danwchan,New York City,,Daniel,Chan,he/they,,,-74.0060152,40.7127281,,,,,,,participant, +darwin-diaz,Lima,Peru,Darwin,Diaz,She/Her,PER,South America,-77.0365256,-12.0621065,,,,,participant,,, +david-selassie-opoku,Berlin,Germany,David Selassie,Opoku,,DEU,Europe,13.3888599,52.5170365,,,,expert,,,, +dbrisaro,Carapachay,Argentina,Daniela,Risaro,she/her,ARG,South America,-58.5358156,-34.5265799,,,,,,,,participant +deepakunni3,Basel,Switzerland,Deepak,Unni,He/Him,CHE,Europe,7.5878261,47.5581077,,,,,"expert, mentor",expert,, +delphine-l,Raleigh,United States,Delphine,Lariviere,She/her,USA,North America,-78.6390989,35.7803977,,mentor,,"expert, mentor",,,, +demellina,London,United Kingdom,Demitra,Ellina,She/her,GBR,Europe,-0.14405508452768728,51.4893335,"expert, speaker",expert,expert,,,,, +dexwel,Ogbomoso,Nigeria,Daniel,Adediran,He,NGA,Africa,4.25,8.133,,,,,,,,participant +diana-pilvar,Tartu,Estonia,Diana,Pilvar,,EST,Europe,26.72245,58.3801207,,,,,,,participant,"expert, mentor" +dianakaran,Kilifi,Kenya,Diana,Karan,She/Her,KEN,Africa,39.67507159193717,-3.15073925,,,,,,,,participant +didik-utomo,Malang,Indonesia,Didik,Utomo,,IDN,Asia,112.6340291,-7.9771206,,,participant,,,,, +diegoonna,"Ciudad Autonoma De Buenos Aires , Argentina",Argentina,Diego,Onna,He/Him,ARG,South America,-58.4370894,-34.6075682,,,,participant,mentor,mentor,mentor,mentor +dimmestp,Edinburgh,United Kingdom,Sam,Haynes,He/Him,GBR,Europe,-3.1883749,55.9533456,,,mentor,"expert, mentor",,expert,, +dingaaling,London,United Kingdom,Jennifer,Ding,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,participant,, +doaamkader,Obour City,Egypt,Doaa,Abdelkader,She.her,EGY,Africa,31.465685617766244,30.2288224,,,,,,,participant, +dozie-onunkwo,Umuahia,Nigeria,Dozie,Onunkwo,He,NGA,Africa,7.4924165,5.5324032,,,,,,,,participant +dudova,Brno,Czechia,Zdenka,Dudova,,CZE,Europe,16.6113382,49.1922443,,,participant,,,,, +duerrsimon,Lausanne,Switzerland,Simon,Duerr,he/him,CHE,Europe,6.6327025,46.5218269,,,participant,expert,,,, +ealescak,Anchorage,United States,Emily,Lescak,"she, her",USA,North America,-149.1107333,61.1758781,,,"expert, mentor","expert, mentor",,,, +ecsalomon,"Chicago, Il",United States,Erika,Salomon,they/them,USA,North America,-87.6244212,41.8755616,,,,participant,,,, +eduardacenteno,Amsterdam,Netherlands,Eduarda,Centeno,she/her,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +eirinibotsari,Dem Haag,Netherlands,Eirini,Botsari,she/her,NLD,Europe,4.2696802205364515,52.07494555,,,,,participant,,, +ekaroune,Portsmouth,United Kingdom,Emma,Karoune,she/her,GBR,Europe,-1.0906023,50.800031,,participant,"expert, mentor","expert, facilitator, mentor, speaker","mentor, participant","expert, mentor",, +ekin-bolukbasi,London,United Kingdom,Ekin,Bolukbasi,,GBR,Europe,-0.14405508452768728,51.4893335,,speaker,,,,,, +elena-beretta,Amsterdam,Netherlands,Elena,Beretta,She/her,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +elena-giglia,Turin,Italy,Elena,Giglia,,ITA,Europe,7.6824892,45.0677551,,,,,,participant,, +elisa-on-github,Amsterdam,Netherlands,Elisa,Rodenburg,she/her,NLD,Europe,4.8924534,52.3730796,,,,participant,,expert,,"expert, participant" +emma-anne-harris,Berlin,Germany,Emma Anne,Harris,,DEU,Europe,13.3888599,52.5170365,,,"expert, speaker",,,,, +emma-lawrence,London,United Kingdom,Emma,Lawrence,She/hers,GBR,Europe,-0.14405508452768728,51.4893335,,,participant,expert,,,, +emmanuel19-ada,Ogbomosho,Nigeria,Emmanuel,Adamolekun,He/His,NGA,Africa,4.25,8.133,,,,participant,participant,participant,participant,facilitator +esbusis,Istanbul,Turkey,Esra Büşra,Işık,,TUR,Asia,29.052495,41.0766019,,,,,participant,,, +estherplomp,The Hague,Netherlands,Esther,Plomp,she/her/hers,NLD,Europe,4.2696802205364515,52.07494555,,,"expert, mentor, speaker","expert, mentor, mentor",mentor,"expert, mentor",speaker,expert +ewallace,Edinburgh,United Kingdom,Edward,Wallace,"he, him",GBR,Europe,-3.1883749,55.9533456,,,expert,expert,expert,,, +fabienne-lucas,Boston,United States,Fabienne,Lucas,she/hers,USA,North America,-71.060511,42.3554334,,,participant,,,,, +fabioperdigao,Rio De Janeiro,Brazil,Fabio,Ivo Perdigão,,BRA,South America,-43.2093727,-22.9110137,,,,,,participant,, +fadanka,Yaounde,Cameroon,Stephane,Fadanka,He/Him,CMR,Africa,11.5213344,3.8689867,,,,,participant,mentor,"participant, mentor","mentor, speaker" +farukustunel,Istanbul,Turkey,Faruk,Üstünel,,TUR,Asia,29.052495,41.0766019,,,,,participant,,, +fatma366,Mombasa,Kenya,Fatma,Omar,Miss,KEN,Africa,39.667169,-4.05052,,,,,,,,participant +federico-cestares,Buenos Aires,Argentina,Federico,Cestares,He- él,ARG,South America,-58.4370894,-34.6075682,,,,,participant,,, +fpsom,Thessaloniki,Greece,Fotis,Psomopoulos,he/him,GRC,Europe,22.9352716,40.6403167,"expert, mentor, speaker","expert, speaker","expert, mentor","expert, mentor","mentor, mentor",mentor,,mentor +fredbelliard,Delft,Netherlands,Frédérique,Belliard,she/her,NLD,Europe,4.362724538543995,51.999457199999995,,,,,participant,,, +gabriela-rufino,Rio De Janeiro,Brazil,Gabriela,Rufino,She/her,BRA,South America,-43.2093727,-22.9110137,,,,,,,participant, +gareth-j,Bristol,United Kingdom,Gareth,Jones,He/ Him,GBR,Europe,-2.5972985,51.4538022,,,,,participant,,, +gedaloop,Barcelona,Spain,Adel,Sarvary,she/her,ESP,Europe,2.1774322,41.3828939,,,,participant,,,, +gedankenstuecke,Paris,France,Bastian,Greshake Tzovaras,he/him,FRA,Europe,2.3200410217200766,48.8588897,"expert, speaker","expert, speaker",expert,,,,, +gemmaturon,Barcelona,Spain,Gemma,Turon,she/her,ESP,Europe,2.1774322,41.3828939,,,,,participant,,,"expert, mentor" +georgiahca,London,United Kingdom,Georgia,Aitkenhead,She/her,GBR,Europe,-0.14405508452768728,51.4893335,,participant,speaker,,"expert, mentor",,, +ghammad,Liège,Belgium,Grégory,Hammad,,BEL,Europe,5.773545903524977,50.47081585,,,participant,,,,, +gill-francis,York,United Kingdom,Gill,Francis,She/her,GBR,Europe,-1.0743052444639218,53.96565785,,,,participant,,,, +glado718,Nairobi,Kenya,Gladys,Rotich,She/her,KEN,Africa,36.82884201813725,-1.3026148499999999,,,,,,participant,facilitator,facilitator +gladys-jerono-rotich,Nairobi,Kenya,Gladys,Rotich,She/her,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,,mentor,mentor +graciellehigino,Vancouver,Canada,Gracielle,Higino,She/her,CAN,North America,-123.113952,49.2608724,,expert,,"expert, mentor","mentor, mentor","expert, mentor",mentor, +guille1107,Buenos Aires,Argentina,Guillermo Luciano,Fiorini,He; Him,ARG,South America,-58.4370894,-34.6075682,,,,participant,,,, +ha0ye,Gainesville,United States,Hao,Ye,he/him,USA,North America,-82.3249846,29.6519684,"expert, mentor",expert,"expert, speaker",expert,"expert, speaker",expert,speaker, +hans-ket,Amsterdam,Netherlands,Hans,Ket,he/him,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +harinilakshminarayanan,Zurich,Switzerland,Harini,Lakshminarayanan,,CHE,Europe,8.5410422,47.3744489,,,,,,participant,mentor,mentor +harpreetsingh05,Jalandhar,India,Harpreet,Singh,,IND,Asia,75.576889,31.3323762,,,"expert, participant, mentor, mentor",mentor,,,, +henricountevans,Kwaluseni,Eswatini,Henri-Count,Evans,He/Him,SWZ,Africa,31.6390919,-27.2216427,,,,,,,,participant +hexylena,Rotterdam,Netherlands,Helena,Rasche,,NLD,Europe,4.47775,51.9244424,,,speaker,,,,, +heylf,Freiburg,Germany,Florian,Heyl,,DEU,Europe,7.8494005,47.9960901,,,participant,,,,, +hrhotz,Basel,Switzerland,Hans-Rudolf,Hotz,,CHE,Europe,7.5878261,47.5581077,,mentor,mentor,mentor,,"expert, mentor",, +hylary-emmanuela-ndegala-nhana,Yaounde,Cameroon,Hylary Emmanuela,Ndegala Nhana,,CMR,Africa,11.5213344,3.8689867,,,,,,,participant, +hzahroh,Jakarta,Indonesia,Hilyatuz,Zahroh,She/her,IDN,Asia,106.8270488,-6.175247,,,participant,,,,, +iramosp,Mexico City,Mexico,Irene,Ramos,she / her,MEX,North America,-99.1331785,19.4326296,,,participant,expert,expert,expert,expert,"expert, mentor" +iratxepuebla,Cambridge,United Kingdom,Iratxe,Puebla,she/her,GBR,Europe,0.1186637,52.2055314,,,"expert, mentor, speaker","expert, mentor",expert,,, +irena-maus,Bielefeld,Germany,Irena,Maus,,DEU,Europe,8.531007,52.0191005,,,,participant,,,, +irisbotas,Majadahonda,Spain,Iris,San Pedro,She/her,ESP,Europe,-3.8724138,40.473055,,,participant,,,,, +isahmadbbr,Kano,Nigeria,Ibrahim Said,Ahmad,,NGA,Africa,8.5364136,11.8948389,,,participant,,,,, +ismael-kg,London,United Kingdom,Ismael,Kherroubi Garcia,He/him,GBR,Europe,-0.14405508452768728,51.4893335,,participant,,,participant,"facilitator, speaker",, +ivotron,Hermosillo,Mexico,Ivo,Jimenez,he/him,MEX,North America,-110.9692202,29.0948207,,mentor,expert,,,,, +iván-gabriel-poggio,Toay,Argentina,Iván Gabriel,Poggio,,ARG,South America,-64.3796809,-36.6738649,,,,,,,,participant +jafari-amir,Rio De Janeiro,Brazil,Amir,Jafari,,BRA,South America,-43.2093727,-22.9110137,,,,,,,participant, +jafsia,Yaounde,Cameroon,Elisee,Jafsia,He/Him,CMR,Africa,11.5213344,3.8689867,,,,,participant,mentor,"facilitator, participant, mentor","expert, mentor" +javier-ruiz-pérez,Barcelona,Spain,Javier,Ruiz Pérez,,ESP,Europe,2.1774322,41.3828939,,,participant,,,,, +jbuczny,Amsterdam,Netherlands,Jacek,Buczny,,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +jcolomb,Berlin,Germany,Julien,Colomb,he/his,DEU,Europe,13.3888599,52.5170365,,expert,,"expert, mentor",mentor,,mentor,expert +jesperdramsch,Bonn,Germany,Jesper,Dramsch,they/them,DEU,Europe,7.10066,50.735851,,,,,expert,,, +jessica-sims,London,United Kingdom,Jessica,Sims,She/her,GBR,Europe,-0.14405508452768728,51.4893335,,,participant,,,,, +jessicas11,Durham,United States,Jessica,Scheick,she/her,USA,North America,-1.75,54.666667,,,,"expert, mentor",,,, +jezcope,Harrogate,United Kingdom,Jez,Cope,he/him,GBR,Europe,-1.5391039,53.9921491,,"expert, mentor","expert, mentor",,expert,expert,, +jformoso,Ciudad Autónoma De Buenos Aires,Argentina,Jesica,Formoso,she/her,ARG,South America,-58.4370894,-34.6075682,,,,,,,participant,"facilitator, mentor" +jhon-anderson-pérez-silva,Lima,Peru,Jhon Anderson,Pérez Silva,He/him,PER,South America,-77.0365256,-12.0621065,,,,,participant,,, +jhrudey,Amsterdam,Netherlands,Jessica,Hrudey,she/her/hers,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +jmmaok,"Cary, Nc",United States,Jennifer,Miller,,USA,North America,-78.7812081,35.7882893,,,participant,expert,,,participant, +joelfan,Milan,Italy,Dario,Basset,,ITA,Europe,9.1896346,45.4641943,,,,,,participant,, +joelostblom,Vancouver,Canada,Joel,Ostblom,he/him,CAN,North America,-123.113952,49.2608724,expert,,expert,,,,, +johanssen-obanda,Kisumu,Kenya,Johanssen,Obanda,he/him,KEN,Africa,34.7541761,-0.1029109,,,,,,,mentor, +johav,Berlin,Germany,Jo,Havemann,,DEU,Europe,13.3888599,52.5170365,,,expert,,,,, +jonny-heath,Brighton,United Kingdom,Jonny,Heath,He/him,GBR,Europe,-0.1400561,50.8214626,,,expert,,,,, +joyceykao,Aachen,Germany,Joyce,Kao,She/Her,DEU,Europe,6.083862,50.776351,,participant,"expert, mentor",expert,expert,"expert, mentor",mentor,mentor +jruizperez,College Station,United States,Javier,Ruiz-Pérez,,USA,North America,-96.3071042,30.5955289,,,,,participant,,, +jsheunis,Juelich,Germany,Stephan,Heunis,he/him,DEU,Europe,6.3611015,50.9220931,,,,,"expert, mentor",,, +juanjo-garcía-granero,Barcelona,Spain,Juan José,García-Granero,He/him/his,ESP,Europe,2.1774322,41.3828939,,,participant,,participant,,, +julianbuede,Córdoba,Argentina,Julián,Buede,Él,ARG,South America,-4.7760138,37.8845813,,,,,,,,participant +jvillcavillegas,Buenos Aires,Argentina,Jose Luis,Villca Villegas,Bolivia,ARG,South America,-58.4370894,-34.6075682,,,,,participant,,,mentor +jyoti-bhogal,"Ahmednagar, Maharashtra",India,Jyoti,Bhogal,she/her,IND,Asia,74.74267631763158,19.043620599999997,,,,,participant,,, +jywarren,"Providence, RI",United States,Jeffrey,Warren,,USA,North America,-71.4128343,41.8239891,,,,,,speaker,, +k-c-martin,Stellenbosch,South Africa,Kim,Martin,,ZAF,Africa,18.869167,-33.934444,,,,,participant,mentor,, +k8hertweck,"Seattle, Wa",United States,Kate,Hertweck,perceived pronouns (anything works),USA,North America,-122.330062,47.6038321,,,,expert,,,, +karegapauline,Nairobi,Kenya,Pauline,Karega,she/her,KEN,Africa,36.8288420082562,-1.3026148499999999,,participant,,,,"facilitator, participant",mentor,mentor +karvovskaya,Amsterdam,Netherlands,Lena,Karvovskaya,She/her,NLD,Europe,4.8924534,52.3730796,participant,"expert, mentor",expert,"expert, mentor","expert, mentor","expert, mentor",mentor,participant +katesimpson,London/ Great Union Canal/ Leeds,United Kingdom,Kate,Simpson,She/her,GBR,Europe,,,,participant,"expert, mentor",mentor,,,, +katoss,Paris,France,Katharina,Kloppenborg,she/her,FRA,Europe,2.3200410217200766,48.8588897,,participant,participant,expert,,,, +kenmurithi,Chogoria,Kenya,Ken,Mugambi,,KEN,Africa,37.631994,-0.228851,,,,,,participant,, +khanteymoori,Freiburg,Germany,Alireza,Khanteymoori,,DEU,Europe,7.8494005,47.9960901,,,participant,,,,, +klauer2207,Cambridge,United Kingdom,Katharina,Lauer,she/her,GBR,Europe,0.1186637,52.2055314,,"expert, mentor",,,"expert, mentor",,, +kllewers,"Boulder, Co",United States,Kit,Lewers,she/her,USA,North America,-105.270545,40.0149856,,,,,,,,participant +kmexter,Oostende,Belgium,Katrina,Exter,,BEL,Europe,2.9226366807233966,51.184683899999996,,,expert,,,,, +koen-leuveld,Amsterdam,Netherlands,Koen,Leuveld,,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +koerding,Philadelphia,United States,Konrad,Kording,he/ him,USA,North America,-75.1635262,39.9527237,,,,,,expert,,participant +kon0925,Heraklion,Greece,Haridimos,Kondylakis,,GRC,Europe,25.1332843,35.33908,,,participant,,,,, +kswhitney,Rochester,United States,Kaitlin,Stack Whitney,she/her,USA,North America,-77.615214,43.157285,expert,,expert,expert,,,, +lalmehlisy,Riyadh,Saudi Arabia,Leena,AlMehlisy,she/her,SAU,Asia,46.7160104,24.638916,,,,participant,,,, +landimi2,Nairobi,Kenya,Michael,Landi,He/Him,KEN,Africa,36.8288420082562,-1.3026148499999999,participant,,mentor,facilitator,facilitator,mentor,"mentor, mentor","expert, facilitator" +lauracarter,London,United Kingdom,Laura,Carter,she/her,GBR,Europe,-0.12765,51.5073359,,participant,"expert, mentor",expert,expert,expert,expert,mentor +lauracion,Ciudad Autónoma De Buenos Aires,Argentina,Laura,Ación,she/ella,ARG,South America,-58.43562340522388,-34.61612315,,"expert, speaker","expert, mentor",,participant,,,facilitator +lauradascenzi,Córdoba,Argentina,Laura,Ascenzi,she/her/ella,ARG,South America,-4.7760138,37.8845813,,,,,,,,participant +laurah-nyasita-ondari,Nairobi,Kenya,Laurah,Ondari,She/Her,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,,facilitator,facilitator +lauramb8909,Bucaramanga,Colombia,Laura Marcela,Becerra Bayona,,COL,South America,-73.1047294009737,7.16698415,,,,,,,participant, +lcbreedt,Amsterdam,Netherlands,Lucas,Breedt,he/him/his,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +lessa-maker,Centre,Cameroon,Lessa Tchohou,Fabrice,,CMR,Africa,1.7324062,47.5490251,,,,,,,participant,facilitator +lisanna,Heidelberg,Germany,Lisanna,Paladin,She/they,DEU,Europe,8.694724,49.4093582,,,,participant,mentor,mentor,, +lomaxboydphd,New York,United States,Lomax,Boyd,He/him,USA,North America,-74.0060152,40.7127281,,,participant,,,,, +loreleyls,Falmouth,United States,Loreley,Lago,she/her,USA,North America,-5.0688262,50.1552197,,,,,,,,participant +loubez,Cape Town,South Africa,Louise,Bezuidenhout,she/her,ZAF,Africa,18.417396,-33.928992,,,"expert, mentor",,,,, +luispedro,Shanghai,China,Luis Pedro,Coelho,he/them,CHN,Asia,121.4700152,31.2312707,"expert, mentor","expert, mentor",,,"expert, mentor",speaker,, +lukehare,London,United Kingdom,Luke,Hare,he/him,GBR,Europe,-0.14405508452768728,51.4893335,,,,participant,participant,,, +lwbwalma,Delft,Netherlands,Lisanne,Walma,she/her,NLD,Europe,4.362724538543995,51.999457199999995,,,,,participant,,, +lwinfree,Austin,United States,Lilly,Winfree,she/her,USA,North America,-97.7436995,30.2711286,speaker,"expert, speaker",,"expert, mentor",speaker,expert,, +lydiafrance,London,United Kingdom,Lydia,France,,GBR,Europe,-0.14405508452768728,51.4893335,,,,participant,participant,,, +macziatko,Dublin,Ireland,Nina,Trubanová,she/her/hers,IRL,Europe,-6.2605593,53.3493795,,,,,,participant,"facilitator, mentor","expert, facilitator, mentor" +mai-alajaji,Riyadh,Saudi Arabia,Mai,Alajaji,,SAU,Asia,46.7160104,24.638916,,,,participant,,,, +malloryfreeberg,Cambridge,United Kingdom,Mallory,Freeberg,she/her,GBR,Europe,0.1186637,52.2055314,,mentor,mentor,,,"expert, mentor, speaker",,mentor +malvikasharan,London,United Kingdom,Malvika,Sharan,she/her,GBR,Europe,-0.14405508452768728,51.4893335,"organizer, mentor, mentor, mentor, speaker, speaker, speaker","expert, organizer, mentor, mentor","expert, organizer, mentor, mentor, mentor, speaker, speaker","organizer, speaker","organizer, participant, mentor, mentor, mentor, speaker","organizer, mentor, speaker","organizer, mentor, speaker","organizer, speaker, speaker" +manulera,Paris,France,Manuel,Lera Ramirez,He/him,FRA,Europe,2.3200410217200766,48.8588897,,,,"facilitator, participant",facilitator,,, +marco-madella,Barcelona,Spain,Marco,Madella,he/his,ESP,Europe,2.1774322,41.3828939,,,participant,,,,, +marcoanteghini,Berlin,Germany,Marco,Anteghini,,DEU,Europe,13.3888599,52.5170365,,,,,,speaker,, +marcotxma,Munich,Germany,Marco,Ma,he/him,DEU,Europe,11.5753822,48.1371079,,,,,,,participant, +maria-andrea-gonzales-castillo,Lima,Peru,Maria Andrea,Gonzales Castillo,She/Her,PER,South America,-77.0365256,-12.0621065,,,,,participant,,, +mariangelap,Genova,Italy,Mariangela,Panniello,she/her,ITA,Europe,8.9338624,44.40726,,,,,participant,,, +marie-nugent,London,United Kingdom,Marie,Nugent,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,participant,, +marielaraj,Ciudad De Buenos Aires,Argentina,Mariela,Rajngewerc,She/her,ARG,South America,-58.4370894,-34.6075682,,,,,,,participant,mentor +marimeireles,Berlin,Germany,Mariana,Meireles,she/her,DEU,Europe,13.3888599,52.5170365,,,,,,"expert, mentor",,speaker +markuskonk,Enschede,Netherlands,Markus,Konkol,,NLD,Europe,6.870595664097989,52.22336325,,,,expert,,,, +marlouramaekers,Amsterdam,Netherlands,Marlou,Ramaekers,she/her,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +marta-lloret-llinares,Cambridge,United Kingdom,Marta,Lloret Llinares,She/her,GBR,Europe,0.1186637,52.2055314,,,expert,,,,, +marta-marin,Madrid,Spain,Marta,Marin,She/her,ESP,Europe,-3.7035825,40.4167047,,,participant,,,,, +martinagvilas,Frankfurt Am Main,Germany,Martina,Vilas,She/her,DEU,Europe,8.6820917,50.1106444,,"expert, mentor","expert, participant",,,,, +martlj,London,United Kingdom,Martin,Jones,he/him,GBR,Europe,-0.14405508452768728,51.4893335,,,,mentor,,expert,, +marzia-di-filippo,Milano,Italy,Marzia,Di Filippo,,ITA,Europe,9.1896346,45.4641943,,,participant,,,,, +masako-kaufmann,Freiburg,Germany,Masako,Kaufmann,"She, her",DEU,Europe,7.8494005,47.9960901,,,participant,,,,, +matouse,London,United Kingdom,Matous,Elphick,He/Him,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,expert,, +meagdoh,Washington,United States,Meag,Doherty,she/her,USA,North America,-77.0365427,38.8950368,,"expert, mentor","expert, mentor","expert, mentor",mentor,,speaker, +megmugure,Nairobi,Kenya,Margaret,Wanjiku,she/her,KEN,Africa,36.8288420082562,-1.3026148499999999,participant,,expert,,,,, +mehak-chopra,Puducherry,India,Mehak,Chopra,she/her,IND,Asia,79.8306447,11.9340568,,,participant,,,,, +melibleq,São Paulo,Brazil,Melissa,Black,she/her,BRA,South America,-47.1583944,-1.2043218,,,,,,"expert, speaker","facilitator, mentor",participant +merrcury,Kurukshetra,India,Himanshu,Garg,He / Him,IND,Asia,76.8482787,29.9693747,,,,expert,,,, +mgawe-cavin,"Nairobi, Kenya",Kenya,Cavin,Mgawe,He,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,participant,facilitator,, +michael-addy,Kumasi,Ghana,Michael,Addy,He,GHA,Africa,-1.6233086,6.6985605,,,,participant,mentor,,, +michal-javornik,Brno,Czechia,Michal,Javornik,,CZE,Europe,16.6113382,49.1922443,,,participant,,,,, +michal-ruzicka,Brno,Czechia,Michal,Růžička,,CZE,Europe,16.6113382,49.1922443,,,participant,,,,, +miguel-silan,Metro Manila / Grenoble,France,Miguel,Silan,,FRA,Europe,,,,,,,,,expert,speaker +mihaelanemes,London,United Kingdom,Mishka,Nemes,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,participant,,,,, +miketrizna,"Washington, Dc",United States,Mike,Trizna,he/him/his,USA,North America,-77.0365427,38.8950368,,,,,,,participant, +milagro-urricariet,Ciudad Autónoma De Buenos Aires,Argentina,Milagro,Urricariet,she/her,ARG,South America,-58.4370894,-34.6075682,,,,,,,,"expert, participant" +milagros-miceli,Berlin,Germany,Milagros,Miceli,she/her/hers,DEU,Europe,13.3888599,52.5170365,,,,,,,mentor, +mishrose123,Cambridge,United Kingdom,Michelle,Mendonca,she/her,GBR,Europe,0.1186637,52.2055314,,,expert,,,,, +mitch-kitoi,Nairobi,Kenya,Michael,Kitoi,He/Him,KEN,Africa,36.82884201813725,-1.3026148499999999,,,,,,,,participant +miytek,Delft,Netherlands,Miyase,Tekpinar,,NLD,Europe,4.362724538543995,51.999457199999995,,,,,,,,participant +mlagisz,Sydney,Australia,Malgorzata,Lagisz,,AUS,Oceania,-60.194092,46.137977,,,,,,participant,, +mmasibidi,Potchefstroom,South Africa,Mmasibidi,Setaka,She/her,ZAF,Africa,27.095833,-26.707778,,,,,,,,participant +mohan-gupta,Kathmandu,Nepal,Mohan,Gupta,He/Him,NPL,Asia,85.3205817,27.708317,,,participant,,,,, +mona-zimmermann,Amsterdam,Netherlands,Mona,Zimmermann,She/Her,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +msundukova,Bilbao,Spain,Mayya,Sundukova,she/her,ESP,Europe,-2.9350039,43.2630018,,,facilitator,facilitator,"expert, facilitator, mentor","expert, facilitator, mentor, participant",, +mtthsdzwn,Amsterdam,Netherlands,Matthijs,de Zwaan,,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +mxrtinez,Bucaramanga,Colombia,Alexander,Martinez Mendez,,COL,South America,-73.1047294009737,7.16698415,,,participant,"expert, mentor",mentor,"expert, speaker","mentor, participant",mentor +nadia-odaliz-chamana-chura,Lima,Peru,Nadia Odaliz,Chamana Chura,She/her/hers,PER,South America,-77.0365256,-12.0621065,,,,,participant,,, +nadinespy,Brighton,United Kingdom,Nadine,Spychala,she/her,GBR,Europe,-0.1400561,50.8214626,,,,participant,,"expert, mentor",,"expert, mentor" +nahuele,Vicente Lopez,Argentina,Nahuel,Escobedo,he,ARG,South America,-58.5036282,-34.5244484,,,,,,,participant, +nanje-patrick-itarngoh,Buea,Cameroon,Nanje Patrick,Itarngoh,He,CMR,Africa,9.2315519,4.1567995,,,,,,,,participant +natalie-banner,London,United Kingdom,Natalie,Banner,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,speaker,,,mentor,, +natasha_wood,Cape Town,South Africa,Natasha,Wood,,ZAF,Africa,18.417396,-33.928992,,speaker,,,,,, +nathanael-kedmayla,Yaounde,Cameroon,Nathanael,Kedmayla,He/Him,CMR,Africa,11.5213344,3.8689867,,,,,,,participant, +nea-bridget,London,United Kingdom,Bridget,Nea,she/her/hers,GBR,Europe,-0.14405508452768728,51.4893335,,,,,participant,,, +nelson-franco,Cochabamba,Bolivia,Nelson Franco,Condori Salluco,Nelson,,,-66.1568983,-17.3936114,,,,,participant,,, +nessa111987,Oxford,United Kingdom,Vanessa,Fairhurst,she/her,GBR,Europe,-1.2578499,51.7520131,,,,,,,,expert +nickynicolson,London,United Kingdom,Nicky,Nicolson,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,participant,participant,mentor +niels-reijner,Amsterdam,Netherlands,Niels,Reijner,,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +nihansultan,İstanbul,Turkey,Nihan Sultan,Milat,,TUR,Asia,29.052495,41.0766019,,,participant,,participant,,, +nlois,Buenos Aires,Argentina,Nicolás,Lois,He/him,ARG,South America,-58.4370894,-34.6075682,,,,,,,,participant +nodiraibrogimova,Tashkent,Uzbekistan,Nodira,Ibrogimova,She/Hers,UZB,Asia,69.2787079,41.3123363,,,,,participant,,, +nomadscientist,Cambridge,United Kingdom,Wendi,Bacon,She/her,GBR,Europe,0.1186637,52.2055314,,,expert,,,,, +nomalu,Pretoria,South Africa,Nomalungelo Octavia,Maphanga,,ZAF,Africa,28.1879101,-25.7459277,,,,,,participant,, +npalopoli,Buenos Aires,Argentina,Nicolás,Palopoli,Él/He/Him,ARG,South America,-58.4370894,-34.6075682,,expert,expert,,,,,"mentor, participant" +npdebs,Port Harcourt.,Nigeria,Deborah,Udoh,She/her,NGA,Africa,7.0188527,4.7676576,,,,,,,participant,facilitator +nwakaego-gloria-ashiegbu,Umudike / Abia State,Nigeria,Nwakaego Gloria,Ashiegbu,She,NGA,Africa,7.533333,5.5,,,,,,,,participant +nyasita,Nairobi,Kenya,Laurah,Ondari,,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,participant,mentor,mentor +olayile,Pretoria,South Africa,Olayile,Ejekwu,She/Her,ZAF,Africa,28.1879101,-25.7459277,,,participant,,,,, +olsjuju,Seoul,South Korea,Juyeon,Kim,,,,126.9782914,37.5666791,,,,,participant,mentor,, +olufemi-adesope,Port Harcourt,Nigeria,Olufemi,Adesope,Him/His,NGA,Africa,7.0188527,4.7676576,,,,,,,,participant +onwumere.joseph,"Umudike, Abia State",Nigeria,Joseph,Chimere Onwumere,He,NGA,Africa,7.533333,5.5,,,,,,,,participant +osatashamim,Nairobi,Kenya,Shamim,Wanjiku Osata,,KEN,Africa,36.8288420082562,-1.3026148499999999,,,,,,participant,, +paolo-pedaletti,Milano,Italy,Paolo,Pedaletti,,ITA,Europe,9.1896346,45.4641943,,,participant,,,,, +patriloto,Resistencia - Chaco,Argentina,Patricia,Loto,Ella/She,ARG,South America,-59.19320025100798,-27.6048829,,,,,,,participant,mentor +paulinegachanja,Kilifi,Kenya,Pauline,Wambui Gachanja,Her/She,KEN,Africa,39.67507159193717,-3.15073925,,,,,,,,participant +paulmaxus,Amsterdam,Netherlands,Maximillian,Paulus,he/him/his,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +pazmiguez,Buenos Aires,Argentina,Paz,Míguez,she/her,ARG,South America,-58.4370894,-34.6075682,,,,,,,,"expert, participant" +peranti,Paris,France,Pradeep,Eranti,,FRA,Europe,2.3483915,48.8534951,,,,,,,facilitator,facilitator +pescini,Milan,Italy,Dario,Pescini,he/him,ITA,Europe,9.1896346,45.4641943,,,participant,mentor,,,, +petraag,Bamenda,Cameroon,Agien,Petra Ukeh,She,CMR,Africa,10.1516505,5.9614117,,,,,,,participant, +phaarouknucleus,Kano,Nigeria,Umar Farouk,Ahmad,,NGA,Africa,8.5364136,11.8948389,,,,,,participant,"facilitator, speaker","expert, facilitator, mentor, mentor" +pherterich,Edinburgh,United Kingdom,Patricia,Herterich,she/her,GBR,Europe,-3.1883749,55.9533456,"expert, mentor, mentor","expert, mentor",,speaker,"expert, mentor",expert,mentor, +piero-beraun,Lima,Peru,Piero,Beraun,He/Him,PER,South America,-77.0365256,-12.0621065,,,,,participant,,, +pinheirochagas,San Francisco,United States,Pedro,Pinheiro-Chagas,He / him / his,USA,North America,-122.419906,37.7790262,,,,,participant,,, +pivg,Cambridge,United Kingdom,Piraveen,Gopalasingam,he/him,GBR,Europe,0.1186637,52.2055314,,mentor,"expert, mentor",,speaker,speaker,, +prakriti-karki,Kathmandu,Nepal,Prakriti,Karki,She/her,NPL,Asia,85.3205817,27.708317,,,participant,,,,, +prashbio,Jaipur,India,Prash,Suravajhala,He/Him,IND,Asia,75.8189817,26.9154576,,,"expert, participant, mentor",,,,, +princehoodie,Buenos Aires,Argentina,Tobías,Aprea,He/His,ARG,South America,-58.4370894,-34.6075682,,,,participant,,,, +proccaserra,Oxford,United Kingdom,Philippe,Rocca-Serra,he/him,GBR,Europe,-1.2578499,51.7520131,,speaker,expert,,,,, +profgiuseppe,Bologna,Italy,Giuseppe,Profiti,he/him/his,ITA,Europe,11.3426327,44.4938203,expert,expert,expert,expert,,expert,,expert +r-huo,Delft,Netherlands,Ran,Huo,,NLD,Europe,4.362724538543995,51.999457199999995,,,,,,participant,, +rainsworth,Manchester,United Kingdom,Rachael,Ainsworth,she/her,GBR,Europe,-2.2451148,53.4794892,expert,"expert, speaker",expert,,,,, +raoofphysics,Bristol,United Kingdom,Achintya,Rao,he/him,GBR,Europe,-2.5972985,51.4538022,,,,,participant,,, +raphaels1,London,United Kingdom,Raphael,Sonabend,They/He,GBR,Europe,-0.14405508452768728,51.4893335,,,,,expert,,, +reinout-de-vries,Amsterdam,Netherlands,Reinout,de Vries,,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +rgiessmann,Berlin,Germany,Robert,Giessmann,he/him,DEU,Europe,13.3888599,52.5170365,,,,,,,,participant +richarddushime,Kampala,Uganda,Richard,Dushime,He/Him,UGA,Africa,32.5813539,0.3177137,,,,,,,participant,expert +rivaquiroga,Valparaíso,Chile,Riva,Quiroga,she/her/ella,CHL,South America,-71.6196749,-33.0458456,,,,,,,mentor,mentor +robandeep-kaur,Jalandhar,India,Robandeep,Kaur,She/her,IND,Asia,75.576889,31.3323762,,,participant,,,,, +robert-schreiber,Hermanus,South Africa,Robert,Schreiber,He/him,ZAF,Africa,19.2361111,-34.4175,,,,,participant,,, +robin-lewando,Drimoleague,Ireland,Robin,Lewando,,IRL,Europe,-9.2599704,51.6608501,,,participant,,,,, +romina-pendino,"Rosario, Santa Fe",Argentina,Romina,Pendino,,ARG,South America,-60.6617024,-32.9593609,,,,,,,,participant +romina-trinchin,Montevideo,Uruguay,Romina,Trinchin,,URY,South America,-56.1913095,-34.9058916,,,,,,,,participant +romullo-lima,Rio De Janeiro,Brazil,Romullo,Lima,,BRA,South America,-43.2093727,-22.9110137,,,,,,participant,, +roné-wierenga,Pretoria,South Africa,Roné,Wierenga,Mrs/she/her,ZAF,Africa,28.1879101,-25.7459277,,,,,,,,participant +ruben-lacroix,Amsterdam,Netherlands,Ruben,Lacroix,,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +rukynas,Porto,Portugal,Ruqayya Nasir,Iro,She,PRT,Europe,-8.6107884,41.1494512,,,participant,,,,, +sairajdillikar,Mysore,India,Sairaj R,Dillikar,,IND,Asia,76.6553609,12.3051828,,,,,participant,,, +samvanstroud,London,United Kingdom,Sam,Van Stroud,,GBR,Europe,-0.14405508452768728,51.4893335,,participant,expert,speaker,,,, +sandra-larriega,Ñima,Peru,Sandra Mirella,Larriega Cruz,"She, her",PER,South America,23.8675381,47.0759396,,,,,participant,,, +sandrine-kengne,Yaounde,Cameroon,Sandrine,Kengne,,CMR,Africa,11.5213344,3.8689867,,,,,,,participant, +santi-rello-varona,Madrid,Spain,Santi,Rello Varona,he/him,ESP,Europe,-3.7035825,40.4167047,,,participant,,,,, +santosrac,Piracicaba,Brazil,Renato Augusto,Correa Dos Santos,He,BRA,South America,-47.6493269,-22.725165,,expert,,,expert,,, +sapetti9,Bologna,Italy,Sara,Petti,she/her,ITA,Europe,11.3426327,44.4938203,,,,,,"expert, speaker",, +sarah-nietopski,London,United Kingdom,Sarah,Nietopski,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,participant,,, +saranjeetkaur,Gurgaon,India,Saranjeet Kaur,Bhogal,She/her,IND,Asia,77.00270014657752,28.42826235,,,,participant,,participant,mentor,mentor +saravilla,London,United Kingdom,Sara,Villa,she/her,GBR,Europe,-0.12765,51.5073359,,,,participant,mentor,"expert, mentor",mentor,"expert, mentor" +sarenaz,Astana (Nursultan),Kazakhstan,Zarena,Syrgak,she/they,KAZ,Asia,71.4306682,51.1282205,,,,,participant,,, +saryace,Santiago,Chile,Sara,Acevedo,she/her,CHL,South America,-83.7980749,9.8694792,,,,,,,participant, +saskiafreytag,Melbourne,Australia,Saskia,Freytag,,AUS,Oceania,144.9631732,-37.8142454,,,,,,,,speaker +sayalaruano,Maastricht,Netherlands,Andres Sebastian,Ayala Ruano,he/him,NLD,Europe,5.6969881818221095,50.85798545,,,,participant,mentor,"expert, speaker",mentor,mentor +selgebali,Gothenburg,Sweden,Sara,El-Gebali,"She, her",SWE,Europe,-100.1619896,40.9277324,,,,"expert, speaker","expert, mentor","expert, mentor",,mentor +serahrono,Tallinn,Estonia,Serah,Rono,"she, her, hers",EST,Europe,24.7453688,59.4372155,,,expert,,,,, +seunolufemi123,Ogbomoso,Nigeria,Seun Elijah,Olufemi,,NGA,Africa,4.25,8.133,,,,,,,participant,"expert, facilitator" +sgibson91,London,United Kingdom,Sarah,Gibson,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,"expert, mentor","expert, participant, mentor",,,,, +shmuhammad2004,Kano,Nigeria,Shamsuddeen,Muhammad,He/Him,NGA,Africa,8.5364136,11.8948389,,,participant,,,,, +sivasubramanian-murugappan,Limerick,Ireland,Sivasubramanian,Murugappan,,IRL,Europe,-8.6301239,52.661252,,,,,,,participant, +sjb287,Urbana,United States,Steven,Burgess,He/His/Him,USA,North America,-88.207301,40.1117174,,,participant,,,,, +sladjana-lukic,New York City,United States,Sladjana,Lukic,she/her,USA,North America,-74.0060152,40.7127281,,,,,participant,,, +slldec,Buenos Aires,Argentina,Sabrina,López,she/her/ella,ARG,South America,-58.4370894,-34.6075682,,,,,participant,,"facilitator, mentor", +smhall97,Oxford,United Kingdom,Siobhan Mackenzie,Hall,she/her,GBR,Europe,-1.2578499,51.7520131,,,,,,mentor,participant,mentor +smklusza,Morrow,United States,Stephen,Klusza,he/him/his,USA,North America,-82.7771661,40.4574358,,participant,"expert, mentor",expert,mentor,,, +sofia-kirke-forslund,Berlin,Germany,Sofia,Kirke Forslund,she/her,DEU,Europe,13.3888599,52.5170365,,expert,,,,,, +spitschan,Munich,Germany,Manuel,Spitschan,he/him/his,DEU,Europe,11.5753822,48.1371079,,,participant,,,,participant, +stefaniebutland,Kamloops,Canada,Stefanie,Butland,she/her,CAN,North America,-120.339415,50.6758269,,,expert,,expert,,,speaker +tai-rocha,Rio De Janeiro,Brazil,Tainá,Rocha,,BRA,South America,-43.2093727,-22.9110137,,participant,expert,,,,, +teddygroves,Copenhagen,Denmark,Teddy,Groves,He/him,DNK,Europe,12.5700724,55.6867243,,,,,,,,participant +teresa-cisneros,London,United Kingdom,Teresa,Cisneros,,GBR,Europe,-0.14405508452768728,51.4893335,,,,,expert,,, +teresa-m,Freiburg,Germany,Teresa,Müller,She/Her,DEU,Europe,7.8494005,47.9960901,,,participant,,,,, +thatspacegirl,Bengaluru,India,Sagarika,Valluri,She/Her,IND,Asia,77.590082,12.9767936,,,,participant,participant,,, +thessaly,Bristol,United Kingdom,Julieta,Arancio,She/her,GBR,Europe,-2.5972985,51.4538022,speaker,"expert, speaker",expert,expert,,,, +tlaguna,Madrid,Spain,Teresa,Laguna,,ESP,Europe,-3.7035825,40.4167047,,participant,mentor,,,,, +tobyhodges,Heidelberg,Germany,Toby,Hodges,he/him,DEU,Europe,8.694724,49.4093582,mentor,expert,"expert, mentor, mentor",,,expert,,speaker +tokioblues,Salta,Argentina,Paola Andrea,Lefer,sher/her,ARG,South America,-64.3494964,-25.1076701,,,,,,,,participant +torigijzen,Amsterdam,Netherlands,Tori,Gijzen,,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +trallard,Manchester,United Kingdom,Tania,Allard,she/her,GBR,Europe,-2.2451148,53.4794892,,speaker,,,,,, +tsonika,Melbourne,Australia,Sonika,Tyagi,she/her,AUS,Oceania,144.9631732,-37.8142454,,"expert, mentor","expert, mentor",,,,, +ujwal-shrestha,Kathmandu,Nepal,Ujwal,Shrestha,He/Him,NPL,Asia,85.3205817,27.708317,,,participant,,,,, +umutpajaro,Cartagena,Colombia,Umut,Pajaro Velasquez,They/Them,COL,South America,-75.5443419,10.4266746,,,,,,,participant,mentor +unode,Heidelberg,Germany,Renato,Alves,he/him,DEU,Europe,8.694724,49.4093582,"expert, mentor, participant","expert, mentor, speaker","expert, mentor, mentor, speaker","expert, mentor","mentor, speaker",,, +varlottaang,Rionero In Vulture,Italy,Angelo,Varlotta,He/him,ITA,Europe,15.6694407,40.9261881,,,,,,,participant, +vborghe,Montréal,Canada,Valentina,Borghesani,she/her/hers,CAN,North America,-73.5698065,45.5031824,,,,,participant,,, +veroxgithub,"Avellaneda, Pba.",Argentina,Verónica,Xhardez,She/ella,ARG,South America,-58.3628061,-34.6648394,,,,,participant,,,mentor +vhellon,London,United Kingdom,Vicky,Hellon,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,,,participant,,, +vickygisel,Oro Verde,Argentina,Victoria,Dumas,"She, Her",ARG,South America,-64.29891743033643,-31.132197599999998,,,,,participant,,, +vskentrou,Amsterdam,Netherlands,Vasiliki,Kentrou,she/her,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +web-learning,Johannesburg,South Africa,Derek,Moore,He/Him,ZAF,Africa,28.049722,-26.205,,,,,,,,participant +wykhuh,Los Angeles,United States,Wai-Yin,Kwan,,USA,North America,-118.242766,34.0536909,,,,participant,,,, +xaxasm,Bucaramanga,Colombia,Alexandra,Serrano Mendoza,,COL,South America,-73.1047294009737,7.16698415,,,,,,,participant, +yanick-diapa-nana,Yaoundé,Cameroon,Yanick,Diapa Nana,,CMR,Africa,11.5213344,3.8689867,,,,,,,participant, +yhordijk,Amsterdam,Netherlands,Yuman,Hordijk,,NLD,Europe,4.8924534,52.3730796,,,,,,,,participant +yvanlebras,Concarneau,France,Yvan,Le Bras,He,FRA,Europe,-3.9223889,47.8757017,,"expert, mentor, mentor","expert, mentor","mentor, speaker",,,, +zdunseth,Providence,United States,Zachary,Dunseth,he/his,USA,North America,-71.4128343,41.8239891,,,,,participant,,, +zenita-milla-luthfiya,Solo,Indonesia,Zenita Milla,Luthfiya,She,IDN,Asia,110.828448,-7.5692489,,,participant,,,,, +aath0,,Switzerland,Athina,Tzovara,she/her,CHE,Europe,,,expert,expert,,,,,, +afzal442,,India,Afzal,Ansari,he/him,IND,Asia,,,,,participant,,,,, +agbeltran,,United Kingdom,Alejandra,Gonzalez-Beltran,,GBR,Europe,,,,expert,,,,,, +ahoyi,,Nigeria,Owen,Iyoha,,NGA,Africa,,,,,,,,,speaker, +ailís-o'carroll,,Ireland,Ailís,O'Carroll,she/her,IRL,Europe,,,,,,,,,mentor, +alecandian,,Netherlands,Alessandra,Candian,she/her/hers,NLD,Europe,,,,,,,participant,"expert, mentor",, +alex-mendonça,,Brazil,Alex,Mendonça,,BRA,South America,,,,,,,speaker,,, +alexholinski,,United Kingdom,Alexandra,Holinski,She/her,GBR,Europe,,,,,"expert, speaker","expert, mentor",expert,,, +alexwlchan,,United Kingdom,Alex,Chan,they/she,GBR,Europe,,,speaker,"expert, speaker",expert,"expert, speaker",expert,speaker,,expert +amchagas,,United Kingdom,Andre,Maia Chagas,,GBR,Europe,,,,,speaker,,,,speaker, +angelicamaineri,,Netherlands,Angelica,Maineri,She/her,NLD,Europe,,,,,,,,,participant,expert +anita-broellochs,,United States,Anita,Bröllochs,she/her,USA,North America,,,speaker,"expert, mentor",,,,,, +anjali-mazumder,,United Kingdom,Anjali,Mazumder,she/her,GBR,Europe,,,,mentor,,,,,, +anneclinio,,Brazil,Anne,Clinio,she/her,BRA,South America,,,expert,,,,,,, +anproulx,,Canada,Andréanne,Proulx,,CAN,North America,,,,participant,,,,,, +arvinpreet-kaur,,India,Arvinpreet,Kaur,she/her/hers,IND,Asia,,,,,participant,,,,, +astroakanksha24,,India,Akanksha,Chaudhari,She/ Her,IND,Asia,,,,,,,participant,,, +bailey-harrington,,United States,Bailey,Harrington,she/her,USA,North America,,,,participant,,,,,, +bakary-n'tji diallo,,Mali,Bakary,N'tji Diallo,,MLI,Africa,,,,participant,,,,,, +banshee1221,,South Africa,Eugene,de Beste,,ZAF,Africa,,,,participant,,,,,, +bbartholdy,,Netherlands,Bjørn Peare,Bartholdy,he/him,NLD,Europe,,,,,,,,,,mentor +beapdk,,Canada,Béatrice,P.De Koninck,,CAN,North America,,,,participant,,,,,, +benkrikler,,United Kingdom,Benjamin,Krikler,,GBR,Europe,,,,speaker,,,,,, +bgruening,,Germany,Björn,Grüning,he/him,DEU,Europe,,,"expert, mentor",expert,,,,,, +bhuvanameenakshik,,India,Bhuvana,Meenakshi Koteeswaran,she/her,IND,Asia,,,expert,,,,,,, +billbrod,,United States,Billy,Broderick,he/him,USA,North America,,,participant,,,,,,mentor, +boi-kone,,Mali,Boï,Kone,,MLI,Africa,,,,participant,,,,,, +bonetcarne,,Spain,Elisenda,Bonet-Carne,she/her,ESP,Europe,,,participant,,,,,,, +brainonsilicon,,United Kingdom,Sophia,Batchelor,she/her,GBR,Europe,,,,participant,,,,participant,, +burceelbasan,,Germany,Burce,Elbasan,,DEU,Europe,,,,,,participant,mentor,,, +carol-o'brien,,Denmark,Carol,O'Brien,,DNK,Europe,,,,,,,,,participant, +cassmurph,,Ireland,Cassandra,Murphy,She/Her,IRL,Europe,,,,,,,,participant,facilitator, +chadsansing,,United States,Chad,Sansing,he/him,USA,North America,,,,,,speaker,speaker,speaker,, +chiarabertipaglia,,United States,Chiara,Bertipaglia,she/her,USA,North America,,,participant,expert,,,,,, +christina-ambrosi,,Switzerland,Christina,Ambrosi,,CHE,Europe,,,,participant,,,,,, +contraexemplo,,Brazil,Anna,e só,,BRA,South America,,,,,,speaker,,speaker,, +crangelsmith,,United Kingdom,Camila,Rangel Smith,she/her,GBR,Europe,,,,participant,,,,,, +danae-carelis-davila-espinoza,,Bolivia,Danae Carelis,Davila Espinoza,,,,,,,,,,participant,,, +dannycolin,,Canada,Danny,Colin,he/him,CAN,North America,,,participant,,,,,,, +dasaderi,,United States,Daniela,Saderi,she/her,USA,North America,,,"expert, mentor",expert,,,,,, +dasaptaerwin,,India,Dasapta Erwin,Irawan,,IND,Asia,,,,,,,,speaker,, +davidbeavan,,United Kingdom,David,Beavan,,GBR,Europe,,,,participant,,,,,, +davidviryachen,,Japan,David,Chentanaman,he/him,JPN,Asia,,,participant,,,,,,, +dlebauer,,United States,David,LeBauer,he/him,USA,North America,,,participant,,,,,,, +dsarahstamps,,United States,Sarah,Stamps,,USA,North America,,,,,,,speaker,,, +dustin-schetters,,Netherlands,Dustin,Schetters,,NLD,Europe,,,,,,,,,,participant +dylan-bastiaans,,Switzerland,Dylan,Bastiaans,,CHE,Europe,,,,participant,,,,,, +eirini-zormpa,,United Kingdom,Eirini,Zormpa,,GBR,Europe,,,,,,,,participant,, +ekeluv,,South Africa,Ekeoma,Festus,they/them,ZAF,Africa,,,,participant,,,,,, +elsasci,,United Kingdom,Elsa,Loissel,she/her,GBR,Europe,,,participant,,,,,,, +emmyft,,Netherlands,Emmy,Tsang,she/her,NLD,Europe,,,expert,expert,"organizer, speaker, speaker","organizer, mentor, speaker, speaker","organizer, mentor, speaker, speaker, speaker","organizer, speaker","organizer, speaker",organizer +evaherbst,,Switzerland,Eva,Herbst,she/her,CHE,Europe,,,,participant,,,,,, +evelyngreeves,,United Kingdom,Evelyn,Greeves,she/her,GBR,Europe,,,,,,,participant,,, +ewa-leś,,Poland,Ewa,Leś,,POL,Europe,,,,,,participant,,,, +ewuramaminka,,United Kingdom,Deborah,Akuoko,she/her,GBR,Europe,,,participant,,,,,,, +fnyasimi,,Kenya,Festus,Nyasimi,He/Him,KEN,Africa,,,participant,,,facilitator,facilitator,facilitator,, +gabimusaubach,,Argentina,Maria Gabriela,Musaubach,,ARG,South America,,,,,,,participant,,, +ganleyemma,,United Kingdom,Emma,Ganley,,GBR,Europe,,,,speaker,,,,,, +georgianaelena,,Romania,Georgiana,Dolocan,she/her,ROU,Europe,,,,,,,,,expert,expert +gigikenneth,,Nigeria,Gift,Kenneth,She/Her,NGA,Africa,,,,,,,,,participant,facilitator +hdinkel,,Germany,Holger,Dinkel,he/him,DEU,Europe,,,"expert, mentor","expert, mentor",,,,,, +henk-wierenga,,South Africa,Henk,Wierenga,,ZAF,Africa,,,,,,,,,,participant +hilyatuz-zahroh,,Indonesia,Hilyatuz,Zahroh,she/her,IDN,Asia,,,,participant,,,,,, +homo-sapiens34,,Russian Federation,Zoe,Chervontseva,she/her,RUS,Europe,,,participant,,,,,,, +ibrahssali1,,Uganda,Ibrahim,Ssali,he/him,UGA,Africa,,,,participant,,,,,, +inquisitivevi,,Germany,Vinodh,Ilangovan,he/him,DEU,Europe,,,expert,,,,,,, +jasonjwilliamsny,,United States,Jason,Williams,he/him,USA,North America,,,"expert, speaker",expert,,,,,, +jelioth-muthoni,,Kenya,Jelioth,Muthoni,,KEN,Africa,,,,participant,,,,,, +joel-hancock,,Austria,Joel,Hancock,he/his,AUT,Europe,,,,participant,,,,,, +jolien-s,,Netherlands,Jolien,Scholten,,NLD,Europe,,,,,,,,,,participant +joshsimmons,,United States,Josh,Simmons,,USA,North America,,,speaker,,,,,,, +kariljordan,,United States,Kari,L. Jordan,she/her,USA,North America,,,expert,expert,,,,,, +karinlag,,Norway,Karin,Lagesen,she/her,NOR,Europe,,,speaker,,,,,,, +katrinleinweber,,Germany,Katrin,Leinweber,she/her,DEU,Europe,,,"expert, mentor",,,,,,, +kaythaney,,United States,Kaitlin,Thaney,,USA,North America,,,,,,speaker,,,, +kevinxufs,,United Kingdom,Kevin,Xu,,GBR,Europe,,,,participant,,,,,, +kipkurui,,Kenya,Caleb,Kibet,he/him,KEN,Africa,,,"expert, mentor, speaker","expert, mentor, mentor",,,mentor,"expert, mentor",mentor, +kiragu-mwaura,,Kenya,David,Kiragu Mwaura,he/him,KEN,Africa,,,participant,,,,,,,facilitator +kiri93,,Switzerland,Markus,Kirolos Youssef,he/his,CHE,Europe,,,,participant,,,,,, +kirstiejane,,United Kingdom,Kirstie,Whitaker,she/her,GBR,Europe,,,"expert, speaker",expert,,,,,, +koudyk,,Canada,Kendra,Oudyk,she/her,CAN,North America,,,,participant,,,,,, +kristinariemer,,United States,Kristina,Riemer,she/her,USA,North America,,,participant,,,,,,, +lakillo,,United Kingdom,Lucy,Killoran,she/her,GBR,Europe,,,,,,,,,,participant +laurichi13,,Spain,Laura Judith,Marcos-Zambrano,,ESP,Europe,,,,participant,,,,,, +lazycipher,,India,Himanshu,Singh,he/him,IND,Asia,,,participant,,,,,,, +lilian9,,Kenya,Lilian,Juma,she/her,KEN,Africa,,,participant,mentor,,,,,, +lpantano,,Spain,Lorena,Pantano,she/her,ESP,Europe,,,,mentor,,,,,, +magicmilly,,United States,Emily,Cain,she/her,USA,North America,,,participant,,,,,,, +marbarrantescepas,,Spain,Mar,Barrantes Cepas,she/her,ESP,Europe,,,,,,,,,,participant +marcel-laflamme,,United States,Marcel,LaFlamme,,USA,North America,,,,,,speaker,,,, +martenson,,Czechia,Martin,Čech,he/him,CZE,Europe,,,,expert,,,,,, +matuskalas,,Norway,Matúš,Kalaš,he/him,NOR,Europe,,,participant,,,,,,, +mblue9,,Australia,Maria,Doyle,she/her,AUS,Oceania,,,,expert,,,,,, +mdbarker,,Australia,Michelle,Barker,,AUS,Oceania,,,,,,,,,speaker, +mesfind,,Ethiopia,Mesfin,Diro,he/him,ETH,Africa,,,,mentor,,,,,, +mkuzak,,Netherlands,Mateusz,Kuzak,he/him,NLD,Europe,,,"expert, mentor, speaker","expert, speaker",,,,,, +mloning,,United Kingdom,Markus,Löning,he/him,GBR,Europe,,,,"mentor, participant",,,,,, +monica-alonso,,Argentina,Monica,Alonso,she/her,ARG,South America,,,,,,,,,,participant +monsurat-onabajo,,Nigeria,Onabajo,Monsurat,she/her,NGA,Africa,,,,,,,,,,participant +morphofun,,United States,Sandy,Kawano,she/her,USA,North America,,,participant,,,,,,, +mruizvelley,,Germany,Mariana,Ruiz Velasco,she/her,DEU,Europe,,,expert,,,,,,, +muhammetcelik,,Turkey,Muhammet,Celik,he/him,TUR,Asia,,,,participant,participant,,mentor,,, +mvdbeek,,France,Marius,van den Beek,he/him,FRA,Europe,,,expert,,,,,,, +myreille-larouche,,Canada,Myreille,Larouche,,CAN,North America,,,,participant,,,,,, +naralb,,Brazil,Naraiana,Loureiro Benone,she/her,BRA,South America,,,participant,,,,,,, +natty2012,,Kenya,Harriet,Natabona Mukhongo,she/her,KEN,Africa,,,,participant,,,,,, +nehamoopen,,Netherlands,Neha,Moopen,she/her,NLD,Europe,,,,participant,,,,,, +nerantzis,,Greece,Nikolaos,Nerantzis,he/him,GRC,Europe,,,expert,expert,,,,,, +nick-barlow,,United Kingdom,Nick,Barlow,,GBR,Europe,,,,,,speaker,,,, +npscience,,United Kingdom,Naomi,Penfold,she/her/they/them,GBR,Europe,,,"expert, mentor","expert, mentor",,expert,,,, +nsoranzo,,United Kingdom,Nicola,Soranzo,he/him,GBR,Europe,,,expert,,,,,,, +olexandr-konovalov,,United Kingdom / Ukraine,Olexandr,Konovalov,,,,,,,,,,,,speaker, +orchid00,,Australia,Paula,Andrea Martinez,she/her,AUS,Oceania,,,expert,"expert, speaker",,,,,, +paulineligonie,,Canada,Pauline,Ligonie,,CAN,North America,,,,participant,,,,,, +paulowoicho,,Nigeria,Paul,Owoicho,he/him,NGA,Africa,,,,participant,,,,,, +paulvill,,France,Paul,Villoutreix,he/him,FRA,Europe,,,,expert,,,,,, +pazbc,,Argentina,Paz,Bernaldo,she/her,ARG,South America,,,,,,,organizer,"organizer, speaker, speaker","organizer, speaker",organizer +pradeep-eranti,,France,Pradeep,Eranti,he/his,FRA,Europe,,,,participant,,,,,,mentor +pvanheus,,South Africa,Peter,van Heusden,he/him,ZAF,Africa,,,,participant,,,,participant,, +rgaiacs,,Brazil,Raniere,Silva,he/him,BRA,South America,,,,"expert, mentor",,,speaker,,, +rodrigocam,,Brazil,Rodrigo,Oliveira Campos,,BRA,South America,,,mentor,,,,,,, +rossmounce,,United Kingdom,Ross,Mounce,he/him,GBR,Europe,,,,expert,,,,,, +rowlandm,,Australia,Rowland,Mosbergen,,AUS,Oceania,,,,,speaker,,speaker,,mentor, +rushda-patel,,India,Rushda,Patel,,IND,Asia,,,,,,,,participant,, +samguay,,Canada,Samuel,Guay,he/him,CAN,North America,,,participant,mentor,,,,,, +samuelorion,,Canada,Samuel,Burke,he/his,CAN,North America,,,,participant,,,,,, +sarah-lippincott,,United States,Sarah,Lippincott,,USA,North America,,,,,,,,,,speaker +satagopam7,,Luxembourg,Venkata,Satagopam,he/him,LUX,Europe,,,expert,,,,,,, +scottbgi,,Hong Kong,Scott,Edmunds,,HKG,Asia,,,,,,,,,,speaker +sdopoku,,Ghana,David,Selassie Opoku,he/him,GHA,Africa,,,,"expert, mentor, speaker",speaker,,,,, +sdruskat,,Germany,Stephan,Druskat,,DEU,Europe,,,,,,speaker,speaker,,, +sebastianeggert,,Germany,Sebastian,Eggert,he/his,DEU,Europe,,,,participant,,,,,, +sithyphus,,United States,Jorge,Barrios,he/him,USA,North America,,,participant,,,,,,, +sk-sahu,,India,Sangram,Sahu,he/him,IND,Asia,,,,participant,,,,,, +sonibk,,Kenya,Brenda,Muthoni,,KEN,Africa,,,,participant,,,,,, +stefan-gaillard,,Netherlands,Stefan,Gaillard,he/him,NLD,Europe,,,,participant,,,,,, +sudarshangc,,Nepal,Sudarshan,GC,he/him,NPL,Asia,,,participant,,,,,,, +susana465,,United Kingdom,Susana,Roman Garcia,,GBR,Europe,,,,,,,,participant,, +tajuddeen1,,Nigeria,Tajuddeen,Gwadabe,he/his/him,NGA,Africa,,,,,,,,,,mentor +thomas-mboa,,Cameroon,Thomas,Mboa,,CMR,Africa,,,,,speaker,,,,, +tklingstrom,,Sweden,Tomas,Klingström,he/him,SWE,Europe,,,,expert,,,,,, +tnabtaf,,United States,Dave,Clements,he/him,USA,North America,,,,"expert, mentor",,"expert, mentor",,,, +valerie-parent,,Canada,Valerie,Parent,,CAN,North America,,,,participant,,,,,, +vcheplygina,,Netherlands,Veronika,Cheplygina,she/her,NLD,Europe,,,,expert,,,,,, +vickynembaware,,South Africa,Vicky,Nembaware,she/her,ZAF,Africa,,,"expert, mentor",expert,,,,,, +virginiagarciaalonso,,Argentina,Virginia Andrea,García Alonso,she/her,ARG,South America,,,,,,,,,,participant +wasifarahman,,Bangladesh,Wasifa,Rahman,,BGD,Asia,,,,participant,,,,,, +ykho001,,United Kingdom,Yan-Kay,Ho,she/her,GBR,Europe,,,,,,,,,,participant +yochannah,,United Kingdom,Yo,Yehudi,they/them,GBR,Europe,,,"organizer, mentor, speaker, speaker, speaker","expert, organizer, mentor, mentor, speaker","expert, organizer, mentor, mentor, mentor, speaker, speaker","organizer, mentor, speaker, speaker","organizer, mentor, mentor, speaker, speaker, speaker","organizer, mentor, speaker, speaker, speaker, speaker, speaker","organizer, mentor, mentor, speaker, speaker","organizer, speaker, speaker, speaker, speaker" +zebetus,,United Kingdom,Harry,Smith,,GBR,Europe,,,mentor,expert,,,,,, +zulidyana-rusnalasari,,Indonesia,Zulidyana,Rusnalasari,,IDN,Asia,,,,,speaker,,,,, +andrés-felipe-ortiz-ferreira,,,Andrés Felipe,Ortiz Ferreira,,,,,,,,,,,,participant, +ariana-bethany-subroyen,,,Ariana Bethany,Subroyen,,,,,,,,,,,participant,, +aurigandrea,,,Andrea,Kocsis,she/her,,,,,,,,,participant,,, +biscuitnapper,,,Florence,Okoye,She/her,,,,,,,,participant,,,, +bresearcher101,,,Aswathi,Surendran,,,,,,,,,,,participant,mentor, +chiara-damiani,,,Chiara,Damiani,,,,,,,,participant,,,,, +ekariuki-sleepy,,,Eric,Kariuki,,,,,,,,,,,,speaker, +gilbert-beyamba,,,Gilbert,Beyamba,,,,,,,,,,speaker,,, +godwyns-onwuchekwa,,,Godwyns,Onwuchekwa,,,,,,,,,,,,speaker, +gugy89,,,Gudrun,Gygli,,,,,,,,,,expert,,, +harisood,,,Hari,Sood,,,,,,,,,,,participant,, +joy-owango,,,Joy,Owango,,,,,,,,,,speaker,,, +lenny-teytelman,,,Lenny,Teytelman,,,,,,,,speaker,,,,, +maria-clara-heringer-lourenço,,,Maria Clara,Heringer Lourenço,,,,,,,,,,,,participant, +megan-lisa-stock,,,Megan Lisa,Stock,,,,,,,,,,,participant,, +moengels,,,Moritz,Engelhardt,,,,,,,,,,,participant,, +monica-granados,,,Monica,Granados,,,,,,,,,,,,,speaker +nadza-dzinalija,,,Nadza,Dzinalija,,,,,,,,,,,,,participant +nikoleta-v3,,,Nikoleta,Glynatsi,,,,,,,,,speaker,,,, +nilabha1512,,,Nilabha,Mukherjea,,,,,,,,,,,participant,, +nina-roux,,,Nina,Roux,,,,,,,,,,,participant,, +npch,,,Neil,Chue Hong,,,,,,,,speaker,,,,, +pol-arranz-gibert,,,Pol,Arranz-Gibert,,,,,,,,,,,participant,, +rhoné-roux,,,Rhoné,Roux,,,,,,,,,,,participant,, +sgsfak,,,Stelios,Sfakianakis,,,,,,,,participant,,,,, +tallmar,,,Marta,Lloret Llinares,,,,,,,,,,,expert,, +trevor-hamlin,,,Trevor,Hamlin,,,,,,,,,,,,,participant +usmood,,,Mahmood,Usman,Kano,,,,,,,,,,participant,, +wendy-andrews,,,Wendy,Andrews,,,,,,,,,,,,,participant +zee-moz,,,Zannah,Marsh,,,,,,,,,,,,speaker, diff --git a/data/roles/speaker.csv b/data/roles/speaker.csv new file mode 100644 index 0000000..f8fbadf --- /dev/null +++ b/data/roles/speaker.csv @@ -0,0 +1,100 @@ +,city,country,first-name,last-name,pronouns,country_3,continent,longitude,latitude,ols-1,ols-2,ols-3,ols-4,ols-5,ols-6,ols-7,ols-8 +ajstewartlang,Manchester,United Kingdom,Andrew,Stewart,he/him,GBR,Europe,-2.2451148,53.4794892,speaker,speaker,,,speaker,,, +andreasancheztapia,"Merced, CA",Colombia,Andrea,Sánchez Tapia,She/her,COL,South America,-120.7678602,37.1641544,,,,,,,speaker, +anelda,Overberg,South Africa,Anelda,van der Walt,she/her,ZAF,Africa,5.4964645,52.0390484,,,speaker,,speaker,,, +anenadic,Manchester,United Kingdom,Aleksandra,Nenadic,she/her/hers,GBR,Europe,-2.2451148,53.4794892,,speaker,,,,,, +babasaraki,Bauchi,Nigeria,Umar,Ahmad,Data Science,NGA,Africa,10.0287754,10.6228284,,speaker,,,,,, +batoolmm,Liverpool,Saudi Arabia,Batool,Almarzouq,She/Her,SAU,Asia,-2.99168,53.4071991,,,,speaker,,,speaker, +bduckles,"Portland, Oregon",United States,Beth,Duckles,"she, her",USA,North America,-122.674194,45.5202471,speaker,,,,,,, +bebatut,Clermont-Ferrand,France,Bérénice,Batut,she/her,FRA,Europe,3.0819427,45.7774551,speaker,speaker,speaker,speaker,,,speaker,speaker +bethaniley,"Belfast, Northern Ireland",United Kingdom,Bethan,Iley,she/her,GBR,Europe,-5.9301829,54.596391,,,,,,speaker,, +burkemlou,Brisbane,Australia,Melissa,Burke,She/Her,AUS,Oceania,-122.402794,37.687165,,speaker,,,,,, +c-martinez,Amsterdam,Netherlands,Carlos,Martinez-Ortiz,he/him,NLD,Europe,4.8924534,52.3730796,,,speaker,,,,, +christinerogers,Montreal,Canada,Christine,Rogers,she/her,CAN,North America,-73.5698065,45.5031824,,speaker,,,,,, +demellina,London,United Kingdom,Demitra,Ellina,She/her,GBR,Europe,-0.14405508452768728,51.4893335,speaker,,,,,,, +ekaroune,Portsmouth,United Kingdom,Emma,Karoune,she/her,GBR,Europe,-1.0906023,50.800031,,,,speaker,,,, +ekin-bolukbasi,London,United Kingdom,Ekin,Bolukbasi,,GBR,Europe,-0.14405508452768728,51.4893335,,speaker,,,,,, +emma-anne-harris,Berlin,Germany,Emma Anne,Harris,,DEU,Europe,13.3888599,52.5170365,,,speaker,,,,, +estherplomp,The Hague,Netherlands,Esther,Plomp,she/her/hers,NLD,Europe,4.2696802205364515,52.07494555,,,speaker,,,,speaker, +fadanka,Yaounde,Cameroon,Stephane,Fadanka,He/Him,CMR,Africa,11.5213344,3.8689867,,,,,,,,speaker +fpsom,Thessaloniki,Greece,Fotis,Psomopoulos,he/him,GRC,Europe,22.9352716,40.6403167,speaker,speaker,,,,,, +gedankenstuecke,Paris,France,Bastian,Greshake Tzovaras,he/him,FRA,Europe,2.3200410217200766,48.8588897,speaker,speaker,,,,,, +georgiahca,London,United Kingdom,Georgia,Aitkenhead,She/her,GBR,Europe,-0.14405508452768728,51.4893335,,,speaker,,,,, +ha0ye,Gainesville,United States,Hao,Ye,he/him,USA,North America,-82.3249846,29.6519684,,,speaker,,speaker,,speaker, +hexylena,Rotterdam,Netherlands,Helena,Rasche,,NLD,Europe,4.47775,51.9244424,,,speaker,,,,, +iratxepuebla,Cambridge,United Kingdom,Iratxe,Puebla,she/her,GBR,Europe,0.1186637,52.2055314,,,speaker,,,,, +ismael-kg,London,United Kingdom,Ismael,Kherroubi Garcia,He/him,GBR,Europe,-0.14405508452768728,51.4893335,,,,,,speaker,, +jywarren,"Providence, RI",United States,Jeffrey,Warren,,USA,North America,-71.4128343,41.8239891,,,,,,speaker,, +lauracion,Ciudad Autónoma De Buenos Aires,Argentina,Laura,Ación,she/ella,ARG,South America,-58.43562340522388,-34.61612315,,speaker,,,,,, +luispedro,Shanghai,China,Luis Pedro,Coelho,he/them,CHN,Asia,121.4700152,31.2312707,,,,,,speaker,, +lwinfree,Austin,United States,Lilly,Winfree,she/her,USA,North America,-97.7436995,30.2711286,speaker,speaker,,,speaker,,, +malloryfreeberg,Cambridge,United Kingdom,Mallory,Freeberg,she/her,GBR,Europe,0.1186637,52.2055314,,,,,,speaker,, +malvikasharan,London,United Kingdom,Malvika,Sharan,she/her,GBR,Europe,-0.14405508452768728,51.4893335,speaker,,speaker,speaker,speaker,speaker,speaker,speaker +marcoanteghini,Berlin,Germany,Marco,Anteghini,,DEU,Europe,13.3888599,52.5170365,,,,,,speaker,, +marimeireles,Berlin,Germany,Mariana,Meireles,she/her,DEU,Europe,13.3888599,52.5170365,,,,,,,,speaker +meagdoh,Washington,United States,Meag,Doherty,she/her,USA,North America,-77.0365427,38.8950368,,,,,,,speaker, +melibleq,São Paulo,Brazil,Melissa,Black,she/her,BRA,South America,-47.1583944,-1.2043218,,,,,,speaker,, +miguel-silan,Metro Manila / Grenoble,France,Miguel,Silan,,FRA,Europe,,,,,,,,,,speaker +mxrtinez,Bucaramanga,Colombia,Alexander,Martinez Mendez,,COL,South America,-73.1047294009737,7.16698415,,,,,,speaker,, +natalie-banner,London,United Kingdom,Natalie,Banner,she/her,GBR,Europe,-0.14405508452768728,51.4893335,,,speaker,,,,, +natasha_wood,Cape Town,South Africa,Natasha,Wood,,ZAF,Africa,18.417396,-33.928992,,speaker,,,,,, +phaarouknucleus,Kano,Nigeria,Umar Farouk,Ahmad,,NGA,Africa,8.5364136,11.8948389,,,,,,,speaker, +pherterich,Edinburgh,United Kingdom,Patricia,Herterich,she/her,GBR,Europe,-3.1883749,55.9533456,,,,speaker,,,, +pivg,Cambridge,United Kingdom,Piraveen,Gopalasingam,he/him,GBR,Europe,0.1186637,52.2055314,,,,,speaker,speaker,, +proccaserra,Oxford,United Kingdom,Philippe,Rocca-Serra,he/him,GBR,Europe,-1.2578499,51.7520131,,speaker,,,,,, +rainsworth,Manchester,United Kingdom,Rachael,Ainsworth,she/her,GBR,Europe,-2.2451148,53.4794892,,speaker,,,,,, +samvanstroud,London,United Kingdom,Sam,Van Stroud,,GBR,Europe,-0.14405508452768728,51.4893335,,,,speaker,,,, +sapetti9,Bologna,Italy,Sara,Petti,she/her,ITA,Europe,11.3426327,44.4938203,,,,,,speaker,, +saskiafreytag,Melbourne,Australia,Saskia,Freytag,,AUS,Oceania,144.9631732,-37.8142454,,,,,,,,speaker +sayalaruano,Maastricht,Netherlands,Andres Sebastian,Ayala Ruano,he/him,NLD,Europe,5.6969881818221095,50.85798545,,,,,,speaker,, +selgebali,Gothenburg,Sweden,Sara,El-Gebali,"She, her",SWE,Europe,-100.1619896,40.9277324,,,,speaker,,,, +stefaniebutland,Kamloops,Canada,Stefanie,Butland,she/her,CAN,North America,-120.339415,50.6758269,,,,,,,,speaker +thessaly,Bristol,United Kingdom,Julieta,Arancio,She/her,GBR,Europe,-2.5972985,51.4538022,speaker,speaker,,,,,, +tobyhodges,Heidelberg,Germany,Toby,Hodges,he/him,DEU,Europe,8.694724,49.4093582,,,,,,,,speaker +trallard,Manchester,United Kingdom,Tania,Allard,she/her,GBR,Europe,-2.2451148,53.4794892,,speaker,,,,,, +unode,Heidelberg,Germany,Renato,Alves,he/him,DEU,Europe,8.694724,49.4093582,,speaker,speaker,,speaker,,, +yvanlebras,Concarneau,France,Yvan,Le Bras,He,FRA,Europe,-3.9223889,47.8757017,,,,speaker,,,, +ahoyi,,Nigeria,Owen,Iyoha,,NGA,Africa,,,,,,,,,speaker, +alex-mendonça,,Brazil,Alex,Mendonça,,BRA,South America,,,,,,,speaker,,, +alexholinski,,United Kingdom,Alexandra,Holinski,She/her,GBR,Europe,,,,,speaker,,,,, +alexwlchan,,United Kingdom,Alex,Chan,they/she,GBR,Europe,,,speaker,speaker,,speaker,,speaker,, +amchagas,,United Kingdom,Andre,Maia Chagas,,GBR,Europe,,,,,speaker,,,,speaker, +anita-broellochs,,United States,Anita,Bröllochs,she/her,USA,North America,,,speaker,,,,,,, +benkrikler,,United Kingdom,Benjamin,Krikler,,GBR,Europe,,,,speaker,,,,,, +chadsansing,,United States,Chad,Sansing,he/him,USA,North America,,,,,,speaker,speaker,speaker,, +contraexemplo,,Brazil,Anna,e só,,BRA,South America,,,,,,speaker,,speaker,, +dasaptaerwin,,India,Dasapta Erwin,Irawan,,IND,Asia,,,,,,,,speaker,, +dsarahstamps,,United States,Sarah,Stamps,,USA,North America,,,,,,,speaker,,, +emmyft,,Netherlands,Emmy,Tsang,she/her,NLD,Europe,,,,,speaker,speaker,speaker,speaker,speaker, +ganleyemma,,United Kingdom,Emma,Ganley,,GBR,Europe,,,,speaker,,,,,, +jasonjwilliamsny,,United States,Jason,Williams,he/him,USA,North America,,,speaker,,,,,,, +joshsimmons,,United States,Josh,Simmons,,USA,North America,,,speaker,,,,,,, +karinlag,,Norway,Karin,Lagesen,she/her,NOR,Europe,,,speaker,,,,,,, +kaythaney,,United States,Kaitlin,Thaney,,USA,North America,,,,,,speaker,,,, +kipkurui,,Kenya,Caleb,Kibet,he/him,KEN,Africa,,,speaker,,,,,,, +kirstiejane,,United Kingdom,Kirstie,Whitaker,she/her,GBR,Europe,,,speaker,,,,,,, +marcel-laflamme,,United States,Marcel,LaFlamme,,USA,North America,,,,,,speaker,,,, +mdbarker,,Australia,Michelle,Barker,,AUS,Oceania,,,,,,,,,speaker, +mkuzak,,Netherlands,Mateusz,Kuzak,he/him,NLD,Europe,,,speaker,speaker,,,,,, +nick-barlow,,United Kingdom,Nick,Barlow,,GBR,Europe,,,,,,speaker,,,, +olexandr-konovalov,,United Kingdom / Ukraine,Olexandr,Konovalov,,,,,,,,,,,,speaker, +orchid00,,Australia,Paula,Andrea Martinez,she/her,AUS,Oceania,,,,speaker,,,,,, +pazbc,,Argentina,Paz,Bernaldo,she/her,ARG,South America,,,,,,,,speaker,speaker, +rgaiacs,,Brazil,Raniere,Silva,he/him,BRA,South America,,,,,,,speaker,,, +rowlandm,,Australia,Rowland,Mosbergen,,AUS,Oceania,,,,,speaker,,speaker,,, +sarah-lippincott,,United States,Sarah,Lippincott,,USA,North America,,,,,,,,,,speaker +scottbgi,,Hong Kong,Scott,Edmunds,,HKG,Asia,,,,,,,,,,speaker +sdopoku,,Ghana,David,Selassie Opoku,he/him,GHA,Africa,,,,speaker,speaker,,,,, +sdruskat,,Germany,Stephan,Druskat,,DEU,Europe,,,,,,speaker,speaker,,, +thomas-mboa,,Cameroon,Thomas,Mboa,,CMR,Africa,,,,,speaker,,,,, +yochannah,,United Kingdom,Yo,Yehudi,they/them,GBR,Europe,,,speaker,speaker,speaker,speaker,speaker,speaker,speaker,speaker +zulidyana-rusnalasari,,Indonesia,Zulidyana,Rusnalasari,,IDN,Asia,,,,,speaker,,,,, +ekariuki-sleepy,,,Eric,Kariuki,,,,,,,,,,,,speaker, +gilbert-beyamba,,,Gilbert,Beyamba,,,,,,,,,,speaker,,, +godwyns-onwuchekwa,,,Godwyns,Onwuchekwa,,,,,,,,,,,,speaker, +joy-owango,,,Joy,Owango,,,,,,,,,,speaker,,, +lenny-teytelman,,,Lenny,Teytelman,,,,,,,,speaker,,,,, +monica-granados,,,Monica,Granados,,,,,,,,,,,,,speaker +nikoleta-v3,,,Nikoleta,Glynatsi,,,,,,,,,speaker,,,, +npch,,,Neil,Chue Hong,,,,,,,,speaker,,,,, +zee-moz,,,Zannah,Marsh,,,,,,,,,,,,speaker, diff --git a/figures/figure-3-based_training_program.png b/figures/figure-3-based_training_program.png new file mode 100644 index 0000000000000000000000000000000000000000..dbd79f174e677e6636b381987aae951f53cb408d GIT binary patch literal 223377 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ParticipantMentorFacilitatorSpeakerExpert
OLS-1292001837
OLS-2523602465
OLS-3663412263
OLS-4343271846
OLS-5713551726
OLS-6413271939
OLS-7543410184
OLS-86938151222
Total3861383099170
\n", + "
" + ], + "text/plain": [ + " Participant Mentor Facilitator Speaker Expert\n", + "OLS-1 29 20 0 18 37\n", + "OLS-2 52 36 0 24 65\n", + "OLS-3 66 34 1 22 63\n", + "OLS-4 34 32 7 18 46\n", + "OLS-5 71 35 5 17 26\n", + "OLS-6 41 32 7 19 39\n", + "OLS-7 54 34 10 18 4\n", + "OLS-8 69 38 15 12 22\n", + "Total 386 138 30 99 170" + ] + }, + "execution_count": 6, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "red_roles = [\"Participant\", \"Mentor\", \"Facilitator\", \"Speaker\", \"Expert\"]\n", + "role_count_df = pd.DataFrame(columns = red_roles)\n", + "for r in red_roles:\n", + " role_count_df[r] = (\n", + " roles_df[r]\n", + " .drop(columns = [\"city\", \"country\", \"country_3\", \"first-name\", \"last-name\", \"pronouns\", \"continent\", \"longitude\", \"latitude\"])\n", + " .count(axis=0)\n", + " .rename(index=str.upper)\n", + " )\n", + " role_count_df.loc[\"Total\", r] = len(roles_df[r])\n", + "role_count_df = role_count_df.astype(\"int64\")\n", + "role_count_df" + ] + }, + { + "cell_type": "markdown", + "id": "8774308d-d087-4f67-b974-80e4ab02e36d", + "metadata": {}, + "source": [ + "## Development path of people in the different roles and Alumni " + ] + }, + { + "cell_type": "code", + "execution_count": 7, + "id": "28041acb-5a2e-445e-9ba3-711f9ddc670f", + "metadata": {}, + "outputs": [ + { + "name": "stderr", + "output_type": "stream", + "text": [ + "/var/folders/k_/5472klmd4fdb_wdkwgm7_n8m0000gp/T/ipykernel_97602/1411840461.py:33: FutureWarning: Setting an item of incompatible dtype is deprecated and will raise an error in a future version of pandas. Value '3.333333333333333' has dtype incompatible with int64, please explicitly cast to a compatible dtype first.\n", + " role_flow_df.at[index, \"value\"] += value\n" + ] + } + ], + "source": [ + "cohorts = [x.lower() for x in list(role_count_df.index)]\n", + "labels = [x.lower() for x in red_roles] + [\"alumni\"]\n", + "role_flow_df = pd.DataFrame({\n", + " \"source\": [l for subl in [[l]*len(labels) for l in labels] for l in subl], \n", + " \"target\": labels*len(labels), \n", + " \"value\": 0\n", + "})\n", + "\n", + "for index, row in role_flow_df.iterrows():\n", + " if row.source == \"alumni\":\n", + " continue\n", + " elif row.target == \"alumni\":\n", + " for i in range(len(cohorts)-2):\n", + " source = f\"{cohorts[i]}-{row.source}\"\n", + " # build query with any role in the cohort and no role after in the following cohort\n", + " query = f\"`{source}` != ''\"\n", + " for r in red_roles:\n", + " target = f\"{cohorts[i+1]}-{r.lower()}\"\n", + " query += f\"and `{target}` == ''\"\n", + " role_flow_df.at[index, \"value\"] += len(people_df.query(query))\n", + " else:\n", + " for i in range(len(cohorts)-2):\n", + " source = f\"{cohorts[i]}-{row.source}\"\n", + " target = f\"{cohorts[i+1]}-{row.target}\"\n", + " # build query the source role for a cohort and target role for the following cohort\n", + " query = f\"`{source}` != '' and `{target}` != ''\"\n", + " query_res = people_df.query(query)\n", + " # check for each result how many roles in cohort and following cohort to normalize the value\n", + " value = 0\n", + " for q_i, q_r in query_res.iterrows():\n", + " new_role_nb = len(q_r[f\"{cohorts[i+1]}-role\"].split(\",\"))\n", + " value += 1/(new_role_nb)\n", + " role_flow_df.at[index, \"value\"] += value" + ] + }, + { + "cell_type": "code", + "execution_count": 8, + "id": "d7e00cb1-54e4-4df9-adeb-a8ef85eef7a0", + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + " \n", + " " + ] + }, + "metadata": {}, + "output_type": "display_data" + }, + { 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"gridcolor": "white", + "linecolor": "white", + "ticks": "", + "title": { + "standoff": 15 + }, + "zerolinecolor": "white", + "zerolinewidth": 2 + }, + "yaxis": { + "automargin": true, + "gridcolor": "white", + "linecolor": "white", + "ticks": "", + "title": { + "standoff": 15 + }, + "zerolinecolor": "white", + "zerolinewidth": 2 + } + } + }, + "width": 800 + } + }, + "text/html": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "colors = {\n", + " \"participant\": \"#3182bd\",\n", + " \"mentor\": \"#fd8d3c\",\n", + " \"expert\": \"#d9d9d9\",\n", + " \"speaker\": \"#dadaeb\",\n", + " \"facilitator\": \"#a1d99b\",\n", + " \"alumni\": \"grey\"\n", + "}\n", + "label_df = pd.DataFrame({\n", + " \"labels\": [l.capitalize() for l in labels] * 2, \n", + " \"colors\": [colors[l] for l in labels] * 2, \n", + " \"x\": [0.1]*len(labels)+[0.9]*len(labels), \n", + " \"y\": [0.1]*(len(labels)*2)})\n", + "\n", + "fig = go.Figure(data=[go.Sankey(\n", + " arrangement=\"snap\",\n", + " node = dict(\n", + " pad = 15,\n", + " thickness = 20,\n", + " line = dict(color = \"black\", width = 0.5),\n", + " label = label_df.labels,\n", + " color = label_df.colors,\n", + " ),\n", + " link = dict(\n", + " source = [labels.index(e) for e in role_flow_df.source],\n", + " target = [labels.index(e)+len(labels) for e in role_flow_df.target],\n", + " value = role_flow_df.value\n", + " ))])\n", + "\n", + "fig.update_layout(\n", + " font_size=18,\n", + " width=800,\n", + " height=400,\n", + " margin=go.layout.Margin(\n", + " l=10, #left margin\n", + " r=10, #right margin\n", + " b=20, #bottom margin\n", + " t=20, #top margin\n", + " )\n", + ")\n", + "\n", + "fig.show()\n", + "fig.write_image(\"images/flow.png\")" + ] + }, + { + "cell_type": "markdown", + "id": "66519ce5-6bff-41eb-9870-c23996bdcc2c", + "metadata": {}, + "source": [ + "Participants re-joining (%)" + ] + }, + { + "cell_type": "code", + "execution_count": 9, + "id": "08380d0a-7a68-4192-8267-cd3cedeafe6e", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "26.153846153846153" + ] + }, + "execution_count": 9, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "role = \"participant\"\n", + "role_nb = float(role_flow_df.query(f\"source == '{ role }'\").value.sum())\n", + "role_wo_alumni = float(role_flow_df.query(f\"source == '{ role }' and target != 'alumni'\").value.sum())\n", + "100 * role_wo_alumni / role_nb" + ] + }, + { + "cell_type": "markdown", + "id": "426857d5-25f3-4d9a-b41d-44c09f276025", + "metadata": {}, + "source": [ + "Mentors re-joining (%)" + ] + }, + { + "cell_type": "code", + "execution_count": 10, + "id": "34ea448f-9b2f-46da-8910-f4a8285e3ec4", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "57.53238436562595" + ] + }, + "execution_count": 10, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "role = \"mentor\"\n", + "role_nb = float(role_flow_df.query(f\"source == '{ role }'\").value.sum())\n", + "role_wo_alumni = float(role_flow_df.query(f\"source == '{ role }' and target != 'alumni'\").value.sum())\n", + "100 * role_wo_alumni / role_nb" + ] + }, + { + "cell_type": "markdown", + "id": "2f556c30-a1a0-44a7-a8aa-2b0764cf2482", + "metadata": {}, + "source": [ + "## People location " + ] + }, + { + "cell_type": "code", + "execution_count": 11, + "id": "10755947", + "metadata": {}, + "outputs": [], + "source": [ + "map_fp = Path(\"../data/naturalearth_lowres/naturalearth_lowres.shp\")\n", + "world_df = geopandas.read_file(map_fp).rename(columns = {\"SOV_A3\": \"iso_a3\"})" + ] + }, + { + "cell_type": "code", + "execution_count": 12, + "id": "8f74d349-624a-4092-ba1e-b2f05f80aa7e", + "metadata": {}, + "outputs": [], + "source": [ + "country_code_df = (roles_df[\"Role\"].groupby([\"country_3\"]).count()\n", + " .rename(columns = {\"country\": \"total\"})\n", + " .drop(columns = [\"city\", \"first-name\", \"last-name\", \"pronouns\", \"continent\", \"longitude\", \"latitude\"])\n", + ")" + ] + }, + { + "cell_type": "markdown", + "id": "ba0e2537-d50f-40f9-bb7e-28235982d4b8", + "metadata": {}, + "source": [ + "Number of countries:" + ] + }, + { + "cell_type": "code", + "execution_count": 13, + "id": "02f21fda-5eca-43de-81e2-a4a507de90e2", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "55" + ] + }, + "execution_count": 13, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "len(country_code_df)" + ] + }, + { + "cell_type": "code", + "execution_count": 14, + "id": "b4f5ae94-99af-40eb-a3d0-011c915fea0e", + "metadata": {}, + "outputs": [], + "source": [ + "country_code_df[country_code_df != 0] = 1\n", + "country_code_df = (country_code_df\n", + " .rename_axis(\"iso_a3\")\n", + " .reset_index()\n", + ")\n", + "country_world_df = pd.merge(world_df, country_code_df, on='iso_a3', how='outer')\n", + "country_world_df['total'] = country_world_df['total'].fillna(0)\n", + "for i in range(1, cohort_nb):\n", + " country_world_df[f'ols-{i}'] = country_world_df[f'ols-{i}'].fillna(0)" + ] + }, + { + "cell_type": "code", + "execution_count": 15, + "id": "32ed1907-6722-441e-aac4-5bd0b85348a7", + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": 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+ "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "fig, ax = plt.subplots(figsize=(15, 10), dpi=300)\n", + "\n", + "country_world_df.plot(\n", + " column='total',\n", + " ax=ax,\n", + " legend=False,\n", + " cmap='YlGn')\n", + "ax.set_axis_off()" + ] + }, + { + "cell_type": "markdown", + "id": "d6345abe-50e1-418f-8f8b-70f0d093ba88", + "metadata": {}, + "source": [ + "## Projects" + ] + }, + { + "cell_type": "markdown", + "id": "e080bae5-4bac-43e5-9790-12465e9c86d5", + "metadata": {}, + "source": [ + "Number of projects over all cohorts" + ] + }, + { + "cell_type": "code", + "execution_count": 16, + "id": "e54ab4ec-d6af-4bad-a28c-ca2a126de6fe", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "238" + ] + }, + "execution_count": 16, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "len(project_df)" + ] + }, + { + "cell_type": "code", + "execution_count": 17, + "id": "5a0cca6e-a8de-428b-b4c6-d9e8c42d1843", + "metadata": {}, + "outputs": [], + "source": [ + "cohort_df = (\n", + " project_df\n", + " .groupby(by=\"cohort\")\n", + " .count()\n", + " .drop(columns = [\"participants\", \"mentors\", \"description\", \"keywords\", \"status\", \"collaboration\", \"participantNb\"])\n", + " .rename(columns = {\"name\": \"Total\"})\n", + ")" + ] + }, + { + "cell_type": "markdown", + "id": "846e930b-ec6e-4e35-91ad-4c528d7716c9", + "metadata": {}, + "source": [ + "Aggregating statistic of number of projects per cohort" + ] + }, + { + "cell_type": "code", + "execution_count": 18, + "id": "73817cef-ecb9-404a-9b20-1b9c89d81d7a", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "count 8.000000\n", + "mean 29.750000\n", + "std 5.391793\n", + "min 20.000000\n", + "25% 26.750000\n", + "50% 30.500000\n", + "75% 33.250000\n", + "max 37.000000\n", + "Name: Total, dtype: float64" + ] + }, + "execution_count": 18, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "cohort_df.Total.describe()" + ] + }, + { + "cell_type": "markdown", + "id": "3f3af580-1ea5-4266-b7eb-5b7af35469e4", + "metadata": {}, + "source": [ + "Mean number of projects per cohort" + ] + }, + { + "cell_type": "code", + "execution_count": 19, + "id": "0d234751-8f64-4c66-a9c7-5629b6e3eb69", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "np.float64(30.5)" + ] + }, + "execution_count": 19, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "cohort_df.Total.median()" + ] + }, + { + "cell_type": "markdown", + "id": "1f844d3f-945f-4f69-a30f-2ddd83853d54", + "metadata": {}, + "source": [ + "### Participants" + ] + }, + { + "cell_type": "markdown", + "id": "f4543846-2e2a-4b8e-8db8-d05356c10a5c", + "metadata": {}, + "source": [ + "Aggregating statistic of the number of participants per projects" + ] + }, + { + "cell_type": "code", + "execution_count": 20, + "id": "0aada30e-5c0d-41c8-8528-3607574e9f68", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "count 238.000000\n", + "mean 1.756303\n", + "std 1.346766\n", + "min 1.000000\n", + "25% 1.000000\n", + "50% 1.000000\n", + "75% 2.000000\n", + "max 8.000000\n", + "Name: participantNb, dtype: float64" + ] + }, + "execution_count": 20, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "project_df.participantNb.describe()" + ] + }, + { + "cell_type": "code", + "execution_count": 21, + "id": "06c9607b-055e-4ddc-bb2e-3dab03b94146", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "Text(0.5, 0, 'Number of participants per projects')" + ] + }, + "execution_count": 21, + "metadata": {}, + "output_type": "execute_result" + }, + { + "data": { + "image/png": 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+Z+3atZFKpUr1NWnSpIx1tGnTpsgYlxKkMti0aVM888wzGcv69OmTnWagDAwbNiyjvvfee0s0b8qUKfH222+n6ypVqkT//v3LtDfIlq1bt8Z///d/ZyxzFhYVUeG/Yf785z+XeO7y5cvj+eefz1jmwwzlR4gFQKVTUFAQ559/fowfPz69rHr16jF27Ng49dRTs9gZlL/77rsvli1bVqo5W7Zsicsuu6zIp++vuuqqsmwNgIS76667YunSpem6atWqccYZZ2SxI9gzw4YNi06dOqXr1157bZdB1ooVK4qEX+eff360b9++XHqEve0f//hHxv8X6tWrF+edd14WO4Ly8f3vfz+jHjNmTPztb3/b5bz8/Pz4wQ9+kHE5wbp163o/qRwJsQCoVLZu3RoXXXRRPPfcc+ll1apVizFjxsSZZ56Zxc5g73jooYeiffv2cfHFF8cLL7wQ33zzzQ7H5uXlxRNPPBFdu3aN0aNHZ3zvBz/4QXz3u98t524BKA9//etf48svvyzVnAcffDBGjBiRsWzo0KHRpk2bsmwN9qqqVavGyJEjo0qV/3177IYbbojrrrsu1qxZU2T8xIkTo3fv3vHpp5+mlzVq1CjuuOOOvdIv7A0PPfRQRn3BBRdEnTp1stQNlJ8LLrggjjrqqHSdSqXikksuieuuu26HH/ycNGlSHHfccRlX9YmIuOmmm6JRo0bl2m9llpNKpVLZbgLY+5YsWRIFBQVFlk+bNi0uvPDCdN2qVasiN/P8Vt26dd3ImX3OkCFDilwa4e67796tT5a1aNEiatasWVatwV7RpUuXmD17drrOycmJDh06RNu2baNhw4aRm5sb33zzTSxatCjmzp0bW7ZsKbKOM888M8aOHRs1atTYm61D1kyePDn69u2brtu0aRMLFy7MXkOwh/r06RNvv/12nHfeeXH++edHnz59dvgG5fTp0+OOO+6IcePGZSxv1apVTJ8+3f0fqBD+8Ic/xDXXXJOxrHr16nHcccdFq1atIi8vL959991YtGhRxpjc3Nx4/vnnffqeCuPLL7+M1q1bZ7xf9NZbb8UxxxyTxa6g/MyfPz969+4dK1asyFhepUqV6Ny5c7Rr1y5q1aoVq1evjlmzZsXy5cuLrKN///7x7LPPRvXq1fdW25WOEAsqqbZt2xb5A7y0hgwZUuST+ZB0OTk5ZbauSZMmuQ8E+5zCIVZp1KpVK2655Zb4P//n//gDnUpFiEVF06dPn/jnP/+ZrqtUqRIdO3aMtm3bRoMGDaJq1aqxatWqmD17drFnbDVu3Dj++c9/xhFHHLE324Zy9cADD8SNN94YGzduLNH45s2bxzPPPBO9evUq585g7/nNb34TP/vZz9L1EUccEe+//34WO4LyN2/evPjBD34Q06dPL9W8nJycuPzyy+N3v/td1KpVq5y6IyKiWrYbAABg73nwwQfj+eefj1dffTVmzpwZ+fn5u5xz6KGHxkUXXRRDhw6N1q1b74UuAdibtm3bFh999FF89NFHuxx70kknxejRo70eUOFcccUVccopp8Tw4cPjueee2+Ell1u0aBE/+clP4j/+4z+iQYMGe7lLKF8PP/xwRn3ZZZdlqRPYew499NB488034/HHH48//elPMW3atNjZeT+1atWKgQMHxtVXXx3HHXfcXuy08hJiAQBUIkcffXQcffTRcfvtt8eWLVviww8/jAULFsTSpUtj/fr1sWXLlqhbt27Ur18/2rZtG127dnVtb4AK5rrrrotWrVrF1KlTS3R1hjp16sQpp5wSV111VZx00kl7oUPIjvbt28df//rXyMvLi6lTp8aSJUti+fLlkZubG02bNo2jjjoqOnfunO02oVxMnTo15s2bl65zc3Pj4osvzmJHsPdUq1YtLrnkkrjkkkti3bp1MX369Pjss89i7dq1kZ+fH/Xq1YtGjRrFEUccEUceeWRUqyZW2ZtcThAAAAAqqbVr18YHH3wQn3/+eXz55ZexcePG2LZtWzRs2DAaNWoUnTp1is6dO0fVqlWz3SoAAJWQEAsAAAAAAIDEqZLtBgAAAAAAAKAwIRYAAAAAAACJI8QCAAAAAAAgcYRYAAAAAAAAJI4QCwAAAAAAgMQRYgEAAAAAAJA4QiwAAAAAAAASR4gFAAAAAABA4gixAAAAAAAASBwhFgAAAAAAAIkjxAIAAAAAACBxhFgAAAAAAAAkjhALAAAAAACAxBFiAQAAAAAAkDhCLAAAAAAAABJHiAUAAAAAAEDiCLEAAAAAAABIHCEWAAAAAAAAiSPEAgAAAAAAIHGEWAAAAAAAACSOEAsAAAAAAIDEEWIBAAAAAACQOEIsAAAAAAAAEkeIBQAAAAAAQOIIsQAAKFeTJ0+OnJyc9Nfw4cOz3RKlsHjx4rjlllvihBNOiObNm0dubm7G73P06NHZbpFi9OnTJ+P3lC2jR4/2eAESwfEIAPZN1bLdAABAeWrbtm0sWrQoY9lBBx0U8+bNi9zc3D1a18qVK6NJkyZl0ick0YMPPhjXXHNN5OfnZ7sVAAAAKiFnYgEAlc5nn30Wf/rTn7LdBiTaP/7xj/jxj38swMqChQsXZpwtMHTo0Gy3RMINHz484zEzefLkbLcEZJkzzwCoKJyJBQBUSv/5n/8Zw4YNi3r16mW7FUikm2++OVKpVLoePHhwXHbZZXHAAQdE9erV08udjQgAAEB5EWIBAJXSypUr47e//W2MGDEi261A4nz00Ufx3nvvpev+/fvHY489lsWOAAAAqIxcThAAqLTuvffe+PLLL7PdBiTO9OnTM+pBgwZlqRN21+TJkyOVSqW/smXo0KEZfbg0IpAtjkcAsG8SYgEAlcqAAQPS/16/fn3cdttt2WsGEqpwuNu6dessdQIAAEBlJsQCACqVESNGRK1atdL1gw8+GPPnz89iR5A869evz6i3vwcWAAAA7C3uiQUAVCotW7aM6667Lu68886IiNiyZUvccsst8eSTT2a5s/KzcuXKePPNN2Pp0qWxZs2a2G+//aJHjx7RvXv3Xc796KOP4u23344vvvgiqlSpEvvvv3+ceOKJceCBB5ZZf9u2bYtp06bFggUL4osvvoiaNWtGq1at4sQTT4ymTZuWyTbWr18fU6dOjS+++CJWrlwZVatWjWbNmkWnTp2iW7duUaVK2X6266OPPoo5c+bEsmXLYt26ddGkSZO44IILokGDBmW6nYiIVCoVM2fOjHnz5sWKFSsiPz8/mjZtGq1atYrjjz8+6tatW+p1btu2rcz73F1btmyJqVOnxqJFi2LZsmVRv379aN26dfTp0yfq16+/R+v+8ssvY+7cufHpp5/G2rVrY/PmzdGwYcNo0qRJdO/ePdq3b19Ge/G/tm3bFm+//XYsWLAgli9fHvn5+dGmTZsYPHhwmW+rLMydOzfef//9WLVqVaxZsyZq1qwZTZs2jU6dOkXnzp2jRo0ae7WfDz/8MObMmRNLly6NgoKCaNmyZfTo0SMOPvjgPVrvpk2bYu7cufHRRx/FihUrYv369VG7du1o1KhRHHLIIdG9e/fIzc0to734X59//nm88847sWTJksjLy4smTZrEkUceGT169Cjz41JprFmzJt5999345JNPYt26dZGfnx+1atWKhg0bRps2baJTp07RqlWrrPTmNaPsLF++PN5+++1YunRprFu3Lpo3bx6HHnpoHHfccZGTk1Om23r33Xfjo48+iuXLl8eGDRuiefPmcckll+z0QxKbNm2KN954IxYtWpT+PTRt2jQ6dOgQxxxzTFSrlp23tJYtWxZvvfVWrFixIlatWhV169aNZs2axdFHHx3t2rUrs+0k7fi7fv36mD17dsybNy/Wrl0beXl5UbNmzahfv34ceOCBcfDBB5fp/gNAWgoAoAJr06ZNKiLSXytXrkytXbs21bhx4/SynJyc1PTp03drXTvyyCOPZIx95JFHStX39nO/853v7HTsd77znYzx35o1a1bq7LPPTlWvXj3j+99+HX744alXX3212HU+99xzqaOOOqrYeRGROvnkk1Pz5s0r0b5MmjQpY+6tt96aSqVSqby8vNRtt92WOuCAA4rdRtWqVVOnn3566oMPPijRdoozYcKEVN++fXf4M4iIVJMmTVI33XRTavXq1SVa52effZYxf8iQIenv/eUvf0l17ty52O3MmjVrt/ejOCtXrkz99Kc/TTVt2nSH+5abm5s67bTTUtOmTSvVPpX0q7SP6+Ls6LmyZs2a1A033LDD/atRo0bqggsuSC1evLjE2yooKEi9+uqrqSuuuCLVsWPHXe5f69atU3fccUdq7dq1e7w/GzduTN18882pli1bFtlOgwYNUqlU0WPMnvwednRcKInFixenrr766lTz5s13ut1atWql+vfvnxozZkyqoKCgVD+PHdnRse9vf/tbqnv37jvspXPnzqkXXnihVPv56aefpn7961+nTjjhhFRubu5O97VmzZqpwYMHp2bPnl2qbexof6ZOnZrq169fqkqVKsVur3nz5qnf//73qa1bt+5w3YWPraX52pHXXnstdcopp6SqVq26y3W0atUq9cMf/jD17rvvlupnsiteM8ruNWNHx4Fp06alzjjjjB3+nlu2bJn67W9/m9qyZUuJtrOj31lBQUHq7rvvTnXo0KHY7axZs6bY9c2ZMyc1aNCgVK1atXb4e2jQoEHqsssuK9VrwJ78bbZ58+bUAw88kDryyCN3+rzo2LFjatSoUSX+2RW2p8ff3X09j4jUZ599VmxPs2bNSg0cODBVo0aNXa6jadOmqQsvvDA1efLk3dp/ACiOEAsAqNB2FDz95je/yVh+0kkn7fa6ipPtEOuRRx7Z6Ztw335VqVIl9dBDD6XXtXXr1tSVV15Zojc7GjZsmHr77bd3uS/Fvbm1bNmyVJcuXUq0nerVq6ceeOCBUv38Vq5cmerXr1+p3rzZb7/9Uv/85z93ue7i3pD8+uuvU2eeeeZO11+WIda4ceNS9erVK9X+/ehHP9rhm2pJC7HmzZtX4kCnbt26qeeee65E27rnnnt2az/btm2bmjFjxm7vz9y5c1OHHnroDteflBBr27Ztqdtvv32XgU5xXzt683NPQ6yCgoLUxRdfXOI+hg0btsNAbXurVq3arZ911apVU3fffXeJfp7F7U8qlUr96le/KlFIFBGpc845J5Wfn1/sussyxNq2bVvq2muv3a11/eIXvyjxz6MkvGb8+6u8Qqz7779/h+Fp4a/u3bunVqxYscvtFPc7++KLL1I9e/bc6foLh1jbtm1L/eIXvyhxfxH/DphHjRpVop/H7v5tNn369FS7du1K9fjo0qVLasmSJSVa/7f7XhbH37IOse66665S/T6+/broootKvO8AsCsuJwgAVErXXHNN3HfffbF48eKIiHj11VfjlVdeiZNPPjnLne25Z599Ni677LL0JeE6dOgQhx12WNSuXTsWL14cb7/9dhQUFETEvy/L9OMf/zg6d+4cPXr0iGuvvTb++Mc/RkRElSpVokuXLnHQQQdFlSpV0pfx+tbatWtj4MCBMXfu3KhXr16J+8vPz48zzjgj3n333fR2unfvHm3bto3NmzfHhx9+GB9//HF6/JYtW+KKK66InJyc+PGPf7zL9c+fPz9OPfXUWLBgQcbyevXqRffu3aN58+axdevWWLhwYcycOTP9c1q1alWcfPLJ8fzzz8epp55a4v1JpVIxZMiQePHFFyMiIicnJzp37hwHHXRQ5ObmxpIlS+Kdd94p8fp25eGHH47LL7+8yCX/2rdvX+T3vHXr1vT3//znP8fixYvjhRdeyNolmEpi1apVccopp6Sfm9WrV49jjz02WrVqFevXr4/3338//b2If1/eaNCgQfHMM8/EmWeeudN1F/6Z5ebmxqGHHhqtW7eOBg0axNatW2PlypUxe/bsWL16dXrcwoUL47vf/W7MmDGj1JcYXL16dZx55pnpx2Nubm4cffTR0apVq9i8eXMsWLAgY3+ypaCgIC644IL4n//5nyLfa9GiRRx55JHRpEmTyM/Pjy+//DJmz55d5N5p5eG6666Lv/3tb+n64IMPjk6dOkVubm4sXLgwZsyYkfF7feSRRyI/Pz8ee+yxna63uEtmHnDAAXHIIYdEgwYNombNmrFu3bqYN29efPrpp5FKpSIiYuvWrfGzn/0scnJy4sYbbyz1/vz2t7+NX/ziF+n6kEMOiUMOOSTq1KkTy5Yti2nTpsWmTZvS3x83blz8v//3/+Kuu+4q9bZK44477ojf//73GcuqVasWnTt3jjZt2kSdOnUiLy8v1qxZE/PmzYsvvviiXPvZnteMsvP000/H1VdfnX48N2vWLLp16xYNGzaML7/8MqZNmxZ5eXnp8TNmzIi+ffvGlClTolGjRiXeTn5+fpxzzjnx1ltvRURE1apVo3v37nHAAQdERMTixYtjxowZReZdeumlMXr06IxlOTk50bVr12jXrl0UFBTEJ598Eh988EH6+5s2bYof//jHsXLlyoznVll58cUX4/vf/35s3LgxY/n+++8fRx11VDRu3Dg2bNgQc+fOjU8++ST9/XfffTeOPfbYmDZtWrRu3Xqn20jq8fexxx6Lm266KWNZTk5OHH744dGuXbuoX79+5Ofnx7p16+Kjjz6KxYsXpx9bAFCmshqhAQCUs52dPVX4E7ndunVLbdu2bbfWVVg2z8Rq1KhRKiJSPXv2LPYyiQsXLkz16tUrY06fPn1STz31VLoeOnRosZ8gfv3111MtWrQo8onrnSn8Ce1v+4uI1IUXXljsdt5+++0ilw7Lzc1NzZkzZ6fb2rBhQ+qII47ImHfIIYekxo4dW+zZGV988UXq8ssvzxjfpEmTnX56uvCnnLc/I2rIkCHFXtpo5cqVqa+//nqnvZfErFmzinxKu0uXLqmpU6cWGbtixYrUj3/84yKfjr755puLjN2yZUvqs88+S39dd911GXOeeOKJjO9/+/XNN9/s8T4Vfq58+/jIyclJXXvttalVq1YVmfPyyy+n2rdvnzFvv/32Sy1fvnyn2/rNb36TatGiReqmm25KTZkyZYdnpm3dujX10ksvpbp27ZqxjWOPPbbU+/Pt46NmzZqpO+64o9if2YIFC1KpVCr1+eefpz777LPUlClTMtZx7rnnFvvz39nvobRnYhV3Fk7//v13eLbl1q1bU1OnTk1dc801qXr16pXLmVjbHyu6d+9ebC9LlixJXXDBBUV6f/DBB3e6nZUrV6aqV6+eOu+881JPPPFEsY+zb3366aepn/zkJ6mcnJz0+qtVq5Z67733drqNwvvTuHHj9BkNAwYMSH344YdFxq9evTo1dOjQjHlVq1Yt9uebl5dX6ufst1/bW7t2bapmzZoZ2xs+fPgOL/WWSv372Pnwww+n+vTpk7rlllt2+XMoDa8ZZfeasaO/D5o3b17sZUDXr1+fuu2224q8zuzqrJrCv7Nv97FKlSqpG264IfXVV18VmbN48eKMY/D9999f5Hk8aNCg1MKFC4vMff/991MnnnhixticnJzUhAkTdtpnaY9HH3zwQapOnToZc0477bTUW2+9Vez4mTNnpk444YSM8ccff/wuzw4ty+Pv9q/nha868Jvf/Ganx4Xtfx9bt24tcvnbq6++OrVs2bId7seqVatSTzzxROqss85KXXLJJTvdZwAoDSEWAFCh7Sx42rp1a5E3rx5//PHdWldh2Qyxvn3zY9OmTTucs3bt2iJh1Ldvbt1xxx073d60adMy3sw98MADdxr+7eiSVzfccMNOt7Nhw4Zi3wzamcKXQjz99NNTGzdu3OmcVKroZeaGDRu2w7E7ulTPrn5uZaFbt25Ffh4bNmzY6ZzCb2JVqVJll2++33rrrRlzJk2aVIZ7kanwc+Xbr/vuu2+n81asWFHkEn0XX3zxTucsXbo0tXnz5hL3tmnTptSpp55aqp9FcfuTm5tbqp/hzu6hU1KlCbFeeumlIj3feeedJd7WmjVrUnl5ecV+b09CrG+/TjjhhF0+j2+44YaMOfXr19/pPYvy8/NTS5cu3eW+7WxfSvJ7KW5/fvazn+1y3tlnn50xZ1dB0Z48Z8eMGZMxd1cfTCisJMfY0vCaUXaK+/ugRYsWqU8++WSn88aNG1fkkpcTJ07c4fgd/c4ee+yxEvW5fPnyIve/uv7663c6Z8uWLUWeJ61atdrh5TdTqdIdj4r7G3H48OG73JctW7akBg4cmDHv0Ucf3eH4JB1/t/fWW2/t0etQWR8XAKjchFgAQIW2q+Dp+eefz/h+u3btdvgm974SYu233347PavgW7fddluRN0769etXov769u2bMe+jjz7a4dji3tzq3r17auvWrbvczueff56qW7duxtwd3Zto6dKlGZ8eb9u27S4Dnu31798/PTc3N3eHnzYu7g3JktxTbU+99tprRd6kL+mb8IXvvbKzN1xTqeyHWAMGDCjR3OnTp2fcq6N69eo7/ZT47vjiiy8y7i/3wx/+cKfji9uf2267rVTb3NshVu/evTPG/uQnPyn19nZkT0OsunXrlui+MgUFBUVC3nvuuaeM9uJ/bf9cqlWr1i5D0cL7c/zxx5fo2DdnzpyMeb169drp+D15zt59990Zc99///0Szy0PXjPKTnEh1rPPPluiuYXPDvre9763w7HF/c4uvfTSEvf5y1/+MmPuMcccU6Lf97p161KtWrXKmLuzwKg0x6Onn346Y+z5559f4v355ptvUs2aNUvPPfLII3c4NknH3+1tf3Z+RKReeOGFMusLAEqrSgAAVGLf+9734oQTTkjXCxYsiFGjRmWxoz334x//OBo3brzLccXd/+vnP/95ibZxyimnZNTf3qukpIYPHx5Vquz6T9HWrVvHj370o4xlhe+X8a0//elPsXnz5nR96623Ru3atUvc0w033JD+9+bNm2PChAklnlvSn9ueePTRRzPqq666Klq2bFmiuXfeeWdG/cQTT0R+fn6Z9VbWbrvtthKN6969ewwYMCBdb9myJR5//PEy7WX//fePXr16pes33nijVPNr164d1157bZn2VJbee++9mDp1arquV69eud9/qTR+/OMfR6tWrXY5rmrVqjF8+PCMZTs6VuyJc889N/3vvLy8Uh/7fvGLX5To2Hf44YdH27Zt03Vpt7MnVqxYsde2VVJeM8pG9+7d4+yzzy7R2F/+8peRm5ubrv/+97/HypUrS7yt0uxj4de322+/vUS/7/r168fNN9+csaysnvfb3yMuJyenyOvoztStWzfjfmzvv/9+LFy4sMi4pB9/t5fE4wIAlYcQCwCo9Aq/YXD77bfvlRtml5fTTz+9ROM6duyYUdeqVStOPPHE3Zr75Zdflqy5iGjUqFGcdtppJR4/ePDgjPr1118vdtwrr7yS/nfVqlVj0KBBJd5GRMTxxx8f1apVS9dTpkwp0bx69erFd7/73VJta3cU3u+LL764xHMPP/zw6NatW7retGlTzJgxo8x6K0tHHnlkHHnkkSUeX9LHx65s3Lgxvvzyy1i0aFEsXLgw46tRo0bpcfPmzSvVjev79u0bDRo02K2e9oZXX301ox48eHDUr18/S90UVfj3uzOnn356xu9qzpw5sXbt2lJvc8uWLbF69epYvHhxkcdC9erVM8Z++OGHJV5vrVq1SnWs6NSpU/rfGzduLLfXpUMPPTSj/sUvfpGo10CvGWWnNM+n/fbbL+MDK9u2bYs333yzRHMPP/zwIn8n7MiSJUti0aJF6bpFixbRr1+/Evd50UUXRdWqVdP1W2+9FQUFBSWeX5wNGzbEtGnT0vXRRx8dBx10UKnW0bdv34y6uMdHko+/hY8Lv/71r2P58uVZ6gaAyq7arocAAFRsPXv2jLPPPjuee+65iPj3p01/+9vfFvlU/75i+zc+d6bwG+sdOnQo8gZtSed+/fXXJWsu/v1J8O3f+NuVo446KmrWrBmbNm2KiH9/cnnz5s0ZnxAvHMoccMAB8dVXX8VXX31V4u1ERDRs2DA959NPPy1xfyX5xPieWLNmTUY/DRs2LPHv+Vu9evWKmTNnput33nkn4wyjpDj22GP3aPw777yzyznbtm2LyZMnx9ixY+Odd96JuXPnxsaNG0u0vW3btsXXX39d4mCqa9euJRqXLYXPLOvTp092GilGzZo1o3PnziUeX61atejWrVv6jeFUKhUzZsyIk046aafzPvvssxgzZky89tprMWfOnFi2bFmJt7lmzZoSj23fvn3GcWtXtg/kIiLWrVsXdevWLfH8kjrppJOiWbNm6TMtpk2bFh07dozLLrsszjnnnOjatWu5H+N2xmtG2dmd4+uLL76Yrt95550466yzdjmvNMe96dOnF9lmaX4+374ezpkzJyL+Hfh+8MEHcdRRR5V4HYVNmzYttmzZkq7btWtX7JlUO7Nt27aMurjHR5KPv99+oOT999+PiIj58+fHoYceGkOHDo1BgwbFcccdV6rnJQDsCa84AADx70+Yvvjii7F169aIiLjnnnviyiuvjGbNmmW5s9Ir/MbnjhR+86Fhw4Yl3kbhudu/2bMrBx98cInHfruttm3bxrx58yIiYuvWrbFq1arYf//902OWL1+e0cPChQtL/anpwlavXl2icXvjMVL4Ek4dO3aMnJycUq2j8Keqk3ppoNI+Plq3bp3xhvWu9mvKlClx9dVXx3vvvbfbPa5bt67EIVbSjyGFA5vDDz88S50U1a5du1K/SdqxY8eMsxt29nhYtWpV/OxnP4vRo0cXecO5pNatW1fisSU9Nn+r8IcKSnOcLY3atWvHn/70pxg0aFD657B8+fL41a9+Fb/61a+iYcOG0bNnz+jZs2eccMIJcdxxx0XNmjXLpZfieM0oO6X9WRY+m6qkrxul2cfC6yxtjxH/fn37NsQqbp2l9fnnn2fUTz75ZDz55JN7tM7iHh9JPv5GRPz5z3+Ovn37pl9f161bFyNHjoyRI0dGnTp14thjj42ePXvG8ccfH71794569epluWMAKiqXEwQAiH+fvTR06NB0vX79+rj99tuz19Ae2N1PeO+tT4bvzqVyCgcGhd8MWrVq1R71VJxvvvmmROP2xps2hc/22J3L0+3qZ5gUe/r42Lx5c2zYsKHYcWPHjo2TTjppjwKsiKKfsN+ZpL+pV/i5U9qgpTyVx7HiW8uWLYsTTjghHn744d0OsCJK91jI5tlMu3LOOefEhAkTokOHDkW+t3bt2hg/fnz88pe/jL59+0bTpk3joosuKtFZj2XBa0bZKe3PcndfN0qzj0l8fdtbj48kH38jIo477riYOnVqsWfWbdiwIV577bX41a9+Faeffno0bdo0BgwYEBMnTsxCpwBUdMn9KxoAYC8bMWJE1KpVK12PGjWqxJcHouRKewZRSdaxefPmPV5nYaW571F5K9xLefwMk6K89m3RokUxZMiQjLMvmjVrFj/96U/jmWeeiffeey+++uqr2LhxY2zbti1SqVT6a8iQIXvc074iSY+L8nyc//CHP8y4n1W1atXinHPOiT/96U8xbdq0+Pzzz+Obb76JLVu2ZDwWJk2atMc9JdXJJ58cH374YTzzzDNxwQUXRPPmzYsdt379+nj88cfjmGOOiUsvvTTy8vLKtS+vGclRHseHJL6+ZevxkaTj77e6desWM2bMiJdffjmGDRsWBx54YLHj8vPz47nnnouTTz45zjzzzHIJAgGovFxOEADg/9eqVau45ppr4u67746If1+66ZZbboknnnhir/bx7SUNK6rSXH5rR3MKf1q5SZMmGfUpp5wSL730UumbS6jGjRtn1OXxM0yKPd233NzcqF27dpExd911V8Z9r773ve/FE088EXXq1Nnl+ktzz7d9TeHnzurVq6NVq1ZZ6iZTeT3O33777fjHP/6Rrps0aRIvvfRSdOvWbZfrr8iPhYj/DfPOOeeciPj3fXDefPPNmDp1arzyyiuxYMGCjPGPPPJIrF27Np555ply68lrRtn5+uuvo2nTpiUevzdeN5L4+lb48XHHHXfEzTffvEfrLMl2knT83V5OTk6cfPLJcfLJJ0fEvy+3OG3atJgyZUq89tpr8cEHH2SM//vf/x79+/ePqVOnum8WAGXCmVgAANu5+eabM978GDNmTMycObPU6yn8n/aCgoISzy18aZ2K5uOPPy7V+IKCgowbqletWrXIm16Fzxgo7TaSrvCbjruzfx999FFGndR7NZV235YsWZK+X0fEjvfrueeeS/+7bt268be//a1EAVZExBdffFGqnvYl298nKCJi7ty5WeqkqAULFpTq2BkR8cknn2TUxT0etn8sRETcfffdJQqwIir2Y6E4HTp0iB/84Afxpz/9KT799NOYNWtWXHjhhRljxo0bV66XEPOaUXZKu58leT7tqcLrTMLr2956fCT5+LszBxxwQJx33nnx+9//PubMmRMff/xxXHXVVRmXTH377bdj9OjR2WsSgApFiAUAsJ2GDRtmfNo2lUrFz3/+81Kvp/B9J9auXVviuYU/0VrRzJgxo1RvTM+ePTsjpOjcuXPUqFEjY0z9+vUzboi+cOHCIm++7csaNWoU7du3T9dr167NuBRaSbzxxhsZ9dFHH10mvZW1adOmlWr8W2+9lVEXt18bN27MCB9OPPHEEt8bZtOmTTFr1qxS9bSn9uYlpXr37p1RT548ea9te1c2bdoUs2fPLvH4goKCjA8d5OTkRPfu3YuMK3xsOPPMM0u8jcLPo6TYW4+ZLl26xOOPPx5XXnllxvJx48aV2za9ZpSd8ji+7qkePXpk1NOmTSvVvebWrl2bEf7Url07DjvssD3qqWfPnhnPqVdeeaVcLhdZ3sffvXVc6NixY/zhD3+IO++8M2N5eR4XAKhchFgAAIVcc8010bp163T9yiuvlPpT5oU/BVyaT9f+/e9/L9W29jVr1qyJCRMmlHj8448/nlEff/zxxY479dRTM+oHH3yw9M0lWOH9fuyxx0o898MPP4wZM2ak65o1axb75n4SzJkzJ95///0Sjy/J46NwiNygQYNSrb887o+yM4XfcM/Pzy+3bfXr1y+jfvzxx+Obb74pt+2VVmku5zp+/PiMM1mPOOKIaNiwYZFxu/t4WLduXTz77LMl7mdv2puPmYiIyy67LKP+7LPPym1bXjPKTmmeT6tWrYqXX345XVepUiV69uxZ5j21bt062rRpk66XL18er732WonnP/HEExmXYT722GOjevXqe9RT06ZNo2vXrul66dKlMX78+D1aZ3HK+/hbkY8LAFQuQiwAgEJq1qwZI0aMyFj285//vFSfwu3cuXNUrVo1XY8fP75E97r68ssv489//nPJm91HDR8+vESftF6yZEmRn8eQIUOKHXvFFVdkXMbxvvvuq1BntV1yySUZ9R/+8IdYvnx5ieYWvpfHBRdcUOTNrST55S9/WaJxM2bMyAgVqlevHoMHDy4yrvD9UebNm1ei9a9bty5uv/32Eo0tS4WDl2XLlpXbtg4//PD4zne+k66//vrrcrn3y+4aNWpULF26dJfjtm3bFsOHD89YtqNjxe4+HoYPH56ogG97e/MxE1H0krnlfTzxmlE2ZsyYUeRymjty2223ZQT4/fv3L9X9tEqj8Ovb//t//69Ef3OtX78+7rjjjoxlO/p9l9bVV1+dUd94442xfv36Mln3t8r7+FvRjwsAVB5CLACAYgwZMiTjUkMzZsyIxYsXl3h+7dq1Mz6xvHz58rjvvvt2Omf9+vVx/vnn79ZNzfc1M2bMiJtuummnY/Ly8mLw4MEZbxr17t17h2cQdejQIYYNG5auN23aFP379y/1PSby8/MTeR+H7373u9GlS5d0vW7durjwwgsjLy9vp/P+67/+K+NNy5ycnPjpT39aXm2WiWeffTbuv//+nY5ZuXJlXHzxxRlvbJ9//vnRokWLImNr1aoVHTt2TNezZs3KOMOgOBs3bowLLrgg4946e0vNmjWjbdu26fqdd94p1SVJS6twaHj//ffHPffcU+L569aty7h8W1lav359iR7nP/vZzzIuJVivXr2M48H2jjrqqIy68CWwivPQQw/FyJEjS9BxdnTq1Cmj3tXje3uPPfZYqS9P+t///d873X5Z85pRdn7yk5/Ep59+utMxxR2Dr7vuunLr6corr4yaNWum62nTpu3yUs5bt26NoUOHxpIlS9LLWrZsWeSebbvrkksuiUMPPTRdf/jhh3HOOeeU+r6lK1eujGeeeWaH3y/P4++eHBeee+65eOedd0o8PmLvHxcAqDyEWAAAxahatWqRT/eW1uWXX55R33jjjTFy5Mgi9/ZIpVLxyiuvRM+ePeNf//pXkbMEKppv9++3v/1tXHTRRcWeZfHOO+/ECSecEFOmTEkvy83NjT/96U87Xfe9994bnTt3TteLFy+OHj16xC9+8Yv4/PPPdzgvLy8vJk6cGNdee20ccMABO3zzO9seeuihyM3NTdeTJ0+OE044och9SyIivvrqq7jqqqvi+uuvz1j+s5/9LONnlDTfPj6uueaa+I//+I9i3zCcOHFi9OrVK+MMmsaNG8dvf/vbHa73+9//fkZ93nnnxWOPPVbk7I5UKhUTJ06Mnj17pi9hVl5nH+xM37590//euHFjnHbaaTFmzJiYM2dOfPbZZ7Fw4cL0156eHfDd7343brjhhoxlN954Y5x11lkZl6Hc3rZt2+LNN9+M6667Lg444IASnxVYGt+eRTBlypQ48cQTi31DdenSpTF48OAib/rec8890bhx42LXO2jQoIwzZZ944om4/PLLY9WqVUXGLlmyJC6//PL44Q9/GKlUKiuPhZLo0aNH1K1bN10/+eSTcc0118Rrr70WH3/8ccbjpXAw+/TTT8fhhx8effv2jfvvv3+nwe3KlSvjxhtvjHvvvTe9rEqVKnHxxReX9S6lec0oO40aNYrly5fH8ccfH0899VSR49+GDRviP//zP+P73/9+xtnjgwcPLnLpu7LUokWL+M1vfpOx7O67744LL7yw2N/D3Llzo1+/fvE///M/6WU5OTnxl7/8JeM1ck9UrVo1xo4dm3H/xIkTJ0bnzp3jgQce2OlZmatXr44xY8bEhRdeGAcccED8/ve/3+HY8jz+tmnTJtq1a5eu33zzzbjoootiwoQJ8dFHHxU5Lmz/9+mkSZPimGOOiaOPPjruvvvumDdv3g7Pjvvmm2/izjvvLPL3RlmdFQcAkQIAqMDatGmTioj018qVK0s1v3fv3hnzS7OugoKC1HHHHVdk3n777Zc644wzUhdddFGqf//+qebNm6e/V61atdQ//vGPjPHf+c53drqd73znOxnjS6M029nepEmTMubeeuutJR7785//PNWlS5d0XaVKldSxxx6bOv/881MDBgxIHXLIIcX+vP/0pz+VqLfFixenDj300GLX0a5du1T//v1TgwcPTp1//vmpU089NXXIIYekqlatWmTsjnz22WcZ44YMGVLin1tZ+POf/5yqUqVKkX47dOiQOvvss1Pf//73U7169UpVq1atyJiTTz45tXnz5l1u49Zbb82YN2nSpHLbn0ceeSRjW7/5zW9SBxxwQLquXr166oQTTkhdcMEFqe9973tFntPfjnnhhRd2up01a9akWrZsWWRuixYtUmeeeWbqoosuSp1++ump/fffP+P7F110UWrIkCEZyz777LMS788jjzyyWz+XWbNmFfs7LO6ruG2U9rhQUFCQOu+884pdf8uWLVOnnnpqavDgwalzzz031bt371S9evVK9DMp7c+j8DHpiiuuyFh2yCGHpAYMGJA6//zzU8cee2yxz4ULL7xwl/tbeL0RkapRo0bqhBNOSA0ePDg1cODAVJcuXVI5OTkZj5W//vWvJT72Fbc/pVGax10qlUrdcMMNJXq8FH48nH322UW+v99++6VOPPHE1DnnnJO6+OKL0z+P4o6Vt9xyS6n2a1e8ZpSdwseBJ598MqNu3rx5qn///qkLL7ww9d3vfjdVu3btIvt1+OGHp1atWrXT7ZTmb4Kd+cEPflBk+zk5OakePXqkzjvvvNTAgQNTRxxxRLG/q+HDh+9y/btzfH7llVdSDRo0KLK9qlWrprp06ZI666yz0s+R7373u6nWrVsXGbur5/7/197dhlZZ/nEA/62Zm24+TJfp3MJoUcOSHiys7AnGtIiMJYkomYK1HmS+NSgjEHp4ka0XhiEuUrKEqLWkoBdm01qZnCktl2uwRcuHVtOstNnO/8UfxeXmpm3uZJ/Pu3v3dV/3dQ7n3Pc43/u6fgN1/U0mk8lXXnmlz9eFk/spLy8/Zf/IkSOTN998c3LWrFnJ+fPnJ2fPnp288cYbk0OHDj2l7fz583t9bwGgr7ouWAsAQBfPP/98j0Xhe5Oenh5vv/12lJSUdJkx0tbWFh988MEp7YcPHx5vvPFG3HXXXWc93n+DjIyM2LRpU8yYMSN27doVnZ2dUVtb2+1sooj/1zmqqKiIRx55pE/9FxQUxJdffhllZWWxfv36Lvuampqiqamp1z7+XkcilSxevDhycnJi4cKFXWbgNDY2RmNjY4/HLVq0KF599dV/XPB+oOXm5sZHH30UM2bMiO+//z46Ojq6zK74u6ysrFi/fn3cc889p+139OjRUV1dHTNnzoz9+/ef+PvevXujurq622PmzZsXa9euPWVW5blwzTXXxOrVq+Oxxx4bsKX6Tpaenh5vvfVWTJ48OVasWBEdHR0n9rW2tkZra+uAj6E7FRUV8csvv8SGDRsiIqKhoSEaGhp6bL9gwYJYs2ZNr/2uXLkyWlpaulyLjx492uNnbdKkSVFdXR0HDhw4w1dw7qxYsSL27NkTVVVV/7ivtra22LJly2nbDBkyJJ566qk+17A7W+4Z/WfOnDmxf//+WLp0aXR2dsa+ffti06ZNPba/7rrr4sMPP+xxVmN/e/311yMvLy9efPHFE7PEkslkbN++PbZv397tMRkZGfHSSy/Fo48+OiBjKi4uju3bt8fcuXO7jOGvv/6KRCIRiUSi1z56m2E/kNffxx9/PL7++uteZyX2xaFDh2Lbtm29tisrK+t1CW0AOBOWEwQAOI1bbrkl7r333rM+vqCgILZt2xZLly6NYcOGddsmMzMz5s6dG3V1dVFaWnrW5/o3mTBhQnz++efx9NNPx8SJE7ttk56eHjNnzoxEIhFlZWVn1H92dnasW7cu6urqYv78+X1aojEvLy/mzZsXGzduHJCl0frT7Nmz47vvvovy8vLIzc3tsd2FF14YJSUlsXXr1lizZk3KB1jHFRUVRSKRiPLy8hg7dmy3bTIyMmLOnDnxzTffxKxZs/rU77XXXhuJRCIefPDBHt+LtLS0mD59emzcuDHWrVs3qO/ZwoULY/fu3fHss89GcXFx5OfnR1ZWVqSlpQ3I+dLS0mL58uXR0NAQixcv7vWH6+zs7Ljvvvvi3XffjUsuuWRAxjRkyJB48803o7Ky8pRaViebMmVKVFVVRWVlZZelAnsydOjQqKqqipUrV0ZeXl6P7QoKCuLJJ5+Murq6LnUSU1FGRka899578fHHH8fDDz8c119/fYwdO7bX5dVefvnlqKioiLvvvrtP18qRI0fGggULYufOnQMeYB3nntF/lixZElu2bImSkpIevyvHg6Ta2tpzuoRmWlpaPPfcc5FIJKK0tLTH/5si/v85XLRoUTQ0NAxYgHVcYWFhfPHFF/H+++9HcXFxZGRk9HpMUVFRLFmyJD799NPT1sQ6bqCuv2lpabFq1aqora2N8vLyuOmmm2LcuHFdapB1Z9myZfHaa69FaWlpXHzxxb2Of9iwYXH//ffHZ599FqtWrYohQzwzD0D/SUsme1jUFgCAfvXHH39ETU1N7NmzJ9rb2yMnJycKCgri1ltvjVGjRg328AbN8doOTU1N0draGpmZmTFx4sS47bbbYty4cf12jp07d0Z9fX38/PPP0d7eHpmZmTFy5MiYNGlSFBUVRUFBQb+c61zr7OyMr776Knbv3h0HDhyIo0ePRm5ubuTn58f06dNjxIgRgz3E06qsrOxST2bt2rXx0EMPndj+888/o6amJpqbm2Pfvn2RnZ0dBQUFceedd3apVXKm2tvbo6amJpqamuLw4cMxZsyYGD9+fEydOjXy8/P/yUs6b3R2dsaOHTti9+7d8dNPP8Xhw4cjKysrxo0bF1deeWVMmTKl30O+kwO622+/PTZv3txlf319fezatStaW1vj2LFjMWHChLjhhhviiiuuOOtzHjt2LHbs2BGJRCLa2toiMzMzxo8fH4WFhTF16tQBCw1TUTKZjMbGxtizZ0+0tLTEwYMHo6OjI7Kzs2Ps2LExefLkuOqqq/qt7lB3Nm/e3KUm3PLly+OZZ545se2e0Xd33HFHfPLJJye2//7zz48//hi1tbXxww8/xK+//nriuz1t2rS44ILBf+b5yJEjsXXr1mhubo4DBw5Eenp65ObmRmFhYUybNu2Mg5K/328qKyvPqm7TkSNHora2Npqbm6OtrS1+++23yMrKipycnCgsLIyioqIeH8Doq8G4/p5Oc3NzNDQ0RHNzc7S3t8fRo0dj+PDhMWbMmCgqKoqrr746hg8ffs7GA8B/ixALAAAYNL2FWPy39BZicf7rLcSi73oLsf5rVq9e3WWZyQ0bNsScOXMGcUQAQF8M/qM1AAAAADCADh482GX7n8zmBQDOHSEWAAAAAOe1b7/9tsv2ZZddNkgjAQDOhBALAAAAgPPW77//HtXV1Se2R40aFYWFhYM4IgCgr86sCiYAAAAApLDOzs5oaWmJI0eORH19fbzwwguxd+/eE/sfeOCBuOACz3UDwL+BEAsAAACA88ahQ4fi0ksv7XZfVlZWLFu27ByPCAA4Wx47AQAAAOC8N2LEiHjnnXd6DLgAgNRjJhYAAAAA55309PQYPXp0XH755VFSUhJPPPFEXHTRRYM9LADgDKQlk8nkYA8CAAAAAAAATmY5QQAAAAAAAFKOEAsAAAAAAICUI8QCAAAAAAAg5QixAAAAAAAASDlCLAAAAAAAAFKOEAsAAAAAAICUI8QCAAAAAAAg5QixAAAAAAAASDlCLAAAAAAAAFKOEAsAAAAAAICUI8QCAAAAAAAg5QixAAAAAAAASDlCLAAAAAAAAFKOEAsAAAAAAICUI8QCAAAAAAAg5QixAAAAAAAASDlCLAAAAAAAAFKOEAsAAAAAAICUI8QCAAAAAAAg5QixAAAAAAAASDlCLAAAAAAAAFKOEAsAAAAAAICUI8QCAAAAAAAg5QixAAAAAAAASDlCLAAAAAAAAFKOEAsAAAAAAICUI8QCAAAAAAAg5QixAAAAAAAASDn/A+5WPExsjcusAAAAAElFTkSuQmCC", + "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "fig, ax = plt.subplots(dpi=300)\n", + "project_df.participantNb.plot.hist(\n", + " bins=8, ax=ax, legend=False, color=\"#139D3D\"\n", + ")\n", + "plt.xlabel('Number of participants per projects')" + ] + }, + { + "cell_type": "markdown", + "id": "fd566376-5089-456c-a98e-a5ccd0029b69", + "metadata": {}, + "source": [ + "### Keywords" + ] + }, + { + "cell_type": "markdown", + "id": "478617c8-5113-430f-b9a4-6f24d6f1dab8", + "metadata": {}, + "source": [ + "Number of keywords" + ] + }, + { + "cell_type": "code", + "execution_count": 22, + "id": "6126940f-ef83-47b5-a5f6-5de13a50833a", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "588" + ] + }, + "execution_count": 22, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "keyword_df = (project_df\n", + " .drop(columns = [\"participantNb\", \"participants\", \"mentors\", \"description\", \"status\", \"cohort\", \"collaboration\", \"status\", \"graduation\"])\n", + " .explode(\"keywords\")\n", + " .assign(keywords=lambda df: df.keywords.str.capitalize())\n", + " .replace(\"Community building\", \"Community\")\n", + " .replace(\"Research community\", \"Community\")\n", + " .replace(\"Ethics of ai\", \"Ethical AI\")\n", + " .replace(\"Ethical ai\", \"Ethical AI\")\n", + " .replace(\"Enviromental\", \"Environmental science\")\n", + " .replace(\"Equal opportunity\", \"Equality\")\n", + " .replace(\"Training\", \"Training and education\")\n", + " .replace(\"Education\", \"Training and education\")\n", + " .replace(\"Artificial intelligence\", \"AI\")\n", + " .replace(\"Ai\", \"AI\")\n", + " .replace(\"Fair\", \"FAIR\")\n", + " .replace(\"Open-source\", \"Open source\")\n", + " .replace(\"Open source software\", \"Open source\")\n", + " .replace(\"Opensource\", \"Open source\")\n", + " .replace(\"Os\", \"Open source\")\n", + " .replace(\"Open source projects\", \"Open source\")\n", + " .replace(\" data science\", \"Data science\")\n", + " .replace(\"Visualisation\", \"Data visualisation\")\n", + " .replace(\"Next-generation sequencing\", \"Sequencing\")\n", + " .replace(\"Open educational resource\", \"Open education\")\n", + " .replace(\"Reproducible research\", \"Reproducibility\")\n", + " .replace(\"Data\", \"Data science\")\n", + " .replace(\"Open community\", \"Community\")\n", + " .groupby(by=\"keywords\")\n", + " .count()\n", + " .rename(columns={\"name\": \"Frequency\"})\n", + " .sort_values(\"Frequency\", ascending=False)\n", + ")\n", + "len(keyword_df)" + ] + }, + { + "cell_type": "markdown", + "id": "14ecade2-1afe-4d66-97c6-0713c7d65900", + "metadata": {}, + "source": [ + "Top 10 of keywords by frequency" + ] + }, + { + "cell_type": "code", + "execution_count": 23, + "id": "9bd90f40-4c8f-4de7-8a22-694d8923a152", + "metadata": {}, + "outputs": [ + { + "ename": "AttributeError", + "evalue": "'dict' object has no attribute 'head'", + "output_type": "error", + "traceback": [ + "\u001b[0;31m---------------------------------------------------------------------------\u001b[0m", + "\u001b[0;31mAttributeError\u001b[0m Traceback (most recent call last)", + "Cell \u001b[0;32mIn[23], line 2\u001b[0m\n\u001b[1;32m 1\u001b[0m frec \u001b[38;5;241m=\u001b[39m keyword_df\u001b[38;5;241m.\u001b[39mFrequency\u001b[38;5;241m.\u001b[39mto_dict()\n\u001b[0;32m----> 2\u001b[0m \u001b[43mfrec\u001b[49m\u001b[38;5;241;43m.\u001b[39;49m\u001b[43mhead\u001b[49m()\n", + "\u001b[0;31mAttributeError\u001b[0m: 'dict' object has no attribute 'head'" + ] + } + ], + "source": [ + "frec = keyword_df.Frequency.to_dict()\n", + "frec.head()" + ] + }, + { + "cell_type": "code", + "execution_count": null, + "id": "1f6cbc6d-37e9-4f7a-8c2e-d6523b7d36d1", + "metadata": {}, + "outputs": [], + "source": [ + "frec = keyword_df.Frequency.to_dict()\n", + "\n", + "wc = WordCloud(\n", + " background_color=\"rgba(255, 255, 255, 0)\",\n", + " random_state=42,\n", + " width=800,\n", + " height=400,\n", + ")\n", + "\n", + "wordcloud = wc.generate_from_frequencies(frec)\n", + "\n", + "fig, ax = plt.subplots(dpi=300)\n", + "ax.imshow(wc, interpolation='nearest')\n", + "ax.set_axis_off()" + ] + }, + { + "cell_type": "markdown", + "id": "d84fc19e-47d3-4680-baba-1df38cd33904", + "metadata": {}, + "source": [ + "## Graduation stats" + ] + }, + { + "cell_type": "markdown", + "id": "e610441a-3917-416c-9d1a-5bd07eaabc0e", + "metadata": {}, + "source": [ + "Percentage of graduated project" + ] + }, + { + "cell_type": "code", + "execution_count": null, + "id": "08ae5561-cfb6-4e1e-8b85-8b396f6869e0", + "metadata": {}, + "outputs": [], + "source": [ + "100 * len(project_df.query('status == \"graduated\"'))/len(project_df.status)" + ] + }, + { + "cell_type": "markdown", + "id": "f4bf69ff-f956-460c-88e2-ac66a1ee8b7b", + "metadata": {}, + "source": [ + "Percentage of graduated project within collaboration" + ] + }, + { + "cell_type": "code", + "execution_count": null, + "id": "302a402e-d6be-4723-a999-6090e4b24c25", + "metadata": {}, + "outputs": [], + "source": [ + "100 * len(project_df.query('status == \"graduated\" and collaboration != \"\"'))/len(project_df.query('collaboration != \"\"'))" + ] + }, + { + "cell_type": "markdown", + "id": "7a846f62-411e-49e2-bfc9-f546631a3296", + "metadata": {}, + "source": [ + "Projects that did not graduated" + ] + }, + { + "cell_type": "code", + "execution_count": null, + "id": "bf90c63e-b802-4887-9a62-e9b6d1c01135", + "metadata": {}, + "outputs": [], + "source": [ + "non_graduated_project = (\n", + " project_df.query('status != \"graduated\"')\n", + " .drop(columns=[\"description\", \"keywords\", \"status\", \"graduation\", \"collaboration\", \"participantNb\"])\n", + ")\n", + "non_graduated_project[\"participants\"] = non_graduated_project[\"participants\"].apply(lambda x: \", \".join(str(i) for i in x))\n", + "non_graduated_project[\"mentors\"] = non_graduated_project[\"mentors\"].apply(lambda x: \", \".join(str(i) for i in x))\n", + "#non_graduated_project.to_csv(\"../results/openseeds/non_graduated_project.csv\", sep=\"\\t\", index=False)" + ] + }, + { + "cell_type": "markdown", + "id": "bf14fd98-c924-49b7-9652-fc29144a300e", + "metadata": {}, + "source": [ + "Project that did graduated but came back" + ] + }, + { + "cell_type": "code", + "execution_count": null, + "id": "c9fad509-8cd0-47d9-8016-3b77f314fd7d", + "metadata": {}, + "outputs": [], + "source": [ + "len(project_df[project_df.name.duplicated(keep=False)][\"name\"].unique())" + ] + }, + { + "cell_type": "markdown", + "id": "66001c2b-c7b8-4ea1-b7bc-dbcf1f7ea03d", + "metadata": {}, + "source": [ + "## Overview figure" + ] + }, + { + "cell_type": "markdown", + "id": "bf904c4f-01e0-4120-93bb-c8949750ffd7", + "metadata": {}, + "source": [ + "# fig, axs = plt.subplots(nrows=2, ncols=2, dpi=300)\n", + "\n", + "#gs = fig.add_gridspec(2,2)\n", + "ax1 = axs[0, 0]\n", + "ax2 = axs[0, 1]#fig.add_subplot(gs[1, :])\n", + "ax3 = axs[1, 0]#fig.add_subplot(gs[2, 0])\n", + "ax4 = axs[1, 1]#fig.add_subplot(gs[2, 1])\n", + "\n", + "# A\n", + "country_world_df.plot(\n", + " column='total',\n", + " ax=ax1,\n", + " legend=False,\n", + " cmap='YlGn',\n", + " figsize=(20, 10))\n", + "ax1.set_axis_off()\n", + "ax1.text(-0.1, 1.1, \"A\", transform=ax1.transAxes, size=20, weight='bold')\n", + "\n", + "# B\n", + "with open(\"images/flow.png\", \"rb\") as f:\n", + " image=plt.imread(f)\n", + " ax2.imshow(image)\n", + " ax2.set_axis_off()\n", + "ax2.text(-0.1, 1.1, \"B\", transform=ax2.transAxes, size=20, weight='bold')\n", + "\n", + "# c\n", + "ax3.imshow(wc, interpolation='nearest')\n", + "ax3.set_axis_off()\n", + "ax3.text(-0.1, 1.1, \"C\", transform=ax3.transAxes, size=20, weight='bold')\n", + "\n", + "# D\n", + "project_df.participantNb.plot.hist(\n", + " bins=8,\n", + " ax=ax4,\n", + " legend=False,\n", + " color=\"#139D3D\",\n", + " figsize=(20, 10)\n", + ")\n", + "ax4.set_xlabel(\"Number of participants per project\")\n", + "ax4.set_ylabel(\"Frequency\")\n", + "ax4.text(-0.1, 1.1, \"D\", transform=ax4.transAxes, size=20, weight='bold')\n", + "\n", + "fig.tight_layout()\n", + "fig.savefig(Path(\"../figures/figure-3-based_training_program.png\"), bbox_inches='tight')" + ] + } + ], + "metadata": { + "kernelspec": { + "display_name": "Python 3 (ipykernel)", + "language": "python", + "name": "python3" + }, + "language_info": { + "codemirror_mode": { + "name": "ipython", + "version": 3 + }, + "file_extension": ".py", + "mimetype": "text/x-python", + "name": "python", + "nbconvert_exporter": "python", + "pygments_lexer": "ipython3", + "version": "3.12.4" + }, + "vscode": { + "interpreter": { + "hash": "31f2aee4e71d21fbe5cf8b01ff0e069b9275f58929596ceb00d14d90e3e16cd6" + } + } + }, + "nbformat": 4, + "nbformat_minor": 5 +} diff --git a/results/overview_microgrant_honoraria_process.ipynb b/results/overview_microgrant_honoraria_process.ipynb new file mode 100644 index 0000000..b7b8404 --- /dev/null +++ b/results/overview_microgrant_honoraria_process.ipynb @@ -0,0 +1,864 @@ +{ + "cells": [ + { + "cell_type": "markdown", + "id": "b83083ec-1c17-4ee1-9e28-895cd4d66e87", + "metadata": {}, + "source": [ + "# Overview of Microgrant and Honoraria Process" + ] + }, + { + "cell_type": "markdown", + "id": "94060a96-09c2-42f3-b84e-1794ece14a7f", + "metadata": {}, + "source": [ + "To facilitate participation, 89 microgrants have been granted since the third cohort to participants across 23 countries from five continents. The grants range from 5 GBP to 1,020 GBP with a mean request value of 147 GBP. A large proportion of the budget is reserved for participants in LMIC countries. Requests included expenses for electronic items (Headset, Webcam, Battery, Mouse, Modem, Hard Drive, Keyboard - from the most to least requested), internet and caring responsibility costs. \n", + "\n", + "The cohorts also involved 130+ mentors, 90+ speakers, 170+ experts, and 30+ facilitators from 6 continents. Since the third cohort, 135 honoraria were provided to mentors, facilitators, and speakers for 35,700 GBP with an average of 264 GBP per honorarium. " + ] + }, + { + "cell_type": "code", + "execution_count": 1, + "id": "38cbbeb9-8328-497f-a398-a2093745d18f", + "metadata": {}, + "outputs": [], + "source": [ + "from pathlib import Path\n", + "import re\n", + "\n", + "import matplotlib.pyplot as plt\n", + "import pandas as pd\n", + "import pycountry\n", + "import seaborn as sns\n", + "import geopandas" + ] + }, + { + "cell_type": "code", + "execution_count": 2, + "id": "5c490634-7747-4661-9d7a-b8701b1022e9", + "metadata": { + "editable": true, + "slideshow": { + "slide_type": "" + }, + "tags": [] + }, + "outputs": [], + "source": [ + "country_continent_fp = Path(\"../data/country_alpha_2_continent.csv\")\n", + "country_continent_df = (\n", + " pd.read_csv(country_continent_fp, index_col=0)\n", + ")\n", + "COUNTRY_ALPHA2_TO_CONTINENT = country_continent_df.to_dict()['Continent']\n", + "\n", + "def get_continent(country):\n", + " \"\"\"\n", + " Get continent\n", + "\n", + " :param country: name of the country\n", + " \"\"\"\n", + " py_country = pycountry.countries.get(name=country)\n", + " if py_country is None:\n", + " py_country = pycountry.countries.get(common_name=country)\n", + " if py_country is None:\n", + " return \"\"\n", + " else:\n", + " if py_country.alpha_2 not in COUNTRY_ALPHA2_TO_CONTINENT:\n", + " return \"\"\n", + " else:\n", + " return COUNTRY_ALPHA2_TO_CONTINENT[py_country.alpha_2]\n", + "\n", + "\n", + "def get_country_3(country):\n", + " \"\"\"\n", + " Get country code\n", + "\n", + " :param country: name of the country\n", + " \"\"\"\n", + " py_country = pycountry.countries.get(name=country)\n", + " if py_country is None:\n", + " py_country = pycountry.countries.get(common_name=country)\n", + " if py_country is None:\n", + " return \"\"\n", + " else:\n", + " return py_country.alpha_3\n", + "\n", + "\n", + "rate = {\n", + " \"GBP\": 1,\n", + " \"USD\": 0.8,\n", + " \"EUR\": 0.86,\n", + " \"INR\": 0.0095,\n", + " \"XAF\": 0.0013,\n", + " \"ZAR\": 0.042,\n", + " \"ARS\": 0.0022,\n", + " \"\": 1\n", + "}" + ] + }, + { + "cell_type": "markdown", + "id": "60843fff-b176-4acb-b795-27316fa5a72a", + "metadata": { + "editable": true, + "slideshow": { + "slide_type": "" + }, + "tags": [] + }, + "source": [ + "## Microgrants" + ] + }, + { + "cell_type": "code", + "execution_count": 3, + "id": "feced1a0-6042-4478-8055-cba02925cb9c", + "metadata": {}, + "outputs": [], + "source": [ + "def get_item(item):\n", + " new_item = set()\n", + " if \"internet\" in item or \"Internet\" in item or \"Data subscription\" in item or \"mobile data\" in item:\n", + " new_item.add(\"Internet\")\n", + " if \"Book\" in item:\n", + " new_item.add(\"Book\")\n", + " if \"microphone\" in item or \"Microphone\" in item or \"headset\" in item or \"Headset\" in item or \"headphones\" in item or \"earbuds\" in item:\n", + " new_item.add(\"Headset\")\n", + " if \"webcam\" in item or \"Webcam\" in item:\n", + " new_item.add(\"Webcam\")\n", + " if \"marketing and merchandising expenses\" in item:\n", + " new_item.add(\"Marketing\")\n", + " if \"childcare\" in item or \"Childcare\" in item:\n", + " new_item.add(\"Caring\")\n", + " if \"Mouse\" in item:\n", + " new_item.add(\"Mouse\")\n", + " if \"modem\" in item or \"Router\" in item:\n", + " new_item.add(\"Modem\")\n", + " if \"batteries\" in item or \"battery\" in item or \"Powerbank\" in item:\n", + " new_item.add(\"Battery\")\n", + " if \"keyboard\" in item or \"Keyboard\" in item:\n", + " new_item.add(\"Keyboard\")\n", + " if \"new computer\" in item or \"Dell Latitude\" in item:\n", + " new_item.add(\"Laptop\")\n", + " if \"Hard disk\" in item or \"Memory card\" in item or \"hard drive\" in item:\n", + " new_item.add(\"Hardrive\")\n", + " if \"chair\" in item or \"license\" in item or \"prototype\" in item or \"Gasoline\" in item or \"Fuel\" in item or \"implementation of the project\" in item:\n", + " new_item.add(\"Other\")\n", + " return list(new_item)\n", + "\n", + "microg_df = (\n", + " pd.read_csv(Path(\"../data/microgrants.csv\") )\n", + " .fillna(\"\")\n", + " .assign(\n", + " Continent=lambda df: [get_continent(x) for x in df.Country],\n", + " Rate=lambda df: [rate[x] for x in df.Currency],\n", + " Items=lambda df: [get_item(x) for x in df.Item],\n", + " )\n", + " .assign(Cost= lambda df: df.Cost * df.Rate)\n", + " .drop(columns = [\"Currency\", \"Rate\", \"Item\"])\n", + ")" + ] + }, + { + "cell_type": "markdown", + "id": "dff2a9c5-6023-4c65-835d-77aaece3a84b", + "metadata": {}, + "source": [ + "### Costs" + ] + }, + { + "cell_type": "markdown", + "id": "c231b6aa-6405-4d03-a611-09c91c125340", + "metadata": {}, + "source": [ + "Aggregating statistic of microgrant costs" + ] + }, + { + "cell_type": "code", + "execution_count": 4, + "id": "d873cec2-1181-4bb9-8a13-7e904cc2c97c", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "count 89.000000\n", + "mean 146.153343\n", + "std 170.657150\n", + "min 5.600000\n", + "25% 42.740500\n", + "50% 83.260000\n", + "75% 155.790000\n", + "max 1020.000000\n", + "Name: Cost, dtype: float64" + ] + }, + "execution_count": 4, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "microg_df.Cost.describe()" + ] + }, + { + "cell_type": "markdown", + "id": "4ec2acd1-8bdc-4b90-a046-293da2cb41ad", + "metadata": {}, + "source": [ + "Total amount (in GBP)" + ] + }, + { + "cell_type": "code", + "execution_count": 5, + "id": "54ab5fb8-97cd-4e93-8c69-d8fec594265a", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "13007.647500000001" + ] + }, + "execution_count": 5, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "sum(microg_df.Cost)" + ] + }, + { + "cell_type": "markdown", + "id": "923a810a-61ad-4a8a-a496-d912f81b123e", + "metadata": {}, + "source": [ + "### Location" + ] + }, + { + "cell_type": "markdown", + "id": "0ed19bec-20f3-4973-b116-269dca678d31", + "metadata": {}, + "source": [ + "Number of countries" + ] + }, + { + "cell_type": "code", + "execution_count": 6, + "id": "f6a39a1e-8dbf-4a45-ad64-7f4cb5dd98e9", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "23" + ] + }, + "execution_count": 6, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "country_code_df = (\n", + " microg_df\n", + " .drop(columns = [\"Items\", \"Cohort\", \"Continent\"])\n", + " .groupby([\"Country\"])\n", + " .count()\n", + " .rename(columns = {'Cost': 'total'})\n", + " .rename_axis(\"iso_a3\")\n", + " .reset_index()\n", + ")\n", + "len(country_code_df)" + ] + }, + { + "cell_type": "code", + "execution_count": 7, + "id": "6e05e209-4964-49d0-907b-d37432aa31e8", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "" + ] + }, + "execution_count": 7, + "metadata": {}, + "output_type": "execute_result" + }, + { + "data": { + "image/png": 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+ "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "microg_cohort_continent_nb_df = (\n", + " microg_df\n", + " .drop(columns = [\"Items\", \"Country\"])\n", + " .groupby(by=[\"Continent\", \"Cohort\"])\n", + " .count()\n", + ")\n", + "microg_cohort_continent_nb_df = (\n", + " pd.pivot_table(microg_cohort_continent_nb_df, index = 'Continent', columns = 'Cohort', values=\"Cost\")\n", + " .reindex(['Africa', 'Asia', 'Europe', 'North America', 'Oceania', 'South America'])\n", + ")\n", + "\n", + "fig, ax = plt.subplots()\n", + "fig.set_dpi(300)\n", + "(microg_cohort_continent_nb_df\n", + " .transpose()\n", + " .plot.bar(stacked=True, ax=ax, colormap='tab20c'))\n", + "plt.xlabel('Cohorts')\n", + "plt.ylabel('Number of microgrants')\n", + "ax.legend(fontsize='x-small')" + ] + }, + { + "cell_type": "markdown", + "id": "d890bf63-0eee-4c0e-934e-dd648e28fd75", + "metadata": {}, + "source": [ + "### Amount (GBP) per location" + ] + }, + { + "cell_type": "code", + "execution_count": 8, + "id": "e9c524f3-4595-48f9-a810-6e7fe649f7b2", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "" + ] + }, + "execution_count": 8, + "metadata": {}, + "output_type": "execute_result" + }, + { + "data": { + "image/png": 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+ "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "microg_cohort_continent_amount_df = (\n", + " microg_df\n", + " .drop(columns = [\"Items\", \"Country\"])\n", + " .groupby(by=[\"Continent\", \"Cohort\"])\n", + " .sum()\n", + ")\n", + "microg_cohort_continent_amount_df = (\n", + " pd.pivot_table(microg_cohort_continent_amount_df, index = 'Continent', columns = 'Cohort', values=\"Cost\")\n", + " .reindex(['Africa', 'Asia', 'Europe', 'North America', 'Oceania', 'South America'])\n", + ")\n", + "\n", + "fig, ax = plt.subplots()\n", + "fig.set_dpi(300)\n", + "(microg_cohort_continent_amount_df\n", + " .transpose()\n", + " .plot.bar(stacked=True, ax=ax, colormap='tab20c'))\n", + "plt.xlabel('Cohorts')\n", + "plt.ylabel('Amount (GBP)')\n", + "ax.legend(fontsize='x-small')" + ] + }, + { + "cell_type": "markdown", + "id": "506944ef-a379-4a8e-97ea-1bfeeff53283", + "metadata": {}, + "source": [ + "### Items" + ] + }, + { + "cell_type": "code", + "execution_count": 9, + "id": "fe6d54ac-91ad-4907-b468-070d3a5de2bd", + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "
\n", + "\n", + "\n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + " \n", + "
Number
Items
Headset50
Internet40
Webcam28
Battery9
Caring7
Mouse6
Modem5
Other4
Hardrive4
Keyboard3
\n", + "
" + ], + "text/plain": [ + " Number\n", + "Items \n", + "Headset 50\n", + "Internet 40\n", + "Webcam 28\n", + "Battery 9\n", + "Caring 7\n", + "Mouse 6\n", + "Modem 5\n", + "Other 4\n", + "Hardrive 4\n", + "Keyboard 3" + ] + }, + "execution_count": 9, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "item_df = (\n", + " microg_df\n", + " .drop(columns = [\"Continent\", \"Country\", \"Cost\"])\n", + " .explode(\"Items\")\n", + " .groupby(by=\"Items\")\n", + " .count()\n", + " .rename(columns = {\"Cohort\": \"Number\"})\n", + " .sort_values('Number')\n", + ")\n", + "item_df.sort_values(\"Number\", ascending=False).head(10)" + ] + }, + { + "cell_type": "markdown", + "id": "42876e19-bd6c-4412-8434-fbd908eb6ac0", + "metadata": { + "editable": true, + "slideshow": { + "slide_type": "" + }, + "tags": [] + }, + "source": [ + "## Honoraria" + ] + }, + { + "cell_type": "code", + "execution_count": 10, + "id": "365fd415-8b21-40d0-849a-f209c2a7c0a0", + "metadata": {}, + "outputs": [], + "source": [ + "honor_df = (\n", + " pd.read_csv(Path(\"../data/honorarium.csv\") )\n", + " .fillna(\"\")\n", + " .replace(\"Speaker (Expert talk)\", \"speaker\")\n", + " .replace(\"speaker for Open Data\", \"speaker\")\n", + " .replace(\"Speaker\", \"speaker\")\n", + " .replace(\"Mentor\", \"mentor\")\n", + " .replace(\"Call Facilitator\", \"facilitator\")\n", + " .replace(\"Call facilitator\", \"facilitator\")\n", + " .replace(\"Facilitator (co-hosted 2 meetings and Transcription of the three (3) graduation videos\", \"facilitator\")\n", + " .replace(\"Transcription of the videos, preparing guideline for the transcription\", \"facilitator\")\n", + " .replace(\"facilitator role (transcript check - week 2 and 3 cohort calls)\", \"facilitator\")\n", + " .replace(\"facilitator (co-host a session )\", \"facilitator\")\n", + " .replace(\"facilitator (co-host a session)\", \"facilitator\")\n", + " .replace(\"Facilitator - transcription check\", \"facilitator\")\n", + " .replace(\"facilitator; transcription check\", \"facilitator\")\n", + " .replace(\"Video Facilitator\", \"facilitator\")\n", + " .replace(\"transcription check\", \"facilitator\")\n", + " .replace(\"Ally Skills workshop facilitator\", \"facilitator\")\n", + " .replace(\"Facilitator and Speaker\", \"speaker, facilitator\")\n", + " .replace(\"Mentor and expert\", \"mentor\")\n", + " .replace(\"co-facilitator, transcriber\", \"facilitator\")\n", + " .replace(\"Facilitator\", \"facilitator\")\n", + " .assign(\n", + " Continent=lambda df: [get_continent(x) for x in df.Country],\n", + " Rate=lambda df: [rate[x] for x in df.Currency],\n", + " Role=lambda df: df.Role.str.title(),\n", + " )\n", + " .assign(Amount= lambda df: df.Amount * df.Rate)\n", + " .drop(columns = [\"Currency\", \"Rate\"])\n", + ")" + ] + }, + { + "cell_type": "markdown", + "id": "7246c9cb-26eb-495a-9942-2408b35bc04d", + "metadata": {}, + "source": [ + "### Amount" + ] + }, + { + "cell_type": "markdown", + "id": "e3a0dcbe-e482-4e63-8c12-18a45e5b5363", + "metadata": {}, + "source": [ + "Aggregating statistic of microgrant costs" + ] + }, + { + "cell_type": "code", + "execution_count": 11, + "id": "77c03257-6c02-4eb9-862a-66a5a76f2090", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "count 147.000000\n", + "mean 257.654042\n", + "std 129.356245\n", + "min 40.680000\n", + "25% 197.781300\n", + "50% 203.120000\n", + "75% 394.228300\n", + "max 772.090800\n", + "Name: Amount, dtype: float64" + ] + }, + "execution_count": 11, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "honor_df.Amount.describe()" + ] + }, + { + "cell_type": "markdown", + "id": "472b2c9f-dbb3-467b-84ad-d8db4d6764fd", + "metadata": {}, + "source": [ + "Total amount (in GBP)" + ] + }, + { + "cell_type": "code", + "execution_count": 12, + "id": "6bc4ec08-17af-4fb7-8b04-ea48b3674af3", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "37875.1442" + ] + }, + "execution_count": 12, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "sum(honor_df.Amount)" + ] + }, + { + "cell_type": "markdown", + "id": "c15cac97-323a-4c82-9388-2d5899ab2459", + "metadata": {}, + "source": [ + "### Cohort and role" + ] + }, + { + "cell_type": "markdown", + "id": "ae4e95bb-14d4-4b05-af3c-859ac5019a42", + "metadata": {}, + "source": [ + "Number of honoraria" + ] + }, + { + "cell_type": "code", + "execution_count": 13, + "id": "3f50080e-1ec3-483b-846e-b498853c4628", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "" + ] + }, + "execution_count": 13, + "metadata": {}, + "output_type": "execute_result" + }, + { + "data": { + "image/png": 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+ "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "honor_cohort_role_nb_df = (\n", + " honor_df\n", + " .drop(columns = [\"Continent\", \"Country\"])\n", + " .groupby(by=[\"Role\",\"Cohort\"])\n", + " .count()\n", + ")\n", + "honor_cohort_role_nb_df = (\n", + " pd.pivot_table(honor_cohort_role_nb_df, index = 'Role', columns = 'Cohort', values=\"Amount\")\n", + " .reindex(['Facilitator, Mentor', 'Mentor', 'Facilitator', 'Speaker', 'Speaker, Facilitator'])\n", + ")\n", + "\n", + "fig, ax = plt.subplots()\n", + "fig.set_dpi(300)\n", + "(honor_cohort_role_nb_df\n", + " .transpose()\n", + " .plot.bar(stacked=True, ax=ax, colormap='tab20c'))\n", + "plt.xlabel(\"Cohort\")\n", + "plt.ylabel(\"Number of honoraria\")\n", + "ax.legend(fontsize='x-small')" + ] + }, + { + "cell_type": "markdown", + "id": "2aa78434-4049-4a18-914e-520e3cb032c0", + "metadata": {}, + "source": [ + "Amount (GBP)" + ] + }, + { + "cell_type": "code", + "execution_count": 14, + "id": "68ce38e3-1bbd-408b-a6a3-4ff9652e591b", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "" + ] + }, + "execution_count": 14, + "metadata": {}, + "output_type": "execute_result" + }, + { + "data": { + "image/png": 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+ "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "honor_cohort_role_amount_df = (\n", + " honor_df\n", + " .drop(columns = [\"Continent\", \"Country\"])\n", + " .groupby(by=[\"Role\",\"Cohort\"])\n", + " .sum()\n", + ")\n", + "honor_cohort_role_amount_df = (\n", + " pd.pivot_table(honor_cohort_role_amount_df, index = 'Role', columns = 'Cohort', values=\"Amount\")\n", + " .reindex(['Facilitator, Mentor', 'Mentor', 'Facilitator', 'Speaker', 'Speaker, Facilitator'])\n", + ")\n", + "\n", + "\n", + "fig, ax = plt.subplots()\n", + "fig.set_dpi(300)\n", + "(honor_cohort_role_amount_df\n", + " .transpose()\n", + " .plot.bar(stacked=True, ax=ax, colormap='tab20c'))\n", + "plt.xlabel('Cohort')\n", + "plt.ylabel('Amount (GBP)')\n", + "ax.legend(\n", + "# loc='center left',\n", + "# bbox_to_anchor=(1, 0.5),\n", + "# frameon=False,\n", + " fontsize='x-small')" + ] + }, + { + "cell_type": "markdown", + "id": "fb7f2f1e-1bf8-4eb8-a46f-131824469643", + "metadata": {}, + "source": [ + "# Overview figure" + ] + }, + { + "cell_type": "code", + "execution_count": 15, + "id": "dc819e0f-863d-42e9-9fc7-6acb4ab64c6e", + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": 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" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "fig, axs = plt.subplots(nrows=2, ncols=2, dpi=300)\n", + "fig.subplots_adjust(hspace=0.3)\n", + "\n", + "#gs = fig.add_gridspec(2,2)\n", + "ax1 = axs[0, 0]\n", + "ax2 = axs[0, 1]#fig.add_subplot(gs[1, :])\n", + "ax3 = axs[1, 0]#fig.add_subplot(gs[2, 0])\n", + "ax4 = axs[1, 1]#fig.add_subplot(gs[2, 1])\n", + "\n", + "# A\n", + "(microg_cohort_continent_nb_df\n", + " .transpose()\n", + " .plot.bar(stacked=True, ax=ax1, colormap=\"tab20c\", figsize=(20, 10)))\n", + "plt.xlabel(\"Cohorts\")\n", + "plt.ylabel(\"Number of microgrants\")\n", + "ax1.legend(fontsize=\"x-small\")\n", + "ax1.text(-0.15, 1, \"A\", transform=ax1.transAxes, size=20, weight='bold')\n", + "\n", + "# B\n", + "(microg_cohort_continent_amount_df\n", + " .transpose()\n", + " .plot.bar(stacked=True, ax=ax2, colormap=\"tab20c\", figsize=(20, 10)))\n", + "ax2.set_xlabel(\"Cohorts\")\n", + "ax2.set_ylabel(\"Amount (GBP)\")\n", + "ax2.legend(fontsize=\"x-small\")\n", + "ax2.text(-0.15, 1, \"B\", transform=ax2.transAxes, size=20, weight='bold')\n", + "\n", + "# c\n", + "(honor_cohort_role_nb_df\n", + " .transpose()\n", + " .plot.bar(stacked=True, ax=ax3, colormap='tab20c', figsize=(20, 10)))\n", + "ax3.set_xlabel(\"Cohort\")\n", + "ax3.set_ylabel(\"Number of honoraria\")\n", + "ax3.legend(fontsize='x-small')\n", + "ax3.text(-0.15, 1, \"C\", transform=ax3.transAxes, size=20, weight='bold')\n", + "\n", + "# D\n", + "(honor_cohort_role_amount_df\n", + " .transpose()\n", + " .plot.bar(stacked=True, ax=ax4, colormap='tab20c', figsize=(20, 10)))\n", + "ax4.set_xlabel('Cohort')\n", + "ax4.set_ylabel('Amount (GBP)')\n", + "ax4.legend(fontsize='x-small')\n", + "ax4.text(-0.15, 1, \"D\", transform=ax4.transAxes, size=20, weight='bold')\n", + "\n", + "#fig.tight_layout()\n", + "fig.savefig(Path(\"../figures/figure-4-microgrant-honoraria.png\"), bbox_inches='tight')" + ] + } + ], + "metadata": { + "kernelspec": { + "display_name": "Python 3 (ipykernel)", + "language": "python", + "name": "python3" + }, + "language_info": { + "codemirror_mode": { + "name": "ipython", + "version": 3 + }, + "file_extension": ".py", + "mimetype": "text/x-python", + "name": "python", + "nbconvert_exporter": "python", + "pygments_lexer": "ipython3", + "version": "3.12.4" + } + }, + "nbformat": 4, + "nbformat_minor": 5 +} diff --git a/results/participants_mentors_feedback.ipynb b/results/participants_mentors_feedback.ipynb new file mode 100644 index 0000000..4dc9316 --- /dev/null +++ b/results/participants_mentors_feedback.ipynb @@ -0,0 +1,2438 @@ +{ + "cells": [ + { + "cell_type": "markdown", + "id": "cc7242eb-a038-4622-8121-d31ff184fede", + "metadata": {}, + "source": [ + "# Participants' and mentors' feedback to Cohort Survey" + ] + }, + { + "cell_type": "code", + "execution_count": 1, + "id": "e24d1053", + "metadata": {}, + "outputs": [], + "source": [ + "from pathlib import Path\n", + "\n", + "import matplotlib.pyplot as plt\n", + "import pandas as pd\n", + "import seaborn as sns\n", + "\n", + "from textwrap import wrap" + ] + }, + { + "cell_type": "code", + "execution_count": 2, + "id": "1d5b7fb7", + "metadata": {}, + "outputs": [], + "source": [ + "def get_mcq_answer_counts(col, df):\n", + " '''\n", + " Get value counts for answers in multiple choice questions\n", + " \n", + " :param col: column name\n", + " :param df: dataframe\n", + " '''\n", + " # split transform elements as lists\n", + " q = df[col].apply(lambda x: x.split(', '))\n", + " # get unique items & counts\n", + " return q.explode().value_counts()\n", + "\n", + "def get_mcq_possible_answers_counts(col, df, answers):\n", + " '''\n", + " Get value counts for answers in multiple choice questions\n", + " \n", + " :param col: column name\n", + " :param df: dataframe\n", + " :param answers: list of possible answers\n", + " '''\n", + " # split transform elements as lists\n", + " q = df[col].apply(lambda x: x.split(', '))\n", + " # get unique items & counts\n", + " value_counts = q.explode().value_counts()\n", + " # prepare possible answer counts\n", + " answer_counts = {c:0 for c in answers}\n", + " # parse answers to match to possible answers\n", + " other_answers = []\n", + " for a,v in value_counts.items():\n", + " if a in answer_counts:\n", + " answer_counts[a] = v\n", + " else:\n", + " other_answers.append(a)\n", + " answer_counts['Other'] += v\n", + " return answer_counts, other_answers\n", + "\n", + "def get_question_possible_answers_counts(col, df, answers):\n", + " '''\n", + " Get value counts for answers in multiple choice questions\n", + " \n", + " :param col: column name\n", + " :param df: dataframe\n", + " :param answers: list of possible answers\n", + " '''\n", + " # get unique items & counts\n", + " value_counts = df[col].explode().value_counts()\n", + " # prepare possible answer counts\n", + " answer_counts = {c:0 for c in answers}\n", + " # parse answers to match to possible answers\n", + " other_answers = []\n", + " for a,v in value_counts.items():\n", + " if a in answer_counts:\n", + " answer_counts[a] = v\n", + " else:\n", + " print(value_counts)\n", + " other_answers.append(a)\n", + " if 'Other' in answer_counts:\n", + " answer_counts['Other'] += v\n", + " return answer_counts, other_answers" + ] + }, + { + "cell_type": "code", + "execution_count": 3, + "id": "67122d7a", + "metadata": {}, + "outputs": [], + "source": [ + "colors = {\n", + " \"participants\": \"#3182bd\",\n", + " \"participant_colormap\": \"winter\",\n", + " \"mentors\": \"#fd8d3c\",\n", + " \"mentor_colormap\": \"winter\",\n", + "}" + ] + }, + { + "cell_type": "markdown", + "id": "d385865a", + "metadata": {}, + "source": [ + "## Participants’ Feedback to Cohort Survey" + ] + }, + { + "cell_type": "markdown", + "id": "d4b5eac2-618e-40dd-bfbf-652e852bf668", + "metadata": {}, + "source": [ + "96.8% of participants (mean over the 8 cohorts; min = 91.9, max = 100) who responded to the feedback survey (number of answers over the 8 cohorts; mid-cohort: mean=20.5, min=11, max=33; post-cohort: mean=28.6, min=19, max=37) would recommend Open Seeds to others. 77.3% of respondents found that the mentoring calls were always useful (mean over the 8 cohorts; min = 63.6, max=87.1). Regarding the cohort calls, 46.4% of respondents found them always useful (min = 38.4, max=61.1) and 42.1% mostly useful (min = 30.6, max=50). Topics under open science, project management, community interactions, mental health, tooling for collaboration and project design approaches were considered important to the participants’ open science journey. The program helped mentees work openly and to meet most of their project goals they intended to meet during their participation in the cohort. 22% of respondents indicated they would like to return as mentors (min=11.9, max=28.3), 12.2% as experts (min=3, max=21.9), and 9.1% as facilitators (min=0, max=18.9). Around 30% of graduates re-joined the subsequent cohort in different roles. Even when not actively engaging with the ongoing program, participants from previous cohorts remain engaged via the community Slack workspace, sharing opportunities, responding to questions or accessing information shared by others." + ] + }, + { + "cell_type": "markdown", + "id": "943b622b-92a1-4da5-ab58-4029bfdc90f7", + "metadata": {}, + "source": [ + "Statistic of the number of answer for the mid-cohort survey" + ] + }, + { + "cell_type": "code", + "execution_count": 4, + "id": "9894f4fb", + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "
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renaming (see below)\n", + " .replace(\"Tooling and Roadmapping \\(open canvas, project vision etc\\.\\)\", \"Project Roadmapping, Open Canvas\", regex=True)\n", + " .replace(\"Licensing and Code of Conduct\", \"Open Licensing, Code of Conduct\", regex=True)\n", + " .replace(\"GitHub and README files\", \"README, GitHub Introduction\", regex=True)\n", + " .replace(\"Project development: Agile and iterative project management methods & Open Aspects\", \"Agile & Iteractive Project Management\", regex=True)\n", + " .replace(\"Knowledge Dissemination: Preprints, Training and Code Publishing\", \"Open Access Publication, Open Educational Resources, Open Source Software\", regex=True)\n", + " .replace(\"Data management plans, software citation\", \"Open Data\", regex=True)\n", + " .replace(\"Citizen Science\", \"Open Engagement of Social Actors\", regex=True)\n", + " .replace(\"citizen science\", \"Open Engagement of Social Actors\", regex=True)\n", + " .replace(\"Diversity & Inclusion\", \"Equity Diversity & Inclusion (EDI)\", regex=True)\n", + " .replace(\"Mountain of engagement and Community interactions\", \"Mountain of Engagement, Community Interactions\", regex=True)\n", + " .replace(\"Persona and pathways and inviting contributions\", \"Personas & Pathways\", regex=True)\n", + " .replace(\"Mental health, self care, personal ecology\", \"Personal Ecology\", regex=True)\n", + " .replace(\"Ally skills\", \"Ally Skills for Open Leaders\", regex=True)\n", + " .replace(\"Open Leadership: Career Guidance call\", \"Open Leadership in Practice\", regex=True)\n", + " .replace(\"Open office/co-working hours and social calls\", \"Open office/co-working hours and social calls\", regex=True)\n", + " .replace(\"Final presentation rehearsals\", \"Graduation rehearsals\", regex=True)\n", + " .replace(\"Final presentation call \\(open and live streamed\\)\", \"Graduations\", regex=True)\n", + " ## cleaning\n", + " .replace(\"Tooling and Roadmapping \\(\\)\", \"Project Roadmapping, Open Canvas\", regex=True)\n", + " #.replace(\"Tooling and Roadmapping(open canvas, project vision etc.)\", \"Project Roadmapping, Open Canvas\", regex=True)\n", + " .replace(\"Designing for inclusion: Implicit bias\", \"Community Design for Inclusivity\", regex=True)\n", + " .replace(\"Diversity and Inclusion\", \"Equity Diversity & Inclusion (EDI)\", regex=True)\n", + " .replace(\"Preprints\", \"Open Access Publication\", regex=True)\n", + " .replace(\"open protocols\", \"Open Evaluation\", regex=True)\n", + " .replace(\"Knowledge Dissemination: Citizen science\", \"Open Engagement of Social Actors\", regex=True)\n", + " .replace(\"Knowledge Dissemination: open education\", \"Open Educational Resources\", regex=True)\n", + " .replace(\"Knowledge Dissemination: Open Access Publication\", \"Open Access Publication\", regex=True)\n", + " .replace(\"open education\", \"Open Educational Resources\", regex=True)\n", + " .replace(\"Open agenda and social calls\", \"Open office/co-working hours and social calls\", regex=True)\n", + " .replace(\"Career Guidance calls\", \"Open Leadership in Practice\", regex=True)\n", + " .replace(\"Applying FAIR principles on research components\", \"Open Data\", regex=True)\n", + " # q5\n", + " .replace(\"I am not sure yet, but ask me later when you have launched OLS-2\", \"I am not sure yet but ask me later\", regex=True)\n", + " .replace(\"I am not sure yet, but ask me later when you have launched cohort\", \"I am not sure yet but ask me later\", regex=True)\n", + " .replace(\"I am not sure yet, but ask me later\", \"I am not sure yet but ask me later\", regex=True)\n", + " .replace(\"Yes I'd like to return as a collaborator to run an OLS cohort for my network\", \"Yes I'd like to return as a collaborator to run this program in my network\", regex=True)\n", + " .replace(\"No, I would not be able to return to OLS-2\", \"No I would not be able to return\", regex=True)\n", + " .replace(\"No, I would not be able to return to cohort\", \"No I would not be able to return\", regex=True)\n", + " .replace(\"No, I would not be able to return to OLS-4\", \"No I would not be able to return\", regex=True)\n", + " .replace(\"I would not be able to return to OLS-3 but I am hopeful to return to OLS-4 with an active role.\", \"I would take a break but please keep me informed about the next cohort\", regex=True)\n", + " .replace(\"No, but only because I really would not have the time\", \"No I would not be able to return\", regex=True)\n", + " .replace(\"Maybe in OLS-7?\", \"I would take a break but please keep me informed about the next cohort\", regex=True) \n", + " )\n", + " answers[c] = participant_df[c].shape[0]\n", + "pd.DataFrame([answers]).transpose().describe()" + ] + }, + { + "cell_type": "markdown", + "id": "c8f27add", + "metadata": {}, + "source": [ + "#### \"OLS is helping me work openly\"" + ] + }, + { + "cell_type": "code", + "execution_count": 6, + "id": "5c0b7e0c", + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": 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+ "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "participant_mid_q1 = {}\n", + "other_answer = []\n", + "col = \"OLS is helping me work openly\"\n", + "answers = list(range(1, 6))\n", + "for c in participant_mid_df:\n", + " participant_mid_q1[c], oa = get_question_possible_answers_counts(col, participant_mid_df[c], answers)\n", + " other_answer += oa\n", + "participant_mid_q1_df = pd.DataFrame.from_dict(participant_mid_q1)\n", + "participant_mid_q1_df = 100 * participant_mid_q1_df / participant_mid_q1_df.sum()\n", + "\n", + "fig, ax = plt.subplots()\n", + "fig.set_dpi(300)\n", + "participant_mid_q1_df.mean(axis=1).plot.bar(ax=ax, color=colors['participants'])\n", + "plt.ylabel('Mean percentage of answers')\n", + "t = plt.title(col)" + ] + }, + { + "cell_type": "markdown", + "id": "9ce64f00", + "metadata": {}, + "source": [ + "#### \"How was your overall project leadership experience in OLS?\"" + ] + }, + { + "cell_type": "code", + "execution_count": 7, + "id": "acd6a57a", + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": 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+ "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "participant_q1 = {}\n", + "other_answer = []\n", + "col = \"How was your overall project leadership experience in OLS?\"\n", + "answers = [\n", + " \"I was able to meet ALL my goals\",\n", + " \"I was able to meet MOST of my goals\",\n", + " \"I was able work on my project but only PARTIALLY\",\n", + " \"I was NOT able to work on my project idea\",\n", + " \"Other\"]\n", + "for c in participant_df:\n", + " participant_q1[c], oa = get_mcq_possible_answers_counts(col, participant_df[c], answers)\n", + " other_answer += oa\n", + "participant_q1_df = pd.DataFrame.from_dict(participant_q1)\n", + "participant_q1_df = 100 * participant_q1_df / participant_q1_df.sum()\n", + "\n", + "fig, ax = plt.subplots()\n", + "fig.set_dpi(300)\n", + "participant_q1_df.mean(axis=1).plot.barh(ax=ax, color=colors['participants'])\n", + "plt.xlabel('Mean percentage of answers')\n", + "plt.gca().invert_yaxis()\n", + "t = plt.title(col)" + ] + }, + { + "cell_type": "markdown", + "id": "22f0f057", + "metadata": {}, + "source": [ + "#### \"How was your overall experience with the mentor-mentee calls?\"" + ] + }, + { + "cell_type": "code", + "execution_count": 8, + "id": "7394c4fb", + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "
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" + ], + "text/plain": [ + " Yes Maybe No\n", + "count 8.000000 8.000000 8.000000\n", + "mean 96.849306 2.793551 0.357143\n", + "std 3.122352 3.318000 1.010153\n", + "min 91.891892 0.000000 0.000000\n", + "25% 95.072464 0.000000 0.000000\n", + "50% 96.958525 1.612903 0.000000\n", + "75% 100.000000 4.927536 0.000000\n", + "max 100.000000 8.108108 2.857143" + ] + }, + "execution_count": 14, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "participant_q6 = {}\n", + "other_answer = []\n", + "col = \"Would you recommend this program to others?\"\n", + "answers = [\n", + " \"Yes\", \n", + " \"Maybe\",\n", + " \"No\"]\n", + "for c in participant_df:\n", + " participant_q6[c], oa = get_question_possible_answers_counts(col, participant_df[c], answers)\n", + " other_answer += oa\n", + "participant_q6_df = pd.DataFrame.from_dict(participant_q6)\n", + "participant_q6_df = 100 * participant_q6_df / participant_q6_df.sum()\n", + "participant_q6_df.transpose().describe()" + ] + }, + { + "cell_type": "markdown", + "id": "f26f1af3", + "metadata": {}, + "source": [ + "## Mentors’ Feedback to Cohort Survey" + ] + }, + { + "cell_type": "markdown", + "id": "f35c9596-5ca2-42ce-ba0f-dd3c5eaa3c4e", + "metadata": {}, + "source": [ + "Mentors in Open Seeds are offered onboarding, training, templates for guiding their meetings and private Slack channels to interact with each other. 50.8% of mentors (mean over the 8 cohorts; min=30.8, max=70.4) who answered the feedback survey (over the 8 cohort, mean=20, min=8, max=26) reported that they found the mentor training and support offered in the cohort adequate and 32.8% reported that they enjoyed their experience and did not find their experience overwhelming (min=23.1, max=41.5). Only about 5% reported feeling overwhelmed by their responsibilities with many providing helpful recommendations to improve support and training to help better manage their responsibilities in Open Seeds. Around 80% of the mentors found the mentoring calls with their mentees mostly or always constructive and more than 50% thought their mentees were able to engage effectively with OLS throughout the program. 50% of mentors expressed their interest in returning as experts, speakers or mentors, with most of them effectively coming back in one of the roles in the subsequent cohort." + ] + }, + { + "cell_type": "markdown", + "id": "4b7201a3-6f95-46cd-a7a4-3d7d2859a01d", + "metadata": {}, + "source": [ + "Statistic of the number of answer" + ] + }, + { + "cell_type": "code", + "execution_count": 15, + "id": "4c4e8a71", + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "
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"25% 0.000000 \n", + "50% 0.000000 \n", + "75% 0.000000 \n", + "max 2.439024 \n", + "\n", + " I did not feel supported as a mentor Other \n", + "count 7.0 7.000000 \n", + "mean 0.0 11.057888 \n", + "std 0.0 8.169870 \n", + "min 0.0 0.000000 \n", + "25% 0.0 5.795455 \n", + "50% 0.0 12.121212 \n", + "75% 0.0 15.308087 \n", + "max 0.0 23.076923 " + ] + }, + "execution_count": 16, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "mentor_q1 = {}\n", + "other_answer = []\n", + "col = \"How were your overall mentorship training and support experience in OLS?\"\n", + "answers = [\n", + " \"I felt supported as a mentor and the training offered in the cohort was adequate\",\n", + " \"I felt supported as a mentor but the training offered in the cohort can be improved\",\n", + " \"I enjoyed my participation and did not find the experience overwhelming\",\n", + " \"I found the mentorship responsibilities overwhelming\",\n", + " \"I did not feel supported as a mentor\",\n", + " \"Other\"]\n", + "for c in mentor_df:\n", + " mentor_q1[c], oa = get_mcq_possible_answers_counts(col, mentor_df[c], answers)\n", + " other_answer += oa\n", + "mentor_q1_df = pd.DataFrame.from_dict(mentor_q1)\n", + "mentor_q1_df = 100 * mentor_q1_df / mentor_q1_df.sum()\n", + "mentor_q1_df.transpose().describe()" + ] + }, + { + "cell_type": "code", + "execution_count": 17, + "id": "53f8498a", + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": 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" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "fig, ax = plt.subplots()\n", + "fig.set_dpi(300)\n", + "mentor_q1_df.mean(axis=1).plot.barh(ax=ax, color=colors['mentors'])\n", + "plt.xlabel('Mean percentage of answers')\n", + "plt.gca().invert_yaxis()\n", + "t = plt.title(col)" + ] + }, + { + "cell_type": "markdown", + "id": "21cd134e", + "metadata": {}, + "source": [ + "#### \"How was your overall experience with the mentoring calls with your mentee?\"" + ] + }, + { + "cell_type": "code", + "execution_count": 18, + "id": "b2e74e66", + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "
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Mentoring calls were not structured or constructiveMentoring calls were somewhat constructiveMentoring calls were mostly constructiveMentoring calls were always constructive
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" + ], + "text/plain": [ + " Mentoring calls were not structured or constructive \\\n", + "count 7.000000 \n", + "mean 2.929332 \n", + "std 3.036331 \n", + "min 0.000000 \n", + "25% 0.000000 \n", + "50% 3.703704 \n", + "75% 4.554656 \n", + "max 7.692308 \n", + "\n", + " Mentoring calls were somewhat constructive \\\n", + "count 7.000000 \n", + "mean 17.534526 \n", + "std 4.328734 \n", + "min 9.523810 \n", + "25% 15.740741 \n", + "50% 19.230769 \n", + "75% 20.141700 \n", + "max 22.222222 \n", + "\n", + " Mentoring calls were mostly constructive \\\n", + "count 7.000000 \n", + "mean 41.428816 \n", + "std 13.983580 \n", + "min 15.384615 \n", + "25% 37.037037 \n", + "50% 47.368421 \n", + "75% 48.809524 \n", + "max 55.555556 \n", + "\n", + " Mentoring calls were always constructive \n", + "count 7.000000 \n", + "mean 38.107326 \n", + "std 12.836553 \n", + "min 26.315789 \n", + "25% 27.350427 \n", + "50% 33.333333 \n", + "75% 47.354497 \n", + "max 57.692308 " + ] + }, + "execution_count": 18, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "mentor_q2 = {}\n", + "other_answer = []\n", + "col = \"How was your overall experience with the mentoring calls with your mentee?\"\n", + "answers = [\n", + " \"Mentoring calls were not structured or constructive\",\n", + " \"Mentoring calls were somewhat constructive\",\n", + " \"Mentoring calls were mostly constructive\",\n", + " \"Mentoring calls were always constructive\"]\n", + "for c in mentor_df:\n", + " mentor_q2[c], oa = get_mcq_possible_answers_counts(col, mentor_df[c], answers)\n", + " other_answer += oa\n", + "mentor_q2_df = pd.DataFrame.from_dict(mentor_q2)\n", + "mentor_q2_df = 100 * mentor_q2_df / mentor_q2_df.sum()\n", + "mentor_q2_df.transpose().describe()" + ] + }, + { + "cell_type": "markdown", + "id": "babc7b53", + "metadata": {}, + "source": [ + "#### \"Would you be interested in returning to the next cohort as a mentor or expert, and/or join our steering committee?\"" + ] + }, + { + "cell_type": "code", + "execution_count": 19, + "id": "3ea603ec", + "metadata": { + "scrolled": true + }, + "outputs": [ + { + "data": { + "text/html": [ + "
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Yes I'd like to return as a mentorYes I'd like to return as an expertYes I'd like to return as a collaborator to run this program in my networkYes I am interesting in joining the OLS steering committeeI am not sure yet but ask me laterI would take a break but please keep me informed about the next cohortNo I would not be able to returnOther
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" + ], + "text/plain": [ + " Yes I'd like to return as a mentor \\\n", + "count 7.000000 \n", + "mean 28.667544 \n", + "std 14.156554 \n", + "min 1.234568 \n", + "25% 25.000000 \n", + "50% 29.032258 \n", + "75% 37.980769 \n", + "max 44.444444 \n", + "\n", + " Yes I'd like to return as an expert \\\n", + "count 7.000000 \n", + "mean 20.588996 \n", + "std 11.023938 \n", + "min 1.234568 \n", + "25% 15.972222 \n", + "50% 22.916667 \n", + "75% 27.884615 \n", + "max 32.258065 \n", + "\n", + " Yes I'd like to return as a collaborator to run this program in my network \\\n", + "count 7.000000 \n", + "mean 3.971208 \n", + "std 4.457430 \n", + "min 0.000000 \n", + "25% 0.000000 \n", + "50% 3.225806 \n", + "75% 6.730769 \n", + "max 11.111111 \n", + "\n", + " Yes I am interesting in joining the OLS steering committee \\\n", + "count 7.000000 \n", + "mean 5.848005 \n", + "std 8.034182 \n", + "min 0.000000 \n", + "25% 0.000000 \n", + "50% 0.000000 \n", + "75% 10.790598 \n", + "max 19.354839 \n", + "\n", + " I am not sure yet but ask me later \\\n", + "count 7.000000 \n", + "mean 7.448518 \n", + "std 7.333851 \n", + "min 0.000000 \n", + "25% 3.001792 \n", + "50% 6.250000 \n", + "75% 8.831909 \n", + "max 22.222222 \n", + "\n", + " I would take a break but please keep me informed about the next cohort \\\n", + "count 7.000000 \n", + "mean 6.179595 \n", + "std 10.489760 \n", + "min 0.000000 \n", + "25% 0.000000 \n", + "50% 2.083333 \n", + "75% 6.003584 \n", + "max 29.166667 \n", + "\n", + " No I would not be able to return Other \n", + "count 7.000000 7.000000 \n", + "mean 0.396825 26.899308 \n", + "std 1.049901 28.852860 \n", + "min 0.000000 6.451613 \n", + "25% 0.000000 10.790598 \n", + "50% 0.000000 22.222222 \n", + "75% 0.000000 23.958333 \n", + "max 2.777778 90.123457 " + ] + }, + "execution_count": 19, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "mentor_q3 = {}\n", + "other_answer = []\n", + "col = \"Would you be interested in returning to the next cohort as a mentor or expert, and/or join our steering committee?\"\n", + "answers = [\n", + " \"Yes I'd like to return as a mentor\",\n", + " \"Yes I'd like to return as an expert\",\n", + " \"Yes I'd like to return as a collaborator to run this program in my network\",\n", + " \"Yes I am interesting in joining the OLS steering committee\",\n", + " \"I am not sure yet but ask me later\",\n", + " \"I would take a break but please keep me informed about the next cohort\",\n", + " \"No I would not be able to return\",\n", + " \"Other\"]\n", + "for c in mentor_df:\n", + " mentor_q3[c], oa = get_mcq_possible_answers_counts(col, mentor_df[c], answers)\n", + " other_answer += oa\n", + "mentor_q3_df = pd.DataFrame.from_dict(mentor_q3)\n", + "mentor_q3_df = 100 * mentor_q3_df / mentor_q3_df.sum()\n", + "mentor_q3_df.transpose().describe()" + ] + }, + { + "cell_type": "markdown", + "id": "60c00d20", + "metadata": {}, + "source": [ + "#### \"Do you think your mentee was able to effectively engage with OLS throughout the program?\"" + ] + }, + { + "cell_type": "code", + "execution_count": 20, + "id": "ccead05d", + "metadata": {}, + "outputs": [ + { + "name": "stdout", + "output_type": "stream", + "text": [ + "Do you think your mentee was able to effectively engage with OLS throughout the program?\n", + "Yes, they were able to engage 9\n", + "No, they had difficulty engaging or attending calls 6\n", + "I think they were able to engage most of the time. They often had to catch up between the calls and what they effectively used in their project. 1\n", + "I think Arent was very much capable to effectively engage but I also received his feedback that he wished he had more time to really get the most out of it. I guess that's life :) Gill had a very busy time with teaching and the project changed focus in the middle of OLS so it was a bit more rough there. I think she managed to get at least something out of the programme but she has also been out of touch over christmas so I'm not sure if she's managing to graduate. I think in general people are just worn out over the pandemic: I myself was also not at my best in December and feel a bit more recharged right now. 1\n", + "I think she was able to engage but did not attend a number of cohort calls, My guess (but take this as my hypothesis) is that thai partly related to being busy, and partly to the nature of the project, which involved organizing an event and thus some of the topics of the cohort calls would not have been applicable. 1\n", + "Name: count, dtype: int64\n", + "Do you think your mentee was able to effectively engage with OLS throughout the program?\n", + "Yes, they were able to engage 9\n", + "No, they had difficulty engaging or attending calls 6\n", + "I think they were able to engage most of the time. They often had to catch up between the calls and what they effectively used in their project. 1\n", + "I think Arent was very much capable to effectively engage but I also received his feedback that he wished he had more time to really get the most out of it. I guess that's life :) Gill had a very busy time with teaching and the project changed focus in the middle of OLS so it was a bit more rough there. I think she managed to get at least something out of the programme but she has also been out of touch over christmas so I'm not sure if she's managing to graduate. I think in general people are just worn out over the pandemic: I myself was also not at my best in December and feel a bit more recharged right now. 1\n", + "I think she was able to engage but did not attend a number of cohort calls, My guess (but take this as my hypothesis) is that thai partly related to being busy, and partly to the nature of the project, which involved organizing an event and thus some of the topics of the cohort calls would not have been applicable. 1\n", + "Name: count, dtype: int64\n", + "Do you think your mentee was able to effectively engage with OLS throughout the program?\n", + "Yes, they were able to engage 9\n", + "No, they had difficulty engaging or attending calls 6\n", + "I think they were able to engage most of the time. They often had to catch up between the calls and what they effectively used in their project. 1\n", + "I think Arent was very much capable to effectively engage but I also received his feedback that he wished he had more time to really get the most out of it. I guess that's life :) Gill had a very busy time with teaching and the project changed focus in the middle of OLS so it was a bit more rough there. I think she managed to get at least something out of the programme but she has also been out of touch over christmas so I'm not sure if she's managing to graduate. I think in general people are just worn out over the pandemic: I myself was also not at my best in December and feel a bit more recharged right now. 1\n", + "I think she was able to engage but did not attend a number of cohort calls, My guess (but take this as my hypothesis) is that thai partly related to being busy, and partly to the nature of the project, which involved organizing an event and thus some of the topics of the cohort calls would not have been applicable. 1\n", + "Name: count, dtype: int64\n", + "Do you think your mentee was able to effectively engage with OLS throughout the program?\n", + "Yes, they were able to engage 14\n", + "No, they had difficulty engaging or attending calls 4\n", + "They were engaged with mentor calls, didn't manage to attend as many cohort calls as they wanted I think and probably also struggled with time to dig into all the material. 1\n", + "Perhaps not all members of the team but most of them 1\n", + " 1\n", + "Name: count, dtype: int64\n", + "Do you think your mentee was able to effectively engage with OLS throughout the program?\n", + "Yes, they were able to engage 14\n", + "No, they had difficulty engaging or attending calls 4\n", + "They were engaged with mentor calls, didn't manage to attend as many cohort calls as they wanted I think and probably also struggled with time to dig into all the material. 1\n", + "Perhaps not all members of the team but most of them 1\n", + " 1\n", + "Name: count, dtype: int64\n", + "Do you think your mentee was able to effectively engage with OLS throughout the program?\n", + "Yes, they were able to engage 14\n", + "No, they had difficulty engaging or attending calls 4\n", + "They were engaged with mentor calls, didn't manage to attend as many cohort calls as they wanted I think and probably also struggled with time to dig into all the material. 1\n", + "Perhaps not all members of the team but most of them 1\n", + " 1\n", + "Name: count, dtype: int64\n", + "Do you think your mentee was able to effectively engage with OLS throughout the program?\n", + "Yes, they were able to engage 7\n", + "No, they had difficulty engaging or attending calls 7\n", + "I think Alden struggled in the beginning to keep up with all the homework, especially since her project wasn't actually funded yet so she was limited in what she could actually implement during the OLS program. 1\n", + "Did not manage to engage with Mahmood Usman, so not sure. 1\n", + "she couldn't engage as much as she wanted 1\n", + "I think they were able to engage enough with the materials, a little less with th community per se becasue of language barriers 1\n", + "no, he had personal difficulty engaging or attending calls related to his VISA 1\n", + "Name: count, dtype: int64\n", + "Do you think your mentee was able to effectively engage with OLS throughout the program?\n", + "Yes, they were able to engage 7\n", + "No, they had difficulty engaging or attending calls 7\n", + "I think Alden struggled in the beginning to keep up with all the homework, especially since her project wasn't actually funded yet so she was limited in what she could actually implement during the OLS program. 1\n", + "Did not manage to engage with Mahmood Usman, so not sure. 1\n", + "she couldn't engage as much as she wanted 1\n", + "I think they were able to engage enough with the materials, a little less with th community per se becasue of language barriers 1\n", + "no, he had personal difficulty engaging or attending calls related to his VISA 1\n", + "Name: count, dtype: int64\n", + "Do you think your mentee was able to effectively engage with OLS throughout the program?\n", + "Yes, they were able to engage 7\n", + "No, they had difficulty engaging or attending calls 7\n", + "I think Alden struggled in the beginning to keep up with all the homework, especially since her project wasn't actually funded yet so she was limited in what she could actually implement during the OLS program. 1\n", + "Did not manage to engage with Mahmood Usman, so not sure. 1\n", + "she couldn't engage as much as she wanted 1\n", + "I think they were able to engage enough with the materials, a little less with th community per se becasue of language barriers 1\n", + "no, he had personal difficulty engaging or attending calls related to his VISA 1\n", + "Name: count, dtype: int64\n", + "Do you think your mentee was able to effectively engage with OLS throughout the program?\n", + "Yes, they were able to engage 7\n", + "No, they had difficulty engaging or attending calls 7\n", + "I think Alden struggled in the beginning to keep up with all the homework, especially since her project wasn't actually funded yet so she was limited in what she could actually implement during the OLS program. 1\n", + "Did not manage to engage with Mahmood Usman, so not sure. 1\n", + "she couldn't engage as much as she wanted 1\n", + "I think they were able to engage enough with the materials, a little less with th community per se becasue of language barriers 1\n", + "no, he had personal difficulty engaging or attending calls related to his VISA 1\n", + "Name: count, dtype: int64\n", + "Do you think your mentee was able to effectively engage with OLS throughout the program?\n", + "Yes, they were able to engage 7\n", + "No, they had difficulty engaging or attending calls 7\n", + "I think Alden struggled in the beginning to keep up with all the homework, especially since her project wasn't actually funded yet so she was limited in what she could actually implement during the OLS program. 1\n", + "Did not manage to engage with Mahmood Usman, so not sure. 1\n", + "she couldn't engage as much as she wanted 1\n", + "I think they were able to engage enough with the materials, a little less with th community per se becasue of language barriers 1\n", + "no, he had personal difficulty engaging or attending calls related to his VISA 1\n", + "Name: count, dtype: int64\n", + "Do you think your mentee was able to effectively engage with OLS throughout the program?\n", + "Yes, they were able to engage 19\n", + "No, they had difficulty engaging or attending calls 6\n", + "They had difficulty engaging with the mentorship side of the program but they were very active attending the community calls. 1\n", + "Name: count, dtype: int64\n" + ] + } + ], + "source": [ + "mentor_q4 = {}\n", + "other_answer = []\n", + "col = \"Do you think your mentee was able to effectively engage with OLS throughout the program?\"\n", + "answers = [\n", + " \"Yes, they were able to engage\",\n", + " \"No, they had difficulty engaging or attending calls\",\n", + " \"Other\"]\n", + "for c in mentor_df:\n", + " if col in mentor_df[c]:\n", + " mentor_q4[c], oa = get_question_possible_answers_counts(col, mentor_df[c], answers)\n", + " other_answer += oa\n", + "mentor_q4_df = pd.DataFrame.from_dict(mentor_q4)\n", + "mentor_q4_df = 100 * mentor_q4_df / mentor_q4_df.sum()" + ] + }, + { + "cell_type": "markdown", + "id": "3998a4ca-c016-4e5e-972c-e8e244e5aed4", + "metadata": {}, + "source": [ + "# Overview figure" + ] + }, + { + "cell_type": "code", + "execution_count": 21, + "id": "c089299c-e5b3-4ec1-87cb-b2db388eb935", + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": 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" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "fig = plt.figure(dpi=300)\n", + "\n", + "gs = fig.add_gridspec(2,2)\n", + "ax1 = fig.add_subplot(gs[0, 0])\n", + "ax2 = fig.add_subplot(gs[0, 1])\n", + "ax3 = fig.add_subplot(gs[1, :])\n", + "\n", + "# A\n", + "participant_q1_df.mean(axis=1).plot.barh(\n", + " ax=ax1,\n", + " color=colors['participants'],\n", + " title=\"How was your overall project leadership experience in OLS?\",\n", + " figsize=(20, 10)\n", + ")\n", + "ax1.set_xlabel('Mean percentage of answers')\n", + "ax1.invert_yaxis()\n", + "ax1.text(-0.15, 1, \"A\", transform=ax1.transAxes, size=20, weight='bold')\n", + "\n", + "# B\n", + "col = \"OLS is helping me work openly\"\n", + "participant_mid_q1_df.mean(axis=1).plot.barh(\n", + " ax=ax2,\n", + " color=colors['participants'],\n", + " title=\"OLS is helping me work openly\",\n", + " figsize=(20, 10),\n", + " rot=0\n", + ")\n", + "ax2.set_xlabel('Mean percentage of answers')\n", + "ax2.set_ylabel('Score')\n", + "ax2.text(-0.15, 1, \"B\", transform=ax2.transAxes, size=20, weight='bold')\n", + "\n", + "# c\n", + "mentor_q1_df.index = [\"\\n\".join(wrap(x, 50)) for x in mentor_q1_df.index]\n", + "mentor_q1_df.mean(axis=1).plot.barh(\n", + " ax=ax3,\n", + " color=colors['mentors'],\n", + " title=\"How were your overall mentorship training and support experience in OLS?\",\n", + " figsize=(20, 10)\n", + ")\n", + "ax3.set_xlabel('Mean percentage of answers')\n", + "ax3.invert_yaxis()\n", + "ax3.text(-0.07, 1.1, \"C\", transform=ax3.transAxes, size=20, weight='bold')\n", + "\n", + "#fig.tight_layout()\n", + "fig.subplots_adjust(hspace = 0.4)\n", + "fig.savefig(Path(\"../figures/figure-5-feedback.png\"), bbox_inches='tight')" + ] + } + ], + "metadata": { + "kernelspec": { + "display_name": "Python 3 (ipykernel)", + "language": "python", + "name": "python3" + }, + "language_info": { + "codemirror_mode": { + "name": "ipython", + "version": 3 + }, + "file_extension": ".py", + "mimetype": "text/x-python", + "name": "python", + "nbconvert_exporter": "python", + "pygments_lexer": "ipython3", + "version": "3.12.4" + }, + "vscode": { + "interpreter": { + "hash": "31f2aee4e71d21fbe5cf8b01ff0e069b9275f58929596ceb00d14d90e3e16cd6" + } + } + }, + "nbformat": 4, + "nbformat_minor": 5 +} diff --git a/results/results.md b/results/results.md new file mode 100644 index 0000000..8add376 --- /dev/null +++ b/results/results.md @@ -0,0 +1,3 @@ +# Results + +Since 2020, the OLS community has run 8 cohorts successfully with the engagement of over 500 international community members. Cohorts 1-8 include 386 mentees, 138 mentors, 170 experts, 99 guest speakers, and 30 facilitators from 55 countries. Projects span multiple disciplines, such XXX… . Each cohort has contributed to Open Seeds' rich collection of training materials along with an extensive video library (230+ videos), accessible openly under the CC-BY 4.0 license. diff --git a/results/training_materials_video_library.ipynb b/results/training_materials_video_library.ipynb new file mode 100644 index 0000000..04984d4 --- /dev/null +++ b/results/training_materials_video_library.ipynb @@ -0,0 +1,770 @@ +{ + "cells": [ + { + "cell_type": "markdown", + "id": "c67837a6-d5e1-469d-8f5b-eaf1dcf013f3", + "metadata": {}, + "source": [ + "# Training Materials and a Video Library" + ] + }, + { + "cell_type": "markdown", + "id": "c3616889-4ccb-42ee-acaa-b1b1989d115f", + "metadata": {}, + "source": [ + "By the end of the 8th cohort, a total of 81 cohort calls (80 hours of training delivery, not including group discussions) have taken place during which 124 speakers gave 233 talks on the different topics planned in the curriculum (Figure 1B). Call recordings on the OLS YouTube channel received over 7,300 views (August 2024). They are embedded in the cohort schedule page on the website together with call metadata, learning objectives following Bloom’s taxonomy, details about speakers, and links to slide decks.\n", + "\n", + "To make this Open Education Material easier to find and reuse, a video library of the talks has been created and made available online at [https://openlifesci.org/openseeds/library.html](https://openlifesci.org/openseeds/library.html). The 233 videos have been annotated and organized into 5 topics (\"Tooling for Project Design\", \"Tooling for Collaboration\", \"Open Science\", \"Project, Community & Personal Management\", \"Open Leadership\") and 32 subtopics. These talks and the calls are also listed on TeSS, the ELIXIR Training Registry and Catalog [(Beard et al. 2020)](https://www.zotero.org/google-docs/?YP7C60)." + ] + }, + { + "cell_type": "code", + "execution_count": 1, + "id": "61f52b10", + "metadata": {}, + "outputs": [], + "source": [ + "import matplotlib.pyplot as plt\n", + "import pandas as pd\n", + "from pathlib import Path\n", + "import yt_dlp" + ] + }, + { + "cell_type": "code", + "execution_count": 2, + "id": "8a01525e", + "metadata": {}, + "outputs": [], + "source": [ + "library_df = pd.read_csv(Path(\"../data/library.csv\"), index_col=0, na_filter= False)" + ] + }, + { + "cell_type": "markdown", + "id": "0b7e606a-ffaa-4dae-b9be-971fc2722ec9", + "metadata": {}, + "source": [ + "Number of cohort calls with videos" + ] + }, + { + "cell_type": "code", + "execution_count": 3, + "id": "5ff2d4c0-bacf-4ffd-a1b1-02cdab2d6a5f", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "81" + ] + }, + "execution_count": 3, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "len(library_df.groupby(\"date\").count())" + ] + }, + { + "cell_type": "markdown", + "id": "60bcfa69-6f97-4b1f-aac0-61690769993d", + "metadata": {}, + "source": [ + "Number of talks" + ] + }, + { + "cell_type": "code", + "execution_count": 4, + "id": "e4d7fb69-b1e9-44fe-91e9-dcdb872e252a", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "236" + ] + }, + "execution_count": 4, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "len(library_df)" + ] + }, + { + "cell_type": "markdown", + "id": "26a06af9-7268-499c-81e9-5fedeaf43ff7", + "metadata": {}, + "source": [ + "Number of speakers" + ] + }, + { + "cell_type": "code", + "execution_count": 5, + "id": "1ae27d96", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "124" + ] + }, + "execution_count": 5, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "len(library_df.groupby(by=\"speakers\").count())" + ] + }, + { + "cell_type": "markdown", + "id": "aeff1132-a5b7-4e52-9563-3e6027ac5a24", + "metadata": {}, + "source": [ + "The video library contains available videos from talks in Open Seeds cohort calls. " + ] + }, + { + "cell_type": "markdown", + "id": "4360994c-9d82-4400-a720-335417ac866d", + "metadata": {}, + "source": [ + "Tags and subtags" + ] + }, + { + "cell_type": "code", + "execution_count": 6, + "id": "edd5cbcf-9f29-4f6f-9814-4146fe71fa1e", + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "
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Total
tagsubtag
Not sortedNot tagged8
Open LeadershipOpen Leadership in Practice30
Open Life ScienceOLS Introduction12
Open ScienceOpen Access Publication8
Open Data14
Open Educational Resources7
Open Engagement of Social Actors7
Open Evaluation5
Open Hardware6
Open Science Infrastructures3
Open Science Introduction3
Open Source Software15
Openness to Diversity of Knowledge3
Project, Community & Personal ManagementAgile & Iteractive Project Management6
Ally Skills for Open Leaders4
Community Design for Inclusivity1
Community Interactions6
Equity, Diversity and Inclusion (EDI)6
Mountain of Engagement8
Personal Ecology9
Personas & Pathways7
Tooling for CollaborationCode Review3
Code of Conduct8
GitHub Introduction6
Good Coding Practices3
Open Licensing8
Package Management1
README8
Setting up a project3
Tooling for Project DesignOpen Canvas13
Project Roadmapping13
Tooling for Project Design Introduction2
\n", + "
" + ], + "text/plain": [ + " Total\n", + "tag subtag \n", + "Not sorted Not tagged 8\n", + "Open Leadership Open Leadership in Practice 30\n", + "Open Life Science OLS Introduction 12\n", + "Open Science Open Access Publication 8\n", + " Open Data 14\n", + " Open Educational Resources 7\n", + " Open Engagement of Social Actors 7\n", + " Open Evaluation 5\n", + " Open Hardware 6\n", + " Open Science Infrastructures 3\n", + " Open Science Introduction 3\n", + " Open Source Software 15\n", + " Openness to Diversity of Knowledge 3\n", + "Project, Community & Personal Management Agile & Iteractive Project Management 6\n", + " Ally Skills for Open Leaders 4\n", + " Community Design for Inclusivity 1\n", + " Community Interactions 6\n", + " Equity, Diversity and Inclusion (EDI) 6\n", + " Mountain of Engagement 8\n", + " Personal Ecology 9\n", + " Personas & Pathways 7\n", + "Tooling for Collaboration Code Review 3\n", + " Code of Conduct 8\n", + " GitHub Introduction 6\n", + " Good Coding Practices 3\n", + " Open Licensing 8\n", + " Package Management 1\n", + " README 8\n", + " Setting up a project 3\n", + "Tooling for Project Design Open Canvas 13\n", + " Project Roadmapping 13\n", + " Tooling for Project Design Introduction 2" + ] + }, + "execution_count": 6, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "tag_df = (\n", + " library_df\n", + " .groupby([\"tag\", \"subtag\"])\n", + " .count()\n", + " .drop(columns=[\"title\", \"date\", \"cohort\", \"slides\", \"speakers\"])\n", + " .rename(columns={\"recording\": \"total\"})\n", + " .rename(columns=str.capitalize)\n", + ")\n", + "tag_df" + ] + }, + { + "attachments": {}, + "cell_type": "markdown", + "id": "1671c6b5", + "metadata": {}, + "source": [ + "# YouTube stats" + ] + }, + { + "cell_type": "markdown", + "id": "216f96ec-cdaf-4848-ba16-cbac973b6afb", + "metadata": {}, + "source": [ + "All videos from Open Seeds calls are uploaded on the [OLS YouTube channel](https://www.youtube.com/c/OpenLifeSci) " + ] + }, + { + "cell_type": "code", + "execution_count": 7, + "id": "6e8d7b5b-a0f3-4f1b-98c0-8f164d37b77a", + "metadata": { + "scrolled": true + }, + "outputs": [], + "source": [ + "%%capture\n", + "ydl_opts = {}\n", + "URL = \"https://www.youtube.com/c/OpenLifeSci\"\n", + "with yt_dlp.YoutubeDL(ydl_opts) as ydl:\n", + " info = ydl.extract_info(URL, download=False)\n", + " # ydl.sanitize_info makes the info json-serializable\n", + " channel_content = ydl.sanitize_info(info)\n", + "\n", + "# extract video information\n", + "videos = []\n", + "for v in channel_content['entries'][0]['entries']:\n", + " videos.append({key:v[key] for key in ['title', 'duration', 'view_count']})\n", + "\n", + "yt_stat_df = (\n", + " pd.DataFrame(videos)\n", + " .assign(Duration=lambda df: df.duration/60)\n", + " .drop(columns=[\"duration\"])\n", + " .rename(columns=str.capitalize)\n", + ")\n", + "\n", + "openseeds_yt_df = yt_stat_df.query(\"Title.str.contains('OLS-')\",engine=\"python\")" + ] + }, + { + "cell_type": "markdown", + "id": "7594fe48", + "metadata": {}, + "source": [ + "Number of hours of Open Seeds videos on the YouTube channel" + ] + }, + { + "cell_type": "code", + "execution_count": 8, + "id": "30c7b7e8-9fa0-4416-b767-90154adc5ce4", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "80.73777777777778" + ] + }, + "execution_count": 8, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "sum(openseeds_yt_df.Duration)/60" + ] + }, + { + "cell_type": "markdown", + "id": "e4e3449b-f3ca-4227-b166-f64fd6297459", + "metadata": {}, + "source": [ + "Total number of view of the Open Seeds videos on the YouTube channel" + ] + }, + { + "cell_type": "code", + "execution_count": 9, + "id": "dd5fa317", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "7298" + ] + }, + "execution_count": 9, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "sum(openseeds_yt_df.View_count)" + ] + }, + { + "cell_type": "markdown", + "id": "9f756448", + "metadata": {}, + "source": [ + "## Video library" + ] + }, + { + "cell_type": "code", + "execution_count": 10, + "id": "00851dde-09bc-45dd-a23f-d550a99589f5", + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "
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Total
tagsubtag
Not sortedNot tagged8
Open LeadershipOpen Leadership in Practice30
Open Life ScienceOLS Introduction12
Open ScienceOpen Access Publication8
Open Data14
Open Educational Resources7
Open Engagement of Social Actors7
Open Evaluation5
Open Hardware6
Open Science Infrastructures3
Open Science Introduction3
Open Source Software15
Openness to Diversity of Knowledge3
Project, Community & Personal ManagementAgile & Iteractive Project Management6
Ally Skills for Open Leaders4
Community Design for Inclusivity1
Community Interactions6
Equity, Diversity and Inclusion (EDI)6
Mountain of Engagement8
Personal Ecology9
Personas & Pathways7
Tooling for CollaborationCode Review3
Code of Conduct8
GitHub Introduction6
Good Coding Practices3
Open Licensing8
Package Management1
README8
Setting up a project3
Tooling for Project DesignOpen Canvas13
Project Roadmapping13
Tooling for Project Design Introduction2
\n", + "
" + ], + "text/plain": [ + " Total\n", + "tag subtag \n", + "Not sorted Not tagged 8\n", + "Open Leadership Open Leadership in Practice 30\n", + "Open Life Science OLS Introduction 12\n", + "Open Science Open Access Publication 8\n", + " Open Data 14\n", + " Open Educational Resources 7\n", + " Open Engagement of Social Actors 7\n", + " Open Evaluation 5\n", + " Open Hardware 6\n", + " Open Science Infrastructures 3\n", + " Open Science Introduction 3\n", + " Open Source Software 15\n", + " Openness to Diversity of Knowledge 3\n", + "Project, Community & Personal Management Agile & Iteractive Project Management 6\n", + " Ally Skills for Open Leaders 4\n", + " Community Design for Inclusivity 1\n", + " Community Interactions 6\n", + " Equity, Diversity and Inclusion (EDI) 6\n", + " Mountain of Engagement 8\n", + " Personal Ecology 9\n", + " Personas & Pathways 7\n", + "Tooling for Collaboration Code Review 3\n", + " Code of Conduct 8\n", + " GitHub Introduction 6\n", + " Good Coding Practices 3\n", + " Open Licensing 8\n", + " Package Management 1\n", + " README 8\n", + " Setting up a project 3\n", + "Tooling for Project Design Open Canvas 13\n", + " Project Roadmapping 13\n", + " Tooling for Project Design Introduction 2" + ] + }, + "execution_count": 10, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "tag_df = (\n", + " library_df\n", + " .groupby([\"tag\", \"subtag\"])\n", + " .count()\n", + " .drop(columns=[\"title\", \"date\", \"cohort\", \"slides\", \"speakers\"])\n", + " .rename(columns={\"recording\": \"total\"})\n", + " .rename(columns=str.capitalize)\n", + ")\n", + "tag_df" + ] + }, + { + "cell_type": "code", + "execution_count": 11, + "id": "8332b14b-8aae-4276-807f-ff44306b1f0f", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "32" + ] + }, + "execution_count": 11, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "len(tag_df)" + ] + } + ], + "metadata": { + "kernelspec": { + "display_name": "Python 3 (ipykernel)", + "language": "python", + "name": "python3" + }, + "language_info": { + "codemirror_mode": { + "name": "ipython", + "version": 3 + }, + "file_extension": ".py", + "mimetype": "text/x-python", + "name": "python", + "nbconvert_exporter": "python", + "pygments_lexer": "ipython3", + "version": "3.12.4" + }, + "vscode": { + "interpreter": { + "hash": "31f2aee4e71d21fbe5cf8b01ff0e069b9275f58929596ceb00d14d90e3e16cd6" + } + } + }, + "nbformat": 4, + "nbformat_minor": 5 +}

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zS(`Gx{XawaWNv4l1L97UZ3pDwgv^Jq8?QKrciG-TjzT_P9Zn@N45Ss1l^B+S>r+SX zpsBGg-S6n6&ZlUB%+_ys>Hx?zOz86L$oEXmLjE)|{^JgKVQV}x_dn5JKaGo|H$ocVz6m)SZkrpJQ>|Kar7nyLt2{70y3D z89w*3oBQ!cKYM+;qCWm$*SDWt#*aTaG~$!7q>ta1k(na;q@(-KPiF6ZuekBgce?*} z|GUrDQuhyJ2LHEujQ{sx=%?`ic>IsNGcBIq-a35BEI>nxpU6;uu_)@twg3JvX`W#w literal 0 HcmV?d00001 diff --git a/results/global_community-based_training_program.ipynb b/results/global_community-based_training_program.ipynb new file mode 100644 index 0000000..bce4b01 --- /dev/null +++ b/results/global_community-based_training_program.ipynb @@ -0,0 +1,2072 @@ +{ + "cells": [ + { + "attachments": {}, + "cell_type": "markdown", + "id": "97af48bc-af26-4dfa-abe8-8e1d46567ed1", + "metadata": {}, + "source": [ + "# A Global Community-Based Training Program" + ] + }, + { + "cell_type": "markdown", + "id": "33617f30", + "metadata": {}, + "source": [ + "From 2020 until 2024, 8 cohorts (2 per year) have been delivered, reaching 386 mentees from 6 continents, across 55 low- and middle- (LMIC), and high-income countries (HIC). Each cohort has supported an average of 29.75 projects (median = 30.5, min = 20, max = 37; from 8 cohorts), with some projects led individually and some co-developed by groups. Overall, 238 projects, each led by either individuals or teams of collaborators (median of 1.75 mentees per group project). The projects cover various topics (500+ provided keywords) with Community, Open Science, Training and Education, Open source, Reproducibility, Data Science, Machine Learning, Bioinformatics, and AI in the top 10 areas of interest. 79% of the projects graduated (94% during a collaboration). From the projects who did not graduated, 1 project came back in 4 cohorts before graduated, .. disqualified, … finished the program but did not attend graduation call, … did not attend graduation call, … did not engage, … did not finished because of personal circumstances beyond their control, … requested to discontinue." + ] + }, + { + "cell_type": "code", + "execution_count": 1, + "id": "61f52b10", + "metadata": {}, + "outputs": [], + "source": [ + "import geopandas\n", + "import matplotlib.pyplot as plt\n", + "import pandas as pd\n", + "from pathlib import Path\n", + "import plotly.graph_objects as go\n", + "from wordcloud import WordCloud" + ] + }, + { + "cell_type": "code", + "execution_count": 2, + "id": "0e32a506-cbc4-4362-bf1c-f3c526654224", + "metadata": {}, + "outputs": [], + "source": [ + "cohort_nb = 9" + ] + }, + { + "cell_type": "code", + "execution_count": 3, + "id": "5cb1d949", + "metadata": {}, + "outputs": [], + "source": [ + "people_df = pd.read_csv(Path(\"../data/people.csv\"), index_col=0).fillna(\"\")" + ] + }, + { + "cell_type": "code", + "execution_count": 4, + "id": "6455c968", + "metadata": {}, + "outputs": [], + "source": [ + "roles_df = {}\n", + "roles = []\n", + "for r in [\"role\", \"participant\", \"mentor\", \"expert\", \"speaker\", \"facilitator\", \"organizer\"]:\n", + " role = r.capitalize()\n", + " roles.append(role)\n", + " roles_df[role] = pd.read_csv(Path(f\"../data/roles/{r}.csv\"), index_col=0)" + ] + }, + { + "cell_type": "code", + "execution_count": 5, + "id": "3516e819-ab0c-4431-969f-79615c93af27", + "metadata": {}, + "outputs": [], + "source": [ + "project_df = (\n", + " pd.read_csv(Path(\"../data/projects.csv\"), index_col=0, na_filter=False)\n", + " .assign(\n", + " participants=lambda df: df.participants.str.split(\", \"),\n", + " participantNb=lambda df: df.participants.str.len(),\n", + " mentors=lambda df: df.mentors.str.split(\", \"),\n", + " keywords=lambda df: df.keywords.str.split(\", \"),\n", + " cohort=lambda df: \"OLS-\" + df.cohort.astype(str),\n", + " )\n", + ")" + ] + }, + { + "cell_type": "markdown", + "id": "d5c2e0f1-08a0-4dc9-b9c9-4f51ad2af73b", + "metadata": {}, + "source": [ + "## Cohort stats" + ] + }, + { + "cell_type": "code", + "execution_count": 6, + "id": "d380ab9e-756f-4873-ade1-10759982d9dc", + "metadata": {}, + "outputs": [ + { + "data": { + "text/html": [ + "