TorchBench V3 nightly (A100) #233
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name: TorchBench V3 nightly (A100) | |
on: | |
workflow_dispatch: | |
schedule: | |
- cron: '0 16 * * *' # run at 4 PM UTC | |
jobs: | |
run-benchmark: | |
environment: docker-s3-upload | |
env: | |
BASE_CONDA_ENV: "torchbench" | |
CONDA_ENV: "torchbench-v3-nightly" | |
PLATFORM_NAME: "gcp_a100" | |
SETUP_SCRIPT: "/workspace/setup_instance.sh" | |
TORCHBENCH_USERBENCHMARK_SCRIBE_GRAPHQL_ACCESS_TOKEN: ${{ secrets.TORCHBENCH_USERBENCHMARK_SCRIBE_GRAPHQL_ACCESS_TOKEN }} | |
AWS_ACCESS_KEY_ID: ${{ secrets.AWS_ACCESS_KEY_ID }} | |
AWS_SECRET_ACCESS_KEY: ${{ secrets.AWS_SECRET_ACCESS_KEY }} | |
IS_GHA: 1 | |
BUILD_ENVIRONMENT: benchmark-nightly | |
if: ${{ github.repository_owner == 'pytorch' }} | |
runs-on: [self-hosted, a100-runner] | |
steps: | |
- name: Checkout TorchBench v3.0 branch | |
uses: actions/checkout@v3 | |
with: | |
ref: v3.0 | |
path: benchmark | |
- name: Tune Nvidia GPU | |
run: | | |
sudo nvidia-smi -pm 1 | |
sudo nvidia-smi -ac 1215,1410 | |
nvidia-smi | |
- name: Check PyTorch nightly if scheduled | |
if: ${{ github.event_name == 'schedule' }} | |
run: | | |
CONDA_ENV=${BASE_CONDA_ENV} . "${SETUP_SCRIPT}" | |
pushd benchmark | |
TODAY_STR=$(date +'%Y%m%d') | |
python utils/cuda_utils.py --check-torch-nightly-version --force-date ${TODAY_STR} | |
- name: Clone and setup conda env | |
run: | | |
CONDA_ENV=${BASE_CONDA_ENV} . "${SETUP_SCRIPT}" | |
conda create --name "${CONDA_ENV}" --clone "${BASE_CONDA_ENV}" | |
- name: Install TorchBench | |
run: | | |
set -x | |
. "${SETUP_SCRIPT}" | |
pushd benchmark | |
python install.py | |
- name: Run the torch-nightly userbenchmark | |
run: | | |
. "${SETUP_SCRIPT}" | |
# remove old results | |
if [ -d benchmark-output ]; then rm -Rf benchmark-output; fi | |
pushd benchmark | |
if [ -d .userbenchmark ]; then rm -Rf .userbenchmark; fi | |
python run_benchmark.py torch-nightly -c v3-cuda-tests.yaml | |
cp -r ./.userbenchmark/torch-nightly ../benchmark-output | |
- name: Detect potential regressions | |
continue-on-error: true | |
run: | | |
. "${SETUP_SCRIPT}" | |
pushd benchmark | |
RESULTS=($(find ${PWD}/../benchmark-output -name "metrics-*.json" -maxdepth 2 | sort -r)) | |
# TODO: the following assumes only one metrics-*.json is found. It will keep | |
# overwriting gh-issue.md if multiple are found. | |
for r in ${RESULTS[@]}; do | |
python regression_detector.py --platform "${PLATFORM_NAME}" --treatment "${r}" --owner @xuzhao9 \ | |
--gh-issue-path gh-issue.md --errors-path errors.txt | |
done | |
rm -r ../benchmark-output || true | |
cp -r ./.userbenchmark/torch-nightly ../benchmark-output | |
- name: Create the github issue | |
continue-on-error: true | |
if: env.TORCHBENCH_REGRESSION_DETECTED | |
uses: peter-evans/create-issue-from-file@v4 | |
with: | |
title: V3 Performance Signal Detected by TorchBench Userbenchmark "torch-nightly" on ${{ env.TORCHBENCH_REGRESSION_DETECTED }} | |
content-filepath: ./benchmark/gh-issue.md | |
labels: | | |
torchbench-perf-report | |
- name: Copy artifact and upload to scribe and Amazon S3 | |
run: | | |
. "${SETUP_SCRIPT}" | |
pushd benchmark | |
LATEST_RESULT=$(find ../benchmark-output/ -name "metrics-*.json" | sort -r | head -1) | |
echo "Benchmark result file: ${LATEST_RESULT}" | |
# Upload the result json to Scribe | |
python ./scripts/userbenchmark/upload_scribe.py --userbenchmark_json "${LATEST_RESULT}" --userbenchmark_platform "${PLATFORM_NAME}" | |
# Upload the result json to Amazon S3 | |
python ./scripts/userbenchmark/upload_s3.py --upload-file "${LATEST_RESULT}" --userbenchmark_platform "${PLATFORM_NAME}" | |
- name: Copy regression results to Amazon S3 | |
if: env.TORCHBENCH_REGRESSION_DETECTED | |
run: | | |
. "${SETUP_SCRIPT}" | |
pushd benchmark | |
LATEST_REGRESSION_RESULT=$(find ../benchmark-output/ -name "regression-*.yaml" | sort -r | head -1) | |
# Upload the regression json to Amazon S3 | |
python ./scripts/userbenchmark/upload_s3.py --upload-file "${LATEST_REGRESSION_RESULT}" --userbenchmark_platform "${PLATFORM_NAME}" | |
- name: Upload result to GH Actions Artifact | |
uses: actions/upload-artifact@v3 | |
with: | |
name: TorchBench V3 result | |
path: benchmark-output/ | |
- name: Clean up Conda env | |
if: always() | |
run: | | |
. "${SETUP_SCRIPT}" | |
conda deactivate && conda deactivate | |
conda remove -n "${CONDA_ENV}" --all |