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LLM Fine-Tune

Fine-tuning allows users to adapt pre-trained LLMs to more specialized tasks.

By fine-tuning a model on a small dataset of task-specific data, you can improve its performance on that task while preserving its general language knowledge.

Fine-tuning allows you to take a pre-trained Large Language Model (LLM) and adapt it to your specific needs, improving its understanding and performance within specialized domains.

It helps customize its performance for a specific domain or task by training it on specialized data. This allows the model to excel in understanding and generating industry-specific language, concepts, and technical terms, making it more useful in specialized fields.

Fine-tuning ensures that your model is not just a generalist but becomes a powerful, domain-specific tool, capable of using the correct vocabulary, concepts, and nuances critical to your industry.

If you are interested in dig deeper in the fine-tuning, or if you are unfamiliar with this ecosystem have a look at this document

🎯️ What You Can Achieve with Fine-Tuning

The goal of this repo is to provide one or more approaches for each use case we mention. Click on the link to each specific use case for a detailed deep dive.

For each use case we will try to provide a hands-on sample

Fine-tuning a model enables it to:

  • Improve chatbot accuracy by tailoring the assistant to understand and respond with industry-relevant language.
  • Understand industry-specific language (e.g., medical, legal, space, etc.), using terminology and concepts unique to your field.
    • It enables the model to adapt to the unique vocabulary and expertise of specific industries, ensuring it provides more accurate and relevant responses tailored to the field.
  • Diagnose technical or mechanical issues, providing troubleshooting guidance based on visual or textual input.
    • Assess medical conditions by analyzing symptoms, diagnostic reports, or treatment plans.
    • Evaluate and estimate car damagehelping with repair cost assessments.
  • Analyze legal documents, summarizing cases or contracts with accurate legal terminology.
  • Detect patterns in images
    • Identify objects or specific features
    • Evaluate product defects or manufacturing inconsistencies based on images
    • Identify damages that requires maintenance assessing priorities (aviation )
    • Identify abnormalities in medical scans
  • Assist in scientific research by interpreting data from industries like aerospace or engineering.

🎉 Join the Community!

This repository is a community effort, and we invite contributions, discussions, and ideas from everyone interested in fine-tuning LLMs! 🤝 Together, we will explore and document different configurations and approaches to help the entire community grow. Feel free to add your fine-tune use case and samples Stay tuned as we collaborate on this journey! 😄