Skip to content

This repo provides learning materials and production-ready code to build a high-quality RAG application using Databricks.

License

Notifications You must be signed in to change notification settings

alexxx-db/genai-cookbook

 
 

Repository files navigation

Retrieval Augmented Generation

Please visit http://ai-cookbook.io for the accompanying documentation for this repo.

This repo provides learning materials and production-ready code to build a high-quality RAG application using Databricks. The Mosaic Generative AI Cookbook provides:

  • A conceptual overview and deep dive into various Generative AI design patterns, such as Prompt Engineering, Agents, RAG, and Fine Tuning
  • An overview of Evaluation-Driven development
  • The theory of every parameter/knob that impacts quality
  • How to root cause quality issues and detemermine which knobs are relevant to experiment with for your use case
  • Best practices for how to experiment with each knob

The provided code is intended for use with the Databricks platform. Specifically:

  • Mosaic AI Agent Framework which provides a fast developer workflow with enterprise-ready LLMops & governance
  • Mosaic AI Agent Evaluation which provides reliable, quality measurement using proprietary AI-assisted LLM judges to measure quality metrics that are powered by human feedback collected through an intuitive web-based chat UI

Alt text

About

This repo provides learning materials and production-ready code to build a high-quality RAG application using Databricks.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 62.2%
  • HTML 27.1%
  • Jupyter Notebook 10.7%