Skip to content

[GitHub Trending] jamwithai/production-agentic-rag-course

8.6 relevance
Score Breakdown
technical depth
7
novelty
7
actionability
9
community
7
strategic
6
personal
10

Scored daily by a customisable AI persona to surface the most relevant engineering leadership news.

Production agentic RAG course, perfect match for AI agent engineering.

AI/ML github.com
Contribute to jamwithai/production-agentic-rag-course development by creating an account on GitHub.
Summary

jamwithai/production-agentic-rag-course is a 7-week open-source curriculum that builds a production RAG system from keyword search (BM25) through hybrid retrieval to agentic RAG with LangGraph, deployed via Docker, FastAPI, OpenSearch, and a Telegram bot. It requires Python 3.12, UV, 8GB RAM, and covers production concerns like Langfuse monitoring, Redis caching, Jina embeddings, and out-of-domain guardrails. The methodology deliberately starts with search fundamentals before layering AI to avoid common anti-patterns.

Author

jamwithai