bitlysis-ai-agents-llm
Bitlysis — AI Agents & LLM Applications
When to Use
- Building or modifying LLM-powered features
- Designing AI agent workflows (ReAct, tool use, multi-agent)
- Implementing RAG (Retrieval-Augmented Generation) pipelines
- Writing evaluation (eval) test cases or golden datasets
- Integrating with LLM APIs (OpenAI, Anthropic, Google Gemini)
- Working on MCP (Model Context Protocol) servers
- Files in
**/agents/**,**/llm/**,**/rag/**,**/eval/**,**/mcp/**
Instructions
Step 1: Security First (Never Skip)
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