achrafjarrou/lvmh-financial-rag
Système RAG production-ready pour analyse financière LVMH 2023. FastAPI + ChromaDB + Groq LLM. Pipeline complet: chunking intelligent, vector search, re-ranking, cache, métriques. 85% accuracy, 234ms latence. Tests automatiques, Docker, évaluation golden dataset. Python 3.11 | LangChain | MLOps
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Feb 12, 2026
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