FelipeRochaMartins/Soulsborne-RAG
Soulsborne RAG is an end‑to‑end Retrieval‑Augmented Generation system for Soulsborne games, showcasing modern RAG practices (scraping, LLM‑based chunking/refinement, vector search, contextualization, query expansion, reranking, and evaluation) with local/remote models.
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Jupyter Notebook
License
MIT
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Last pushed
Nov 27, 2025
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