pheonix-delta/WiredBrain-Hierarchical-Rag
Hierarchical RAG architecture scaling to 693K chunks on consumer hardware (4GB VRAM). Features 3-address routing, hybrid vector+graph fusion, and SetFit classification.
This project helps researchers and domain experts answer complex questions from very large datasets, like dense technical documentation or vast research papers, right on their own computer. You provide your specialized documents, and it gives you highly accurate, verified answers without needing expensive cloud services. It's designed for professionals who need trustworthy information from extensive knowledge bases.
Use this if you need to extract precise, hallucination-free answers from hundreds of thousands of documents in specialized domains using your existing consumer-grade computer.
Not ideal if you need instant, conversational chatbot-like responses, as this system prioritizes deep verification and truth over speed.
Stars
37
Forks
2
Language
Python
License
—
Category
Last pushed
Feb 11, 2026
Commits (30d)
0
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