Abhay-404/Eternal-Contextual-RAG
Eternal Contextual RAG: a persistent-context Retrieval-Augmented Generation architecture to prevent context loss.
This tool helps you get accurate answers from your documents, even when they're complex or use subtle language. It takes your existing reports, textbooks, or company policies and transforms them into a smart knowledge base. When you ask a question, it provides precise answers, acting like an expert who deeply understands the context of your material. This is designed for researchers, educators, business analysts, or anyone who needs to quickly extract accurate information from large document collections.
Use this if you need to reliably query large collections of documents like research papers, internal company handbooks, or educational materials and get highly accurate answers that understand the full context.
Not ideal if your primary need is basic keyword search or if you are working with very short, simple documents that don't require deep contextual understanding.
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Last pushed
Jan 08, 2026
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