NirDiamant/Controllable-RAG-Agent
This repository provides an advanced Retrieval-Augmented Generation (RAG) solution for complex question answering. It uses sophisticated graph based algorithm to handle the tasks.
This project helps people answer complex questions from their documents, like research papers or books, even when the answer isn't obvious. You provide your documents and ask a question, and it gives you a well-reasoned answer based only on your data. Anyone who needs to extract precise, detailed answers from large amounts of text, such as researchers, analysts, or educators, would find this useful.
1,563 stars. No commits in the last 6 months.
Use this if you need to find specific, nuanced answers within your own extensive documents and want to prevent the AI from fabricating information.
Not ideal if you only need simple fact retrieval or don't have large, complex documents requiring deep analysis.
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Apache-2.0
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Jun 17, 2025
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