benitomartin/rag-aws-qdrant
Academic Paper Q&A with Serverless RAG
This helps researchers quickly find answers within academic papers without manually sifting through documents. You input research questions and the system provides relevant answers drawn directly from a collection of academic papers (specifically from arXiv). It's designed for researchers, academics, or students who frequently consult large volumes of scientific literature.
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Use this if you need to rapidly extract specific information or answers from a large collection of academic papers, saving significant time compared to manual searching.
Not ideal if you need to perform deep qualitative analysis or nuanced interpretation beyond direct question-answering, or if your document set is not primarily academic papers.
Stars
18
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4
Language
Python
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Category
Last pushed
Jun 29, 2024
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