uzumstanley/RAG-System
RAG-system-powered-by-deepseek-r1
This tool helps researchers, legal professionals, or students quickly get answers from their documents. You upload PDF files, and the system processes their content, allowing you to ask natural language questions about them. It outputs accurate, conversational answers based only on the information within your uploaded PDFs.
No commits in the last 6 months.
Use this if you need to quickly extract specific information or get summaries from large PDF documents without manually sifting through pages.
Not ideal if you need to analyze data in formats other than PDFs, like spreadsheets or images, or if you require interaction with external, real-time information.
Stars
12
Forks
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Language
Python
License
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Category
Last pushed
Mar 30, 2025
Commits (30d)
0
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