RAG-system and Retrieval-Augmented-Generation-RAG---Uni-Disciplinary
About RAG-system
xumozhu/RAG-system
Retrieval-Augmented Generation system: ask a question, retrieve relevant documents, and generate precise answers. RAG demo: document retrieval + LLM answering
This tool helps you get precise answers to questions based on your own PDF documents. You input your collection of PDFs and ask a question in plain language. The system retrieves relevant information from your documents and then generates a clear, concise answer. It's ideal for analysts, researchers, or anyone who needs to quickly extract specific facts from a set of business, research, or operational documents.
About Retrieval-Augmented-Generation-RAG---Uni-Disciplinary
albrud199/Retrieval-Augmented-Generation-RAG---Uni-Disciplinary
A Retrieval-Augmented Generation (RAG) system that answers university disciplinary policy questions using semantic search, vector databases, and an LLM.
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