aws-samples/rag-with-amazon-opensearch-and-sagemaker
Question Answering Generative AI application with Large Language Models (LLMs) and Amazon OpenSearch Service
This project helps you build an internal question-answering system for your business. You provide your company's documents, and it allows users to ask questions and receive accurate answers generated by an AI, drawing only from your provided information. This is ideal for knowledge managers, HR professionals, or anyone responsible for making large volumes of internal documentation easily searchable and digestible.
No commits in the last 6 months.
Use this if you need to create a secure, accurate, and scalable generative AI application for question answering over your private, enterprise knowledge base.
Not ideal if you're looking for a simple, off-the-shelf chatbot that doesn't require integrating with your own data or managing cloud infrastructure.
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Language
Python
License
MIT-0
Last pushed
Dec 03, 2024
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