PDF RAG
Enables building Retrieval Augmented Generation (RAG) capabilities for PDF documents.
Acerca de
This tool implements a Retrieval Augmented Generation (RAG) architecture, powered by the MCP framework, specifically designed to interact with PDF documents. It allows users to process PDF files by converting their content into searchable chunks with embeddings. Once indexed, the system can answer complex queries by retrieving relevant information from the PDFs and generating contextually accurate responses. The solution operates as an MCP server, making its functionalities, such as PDF indexing and querying, accessible via an MCP Inspector.
Características Principales
- PDF content ingestion and chunking
- 0 GitHub stars
- Embedding generation for document content
- Retrieval Augmented Generation (RAG) architecture
- MCP server integration for tool execution
- Intelligent question-answering from uploaded PDFs
Casos de Uso
- Automating information extraction from technical manuals or reports
- Enabling natural language querying of large PDF datasets
- Developing AI-powered Q&A systems over document libraries