mcp-ragdocs

hannesrudolph
199
An implementation of an MCP server that provides tools for retrieving and processing documents through vector search, enabling AI assistants to enhance their responses with the context of relevant documents.
#llm #mcp #mcp-servers #rag #vector-database

Overview

mcp-ragdocs Introduction

mcp-ragdocs is an MCP server implementation designed to retrieve and process documentation using vector search, allowing AI assistants to enhance their responses with relevant documentation context.

How to Use

To use mcp-ragdocs, you can utilize tools such as 'search_documentation' for querying documentation, 'list_sources' to view available documentation sources, 'extract_urls' to analyze web pages for hyperlinks, and 'remove_documentation' to delete specific documentation sources.

Key Features

Key features include vector-based documentation search and retrieval, support for multiple documentation sources, semantic search capabilities, automated documentation processing, and real-time context augmentation for large language models (LLMs).

Where to Use

mcp-ragdocs can be used in various fields such as customer support, technical documentation, knowledge management systems, and any application requiring enhanced AI responses with contextual documentation.

Use Cases

Use cases for mcp-ragdocs include providing instant answers to user queries in customer service, enhancing chatbot responses with relevant documentation, and enabling researchers to quickly find and retrieve pertinent information from extensive documentation.

Content