hannesrudolph/mcp-ragdocs
An MCP server implementation that provides tools for retrieving and processing documentation through vector search, enabling AI assistants to augment their responses with relevant documentation context.
📊 Score Breakdown
Overall = Security (30%) + Utility (30%) + Maintenance (25%) + Uniqueness (15%). Full methodology →
ℹ️ Details
Category
🧠 Memory & Knowledge
Ecosystem
MCP Server
Language
TypeScript
Pricing
Free
License
MIT
Status
Stale
Platforms
claude
📈 GitHub Signals
250
Stars
29
Forks
0
Commits (30d)
3
Open Issues
Last commit: 7 months ago
Similar Tools
View all Memory & Knowledge →topoteretes/cognee
by topoteretes
📇 🏠 - Memory manager for AI apps and Agents using various graph and vector stores and allowing ingestion from 30+ data sources
vectorize-io/hindsight
by vectorize-io
🐍 ☁️ 🏠 - Hindsight: Agent Memory That Works Like Human Memory - Built for AI Agents to manage Long Term Memory
doobidoo/mcp-memory-service
by doobidoo
📇 🏠 - Universal memory service providing semantic search, persistent storage, and autonomous memory consolidation
apecloud/ApeRAG
by apecloud
🐍 ☁️ 🏠 - Production-ready RAG platform combining Graph RAG, vector search, and full-text search. Best choice for building your own Knowledge Graph and for Context Engineering
Data last verified: Yesterday. See something wrong? Report it →