Docs MCP Server
Creates a personal, always-current knowledge base for AI by indexing documentation from websites, GitHub, npm, PyPI, and local files.
Grounded Docs: Your AI's Up-to-Date Documentation Expert
Docs MCP Server solves the problem of AI hallucinations and outdated knowledge by providing a personal, always-current documentation index for your AI coding assistant. It fetches official docs from websites, GitHub, npm, PyPI, and local files, allowing your AI to query the exact version you are using.

✨ Why Grounded Docs MCP Server?
The open-source alternative to Context7, Nia, and Ref.Tools.
- ✅ Up-to-Date Context: Fetches documentation directly from official sources on demand.
- 🎯 Version-Specific: Queries target the exact library versions in your project.
- 💡 Reduces Hallucinations: Grounds LLMs in real documentation.
- 🔒 Private & Local: Runs entirely on your machine; your code never leaves your network.
- 🧩 Broad Compatibility: Works with any MCP-compatible client (Claude, Cline, etc.).
- 📁 Multiple Sources: Index websites, GitHub repositories, local folders, and zip archives.
- 📄 Rich File Support: Processes HTML, Markdown, PDF, Word (.docx), Excel, PowerPoint, and source code.
🚀 Quick Start
1. Start the server (requires Node.js 22+):
npx @arabold/docs-mcp-server@latest
2. Open the Web UI at http://localhost:6280 to add documentation.
3. Connect your AI client by adding this to your MCP settings (e.g., claude_desktop_config.json):
{
"mcpServers": {
"docs-mcp-server": {
"type": "sse",
"url": "http://localhost:6280/sse"
}
}
}
See Connecting Clients for VS Code (Cline, Roo) and other setup options.
docker run --rm \
-v docs-mcp-data:/data \
-v docs-mcp-config:/config \
-p 6280:6280 \
ghcr.io/arabold/docs-mcp-server:latest \
--protocol http --host 0.0.0.0 --port 6280
🧠 Configure Embedding Model (Recommended)
Using an embedding model is optional but dramatically improves search quality by enabling semantic vector search.
Example: Enable OpenAI Embeddings
OPENAI_API_KEY="sk-proj-..." npx @arabold/docs-mcp-server@latest
See Embedding Models for configuring Ollama, Gemini, Azure, and others.
📚 Documentation
Getting Started
- Installation: Detailed setup guides for Docker, Node.js (npx), and Embedded mode.
- Connecting Clients: How to connect Claude, VS Code (Cline/Roo), and other MCP clients.
- Basic Usage: Using the Web UI, CLI, and scraping local files.
- Configuration: Full reference for config files and environment variables.
- Embedding Models: Configure OpenAI, Ollama, Gemini, and other providers.
Key Concepts & Architecture
- Deployment Modes: Standalone vs. Distributed (Docker Compose).
- Authentication: Securing your server with OAuth2/OIDC.
- Telemetry: Privacy-first usage data collection.
- Architecture: Deep dive into the system design.
🤝 Contributing
We welcome contributions! Please see CONTRIBUTING.md for development guidelines and setup instructions.
License
This project is licensed under the MIT License. See LICENSE for details.
Related Servers
FetchSERP
All-in-One SEO & Web Intelligence Toolkit API from FetchSERP.
Manalink MCP Server
An MCP server implementation for Manalink that allows AI assistants to use functions like teacher search.
NPI Registry
Search the National Provider Identifier (NPI) registry for healthcare providers and organizations in the United States.
Web Search MCP Server
Free web search using Google search results, no API key required.
Scholarly
Search for academic articles from scholarly vendors.
Fish MCP Server
Search for fish species using the FishBase database. Supports natural language queries in both Japanese and English.
MTG MCP Servers
Magic: The Gathering (MTG) servers for deck management and card search using the MCP protocol.
Jina AI Search
Perform semantic, image, and cross-modal searches using Jina AI's neural search capabilities.
Web Search
A server that provides web search capabilities using OpenAI models.
MCP Documentation Server
A server for document management and semantic search using AI embeddings, with local JSON storage.