Enhanced Documentation Search
Provides real-time access to documentation, library popularity data, and career insights using the Serper API.
Documentation Search MCP Server
MCP server for searching documentation, scanning dependencies for vulnerabilities, and generating project boilerplate. Works with Claude Desktop, Cursor, and other MCP clients.
📚 Read the comprehensive tutorial for detailed examples and workflows.
Features
- Search 190+ curated documentation sources with optional semantic vector search
- Scan Python projects for vulnerabilities (Snyk, Safety, OSV)
- Generate FastAPI and React project starters
- Learning paths and code examples
Installation
# Recommended: use uvx (install uv from https://docs.astral.sh/uv)
uvx [email protected]
# Or with pip in a virtual environment
pip install documentation-search-enhanced==1.9.0
# Optional: AI semantic search (Python 3.12 only, adds ~600MB)
pip install documentation-search-enhanced[vector]==1.9.0
Configuration
Claude Desktop
Find your uvx path: which uvx
Edit ~/Library/Application Support/Claude/claude_desktop_config.json:
{
"mcpServers": {
"documentation-search-enhanced": {
"command": "/Users/yourusername/.local/bin/uvx",
"args": ["[email protected]"],
"env": {
"SERPER_API_KEY": "optional_key_here"
}
}
}
}
Replace /Users/yourusername/.local/bin/uvx with your actual uvx path.
Codex CLI
# Find your uvx path first
which uvx
# Then add with full path (replace with your actual path)
codex mcp add documentation-search-enhanced \
-- /Users/yourusername/.local/bin/uvx [email protected]
# Or if uvx is in PATH:
codex mcp add documentation-search-enhanced \
-- uvx [email protected]
With SERPER API Key (enables live web search):
codex mcp add documentation-search-enhanced \
--env SERPER_API_KEY=your_key_here \
-- /Users/yourusername/.local/bin/uvx [email protected]
Without SERPER API Key (uses prebuilt index from GitHub Releases):
codex mcp add documentation-search-enhanced \
-- /Users/yourusername/.local/bin/uvx [email protected]
If you get a timeout on first run, pre-download dependencies:
uvx [email protected]
Environment Variables
SERPER_API_KEY- Optional. Enables live web search. Without it, uses prebuilt index from GitHub Releases.DOCS_SITE_INDEX_AUTO_DOWNLOAD- Set tofalseto disable automatic index downloadsDOCS_SITE_INDEX_PATH- Custom path for documentation index
Set server_config.features.real_time_search=false in your config to disable live crawling.
Semantic Search (Optional)
The [vector] extra adds semantic search using sentence-transformers (all-MiniLM-L6-v2) with hybrid reranking:
- 50% semantic similarity (cosine)
- 30% keyword matching
- 20% source authority
Only works on Python 3.12 (PyTorch limitation). Python 3.13 users get keyword-based search.
To disable vector search even when installed:
semantic_search(query="FastAPI auth", libraries=["fastapi"], use_vector_rerank=False)
Available Tools
Core MCP tools:
semantic_search- Search documentationget_docs- Fetch specific documentationget_learning_path- Generate learning roadmapget_code_examples- Find code snippetsscan_project_dependencies- Vulnerability scansnyk_scan_project- Detailed Snyk analysisgenerate_project_starter- Create project boilerplatemanage_dev_environment- Generate docker-compose filescompare_library_security- Compare library vulnerabilities
Development
git clone https://github.com/anton-prosterity/documentation-search-mcp.git
cd documentation-search-mcp
uv sync --all-extras
uv run python -m documentation_search_enhanced.main
Testing
uv run pytest --ignore=pytest-test-project # Core tests
uv run ruff check src # Linting
uv run ruff format src --check # Format check
Configuration
Use the get_current_config tool to export current settings to config.json. Validate with:
uv run python src/documentation_search_enhanced/config_validator.py
Contributing
See CONTRIBUTING.md for guidelines. Use Conventional Commits for commit messages.
License
MIT License - see LICENSE for details.
관련 서버
Deep Research
An agent-based tool for web search and advanced research, including analysis of PDFs, documents, images, and YouTube transcripts.
RAG Documentation MCP Server
Retrieve and process documentation using vector search to provide relevant context for AI assistants.
Exa
Exa AI Search API
PubMed MCP Server
Search and download scientific articles from PubMed's E-utilities API.
Gemini DeepSearch MCP
An automated research agent using Google Gemini models and Google Search to perform deep, multi-step web research.
SearxNG MCP Server
Provides web search capabilities using a self-hosted SearxNG instance, allowing AI assistants to search the web.
MCP Lucene Server
MCP Lucene Server is a Model Context Protocol (MCP) server that exposes Apache Lucene's full-text search capabilities through a conversational interface. It allows AI assistants (like Claude) to help users search, index, and manage document collections without requiring technical knowledge of Lucene or search engines.
Perplexity
An MCP server that connects to Perplexity's Sonar API, enabling real-time web-wide research in conversational AI.
Local RAG
Performs a local RAG search on your query using live web search for context extraction.
JinaAI Grounding
Enhances LLM responses with factual, real-time web content using Jina AI's grounding capabilities.