The RTFD (Read The F*****g Docs) MCP Server acts as a bridge between Large Language Models (LLMs) and real-time documentation. It allows coding agents to query package repositories like PyPI, npm, crates.io, GoDocs, DockerHub, GitHub, and Google Cloud Platform (GCP) to retrieve the most up-to-date documentation and context.
This server solves a common problem where LLMs hallucinate APIs or provide outdated code examples because their training data is months or years old. By giving agents access to the actual documentation, RTFD ensures that generated code is accurate and follows current best practices.
Security Warning: This MCP server grants agents access to unverified code and content from external sources (GitHub, PyPI, etc.). This introduces significant risks, including indirect prompt injection and the potential for malicious code execution, particularly when operating in autonomous or "YOLO" modes. Use at your own risk. The maintainers assume no responsibility for any damage or security compromises resulting from the use of this tool.
You can mitigate these risks by configuring specific environment variables to restrict functionality. For example, setting
RTFD_FETCH=falsedisables all content fetching tools (allowing only metadata lookups), andVERIFIED_BY_PYPI=truerestricts Python package documentation to only PyPI-verified sources. See the Configuration section for more details.
- Accuracy: Agents can access the latest documentation for libraries, ensuring they use the correct version-specific APIs and avoid deprecated methods.
- Context Awareness: Instead of just getting a raw text dump, the server extracts key sections like installation instructions, quickstart guides, and API references, giving the agent exactly what it needs.
- Privacy: Unlike cloud-based documentation services, RTFD runs entirely on your local machine. Your queries are sent DIRECTLY to the source (no servers in the middle, no API keys needed, etc) and the documentation you access never leave your system, ensuring complete privacy and no data collection.
- Supported Sources: PyPI (Python), npm (JavaScript/TypeScript), crates.io (Rust), GoDocs (Go), Zig docs, DockerHub, GitHub Container Registry (GHCR), GitHub repositories, and Google Cloud Platform (GCP).
RTFD helps in scenarios like:
-
Refactoring old code: Fetch current
pandasdocs to find deprecated methods and their replacements. Instead of guessing what changed, the LLM reads the actual upgrade guide. -
Unfamiliar libraries: Integrating a Rust crate you've never seen? Look up the exact version, feature flags, and examples directly from the docs instead of guessing the API from general patterns.
-
Libraries after training cutoff: Using a library released after the LLM's training data ends? Fetch the actual README and code examples from GitHub so the LLM can write correct usage instead of hallucinating APIs.
-
Docker optimization: When optimizing a Dockerfile, inspect the official
python:3.11-slimimage to see exactly what packages and OS layers are included, rather than making assumptions. -
Dependency audits: Check PyPI, npm, and crates.io for available updates across all your dependencies. The LLM sees the latest versions and can generate an audit report without manually visiting each registry.
- Documentation Content Fetching: Retrieve actual documentation content (README and key sections) from PyPI, npm, and GitHub rather than just URLs.
- Smart Section Extraction: Automatically prioritizes and extracts relevant sections such as "Installation", "Usage", and "API Reference" to reduce noise.
- Format Conversion: Automatically converts reStructuredText and HTML to Markdown for consistent formatting and easier consumption by LLMs.
- Multi-Source Search: Aggregates results from PyPI, npm, crates.io, GoDocs, Zig docs, DockerHub, GHCR, GitHub, and GCP.
- GitHub Repository Browsing: Browse repository file trees (
list_repo_contents,get_repo_tree) and read source code files (get_file_content) directly. - GitHub Packages (GHCR): List packages and get versions for any GitHub user or organization to find the right image tag.
- PyPI Verification: Optional security feature (
VERIFIED_BY_PYPI) to ensure packages are verified by PyPI before fetching documentation. - Smart GCP Search: Hybrid search approach combining local service mapping with
cloud.google.comsearch to find documentation for any Google Cloud service. - Pluggable Architecture: Easily add new documentation providers by creating a single provider module.
- Error Resilience: Failures in one provider do not crash the server; the system is designed to degrade gracefully.
Install RTFD as a Claude Code plugin in two steps:
# Step 1: Add the RTFD marketplace
claude plugin marketplace add aserper/RTFD
# Step 2: Install the plugin
claude plugin install rtfd-mcp@rtfd-marketplaceFor detailed configuration options and installation alternatives, see PLUGIN.md.
pip install rtfd-mcpOr with uv:
uv pip install rtfd-mcpClone the repository and install:
git clone https://github.com/aserper/RTFD.git
cd RTFD
uv sync --extra devYou can run RTFD directly from the GitHub Container Registry without installing Python or dependencies locally.
docker run -i --rm \
-e GITHUB_AUTH=token \
-e GITHUB_TOKEN=your_token_here \
ghcr.io/aserper/rtfd:latestAvailable Tags:
:latest- Stable release (updates on new releases):edge- Development build (updates on push to main):vX.X.X- Specific version tags
RTFD is an MCP server that needs to be configured in your AI agent of choice.
pip install rtfd-mcp
# or with uv:
uv pip install rtfd-mcpSimplest Method (Recommended): Use Claude Code plugin marketplace:
# Step 1: Add the RTFD marketplace
claude plugin marketplace add aserper/RTFD
# Step 2: Install the plugin
claude plugin install rtfd-mcp@rtfd-marketplaceAlternative Methods:
Manually add RTFD as an MCP server using the following command to automatically add it to your configuration:
# Using GITHUB_TOKEN for authentication (default)
claude mcp add rtfd -- command="rtfd" --env GITHUB_AUTH=token --env GITHUB_TOKEN=your_token_here --env RTFD_FETCH=true
# Or using GitHub CLI for authentication
claude mcp add rtfd -- command="rtfd" --env GITHUB_AUTH=cli --env RTFD_FETCH=true
# Or using both methods with fallback
claude mcp add rtfd -- command="rtfd" --env GITHUB_AUTH=auto --env GITHUB_TOKEN=your_token_here --env RTFD_FETCH=true
# Or using Docker
claude mcp add rtfd -- type=docker -- image=ghcr.io/aserper/rtfd:latest --env GITHUB_AUTH=token --env GITHUB_TOKEN=your_token_hereOr manually edit ~/.claude.json:
{
"mcpServers": {
"rtfd": {
"command": "rtfd",
"env": {
"GITHUB_AUTH": "token", // Options: "token", "cli", "auto", or "disabled"
"GITHUB_TOKEN": "your_token_here",
"RTFD_FETCH": "true"
}
}
}
}- Go to Settings > Cursor Settings > MCP Servers
- Click "Add new MCP server"
- Name:
rtfd - Type:
stdio - Command:
rtfd - Add Environment Variable:
GITHUB_AUTH=token(Options:token,cli,auto,disabled) - Add Environment Variable:
GITHUB_TOKEN=your_token_here - Add Environment Variable:
RTFD_FETCH=true
Or manually edit ~/.cursor/mcp.json:
{
"mcpServers": {
"rtfd": {
"command": "rtfd",
"env": {
"GITHUB_AUTH": "token", // Options: "token", "cli", "auto", or "disabled"
"GITHUB_TOKEN": "your_token_here",
"RTFD_FETCH": "true"
}
}
}
}- Open Settings > Advanced Settings > Model Context Protocol
- Edit
~/.codeium/windsurf/mcp_config.json:
{
"mcpServers": {
"rtfd": {
"command": "rtfd",
"env": {
"GITHUB_AUTH": "token", // Options: "token", "cli", "auto", or "disabled"
"GITHUB_TOKEN": "your_token_here",
"RTFD_FETCH": "true"
}
}
}
}Edit ~/.gemini/settings.json:
{
"mcpServers": {
"rtfd": {
"command": "rtfd",
"env": {
"GITHUB_AUTH": "token", // Options: "token", "cli", "auto", or "disabled"
"GITHUB_TOKEN": "your_token_here",
"RTFD_FETCH": "true"
}
}
}
}Edit ~/.codex/config.toml:
[mcpServers.rtfd]
command = "rtfd"
[mcpServers.rtfd.env]
GITHUB_AUTH = "token" # Options: "token", "cli", "auto", or "disabled"
GITHUB_TOKEN = "your_token_here"
RTFD_FETCH = "true"Ask your agent: "What tools do you have available?" or "Search for documentation on pandas".
The MCP Inspector tool allows you to test the RTFD MCP server directly without requiring an IDE or agent integration. This is useful for development and debugging.
# Install the MCP Inspector tool globally
npm install -g @modelcontextprotocol/inspector# Run RTFD with the MCP Inspector
npx @modelcontextprotocol/inspector rtfd
# If you need to pass environment variables
npx @modelcontextprotocol/inspector rtfd -e GITHUB_AUTH=autoThe Inspector tool will open an interactive terminal where you can directly call the RTFD tools and see their responses.
RTFD can be configured using the following environment variables:
| Variable | Default | Description |
|---|---|---|
GITHUB_AUTH |
token |
GitHub authentication method: token (use GITHUB_TOKEN only), cli (use gh CLI auth only), auto (try GITHUB_TOKEN, then gh CLI), or disabled (no GitHub access). |
GITHUB_TOKEN |
None |
GitHub API token. Highly recommended to increase rate limits (60 -> 5000 requests/hour). |
RTFD_FETCH |
true |
Enable/disable content fetching tools. Set to false to only allow metadata lookups. |
RTFD_CACHE_ENABLED |
true |
Enable/disable caching. Set to false to disable. |
RTFD_CACHE_TTL |
604800 |
Cache time-to-live in seconds (default: 1 week). |
RTFD_TRACK_TOKENS |
false |
Enable/disable token usage statistics in tool response metadata. |
VERIFIED_BY_PYPI |
false |
If true, only allows fetching documentation for packages verified by PyPI. |
For maintainers, see CONTRIBUTING.md for the automated release process.
All tool responses are returned in JSON format.
search_library_docs(library, limit=5): Combined lookup across all providers (PyPI, npm, crates.io, GoDocs, GCP, GitHub). Note: Zig and DockerHub are accessed via dedicated tools.
get_cache_info(): Get cache statistics including entry count, database size, and location.get_cache_entries(): Get detailed information about all cached items including age, size, and content preview.
fetch_pypi_docs(package, max_bytes=20480): Fetch Python package documentation from PyPI.fetch_npm_docs(package, max_bytes=20480): Fetch npm package documentation.fetch_godocs_docs(package, max_bytes=20480): Fetch Go package documentation from godocs.io (e.g., 'github.com/gorilla/mux').fetch_gcp_service_docs(service, max_bytes=20480): Fetch Google Cloud Platform service documentation from docs.cloud.google.com (e.g., "storage", "compute", "bigquery").fetch_github_readme(repo, max_bytes=20480): Fetch README from a GitHub repository (format: "owner/repo").fetch_docker_image_docs(image, max_bytes=20480): Fetch Docker image documentation and description from DockerHub (e.g., "nginx", "postgres", "user/image").fetch_dockerfile(image): Fetch the Dockerfile for a Docker image by parsing its description for GitHub links (best-effort).
pypi_metadata(package): Fetch Python package metadata.npm_metadata(package): Fetch JavaScript package metadata.crates_metadata(crate): Get Rust crate metadata.search_crates(query, limit=5): Search Rust crates.godocs_metadata(package): Retrieve Go package documentation.search_gcp_services(query, limit=5): Search Google Cloud Platform services by name or keyword (e.g., "storage", "compute", "bigquery").zig_docs(query): Search Zig documentation.docker_image_metadata(image): Get DockerHub Docker image metadata (stars, pulls, description, etc.).search_docker_images(query, limit=5): Search for Docker images on DockerHub.github_repo_search(query, limit=5, language="Python"): Search GitHub repositories.github_code_search(query, repo=None, limit=5): Search code on GitHub.list_github_packages(owner, package_type="container"): List GitHub packages for a user or organization.get_package_versions(owner, package_type, package_name): Get versions for a specific GitHub package.list_repo_contents(repo, path=""): List contents of a directory in a GitHub repository (format: "owner/repo").get_file_content(repo, path, max_bytes=102400): Get content of a specific file from a GitHub repository.get_repo_tree(repo, recursive=False, max_items=1000): Get the complete file tree of a GitHub repository.get_commit_diff(repo, base, head): Get the diff between two commits, branches, or tags.
Add the following to your ~/.claude/settings.json:
{
"mcpServers": {
"rtfd": {
"command": "rtfd",
"env": {
"GITHUB_AUTH": "token",
"GITHUB_TOKEN": "your_token_here",
"RTFD_FETCH": "true"
}
}
}
}Or with environment variables:
{
"mcpServers": {
"rtfd": {
"command": "bash",
"args": ["-c", "export GITHUB_AUTH=token && export GITHUB_TOKEN=your_token_here && rtfd"],
"type": "stdio"
}
}
}The RTFD server uses a modular architecture. Providers are located in src/RTFD/providers/ and implement the BaseProvider interface. New providers are automatically discovered and registered upon server restart.
To add a custom provider, create a new file in the providers directory inheriting from BaseProvider, implement the required methods, and the server will pick it up automatically.
- Service Discovery: Uses a local service mapping (20+ common services), direct search on
cloud.google.com(for general queries), and GitHub API search of the googleapis/googleapis repository. - Documentation Source: Fetches documentation by scraping docs.cloud.google.com and converting to Markdown.
- GitHub Authentication: Configure using
GITHUB_AUTHenvironment variable. Options aretoken(default),cli,auto, ordisabled. - GitHub Token: Optional but recommended. Without a
GITHUB_TOKEN, GitHub API search is limited to 60 requests/hour. With a token, the limit increases to 5,000 requests/hour. - Supported Services: Cloud Storage, Compute Engine, BigQuery, Cloud Functions, Cloud Run, Pub/Sub, Firestore, GKE, App Engine, Cloud Vision, Cloud Speech, IAM, Secret Manager, and more.
- Service Name Formats: Accepts various formats (e.g., "storage", "cloud storage", "Cloud Storage", "kubernetes", "k8s" for GKE).
- Token Counting: Disabled by default. Set
RTFD_TRACK_TOKENS=trueto see token stats in Claude Code logs. - Rate Limiting: The crates.io provider respects the 1 request/second limit.
- Dependencies:
mcp,httpx,beautifulsoup4,markdownify,docutils,tiktoken.
- Entry point:
src/RTFD/server.pycontains the main search orchestration tool. Provider-specific tools are insrc/RTFD/providers/. - Framework: Uses
mcp.server.fastmcp.FastMCPto declare tools and run the server over stdio. - HTTP layer:
httpx.AsyncClientwith a shared_http_client()factory that applies timeouts, redirects, and user-agent headers. - Data model: Responses are plain dicts for easy serialization over MCP.
- Serialization: Tool responses use
serialize_response_with_meta()fromutils.py. - Token counting: Optional token statistics in the
metafield (disabled by default). Enable withRTFD_TRACK_TOKENS=true.
Tool responses are handled by serialize_response_with_meta() in utils.py:
- Token statistics: When
RTFD_TRACK_TOKENS=true, the response includes a_metafield with token counts (tokens_json,tokens_sent,bytes_json). - Token counting: Uses
tiktokenlibrary withcl100k_baseencoding (compatible with Claude models). - Zero-cost metadata: Token statistics appear in the
_metafield ofCallToolResult, which is visible in Claude Code's special metadata logs but NOT sent to the LLM, costing 0 tokens.
The RTFD server uses a modular architecture. Providers are located in src/RTFD/providers/ and implement the BaseProvider interface. New providers are automatically discovered and registered upon server restart.
To add a custom provider:
- Create a new file in
src/RTFD/providers/. - Define async functions decorated with
@mcp.tool(). - Ensure tools return
CallToolResultusingserialize_response_with_meta(result_data).
- Dependencies: Declared in
pyproject.toml(Python 3.10+). - Testing: Use
pytestto run the test suite. - Environment: If you change environment-sensitive settings (e.g.,
GITHUB_TOKEN), restart thertfdprocess.

