Web content fetching and conversion for efficient LLM usage
A Model Context Protocol server that provides web content fetching capabilities. This server enables LLMs to retrieve and process content from web pages, converting HTML to markdown for easier consumption.
The fetch tool will truncate the response, but by using the start_index
argument, you can specify where to start the content extraction. This lets models read a webpage in chunks, until they find the information they need.
fetch
- Fetches a URL from the internet and extracts its contents as markdown.
url
(string, required): URL to fetchmax_length
(integer, optional): Maximum number of characters to return (default: 5000)start_index
(integer, optional): Start content from this character index (default: 0)raw
(boolean, optional): Get raw content without markdown conversion (default: false)url
(string, required): URL to fetchOptionally: Install node.js, this will cause the fetch server to use a different HTML simplifier that is more robust.
When using uv
no specific installation is needed. We will use uvx
to directly run mcp-server-fetch.
Alternatively you can install mcp-server-fetch
via pip:
pip install mcp-server-fetch
After installation, you can run it as a script using:
python -m mcp_server_fetch
Add to your Claude settings:
Using uvx
"mcpServers": { "fetch": { "command": "uvx", "args": ["mcp-server-fetch"] } }
Using docker
"mcpServers": { "fetch": { "command": "docker", "args": ["run", "-i", "--rm", "mcp/fetch"] } }
Using pip installation
"mcpServers": { "fetch": { "command": "python", "args": ["-m", "mcp_server_fetch"] } }
By default, the server will obey a websites robots.txt file if the request came from the model (via a tool), but not if the request was user initiated (via a prompt). This can be disabled by adding the argument --ignore-robots-txt
to theargs
list in the configuration.
By default, depending on if the request came from the model (via a tool), or was user initiated (via a prompt), the server will use either the user-agent
ModelContextProtocol/1.0 (Autonomous; +https://github.com/modelcontextprotocol/servers)
ModelContextProtocol/1.0 (User-Specified; +https://github.com/modelcontextprotocol/servers)
This can be customized by adding the argument --user-agent=YourUserAgent
to the args
list in the configuration.
The server can be configured to use a proxy by using the --proxy-url
argument.
You can use the MCP inspector to debug the server. For uvx installations:
npx @modelcontextprotocol/inspector uvx mcp-server-fetch
Or if you've installed the package in a specific directory or are developing on it:
cd path/to/servers/src/fetch
npx @modelcontextprotocol/inspector uv run mcp-server-fetch
We encourage contributions to help expand and improve mcp-server-fetch. Whether you want to add new tools, enhance existing functionality, or improve documentation, your input is valuable.
For examples of other MCP servers and implementation patterns, see: https://github.com/modelcontextprotocol/servers
Pull requests are welcome! Feel free to contribute new ideas, bug fixes, or enhancements to make mcp-server-fetch even more powerful and useful.
mcp-server-fetch is licensed under the MIT License. This means you are free to use, modify, and distribute the software, subject to the terms and conditions of the MIT License. For more details, please see the LICENSE file in the project repository.
Browser automation and web scraping
Enable AI agents to get structured data from unstructured web with AgentQL.
Actors MCP Server: Use 3,000+ pre-built cloud tools to extract data from websites, e-commerce, social media, search engines, maps, and more
Automate browser interactions in the cloud (e.g. web navigation, data extraction, form filling, and more)
Extract web data with Firecrawl
Hyperbrowser is the next-generation platform empowering AI agents and enabling effortless, scalable browser automation.
Scrape websites with Oxylabs Web API, supporting dynamic rendering and parsing for structured data extraction.
Playwright MCP server
Render website screenshots with ScreenshotOne
Automate your local browser