Docs Fetch MCP Server
Fetch web page content with recursive exploration.
Docs Fetch MCP Server
A Model Context Protocol (MCP) server for fetching web content with recursive exploration capabilities. This server enables LLMs to autonomously explore web pages and documentation to learn about specific topics.
Overview
The Docs Fetch MCP Server provides a simple but powerful way for LLMs to retrieve and explore web content. It enables:
- Fetching clean, readable content from any web page
- Recursive exploration of linked pages up to a specified depth
- Same-domain link traversal to gather comprehensive information
- Smart filtering of navigation links to focus on content-rich pages
This tool is particularly useful when users want an LLM to learn about a specific topic by exploring documentation or web content.
Features
- Content Extraction: Cleanly extracts the main content from web pages, removing distractions like navigation, ads, and irrelevant elements
- Link Analysis: Identifies and extracts links from the page, assessing their relevance
- Recursive Exploration: Follows links to related content within the same domain, up to a specified depth
- Parallel Processing: Efficiently crawls content with concurrent requests and proper error handling
- Robust Error Handling: Gracefully handles network issues, timeouts, and malformed pages
- Dual-Strategy Approach: Uses fast axios requests first with puppeteer as a fallback for more complex pages
- Timeout Prevention: Implements global timeout handling to ensure reliable operation within MCP time limits
- Partial Results: Returns available content even when some pages fail to load completely
Usage
The server exposes a single MCP tool:
fetch_doc_content
Fetches web page content with the ability to explore linked pages up to a specified depth.
Parameters:
url(string, required): URL of the web page to fetchdepth(number, optional, default: 1): Maximum depth of directory/link exploration (1-5)
Returns:
{
"rootUrl": "https://example.com/docs",
"explorationDepth": 2,
"pagesExplored": 5,
"content": [
{
"url": "https://example.com/docs",
"title": "Documentation",
"content": "Main page content...",
"links": [
{
"url": "https://example.com/docs/topic1",
"text": "Topic 1"
},
...
]
},
...
]
}
Installation
- Clone this repository:
git clone https://github.com/wolfyy970/docs-fetch-mcp.git
cd docs-fetch-mcp
- Install dependencies:
npm install
- Build the project:
npm run build
- Configure your MCP settings in your Claude Client:
{
"mcpServers": {
"docs-fetch": {
"command": "node",
"args": [
"/path/to/docs-fetch-mcp/build/index.js"
],
"env": {
"MCP_TRANSPORT": "pipe"
}
}
}
}
Dependencies
@modelcontextprotocol/sdk: MCP server SDKpuppeteer: Headless browser for web page interactionaxios: HTTP client for making requests
Development
To run the server in development mode:
npm run dev
License
MIT
관련 서버
Bright Data
스폰서Discover, extract, and interact with the web - one interface powering automated access across the public internet.
Kakuyomu MCP Server
An MCP server for the Kakuyomu novel posting site, enabling users to search for works, retrieve episode lists, and read content.
WebDriverIO
Automate web browsers using WebDriverIO. Supports actions like clicking, filling forms, and taking screenshots.
Internet-Names-MCP
Check availability of domain names, social media handles and subreddits
Fetch
Fetch web content as HTML, JSON, plain text, or Markdown.
Apify
Extract data from any website with thousands of scrapers, crawlers, and automations
NBA Player Stats
Provides comprehensive NBA player statistics from basketball-reference.com, including career stats, season comparisons, and advanced metrics.
scraping-api-marketplace
Real-time product data from Amazon, eBay, Walmart, Kaufland and many others — directly inside your AI assistant
Browser Use
Enables AI agents to control web browsers using natural language commands.
Intercept
Give your AI the ability to read the web. Fetches URLs as clean markdown with 9 fallback strategies. Handles tweets, YouTube, arXiv, PDFs, and regular pages.
YouTube MCP Server
Extract metadata and captions from YouTube videos and convert them to markdown.