Readability Parser
Extracts and transforms webpage content into clean, LLM-optimized Markdown using the Readability algorithm.
MCP Server Readability Parser (Python / FastMCP)
Credits/Reference
This project is based on the original server-moz-readability implementation of emzimmer. (For the original README documentation, please refer to the original README.md.)
This Python implementation adapts the original concept to run as python based MCP using FastMCP
Mozilla Readability Parser MCP Server
A Python implementation of the Model Context Protocol (MCP) server that extracts and transforms webpage content into clean, LLM-optimized Markdown.
Table of Contents
Features
- Removes ads, navigation, footers and other non-essential content
- Converts clean HTML into well-formatted Markdown
- Handles errors gracefully
- Optimized for LLM processing
- Lightweight and fast
Why Not Just Fetch?
Unlike simple fetch requests, this server:
- Extracts only relevant content using Readability algorithm
- Eliminates noise like ads, popups, and navigation menus
- Reduces token usage by removing unnecessary HTML/CSS
- Provides consistent Markdown formatting for better LLM processing
- Handles complex web pages with dynamic content
Installation
- Clone the repository:
git clone https://github.com/jmh108/MCP-server-readability-python.git
cd MCP-server-readability-python
- Create and activate a virtual environment:
python -m venv venv
source venv/bin/activate # On Windows use: venv\Scripts\activate
- Install dependencies:
pip install -r requirements.txt
Quick Start
- Start the server:
fastmcp run server.py
- Example request:
curl -X POST http://localhost:8000/tools/extract_content \
-H "Content-Type: application/json" \
-d '{"url": "https://example.com/article"}'
Tool Reference
extract_content
Fetches and transforms webpage content into clean Markdown.
Arguments:
{
"url": {
"type": "string",
"description": "The website URL to parse",
"required": true
}
}
Returns:
{
"content": "Markdown content..."
}
MCP Server Configuration
To configure the MCP server, add the following to your MCP settings file:
{
"mcpServers": {
"readability": {
"command": "fastmcp",
"args": ["run", "server.py"],
"env": {}
}
}
}
The server can then be started using the MCP protocol and accessed via the parse tool.
Dependencies
- readability-lxml - Content extraction
- html2text - HTML to Markdown conversion
- beautifulsoup4 - DOM parsing
- requests - HTTP requests
License
MIT License - See LICENSE for details.
Похожие серверы
Bright Data
спонсорDiscover, extract, and interact with the web - one interface powering automated access across the public internet.
MCP Deep Web Research Server
An advanced web research server with intelligent search queuing, enhanced content extraction, and deep research capabilities.
Trends Hub
Aggregates trending topics from over 20 sources in real-time, with customizable fields and RSS feed support.
Hyperbrowser
Hyperbrowser is the next-generation platform empowering AI agents and enabling effortless, scalable browser automation.
Changeflow
AI-powered web monitoring. Track any website, get structured change intelligence.
Cloudflare Playwright
Control a browser for web automation tasks like navigation, typing, clicking, and taking screenshots using Playwright on Cloudflare Workers.
JCrawl4AI
A Java-based MCP server for interacting with the Crawl4ai web scraping API.
youtube-summarize
MCP server that fetches YouTube video transcripts and summarizes them using your LLM client
MCP Webscan Server
Fetch, analyze, and extract information from web pages.
302AI BrowserUse
An AI-powered browser automation server for natural language control and web research.
Fetch
Web content fetching and conversion for efficient LLM usage