turbowebfetch
MCP server that lets Claude Code fetch web content using real Chrome browsers. Renders JavaScript-heavy pages, handles bot mitigation, and runs up to 14 parallel browsers locally with zero API keys. Makes outbound HTTP requests only to URLs the user explicitly asks Claude to fetch.
README
TurboWebFetch
Real browsers. Real content. Full fidelity.
Your AI agents need to read web pages. Documentation, product info, articles, research. But standard fetch tools use plain HTTP - they cannot handle modern client-side rendering or bot mitigation layers, and return empty shells.
TurboWebFetch runs actual Chrome browsers. Your agents see what users see.
14 parallel browsers. Zero API keys. Runs locally.
Prerequisites
Before installing, verify you have:
node --version # Need 18+
python3 --version # Need 3.8+
Google Chrome must be installed (not Chromium).
Quick Start
claude mcp add turbowebfetch npx turbowebfetch
That's it. Your agents now have access to the fetch and fetch_batch tools.
What This Is (And Isn't)
TurboWebFetch helps your AI agents access content you have the right to access. It renders JavaScript-heavy pages that standard tools cannot handle.
It is for:
- Fetching documentation that requires JS rendering (React, Stripe, etc.)
- Product research on e-commerce sites
- Reading articles and news behind JS walls
- Multi-source research for your AI agents
It is not for:
- Circumventing paywalls
- Scraping data you don't have permission to collect
- High-volume data harvesting (rate-limited by design)
- Violating websites' Terms of Service
The challenge-handling exists because many legitimate sites use broad bot mitigation that affects even authorized access. If a site restricts access and you don't have permission, respect that.
WebFetch vs TurboWebFetch
| Scenario | WebFetch | TurboWebFetch |
|---|---|---|
| Static HTML pages | Works | Works (overkill) |
| JavaScript SPAs | Empty content | Full render |
| Sites with JS challenges | Fails | Negotiates automatically |
| Bot mitigation layers | Fails | Negotiates automatically |
| Parallel agents | One at a time | 14 simultaneous browsers |
| JS-heavy sites (docs, e-commerce) | Blocked or empty | Works |
Rule of thumb: Use WebFetch for simple pages. Use TurboWebFetch when that fails.
Usage
Single page:
mcp__turbowebfetch__fetch(url: "https://react.dev/learn", format: "markdown")
Response:
{
"success": true,
"url": "https://react.dev/learn",
"title": "Quick Start - React",
"content": "# Quick Start\n\nWelcome to the React documentation...",
"status": 200
}
Batch (parallel):
mcp__turbowebfetch__fetch_batch(
urls: [
"https://react.dev/learn",
"https://nextjs.org/docs",
"https://www.target.com/p/some-product"
],
format: "text"
)
All three fetch simultaneously in separate browsers.
Parameters
| Parameter | Default | Description |
|---|---|---|
url |
required | The URL to fetch |
format |
"text" |
"text", "markdown", or "html" |
timeout |
60000 |
Milliseconds. Increase to 90000+ for slow sites |
wait_for |
- | CSS selector to wait for (rarely needed) |
The tool auto-detects when content has loaded. Use wait_for only if auto-detection fails on a specific site.
Known Limitations
Sites that don't work:
- Login-required content - This tool doesn't handle authentication
- Interactive CAPTCHAs - It handles JS challenges, not image selection tasks
- Zillow - Requires interactive verification
- Bloomberg - Requires interactive verification
Performance:
- Adds 5-10 seconds per page (browser startup + rendering + human-like behavior)
- Memory usage: ~200-400MB per browser instance
- For 14 parallel fetches, expect ~4GB RAM usage
Not for scale: This is a user assistant, not a scraping service. Rate-limited to 60 requests/minute per domain.
Configuration
Optional environment variables:
| Variable | Default | Description |
|---|---|---|
TURBOFETCH_MAX_PROCESSES |
14 |
Max concurrent browsers |
TURBOFETCH_HUMAN_MODE |
true |
Human-like scrolling/delays |
TURBOFETCH_HEADLESS |
true |
Headless mode (auto-switches if blocked) |
Most users won't need to change these.
Troubleshooting
"Python not found"
# macOS
brew install python3
# Ubuntu/Debian
sudo apt install python3 python3-venv
"Chrome not launching"
Install Google Chrome from https://google.com/chrome (not Chromium).
"Content is empty"
Some heavily lazy-loaded sites need an explicit selector:
mcp__turbowebfetch__fetch(
url: "https://www.bestbuy.com/site/searchpage.jsp?st=laptop",
wait_for: "[class*=\"product\"]",
timeout: 90000
)
"Page not loading on [site]"
Some sites require interactive verification that automated browsers cannot complete. Open an issue with the URL.
How It Works
- Your agent calls the MCP tool
- TurboWebFetch spawns a Python process with Chrome (via nodriver)
- Chrome loads the page, executes JavaScript, negotiates any browser challenges
- Content is extracted and returned as clean text/markdown/HTML
- Browser closes, process exits
Each fetch is isolated. No cookies or state persist between requests.
Development
Clone and build locally:
git clone https://github.com/aza-ali/turbowebfetch.git
cd turbowebfetch
npm install
npm run build
Python setup (virtual environment + nodriver) runs automatically during npm install. If it fails, run manually:
npm run setup:python
Then register with Claude Code:
claude mcp add turbowebfetch node /path/to/turbowebfetch/dist/index.js
License
MIT License. See LICENSE for details.
Copyright (c) 2026 Mourtaza Ali
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