
Puppeteer Vision
STDIOAI-powered web scraper converting webpages to markdown with automatic interaction handling.
AI-powered web scraper converting webpages to markdown with automatic interaction handling.
This Model Context Protocol (MCP) server provides a tool for scraping webpages and converting them to markdown format using Puppeteer, Readability, and Turndown. It features AI-driven interaction capabilities to handle cookies, captchas, and other interactive elements automatically.
Now easily runnable via npx
!
npx
package.The recommended way to use this server is via npx
, which ensures you're running the latest version without needing to clone or manually install.
Prerequisites: Ensure you have Node.js and npm installed.
Environment Setup:
The server requires an OPENAI_API_KEY
. You can provide this and other optional configurations in two ways:
.env
file: Create a .env
file in the directory where you will run the npx
command.Example .env
file or shell exports:
# Required OPENAI_API_KEY=your_api_key_here # Optional (defaults shown) # VISION_MODEL=gpt-4.1 # API_BASE_URL=https://api.openai.com/v1 # Uncomment to override # USE_SSE=true # Uncomment to use SSE mode instead of stdio # PORT=3001 # Only used in SSE mode # DISABLE_HEADLESS=true # Uncomment to see the browser in action
Run the Server: Open your terminal and run:
npx -y puppeteer-vision-mcp-server
-y
flag automatically confirms any prompts from npx
.stdio
mode. If USE_SSE=true
is set in your environment, it will start an HTTP server for SSE communication.This server is designed to be integrated as a tool within an MCP-compatible LLM orchestrator. Here's an example configuration snippet:
{ "mcpServers": { "web-scraper": { "command": "npx", "args": ["-y", "puppeteer-vision-mcp-server"], "env": { "OPENAI_API_KEY": "YOUR_OPENAI_API_KEY_HERE", // Optional: // "VISION_MODEL": "gpt-4.1", // "API_BASE_URL": "https://api.example.com/v1", // "DISABLE_HEADLESS": "true" // To see the browser during operations } } // ... other MCP servers } }
When configured this way, the MCP orchestrator will manage the lifecycle of the puppeteer-vision-mcp-server
process.
Regardless of how you run the server (NPX or local development), it uses the following environment variables:
OPENAI_API_KEY
: (Required) Your API key for accessing the vision model.VISION_MODEL
: (Optional) The model to use for vision analysis.
gpt-4.1
API_BASE_URL
: (Optional) Custom API endpoint URL.
USE_SSE
: (Optional) Set to true
to enable SSE mode over HTTP.
false
(uses stdio mode).PORT
: (Optional) The port for the HTTP server in SSE mode.
3001
.DISABLE_HEADLESS
: (Optional) Set to true
to run the browser in visible mode.
false
(browser runs in headless mode).The server supports two communication modes:
npx
unless USE_SSE=true
is set.USE_SSE=true
in your environment.PORT
(default: 3001).The server provides a scrape-webpage
tool.
Tool Parameters:
url
(string, required): The URL of the webpage to scrape.autoInteract
(boolean, optional, default: true): Whether to automatically handle interactive elements.maxInteractionAttempts
(number, optional, default: 3): Maximum number of AI interaction attempts.waitForNetworkIdle
(boolean, optional, default: true): Whether to wait for network to be idle before processing.Response Format:
The tool returns its result in a structured format:
content
: An array containing a single text object with the raw markdown of the scraped webpage.metadata
: Contains additional information:
message
: Status message.success
: Boolean indicating success.contentSize
: Size of the content in characters (on success).Example Success Response:
{ "content": [ { "type": "text", "text": "# Page Title\n\nThis is the content..." } ], "metadata": { "message": "Scraping successful", "success": true, "contentSize": 8734 } }
Example Error Response:
{ "content": [ { "type": "text", "text": "" } ], "metadata": { "message": "Error scraping webpage: Failed to load the URL", "success": false } }
The system uses vision-capable AI models (configurable via VISION_MODEL
and API_BASE_URL
) to analyze screenshots of web pages and decide on actions like clicking, typing, or scrolling to bypass overlays and consent forms. This process repeats up to maxInteractionAttempts
.
After interactions, Mozilla's Readability extracts the main content, which is then sanitized and converted to Markdown using Turndown with custom rules for code blocks and tables.
If you wish to contribute, modify the server, or run a local development version:
Clone the Repository:
git clone https://github.com/djannot/puppeteer-vision-mcp.git cd puppeteer-vision-mcp
Install Dependencies:
npm install
Build the Project:
npm run build
Set Up Environment:
Create a .env
file in the project's root directory with your OPENAI_API_KEY
and any other desired configurations (see "Environment Configuration Details" above).
Run for Development:
npm start # Starts the server using the local build
Or, for automatic rebuilding on changes:
npm run dev
You can modify the behavior of the scraper by editing:
src/ai/vision-analyzer.ts
(analyzePageWithAI
function): Customize the AI prompt.src/ai/page-interactions.ts
(executeAction
function): Add new action types.src/scrapers/webpage-scraper.ts
(visitWebPage
function): Change Puppeteer options.src/utils/markdown-formatters.ts
: Adjust Turndown rules for Markdown conversion.Key dependencies include:
@modelcontextprotocol/sdk
puppeteer
, puppeteer-extra
@mozilla/readability
, jsdom
turndown
, sanitize-html
openai
(or compatible API for vision models)express
(for SSE mode)zod