bananabit-dev

MCP Server for Windsurf/Roocode

Community bananabit-dev
Updated

Model Context Protocol (MCP) server for Windsurf integration with image generation and web scraping capabilities.

MCP Server for Windsurf/Roocode

This is a Model Context Protocol (MCP) server that provides image generation and web scraping capabilities for Windsurf.

Features

  • Image Generation: Generate images using the Flux Pro model
  • Web Scraping: Extract content from webpages using ScrapeGraph

Getting Started

  1. Clone and set up the project:

    git clone https://github.com/bananabit-dev/mcp.git
    cd mcp
    python -m venv .venv
    source .venv/bin/activate  # On Windows: .venv\Scripts\activate
    pip install -r requirements.txt
    
  2. Set up environment variables:

    cp .env.example .env
    

    Then edit .env to add your API keys:

    AIMLAPI_KEY=your_flux_pro_api_key
    SGAI_API_KEY=your_scrapegraph_api_key
    

MCP Server Configuration

  1. Add this configuration to ~/.codeium/windsurf/mcp_config.json:
{
  "mcpServers": {
    "bananabit-mcp": {
      "command": "/absolute/path/to/your/.venv/bin/python",
      "args": ["-m", "app.mcp_server"],
      "cwd": "/absolute/path/to/mcp",
      "env": {
        "PYTHONPATH": "/absolute/path/to/mcp",
        "AIMLAPI_KEY": "${env:AIMLAPI_KEY}",
        "SGAI_API_KEY": "${env:SGAI_API_KEY}"
      }
    }
  }
}
  1. In Windsurf, click the hammer icon and "Refresh" to load the MCP server.

Example Usage

Image Generation

Let's create a cozy kawaii living room! Here's an example dialogue with Windsurf:

User: Generate a image of a cozy warm living room in kawaii and anime style.

Assistant: I'll help you generate a cozy warm living room image in kawaii and anime style!

[Generated image saved as cozy_kawaii_living_room.png]

Cozy Kawaii Living Room

User: Try again with an even more cozy and kawaii living room.

Assistant: I'll enhance the kawaii and cozy elements even more in this new version!

[Generated image saved as super_cozy_kawaii_living_room.png]

Super Cozy Kawaii Living Room

The MCP server will generate unique images each time, but they will follow the style and elements specified in the prompts. Try creating your own cozy spaces or other creative images!

Web Scraping

The MCP server provides powerful web scraping capabilities through the ScrapeGraph API. Here are the main features:

  1. Content Extraction

    # Extract main content from a webpage
    result = await extract_webpage_content(
        url="https://example.com"
    )
    
  2. Markdown Conversion

    # Convert webpage to clean markdown
    result = await markdownify_webpage(
        url="https://example.com",
        clean_level="medium"  # Options: light, medium, aggressive
    )
    
  3. Smart Scraping

    # Extract specific information using AI
    result = await scrape_webpage(
        url="https://example.com"
    )
    
Features
  • AI-Powered Extraction: Intelligently identifies and extracts main content
  • Clean Output: Removes ads, navigation, and other clutter
  • Format Options: Get content in raw HTML, markdown, or structured data
  • Error Handling: Graceful fallbacks for failed extractions
  • Customization: Control cleaning level and output format
Example Use Cases
  1. Documentation Generation

    # Create local documentation from online sources
    content = await markdownify_webpage(
        url="https://docs.example.com/guide",
        clean_level="medium"
    )
    with open(".docs/guide.md", "w") as f:
        f.write(content)
    
  2. Content Analysis

    # Extract and analyze webpage sentiment
    content = await extract_webpage_content(
        url="https://example.com/article"
    )
    sentiment = await analyze_text_sentiment(
        text=content["text"]
    )
    
  3. Data Collection

    # Extract structured data
    data = await scrape_webpage(
        url="https://example.com/products"
    )
    # Process extracted data
    for item in data["structured_data"]:
        process_item(item)
    
Best Practices
  1. Rate Limiting

    • Respect website rate limits
    • Add delays between requests
    • Use caching when possible
  2. Error Handling

    try:
        content = await extract_webpage_content(url)
    except Exception as e:
        # Fall back to simpler extraction
        content = await markdownify_webpage(url)
    
  3. Content Cleaning

    • Start with "medium" clean_level
    • Use "aggressive" for very noisy pages
    • Use "light" when preserving format is important
  4. Output Processing

    • Validate extracted content
    • Handle empty or partial results
    • Process structured data appropriately

License

MIT

MCP Server · Populars

MCP Server · New

    logotype

    fixparser

    FIX5.0SP2 parser.

    Community logotype
    lucitra

    Linear MCP Server

    Enables AI agents to manage issues, projects, and teams on the Linear platform. MCP server.

    Community lucitra
    M-Pineapple

    Claude Project Coordinator

    Claude Project Coordinator is a Swift-powered MCP (Model Context Protocol) server designed to streamline multi-project Xcode development. It lets you track project status, auto-detect frameworks, search code patterns, and maintain a structured development knowledge base — all locally, with Claude Desktop as your assistant.

    Community M-Pineapple
    KOBA789

    Human-in-the-Loop MCP Server

    An MCP (Model Context Protocol) server that allows AI assistants to ask questions to humans via Discord.

    Community KOBA789
    chaitin

    SafeLine MCP Server

    SafeLine is a self-hosted WAF(Web Application Firewall) / reverse proxy to protect your web apps from attacks and exploits.

    Community chaitin