DALL-E 3 MCP Server
A Model Context Protocol server that provides OpenAI's DALL-E 3 image generation capabilities, allowing LLMs to generate high-quality images through a standardized interface.
README
DALL-E 3 MCP Server
A Model Context Protocol (MCP) server that provides DALL-E 3 image generation capabilities. This server allows LLMs to generate high-quality images using OpenAI's DALL-E 3 model through the standardized MCP interface.
Features
- 🎨 High-Quality Image Generation: Uses DALL-E 3 for state-of-the-art image creation
- 🔧 Flexible Configuration: Support for different sizes, quality levels, and styles
- 📁 Automatic File Management: Handles directory creation and file saving
- 🛡️ Robust Error Handling: Comprehensive error handling with detailed feedback
- 📊 Detailed Logging: Comprehensive logging for debugging and monitoring
- 🚀 TypeScript: Fully typed for better development experience
- 🧪 Well Tested: Comprehensive test suite with high coverage
Installation
Using NPX (Recommended)
npx imagegen-mcp-d3
Using NPM
npm install -g imagegen-mcp-d3
From Source
git clone https://github.com/chrisurf/imagegen-mcp-d3.git
cd imagegen-mcp-d3
npm install
npm run build
npm start
Prerequisites
- Node.js: Version 18.0.0 or higher
- OpenAI API Key: You need a valid OpenAI API key with DALL-E 3 access
Configuration
Environment Variables
Set your OpenAI API key as an environment variable:
export OPENAI_API_KEY="your-openai-api-key-here"
Or create a .env file in your project root:
OPENAI_API_KEY=your-openai-api-key-here
Usage
With Claude Desktop
Add this server to your Claude Desktop configuration:
{
"mcpServers": {
"imagegen-mcp-d3": {
"command": "npx",
"args": ["imagegen-mcp-d3"],
"env": {
"OPENAI_API_KEY": "your-openai-api-key-here"
}
}
}
}
With Other MCP Clients
The server implements the standard MCP protocol and can be used with any compatible client.
Available Tools
generate_image
Generates an image using DALL-E 3 and saves it to the specified location.
Parameters:
prompt(required): Text description of the image to generateoutput_path(required): Full file path where the image should be savedsize(optional): Image dimensions -"1024x1024","1024x1792", or"1792x1024"(default:"1024x1024")quality(optional): Image quality -"standard"or"hd"(default:"hd")style(optional): Image style -"vivid"or"natural"(default:"vivid")
Example:
{
"name": "generate_image",
"arguments": {
"prompt": "A serene sunset over a mountain lake with pine trees",
"output_path": "/Users/username/Pictures/sunset_lake.png",
"size": "1024x1792",
"quality": "hd",
"style": "natural"
}
}
Response:
The tool returns detailed information about the generated image, including:
- Original and revised prompts
- Image URL
- File save location
- Image specifications
- File size
API Reference
Image Sizes
- Square:
1024x1024- Perfect for social media and general use - Portrait:
1024x1792- Great for mobile wallpapers and vertical displays - Landscape:
1792x1024- Ideal for desktop wallpapers and horizontal displays
Quality Options
- Standard: Faster generation, good quality
- HD: Higher quality with more detail (recommended)
Style Options
- Vivid: More dramatic and artistic interpretations
- Natural: More realistic and natural-looking results
Development
Setup
git clone https://github.com/chrisurf/imagegen-mcp-d3.git
cd imagegen-mcp-d3
npm install
Available Scripts
npm run dev # Run in development mode with hot reload
npm run build # Build for production
npm run start # Start the built server
npm run test # Run tests
npm run test:watch # Run tests in watch mode
npm run test:coverage # Run tests with coverage report
npm run lint # Run ESLint
npm run lint:fix # Fix ESLint issues
npm run format # Format code with Prettier
npm run typecheck # Run TypeScript type checking
Project Structure
src/
├── index.ts # Main server implementation
├── types.ts # TypeScript type definitions
└── __tests__/ # Test files
└── index.test.ts # Main test suite
Running Tests
# Run all tests
npm test
# Run tests with coverage
npm run test:coverage
# Run tests in watch mode during development
npm run test:watch
Error Handling
The server provides comprehensive error handling for common scenarios:
- Missing API Key: Clear error message when
OPENAI_API_KEYis not set - Invalid Parameters: Validation errors for required and optional parameters
- API Errors: Detailed error messages from the OpenAI API
- File System Errors: Handling of directory creation and file writing issues
- Network Errors: Graceful handling of network connectivity issues
Logging
The server provides detailed logging for monitoring and debugging:
- Request initiation and parameters
- API communication status
- Image generation progress
- File saving confirmation
- Error details and stack traces
Contributing
We welcome contributions! Please see our Contributing Guidelines for details.
Development Workflow
- Fork the repository
- Create a feature branch:
git checkout -b feature/amazing-feature - Make your changes
- Add tests for new functionality
- Ensure all tests pass:
npm test - Commit your changes:
git commit -m 'Add amazing feature' - Push to the branch:
git push origin feature/amazing-feature - Open a Pull Request
CI/CD
This project uses GitHub Actions for continuous integration and deployment:
- Testing: Automated testing on multiple Node.js versions (18, 20, 22)
- Code Quality: ESLint, Prettier, and TypeScript checks
- Security: Dependency vulnerability scanning
- Publishing: Automatic NPM publishing on release
- Coverage: Local code coverage reporting
License
This project is licensed under the MIT License - see the LICENSE file for details.
Support
- Issues: GitHub Issues
- Discussions: GitHub Discussions
- Email: Open an issue for support
Changelog
See CHANGELOG.md for a detailed history of changes.
Related Projects
- Model Context Protocol - The official MCP specification
- MCP TypeScript SDK - TypeScript SDK for MCP
- Claude Desktop - AI assistant that supports MCP servers
Acknowledgments
- OpenAI for the DALL-E 3 API
- Anthropic for the Model Context Protocol specification
- The MCP community for tools and documentation High-performance MCP for generating images using DALL·E 3 – optimized for fast, scalable, and customizable inference workflows.
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