DALL-E
Generate images using OpenAI's DALL-E API.
DALL-E MCP Server
An MCP (Model Context Protocol) server for generating images using OpenAI's DALL-E API.
Features
- Generate images using DALL-E 2 or DALL-E 3
- Edit existing images (DALL-E 2 only)
- Create variations of existing images (DALL-E 2 only)
- Validate OpenAI API key
Installation
# Clone the repository
git clone https://github.com/Garoth/dalle-mcp.git
cd dalle-mcp
# Install dependencies
npm install
# Build the project
npm run build
Important Note for Cline Users
When using this DALL-E MCP server with Cline, it's recommended to save generated images in your current workspace directory by setting the saveDir parameter to match your current working directory. This ensures Cline can properly locate and display the generated images in your conversation.
Example usage with Cline:
{
"prompt": "A tropical beach at sunset",
"saveDir": "/path/to/current/workspace"
}
Usage
Running the Server
# Run the server
node build/index.js
Configuration for Cline
Add the dall-e server to your Cline MCP settings file inside VSCode's settings (ex. ~/.config/Code/User/globalStorage/saoudrizwan.claude-dev/settings/cline_mcp_settings.json):
{
"mcpServers": {
"dalle-mcp": {
"command": "node",
"args": ["/path/to/dalle-mcp-server/build/index.js"],
"env": {
"OPENAI_API_KEY": "your-api-key-here",
"SAVE_DIR": "/path/to/save/directory"
},
"disabled": false,
"autoApprove": []
}
}
}
Make sure to:
- Replace
/path/to/dalle-mcp-server/build/index.jswith the actual path to the built index.js file - Replace
your-api-key-herewith your OpenAI API key
Available Tools
generate_image
Generate an image using DALL-E based on a text prompt.
{
"prompt": "A futuristic city with flying cars and neon lights",
"model": "dall-e-3",
"size": "1024x1024",
"quality": "standard",
"style": "vivid",
"n": 1,
"saveDir": "/path/to/save/directory",
"fileName": "futuristic-city"
}
Parameters:
prompt(required): Text description of the desired imagemodel(optional): DALL-E model to use ("dall-e-2" or "dall-e-3", default: "dall-e-3")size(optional): Size of the generated image (default: "1024x1024")- DALL-E 3: "1024x1024", "1792x1024", or "1024x1792"
- DALL-E 2: "256x256", "512x512", or "1024x1024"
quality(optional): Quality of the generated image, DALL-E 3 only ("standard" or "hd", default: "standard")style(optional): Style of the generated image, DALL-E 3 only ("vivid" or "natural", default: "vivid")n(optional): Number of images to generate (1-10, default: 1)saveDir(optional): Directory to save the generated images (default: current directory or SAVE_DIR from .env). For Cline users: Setting this to your current workspace directory is recommended for proper image display.fileName(optional): Base filename for the generated images without extension (default: "dalle-{timestamp}")
edit_image
Edit an existing image using DALL-E based on a text prompt.
⚠️ Known Issue (March 18, 2025): The DALL-E 2 image edit API currently has a bug where it sometimes ignores the prompt and returns the original image without any edits, even when using proper RGBA format images and masks. This issue has been reported in the OpenAI community forum. If you experience this issue, try using the
create_variationtool instead, which seems to work more reliably.
{
"prompt": "Add a red hat",
"imagePath": "/path/to/image.png",
"mask": "/path/to/mask.png",
"model": "dall-e-2",
"size": "1024x1024",
"n": 1,
"saveDir": "/path/to/save/directory",
"fileName": "edited-image"
}
Parameters:
prompt(required): Text description of the desired editsimagePath(required): Path to the image to editmask(optional): Path to the mask image (white areas will be edited, black areas preserved)model(optional): DALL-E model to use (currently only "dall-e-2" supports editing, default: "dall-e-2")size(optional): Size of the generated image (default: "1024x1024")n(optional): Number of images to generate (1-10, default: 1)saveDir(optional): Directory to save the edited images (default: current directory or SAVE_DIR from .env). For Cline users: Setting this to your current workspace directory is recommended for proper image display.fileName(optional): Base filename for the edited images without extension (default: "dalle-edit-{timestamp}")
create_variation
Create variations of an existing image using DALL-E.
{
"imagePath": "/path/to/image.png",
"model": "dall-e-2",
"size": "1024x1024",
"n": 4,
"saveDir": "/path/to/save/directory",
"fileName": "image-variation"
}
Parameters:
imagePath(required): Path to the image to create variations ofmodel(optional): DALL-E model to use (currently only "dall-e-2" supports variations, default: "dall-e-2")size(optional): Size of the generated image (default: "1024x1024")n(optional): Number of variations to generate (1-10, default: 1)saveDir(optional): Directory to save the variation images (default: current directory or SAVE_DIR from .env). For Cline users: Setting this to your current workspace directory is recommended for proper image display.fileName(optional): Base filename for the variation images without extension (default: "dalle-variation-{timestamp}")
validate_key
Validate the OpenAI API key.
{}
No parameters required.
Development
Testing Configuration
Note: The following .env configuration is ONLY needed for running tests, not for normal operation.
If you're developing or running tests for this project, create a .env file in the root directory with your OpenAI API key:
# Required for TESTS ONLY: OpenAI API Key
OPENAI_API_KEY=your-api-key-here
# Optional: Default save directory for test images
# If not specified, images will be saved to the current directory
# SAVE_DIR=/path/to/save/directory
For normal operation with Cline, configure your API key in the MCP settings JSON as described in the "Adding to MCP Settings" section above.
You can get your API key from OpenAI's API Keys page.
Running Tests
# Run basic tests
npm test
# Run all tests including edit and variation tests
npm run test:all
# Run tests in watch mode
npm run test:watch
# Run specific test by name
npm run test:name "should validate API key"
Note: Tests use real API calls and may incur charges on your OpenAI account.
Generating Test Images
The project includes a script to generate test images for development and testing:
# Generate a test image in the assets directory
npm run generate-test-image
This will create a simple test image in the assets directory that can be used for testing the edit and variation features.
License
MIT
เซิร์ฟเวอร์ที่เกี่ยวข้อง
ArgoCD
Expose the entire ArgoCD API to LLMs via MCP using just 2 auto-generated tools powered by the OpenAPI spec.
HuggingFace Spaces
Server for using HuggingFace Spaces, supporting Images, Audio, Text and more. Claude Desktop mode for ease-of-use.
Lemon Squeezy Server
Integrates with Lemon Squeezy to manage subscriptions, checkouts, and products.
MCP Hive
MCP-Hive is a gateway to commerical-grade MCP Servers which can be only be accessed via paid subscriptions or pay-as-you-go access. AI applications pay for access to trusted and well-known industry data providers.
MCP2Lambda
A bridge that enables MCP clients and LLMs to access and execute AWS Lambda functions as tools.
Gemini MCP Server
An MCP server for Google Gemini AI featuring Smart Tool Intelligence and self-contained, configurable preferences.
Graphlit
Ingest anything from Slack to Gmail to podcast feeds, in addition to web crawling, into a searchable Graphlit project.
ENS MCP Server
Interact with the Ethereum Name Service (ENS) to resolve names, check availability, and retrieve records.
RunPod MCP Server
Interact with the RunPod REST API to manage cloud GPU resources.
InstaPods
Deploy and manage hosting pods from Claude, Cursor, or any MCP client. Localhost to live URL in one step.