OpenAI GPT Image
Generate and edit images using OpenAI's GPT-4o image generation and editing APIs with advanced prompt control.
openai-gpt-image-mcp
A Model Context Protocol (MCP) tool server for OpenAI's GPT-4o/gpt-image-1 image generation and editing APIs.
- Generate images from text prompts using OpenAI's latest models.
- Edit images (inpainting, outpainting, compositing) with advanced prompt control.
- Supports: Claude Desktop, Cursor, VSCode, Windsurf, and any MCP-compatible client.
✨ Features
- create-image: Generate images from a prompt, with advanced options (size, quality, background, etc).
- edit-image: Edit or extend images using a prompt and optional mask, supporting both file paths and base64 input.
- Aspect Ratio Support: Use common aspect ratios like 16:9, 9:16, 1:1, landscape, portrait, etc., which automatically map to supported sizes.
- File output: Save generated images directly to disk, or receive as base64.
- AI-Generated Filenames: The AI can provide descriptive filenames like "cat-playing-football.jpg" based on the image content.
🚀 Installation
Quick Setup with NPX (Recommended)
No installation needed! Use directly with npx:
{
"mcpServers": {
"openai-gpt-image": {
"command": "npx",
"args": ["openai-gpt-image-mcp-199bio"],
"env": {
"OPENAI_API_KEY": "sk-..."
}
}
}
}
Manual Installation
npm install -g openai-gpt-image-mcp-199bio
Or build from source:
git clone https://github.com/199-biotechnologies/openai-gpt-image-mcp.git
cd openai-gpt-image-mcp
yarn install
yarn build
🔑 Configuration
The configuration shown above in the Quick Setup section works for all MCP-compatible clients:
- Claude Desktop
- VSCode
- Cursor
- Windsurf
Just add the configuration to your MCP client's config file with your OpenAI API key.
⚡ Advanced
Aspect Ratio Support
The tools now support common aspect ratios that automatically map to OpenAI's supported sizes:
- Square:
1:1,square,4:3,3:4→ 1024x1024 - Landscape:
16:9,landscape,3:2→ 1536x1024 - Portrait:
9:16,portrait,2:3→ 1024x1536 - Auto:
auto→ Let OpenAI choose the best size
Example: Instead of specifying size: "1536x1024", you can use size: "16:9" or size: "landscape".
Other Options
- For
create-image, setnto generate up to 10 images at once. - For
edit-image, provide a mask image (file path or base64) to control where edits are applied. - See
src/index.tsfor all options.
🧑💻 Development
- TypeScript source:
src/index.ts - Build:
yarn build - Run:
node dist/index.js
📝 License
MIT
🩺 Troubleshooting
- Make sure your
OPENAI_API_KEYis valid and has image API access. - You must have a verified OpenAI organization. After verifying, it can take 15–20 minutes for image API access to activate.
- File paths must be absolute.
- Unix/macOS/Linux: Starting with
/(e.g.,/path/to/image.png) - Windows: Drive letter followed by
:(e.g.,C:/path/to/image.pngorC:\path\to\image.png)
- Unix/macOS/Linux: Starting with
- For file output, ensure the directory is writable.
- If you see errors about file types, check your image file extensions and formats.
⚠️ Limitations & Large File Handling
- 1MB Payload Limit: MCP clients (including Claude Desktop) have a hard 1MB limit for tool responses. Large images (especially high-res or multiple images) can easily exceed this limit if returned as base64.
- Auto-Switch to File Output: If the total image size exceeds 1MB, the tool will automatically save images to disk and return the file path(s) instead of base64. This ensures compatibility and prevents errors like
result exceeds maximum length of 1048576. - Default File Location:
- macOS/Linux: Images are saved to
~/Pictures/gpt-image/by default - Fallback: If the default directory cannot be created, images will be saved to
/tmp(or the directory set by theMCP_HF_WORK_DIRenvironment variable) - Custom Path: You can always specify a custom
file_outputpath to override the default
- macOS/Linux: Images are saved to
- AI-Generated Filenames:
- The AI can provide descriptive filenames through the
filenameparameter (e.g., "cat-playing-football", "sunset-over-mountains") - Filenames are automatically sanitized to prevent security issues
- If multiple images are generated, an index is appended (e.g., "cat-playing-football_1.jpg", "cat-playing-football_2.jpg")
- The AI can provide descriptive filenames through the
- Environment Variable:
MCP_HF_WORK_DIR: Set this to control the fallback directory for large images and file outputs. Example:export MCP_HF_WORK_DIR=/your/desired/dir
- Best Practice: For large or production images, always use file output and ensure your client is configured to handle file paths.
📚 References
🙏 Credits
- Built with @modelcontextprotocol/sdk
- Uses openai Node.js SDK
- Built by SureScale.ai
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