aicoder2048/img_gen_replicate_mcp
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A comprehensive MCP server enabling LLM clients to generate, edit, and evaluate images through the Replicate API.
Replicate MCP Server
A comprehensive MCP (Model Context Protocol) server that enables LLM clients to generate, edit, and evaluate images through the Replicate API.
Features
- Text-to-Image Generation: Generate single or batch images from text prompts
- Image-to-Image Generation: Transform images based on reference images and prompts
- Image Editing: Edit existing images with text-guided modifications
- Creative Prompts: Generate creative image prompts based on style, subject, and mood
- Batch Processing: Process up to 5 images concurrently
- Progress Reporting: Real-time progress updates for long-running operations
- Error Handling: Comprehensive error handling and validation
Installation
- Clone the repository:
git clone https://github.com/yourusername/replicate-mcp-server.git
cd replicate-mcp-server
- Install dependencies using uv:
uv sync
- Set up your environment:
cp .env.example .env
# Edit .env and add your Replicate API token
Configuration
Environment Variables
Create a .env file with:
REPLICATE_API_TOKEN=your-replicate-api-token-here
LOG_LEVEL=INFO
MAX_BATCH_SIZE=5
REQUEST_TIMEOUT=300
ENABLE_DEBUG=false
Claude Desktop Configuration
Add to your Claude Desktop configuration:
{
"mcpServers": {
"replicate-image-server": {
"command": "uv",
"args": [
"run",
"python",
"/path/to/replicate-mcp-server/src/main.py"
],
"env": {
"REPLICATE_API_TOKEN": "your-replicate-api-token"
}
}
}
}
Claude Code Configuration
Add to your Claude Code configuration:
{
"mcpServers": {
"replicate-image-server": {
"command": "uv",
"args": [
"run",
"python",
"/path/to/replicate-mcp-server/src/main.py"
],
"env": {
"REPLICATE_API_TOKEN": "your-replicate-api-token",
"LOG_LEVEL": "DEBUG"
}
}
}
}
Available Tools
generate_image
Generate a single image from a text prompt.
Parameters:
prompt(str): Text description of the image to generatewidth(int): Image width in pixels (256-2048, default: 1024)height(int): Image height in pixels (256-2048, default: 1024)negative_prompt(str, optional): What to avoid in the imagenum_inference_steps(int): Number of denoising steps (1-50, default: 4)guidance_scale(float): How closely to follow the prompt (0.0-20.0, default: 0.0)seed(int, optional): Random seed for reproducibilitymodel_name(str, optional): Specific model to use
generate_image_batch
Generate multiple images concurrently from text prompts.
Parameters:
prompts(list[str]): List of text descriptions (max 5 prompts)- Same optional parameters as
generate_image
generate_from_reference_image
Generate an image based on a reference image and text prompt.
Parameters:
image_url(str): URL of the reference imageprompt(str): Text description for transformationstrength(float): Transformation strength (0.1-1.0, default: 0.8)- Other optional parameters similar to
generate_image
edit_image
Edit an existing image based on text prompts.
Parameters:
image_url(str): URL of the image to editprompt(str): Description of desired editsmask_url(str, optional): URL of mask imagestrength(float): Edit strength (0.1-1.0, default: 0.7)preserve_original(bool): Whether to preserve unmasked areas (default: true)model_name(str, optional): Specific model to use
Available Prompts
creative_image_prompt
Generate creative image prompts based on style, subject, and mood.
Parameters:
style(str): Art style (default: "photorealistic")- Options: photorealistic, anime, oil_painting, watercolor, digital_art, impressionist, cyberpunk, minimalist
subject(str): Subject matter (default: "landscape")- Options: landscape, portrait, architecture, nature, abstract, urban, fantasy, still_life
mood(str): Mood/atmosphere (default: "serene")- Options: serene, dramatic, mysterious, joyful, melancholic, energetic, romantic, ethereal
Models
The server uses the following default models:
- Text-to-Image:
bytedance/sdxl-lightning-4step - Image-to-Image:
google/nano-banana - Image Editing:
bytedance/seedream-4
Development
Running Tests
uv run pytest
Type Checking
uv run mypy src
Code Formatting
uv run black src
uv run ruff check src
License
MIT
Contributing
Contributions are welcome! Please read our contributing guidelines and submit pull requests to our repository.
Support
For issues and questions, please open an issue on GitHub.