Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@MCP Server - Imagesgenerate a fantasy castle on a floating island at sunset with glowing crystals"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
MCP Server - Images
A Model Context Protocol (MCP) server for AI-powered image generation using Stability AI and Black Forest Labs APIs.
Features
Multi-provider support: Stability AI (Stable Diffusion) and Black Forest Labs (Flux models)
Direct generation: Accepts optimized prompts directly from calling LLM (no dual pipes)
Flexible filename templates: Customizable output filenames with timestamp, provider, model, and content-based variables
Comprehensive metadata: Full tracking of generation parameters, checksums, and provenance
Professional error handling: Detailed error reporting and retry mechanisms
MCP standard compliance: Works with any MCP-compatible client
Related MCP server: MCP TemplateIO
Quick Start
Installation
# Clone the repository
git clone https://github.com/rmrfslashbin/mcp-server-images.git
cd mcp-server-images
# Install dependencies
uv syncConfiguration
Configure via environment variables:
STABILITY_API_KEY=sk-... # Required for Stability AI
BFL_API_KEY=... # Required for Black Forest LabsUsage with MCP Client
# Run the server
uv run mcp-server-images
# Or via Python
python -m mcp_server_imagesMCP Tools
generate_image
Generate images from text prompts with AI-optimized prompting.
Parameters:
prompt(required): Detailed, optimized text description of the image to generatenegative_prompt(optional): Things to avoid in the image (Stability AI only)provider(optional): "stability" or "bfl" (default: "stability")model(optional): Specific model to use (e.g., "sd3.5-large", "flux-pro-1.1")aspect_ratio(optional): Image aspect ratio (default: "1:1")cfg_scale(optional): Classifier free guidance scale 1.0-10.0 (Stability AI only)seed(optional): Seed for reproducible generationoutput_dir(optional): Output directory (default: "./images")filename_template(optional): Template for generated filenames
Example:
{
"name": "generate_image",
"arguments": {
"prompt": "A majestic mountain landscape at golden hour, with a pristine lake reflecting the warm sunset colors, ancient pine trees framing the composition, volumetric lighting through misty atmosphere, highly detailed digital painting style",
"negative_prompt": "blurry, low quality, oversaturated, distorted, artificial",
"provider": "stability",
"model": "sd3.5-large",
"aspect_ratio": "16:9",
"cfg_scale": 7.5,
"filename_template": "{{.Timestamp}}-{{.Provider}}-{{.Subject}}"
}
}Filename Templates
Customize output filenames using template variables:
{{.Timestamp}}: mmddyy.hhmmss format{{.Date}}: mmddyy format{{.Time}}: hhmmss format{{.Provider}}: "stability" or "bfl"{{.Model}}: Model name (e.g., "sd3.5-large"){{.Subject}}: Cleaned main subject from prompt{{.Hash}}: Short hash of the prompt{{.Counter}}: Auto-incrementing counter
Example templates:
"{{.Timestamp}}-{{.Subject}}"→071825.143022-mountain_landscape.png"{{.Date}}.{{.Time}}-{{.Provider}}-{{.Model}}"→071825.143022-stability-sd35-large.png"img_{{.Counter}}_{{.Hash}}"→img_001_a7b2c9d8.png
Supported Providers
Stability AI
Models: sd3-large, sd3-large-turbo, sd3-medium, sd3.5-large, sd3.5-large-turbo, sd3.5-medium
Features: Negative prompts, CFG scale control, multiple aspect ratios
API: Stability AI REST API v2
Black Forest Labs
Models: flux-pro-1.1, flux-pro-1.1-ultra, flux-pro, flux-dev
Features: High-quality generation, fast turnaround
API: BFL REST API v1
Integration
With Chatterbox
Add to your config.yaml:
mcp:
servers:
images:
command: "uv"
args: ["run", "mcp-server-images"]
env:
STABILITY_API_KEY: "sk-..."
BFL_API_KEY: "..."
config:
output_dir: "./images"
filename_template: "{{.Timestamp}}-{{.Provider}}-{{.Subject}}"With Other MCP Clients
This server works with any MCP-compatible client including:
Claude Desktop
Cline (VS Code extension)
Continue (VS Code extension)
Custom MCP clients
Development
# Install development dependencies
uv sync --dev
# Run tests
uv run pytest
# Format code
uv run ruff format .
# Lint code
uv run ruff check .License
MIT License - see LICENSE file for details.
Contributing
Fork the repository
Create a feature branch
Make your changes
Add tests if applicable
Submit a pull request
Related Projects
chatterbox - AI chat interface with MCP support
mkimg - Original Python image generation pipeline
MCP Servers - Official MCP server implementations
This server cannot be installed
Resources
Unclaimed servers have limited discoverability.
Looking for Admin?
If you are the server author, to access and configure the admin panel.