P

comfy-mcp-server

...
Created 2/14/2025bylalanikarim

Categories

comfyuimcp-server

Language:

Python

Stars:

18

Forks:

4

Comfy MCP Server

smithery badge

A server using FastMCP framework to generate images based on prompts via a remote Comfy server.

Overview

This script sets up a server using the FastMCP framework to generate images based on prompts using a specified workflow. It interacts with a remote Comfy server to submit prompts and retrieve generated images.

Prerequisites

  • uv package and project manager for Python.
  • Workflow file exported from Comfy UI. This code includes a sample Flux-Dev-ComfyUI-Workflow.json which is only used here as reference. You will need to export from your workflow and set the environment variables accordingly.

You can install the required packages for local development:

uvx mcp[cli]

Configuration

Set the following environment variables:

  • COMFY_URL to point to your Comfy server URL.
  • COMFY_WORKFLOW_JSON_FILE to point to the absolute path of the API export json file for the comfyui workflow.
  • PROMPT_NODE_ID to the id of the text prompt node.
  • OUTPUT_NODE_ID to the id of the output node with the final image.
  • OUTPUT_MODE to either url or file to select desired output.

Optionally, if you have an Ollama server running, you can connect to it for prompt generation.

  • OLLAMA_API_BASE to the url where ollama is running.
  • PROMPT_LLM to the name of the model hosted on ollama for prompt generation.

Example:

export COMFY_URL=http://your-comfy-server-url:port
export COMFY_WORKFLOW_JSON_FILE=/path/to/the/comfyui_workflow_export.json
export PROMPT_NODE_ID=6 # use the correct node id here
export OUTPUT_NODE_ID=9 # use the correct node id here
export OUTPUT_MODE=file

Usage

Comfy MCP Server can be launched by the following command:

uvx comfy-mcp-server

Example Claude Desktop Config

{

            
        
            
                  "mcpServers": {
    "Comfy MCP Server": {
      "command": "/path/to/uvx",
      "args": [
        "comfy-mcp-server"
      ],
      "env": {
        "COMFY_URL": "http://your-comfy-server-url:port",
        "COMFY_WORKFLOW_JSON_FILE": "/path/to/the/comfyui_workflow_export.json",
        "PROMPT_NODE_ID": "6",
        "OUTPUT_NODE_ID": "9",
        "OUTPUT_MODE": "file",
      }
    }
  }
}

Functionality

generate_image(prompt: str, ctx: Context) -> Image | str

This function generates an image using a specified prompt. It follows these steps:

  1. Checks if all the environment variable are set.
  2. Loads a prompt template from a JSON file.
  3. Submits the prompt to the Comfy server.
  4. Polls the server for the status of the prompt processing.
  5. Retrieves and returns the generated image once it's ready.

generate_prompt(topic: str, ctx: Context) -> str

This function generates a comprehensive image generation prompt from specified topic.

Dependencies

  • mcp: For setting up the FastMCP server.
  • json: For handling JSON data.
  • urllib: For making HTTP requests.
  • time: For adding delays in polling.
  • os: For accessing environment variables.
  • langchain: For creating simple LLM Prompt chain to generate image generation prompt from topic.
  • langchain-ollama: For ollama specific modules for LangChain.

License

This project is licensed under the MIT License - see the LICENSE file for details.

Last updated: 3/2/2025

Publisher info

lalanikarim's avatar

Karim Lalani

Infinidigm LLC
Leander, TX
44
followers
6
following
117
repos

More MCP servers built with Python

composer-trade-mcp

Create, backtest, and execute trades directly in one chat box. The Composer MCP Server gives LLMs the power to backtest investment ideas and execute automated trading strategies. Trade across stocks, ETFs, and crypto directly in Claude.

By https://github.com/ronnyli
slidespeak-mcp

An MCP to generate presentations with AI. Create and edit PowerPoint presentations with AI.

By https://github.com/SlideSpeak
PaddleOCR

The PaddleOCR MCP server brings enterprise-grade OCR and document parsing capabilities to AI applications. Built on PaddleOCR — a proven solution with 50,000+ GitHub stars, deeply integrated by leading projects like MinerU, RAGFlow, and OmniParser— with targeted optimizations based on the MCP concept.

By PaddlePaddle