Skip to content

A powerful tool that translates ComfyUI workflows into executable Python code.

License

Notifications You must be signed in to change notification settings

stenreijers/ComfyUI-to-Python-Extension

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

61 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

ComfyUI-to-Python-Extension

The ComfyUI-to-Python-Extension is a powerful tool that translates ComfyUI workflows into executable Python code. Designed to bridge the gap between ComfyUI's visual interface and Python's programming environment, this script facilitates the seamless transition from design to code execution. Whether you're a data scientist, a software developer, or an AI enthusiast, this tool streamlines the process of implementing ComfyUI workflows in Python.

Convert this:

SDXL UI Example

To this:

import random
import torch
import sys

sys.path.append("../")
from nodes import (
    VAEDecode,
    KSamplerAdvanced,
    EmptyLatentImage,
    SaveImage,
    CheckpointLoaderSimple,
    CLIPTextEncode,
)


def main():
    with torch.inference_mode():
        checkpointloadersimple = CheckpointLoaderSimple()
        checkpointloadersimple_4 = checkpointloadersimple.load_checkpoint(
            ckpt_name="sd_xl_base_1.0.safetensors"
        )

        emptylatentimage = EmptyLatentImage()
        emptylatentimage_5 = emptylatentimage.generate(
            width=1024, height=1024, batch_size=1
        )

        cliptextencode = CLIPTextEncode()
        cliptextencode_6 = cliptextencode.encode(
            text="evening sunset scenery blue sky nature, glass bottle with a galaxy in it",
            clip=checkpointloadersimple_4[1],
        )

        cliptextencode_7 = cliptextencode.encode(
            text="text, watermark", clip=checkpointloadersimple_4[1]
        )

        checkpointloadersimple_12 = checkpointloadersimple.load_checkpoint(
            ckpt_name="sd_xl_refiner_1.0.safetensors"
        )

        cliptextencode_15 = cliptextencode.encode(
            text="evening sunset scenery blue sky nature, glass bottle with a galaxy in it",
            clip=checkpointloadersimple_12[1],
        )

        cliptextencode_16 = cliptextencode.encode(
            text="text, watermark", clip=checkpointloadersimple_12[1]
        )

        ksampleradvanced = KSamplerAdvanced()
        vaedecode = VAEDecode()
        saveimage = SaveImage()

        for q in range(10):
            ksampleradvanced_10 = ksampleradvanced.sample(
                add_noise="enable",
                noise_seed=random.randint(1, 2**64),
                steps=25,
                cfg=8,
                sampler_name="euler",
                scheduler="normal",
                start_at_step=0,
                end_at_step=20,
                return_with_leftover_noise="enable",
                model=checkpointloadersimple_4[0],
                positive=cliptextencode_6[0],
                negative=cliptextencode_7[0],
                latent_image=emptylatentimage_5[0],
            )

            ksampleradvanced_11 = ksampleradvanced.sample(
                add_noise="disable",
                noise_seed=random.randint(1, 2**64),
                steps=25,
                cfg=8,
                sampler_name="euler",
                scheduler="normal",
                start_at_step=20,
                end_at_step=10000,
                return_with_leftover_noise="disable",
                model=checkpointloadersimple_12[0],
                positive=cliptextencode_15[0],
                negative=cliptextencode_16[0],
                latent_image=ksampleradvanced_10[0],
            )

            vaedecode_17 = vaedecode.decode(
                samples=ksampleradvanced_11[0], vae=checkpointloadersimple_12[2]
            )

            saveimage_19 = saveimage.save_images(
                filename_prefix="ComfyUI", images=vaedecode_17[0]
            )


if __name__ == "__main__":
    main()

Potential Use Cases

  • Streamlining the process for creating a lean app or pipeline deployment that uses a ComfyUI workflow
  • Creating programmatic experiments for various prompt/parameter values
  • Creating large queues for image generation (For example, you could adjust the script to generate 1000 images without clicking ctrl+enter 1000 times)
  • Easily expanding or iterating on your architecture in Python once a foundational workflow is in place in the GUI

V1.0.0 Release Notes

  • Use all the custom nodes!
    • Custom nodes are now supported. If you run into any issues with code execution, first ensure that the each node works as expected in the GUI. If it works in the GUI, but not in the generated script, please submit an issue.

Usage

  1. Navigate to your ComfyUI directory

  2. Clone this repo

    git clone https://github.com/pydn/ComfyUI-to-Python-Extension.git

    After cloning the repo, your ComfyUI directory should look like this:

    /comfy
    /comfy_extras
    /ComfyUI-to-Python-Extension
    /custom_nodes
    /input
    /models
    /output
    /script_examples
    /web
    .gitignore
    LICENSE
    README.md
    comfyui_screenshot.png
    cuda_mollac.py
    execution.py
    extra_model_paths.yaml.example
    folder_paths.py
    latent_preview.py
    main.py
    nodes.py
    requirements.txt
    server.py
    
  3. Navigate to the ComfyUI-to-Python-Extension folder and install requirements

    pip install -r requirements.txt
  4. Launch ComfyUI, click the gear icon over Queue Prompt, then check Enable Dev mode Options. THE SCRIPT WILL NOT WORK IF YOU DO NOT ENABLE THIS OPTION!

Enable Dev Mode Options

  1. Load up your favorite workflows, then click the newly enabled Save (API Format) button under Queue Prompt

  2. Move the downloaded .json workflow file to your ComfyUI/ComfyUI-to-Python-Extension folder

  3. If needed, update the input_file and output_file variables at the bottom of comfyui_to_python.py to match the name of your .json workflow file and desired .py file name. By default, the script will look for a file called workflow_api.json. You can also update the queue_size variable to your desired number of images that you want to generate in a single script execution. By default, the scripts will generate 10 images.

  4. Run the script:

    python comfyui_to_python.py
  5. After running comfyui_to_python.py, a new .py file will be created in the current working directory. If you made no changes, look for workflow_api.py.

  6. Now you can execute the newly created .py file to generate images without launching a server.

About

A powerful tool that translates ComfyUI workflows into executable Python code.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%