Metadata-Version: 2.1
Name: comfy-script
Version: 0.4.1
Summary: A Python front end and library for ComfyUI
Project-URL: Homepage, https://github.com/Chaoses-Ib/ComfyScript
Project-URL: Issues, https://github.com/Chaoses-Ib/ComfyScript/issues
Author-email: Chaoses-Ib <Chaos-es@outlook.com>
License-File: LICENSE.txt
Keywords: comfyui
Classifier: License :: OSI Approved :: MIT License
Classifier: Operating System :: OS Independent
Classifier: Programming Language :: Python :: 3
Requires-Python: >=3.9
Provides-Extra: all
Requires-Dist: comfy-script[cli]; extra == 'all'
Requires-Dist: comfy-script[default]; extra == 'all'
Provides-Extra: cli
Requires-Dist: click~=8.1; extra == 'cli'
Provides-Extra: client
Requires-Dist: aiohttp; extra == 'client'
Requires-Dist: nest-asyncio>=1.5.9,~=1.0; extra == 'client'
Provides-Extra: default
Requires-Dist: comfy-script[jupyter]; extra == 'default'
Requires-Dist: comfy-script[no-ui]; extra == 'default'
Provides-Extra: jupyter
Requires-Dist: ipywidgets~=8.1; extra == 'jupyter'
Requires-Dist: pillow; extra == 'jupyter'
Provides-Extra: no-ui
Requires-Dist: comfy-script[client]; extra == 'no-ui'
Requires-Dist: comfy-script[nodes]; extra == 'no-ui'
Requires-Dist: comfy-script[runtime]; extra == 'no-ui'
Requires-Dist: comfy-script[transpile]; extra == 'no-ui'
Provides-Extra: nodes
Requires-Dist: comfyui-ib-customnodes>=0.2.1; extra == 'nodes'
Requires-Dist: comfyui-tooling-nodes; extra == 'nodes'
Provides-Extra: runtime
Requires-Dist: comfy-script[client]; extra == 'runtime'
Requires-Dist: comfy-script[transpile]; extra == 'runtime'
Requires-Dist: pillow; extra == 'runtime'
Requires-Dist: wrapt~=1.0; extra == 'runtime'
Provides-Extra: transpile
Requires-Dist: comfy-script[client]; extra == 'transpile'
Requires-Dist: networkx[default]~=3.0; extra == 'transpile'
Description-Content-Type: text/markdown

# ComfyScript
[![PyPI - Version](https://img.shields.io/pypi/v/comfy-script)](https://pypi.org/project/comfy-script) ![Python Version from PEP 621 TOML](https://img.shields.io/python/required-version-toml?tomlFilePath=https%3A%2F%2Fraw.githubusercontent.com%2FChaoses-Ib%2FComfyScript%2Fmain%2Fpyproject.toml) [![License](https://img.shields.io/pypi/l/comfy-script)](LICENSE.txt)

A Python front end and library for [ComfyUI](https://github.com/comfyanonymous/ComfyUI).

![](docs/images/README/plot.png)

It has the following use cases:
- Serving as a [human-readable format](https://github.com/comfyanonymous/ComfyUI/issues/612) for ComfyUI's workflows.

  This makes it easy to compare and reuse different parts of one's workflows.
  
  It is also possible to train LLMs to generate workflows, since many LLMs can handle Python code relatively well. This approach can be more powerful than just asking LLMs for some hardcoded parameters.

  Scripts can be automatically translated from ComfyUI's workflows. See [transpiler](#transpiler) for details.

- Directly running the script to generate images.

  The main advantage of doing this than using the web UI is being able to mix Python code with ComfyUI's nodes, such as doing loops, calling library functions, and easily encapsulating custom nodes. This also makes adding interaction easier since the UI and logic can be both written in Python. And, some people may feel more comfortable with simple Python code than a graph-based GUI.[^graph-gui]

  See [runtime](#runtime) for details. Scripts can be executed locally or remotely with a ComfyUI server.

- Using ComfyUI as a function library.

  With ComfyScript, ComfyUI's nodes can be used as functions to do ML research, reuse nodes in other projects, debug custom nodes, and optimize caching to run workflows faster.

  See runtime's [real mode](docs/Runtime.md#real-mode) for details.

- Generating ComfyUI's workflows with scripts.

  Scripts can also be used to generate ComfyUI's workflows and then used in the web UI or elsewhere. This way, one can use loops and generate huge workflows where it would be time-consuming or impractical to create them manually. See [workflow generation](docs/Runtime.md#workflow-generation) for details. It is also possible to load workflows from images generated by ComfyScript.

- Retrieving any wanted information by running the script with some stubs.

  See [workflow information retrieval](docs/README.md#workflow-information-retrieval) for details.

- Converting workflows from ComfyUI's web UI format to API format without the web UI.

## Installation
ComfyScript can be installed in different ways.

### Package and nodes with ComfyUI
Install [ComfyUI](https://github.com/comfyanonymous/ComfyUI) first. And then:
```sh
cd ComfyUI/custom_nodes
git clone https://github.com/Chaoses-Ib/ComfyScript.git
cd ComfyScript
python -m pip install -e ".[default]"
```
(If you see `ERROR: File "setup.py" or "setup.cfg" not found`, run `python -m pip install -U pip` first.)

Update:
```sh
cd ComfyUI/custom_nodes/ComfyScript
git pull
python -m pip install -e ".[default]"
```

### Package and nodes with ComfyUI package
Install [ComfyUI package](https://github.com/comfyanonymous/ComfyUI/pull/298) first:
```sh
python -m pip install git+https://github.com/hiddenswitch/ComfyUI.git
```

Install/update ComfyScript:
```sh
python -m pip install -U "comfy-script[default]"
```

(`[default]` is necessary to install common dependencies. See [`pyproject.toml`](pyproject.toml) for other options. If no option is specified, `comfy-script` will be installed without any dependencies.)

### Only package
Install/update:
```sh
python -m pip install -U "comfy-script[default]"
```

### Only nodes with ComfyUI
<details>

Install [ComfyUI](https://github.com/comfyanonymous/ComfyUI) first. And then:
```sh
cd ComfyUI/custom_nodes
git clone https://github.com/Chaoses-Ib/ComfyScript.git
cd ComfyScript
python -m pip install -r requirements.txt
```

Update:
```sh
cd ComfyUI/custom_nodes/ComfyScript
git pull
python -m pip install -r requirements.txt
```

If you want, you can still import the package with a hardcoded path:
```python
import sys
# Or just '../src' if used in the examples directory
sys.path.insert(0, r'D:\...\ComfyUI\custom_nodes\ComfyScript\src')

import comfy_script
```

</details>

## Transpiler
The transpiler can translate ComfyUI's workflows to ComfyScript.

When ComfyScript is installed as custom nodes, `SaveImage` and similar nodes will be hooked to automatically save the script as images' metadata. And the script will also be output to the terminal.

For example, here is a workflow in ComfyUI:

![](docs/images/README/workflow.png)

ComfyScript translated from it:
```python
model, clip, vae = CheckpointLoaderSimple('v1-5-pruned-emaonly.ckpt')
conditioning = CLIPTextEncode('beautiful scenery nature glass bottle landscape, , purple galaxy bottle,', clip)
conditioning2 = CLIPTextEncode('text, watermark', clip)
latent = EmptyLatentImage(512, 512, 1)
latent = KSampler(model, 156680208700286, 20, 8, 'euler', 'normal', conditioning, conditioning2, latent, 1)
image = VAEDecode(latent, vae)
SaveImage(image, 'ComfyUI')
```

If there two or more `SaveImage` nodes in one workflow, only the necessary inputs of each node will be translated to scripts. For example, here is a 2 pass txt2img (hires fix) workflow:

![](docs/images/README/workflow2.png)

ComfyScript saved for each of the two saved image are respectively:
1. ```python
   model, clip, vae = CheckpointLoaderSimple('v2-1_768-ema-pruned.ckpt')
   conditioning = CLIPTextEncode('masterpiece HDR victorian portrait painting of woman, blonde hair, mountain nature, blue sky', clip)
   conditioning2 = CLIPTextEncode('bad hands, text, watermark', clip)
   latent = EmptyLatentImage(768, 768, 1)
   latent = KSampler(model, 89848141647836, 12, 8, 'dpmpp_sde', 'normal', conditioning, conditioning2, latent, 1)
   image = VAEDecode(latent, vae)
   SaveImage(image, 'ComfyUI')
   ```
2. ```python
   model, clip, vae = CheckpointLoaderSimple('v2-1_768-ema-pruned.ckpt')
   conditioning = CLIPTextEncode('masterpiece HDR victorian portrait painting of woman, blonde hair, mountain nature, blue sky', clip)
   conditioning2 = CLIPTextEncode('bad hands, text, watermark', clip)
   latent = EmptyLatentImage(768, 768, 1)
   latent = KSampler(model, 89848141647836, 12, 8, 'dpmpp_sde', 'normal', conditioning, conditioning2, latent, 1)
   latent2 = LatentUpscale(latent, 'nearest-exact', 1152, 1152, 'disabled')
   latent2 = KSampler(model, 469771404043268, 14, 8, 'dpmpp_2m', 'simple', conditioning, conditioning2, latent2, 0.5)
   image = VAEDecode(latent2, vae)
   SaveImage(image, 'ComfyUI')
   ```

Comparing scripts:

![](docs/images/README/diff.png)

You can also use the transpiler via the [CLI](docs/Transpiler.md#cli).

## Runtime
With the runtime, one can run ComfyScript like this:
```python
from comfy_script.runtime import *
load()
from comfy_script.runtime.nodes import *

with Workflow():
    model, clip, vae = CheckpointLoaderSimple('v1-5-pruned-emaonly.ckpt')
    conditioning = CLIPTextEncode('beautiful scenery nature glass bottle landscape, , purple galaxy bottle,', clip)
    conditioning2 = CLIPTextEncode('text, watermark', clip)
    latent = EmptyLatentImage(512, 512, 1)
    latent = KSampler(model, 156680208700286, 20, 8, 'euler', 'normal', conditioning, conditioning2, latent, 1)
    image = VAEDecode(latent, vae)
    SaveImage(image, 'ComfyUI')
```

A Jupyter Notebook example is available at [`examples/runtime.ipynb`](examples/runtime.ipynb). (Files under `examples` directory will be ignored by Git and you can put your personal notebooks there.)

- [Type stubs](https://typing.readthedocs.io/en/latest/source/stubs.html) will be generated at `comfy_script/runtime/nodes.pyi` after loading. Mainstream code editors (e.g. [VS Code](https://code.visualstudio.com/docs/languages/python)) can use them to help with coding:

  | | |
  | --- | --- |
  | ![](docs/images/README/type-stubs.png) | ![](docs/images/README/type-stubs2.png) |

  [Python enumerations](https://docs.python.org/3/howto/enum.html) are generated for all arguments provding the value list. So instead of copying and pasting strings like `'v1-5-pruned-emaonly.ckpt'`, you can use:
  ```python
  Checkpoints.v1_5_pruned_emaonly
  # or
  CheckpointLoaderSimple.ckpt_name.v1_5_pruned_emaonly
  ```
  
  Embeddings can also be referenced as `Embeddings.my_embedding`, which is equivalent to `'embedding:my-embedding'`.

  See [enumerations](docs/Runtime.md#enumerations) for details.

- The runtime is asynchronous by default. You can queue multiple tasks without waiting for the first one to finish. A daemon thread will watch and report the remaining tasks in the queue and the current progress, for example:
  ```
  Queue remaining: 1
  Queue remaining: 2
  100%|██████████████████████████████████████████████████| 20/20
  Queue remaining: 1
  100%|██████████████████████████████████████████████████| 20/20
  Queue remaining: 0
  ```
  Some control functions are also available:
  ```python
  # Interrupt the current task
  queue.cancel_current()
  # Clear the queue
  queue.cancel_remaining()
  # Interrupt the current task and clear the queue
  queue.cancel_all()
  # Call the callback when the queue is empty
  queue.when_empty(callback)

  # With Workflow:
  Workflow(cancel_remaining=True)
  Workflow(cancel_all=True)
  ```

See [differences from ComfyUI's web UI](docs/Runtime.md#differences-from-comfyuis-web-ui) if you are a previous user of ComfyUI's web UI, and [runtime](docs/Runtime.md) for the details of runtime.

### Examples
#### Plotting
```python
with Workflow():
    seed = 0
    pos = 'sky, 1girl, smile'
    neg = 'embedding:easynegative'
    model, clip, vae = CheckpointLoaderSimple(Checkpoints.AOM3A1B_orangemixs)
    model2, clip2, vae2 = CheckpointLoaderSimple(Checkpoints.CounterfeitV25_25)
    model2 = TomePatchModel(model2, 0.5)
    for color in 'red', 'green', 'blue':
        latent = EmptyLatentImage(440, 640)
        latent = KSampler(model, seed, steps=15, cfg=6, sampler_name='uni_pc',
                          positive=CLIPTextEncode(f'{color}, {pos}', clip), negative=CLIPTextEncode(neg, clip),
                          latent_image=latent)
        SaveImage(VAEDecode(latent, vae2), f'{seed} {color}')
        latent = LatentUpscaleBy(latent, scale_by=2)
        latent = KSampler(model2, seed, steps=15, cfg=6, sampler_name='uni_pc',
                          positive=CLIPTextEncode(f'{color}, {pos}', clip2), negative=CLIPTextEncode(neg, clip2),
                          latent_image=latent, denoise=0.6)
        SaveImage(VAEDecode(latent, vae2), f'{seed} {color} hires')
```

![](docs/images/README/plot.png)

#### Auto queue
Automatically queue new workflows when the queue becomes empty.

For example, one can use [comfyui-photoshop](https://github.com/NimaNzrii/comfyui-photoshop) (currently a bit buggy) to automatically do img2img with the image in Photoshop when it changes:
```python
def f(wf):
    seed = 0
    pos = '1girl, angry, middle finger'
    neg = 'embedding:easynegative'
    model, clip, vae = CheckpointLoaderSimple(Checkpoints.CounterfeitV25_25)
    image, width, height = PhotoshopToComfyUI(wait_for_photoshop_changes=True)
    latent = VAEEncode(image, vae)
    latent = LatentUpscaleBy(latent, scale_by=1.5)
    latent = KSampler(model, seed, steps=15, cfg=6, sampler_name='uni_pc',
                        positive=CLIPTextEncode(pos, clip), negative=CLIPTextEncode(neg, clip),
                        latent_image=latent, denoise=0.8)
    PreviewImage(VAEDecode(latent, vae))
queue.when_empty(f)
```
Screenshot:

![](docs/images/README/auto-queue.png)

#### Select and process
For example, to generate 3 images at once, and then let the user decide which ones they want to hires fix:
```python
import ipywidgets as widgets

queue.watch_display(False, False)

latents = []
image_batches = []
with Workflow():
    seed = 0
    pos = 'sky, 1girl, smile'
    neg = 'embedding:easynegative'
    model, clip, vae = CheckpointLoaderSimple(Checkpoints.AOM3A1B_orangemixs)
    model2, clip2, vae2 = CheckpointLoaderSimple(Checkpoints.CounterfeitV25_25)
    for color in 'red', 'green', 'blue':
        latent = EmptyLatentImage(440, 640)
        latent = KSampler(model, seed, steps=15, cfg=6, sampler_name='uni_pc',
                          positive=CLIPTextEncode(f'{color}, {pos}', clip), negative=CLIPTextEncode(neg, clip),
                          latent_image=latent)
        latents.append(latent)
        image_batches.append(SaveImage(VAEDecode(latent, vae), f'{seed} {color}'))

grid = widgets.GridspecLayout(1, len(image_batches))
for i, image_batch in enumerate(image_batches):
    image_batch = image_batch.wait()
    image = widgets.Image(value=image_batch[0]._repr_png_())

    button = widgets.Button(description=f'Hires fix {i}')
    def hiresfix(button, i=i):
        print(f'Image {i} is chosen')
        with Workflow():
            latent = LatentUpscaleBy(latents[i], scale_by=2)
            latent = KSampler(model2, seed, steps=15, cfg=6, sampler_name='uni_pc',
                            positive=CLIPTextEncode(pos, clip2), negative=CLIPTextEncode(neg, clip2),
                            latent_image=latent, denoise=0.6)
            image_batch = SaveImage(VAEDecode(latent, vae2), f'{seed} hires')
        display(image_batch.wait())
    button.on_click(hiresfix)

    grid[0, i] = widgets.VBox(children=(image, button))
display(grid)
```
This example uses [ipywidgets](https://github.com/jupyter-widgets/ipywidgets) for the GUI, but other GUI frameworks can be used as well.

Screenshot:

![](docs/images/README/select.png)

## [Documentation](docs/README.md)
- [Runtime](docs/Runtime.md)
- [Images](docs/Image/README.md)
- [Additional Nodes](docs/Nodes/README.md)
- [Transpiler](docs/Transpiler.md)


[^graph-gui]: [I hate nodes. (No offense comfyui) : StableDiffusion](https://www.reddit.com/r/StableDiffusion/comments/15cr5xx/i_hate_nodes_no_offense_comfyui/)