Provides nodes and server API extensions geared towards using ComfyUI as a backend for external tools.
Provides nodes and API geared towards using ComfyUI as a backend for external tools.
ComfyUI exchanges images via the filesystem. This requires a multi-step process (upload images, prompt, download images), is rather inefficient, and invites a whole class of potential issues. It's also unclear at which point those images will get cleaned up if ComfyUI is used via external tools.
Loads an image from a PNG embedded into the prompt as base64 string.
Loads a mask (single channel) from a PNG embedded into the prompt as base64 string.
Sends an output image over the client WebSocket connection as PNG binary data.
This will first send one binary message for each image in the batch via WebSocket:
12<PNG-data>
That is two 32-bit integers (big endian) with values 1 and 2 followed by the PNG binary data. There is also a JSON message afterwards:
{'type': 'executed', 'data': {'node': '<node ID>', 'output': {'images': [{'source': 'websocket', 'content-type': 'image/png', 'type': 'output'}, ...]}, 'prompt_id': '<prompt ID>}}
These nodes implement attention masking for arbitrary number of image regions. Text prompts only apply to the masked area. In contrast to condition masking, this method is less "forceful", but leads to more natural image compositions.
Workflow: region_attention_mask.json
This node starts a list of regions. It takes a prompt, but no mask. The prompt is assigned to all image areas which are not covered by another region mask in the list.
Appends a new region to a region list (or starts a new list). Takes a prompt, and mask which defines the area in the image the prompt will apply to. Masks must be the same size as the image or the latent (which is factor 8 smaller).
This node takes a list of regions and outputs all their masks. It can be useful for inspection, debugging or to reuse the computed background mask.
Patches the model to use the provided list of regions. This replaces the positive text conditioning which is provided to the sampler. It's still possible to pass ControlNet and other conditioning to the sampler.
Copies a mask into the alpha channel of an image.
Splitting an image into tiles to be processed individually is a useful method to speed up diffusion and save VRAM. There are various nodes out there which provide a fixed pipeline. In contrast, the following nodes only provide a way to split an image into tiles and merge it back together. With tools and scripts it is feasible to generate individual workflows for each tile. This allows maximum flexibility (different prompts, regions, control, etc.).
This node defines the tiling parameters:
The number of tiles is: image_size // (min_tile_size + 2 * padding)
Splits out part of an image. Tile indices range from 0 to number of tiles and are column-major (tile 1 is usually below tile 0).
Same as "Extract Image Tile" but for masks.
Merges a tile into a full image, usually after sampling. Uses a smooth transition overlap between neighbouring tiles depending on padding and blending values.
Creates a coverage mask for a certain tile. The size of the mask matches the image tile size. The image area will be white (1) and the padding area black (0), with a smooth transition depending on the chosen blend size.
This mask is used internally by "Merge Image Tile", but it can also be useful as input for "Set Latent Noise Mask" in upscale workflows.
<a id="node-translate"></a>
Node which translates a string into English. The language to translate from is indicated with a
language directive of the form lang:xx
where xx is a 2-letter language code. Multiple
directives are allowed and change language for any text that comes after, until the next
directive. lang:en
(the default) passes through text fragments untouched. Useful
for keywords, tags and such.
Examples: | Input | Output | |:-|:-| | lang:de eine modische handtasche aus grünem kunstleder | a fashionable handbag made of green suede | | origami paperwork, lang:zh 狐狸和鹤, lang:en mountain view | origami paperwork, Fox and crane, mountain view |
Translation happens entirely local, powered by argosopentech/argos-translate:
pip install argostranslate
or pip install -r requirements.txt
There is also a translation API for immediate feedback in tool UI.
Checks images for NSFW content using Safety-Checker. Images which don't pass the check are blurred to obfuscate contents. Model is downloaded on first use.
Inputs: image and sensitivity (0.5 for explicit content only, 0.7+ to include partial nudity).
Important: the filter isn't perfect. Some explicit content may slip through.
There are various types of models that can be loaded as checkpoint, LoRA, ControlNet, etc. which cannot be used interchangeably. This endpoint helps to categorize and filter them.
folder_name
: sub-directory in ComfyUI's models folder.
Supported model types: checkpoints
, diffusion_models
Lists available models with additional classification info:
{
"checkpoint_file.safetensors": {
"base_model": "sd15",
"is_inpaint": false,
"is_refiner": false
},
...
}
Possible values for base model: sd15, sd20, sd21, sd3, sdxl, ssd1b, svd, cascade-b, cascade-c, aura-flow, hunyuan-dit, flux, flux-schnell
The entry is {"base_model": "unknown"}
for models which are not in safetensors format or do not match any of the known base models.
Returns a list of available languages for translation.
[
{ "name": "English", "code": "en" },
{ ... }
]
<a id="api-translation"></a>
Translates text
into English. lang
is a 2-letter code indicating the language to translate
from. text
may also contain language directives to only translate some fragments.
See the node documentation for details.
/api/etn/translate/de/eine%20modische%20Handtasche
-> "a fashionable handbag"
Uploads a model to ComfyUI's local model folder.
folder_name
: the model type. Must match one of the existing folders in ComfyUI's models folder.filename
: target filename for the model. Must not contain any (absolute or relative) path. Extension must be .safetensors.201
and { "status": "success" }
after successful upload.200
and { "status": "cached" }
if the file already exists.400
and { "error": "..." }
if the parameters are invalid.Download the repository and unpack into the custom_nodes
folder in the ComfyUI installation directory.
Or clone via GIT, starting from ComfyUI installation directory:
cd custom_nodes
git clone https://github.com/Acly/comfyui-tooling-nodes.git
Restart ComfyUI and the nodes are functional.