CopyCat is a Machine Learning Node which alows to artist to train their own network.

the idea is you work with images before and after. The final work are typically called groundtruth images.
EXAMPLE

Classic examples of using CopyCat are Beauty work, remove markers, garbage matting mask, colorization.
Things to consider where you prepare the training:
Motion – Lighting – Focus change
Store your CopyCat in the path directory.
CALCULATE YOUR EPOCHS
(steps*batch_size)/dataset_size=epochs
(10000*6)/12=5000
Check point
Model size: Medium
Crop size : Smaller crop Faster to train, is only aware of smaller details
Marger Crop: slow train eaware of larger areas
Inference input must match the training format
careful viewing the inference 1 frame is ok but cacheing/playback might crash nuke
Precomping your inferences is safest ready for the next step.
