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Below I am attaching a WORK IN PROGRESS WORKFLOW THAT IS NOT FULLY FUNCTIONAL AND IS SUBJECT TO CHANGE. Please feel free to use it as you wish. I will not be here to provide tech support, but I would love to answer questions you all have about the specifics on why I settled on what I chose for my workflow. https://github.com/SytanSD/Sytan-SDXL-ComfyUI
in the modal card it says: pretrained text encoders (OpenCLIP-ViT/G and CLIP-ViT/L).
in the modal card it says: pretrained text encoders (OpenCLIP-ViT/G and CLIP-ViT/L).
Give my tiled sampler nodes a try. padded mode works quite nicely for the refiner.
ComfyUI Noise can do it. Maybe that WAS has some nodes that let you do it? but haven't checked
ComfyUI Noise can do it. Maybe that WAS has some nodes that let you do it? but haven't checked
ComfyUI manager can auto install missing nodes.. but I like my manual control