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Add WAN ATI support #8688
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Add WAN ATI support #8688
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This is still in draft right? |
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I left in my file for running this workflow "ati.py"
latent shape looks like: [20, 21, 60, 104] for 820x480 image
right now I'm getting an error in the latent_format file when the tensor is being scaled for the original WAN model (since it now has 20 in the first dimension not 16), I'm not sure how to finish the integration with the model ksampler. Let me know what you think I should do from here. Thanks!