Sakana AI Presents DiffusionBlocks: A Method for Training Neural Networks in Blocks
Sakana AI proposed DiffusionBlocks—a method that converts residual networks into independently trainable blocks. The idea: interpret layer updates as reverse de

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Sakana AI proposed DiffusionBlocks—a method that converts residual networks into independently trainable blocks. The idea: interpret layer updates as reverse denoising steps. This simplifies parallel training and reduces synchronization requirements.