English

DiffusionBlocks: Block-wise Neural Network Training via Diffusion Interpretation

Machine Learning 2026-02-19 v3 Artificial Intelligence Machine Learning

Abstract

End-to-end backpropagation requires storing activations throughout all layers, creating memory bottlenecks that limit model scalability. Existing block-wise training methods offer means to alleviate this problem, but they rely on ad-hoc local objectives and remain largely unexplored beyond classification tasks. We propose DiffusionBlocks\textit{DiffusionBlocks}, a principled framework for transforming transformer-based networks into genuinely independent trainable blocks that maintain competitive performance with end-to-end training. Our key insight leverages the fact that residual connections naturally correspond to updates in a dynamical system. With minimal modifications to this system, we can convert the updates to those of a denoising process, where each block can be learned independently by leveraging the score matching objective. This independence enables training with gradients for only one block at a time, thereby reducing memory requirements in proportion to the number of blocks. Our experiments on a range of transformer architectures (vision, diffusion, autoregressive, recurrent-depth, and masked diffusion) demonstrate that DiffusionBlocks training matches the performance of end-to-end training while enabling scalable block-wise training on practical tasks beyond small-scale classification. DiffusionBlocks provides a theoretically grounded approach that successfully scales to modern generative tasks across diverse architectures. Code is available at https://github.com/SakanaAI/DiffusionBlocks .

Keywords

Cite

@article{arxiv.2506.14202,
  title  = {DiffusionBlocks: Block-wise Neural Network Training via Diffusion Interpretation},
  author = {Makoto Shing and Masanori Koyama and Takuya Akiba},
  journal= {arXiv preprint arXiv:2506.14202},
  year   = {2026}
}

Comments

To appear at the 14th International Conference on Learning Representations (ICLR 2026)