ATOMO: Communication-efficient Learning via Atomic Sparsification

June 11, 2018 Β· Declared Dead Β· πŸ› Neural Information Processing Systems

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Authors Hongyi Wang, Scott Sievert, Zachary Charles, Shengchao Liu, Stephen Wright, Dimitris Papailiopoulos arXiv ID 1806.04090 Category stat.ML: Machine Learning (Stat) Cross-listed cs.DC, cs.LG Citations 380 Venue Neural Information Processing Systems Last Checked 1 month ago
Abstract
Distributed model training suffers from communication overheads due to frequent gradient updates transmitted between compute nodes. To mitigate these overheads, several studies propose the use of sparsified stochastic gradients. We argue that these are facets of a general sparsification method that can operate on any possible atomic decomposition. Notable examples include element-wise, singular value, and Fourier decompositions. We present ATOMO, a general framework for atomic sparsification of stochastic gradients. Given a gradient, an atomic decomposition, and a sparsity budget, ATOMO gives a random unbiased sparsification of the atoms minimizing variance. We show that recent methods such as QSGD and TernGrad are special cases of ATOMO and that sparsifiying the singular value decomposition of neural networks gradients, rather than their coordinates, can lead to significantly faster distributed training.
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