preprintarXiv (Cornell University)Feb 19, 2017GREEN OA

Revisiting Distributed Synchronous SGD

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Abstract

Distributed training of deep learning models on large-scale training data is typically conducted with asynchronous stochastic optimization to maximize the rate of updates, at the cost of additional noise introduced from asynchrony. In contrast, the synchronous approach is often thought to be impractical due to idle time wasted on waiting for straggling workers. We revisit these conventional beliefs in this paper, and examine the weaknesses of both approaches. We demonstrate that a third approach, synchronous optimization with backup workers, can avoid asynchronous noise while mitigating for the worst stragglers. Our approach is empirically validated and shown to converge faster and to better test accuracies.

Citation impact

610
total citations
FWCI
Percentile
References
27
Citations per year

Authors

5

Topics & keywords

Keywords
  • Computer science
  • Distributed computing
UN Sustainable Development Goals
  • Decent work and economic growth
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