A Quantitative Survey of Communication Optimizations in Distributed Deep Learning

Nowadays, large and complex deep learning (DL) models are increasingly trained in a distributed manner across multiple worker machines, in which extensive communications between workers pose serious scaling problems. In this article, we present a quantitative survey of communication optimization tec...

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Veröffentlicht in:IEEE network 2021-05, Vol.35 (3), p.230-237
Hauptverfasser: Shi, Shaohuai, Tang, Zhenheng, Chu, Xiaowen, Liu, Chengjian, Wang, Wei, Li, Bo
Format: Artikel
Sprache:eng
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Zusammenfassung:Nowadays, large and complex deep learning (DL) models are increasingly trained in a distributed manner across multiple worker machines, in which extensive communications between workers pose serious scaling problems. In this article, we present a quantitative survey of communication optimization techniques for data parallel distributed DL. We first identify the major communication challenges and classify the existing solutions into three levels, namely the learning algorithm, the system architecture, and the network infrastructure. We present the state-of-the-art communication optimization techniques and conduct a comparative study of seven common lossless distributed DL methods on a 32-GPU cluster with 100Gb/s InfiniBand (IB). We show that the DL models with low model intensity (such as BERT and BERT-Large) are difficult to scale out even with the best available lossless algorithm over 100Gb/s IB; and the system architecture and scheduling algorithms have a critical impact on the scaling property. We conclude the article with discussions of open issues for further investigation.
ISSN:0890-8044
1558-156X
DOI:10.1109/MNET.011.2000530