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Towards Scalable Distributed Training of Deep Learning on Public Cloud Clusters

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arxiv 2010.10458 v1 pith:Z5NAPRQP submitted 2020-10-20 cs.DC cs.AI

Towards Scalable Distributed Training of Deep Learning on Public Cloud Clusters

classification cs.DC cs.AI
keywords trainingdistributedcloudclusterscommunicationdeepefficientlarge-scale
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Distributed training techniques have been widely deployed in large-scale deep neural networks (DNNs) training on dense-GPU clusters. However, on public cloud clusters, due to the moderate inter-connection bandwidth between instances, traditional state-of-the-art distributed training systems cannot scale well in training large-scale models. In this paper, we propose a new computing and communication efficient top-k sparsification communication library for distributed training. To further improve the system scalability, we optimize I/O by proposing a simple yet efficient multi-level data caching mechanism and optimize the update operation by introducing a novel parallel tensor operator. Experimental results on a 16-node Tencent Cloud cluster (each node with 8 Nvidia Tesla V100 GPUs) show that our system achieves 25%-40% faster than existing state-of-the-art systems on CNNs and Transformer. We finally break the record on DAWNBench on training ResNet-50 to 93% top-5 accuracy on ImageNet.

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