Analyzing I/O Performance of a Hierarchical HPC Storage System for Distributed Deep Learning

Takaaki Fukai, Kento Sato, Takahiro Hirofuchi
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Abstract

Today, deep learning is an essential technology for our life. To solve more complex problems with deep learning, both sizes of training datasets and neural networks are increasing. To train a model with large datasets and networks, distributed deep neural network (DDNN) training technique is necessary. For large-scale DDNN training, HPC clusters are a promising computation environment. In large-scale DDNN on HPC clusters, I/O performance is critical because it is becoming a bottleneck. Most flagship-class HPC clusters have hierarchical storage systems. For designing future HPC storage systems, it is necessary to quantify the performance improvement effect of the hierarchical storage system on the workloads. This paper demonstrates the quantitative performance analysis of the hierarchical storage system for DDNN workload in a flagship-class supercomputer. Our analysis shows how much performance improvement and volume increment of the storage will be required to meet the performance goal.
面向分布式深度学习的分层HPC存储系统I/O性能分析
今天,深度学习是我们生活中必不可少的技术。为了用深度学习解决更复杂的问题,训练数据集和神经网络的规模都在增加。为了训练具有大数据集和网络的模型,分布式深度神经网络(dddnn)训练技术是必要的。对于大规模的dddnn训练,高性能计算集群是一个很有前途的计算环境。在HPC集群上的大规模DDNN中,I/O性能至关重要,因为它正在成为瓶颈。大多数旗舰级HPC集群都有分层存储系统。为了设计未来的高性能计算存储系统,有必要量化分级存储系统对工作负载的性能提升效果。本文在旗舰级超级计算机上演示了DDNN工作负载分层存储系统的定量性能分析。我们的分析显示了实现性能目标需要多少性能改进和存储容量增量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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