Using Emulab for Deep Learning Performance Comparisons among Network Topologies

Gibeom Song, Seungsoo Park, Manhee Lee
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引用次数: 1

Abstract

Emulab is a versatile research framework proposed and implemented by Utah University, instantly providing a dedicated cluster system using real systems and switches upon a user request. As machine learning has been used in most areas, it is also natural to try to use Emulab for machine learning. However, there has been no study on how to configure Emulab nodes to run machine learning. In particular, our research focuses on comparing the performance of TensorFlow, one of the most widely used tools in deep learning field, to find out which network topology has the best performance. In our experiments, the star topology cluster running the data parallelism model of TensorFlow showed the best performance. In addition, to our best knowledge, this study is the first research to investigate to figure out the relationship between cluster interconnects and deep learning performance by using Emulab.
使用Emulab进行网络拓扑间的深度学习性能比较
Emulab是一个多功能的研究框架,由犹他大学提出并实施,根据用户的要求,立即提供一个使用真实系统和交换机的专用集群系统。由于机器学习已经在大多数领域得到了应用,因此尝试使用Emulab进行机器学习也是很自然的。然而,关于如何配置Emulab节点来运行机器学习还没有研究。特别是,我们的研究重点是比较深度学习领域中使用最广泛的工具之一TensorFlow的性能,以找出哪种网络拓扑具有最佳性能。在我们的实验中,运行TensorFlow数据并行模型的星型拓扑簇表现出最好的性能。此外,据我们所知,本研究是第一个使用Emulab来研究集群互连与深度学习性能之间关系的研究。
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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