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Modeling and simulation of extreme-scale fat-tree networks for HPC systems and data centers

机译:用于HPC系统和数据中心的超大规模胖树网络的建模和仿真

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摘要

As parallel and distributed systems are evolving toward extreme scale, for example, high-performance computing systems involve millions of cores and billion-way parallelism, and high-capacity storage systems require efficient access to petabyte or exabyte of data, many new challenges are posed on designing and deploying next-generation interconnection communication networks in these systems. Fat-tree networks have been widely used in both data centers and high-performance computing (HPC) systems in the past decades and are promising candidates of the next-generation extreme-scale networks. In this article, we present FatTreeSim, a simulation framework that supports modeling and simulation of extreme-scale fattree networks with the goal of understanding the design constraints of next-generation HPC and distributed systems and aiding the design and performance optimization of the applications running on these systems. We have systematically experimented FatTreeSim on Emulab and Blue Gene/Q and analyzed the scalability and fidelity of FatTreeSim with various network configurations. On the Blue Gene/Q Mira, FatTreeSim can achieve a peak performance of 305 million events per second using 16, 384 cores. Finally, we have applied FatTreeSim to simulate several large-scale Hadoop YARN applications to demonstrate its usability.
机译:例如,随着并行和分布式系统朝着极端规模发展,例如,高性能计算系统涉及数百万个内核和数十亿路并行性,而大容量存储系统则需要有效访问PB或EB的数据,因此带来了许多新的挑战。在这些系统中设计和部署下一代互连通信网络。在过去的几十年中,胖树网络已在数据中心和高性能计算(HPC)系统中广泛使用,并且有望成为下一代超大规模网络的候选者。在本文中,我们介绍FatTreeSim,这是一个支持极端胖树网络建模和仿真的仿真框架,目的是了解下一代HPC和分布式系统的设计约束,并帮助在其上运行的应用程序进行设计和性能优化。这些系统。我们已经在Emulab和Blue Gene / Q上系统地测试了FatTreeSim,并分析了不同网络配置下FatTreeSim的可扩展性和保真度。在Blue Gene / Q Mira上,FatTreeSim使用16、384个内核,可以达到每秒3.05亿个事件的峰值性能。最后,我们已经应用FatTreeSim模拟了几个大型Hadoop YARN应用程序,以证明其可用性。

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