Modeling Traffic Workloads in Data-center Network Simulation Tools

Luis Gonzalez-Naharro, J. Escudero-Sahuquillo, P. García, F. Quiles, J. Duato, Wenhao Sun, Xiang Yu, Hewen Zheng
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引用次数: 1

Abstract

POSTER PAPER Data-centers are commonly used by most important cloud providers worldwide in order to provide storage and computing resources, and, based on these resources, advanced IT services and applications. With the expected explosion of data in the next few years, Data-centers will require new architectures to cope with the new requirements of applications and users. One of the crucial subsystems within the Data-center architecture that must evolve accordingly to the new requirements is the interconnection network or Data-center network (DCN). The DCN performance (basically, high communication bandwidth and low latency) must be guaranteed, otherwise the DCN becoming the system bottleneck. There are several key issues that DCN designers must make decisions on, such as the network topology, routing algorithm, congestion management, etc. An important aspect that impacts on the DCN design are the network communication patterns generated by applications and services. In that sense, an accurate modeling of these traffic workloads would help network designers to make better decisions. In this paper, we present an analysis of the few available studies on traffic modeling for DCNs, in order to gather a set of parameters that define the behaviour of common traffic workloads. Based on these parameters, we have implemented a synthetic DCN traffic generator, which has been included in our simulation framework in order to feed the network with the inferred traffic workloads. We have conducted extensive simulations to test the impact of the parameter variation on the network performance. From the obtained results, we can conclude that the destination distribution is crucial for the network performance. Higher oversubscription of destinations generates incast scenarios that lead to congestion situations and head-of-line blocking, affecting other flows that do not contribute to the incast situation and so spoiling the network performance.
在数据中心网络仿真工具中建模流量工作负载
全球最重要的云提供商通常使用数据中心来提供存储和计算资源,并基于这些资源提供高级IT服务和应用程序。随着未来几年数据的爆炸性增长,数据中心将需要新的体系结构来应对应用程序和用户的新需求。数据中心体系结构中必须根据新的需求进行相应发展的关键子系统之一是互连网络或数据中心网络(DCN)。必须保证DCN的性能(基本上是高通信带宽和低时延),否则DCN将成为系统的瓶颈。DCN设计者必须决定几个关键问题,如网络拓扑、路由算法、拥塞管理等。影响DCN设计的一个重要方面是由应用程序和服务生成的网络通信模式。从这个意义上说,这些流量负载的准确建模将有助于网络设计人员做出更好的决策。在本文中,我们对少数可用的dcn流量建模研究进行了分析,以便收集一组定义常见流量工作负载行为的参数。基于这些参数,我们实现了一个合成的DCN流量生成器,它已经包含在我们的模拟框架中,以便为网络提供推断的流量工作负载。我们进行了大量的模拟来测试参数变化对网络性能的影响。从得到的结果,我们可以得出结论,目标分布对网络性能至关重要。目的地的超额订阅会产生突发情况,导致拥塞和排队阻塞,影响其他不参与突发情况的流,从而影响网络性能。
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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