Evaluating the Combined Impact of Node Architecture and Cloud Workload Characteristics on Network Traffic and Performance/Cost

D. Z. Tootaghaj, F. Farhat, M. Arjomand, P. Faraboschi, M. Kandemir, A. Sivasubramaniam, C. Das
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引用次数: 16

Abstract

The combined impact of node architecture and workload characteristics on off-chip network traffic with performance/cost analysis has not been investigated before in the context of emerging cloud applications. Motivated by this observation, this paper performs a thorough characterization of twelve cloud workloads using a full-system datacenter simulation infrastructure. We first study the inherent network characteristics of emerging cloud applications including message inter-arrival times, packet sizes, inter-node communication overhead, self-similarity, and traffic volume. Then, we study the effect of hardware architectural metrics on network traffic. Our experimental analysis reveals that (1) the message arrival times and packet-size distributions exhibit variances across different cloud applications, (2) the inter-arrival times imply a large amount of self-similarity as the number of nodes increase, (3) the node architecture can play a significant role in shaping the overall network traffic, and finally, (4) the applications we study can be broadly divided into those which perform better in a scale-out or scale-up configuration at node level and into two categories, namely, those that have long-duration, low-burst flows and those that have short-duration, high-burst flows. Using the results of (3) and (4), the paper discusses the performance/cost trade-offs for scale-out and scale-up approaches and proposes an analytical model that can be used to predict the communication and computation demand for different configurations. It is shown that the difference between two different node architecture's performance per dollar cost (under same number of cores system wide) can be as high as 154 percent which disclose the need for accurate characterization of cloud applications before wasting the precious cloud resources by allocating wrong architecture. The results of this study can be used for system modeling, capacity planning and managing heterogeneous resources for large-scale system designs.
评估节点架构和云工作负载特性对网络流量和性能/成本的综合影响
节点架构和工作负载特征对片外网络流量的综合影响以及性能/成本分析在新兴云应用程序的背景下还没有被研究过。受此观察的启发,本文使用全系统数据中心模拟基础设施对12个云工作负载进行了全面的表征。我们首先研究了新兴云应用程序的固有网络特征,包括消息间到达时间、数据包大小、节点间通信开销、自相似性和流量。然后,我们研究了硬件架构指标对网络流量的影响。我们的实验分析表明:(1)消息到达时间和数据包大小分布在不同的云应用程序中表现出差异,(2)随着节点数量的增加,到达时间意味着大量的自相似性,(3)节点架构可以在塑造整体网络流量方面发挥重要作用,最后,(4)我们所研究的应用程序可以大致分为在节点级别的横向或纵向配置中表现更好的应用程序,以及具有长持续时间,低突发流和具有短持续时间,高突发流的两类应用程序。利用(3)和(4)的结果,本文讨论了横向扩展和纵向扩展方法的性能/成本权衡,并提出了一个分析模型,可用于预测不同配置下的通信和计算需求。结果表明,两种不同节点架构的每美元成本(在相同数量的核心系统范围下)的性能差异可能高达154%,这表明在分配错误的架构浪费宝贵的云资源之前,需要准确地描述云应用程序。研究结果可用于大规模系统设计的系统建模、容量规划和异构资源管理。
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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