SAL: Scaling data centers using Smart Address Learning

Alexander Shpiner, I. Keslassy, Carmi Arad, Tal Mizrahi, Yoram Revah
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引用次数: 8

Abstract

Multi-tenant data centers provide a cost-effective many-server infrastructure for hosting large-scale applications. These data centers can run multiple virtual machines (VMs) for each tenant, and potentially place any of these VMs on any of the servers. Therefore, for inter-VM communication, they also need to provide a VM resolution method that can quickly determine the server location of any VM. Unfortunately, existing methods suffer from a scalability bottleneck in the network load of the address resolution messages and/or in the size of the resolution tables. In this paper, we propose Smart Address Learning (SAL), a novel approach that expands the scalability of both the network load and the resolution table sizes, making it implementable on faster memory devices. The key property of the approach is to selectively learn the addresses in the resolution tables, by using the fact that the VMs of different tenants do not communicate. We further compare the various resolution methods and analyze the tradeoff between network load and table sizes. We also evaluate our results using real-life trace simulations. Our analysis shows that SAL can reduce both the network load and the resolution table sizes by several orders of magnitude.
SAL:使用智能地址学习扩展数据中心
多租户数据中心为托管大型应用程序提供了经济高效的多服务器基础设施。这些数据中心可以为每个租户运行多个虚拟机(vm),并可能将这些虚拟机中的任何一个放置在任何服务器上。因此,对于虚拟机之间的通信,还需要提供一种能够快速确定任意虚拟机所在服务器位置的虚拟机解析方法。不幸的是,现有方法在地址解析消息的网络负载和/或解析表的大小方面存在可伸缩性瓶颈。在本文中,我们提出了智能地址学习(SAL),这是一种扩展网络负载和分辨率表大小的可扩展性的新方法,使其可以在更快的内存设备上实现。该方法的关键特性是,利用不同租户的vm不通信这一事实,有选择地学习解析表中的地址。我们进一步比较了各种解析方法,并分析了网络负载和表大小之间的权衡。我们还使用现实生活中的轨迹模拟来评估我们的结果。我们的分析表明,SAL可以将网络负载和分辨率表大小降低几个数量级。
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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