基于支持向量回归的虚拟机性能建模

S. Doong, Ch Lai, J. S. Lee, Chen S. Ouyang, Chih-Hung Wu
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引用次数: 0

摘要

虚拟化是云计算中的一项关键技术,用于按需提供虚拟服务。Xen是一种开源的半虚拟化虚拟机监视器(hypervisor),目前已被世界上许多领先的数据中心所采用。Xen中的调度程序处理托管在同一物理系统上的虚拟机之间的CPU资源共享。本研究的重点是当前Xen版本中的一个调度器——Credit调度器。Credit使用两个参数(权重和上限)来微调CPU资源共享。以前的研究表明,这两个参数会影响Xen上托管的虚拟机的各种性能度量。在这项研究中,我们提出了一个整体的过程来建立虚拟机的性能模型。在不同的权重和上限设置下,通过模拟收集计算能力和网络吞吐量这两个常用度量的经验数据。然后,我们使用强大的机器学习工具(多核支持向量回归)从经验数据中学习性能模型。通过使用机器学习中的既定程序对这些模型进行了满意的评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Virtual Machines Performance Modeling with Support Vector Regressions
Virtualization is a key technology in cloud computing to render on-demand provisioning of virtual services. Xen, an open source paravirtualized virtual machine monitor (hypervisor), has been adopted by many leading data centers of the world today. A scheduler in Xen handles CPU resources sharing among virtual machines hosted on the same physical system. This study is focused on a scheduler in the current Xen release - the Credit scheduler. Credit uses two parameters (weight and cap) to fine tune CPU resources sharing. Previous studies have shown that these two parameters can impact various performance measures of virtual machines hosted on Xen. In this study, we present a holistic procedure to establish performance models of virtual machines. Empirical data of two commonly used measures, namely calculation power and network throughput, were collected by simulations under various settings of weight and cap. We then employed a powerful machine learning tool (multi-kernel support vector regression) to learn performance models from the empirical data. These models were evaluated satisfactorily by using established procedures in machine learning.
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