PoWER:预测工作负载以实现高效的虚拟机重新定位

Kashifuddin Qazi, Y. Li, A. Sohn
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引用次数: 7

摘要

虚拟机(VM)为数据中心所有者提供了将计算资源(如CPU周期、内存、磁盘空间和网络带宽)租给最终用户的选择。在这种情况下,一个重要的考虑因素是组成云或“机器农场”的物理机器的资源(CPU周期、内存、块I/O和网络带宽)的最佳使用。在任何给定时间,机器都不应该过载(以确保满足某些QoS要求),同时应该运行最少数量的机器(以节省能源)。实际上,驻留在这些机器上的单个vm上的负载并不是绝对随机的。可以找到某些模式,这些模式可以帮助数据中心所有者在物理机器上安排虚拟机,从而满足上述两个条件(运行的机器数量最少,没有任何过载)。在这项工作中,我们提出了一个框架,PoWER,它试图根据其历史智能地预测集群的行为,然后相应地在集群中分配vm并关闭未使用的物理机,从而节省能源。我们的框架的核心是混沌理论的概念,它使我们的框架与负载的类型和固有周期无关,而不是与其他当前的预测算法相反。我们还在我们的测试平台集群上测试了这个框架,并分析了它的性能。我们证明,在预测VM负载和为我们的测试负载释放物理机上的资源方面,PoWER比另一种基于fft的时间序列方法表现得更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PoWER: prediction of workload for energy efficient relocation of virtual machines
Virtual Machines (VM) offer data center owners the option to lease computational resources like CPU cycles, Memory, Disk space and Network bandwidth to end-users. An important consideration in this scenario is the optimal usage of the resources (CPU cycles, Memory, Block I/O and Network Bandwidth) of the physical machines that make up the cloud or 'machine-farms'. At any given time, the machines should not be overloaded (to ensure certain QoS requirements are met) and at the same time a minimum number of machines should be running (to conserve energy). The loads on individual VMs residing on these machines is, in fact, not absolutely random. Certain patterns can be found that can help the data center owners arrange the VMs on the physical machines such that both of the above conditions are met (minimum number of machines running without any being overloaded). In this work we propose a framework, PoWER that tries to intelligently predict the behavior of the cluster based on its history and then accordingly distributes VMs in the cluster and turns off unused Physical Machines, thus saving energy. Central to our framework are concepts of Chaos Theory that make our framework indifferent to the type of loads and inherent cycles in them as opposed to other current prediction algorithms. We also test this framework on our testbed cluster and analyze its performance. We demonstrate that PoWER performs better than another FFT-based time series method in predicting VM loads and freeing resources on Physical Machines for our test loads.
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