物理机状态变化和云中的虚拟机放置的最优更新频率模型

John J. Prevost, K. Nagothu, B. Kelley, M. Jamshidi
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引用次数: 12

摘要

云计算正在演变为运行现代数据中心的默认操作框架。高效的数据中心操作涉及消耗的能源总量,以及确保有足够的资源来处理所有传入的工作请求。现有的研究已经证明了几种算法可以用来确定服务这些请求所需的最佳资源数量。然而,在这些算法中没有解决的一个关键问题是确定重新计算所需资源数量的频率。由于资源的过度分配,以低于最佳更新频率的速度更改所需资源会导致能源效率降低。以高于最佳频率的速率更改资源会导致系统改变状态的时间不足,从而导致违反SLA。本文提出了一种随机优化模型,该模型确定了改变云节点状态的最佳更新频率以及重新计算最大预期负载的适当频率,从而改进了对所需资源的最佳数量的确定,从而最大化能源效率并最小化SLA违规。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal update frequency model for physical machine state change and virtual machine placement in the cloud
Cloud computing is evolving into the default operational framework running modern data centers. Efficient data center operation is concerned with the total amount of energy consumed as well as assuring adequate resources are available to process all of the incoming work requests. Existing research has demonstrated several algorithms that can be used to determine the optimal number of resources required to service these requests. However, a key issue not addressed in these algorithms is determining the frequency of recalculating the number of required resources. Changing the required resources at a rate slower than the optimal update frequency results in lower energy efficiency due to the over allocation of resources. Changing the resources at a rate higher than the optimal frequency results in insufficient time for systems to change state, which results in SLA violations. In this paper, a stochastic optimization model is presented that determines the optimal update frequency for changing the states of the nodes of the cloud as well as determining the proper frequency for recalculating the maximum expected load, which improves the determination of the optimum number of resources required, therefore maximizes energy efficiency and minimizes SLA violations.
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