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首页> 外文期刊>Journal of supercomputing >SAVE: self-adaptive consolidation of virtual machines for energy efficiency of CPU-intensive applications in the cloud
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SAVE: self-adaptive consolidation of virtual machines for energy efficiency of CPU-intensive applications in the cloud

机译:保存:虚拟机的自适应整合,可提高云中CPU密集型应用程序的能效

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摘要

In virtualized data centers, consolidation of virtual machines (VMs) on minimizing the number of total physical machines (PMs) has been recognized as a very efficient approach. This paper considers the energy-efficient consolidation of VMs in a cloud datacenter. Concentrating on CPU-intensive applications, the objective is to schedule all requests non-preemptively, subjecting to constraints of PM capacities and running time interval spans, to make the total energy consumption of all PMs is minimized (called MinTE for abbreviation). The MinTE problem is NP-complete in general. We propose a self-adaptive approach called SAVE. The approach makes decisions of the assignment and migration of VMs by probabilistic processes and is based exclusively on local information. Both simulation and real environment test show that our proposed method SAVE can reduce energy consumption about 30% against VMWare DRS and 10-20% against ecoCloud on average. Extensive experiments show that our method outperforms the existing method and achieves significant energy savings and high utilization.
机译:在虚拟化数据中心中,将虚拟机(VM)整合在一起以最小化总物理机(PM)数量已被认为是一种非常有效的方法。本文考虑了在云数据中心中虚拟机的节能合并。专注于CPU密集型应用程序,目标是不受PM容量和运行时间间隔的限制,非抢先地调度所有请求,以使所有PM的总能耗最小(简称为MinTE)。 MinTE问题通常是NP完全的。我们提出了一种称为SAVE的自适应方法。该方法通过概率过程决定VM的分配和迁移,并且仅基于本地信息。仿真和实际环境测试均表明,我们提出的方法SAVE相对于VMWare DRS可以平均降低约30%的能耗,而对ecoCloud则平均可降低10-20%的能耗。大量的实验表明,我们的方法优于现有方法,并实现了显着的节能和高利用率。

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