在地理分布数据中心的多目标VM放置中利用cpu负载和数据相关性

A. Pahlevan, P. Valle, David Atienza Alonso
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引用次数: 8

摘要

云计算已经被提出作为一种通过互联网提供服务的新范例。云服务的激增和用户对计算资源需求的增加导致了地理分布式数据中心(dc)的出现。这些数据中心托管异构应用程序,这些应用程序具有不断变化的特征,例如cpu负载相关性,当两个虚拟机(vm)的利用率峰值没有同时出现时,或者虚拟机之间交换的数据量直接影响性能(即响应时间)时,这些应用程序提供了巨大的节能潜力。本文提出了一种两阶段多目标虚拟机放置、聚类和分配算法,以及一种动态迁移技术,用于耦合可再生能源和电池能源的地理分布式数据中心。它利用虚拟机特性、cpu负载和数据相关性的整体知识,来解决运营成本优化和能源性能权衡的挑战。实验结果表明,与最先进的方案相比,所提出的方法可节省高达55%的操作成本,15%的能耗和12%的性能(响应时间)改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting CPU-load and data correlations in multi-objective VM placement for geo-distributed data centers
Cloud computing has been proposed as a new paradigm to deliver services over the internet. The proliferation of cloud services and increasing users' demands for computing resources have led to the appearance of geo-distributed data centers (DCs). These DCs host heterogeneous applications with changing characteristics, like the CPU-load correlation, that provides significant potential for energy savings when the utilization peaks of two virtual machines (VMs) do not occur at the same time, or the amount of data exchanged between VMs, that directly impacts performance, i.e. response time. This paper presents a two-phase multi-objective VM placement, clustering and allocation algorithm, along with a dynamic migration technique, for geo-distributed DCs coupled with renewable and battery energy sources. It exploits the holistic knowledge of VMs characteristics, CPU-load and data correlations, to tackle the challenges of operational cost optimization and energyperformance trade-off. Experimental results demonstrate that the proposed method provides up to 55% operational cost savings, 15% energy consumption, and 12% performance (response time) improvements when compared to state-of-the-art schemes.
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