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A Novel Self-Adaptive VM Consolidation Strategy Using Dynamic Multi-Thresholds in IaaS Clouds

机译:在IaaS云中使用动态多阈值的新型自适应VM整合策略

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With the rapid development of cloud computing, the demand for infrastructure resources in cloud data centers has further increased, which has already led to enormous amounts of energy costs. Virtual machine (VM) consolidation as one of the important techniques in Infrastructure as a Service clouds (IaaS) can help resolve energy consumption by reducing the number of active physical machines (PMs). However, the necessity of considering energy-efficiency and the obligation of providing high quality of service (QoS) to customers is a trade-off, as aggressive consolidation may lead to performance degradation. Moreover, most of the existing works of threshold-based VM consolidation strategy are mainly focused on single CPU utilization, although the resource request on different VMs are very diverse. This paper proposes a novel self-adaptive VM consolidation strategy based on dynamic multi-thresholds (DMT) for PM selection, which can be dynamically adjusted by considering future utilization on multi-dimensional resources of CPU, RAM and Bandwidth. Besides, the VM selection and placement algorithm of VM consolidation are also improved by utilizing each multi-dimensional parameter in DMT. The experiments show that our proposed strategy has a better performance than other strategies, not only in high QoS but also in less energy consumption. In addition, the advantage of its reduction on the number of active hosts is much more obvious, especially when it is under extreme workloads.
机译:随着云计算的飞速发展,对云数据中心基础设施资源的需求进一步增加,已经导致了巨大的能源成本。作为基础架构即服务云(IaaS)中的重要技术之一,虚拟机(VM)整合可通过减少活动物理机(PM)的数量来帮助解决能耗。但是,必须考虑能源效率和向客户提供高质量服务(QoS)的义务是一种折衷,因为积极的合并可能会导致性能下降。而且,尽管不同VM上的资源请求非常不同,但现有的基于阈值的VM整合策略的大多数现有工作主要集中在单个CPU利用率上。本文提出了一种基于动态多阈值(DMT)的PM选择的自适应VM整合策略,该策略可以通过考虑将来在CPU,RAM和带宽等多维资源上的利用情况进行动态调整。此外,通过利用DMT中的每个多维参数,还改进了VM合并的VM选择和放置算法。实验表明,我们提出的策略不仅在高QoS方面而且在能耗方面也比其他策略更好。此外,减少活动主机数量的优势更加明显,尤其是在工作负荷极高的情况下。

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