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A Heuristic Adaptive Threshold Algorithm on IaaS Clouds

机译:IaaS云上的启发式自适应阈值算法

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Due to the wide applications of IaaS (Infrastructure as a Service), energy-saving technologies of IaaS clouds has attracted much attention. However, it is very difficult for IaaS cloud providers to guarantee both of energy saving and performance under the condition of satisfying SLA (Service Level Agreement). Recently, adaptive-threshold-based methods are proposed to relieve the trade off between energy saving and satisfying SLA, however, high variable workloads have to be conducted. Thus, a more energy-saving method with lower workloads is desired. In this paper, in order to adaptively discover optimal thresholds, we propose a novel workload prediction-based framework, which seamlessly integrates a feature-selection-based prediction method and a model of measuring the relationship between the energy cost of the migration of virtual machine (VM) and the power incomes when the physical machine (PM) shuts down. Furthermore, a threshold discovering algorithm is designed to dynamically capture reasonable thresholds effectively. Finally, we verify the efficiency and effectiveness of the proposed methods through extensive experiments on Cloud Sim based on Google workload trace data set, and show the significant performance improvement compared with existing techniques. For instance, the proposed methods can improve the energy consumption by 10-20 percents.
机译:由于IaaS(基础设施即服务)的广泛应用,IaaS云的节能技术引起了广泛关注。但是,在满足SLA(服务水平协议)的条件下,IaaS云提供商很难同时保证节能和性能。近来,提出了基于自适应阈值的方法来减轻节能与满足SLA之间的折衷,但是,必须进行高可变工作量。因此,需要一种具有较低工作量的更节能的方法。在本文中,为了自适应地发现最佳阈值,我们提出了一种基于工作负载预测的新颖框架,该框架无缝集成了基于特征选择的预测方法和一种测量虚拟机迁移的能源成本之间关系的模型。 (VM)和物理机(PM)关闭时的功率收入。此外,阈值发现算法被设计为有效地动态捕获合理的阈值。最后,我们通过在基于Google工作负载跟踪数据集的Cloud Sim上进行了广泛的实验,验证了所提出方法的效率和有效性,并显示了与现有技术相比的显着性能提升。例如,提出的方法可以将能耗降低10%到20%。

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