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Energy-aware dynamic resource management in elastic cloud datacenters

机译:弹性云数据中心中的能量感知动态资源管理

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摘要

In clouds, placement of on-demand applications on heterogeneous machines, has turned out to be a crucial research problem, particularly, in terms of performance and energy consumption. Techniques like Dynamic Voltage and Frequency Scaling (DVFS), processor speed adjustment and features such as turning off displays, activating sleep modes, etc. are only useful for decreasing the energy consumption of a single machine, at marginal loss in performance. They cannot be used to achieve significant power optimization in High Performance Computing (HPC) systems such as grids, and cloud datacenters; because power saved by scaling down the processor voltage is far less than switching off a machine. Resource management, using dynamic consolidation of VMs, allows cloud service providers to optimize resource usability, performance and decrease power consumption. This paper investigates various resource management techniques, and suggests several heuristic approaches to optimise energy consumption and performance in elastic datacenters. Using real workload datasets, our evaluation suggests that a combination of the proposed VM allocation and consolidation with migration control technique could save approximately 1.96%-9.38% energy, and improve 0.32%-5.96% performance, as compared to its closest rivals.
机译:在云层中,在异构机器上放置按需应用,已成为一个至关重要的研究问题,特别是在性能和​​能耗方面。动态电压和频率缩放(DVF),处理器调速和关闭显示器,激活睡眠模式等的技术仅适用于降低单个机器的能耗,在性能下的边际损失中是有用的。它们不能用于在高性能计算(HPC)系统中实现显着的功率优化,例如网格和云数据中心;因为通过缩小处理器电压通过缩放的功率远小于关闭机器。资源管理使用VM的动态整合,允许云服务提供商优化资源可用性,性能和降低功耗。本文调查了各种资源管理技术,并提出了多种启发式方法,以优化弹性数据中心的能耗和性能。使用真实的工作量数据集,我们的评估表明,与其最近的竞争对手相比,所提出的VM分配和整合与迁移控制技术的组合可以节省大约1.96%-9.38%的能源,并与其最近的竞争对手相比,性能提高0.32%-5.96%。

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