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Holistic energy and failure aware workload scheduling in Cloud datacenters

机译:云数据中心的整体能源和故障感知工作负载调度

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摘要

The global uptake of Cloud computing has attracted increased interest within both academia and industry resulting in the formation of large-scale and complex distributed systems. This has led to increased failure occurrence within computing systems that induce substantial negative impact upon system performance and task reliability perceived by users. Such systems also consume vast quantities of power, resulting in significant operational costs perceived by providers. Virtualization – a commonly deployed technology within Cloud datacenters – can enable flexible scheduling of virtual machines to maximize system reliability and energy-efficiency. However, existing work address these two objectives separately, providing limited understanding towards studying the explicit trade-offs towards dependable and energy-efficient compute infrastructure. In this paper, we propose two failure-aware energy-efficient scheduling algorithms that exploit the holistic operational characteristics of the Cloud datacenter comprising the cooling unit, computing infrastructure and server failures. By comprehensively modeling the power and failure profiles of a Cloud datacenter, we propose workload scheduling algorithms Ella-W and Ella-B, capable of reducing cooling and compute energy while minimizing the impact of system failures. A novel and overall metric is proposed that combines energy efficiency and reliability to specify the performance of various algorithms. We evaluate our algorithms against Random, MaxUtil, TASA, MTTE and OBFIT under various system conditions of failure prediction accuracy and workload intensity. Evaluation results demonstrate that Ella-W can reduce energy usage by 29.5% and improve task completion rate by 3.6%, while Ella-B reduces energy usage by 32.7% with no degradation to task completion rate.
机译:云计算的全球使用已引起学术界和行业的越来越多的关注,从而形成了大型而复杂的分布式系统。这导致计算系统内发生故障的可能性增加,从而给用户感知的系统性能和任务可靠性带来严重的负面影响。这样的系统还消耗大量的功率,从而导致提供商认为可观的运营成本。虚拟化是云数据中心内普遍部署的技术,可以实现虚拟机的灵活调度,以最大程度地提高系统可靠性和能效。但是,现有的工作分别解决了这两个目标,对于研究针对可靠和节能的计算基础架构的显式权衡提供的理解有限。在本文中,我们提出了两种可感知故障的节能调度算法,它们利用了Cloud数据中心的整体运行特性,包括冷却单元,计算基础架构和服务器故障。通过对Cloud数据中心的电源和故障概况进行全面建模,我们提出了工作负载调度算法Ella-W和Ella-B,它们能够减少散热并计算能源,同时将系统故障的影响降至最低。提出了一种新颖的总体指标,该指标结合了能效和可靠性来指定各种算法的性能。我们在故障预测准确度和工作负荷强度的各种系统条件下,针对Random,MaxUtil,TASA,MTTE和OBFIT评估我们的算法。评估结果表明,Ella-W可以减少29.5%的能源使用量,并提高3.6%的任务完成率,而Ella-B可以减少32.7%的能源使用量,而不会降低任务完成率。

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