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Estimating Effective Slowdown of Tasks in Energy-Aware Clouds

机译:估算能量感知云中的有效减速

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Consolidation consists in scheduling multiple virtual machines onto fewer servers in order to improve resource utilization and to reduce operational costs due to power consumption. However, virtualization technologies do not offer performance isolation, causing applications' slowdown. In this work, we propose a performance enforcing mechanism, composed of a slowdown estimator, and a interference- and power-aware scheduling algorithm. The slowdown estimator determines, based on noisy slowdown data samples obtained from state-of-the-art slowdown meters, if tasks will complete within their deadlines, rescheduling tasks if needed. When invoked, the scheduling algorithm builds performance and power aware virtual clusters to successfully execute the tasks. We conduct simulations injecting synthetic jobs which characteristics follow the last version of the Google Cloud tracelogs. The results indicate that our strategy can be efficiently integrated with state-of-the-art slowdown meters to fulfil contracted SLAs in real-world environments, while reducing operational costs in about 12%.
机译:整合在于将多个虚拟机调度到更少的服务器上,以便提高资源利用率,并降低由于功耗的运行成本。但是,虚拟化技术不提供性能隔离,导致应用程序的放缓。在这项工作中,我们提出了一种绩效强制执行机制,由放缓估计器和干扰和动力感知调度算法组成。放缓估计器基于从最先进的放缓仪表获得的嘈杂放缓数据样本,如果任务将在其截止日期内完成,则根据需要进行任务,如果需要,重新安排任务。调用时,调度算法构建性能和功率感知虚拟群集以成功执行任务。我们进行仿真注入综合作业,这些作业遵循Google云Travelogs的最后一个版本。结果表明,我们的策略可以有效地与最先进的放缓仪表集成,以实现现实世界环境中的合同SLA,同时降低了约12%的运营成本。

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