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Assessing and forecasting energy efficiency on Cloud computing platforms

机译:评估和预测云计算平台上的能源效率

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摘要

IaaS providers have become interested in optimising their infrastructure energy efficiency. To do so, their VM placement algorithms need to know the current and future energy efficiency at different levels (Virtual Machine, node, infrastructure and service levels) and for potential actions such as service deployment or VM deployment, migration or cancellation. This publication provides a mathematical formulation for the previous aspects, as well as the design of a CPU utilisation estimator used to calculate the aforementioned forecasts. The correct adjustment of the estimators' configuration parameters has been proved to lead to considerable precision improvements. When running Web workloads, estimators focused on noise filtering provide the best precision even if they react slowly to changes, whereas reactive predictors are desirable for batch workloads. Furthermore, the precision when running batch workloads partially depends on each execution. Finally, it has been observed that the forecasts precision degradation as such forecasts are performed for a longer time period in the future is smaller when running web workloads.
机译:IaaS提供商已对优化其基础设施的能效产生了兴趣。为此,他们的VM放置算法需要了解不同级别(虚拟机,节点,基础架构和服务级别)当前和未来的能效,以及潜在的动作,例如服务部署或VM部署,迁移或取消。该出版物提供了前面各方面的数学公式,以及用于计算上述预测的CPU利用率估算器的设计。事实证明,对估计器的配置参数进行正确的调整可以显着提高精度。在运行Web工作负载时,即使噪声对变化的反应缓慢,专注于噪声过滤的估计器也可以提供最佳的精度,而批处理工作负载则需要被动式预测器。此外,运行批处理工作负载时的精度部分取决于每次执行。最后,可以观察到,在运行Web工作负载时,由于将来进行较长时间的预测会降低预测精度。

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