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A Power Monitoring System Based on a Multi-Component Power Model

机译:基于多分量功率模型的功率监控系统

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As the increasing IT energy consumption emerged as a prominent issue, computer system energy consumption monitoring and optimization has gradually become a significant research forefront. However, most existing energy monitoring methods are limited to hardware-based measurement or coarse-grained energy consumption estimation. They cannot provide fine-grained energy consumption data (i.e., component energy consumption) and high-scalability for distributed cloud environments. In this article, the authors first study widely-used power models of CPUs, memory and hard disks. Then, following an investigation into disk power behaviors in sequential I/O and random I/O, they propose an improved I/O-mode aware disk power model with multiple variables and thresholds. They developed EnergyMeter, a monitoring software utility that can provide accurate power estimate by exploiting a multi-component power model. Experiments based on PCMark prove that the average error of EnergyMeter is merely 5% under a variety of workloads
机译:随着日益增长的IT能耗成为一个突出的问题,计算机系统能耗的监控和优化已逐渐成为重要的研究前沿。但是,大多数现有的能量监控方法仅限于基于硬件的测量或粗粒度能耗估算。它们无法为分布式云环境提供细粒度的能耗数据(即组件能耗)和高度可扩展性。在本文中,作者首先研究了CPU,内存和硬盘使用广泛的电源模型。然后,在研究了顺序I / O和随机I / O中的磁盘电源行为之后,他们提出了一种改进的I / O模式感知磁盘电源模型,该模型具有多个变量和阈值。他们开发了EnergyMeter,这是一种监视软件实用程序,可以通过利用多组件功率模型来提供准确的功率估算。基于PCMark的实验证明,在各种工作负载下,EnergyMeter的平均误差仅为5%

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