A Methodology for Full-System Power Modeling in Heterogeneous Data Centers

Mauro Canuto, Raimon Bosch, Mario Macías, Jordi Guitart
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引用次数: 13

Abstract

The need for energy-awareness in current data centers has encouraged the use of power modeling to estimate their power consumption. However, existing models present noticeable limitations, which make them application-dependent, platform-dependent, inaccurate, or computationally complex. In this paper, we propose a platform-and application-agnostic methodology for full-system power modeling in heterogeneous data centers that overcomes those limitations. It derives a single model per platform, which works with high accuracy for heterogeneous applications with different patterns of resource usage and energy consumption, by systematically selecting a minimum set of resource usage indicators and extracting complex relations among them that capture the impact on energy consumption of all the resources in the system. We demonstrate our methodology by generating power models for heterogeneous platforms with very different power consumption profiles. Our validation experiments with real Cloud applications show that such models provide high accuracy (around 5% of average estimation error).
异构数据中心全系统功率建模方法
当前数据中心对能源意识的需求鼓励使用功率建模来估计其功耗。然而,现有模型存在明显的局限性,这使得它们依赖于应用程序、依赖于平台、不准确或计算复杂。在本文中,我们提出了一种与平台和应用无关的方法,用于异构数据中心的全系统功率建模,克服了这些限制。它通过系统地选择一组最小的资源使用指标,并提取它们之间的复杂关系,以捕获系统中所有资源对能源消耗的影响,为每个平台派生出一个模型,该模型对具有不同资源使用和能源消耗模式的异构应用程序具有高精度。我们通过为具有非常不同的功耗配置文件的异构平台生成功率模型来演示我们的方法。我们对真实云应用程序的验证实验表明,这样的模型提供了很高的准确性(约为平均估计误差的5%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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