基于概率图模型的性能约束下能量最小化方法

Nikita Mishra, Huazhe Zhang, J. Lafferty, H. Hoffmann
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引用次数: 95

摘要

在许多部署中,计算机系统未得到充分利用——这意味着应用程序的性能要求低于系统的全部容量。理想情况下,我们应该通过分配系统资源来利用这种未充分利用的情况,从而满足性能需求并将能量降至最低。由于各种系统配置的性能和功耗通常依赖于应用程序甚至输入,因此这个优化问题变得更加复杂。因此,实际上,最小化性能约束的能量需要快速、准确地估计与应用程序相关的性能和功率权衡。本文研究了通过学习帕累托最优功率和性能权衡来实现节能的机器学习技术。具体来说,我们提出了LEO,这是一个基于概率图形模型的学习系统,它提供了作为系统配置函数的应用程序功率和性能的准确在线估计。我们将LEO与(1)离线学习、(2)在线学习、(3)启发式方法和(4)真正的最优解进行比较。我们发现LEO产生最准确的估计和接近最佳的能源节约。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Probabilistic Graphical Model-based Approach for Minimizing Energy Under Performance Constraints
In many deployments, computer systems are underutilized -- meaning that applications have performance requirements that demand less than full system capacity. Ideally, we would take advantage of this under-utilization by allocating system resources so that the performance requirements are met and energy is minimized. This optimization problem is complicated by the fact that the performance and power consumption of various system configurations are often application -- or even input -- dependent. Thus, practically, minimizing energy for a performance constraint requires fast, accurate estimations of application-dependent performance and power tradeoffs. This paper investigates machine learning techniques that enable energy savings by learning Pareto-optimal power and performance tradeoffs. Specifically, we propose LEO, a probabilistic graphical model-based learning system that provides accurate online estimates of an application's power and performance as a function of system configuration. We compare LEO to (1) offline learning, (2) online learning, (3) a heuristic approach, and (4) the true optimal solution. We find that LEO produces the most accurate estimates and near optimal energy savings.
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