Improving the Efficiency of Power Management Techniques by Using Bayesian Classification

Hwisung Jung, Massoud Pedram
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引用次数: 19

Abstract

This paper presents a supervised learning based dynamic power management (DPM) framework for a multicore processor, where a power manager (PM) learns to predict the system performance state from some readily available input features (such as the state of service queue occupancy and the task arrival rate) and then uses this predicted state to look up the optimal power management action from a pre-computed policy lookup table. The motivation for utilizing supervised learning in the form of a Bayesian classifier is to reduce overhead of the PM which has to recurrently determine and issue voltage-frequency setting commands to each processor core in the system. Experimental results reveal that the proposed Bayesian classification based DPM technique ensures system-wide energy savings under rapidly and widely varying workloads.
利用贝叶斯分类提高电源管理技术的效率
提出了一种基于监督学习的多核处理器动态电源管理(DPM)框架,其中电源管理器(PM)从一些随时可用的输入特征(如服务队列占用状态和任务到达率)中学习预测系统性能状态,然后使用该预测状态从预先计算的策略查找表中查找最佳电源管理动作。以贝叶斯分类器的形式利用监督学习的动机是为了减少PM的开销,PM必须循环地确定并向系统中的每个处理器核心发出电压频率设置命令。实验结果表明,提出的基于贝叶斯分类的DPM技术可以在快速和大范围变化的工作负载下实现全系统的节能。
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