HPC应用的自适应电源管理

S. Saurav, L. GangaPrasadG., Manisha Chauhan
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引用次数: 5

摘要

降低功率和能源消耗是高性能计算(HPC)的主要关注点和挑战之一。然而,随着我们向百亿亿级迈进,它在未来将受到功率限制。在砂桥处理器之后,运行平均功率限制(RAPL)抽象的出现为自适应管理电源铺平了道路。这就提供了基于功率预算的细粒度功率测量和控制机制,在核心级集成电压调节器。HPC系统的自适应电源管理系统(APM)的目的是根据功率预算内应用程序的功耗来决定何时将电源可管理组件置于各种节能状态。在HPC中,作业分布在不同的计算节点上,电源管理相对于组件在所需操作状态下的位置更为复杂。通过RAPL接口实现电力实时监控,为自适应管理提供了可能。本文采用RAPL和APM系统对高性能计算应用程序进行了细粒度分析,并在组件级对控制机制进行了描述。其思想是通过测量节点的各种功耗可管理组件(如处理器和DRAM)的功耗,在细粒度级别上对HPC应用进行分析,以便获得更准确的功耗相关信息,然后自适应地学习和设计应用的最优功耗预算(OPB)。OPB信息以知识库(KB)的形式存储。在作业调度器中加入了具有最优处理器数量的高性能计算应用的OPB,以进行功率感知调度决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Power Management for HPC applications
Reduction of power and energy consumption is one of the major concerns and challenges for High Performance Computing (HPC). However, as we move towards Exascale, it will be power limited in future. The advent of Running Average Power Limit (RAPL) abstraction after sandy bridge processors has paved the way to manage power adaptively. This gives the fine-grained power measurement and control mechanism with integrated voltage regulator at core level based on power budget. The purpose of Adaptive Power Management System (APM) for HPC systems is to decide when to place power manageable components into various power saving states based on the power consumption of an application within the power budget. In HPC, jobs are distributed across various computing nodes and power management is more complex with respect to the placement of the components in required operating states. The real time power monitoring and controlling through RAPL interface gives an opportunity for adaptive management. In this paper, we describe fine-grained profiling of HPC applications and control mechanism at component level using RAPL and APM system. The idea is to profile the HPC applications at fine granular level by measuring the power consumed by various power manageable components of a node such as processors and DRAM so that more accurate power related information can be obtained and then adaptively learn and devise the Optimal Power Budget (OPB) of an application. The OPB information is stored in Knowledge Base (KB). The devised OPB for HPC application with optimal number of processors is incorporated in the job scheduler to take power-aware scheduling decision.
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