Memory energy management for an enterprise decision support system

Karthik Kumar, K. Doshi, Martin Dimitrov, Yung-Hsiang Lu
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引用次数: 13

Abstract

Energy efficiency is an important factor in designing and configuring enterprise servers. In these servers, memory may consume 40% of the total system power. Different memory configurations (sizes, numbers of ranks, speeds, etc.) can have significant impacts on the performance and energy consumption of enterprise workloads. Many of these workloads, such as decision support systems (DSS), require large amounts of memory. This paper investigates the potential to save energy by making the memory configuration adaptive to workload behavior. We present a case study on how memory configurations affect energy consumption and performance for running DSS. We measure the energy consumption and performance of a commercial enterprise server, and develop a model to describe the conditions when energy can be saved with acceptable performance degradation. Using this model, we identify opportunities to save energy in future enterprise servers.
企业决策支持系统的内存能量管理
在设计和配置企业服务器时,能源效率是一个重要因素。在这些服务器中,内存可能会消耗系统总功率的40%。不同的内存配置(大小、等级数量、速度等)会对企业工作负载的性能和能耗产生重大影响。许多这样的工作负载,比如决策支持系统(DSS),都需要大量的内存。本文研究了通过使内存配置适应工作负载行为来节省能源的可能性。我们提供了一个关于内存配置如何影响运行DSS的能耗和性能的案例研究。我们测量了商业企业服务器的能耗和性能,并开发了一个模型来描述在可接受的性能下降的情况下节省能源的条件。通过使用这个模型,我们发现了在未来的企业服务器中节省能源的机会。
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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