Markov Model Based Disk Power Management for Data Intensive Workloads

R. Garg, S. Son, M. Kandemir, P. Raghavan, R. Prabhakar
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引用次数: 27

Abstract

In order to meet the increasing demands of present and upcoming data-intensive computer applications, there has been a major shift in the disk subsystem, which now consists of more disks with higher storage capacities and higher rotational speeds. These have made the disk subsystem a major consumer of power, making disk power management an important issue. People have considered the option of spinning down the disk during periods of idleness or serving the requests at lower rotational speeds when performance is not an issue. Accurately predicting future disk idle periods is crucial to such schemes. This paper presents a novel disk-idleness prediction mechanism based on Markov models and explains how this mechanism can be used in conjunction with a three-speed disk. Our experimental evaluation using a diverse set of workloads indicates that (i) prediction accuracies achieved by the proposed scheme are very good (87.5% on average); (ii) it generates significant energy savings over the traditional power-saving method of spinning down the disk when idle (35.5% onaverage); (iii) it performs better than a previously proposed multi-speed disk management scheme (19% on average); and (iv) the performance penalty is negligible (less than 1% on average). Overall, our implementation and experimental evaluation using both synthetic disk traces and traces extracted from real applications demonstrate the feasibility of a Markov-model-based approach to saving disk power.
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基于马尔可夫模型的数据密集型工作负载磁盘电源管理
为了满足当前和即将到来的数据密集型计算机应用日益增长的需求,磁盘子系统已经发生了重大转变,它现在由更多具有更高存储容量和更高转速的磁盘组成。这使得磁盘子系统成为一个主要的电源消耗者,使得磁盘电源管理成为一个重要的问题。人们考虑过在空闲期间降低磁盘的旋转速度,或者在性能不是问题时以较低的旋转速度处理请求。准确预测未来的磁盘空闲期对于此类方案至关重要。本文提出了一种基于马尔可夫模型的磁盘空闲预测机制,并解释了该机制如何与三速磁盘结合使用。我们使用不同工作负载的实验评估表明:(i)所提出的方案实现的预测精度非常好(平均为87.5%);(ii)与传统的在空闲时关闭磁盘的节电方法相比,它能显著节省能源(平均节省35.5%);(iii)性能优于先前提出的多速磁盘管理方案(平均19%);(iv)性能损失可以忽略不计(平均小于1%)。总的来说,我们使用合成磁盘轨迹和从实际应用中提取轨迹的实现和实验评估证明了基于马尔可夫模型的方法节省磁盘功率的可行性。
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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