提高io密集型MapReduce作业的能效

Nidhi Tiwari, S. Sarkar, M. Indrawan, U. Bellur
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引用次数: 4

摘要

Map-Reduce是一种流行的数据并行编程模型,用于海量数据的各种分析。虽然多核和多CPU HPC基础架构可以用于提高map-reduce任务的并行性,但io带宽限制可能会使它们无效。io密集型活动在任何MapReduce集群中都是必不可少的。在HPC节点中,io密集型作业在io资源上排队,而CPU仍然未得到充分利用,导致性能差,功耗高,从而导致能源效率低下。在本文中,我们通过进行彻底的实证研究,研究了哪种电源管理设置可用于提高io密集型MapReduce作业的能源效率。我们的分析表明,恒定的CPU频率可以降低io密集型作业的能耗,同时提高其性能。因此,我们构建了一组回归模型来预测给定输入数据量下CPU频率下io密集型作业的能耗。对于两种不同类型的io密集型工作,我们获得了相同的一组模型,具有不同的系数,这证实了所识别模型的适用性。对于80%的新测试用例,这些模型以80%的准确率预测各自的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Energy Efficiency of IO-Intensive MapReduce Jobs
Map-Reduce is a popular data-parallel programming model for varied analysis of huge volumes of data. While a multicore and many CPU HPC infrastructure can be used to improve parallelism of map-reduce tasks, IO-bandwidth limitations may make them ineffective. IO-intensive activities are essential in any MapReduce cluster. In HPC nodes, IO-intensive jobs get queued at the IO-resources while the CPU remain underutilized, resulting in a poor performance, high power consumption and thus, energy inefficiency. In this paper, we investigate which power management setting can be used to improve the energy efficiency of IO-intensive MapReduce jobs by performing a thorough empirical study. Our analysis indicates that a constant CPU frequency can reduce the energy consumption of an IO-intensive job, while improving its performance. Consequently, we build a set of regression models to predict the energy consumption of IO-intensive jobs at a CPU frequency for a given input data volume. We obtained same set of models, with different coefficients, for two different types of IO-intensive jobs, which substantiates the suitability of identified models. These models predict respective outcomes with 80% accuracy for 80% of the new test cases.
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