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首页> 外文期刊>Journal of supercomputing >Analyzing job completion reliability and job energy consumption for a heterogeneous MapReduce cluster under different intermediate-data replication policies
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Analyzing job completion reliability and job energy consumption for a heterogeneous MapReduce cluster under different intermediate-data replication policies

机译:分析不同中间数据复制策略下异构MapReduce集群的工作完成可靠性和工作能耗

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摘要

Recently, MapReduce has been a popular distributed programming framework for solving data-intensive applications. However, a large-scale MapReduce cluster has inevitable machineode failures and considerable energy consumption. To solve these problems, MapReduce has employed several policies for replicating input data, storing/replicating intermediate data, and re-executing failed tasks. In this study, we concentrate on two typical policies for storing/replicating intermediate data, and derive the job completion reliability (JCR for short) and job energy consumption (JEC for short) of a MapReduce cluster when the two policies are individually employed. The two policies are further analyzed and compared given various scenarios in which jobs with different input data sizes, numbers of reduce tasks, and other parameters are run in a MapReduce cluster with two extreme parallel execution capabilities. From the analytical results, MapReduce managers are able to comprehend how the two policies influence the JCR and JEC of a MapReduce cluster.
机译:最近,MapReduce已成为解决数据密集型应用程序的流行分布式编程框架。但是,大规模的MapReduce群集不可避免地会导致机器/节点故障,并消耗大量能源。为了解决这些问题,MapReduce采用了几种策略来复制输入数据,存储/复制中间数据以及重新执行失败的任务。在本研究中,我们集中于两种用于存储/复制中间数据的典型策略,并分别采用这两种策略时,得出MapReduce集群的作业完成可靠性(简称JCR)和作业能耗(简称JEC)。在给定各种场景的情况下,将进一步分析和比较这两种策略,在这些场景中,具有两个不同的并行执行功能的MapReduce集群中将运行具有不同输入数据大小,缩减任务数量和其他参数的作业。从分析结果来看,MapReduce管理者能够理解这两个策略如何影响MapReduce集群的JCR和JEC。

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