基于时间约束的MapReduce任务调度算法

Zhuo Tang, Junqing Zhou, Kenli Li, Ruixuan Li
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引用次数: 28

摘要

以往关于有期限约束的MapReduce任务调度的研究,既没有考虑Map和Reduce任务的差异性,也没有考虑集群的异构性。本文提出了一种适用于Hadoop平台的扩展MapReduce任务调度算法:MTSD。它允许用户指定作业的截止日期,并尝试在截止日期之前完成作业。通过测量节点的计算能力,提出了一种MTSD中的节点分类算法。该算法将异构集群中的节点划分为若干级别。在该算法中,我们首先提出了一种新的数据分布模型,该模型根据节点的容量级别分别进行数据分布。实验表明,该算法的数据局部性提高了57%左右。其次,计算基于节点级别的任务平均完成时间;提高了任务剩余时间估算的精度。最后,MTSD提供了一种机制,通过计算Map和Reduce任务槽需求来决定应该调度哪个作业的任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MTSD: A Task Scheduling Algorithm for MapReduce Base on Deadline Constraints
The previous works about MapReduce task scheduling with deadline constraints neither take the diffenences of Map and Reduce task, nor the cluster's heterogeneity into account. This paper proposes an extensional MapReduce Task Scheduling algorithm for Deadline constraints in Hadoop platform: MTSD. It allows user specify a job's deadline and tries to make the job be finished before the deadline. Through measuring the node's computing capacity, a node classification algorithm is proposed in MTSD. This algorithm classifies the nodes into several levels in heterogeneous clusters. Under this algorithm, we firstly illuminate a novel data distribution model which distributes data according to the node's capacity level respectively. The experiments show that the data locality is improved about 57%. Secondly, we calculate the task's average completion time which is based on the node level. It improves the precision of task's remaining time evaluation. Finally, MTSD provides a mechanism to decide which job's task should be scheduled by calculating the Map and Reduce task slot requirements.
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