Hadoop作业调度与动态任务分割

YongLiang Xu, Wentong Cai
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引用次数: 11

摘要

在Hadoop作业调度中,公平性和数据局部性经常发生冲突。在调度期间,不可能总是为所有作业实现数据局部性,也不可能总是为所有用户实现公平性。实现纯粹的公平性可能会损害作业的数据局部性,从而对性能产生负面影响,反之亦然。例如,调度器可以选择通过将任务调度到非数据本地节点来牺牲性能。或者,调度器可以选择牺牲公平性,放弃可用的槽位并等待数据本地节点。为了解决作业调度过程中公平性和数据局部性之间的矛盾,提出了动态任务分割调度算法(DTSS)。DTSS通过动态拆分任务并立即在非数据本地节点上执行拆分任务来实现这一点,从而提高公平性。分析和实验结果表明,通过调整任务分配的比例可以提高公平性和性能。与延迟调度相比,在难以获得集群上的数据本地节点的情况下,DTSS可以将集群中不同用户的make span提高2%到11%。最后,实验表明,在作业能够容易地获得数据局部节点的情况下,DTSS不是一个合适的调度程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hadoop Job Scheduling with Dynamic Task Splitting
Fairness and data locality are often in conflict in Hadoop job scheduling. During scheduling, it is not always possible for data locality to be achieved for all jobs or for fairness to be attained for all users. Achieving pure fairness may compromise the data locality of the jobs which will negatively affect performances, and vice-versa. For example, a scheduler may opt to sacrifice performance by scheduling tasks to non-data local nodes. Alternatively, a scheduler may choose to sacrifice fairness by giving up an available slot and wait for a data-local node. The Dynamic Task Splitting Scheduler (DTSS) is proposed to mitigate the tradeoffs between fairness and data locality during job scheduling. DTSS does so by dynamically splitting a task and executing the split task immediately, on a non-data-local node, to improve the fairness. Analysis and experiments results show that it is possible to improve both fairness and the performance by adjusting the proportion of the task split. DTSS is shown to improve the make span of different users in a cluster by 2% to 11% as compared to delay scheduling under the situation where it is difficult to obtain data-local nodes on a cluster. Lastly, experiments show that DTSS is not a suitable scheduler under conditions where jobs are able to obtain data-local nodes easily.
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