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H-WorD: Supporting Job Scheduling in Hadoop with Workload-Driven Data Redistribution

机译:H-WorD:通过工作负载驱动的数据重新分配支持Hadoop中的作业调度

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Today's distributed data processing systems typically follow a query shipping approach and exploit data locality for reducing network traffic. In such systems the distribution of data over the cluster resources plays a significant role, and when skewed, it can harm the performance of executing applications. In this paper, we address the challenges of automatically adapting the distribution of data in a cluster to the workload imposed by the input applications. We propose a generic algorithm, named H- WorD, which, based on the estimated workload over resources, suggests alternative execution scenarios of tasks, and hence identifies required transfers of input data a priori, for timely bringing data close to the execution. We exemplify our algorithm in the context of MapRe-duce jobs in a Hadoop ecosystem. Finally, we evaluate our approach and demonstrate the performance gains of automatic data redistribution.
机译:当今的分布式数据处理系统通常遵循查询传送方法,并利用数据局部性来减少网络流量。在这样的系统中,数据在群集资源上的分配起着重要的作用,并且在歪斜时会损害执行应用程序的性能。在本文中,我们解决了使集群中的数据分布自动适应输入应用程序所施加的工作量的挑战。我们提出了一种名为H-WorD的通用算法,该算法基于对资源的估计工作量,提出了任务的替代执行方案,并因此确定了输入数据的先验传输,以便及时将数据接近执行。我们以Hadoop生态系统中的MapRe-duce作业为背景来举例说明我们的算法。最后,我们评估了我们的方法并演示了自动数据重新分配的性能提升。

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