Strike the Balance between System Utilization and Data Locality under Deadline Constraint for MapReduce Clusters

Yeh-Cheng Chen, J. Chou
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Abstract

MapReduce paradigm has become a popular platform for massive data processing and Big Data applications. Although MapReduce was initially designed for high throughput and batch processing, it has also been used for handling many other types of applications and workloads due to its scalable and reliable system architecture. One of the emerging requirements for enterprise data-process computing is completion time guar- antee. However, there are only a few research works have been done for MapReduce jobs with deadline constraint. Therefore, in this paper, we aim to prevent jobs from missing deadline while maximizing the resource utilization and data locality of a MapReduce cluster. Our approach is to introduce a two-phase job scheduling mechanism which combines a job admission controller policy and a priority-based scheduling algorithm. We use a series of simulations over diverted workload to evaluate our system. The results show that our approach can guarantee job completion time in a heavy-loaded system, and achieve comparable data locality to the delay schedule algorithm in a light-loaded system. Furthermore, our approach can maximize system throughput by preventing system resources from being wasted by the jobs missing their deadlines.
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MapReduce集群在Deadline约束下如何平衡系统利用率和数据局部性
MapReduce范式已经成为海量数据处理和大数据应用的流行平台。虽然MapReduce最初是为高吞吐量和批处理而设计的,但由于其可扩展和可靠的系统架构,它也被用于处理许多其他类型的应用程序和工作负载。完成时间保证是企业数据处理计算的新需求之一。然而,对于有期限约束的MapReduce作业,研究工作很少。因此,在本文中,我们的目标是在最大限度地提高MapReduce集群的资源利用率和数据局部性的同时,防止作业错过截止日期。我们的方法是引入一种两阶段作业调度机制,该机制结合了作业接纳控制器策略和基于优先级的调度算法。我们在转移的工作负载上使用一系列模拟来评估我们的系统。结果表明,该方法在重载系统中可以保证作业完成时间,在轻负载系统中可以达到与延迟调度算法相当的数据局部性。此外,我们的方法可以通过防止作业错过截止日期而浪费系统资源来最大化系统吞吐量。
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