HaSTE: Hadoop YARN Scheduling Based on Task-Dependency and Resource-Demand

Yi Yao, Jiayin Wang, B. Sheng, Jason H. Lin, N. Mi
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引用次数: 63

Abstract

The MapReduce framework has become the de facto scheme for scalable semi-structured and un-structured data processing in recent years. The Hadoop ecosystem has evolved into its second generation, Hadoop YARN, which adopts fine-grained resource management schemes for job scheduling. One of the primary performance concerns in YARN is how to minimize the total completion length, i.e., makespan, of a set of MapReduce jobs. However, the precedence constraint or fairness constraint in current widely used scheduling policies in YARN, such as FIFO and Fair, can both lead to inefficient resource allocation in the Hadoop YARN cluster. They also omit the dependency between tasks which is crucial for the efficiency of resource utilization. We thus propose a new YARN scheduler, named HaSTE, which can effectively reduce the makespan of MapReduce jobs in YARN by leveraging the information of requested resources, resource capacities, and dependency between tasks. We implemented HaSTE as a pluggable scheduler in the most recent version of Hadoop YARN, and evaluated it with classic MapReduce benchmarks. The experimental results demonstrate that our YARN scheduler effectively reduces the makespans and improves resource utilization compare to the current scheduling policies.
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基于任务依赖和资源需求的Hadoop YARN调度
近年来,MapReduce框架已经成为可扩展的半结构化和非结构化数据处理的实际方案。Hadoop生态系统已经发展到第二代,Hadoop YARN,它采用细粒度的资源管理方案来进行作业调度。YARN的主要性能问题之一是如何最小化一组MapReduce作业的总完成长度,即makespan。然而,目前YARN中广泛使用的调度策略,如FIFO和Fair,其优先级约束或公平性约束都会导致Hadoop YARN集群的资源分配效率低下。它们还忽略了对资源利用效率至关重要的任务之间的依赖关系。因此,我们提出了一个新的YARN调度器,命名为HaSTE,它可以通过利用请求资源、资源容量和任务之间的依赖关系信息,有效地减少YARN中MapReduce作业的makespan。我们在最新版本的Hadoop YARN中实现了一个可插拔的调度程序,并使用经典的MapReduce基准测试对其进行了评估。实验结果表明,与现有的调度策略相比,YARN调度策略有效地降低了makespans,提高了资源利用率。
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