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Load-balanced and locality-aware scheduling for data-intensive workloads at extreme scales

机译:负载均衡和位置感知的调度,可用于大规模的数据密集型工作负载

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Data-driven programming models such as many-task computing (MTC) have been prevalent for running data-intensive scientific applications. MTC applies over-decomposition to enable distributed scheduling. To achieve extreme scalability, MTC proposes a fully distributed task scheduling architecture that employs as many schedulers as the compute nodes to make scheduling decisions. Achieving distributed load balancing and best exploiting data locality are two important goals for the best performance of distributed scheduling of data-intensive applications. Our previous research proposed a data-aware work-stealing technique to optimize both load balancing and data locality by using both dedicated and shared task ready queues in each scheduler. Tasks were organized in queues based on the input data size and location. Distributed key-value store was applied to manage task metadata. We implemented the technique in MATRIX, a distributed MTC task execution framework. In this work, we devise an analytical suboptimal upper bound of the proposed technique, compare MATRIX with other scheduling systems, and explore the scalability of the technique at extreme scales. Results show that the technique is not only scalable but can achieve performance within 15% of the suboptimal solution. Copyright © 2015 John Wiley & Sons, Ltd.
机译:诸如多任务计算(MTC)之类的数据驱动编程模型已普遍用于运行数据密集型科学应用程序。 MTC应用过度分解来启用分布式调度。为了实现极高的可伸缩性,MTC提出了一种完全分布式的任务调度架构,该架构采用与计算节点一样多的调度程序来制定调度决策。实现分布式负载平衡和最佳利用数据局部性是实现数据密集型应用程序的分布式调度的最佳性能的两个重要目标。我们之前的研究提出了一种数据感知的工作窃取技术,通过在每个调度程序中使用专用和共享的任务就绪队列来优化负载平衡和数据局部性。根据输入数据的大小和位置,将任务组织在队列中。分布式键值存储应用于管理任务元数据。我们在分布式MTC任务执行框架MATRIX中实施了该技术。在这项工作中,我们设计了所提出技术的解析上次优上限,将MATRIX与其他调度系统进行了比较,并探索了该技术在极端规模上的可扩展性。结果表明,该技术不仅具有可扩展性,而且可以在次优解决方案的15%之内实现性能。版权所有©2015 John Wiley&Sons,Ltd.

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