Ordinal Optimized Scheduling of Scientific Workflows in Elastic Compute Clouds

Fan Zhang, Junwei Cao, K. Hwang, Cheng Wu
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引用次数: 58

Abstract

Elastic compute clouds are best represented by the virtual clusters in Amazon EC2 or in IBM RC2. This paper proposes a simulation based approach to scheduling scientific workflows onto elastic clouds. Scheduling multitask workflows in virtual clusters is a NP-hard problem. Excessive simulations in months of time may be needed to produce the optimal schedule using Monte Carlo simulations. To reduce this scheduling overhead is necessary in real-time cloud computing. We present a new workflow scheduling method based on iterative ordinal optimization (IOO). This new method outperforms the Monte Carlo and Blind-Pick methods to yield higher performance against rapid workflow variations. For example, to execute 20,000 tasks on 128 virtual machines for gravitational wave analysis, an ordinal optimized schedule can be generated in a few minutes, which is O(103)~O(104) faster than using Monte Carlo simulations. The ordinal optimized schedule results in higher throughput with lower memory demand. The cloud experimental results being reported verified our theoretical findings on the relative performance of three workflow scheduling methods studied in this paper.
弹性计算云中科学工作流的有序优化调度
弹性计算云最好由Amazon EC2或IBM RC2中的虚拟集群表示。提出了一种基于仿真的弹性云科学工作流调度方法。在虚拟集群中调度多任务工作流是一个np难题。为了使用蒙特卡罗模拟产生最优的调度,可能需要在几个月的时间内进行过多的模拟。在实时云计算中,减少这种调度开销是必要的。提出了一种基于迭代有序优化(IOO)的工作流调度方法。这种新方法优于蒙特卡罗和盲选方法,在快速工作流程变化中产生更高的性能。例如,在128台虚拟机上执行20,000个任务进行引力波分析,可以在几分钟内生成一个有序优化调度,比使用蒙特卡罗模拟快0(103)~ 0(104)。顺序优化的调度导致更高的吞吐量和更低的内存需求。所报道的云实验结果验证了我们对本文所研究的三种工作流调度方法的相对性能的理论发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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