The Impact of Task Runtime Estimate Accuracy on Scheduling Workloads of Workflows

A. Ilyushkin, D. Epema
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引用次数: 14

Abstract

Workflow schedulers often rely on task runtime estimates when making scheduling decisions, and they usually target the scheduling of a single workflow or batches of workflows. In contrast, in this paper, we evaluate the impact of the absence or limited accuracy of task runtime estimates on slowdown when scheduling complete workloads of workflows that arrive over time. We study a total of seven scheduling policies: four of these are popular existing policies for (batches of) workloads from the literature, including a simple backfilling policy which is not aware of task runtime estimates, two are novel workloadoriented policies, including one which targets fairness, and one is the well-known HEFT policy for a single workflow adapted to the online workload scenario. We simulate homogeneous and heterogeneous distributed systems to evaluate the performance of these policies under varying accuracy of task runtime estimates. Our results show that for high utilizations, the order in which workflows are processed is more important than the knowledge of correct task runtime estimates. Under low utilizations, all policies considered show good results, even a policy which does not use task runtime estimates. We also show that our Fair Workflow Prioritization (FWP) policy effectively decreases the variance of workflow slowdown and thus achieves fairness, and that the planbased scheduling policy derived from HEFT does not show much performance improvement while bringing extra complexity to the scheduling process.
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任务运行时估算精度对工作流工作负载调度的影响
工作流调度器在制定调度决策时通常依赖于任务运行时估计,并且它们通常针对单个工作流或批量工作流的调度。相反,在本文中,我们评估了在调度随时间到达的工作流的完整工作负载时,任务运行时估计的缺失或有限准确性对减速的影响。我们总共研究了七种调度策略:其中四个是文献中(批量)工作负载的流行策略,包括一个不知道任务运行时估计的简单回填策略,两个是新的面向工作负载的策略,包括一个目标公平的策略,一个是针对适应在线工作负载场景的单个工作流的著名的HEFT策略。我们模拟同构和异构分布式系统,以评估这些策略在不同任务运行时估计精度下的性能。我们的结果表明,对于高利用率,处理工作流的顺序比正确的任务运行时估计的知识更重要。在低利用率下,考虑的所有策略都显示出良好的结果,即使是不使用任务运行时估计的策略。我们的公平工作流优先级(FWP)策略有效地降低了工作流速度的变化,从而实现了公平性,而由HEFT衍生的基于计划的调度策略在给调度过程带来额外的复杂性的同时并没有显示出太大的性能改进。
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