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A Performance Model to Estimate Execution Time of Scientific Workflows on the Cloud

机译:评估云上科学工作流执行时间的性能模型

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Scientific workflows, which capture large computational problems, may be executed on large-scale distributed systems such as Clouds. Determining the amount of resources to be provisioned for the execution of scientific workflows is a key component to achieve cost-efficient resource management and good performance. In this paper, a performance prediction model is presented to estimate execution time of scientific workflows for a different number of resources, taking into account their structure as well as their system-dependent characteristics. In the evaluation, three real-world scientific workflows are used to compare the estimated makespan calculated by the model with the actual makespan achieved on different system configurations of Amazon EC2. The results show that the proposed model can predict execution time with an error of less than 20% for over 96.8% of the experiments..
机译:捕获大型计算问题的科学工作流可以在诸如Clouds的大型分布式系统上执行。确定要为执行科学工作流程而准备的资源量,是实现具有成本效益的资源管理和良好性能的关键组成部分。在本文中,提出了一种性能预测模型,以考虑不同数量资源的科学工作流的执行时间,同时考虑其结构以及与系统有关的特征。在评估中,使用了三个实际的科学工作流程来比较该模型计算的估计有效期和在Amazon EC2的不同系统配置上实现的实际有效期。结果表明,在超过96.8%的实验中,该模型可以预测执行时间,且误差小于20%。

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