Paul Moggridge, N. Helian, Yi Sun, M. Lilley, V. Veneziano, Martin Eaves
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引用次数: 0
摘要
本文对最大-最小快速通道调度算法进行了改进,并与一些常用算法进行了比较。MXFT的改进版本被称为Min-Min Max-Min Fast Track (MMMXFT)和Clustering Min-Min Max-Min Fast Track (CMMMXFT)。关键的区别是使用Min-Min快速通道。实验表明,尽管Min-Min以牺牲总体完工时间为代价优先考虑小任务的特点,但总体完工时间并没有受到不利影响,并且在MMMXFT中确定了优先考虑小任务的好处。除一次真实实验外,其余实验均使用模拟器进行。现实世界的实验表明,依赖于准确的执行时间预测的算法所面临的挑战。
Improving the MXFT scheduling algorithm for a cloud computing context
In this paper, the Max-Min Fast Track (MXFT) scheduling algorithm is improved and compared against a selection of popular algorithms. The improved versions of MXFT are called Min-Min Max-Min Fast Track (MMMXFT) and Clustering Min-Min Max-Min Fast Track (CMMMXFT). The key difference is using Min-Min for the fast track. Experimentation revealed that despite Min-Min's characteristic of prioritising small tasks at the expense of overall makespan, the overall makespan was not adversely affected and the benefits of prioritising small tasks were identified in MMMXFT. Experiments were conducted by using a simulator with the exception of one real-world experiment. The real-world experiment identified challenges faced by algorithms which rely on accurate execution time prediction.