网格任务调度的最小最小最大最小选择算法

Kobra Etminani, Mahmoud Naghibzadeh
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引用次数: 248

摘要

今天,一方面是超级计算机的高成本,另一方面是对大规模计算资源的需求,导致了使用网格计算资源的网络。世界各地的大学、研究实验室和行业的许多研究小组现在都在研究一种称为计算网格的网格类型,它可以聚合分布式资源,以解决科学、工程和商业中的大规模数据密集型问题。一些机构和大学已经开始了网格计算的研究和教学计划,作为他们并行和分布式计算课程的一部分。为了更好地利用分布式系统的巨大能力,需要有效的调度算法。本文在两种传统调度算法Min-Min和Max-Min的基础上,提出了一种新的调度算法,在利用它们的缺点的同时,兼顾它们的优点。它根据任务在资源上的预期完成时间的标准差在两种算法之间进行选择。我们在GridSim网格模拟器中评估我们的调度启发式,即选择性算法。我们还将我们的方法与它的两个基本启发式进行了比较。实验结果表明,新的启发式算法在各种场景下都能带来显著的性能提升。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Min-Min Max-Min Selective Algorithm for Grid Task Scheduling
Today, the high cost of supercomputers in the one hand and the need for large-scale computational resources on the other hand, has led to use network of computational resources known as Grid. Numerous research groups in universities, research labs, and industries around the world are now working on a type of Grid called Computational Grids that enable aggregation of distributed resources for solving large-scale data intensive problems in science, engineering, and commerce. Several institutions and universities have started research and teaching programs on Grid computing as part of their parallel and distributed computing curriculum. To better use tremendous capabilities of this distributed system, effective and efficient scheduling algorithms are needed. In this paper, we introduce a new scheduling algorithm based on two conventional scheduling algorithms, Min-Min and Max-Min, to use their cons and at the same time, cover their pros. It selects between the two algorithms based on standard deviation of the expected completion time of tasks on resources. We evaluate our scheduling heuristic, the Selective algorithm, within a grid simulator called GridSim. We also compared our approach to its two basic heuristics. The experimental results show that the new heuristic can lead to significant performance gain for a variety of scenarios.
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