Olivier Beaumont, Arnaud Legrand, L. Marchal, Y. Robert
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引用次数: 37
摘要
在本文中,我们考虑了将一组任务图映射到异构系统(如集群和网格)上的稳态调度技术。我们提倡使用稳态调度来解决这一难题。由于篇幅限制,我们主要关注复杂性结果。我们证明了在一般情况下,优化稳态吞吐量的问题是np完全的。我们提出了这个问题的一个精简版本,它属于NP复杂度类,但不限制解的最优性。我们在扩展版中提供了许多积极的结果(Beaumont et al., 2004)。实际上,我们展示了如何使用线性规划方法在多项式时间内确定大型应用程序图和任意平台图的最佳稳态调度策略。
Assessing the impact and limits of steady-state scheduling for mixed task and data parallelism on heterogeneous platforms
In this paper, we consider steady-state scheduling techniques for mapping a collection of task graphs onto heterogeneous systems, such as clusters and grids. We advocate the use of steady-state scheduling to solve this difficult problem. Due to space limitations, we concentrate on complexity results. We show that the problem of optimizing the steady-state throughput is NP-complete in the general case. We formulate a compact version of the problem that belongs to the NP complexity class but which does not restrict the optimality of the solution. We provide many positive results in the extended version (Beaumont et al., 2004). Indeed, we show how to determine in polynomial time the best steady-state scheduling strategy for a large class of application graphs and for an arbitrary platform graphs, using a linear programming approach.