A stochastic model of a dedicated heterogeneous computing system for establishing a greedy approach to developing data relocation heuristics

Min Tan, H. Siegel
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引用次数: 4

Abstract

In a dedicated mixed-machine heterogeneous computing (HC) system, an application program may be decomposed into subtasks, then each subtask assigned to the machine where it is best suited for execution. Subtask data relocation is defined as selecting the sources for their needed data items. This study focuses on theoretical issues for data relocation using a stochastic HC model. It is assumed that multiple independent subtasks of an application program can be executed concurrently on different machines whenever possible. A stochastic model for HC is proposed, in which the computation times of subtasks and communication times for inter-machine data transfers can be random variables. The optimization problem for finding the optimal matching, scheduling, and data relocation schemes to minimize the total execution time of an application program is defined based on this stochastic HC model. The optimization criteria and search space for the above optimization problem are described. It is proven that a greedy algorithm based approach will generate the optimal data relocation scheme with respect to any fixed matching and scheduling schemes. This result indicates that a greedy algorithm based approach is the best strategy for developing data relocation heuristics in practice.
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一个专用异构计算系统的随机模型,用于建立一种贪婪的方法来开发数据重定位启发式
在专用的混合机器异构计算(HC)系统中,可以将应用程序分解为子任务,然后将每个子任务分配给最适合执行的机器。子任务数据重定位定义为为它们所需的数据项选择源。本文主要研究了随机HC模型数据重定位的理论问题。假设一个应用程序的多个独立子任务可以尽可能在不同的机器上并发执行。提出了一种HC的随机模型,其中子任务的计算次数和机器间数据传输的通信次数可以是随机变量。基于这种随机HC模型,定义了寻找最优匹配、调度和数据重定位方案以最小化应用程序总执行时间的优化问题。描述了上述优化问题的优化准则和搜索空间。证明了对于任意固定的匹配和调度方案,基于贪心算法的方法都能生成最优的数据迁移方案。结果表明,在实际应用中,基于贪心算法的方法是开发数据重定位启发式算法的最佳策略。
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