考虑通信代价的多处理机任务调度的多种群并行遗传算法

Rashid Morady, D. Dal
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引用次数: 12

摘要

多处理机任务调度是并行和分布式系统中最难的组合优化问题之一。它被称为NP-hard,因此,使用精确的算法扫描整个搜索空间来找到最优解是不切实际的。相反,元启发式主要用于在合理的时间内找到接近最优的解决方案。针对存在通信代价的多处理机任务调度问题,提出了一种基于多种群的并行遗传算法。据我们所知,这种并行遗传算法方法第一次应用于手头的问题,使用一个基准集,其中包括来自不同来源的众所周知的任务图。我们在基准集的几个不同大小的任务图上进行的实验表明,该方法在两个不同的性能指标方面优于传统的遗传算法和文献中的相关工作。我们的并行实现不仅减少了执行时间,而且大大提高了调度解决方案的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multi-population based parallel genetic algorithm for multiprocessor task scheduling with Communication Costs
Multiprocessor task scheduling is one of the hardest combinatorial optimization problems in parallel and distributed systems. It is known as NP-hard and therefore, scanning the whole search space using an exact algorithm to find the optimal solution is not practical. Instead, metaheuristics are mostly employed to find a near-optimal solution in a reasonable amount of time. In this paper, a multi-population based parallel genetic algorithm is presented for the optimization of multiprocessor task scheduling in the presence of communication costs. To the best of our knowledge, this parallel genetic algorithm approach is applied to the problem at hand for the first time using a benchmark set that includes well-known task graphs from different sources. Our experiments conducted on several task graphs with different sizes from the benchmark set showed the superiority of the approach over a conventional genetic algorithm and the related works in the literature in terms of two different performance metrics. Our parallel implementation not only decreased the execution time but also increased the quality of the scheduling solutions considerably.
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