Heuristics for dynamic load balancing in parallel computing

Soumia Chokri, Sohaib Baroud, Safa Belhaous, Meriem Bentaleb, M. Mestari, Mohammed El Youssfi
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引用次数: 5

Abstract

In parallel computing, dynamic load balancing of parallel codes is considered as a crucial problem. The goal is to distribute roughly equal amounts of computational load across a number of processors, while minimizing inter-processor communication. The objective is to optimize the time of the simulation execution. In some applications, the load grow in unpredictable way that is why another distribution must be computed dynamically. Graph partitioning and repartitioning are usually combined to solve the dynamic load-balancing problem. In this paper we study and evaluate heuristic partitioning methods such as region expansion, multilevel, kernighan-lin algorithms; And methods of repartitioning graphs with a comparison between these different methods. Advantages and limitations of different existing heuristics in the literature are cleared.
并行计算中动态负载平衡的启发式算法
在并行计算中,并行代码的动态负载平衡是一个关键问题。目标是在多个处理器之间分配大致相等的计算负载,同时尽量减少处理器间的通信。目标是优化模拟执行的时间。在某些应用程序中,负载以不可预测的方式增长,这就是为什么必须动态计算另一个分布。图分区和重分区通常结合起来解决动态负载平衡问题。本文研究并评价了启发式划分方法,如区域展开、多级、kernighan-lin算法;并对图的重新划分方法进行了比较。澄清了文献中不同的启发式方法的优点和局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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