结合启发式算法和模拟退火算法改进流水线数据处理的网格调度

Qingjiang Wang, Lin Zhang
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引用次数: 2

摘要

为了提高计算网格上流水线数据处理的性能,提出了模拟退火与启发式算法相结合的网格调度优化方法。流水线数据处理被划分为多个子应用程序,每个子应用程序都是可建模的。因此,应将子应用程序分配到相应的网格节点上,同时合理确定并行度。在一个网格节点上,假设子应用程序在空间上共享处理器资源,提出了一套启发式算法分别优化不同性能参数下的并行度,并在此基础上简化了模拟退火算法来优化子应用程序分配。实验表明,通过优化网格调度,可以有效地提高流水线数据处理的吞吐量或延迟
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Grid Scheduling of Pipelined Data Processing by Combining Heuristic Algorithms and Simulated Annealing
To improve the performance of pipelined data processing on computational grids, the method combining simulated annealing with a set of heuristic algorithms is presented to optimize grid scheduling. Pipelined data processing is divided into multiple sub-applications, and every sub-application is supposed moldable. Thus, sub-applications should be assigned onto their appropriate grid nodes, while parallel degrees should be determined reasonably. On one grid node, sub-applications are supposed to spatially share processor resources, and a set of heuristic algorithms is presented to optimize parallel degrees for different performance parameters respectively, based on which simulated annealing is simplified for optimizing sub-application assignments. Experiments show that the throughput or latency of pipelined data processing can be efficiently improved by the optimization of grid scheduling
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