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首页> 外文期刊>SIAM Journal on Scientific Computing >Scalable Heuristic Algorithms for the Parallel Execution of Data Flow Acyclic Digraphs
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Scalable Heuristic Algorithms for the Parallel Execution of Data Flow Acyclic Digraphs

机译:并行执行数据流非循环有向图的可扩展启发式算法

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摘要

Data flow acyclic directed graphs (digraphs) can be applied to accurately describe the data dependency for a wide range of grid-based scientific computing applications ranging from numerical algebra to realistic applications of radiation or neutron transport. The parallel computing of these applications is equivalent to the parallel execution of digraphs. This paper presents a framework of scalable heuristic algorithms for the parallel execution of digraphs. This framework consists of three components: the heuristic partitioning method of a digraph, the parallel sweeping algorithm for a partitioned digraph, and the heuristic strategy for vertex scheduling and vertex packing. Evaluation rules of heuristic algorithms are presented for better theoretical understanding and performance optimization. Parallel benchmarks for the multigroup neutron or radiation Sn transport using processors from 100 to 2048 on two massively parallel machines show that these heuristic algorithms scale well.
机译:数据流无环有向图(图)可用于为从数值代数到辐射或中子传输的实际应用等各种基于网格的科学计算应用准确地描述数据依赖性。这些应用程序的并行计算等效于有向图的并行执行。本文提出了可并行执行图的可扩展启发式算法框架。该框架由三个部分组成:有向图的启发式分区方法,分区有向图的并行扫描算法以及顶点调度和顶点打包的启发式策略。提出了启发式算法的评估规则,以更好地理解理论和优化性能。在两台大型并行计算机上使用从100到2048的处理器进行的多组中子或辐射Sn传输的并行基准测试表明,这些启发式算法可很好地扩展。

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