Performance analysis and optimization on a parallel atmospheric general circulation model code

J. Lou, J. Farrara
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引用次数: 2

Abstract

An analysis is presented of the primary factors influencing the performance of a parallel implementation of the UCLA atmospheric general circulation model (AGCM) on distributed memory, massively parallel computer systems. Several modifications to the original parallel AGCM code aimed at improving its numerical efficiency, load balance and single node code performance are discussed. The impact of these optimization strategies on the performance on two of the state of the art parallel computers, the Intel Paragon and Cray T3D, is presented and analyzed. It is found that implementation of a load balanced FFT algorithm results in a reduction in overall execution time of approximately 45% compared to the original convolution based algorithm. Preliminary results of the application of a load balancing scheme for the physics part of the AGCM code suggest additional reductions in execution time of 15-20% can be achieved. Finally, several strategies for improving the single node performance of the code are presented, and the results obtained thus far suggest reductions in execution time in the range of 30-40% are possible.
并行大气环流模式代码的性能分析与优化
分析了影响UCLA大气环流模型(AGCM)在分布式存储、大规模并行计算机系统上并行实现性能的主要因素。讨论了对原始并行AGCM代码的改进,以提高其数值效率、负载平衡和单节点代码性能。介绍并分析了这些优化策略对两种最先进的并行计算机(Intel Paragon和Cray T3D)性能的影响。研究发现,与原始的基于卷积的算法相比,负载平衡的FFT算法的实现使总体执行时间减少了约45%。对AGCM代码的物理部分应用负载平衡方案的初步结果表明,可以实现额外减少15-20%的执行时间。最后,提出了几种改进代码单节点性能的策略,到目前为止获得的结果表明,执行时间可能减少30-40%。
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