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Algorithmic-Parameter Optimization of a Parallelized Split-Step Fourier Transform Using a Modified BSP Cost Model

机译:使用修改的BSP成本模型并行化分流傅立叶变换的算法 - 参数优化

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Adaptive algorithms are increasingly acknowledged in leading parallel and distributed research. In the past, algorithms were manually tuned to be executed efficiently on a particular architecture. However, interest has shifted towards algorithms that can adapt themselves to the computational resources. A cost model representing the behavior of the system (i.e. system parameters) and the algorithm (i.e algorithm parameters) plays an important role in adaptive parallel algorithms. In this paper, we contribute a computational model based on Bulk Synchronous Parallel processing that predicts performance of a parallelized split-step Fourier transform. We extracted the system parameters of a cluster (upon which our algorithm was executed) and showed the use of an algorithmic parameter in the model that exhibits optimal behavior. Our model can thus be used for the purpose of self-adaption.
机译:在领先的平行和分布式研究中越来越公认自适应算法。 在过去,手动调谐算法以在特定架构上有效地执行。 但是,兴趣转向可以适应计算资源的算法。 代表系统行为的成本模型(即系统参数)和算法(即算法参数)在自适应并行算法中起重要作用。 在本文中,我们提供了一种基于批量同步并行处理的计算模型,该计算模型预测了并行化分离步骤傅立叶变换的性能。 我们提取了群集的系统参数(在执行我们的算法,并在呈现最佳行为的模型中显示使用算法参数。 因此,我们的模型可用于自适应的目的。

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