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Parallel implementations of the False Nearest Neighbors method for distributed memory architectures

机译:虚假最近邻居方法的并行实现,用于分布式内存体系结构

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摘要

The False Nearest Neighbors (FNN) method is particularly relevant in several fields of science and engineering (medicine, economics, oceanography, biological systems, etc.). In some of these applications, it is important to give results within a reasonable time scale; hence, the execution time of the FNN method has to be reduced. This paper describes two parallel implementations of the FNN method for distributed memory architectures. A 'Single-Program, Multiple Data' (SPMD) paradigm is employed using a simple data decomposition approach where each processor runs the same program but acts on a different subset of the data. The computationally intensive part of the method lies mainly in the neighbor search and therefore this task is parallelized and executed using 2 to 64 processors. The accuracy and the performance of the two parallel approaches are then assessed and compared with the best sequential implementation of the FNN method, which appears in the TISEAN project. The results indicate that the two parallel approaches, when the method is run using 64 processors on a SGI Origin 3800, are between 40 and 80 times faster than the sequential one. The efficiency is between 65 and 125%.
机译:虚假最近邻居(FNN)方法在科学和工程学的几个领域(医学,经济学,海洋学,生物系统等)特别重要。在其中一些应用中,重要的是要在合理的时间范围内给出结果。因此,必须减少FNN方法的执行时间。本文介绍了分布式内存体系结构的FNN方法的两种并行实现。 “单程序,多数据”(SPMD)范式使用简单的数据分解方法采用,其中每个处理器运行相同的程序,但作用于数据的不同子集。该方法的计算量大的部分主要在于邻居搜索,因此,此任务并行化并使用2至64个处理器执行。然后评估两种并行方法的准确性和性能,并将其与TISEAN项目中出现的FNN方法的最佳顺序实现方式进行比较。结果表明,当在SGI Origin 3800上使用64个处理器运行该方法时,这两种并行方法比顺序方法快40到80倍。效率在65到125%之间。

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