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A Comparative Study on the Performance of the Parallel and Distributing Computing Operation in MatLab

机译:MatLab并行和分布式计算操作性能的比较研究

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This study describes the performance results on testing MatLab applications using the parallel computing and the distributed computing toolboxes under different platforms with different hardware and operating systems. Each trial was executed keeping the hardware fixed and changing the operating system to obtain unbiased results. To standardize the benchmarking test, Fast Fourier Transform (FFT), discrete cosine transform (DCT), edge detection and matrix multiplication algorithms were executed. The results show that the leveraging of multicore platforms can speed up considerably the processing of images through the use of parallel computing tools in MatLab. Two different system hardware platforms (systems 1 and 2) were used in a series of experiments. Four rounds of experiments were performed benchmarking the FFT algorithm using the parallel tool box, by changing system platform, number of workers, image size and number of images. The results of the ANOVA test suggest that although there is no statistical significance on the factor represented by the operating system (OS) on system 1, the OS plays a significant roll on system 2. Moreover, on both systems there is statistical significance on the factors represented by the number of workers utilized and the number of images processed, yielding more than a 500% performance increase by using 8 MatLab workers on a dual quad-core machine.
机译:这项研究描述了在具有不同硬件和操作系统的不同平台下,使用并行计算和分布式计算工具箱测试MatLab应用程序的性能结果。执行每个试验均需保持硬件固定并更改操作系统,以获得公正的结果。为了使基准测试标准化,执行了快速傅里叶变换(FFT),离散余弦变换(DCT),边缘检测和矩阵乘法算法。结果表明,通过使用MatLab中的并行计算工具,利用多核平台可以大大加快图像处理速度。在一系列实验中使用了两个不同的系统硬件平台(系统1和2)。通过更改系统平台,工作人员数量,图像大小和图像数量,使用并行工具箱对FFT算法进行了四轮基准测试。 ANOVA测试的结果表明,尽管在系统1上由操作系统(OS)表示的因素没有统计学意义,但是OS在系统2上起着重要作用。此外,在这两个系统上,操作系统对系统2都具有统计学意义。由使用的工作人员数量和处理的图像数量表示的因素,通过在双四核计算机上使用8个MatLab工作人员,性能提高了500%以上。

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