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Parallel Self-organizing Map Using Shared Virtual Memory Buffers

机译:使用共享虚拟内存缓冲区的并行自组织映射

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Parallel implementation of Self-organizing Map (SOM) has been studied since last decade. Graphic Processing Unit (GPU) is one of most promising architecture for executing SOM in parallel. However, there are performances issues are highlighted when imposing larger mapping and dataset size onto parallel SOM that executed on the GPU. Alternatively, heterogeneous systems that soldered GPU together with Central Processing Unit (CPU) are introduced in order to improve communication between CPU and GPU. Shared Virtual Memory (SVM) is one of features in OpenCL 2.0 which allows the host and the device to share a common virtual address range. Thus this research proposes to introduce a parallel SOM architecture that suitable for both GPU and heterogeneous system with the aim to compare the performance in term of computation time. The architecture comprises of three kernels that executed on two different platforms (1) discrete GPU platform and (2) heterogeneous system platform that tested using SVM buffers. The experimental results show the parallel SOM running on heterogeneous platform has significant improvement in computation time.
机译:自上个十年以来,一直在研究并行执行自组织映射(SOM)。图形处理单元(GPU)是用于并行执行SOM的最有前途的体系结构之一。但是,将较大的映射和数据集大小施加到在GPU上执行的并行SOM时,存在一些性能问题。或者,引入了将GPU与中央处理器(CPU)焊接在一起的异构系统,以改善CPU与GPU之间的通信。共享虚拟内存(SVM)是OpenCL 2.0的功能之一,它允许主机和设备共享一个公共的虚拟地址范围。因此,本研究建议引入一种适用于GPU和异构系统的并行SOM架构,以比较计算时间方面的性能。该体系结构包含三个内核,它们在两个不同的平台上执行(1)离散GPU平台和(2)使用SVM缓冲区进行测试的异构系统平台。实验结果表明,在异构平台上运行的并行SOM在计算时间上有显着改善。

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