Energy consumption characterization of a Massively Parallel Processor Array (MPPA) platform running a hyperspectral SVM classifier

D. Madroñal, R. Lazcano, H. Fabelo, S. Ortega, R. Salvador, G. Callicó, E. Juárez, C. Sanz
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引用次数: 6

Abstract

In this paper, a Massively Parallel Processor Array platform is characterized in terms of energy consumption using a Support Vector Machine for hyperspectral image classification. This platform gathers 16 clusters composed of 16 cores each, i.e., 256 processors working in parallel. The objective of the work is to associate power dissipation and energy consumed by the platform with the different resources of the architecture. Experimenting with a hyperspectral SVM classifier, this study has been conducted using three strategies: i) modifying the number of processing elements, i.e., clusters and cores, ii) increasing system frequency, and iii) varying the number of active communication links during the analysis, i.e., I/Os and DMAs. As a result, a relationship between the energy consumption and the active platform resources has been exposed using two different parallelization strategies. Finally, the implementation that fully exploits the parallelization possibilities working at 500MHz has been proven to be also the most efficient one, as it reduces the energy consumption by 98% when compared to the sequential version running at 400MHz.
运行高光谱支持向量机分类器的大规模并行处理器阵列(MPPA)平台的能耗表征
本文利用支持向量机对高光谱图像进行分类,研究了大规模并行处理器阵列平台在能量消耗方面的特点。该平台汇集了16个集群,每个集群由16个核心组成,即256个处理器并行工作。这项工作的目标是将平台的功耗和能量消耗与建筑的不同资源联系起来。本研究使用高光谱SVM分类器进行实验,采用三种策略进行:i)修改处理元素的数量,即集群和核心;ii)增加系统频率;iii)在分析过程中改变主动通信链路的数量,即i / o和dma。因此,使用两种不同的并行化策略暴露了能耗和活动平台资源之间的关系。最后,充分利用在500MHz工作的并行化可能性的实现已被证明也是最有效的实现,因为与在400MHz运行的顺序版本相比,它减少了98%的能耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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