Performance Analysis of Convolutional Neural Networks on Embedded Systems

Lukasz Grzymkowski, T. Stefański
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引用次数: 2

Abstract

Machine learning is no longer confined to cloud and high-end server systems and has been successfully deployed on devices that are part of Internet of Things. This paper presents the analysis of performance of convolutional neural networks deployed on an ARM microcontroller. Inference time is measured for different core frequencies, with and without DSP instructions and disabled access to cache. Networks use both real-valued and complex-valued tensors and are tested using different inference engines. We conclude that the system must be tuned in a holistic way to achieve optimal efficiency.
卷积神经网络在嵌入式系统中的性能分析
机器学习不再局限于云和高端服务器系统,已经成功部署在物联网的设备上。本文分析了在ARM微控制器上部署卷积神经网络的性能。在不同的核心频率下测量推理时间,有和没有DSP指令和禁用缓存访问。网络使用实值张量和复值张量,并使用不同的推理引擎进行测试。我们的结论是,该系统必须以一种整体的方式进行调整,以达到最佳效率。
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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