Vulnerability of Hardware Neural Networks to Dynamic Operation Point Variations

IEEE Design & Test(2020)

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摘要
Editor's notes: This article studies the impacts of physical variations on neural networks. The proposed studies reveal an important observation that both multiple layer perceptron (MLP) and convolutional neural network (CNN) may fail to operate appropriately even with small variations (e.g., voltage droops as small as 20 mV). Robust neural network architectures, including the binarized neural network (BNN) and the local binary pattern network (LBPNet), are explored to address this variability issue that has become a major bottleneck for practical applications. -Xin Li, Duke University.
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关键词
vulnerability,hardware neural networks,dynamic operation point variations,physical variations,important observation,multiple layer perceptron,convolutional neural network,voltage droops,robust neural network architectures,binarized neural network,local binary pattern network
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