2019
DOI: 10.48550/arxiv.1905.03812
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Convolutional Neural Networks Utilizing Multifunctional Spin-Hall MTJ Neurons

Andrew W. Stephan,
Steven J. Koester

Abstract: We propose a new network architecture for standard spin-Hall magnetic tunnel junction-based spintronic neurons that allows them to compute multiple critical convolutional neural network functionalities simultaneously and in parallel, saving space and time. An approximation to the Rectified Linear Unit transfer function and the local pooling function are computed simultaneously with the convolution operation itself. A proof-of-concept simulation is performed on the MNIST dataset, achieving up to 98% accuracy at… Show more

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