2019
DOI: 10.48550/arxiv.1912.11516
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PANTHER: A Programmable Architecture for Neural Network Training Harnessing Energy-efficient ReRAM

Abstract: The wide adoption of deep neural networks has been accompanied by ever-increasing energy and performance demands due to the expensive nature of training them. Numerous special-purpose architectures have been proposed to accelerate training: both digital and hybrid digital-analog using resistive RAM (ReRAM) crossbars. ReRAM-based accelerators have demonstrated the effectiveness of ReRAM crossbars at performing matrix-vector multiplication operations that are prevalent in training. However, they still suffer fro… Show more

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