A Device Non-Ideality Resilient Approach for Mapping Neural Networks to Crossbar Arrays

2020 57th ACM/IEEE Design Automation Conference (DAC)(2020)

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摘要
We propose a technology-independent method, referred to as adjacent connection matrix (ACM), to efficiently map signed weight matrices to non-negative crossbar arrays. When compared to same-hardware-overhead mapping methods, using ACM leads to improvements of up to 20% in training accuracy for ResNet-20 with the CIFAR-10 dataset when training with 5-bit precision crossbar arrays or lower. When compared with strategies that use two elements to represent a weight, ACM achieves comparable training accuracies, while also offering area and read energy reductions of 2.3× and 7×, respectively. ACM also has a mild regularization effect that improves inference accuracy in crossbar arrays without any retraining or costly device/variation-aware training.
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关键词
mapping neural networks,crossbar arrays,neural networks,non-ideality
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