2022
DOI: 10.48550/arxiv.2203.05311
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Design-Technology Co-Optimization for NVM-based Neuromorphic Processing Elements

Abstract: An emerging use-case of machine learning (ML) is to train a model on a high-performance system and deploy the trained model on energy-constrained embedded systems. Neuromorphic hardware platforms, which operate on principles of the biological brain, can significantly lower the energy overhead of a machine learning inference task, making these platforms an attractive solution for embedded ML systems. We present a designtechnology tradeoff analysis to implement such inference tasks on the processing elements (PE… Show more

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