2022
DOI: 10.48550/arxiv.2205.05053
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A High Throughput Generative Vector Autoregression Model for Stochastic Synapses

Abstract: By imitating the synaptic connectivity and plasticity of the brain, emerging electronic nanodevices offer new opportunities as the building blocks of neuromorphic systems. One challenge for largescale simulations of computational architectures based on emerging devices is to accurately capture device response, hysteresis, noise, and the covariance structure in the temporal domain as well as between the different device parameters. We address this challenge with a high throughput generative model for synaptic a… Show more

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