2021
DOI: 10.1002/smsc.202000065
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Artificial Intelligence Goes Physical

Abstract: Exploiting the intrinsic nonlinearity in physical reservoirs, e.g., dopant-atom networks, provides a new approach toward highly efficient computing such as feature projection and classification. In a recent study by Chen et al., the computational capability of dopant-atom network was investigated and found to diminish as the signal-to-noise ratio (SNR) increased, indicating the existence of an optimal bias condition. Although high SNR is often pursued in signal processing, it shows that embracing noise in non-… Show more

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