2023
DOI: 10.1088/2634-4386/acf0e4
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Impact of edge defects on the synaptic characteristic of a ferromagnetic domain-wall device and on on-chip learning

Ram Singh Yadav,
Aniket Sadashiva,
Amod Holla
et al.

Abstract: Topological-soliton-based devices, like the ferromagnetic domain-wall device, have been proposed as non-volatile memory (NVM) synapses in electronic crossbar arrays for fast and energy-efficient implementation of on-chip learning of neural networks. High linearity and symmetry in the synaptic weight-update characteristic of the device (long-term potentiation (LTP) and long-term depression (LTD)) are important requirements to obtain high classification/ regression accuracy in such an on-chip learning scheme. Ho… Show more

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