arXiv Analytics

Sign in

arXiv:2106.16043 [cond-mat.mes-hall]AbstractReferencesReviewsResources

Study of the robustness of neural networks based on spintronic neurons

Eleonora Raimondo, Anna Giordano, Andrea Grimaldi, Vito Puliafito, Mario Carpentieri, Zhongming Zeng, Riccardo Tomasello, Giovanni Finocchio

Published 2021-06-30Version 1

Spintronic technology is emerging as a direction for the hardware implementation of neurons and synapses of neuromorphic architectures. In particular, a single spintronic device can be used to implement the nonlinear activation function of neurons. Here, we propose how to implement spintronic neurons with a sigmoidal and ReLU-like activation functions. We then perform a numerical experiment showing the robustness of neural networks made by spintronic neurons all having different activation functions to emulate device-to-device variations in a possible hardware implementation of the network. Therefore, we consider a vanilla neural network implemented to recognize the categories of the Mixed National Institute of Standards and Technology database, and we show an average accuracy of 98.87 % in the test dataset which is very close to the 98.89% as obtained for the ideal case (all neurons have the same sigmoid activation function). Similar results are also obtained with neurons having a ReLU-like activation function.

Related articles: Most relevant | Search more
arXiv:2201.07576 [cond-mat.mes-hall] (Published 2022-01-19)
Corner modes of the breathing kagome lattice: origin and robustness
arXiv:1901.05218 [cond-mat.mes-hall] (Published 2019-01-16)
Evidence for robustness and universality of tunable-barrier electron pumps
arXiv:1910.04842 [cond-mat.mes-hall] (Published 2019-10-10)
Robustness and scalability of p-bits implemented with low energy barrier nanomagnets