Metrics for spin-based computing
Abstract
Spin-based computing is emerging as a powerful approach for energy-efficient and high-performance solutions to future data processing hardware. Spintronic devices function by electrically manipulating the collective dynamics of the electron spin, that is inherently non-volatile, nonlinear and fast-operating, and can couple to other degrees of freedom such as photonic and phononic systems. This review explores key advances in integrating magnetic and spintronic elements into computational architectures, ranging from fundamental components like radio-frequency neurons/synapses and spintronic probabilistic-bits to broader frameworks such as reservoir computing and magnetic Ising machines. We discuss hardware-specific and task-dependent metrics to evaluate the computing performance of spin-based components and associate them with physical properties. Finally, we discuss challenges and future opportunities, highlighting the potential of spin-based computing in next-generation technologies.
Cite
@article{arxiv.2510.17653,
title = {Metrics for spin-based computing},
author = {Hidekazu Kurebayashi and Giovanni Finocchio and Karin Everschor-Sitte and Jack C. Gartside and Tomohiro Taniguchi and Artem Litvinenko and Akash Kumar and Johan Åkerman and Eleni Vasilaki and Kemal Selçuk and Kerem Y. Çamsarı and Advait Madhavan and Shunsuke Fukami},
journal= {arXiv preprint arXiv:2510.17653},
year = {2026}
}
Comments
27 pages, 5 figures, accepted in Nature Review Physics