Gradient-based optimization of spintronic devices
The optimization of physical parameters serves various purposes, such as system identification and efficiency in developing devices. Spin-torque oscillators have been applied to neuromorphic computing experimentally and theoretically, but the optimization of their physical parameters has usually bee...
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Zusammenfassung: | The optimization of physical parameters serves various purposes, such as
system identification and efficiency in developing devices. Spin-torque
oscillators have been applied to neuromorphic computing experimentally and
theoretically, but the optimization of their physical parameters has usually
been done by grid search. In this paper, we propose a scheme to optimize the
parameters of the dynamics of macrospin-type spin-torque oscillators using the
gradient descent method with automatic differentiation. First, we prepared
numerically created dynamics as teacher data and successfully tuned the
parameters to reproduce the dynamics. This can be applied to obtain the
correspondence between the simulation and experiment of the spin-torque
oscillators. Next, we successfully solved the image recognition task with high
accuracy by connecting the coupled system of spin-torque oscillators to the
input and output layers and training all of them through gradient descent. This
approach allowed us to estimate how to control the experimental setup and
design the physical systems so that the task could be solved with a high
accuracy using spin-torque oscillators. |
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DOI: | 10.48550/arxiv.2409.09105 |