Shape-Dependent Multi-Weight Magnetic Artificial Synapses for Neuromorphic Computing
Thomas Leonard, Samuel Liu, Mahshid Alamdar, Can Cui, Otitoaleke G., Akinola, Lin Xue, T. Patrick Xiao, Joseph S. Friedman, Matthew J. Marinella,, Christopher H. Bennett, Jean Anne C. Incorvia

TL;DR
This paper demonstrates magnetic artificial synapses with shape-dependent properties that enable multi-weight states and application-specific behaviors, advancing neuromorphic computing hardware.
Contribution
It introduces shape-dependent magnetic synapses with multiple stable resistance states controlled electrically, providing new design insights for neuromorphic devices.
Findings
Trapezoidal devices exhibit asymmetric weight updates with high controllability.
Straight devices show higher stochasticity but stable resistance levels.
Magnetic synapses enable efficient online learning and high-accuracy image recognition.
Abstract
In neuromorphic computing, artificial synapses provide a multi-weight conductance state that is set based on inputs from neurons, analogous to the brain. Additional properties of the synapse beyond multiple weights can be needed, and can depend on the application, requiring the need for generating different synapse behaviors from the same materials. Here, we measure artificial synapses based on magnetic materials that use a magnetic tunnel junction and a magnetic domain wall. By fabricating lithographic notches in a domain wall track underneath a single magnetic tunnel junction, we achieve 4-5 stable resistance states that can be repeatably controlled electrically using spin orbit torque. We analyze the effect of geometry on the synapse behavior, showing that a trapezoidal device has asymmetric weight updates with high controllability, while a straight device has higher stochasticity,…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Ferroelectric and Negative Capacitance Devices · Magnetic properties of thin films
