Unsupervised Competitive Hardware Learning Rule for Spintronic Clustering Architecture
Alvaro Velasquez
C. Bennett
Naimul Hassan
Wesley H. Brigner
Otitoaleke G. Akinola
J. Incorvia
M. Marinella
Joseph S. Friedman

Abstract
We propose a hardware learning rule for unsupervised clustering within a novel spintronic computing architecture. The proposed approach leverages the three-terminal structure of domain-wall magnetic tunnel junction devices to establish a feedback loop that serves to train such devices when they are used as synapses in a neuromorphic computing architecture.
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