Corpus ID: 214641375

Unsupervised Competitive Hardware Learning Rule for Spintronic Clustering Architecture

@article{Velasquez2020UnsupervisedCH,
  title={Unsupervised Competitive Hardware Learning Rule for Spintronic Clustering Architecture},
  author={Alvaro Velasquez and Christopher H. Bennett and Naimul Hassan and Wesley H. Brigner and Otitoaleke Gideon Akinola and Jean Anne Currivan Incorvia and Matthew J. Marinella and Joseph S. Friedman},
  journal={ArXiv},
  year={2020},
  volume={abs/2003.11120}
}
  • Alvaro Velasquez, Christopher H. Bennett, +5 authors Joseph S. Friedman
  • Published 2020
  • Computer Science, Physics
  • ArXiv
  • 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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