Inspired by the parallelism and efficiency of the brain, several candidates for artificial synapse devices have been developed for neuromorphic computing, yet a nonlinear and asymmetric synaptic response curve precludes their use for backpropagation, the foundation of modern supervised learning. Spintronic devices—which benefit from high endurance, low power consumption, low latency, and CMOS compatibility—are a promising technology for memory, and domain-wall magnetic tunnel junction (DW-MTJ) devices have been shown to implement synaptic functions such as long-term potentiation and spike-timing dependent plasticity. In this work, we propose a notched DW-MTJ synapse as a candidate for supervised learning. Using micromagnetic simulations at room temperature, we show that notched synapses ensure the non-volatility of the synaptic weight and allow for highly linear, symmetric, and reproducible weight updates using either spin transfer torque (STT) or spin–orbit torque (SOT) mechanisms of DW propagation. We use lookup tables constructed from micromagnetics simulations to model the training of neural networks built with DW-MTJ synapses on both the MNIST and Fashion-MNIST image classification tasks. Accounting for thermal noise and realistic process variations, the DW-MTJ devices achieve classification accuracy close to ideal floating-point updates using both STT and SOT devices at room temperature and at 400 K. Our work establishes the basis for a magnetic artificial synapse that can eventually lead to hardware neural networks with fully spintronic matrix operations implementing machine learning.
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17 May 2021
Research Article|
May 21 2021
A domain wall-magnetic tunnel junction artificial synapse with notched geometry for accurate and efficient training of deep neural networks
Special Collection:
Mesoscopic Magnetic Systems: From Fundamental Properties to Devices
Samuel Liu
;
Samuel Liu
a)
1
Department of Electrical and Computer Engineering, The University of Texas at Austin
, Austin, Texas 78712, USA
a)Author to whom correspondence should be addressed: [email protected]
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T. Patrick Xiao
;
T. Patrick Xiao
2
Sandia National Laboratories
, Albuquerque, New Mexico 87123, USA
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Can Cui
;
Can Cui
1
Department of Electrical and Computer Engineering, The University of Texas at Austin
, Austin, Texas 78712, USA
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Jean Anne C. Incorvia
;
Jean Anne C. Incorvia
1
Department of Electrical and Computer Engineering, The University of Texas at Austin
, Austin, Texas 78712, USA
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Christopher H. Bennett
;
Christopher H. Bennett
2
Sandia National Laboratories
, Albuquerque, New Mexico 87123, USA
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Matthew J. Marinella
Matthew J. Marinella
2
Sandia National Laboratories
, Albuquerque, New Mexico 87123, USA
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Samuel Liu
1,a)
T. Patrick Xiao
2
Can Cui
1
Jean Anne C. Incorvia
1
Christopher H. Bennett
2
Matthew J. Marinella
2
1
Department of Electrical and Computer Engineering, The University of Texas at Austin
, Austin, Texas 78712, USA
2
Sandia National Laboratories
, Albuquerque, New Mexico 87123, USA
a)Author to whom correspondence should be addressed: [email protected]
Note: This paper is part of the APL Special Collection on Mesoscopic Magnetic Systems: From Fundamental Properties to Devices.
Appl. Phys. Lett. 118, 202405 (2021)
Article history
Received:
January 31 2021
Accepted:
May 01 2021
Citation
Samuel Liu, T. Patrick Xiao, Can Cui, Jean Anne C. Incorvia, Christopher H. Bennett, Matthew J. Marinella; A domain wall-magnetic tunnel junction artificial synapse with notched geometry for accurate and efficient training of deep neural networks. Appl. Phys. Lett. 17 May 2021; 118 (20): 202405. https://doi.org/10.1063/5.0046032
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