Issue 9, 2024

Bimodal alteration of cognitive accuracy for spintronic artificial neural networks

Abstract

Spintronics-based artificial neural networks (ANNs) exhibiting nonvolatile, fast, and energy-efficient computing capabilities are promising neuromorphic hardware for performing complex cognitive tasks of artificial intelligence and machine learning. Early experimental efforts focused on multistate device concepts to enhance synaptic weight precisions, albeit compromising on cognitive accuracy due to their low magnetoresistance. Here, we propose a hybrid approach based on the tuning of tunnel magnetoresistance (TMR) and the number of states in the compound magnetic tunnel junctions (MTJs) to improve the cognitive performance of an all-spin ANN. A TMR variation of 33–78% is controlled by the free layer (FL) thickness wedge (1.6–2.6 nm) across the wafer. Meanwhile, the number of resistance states in the compound MTJ is manipulated by varying the number of constituent MTJ cells (n = 1–3), generating n + 1 states with a TMR difference between consecutive states of at least 21%. Using MNIST handwritten digit and fashion object databases, the test accuracy of the compound MTJ ANN is observed to increase with the number of intermediate states for a fixed FL thickness or TMR. Meanwhile, the test accuracy for a 1-cell MTJ increases linearly by 8.3% and 7.4% for handwritten digits and fashion objects, respectively, with increasing TMR. Interestingly, a multifarious TMR dependence of test accuracy is observed with the increasing synaptic complexity in the 2- and 3-cell MTJs. By leveraging on the bimodal tuning of multilevel and TMR, we establish viable paths for enhancing the cognitive performance of spintronic ANN for in-memory and neuromorphic computing.

Graphical abstract: Bimodal alteration of cognitive accuracy for spintronic artificial neural networks

Article information

Article type
Communication
Submitted
04 3 2024
Accepted
24 6 2024
First published
02 7 2024
This article is Open Access
Creative Commons BY-NC license

Nanoscale Horiz., 2024,9, 1522-1531

Bimodal alteration of cognitive accuracy for spintronic artificial neural networks

A. Kumar, D. Das, D. J. X. Lin, L. Huang, S. L. K. Yap, H. K. Tan, R. J. J. Lim, H. R. Tan, Y. T. Toh, S. T. Lim, X. Fong and P. Ho, Nanoscale Horiz., 2024, 9, 1522 DOI: 10.1039/D4NH00097H

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