posted on 2019-04-18, 00:00authored byShamma Nasrin, Justine L. Drobitch, Supriyo Bandyopadhyay, Amit Ranjan Trivedi
This letter discusses mixed-mode magneto tunneling junction (m-MTJ)-based restricted Boltzmann machine (RBM). RBMs are unsupervised learning mod- els, suitable for extracting features from high-dimensional data. The m-MTJ is actuated by the simultaneous actions of voltage-controlled magnetic anisotropy and voltage- controlled spin-transfer torque, where the switching of the free-layer is probabilistic and can be controlled by the two. Using m-MTJ-based activation functions, we present a novel low area/power RBM. We discuss online learning of the presented implementation to negate process variability. For MNIST hand-written dataset, the design achieves ∼96% accuracy under expected variability in various components.
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Publisher Statement
Copyright @ Institute of Electrical and Electronics Engineers (IEEE)
Citation
Nasrin, S., Drobitch, J. L., Bandyopadhyay, S., & Trivedi, A. R. (2019). Low Power Restricted Boltzmann Machine Using Mixed-Mode Magneto-Tunneling Junctions. Ieee Electron Device Letters, 40(2), 345-348. doi:10.1109/LED.2018.2889881
Publisher
Institute of Electrical and Electronics Engineers (IEEE)