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A Deep Dive into the Computational Fidelity of High-Variability Low Energy Barrier Magnet Technology for Accelerating Optimization and Bayesian Problems

IEEE MAGNETICS LETTERS(2023)

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Abstract
Low energy barrier magnet (LBM) technology has recently been proposed as a candidate for accelerating algorithms based on energy minimization and probabilistic graphs because their physical characteristics have a one-to-one mapping onto the primitives of these algorithms. Many of these algorithms have a much higher tolerance for error compared to high-accuracy numerical computation. LBM, however, is a nascent technology, and devices show high sample-to-sample variability. In this letter, we take a deep dive into the overall fidelity afforded by this technology in providing computational primitives for these algorithms. We show, that while the computed results show finite deviations from zero-variability devices, the margin of error is almost always certifiable to a certain percentage. This suggests that LBM technology could be a viable candidate as an accelerator for popular emerging paradigms of computing.
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Key words
Electronics packaging,Neurons,Magnetic tunneling,Magnetization,Energy barrier,Saturation magnetization,Probabilistic logic,Nanomagnetics,binary stochastic neurons,probabilistic computing,energy minimization-based optimization algorithms,probabilistic graphical algorithms
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