p-Bits for Probabilistic Spin Logic
Kerem Y. Camsari, Brian M. Sutton, Supriyo Datta

TL;DR
This paper introduces p-bits, probabilistic hardware elements based on low barrier magnets, which can be used for probabilistic circuits, bridging stochastic machine learning and quantum computing, and enabling scalable room-temperature optimization solutions.
Contribution
The paper presents the concept of p-bits, their physical implementation using low barrier magnets, and their potential applications in probabilistic computing, machine learning, and quantum-inspired optimization.
Findings
p-bits can be implemented with low barrier magnets and transistors
p-bits can serve as hardware accelerators for stochastic neural networks
p-bits enable scalable quantum annealing-like optimization at room temperature
Abstract
We introduce the concept of a probabilistic or p-bit, intermediate between the standard bits of digital electronics and the emerging q-bits of quantum computing. We show that low barrier magnets or LBM's provide a natural physical representation for p-bits and can be built either from perpendicular magnets (PMA) designed to be close to the in-plane transition or from circular in-plane magnets (IMA). Magnetic tunnel junctions (MTJ) built using LBM's as free layers can be combined with standard NMOS transistors to provide three-terminal building blocks for large scale probabilistic circuits that can be designed to perform useful functions. Interestingly, this three-terminal unit looks just like the 1T/MTJ device used in embedded MRAM technology, with only one difference: the use of an LBM for the MTJ free layer. We hope that the concept of p-bits and p-circuits will help open up new…
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