Energy-Efficient Bayesian Inference Using Near-Memory Computation with Memristors - Architectures et Modèles de l'Adaptation et de la Cognition
Communication Dans Un Congrès Année : 2023

Energy-Efficient Bayesian Inference Using Near-Memory Computation with Memristors

Résumé

Bayesian reasoning is a machine learning approach that provides explainable outputs and excels in small-data situations with high uncertainty. However, it requires intensive memory access and computation and is, therefore, too energy-intensive for extreme edge contexts. Near-memory computation with memristors (or RRAM) can greatly improve the energy efficiency of its computations. Here, we report two fabricated integrated circuits in a hybrid CMOS-memristor process, featuring each sixteen tiny memristor arrays and the associated near-memory logic for Bayesian inference. One circuit performs Bayesian inference using stochastic computing, and the other uses logarithmic computation; these two paradigms fit the area constraints of near-memory computing well. On-chip measurements show the viability of both approaches with respect to memristor imperfections. The two Bayesian machines also operated well at low supply voltages. We also designed scaled-up versions of the machines. Both scaled-up designs can perform a gesture recognition task using orders of magnitude less energy than a microcontroller unit. We also see that if an accuracy lower than 86.9% is sufficient for this sample task, stochastic computing consumes less energy than logarithmic computing; for higher accuracies, logarithmic computation is more energy-efficient. These results highlight the potential of memristor-based near-memory Bayesian computing, providing both accuracy and energy efficiency.
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Dates et versions

hal-04270563 , version 1 (04-11-2023)

Identifiants

Citer

C. Turck, K.-E. Harabi, T. Hirtzlin, E. Vianello, R. Laurent, et al.. Energy-Efficient Bayesian Inference Using Near-Memory Computation with Memristors. 2023 Design, Automation & Test in Europe Conference & Exhibition (DATE), Apr 2023, Antwerp, Belgium. pp.1-2, ⟨10.23919/DATE56975.2023.10137312⟩. ⟨hal-04270563⟩
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