2024
DOI: 10.1038/s41467-024-46879-4
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Training an Ising machine with equilibrium propagation

Jérémie Laydevant,
Danijela Marković,
Julie Grollier

Abstract: Ising machines, which are hardware implementations of the Ising model of coupled spins, have been influential in the development of unsupervised learning algorithms at the origins of Artificial Intelligence (AI). However, their application to AI has been limited due to the complexities in matching supervised training methods with Ising machine physics, even though these methods are essential for achieving high accuracy. In this study, we demonstrate an efficient approach to train Ising machines in a supervised… Show more

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Cited by 5 publications
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