2024
DOI: 10.1073/pnas.2416294121
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A self-learning magnetic Hopfield neural network with intrinsic gradient descent adaption

Chang Niu,
Huanyu Zhang,
Chuanlong Xu
et al.

Abstract: Physical neural networks (PNN) using physical materials and devices to mimic synapses and neurons offer an energy-efficient way to implement artificial neural networks. Yet, training PNN is difficult and heavily relies on external computing resources. An emerging concept to solve this issue is called physical self-learning that uses intrinsic physical parameters as trainable weights. Under external inputs (i.e., training data), training is achieved by the natural evolution of physical parameters that intrinsic… Show more

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