Engineering and TechnologyNature Communications
Nanoscale neural network using non-linear spin-wave interference
Á. Papp, W. Porod, et al.
This groundbreaking research by Ádám Papp, Wolfgang Porod, and Gyorgy Csaba presents a novel neural network hardware that revolutionizes neuromorphic computing through spin-wave propagation and interference. By leveraging magnetic-field patterns for signal routing and nonlinear activation, this work opens avenues for compact, low-power neural networks operating entirely in the spin-wave domain.
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