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Showing 1–4 of 4 results
Advanced filters: Author: Hans-Christian Ruiz Euler Clear advanced filters
  • Training deep neural networks by backpropagation consumes significant energy in digital hardware. Boon and Cassola et al. show that homodyne detection can be used to extract gradients directly in a physical device, enabling efficient gradient descent and offering a scalable route to material-based learning.

    • Marcus N. Boon
    • Lorenzo Cassola
    • Wilfred G. van der Wiel
    ResearchOpen Access
    Nature Communications
    Volume: 16, P: 1-10
  • Function implementation and optimization in nanoscale and quantum-electronic devices become increasingly challenging with the growing complexity of the devices. Training a deep neural network with the physical device response and searching for the functionality in the digital device can ease this challenge.

    • Hans-Christian Ruiz Euler
    • Marcus N. Boon
    • Wilfred G. van der Wiel
    Research
    Nature Nanotechnology
    Volume: 15, P: 992-998
  • The nonlinearity of hopping conduction in a disordered network of boron dopant atoms in silicon is used to perform nonlinear classification and feature extraction.

    • Tao Chen
    • Jeroen van Gelder
    • Wilfred G. van der Wiel
    Research
    Nature
    Volume: 577, P: 341-345