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Showing 1–6 of 6 results
Advanced filters: Author: Kwang-Ting Cheng Clear advanced filters
  • Device-to-device and cycle-to-cycle variations and leakage in memristor crossbar arrays can be alleviated with a memory cell design that uses the ratio of the resistances of two memristors to encode information, rather than the absolute resistance of a single memristor.

    • Miguel Angel Lastras-Montaño
    • Kwang-Ting Cheng
    Research
    Nature Electronics
    Volume: 1, P: 466-472
  • Co-designing hardware platforms and neural network software can help improve the computational efficiency and training affordability of deep learning implementations. A new approach designed for graph learning with echo state neural networks makes use of in-memory computing with resistive memory and shows up to a 35 times improvement in the energy efficiency and 99% reduction in training cost for graph classification on large datasets.

    • Shaocong Wang
    • Yi Li
    • Ming Liu
    ResearchOpen Access
    Nature Machine Intelligence
    Volume: 5, P: 104-113
  • Carbon nanotube thin-film transistor is promising for solution-processed, large-scale flexible electronics, but the device yields remain poor to date. Lei et al. show low-voltage flexible digital and analog circuits based on high-purity and high-yield separation of semiconducting carbon nanotubes.

    • Ting Lei
    • Lei-Lai Shao
    • Zhenan Bao
    ResearchOpen Access
    Nature Communications
    Volume: 10, P: 1-10