LEARNING
Cerebellum-inspired memtransistors enable emergent differentiation for hardware-efficient novelty detection.
Kang MA, Brown ST, Jayasinghe N, Holla MR, Pham TT, Zeng TT, Wu R, Trdinich ZJ, Zhuang X, Dravid VP, Raman IM, Trivedi AR, Sangwan VK, Hersam MC
- Year
- 2026
- Journal
- Nature communications
Keywords
memtransistornovelty detectionneuromorphiccerebellumhardware efficiency
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