Memristive neural network for on-line learning and tracking with brain-inspired spike timing dependent plasticity
Giacomo Pedretti(Politecnico di Milano), Daniele Ielmini(Politecnico di Milano), Alessandro S. Spinelli(Politecnico di Milano), Stefano Ambrogio(IBM (United States)), Valerio Milo, Roberto Carboni, Nirmal Ramaswamy(Micron (United States)), Alessandro Calderoni(Micron (United States)), S. Bianchi(Politecnico di Milano)
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