Spiking neural networks, the most realistic artificial representation of biological nervous systems, are promising due to their inherent local training rules that enable low-overhead online learning, and energy-efficient information encoding. Their downside is more demanding functionality of the artificial synapses, notably including spike-timing-dependent plasticity, which makes their compact efficient hardware implementation challenging with conventional device technologies. Recent work showed that memristors are excellent candidates for artificial synapses, although reports of even simple neuromorphic systems are still very rare. In this study, we experimentally demonstrate coincidence detection using a spiking neural network, implemente...
International audienceSpiking neural networks (SNN) are biologically plausible networks. Compared to...
Hardware implementations of spiking neural networks offer promising solutions for computational task...
Memristors have emerged as promising, area-efficient, nano-scale devices for implementing models of ...
Spiking neural networks, the most realistic artificial representation of biological nervous systems,...
International audienceSpiking neural networks, the most realistic artificial representation of biolo...
Biologically plausible neuromorphic computing systems are attracting considerable attention due to t...
Brain-inspired computation can revolutionize information technology by introducing machines capable ...
In this paper we review several ways of realizing asynchronous Spike-Timing Dependent Plasticity (S...
Synaptic plasticity has been widely assumed to be the mechanism behind memory and learning, in which...
International audienceNeuromorphic computing is an efficient way to handle complex tasks such as ima...
Resistance switching, or Resistive RAM (RRAM) devices show considerable potential for application in...
International audienceIn this paper we review several ways of realizing asynchronous Spike-Timing-De...
Adaptation of synaptic strength is central to memory and learning in biological systems, enabling im...
International audienceSpiking neural networks (SNN) are biologically plausible networks. Compared to...
Hardware implementations of spiking neural networks offer promising solutions for computational task...
Memristors have emerged as promising, area-efficient, nano-scale devices for implementing models of ...
Spiking neural networks, the most realistic artificial representation of biological nervous systems,...
International audienceSpiking neural networks, the most realistic artificial representation of biolo...
Biologically plausible neuromorphic computing systems are attracting considerable attention due to t...
Brain-inspired computation can revolutionize information technology by introducing machines capable ...
In this paper we review several ways of realizing asynchronous Spike-Timing Dependent Plasticity (S...
Synaptic plasticity has been widely assumed to be the mechanism behind memory and learning, in which...
International audienceNeuromorphic computing is an efficient way to handle complex tasks such as ima...
Resistance switching, or Resistive RAM (RRAM) devices show considerable potential for application in...
International audienceIn this paper we review several ways of realizing asynchronous Spike-Timing-De...
Adaptation of synaptic strength is central to memory and learning in biological systems, enabling im...
International audienceSpiking neural networks (SNN) are biologically plausible networks. Compared to...
Hardware implementations of spiking neural networks offer promising solutions for computational task...
Memristors have emerged as promising, area-efficient, nano-scale devices for implementing models of ...