Resistance switching, or Resistive RAM (RRAM) devices show considerable potential for application in hardware spiking neural networks (neuro-inspired computing) by mimicking some of the behavior of biological synapses, and hence enabling non-von Neumann computer architectures. Spike-timing dependent plasticity (STDP) is one such behavior, and one example of several classes of plasticity that are being examined with the aim of finding suitable algorithms for application in many computing tasks such as coincidence detection, classification and image recognition. In previous work we have demonstrated that the neuromorphic capabilities of silicon-rich silicon oxide (SiOx) resistance switching devices extend beyond plasticity to include threshol...
The ability to carry out signal processing, classification, recognition, and computation in artifici...
Biological neural networks outperform current computer technology in terms of power consumption and ...
Biologically plausible neuromorphic computing systems are attracting considerable attention due to t...
The human brain can perform advanced computing tasks, such as learning, recognition, and cognition, ...
Mimicking the cognitive functions of the brain in hardware is a primary challenge for several fields...
Neural networks with resistive-switching memory (RRAM) synapses can mimic learning and recognition i...
Spiking neural networks, the most realistic artificial representation of biological nervous systems,...
International audienceSpiking neural networks, the most realistic artificial representation of biolo...
Abstract A binary spike-time-dependent plasticity (STDP) protocol based on one resistive-switching r...
We report the use of metal oxide resistive switching memory (RRAM) as synaptic devices for a neuromo...
International audienceSpiking neural networks (SNN) are biologically plausible networks. Compared to...
Hardware processors for neuromorphic computing are gaining significant interest as they offer the po...
The ability to carry out signal processing, classification, recognition, and computation in artifici...
Biological neural networks outperform current computer technology in terms of power consumption and ...
Biologically plausible neuromorphic computing systems are attracting considerable attention due to t...
The human brain can perform advanced computing tasks, such as learning, recognition, and cognition, ...
Mimicking the cognitive functions of the brain in hardware is a primary challenge for several fields...
Neural networks with resistive-switching memory (RRAM) synapses can mimic learning and recognition i...
Spiking neural networks, the most realistic artificial representation of biological nervous systems,...
International audienceSpiking neural networks, the most realistic artificial representation of biolo...
Abstract A binary spike-time-dependent plasticity (STDP) protocol based on one resistive-switching r...
We report the use of metal oxide resistive switching memory (RRAM) as synaptic devices for a neuromo...
International audienceSpiking neural networks (SNN) are biologically plausible networks. Compared to...
Hardware processors for neuromorphic computing are gaining significant interest as they offer the po...
The ability to carry out signal processing, classification, recognition, and computation in artifici...
Biological neural networks outperform current computer technology in terms of power consumption and ...
Biologically plausible neuromorphic computing systems are attracting considerable attention due to t...