Nearly all neuronal information processing and interneuronal communication in the brain involves action potentials, or spikes, which drive the short-term synaptic dynamics of neurons, but also their long-term dynamics, via synaptic plasticity. In many brain structures, action potential activity is considered to be sparse. This sparseness of activity has been exploited to reduce the computational cost of large-scale network simulations, through the development of event-driven simulation schemes. However, existing event-driven simulations schemes use extremely simplified neuronal models. Here, we implement and evaluate critically an event-driven algorithm (ED-LUT) that uses precalculated look-up tables to characterize synaptic and neuronal dy...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
The simulation of large spiking neural networks (SNN) is still a very time consuming task. Therefore...
Nearly all neuronal information processing and interneuronal commu-nication in the brain involves ac...
Nearly all neuronal information processing and interneuronal communication in the brain involves act...
The simulation of spiking neural networks (SNNs), both for neuro-biological and application based si...
Abstract Neural modelling tools are increasingly employed to describe, explain, and predict the huma...
The simulation of spiking neural networks (SNNs) is known to be a very time-consuming task. This lim...
The simulation of spiking neural networks (SNNs) is known to be a very time-consuming task. This lim...
The simulation of spiking neural networks (SNNs) is known to be a very time-consuming task. This lim...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
We present a general event-driven algorithm for the efficient simulation of spiking neural networks....
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
We present a general event-driven algorithm for the efficient simulation of spiking neural networks....
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
The simulation of large spiking neural networks (SNN) is still a very time consuming task. Therefore...
Nearly all neuronal information processing and interneuronal commu-nication in the brain involves ac...
Nearly all neuronal information processing and interneuronal communication in the brain involves act...
The simulation of spiking neural networks (SNNs), both for neuro-biological and application based si...
Abstract Neural modelling tools are increasingly employed to describe, explain, and predict the huma...
The simulation of spiking neural networks (SNNs) is known to be a very time-consuming task. This lim...
The simulation of spiking neural networks (SNNs) is known to be a very time-consuming task. This lim...
The simulation of spiking neural networks (SNNs) is known to be a very time-consuming task. This lim...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
We present a general event-driven algorithm for the efficient simulation of spiking neural networks....
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
We present a general event-driven algorithm for the efficient simulation of spiking neural networks....
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
The transforming of incoming signals into action potentials by neurons is believed to be the basis f...
The simulation of large spiking neural networks (SNN) is still a very time consuming task. Therefore...