Simulation is a third pillar next to experiment and theory in the study of complex dynamic systems such as biological neural networks. Contemporary brain-scale networks correspond to directed graphs of a few million nodes, each with an in-degree and out-degree of several thousands of edges, where nodes and edges correspond to the fundamental biological units, neurons and synapses, respectively. When considering a random graph, each node's edges are distributed across thousands of parallel processes. The activity in neuronal networks is also sparse. Each neuron occasionally transmits a brief signal, called spike, via its outgoing synapses to the corresponding target neurons. This spatial and temporal sparsity represents an inherent bottlenec...
Simulation speed matters for neuroscientific research: this includes not only how fast the simulated...
Today’s extremely scalable simulation technology for spiking neuronal networks enables the represent...
Modern asynchronous runtime systems allow the re-thinking of large-scale scientific applications. Wi...
Simulation is a third pillar next to experiment and theory in the study of complex dynamic systems s...
Simulation is a third pillar next to experiment and theory in the study of complex dynamic systems s...
This repository contains the source code data files to run the benchmarks plotting routines ...
Generic simulation code for spiking neuronal networks spends the major part of the time in the phase...
Generic simulation code for spiking neuronal networks spends the major part of the time in the phase...
Big science initiatives are trying to reconstruct and model the brain by attempting to simulate brai...
The development of high-performance simulation software is crucial for studying the brain connectome...
Recent advances in the development of data structures to represent spiking neuron network models ena...
State-of-the-art software tools for neuronal network simulations scale to the largest computing syst...
Accelerated simulations of biological neural networks are in demand to discover the principals of bi...
Brain-scale networks exhibit a breathtaking heterogeneity in the dynamical properties and parameters...
The simulation of brain areas (e.g. the visual cortex), comprising huge networks of integrate & ...
Simulation speed matters for neuroscientific research: this includes not only how fast the simulated...
Today’s extremely scalable simulation technology for spiking neuronal networks enables the represent...
Modern asynchronous runtime systems allow the re-thinking of large-scale scientific applications. Wi...
Simulation is a third pillar next to experiment and theory in the study of complex dynamic systems s...
Simulation is a third pillar next to experiment and theory in the study of complex dynamic systems s...
This repository contains the source code data files to run the benchmarks plotting routines ...
Generic simulation code for spiking neuronal networks spends the major part of the time in the phase...
Generic simulation code for spiking neuronal networks spends the major part of the time in the phase...
Big science initiatives are trying to reconstruct and model the brain by attempting to simulate brai...
The development of high-performance simulation software is crucial for studying the brain connectome...
Recent advances in the development of data structures to represent spiking neuron network models ena...
State-of-the-art software tools for neuronal network simulations scale to the largest computing syst...
Accelerated simulations of biological neural networks are in demand to discover the principals of bi...
Brain-scale networks exhibit a breathtaking heterogeneity in the dynamical properties and parameters...
The simulation of brain areas (e.g. the visual cortex), comprising huge networks of integrate & ...
Simulation speed matters for neuroscientific research: this includes not only how fast the simulated...
Today’s extremely scalable simulation technology for spiking neuronal networks enables the represent...
Modern asynchronous runtime systems allow the re-thinking of large-scale scientific applications. Wi...