Modern asynchronous runtime systems allow the re-thinking of large-scale scientific applications. With the example of a simulator of morphologically detailed neural networks, we show how detaching from the commonly used bulk-synchronous parallel (BSP) execution allows for the increase of prefetching capabilities, better cache locality, and a overlap of computation and communication, consequently leading to a lower time to solution. Our strategy removes the operation of collective synchronization of ODEs' coupling information, and takes advantage of the pairwise time dependency between equations, leading to a fully-asynchronous exhaustive yet not speculative stepping model. Combined with fully linear data structures, communication reduce at ...
The internal structure of interactions in a hidden network can be inferred using a maximum likelihoo...
Neuron tree topology equations can be split into two subtrees and solved on different processors wit...
Over the last few years tremendous progress has been made in neuroscience by employing simulation to...
Simulations of the electrical activity of networks of morphologically-detailed neuron models allow f...
Simulations of electrical activity of networks of morphologically detailed neuron models allow for a...
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...
Recent advances in the development of data structures to represent spiking neuron network models ena...
With increasing data and model complexities, the time required to train neural networks has become p...
With increasing data and model complexities, the time required to train neural networks has become p...
The NEURON simulation environment has been extended to support parallel network simulations. Each pr...
In this paper, implementation possibilities of a synchronous binary neural model for solving optimiz...
Neuroscience is witnessing increasing knowledge about the anatomy and electrophysiological propertie...
Big science initiatives are trying to reconstruct and model the brain by attempting to simulate brai...
Generic simulation code for spiking neuronal networks spends the major part of the time in the phase...
The internal structure of interactions in a hidden network can be inferred using a maximum likelihoo...
Neuron tree topology equations can be split into two subtrees and solved on different processors wit...
Over the last few years tremendous progress has been made in neuroscience by employing simulation to...
Simulations of the electrical activity of networks of morphologically-detailed neuron models allow f...
Simulations of electrical activity of networks of morphologically detailed neuron models allow for a...
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...
Recent advances in the development of data structures to represent spiking neuron network models ena...
With increasing data and model complexities, the time required to train neural networks has become p...
With increasing data and model complexities, the time required to train neural networks has become p...
The NEURON simulation environment has been extended to support parallel network simulations. Each pr...
In this paper, implementation possibilities of a synchronous binary neural model for solving optimiz...
Neuroscience is witnessing increasing knowledge about the anatomy and electrophysiological propertie...
Big science initiatives are trying to reconstruct and model the brain by attempting to simulate brai...
Generic simulation code for spiking neuronal networks spends the major part of the time in the phase...
The internal structure of interactions in a hidden network can be inferred using a maximum likelihoo...
Neuron tree topology equations can be split into two subtrees and solved on different processors wit...
Over the last few years tremendous progress has been made in neuroscience by employing simulation to...