Single neuron models are fundamental for computational modeling of the brain's neuronal networks, and understanding how ion channel dynamics mediate neural function. A challenge in defining such models is determining biophysically realistic channel distributions. Here, we present an efficient, highly parallel evolutionary algorithm for developing such models, named NeuroGPU-EA. NeuroGPU-EA uses CPUs and GPUs concurrently to simulate and evaluate neuron membrane potentials with respect to multiple stimuli. We demonstrate a logarithmic cost for scaling the stimuli used in the fitting procedure. NeuroGPU-EA outperforms the typically used CPU based evolutionary algorithm by a factor of 10 on a series of scaling benchmarks. We report observed pe...
Simulation speed matters for neuroscientific research: this includes not only how quickly the simula...
In realistic neuronal modeling, once the ionic channel complement has been defined, the maximum ioni...
The simulation of large-scale biological spiking neural networks (SNN) is computationally onerous. I...
Compartmental modeling is a widely used tool in neurophysiology but the detail and scope of such mod...
Detailed brain modeling has been presenting significant challenges to the world of high-performance ...
Simulating biological neural networks is an important task for computational neuroscientists attempt...
Large-scale simulations of parts of the brain using detailed neuronal models to improve our understa...
As the desire for biologically realistic spiking neural networks (SNNs) increases, tuning the enormo...
Current brain simulators do no scale linearly to realistic problem sizes (e.g. >100,000 neurons),...
Efficient simulation of large-scale spiking neuronal networks is important for neuroscientific resea...
Spiking models can accurately predict the spike trains produced by cortical neurons in response to s...
Over the past decade there has been a growing interest in the development of parallel hardware syste...
© 2011 Jad Abi-SamraThe study of the structure and functionality of the brain has been ardently inve...
Realistic modeling of neurons are quite successful in complementing traditional experimental techniq...
Simulating spiking neural networks is of great interest to scientists wanting to model the functioni...
Simulation speed matters for neuroscientific research: this includes not only how quickly the simula...
In realistic neuronal modeling, once the ionic channel complement has been defined, the maximum ioni...
The simulation of large-scale biological spiking neural networks (SNN) is computationally onerous. I...
Compartmental modeling is a widely used tool in neurophysiology but the detail and scope of such mod...
Detailed brain modeling has been presenting significant challenges to the world of high-performance ...
Simulating biological neural networks is an important task for computational neuroscientists attempt...
Large-scale simulations of parts of the brain using detailed neuronal models to improve our understa...
As the desire for biologically realistic spiking neural networks (SNNs) increases, tuning the enormo...
Current brain simulators do no scale linearly to realistic problem sizes (e.g. >100,000 neurons),...
Efficient simulation of large-scale spiking neuronal networks is important for neuroscientific resea...
Spiking models can accurately predict the spike trains produced by cortical neurons in response to s...
Over the past decade there has been a growing interest in the development of parallel hardware syste...
© 2011 Jad Abi-SamraThe study of the structure and functionality of the brain has been ardently inve...
Realistic modeling of neurons are quite successful in complementing traditional experimental techniq...
Simulating spiking neural networks is of great interest to scientists wanting to model the functioni...
Simulation speed matters for neuroscientific research: this includes not only how quickly the simula...
In realistic neuronal modeling, once the ionic channel complement has been defined, the maximum ioni...
The simulation of large-scale biological spiking neural networks (SNN) is computationally onerous. I...