Conventional artificial neural networks have traditionally faced inherent problems with efficient parallelization of neuron processing. Recent research has shown how artificial spiking neural networks can, with the introduction of biologically plausible synaptic conduction delays, be fully parallelized regardless of their network topology. This, in conjunction with the influx of fast, massively parallel desktop-level computing hardware leaves the field of efficient, large-scale spiking neural network simulations potentially open to even those with no access to supercomputers or large computing clusters. This thesis aims to show how such a parallelization is possible as well as present a network model that enables it. This model will then b...
Recently, there has been strong interest in large-scale simulations of biological spiking neural net...
Recently, there has been strong interest in large-scale simulations of biological spiking neural net...
Simulation speed matters for neuroscientific research: this includes not only how fast the simulated...
Conventional artificial neural networks have traditionally faced inherent problems with efficient pa...
Conventional artificial neural networks have traditionally faced inherent problems with efficient pa...
© 2011 Jad Abi-SamraThe study of the structure and functionality of the brain has been ardently inve...
e understanding of the structural and dynamic complexity of neural networks is greatly facilitated b...
e understanding of the structural and dynamic complexity of neural networks is greatly facilitated b...
The simulation of large-scale biological spiking neural networks (SNN) is computationally onerous. I...
The arrival of graphics processing (GPU) cards suitable for massively parallel computing promises a↵...
Substantial evidence indicates that the time structure of neuronal spike trains is relevant in neuro...
Spiking Neural Networks are a class of Artificial Neural Networks that closely mimic biological neur...
Spiking Neural Networks are a class of Artificial Neural Networks that closely mimic biological neur...
Spiking Neural Networks are a class of Artificial Neural Networks that closely mimic biological neur...
Spiking Neural Networks are a class of Artificial Neural Networks that closely mimic biological neur...
Recently, there has been strong interest in large-scale simulations of biological spiking neural net...
Recently, there has been strong interest in large-scale simulations of biological spiking neural net...
Simulation speed matters for neuroscientific research: this includes not only how fast the simulated...
Conventional artificial neural networks have traditionally faced inherent problems with efficient pa...
Conventional artificial neural networks have traditionally faced inherent problems with efficient pa...
© 2011 Jad Abi-SamraThe study of the structure and functionality of the brain has been ardently inve...
e understanding of the structural and dynamic complexity of neural networks is greatly facilitated b...
e understanding of the structural and dynamic complexity of neural networks is greatly facilitated b...
The simulation of large-scale biological spiking neural networks (SNN) is computationally onerous. I...
The arrival of graphics processing (GPU) cards suitable for massively parallel computing promises a↵...
Substantial evidence indicates that the time structure of neuronal spike trains is relevant in neuro...
Spiking Neural Networks are a class of Artificial Neural Networks that closely mimic biological neur...
Spiking Neural Networks are a class of Artificial Neural Networks that closely mimic biological neur...
Spiking Neural Networks are a class of Artificial Neural Networks that closely mimic biological neur...
Spiking Neural Networks are a class of Artificial Neural Networks that closely mimic biological neur...
Recently, there has been strong interest in large-scale simulations of biological spiking neural net...
Recently, there has been strong interest in large-scale simulations of biological spiking neural net...
Simulation speed matters for neuroscientific research: this includes not only how fast the simulated...