The increasing complexity of network models poses a growing computational burden. At the same time, computational neuroscientists are finding it easier to access parallel hardware, such as multiprocessor personal computers, workstation clusters, and massively parallel supercomputers. The practical question is how to move a working network model from a single processor to parallel hardware. Here we show how to make this transition for models implemented with NEURON, in such a way that the final result will run and produce numerically identical results on either serial or parallel hardware. This allows users to develop and debug models on readily available local resources, then run their code without modification on a parallel supercompute...
As computational neuroscience matures, many simulation environments are available that are useful fo...
Conventional artificial neural networks have traditionally faced inherent problems with efficient pa...
As neuronal simulations approach larger scales with increasing levels of detail, the neurosimulator ...
Hines and Carnevale Translating NEURON network models to parallel hardware The increasing complexity...
Recent advances in the development of data structures to represent spiking neuron network models ena...
The NEURON simulation environment has been extended to support parallel network simulations. Each pr...
Biological neuronal networks models can be investigated with the NEST simulator (Gewaltig and Diesma...
Parallelism and distribution have been considered the key features of neural processing. The term pa...
Simulation speed matters for neuroscientific research: this includes not only how quickly the simula...
Over the last couple of years, supercomputers such as the Blue Gene/Q system JUQUEEN in Jülich and t...
The NEURON simulator has been developed over the past three decades and is widely used by neuroscien...
Simulations of the electrical activity of networks of morphologically-detailed neuron models allow f...
Simulation speed matters for neuroscientific research: this includes not only how fast the simulated...
Simulations of electrical activity of networks of morphologically detailed neuron models allow for a...
We present a parallel processing network, consisting of nine microcomputers, for neuron-network simu...
As computational neuroscience matures, many simulation environments are available that are useful fo...
Conventional artificial neural networks have traditionally faced inherent problems with efficient pa...
As neuronal simulations approach larger scales with increasing levels of detail, the neurosimulator ...
Hines and Carnevale Translating NEURON network models to parallel hardware The increasing complexity...
Recent advances in the development of data structures to represent spiking neuron network models ena...
The NEURON simulation environment has been extended to support parallel network simulations. Each pr...
Biological neuronal networks models can be investigated with the NEST simulator (Gewaltig and Diesma...
Parallelism and distribution have been considered the key features of neural processing. The term pa...
Simulation speed matters for neuroscientific research: this includes not only how quickly the simula...
Over the last couple of years, supercomputers such as the Blue Gene/Q system JUQUEEN in Jülich and t...
The NEURON simulator has been developed over the past three decades and is widely used by neuroscien...
Simulations of the electrical activity of networks of morphologically-detailed neuron models allow f...
Simulation speed matters for neuroscientific research: this includes not only how fast the simulated...
Simulations of electrical activity of networks of morphologically detailed neuron models allow for a...
We present a parallel processing network, consisting of nine microcomputers, for neuron-network simu...
As computational neuroscience matures, many simulation environments are available that are useful fo...
Conventional artificial neural networks have traditionally faced inherent problems with efficient pa...
As neuronal simulations approach larger scales with increasing levels of detail, the neurosimulator ...