The digital neuromorphic hardware SpiNNaker has been developed with the aim of enabling large-scale neural network simulations in real time and with low power consumption. Real-time performance is achieved with 1 ms integration time steps, and thus applies to neural networks for which faster time scales of the dynamics can be neglected. By slowing down the simulation, shorter integration time steps and hence faster time scales, which are often biologically relevant, can be incorporated. We here describe the first full-scale simulations of a cortical microcircuit with biological time scales on SpiNNaker. Since about half the synapses onto the neurons arise within the microcircuit, larger cortical circuits have only moderately more synapses p...
Abstract — SpiNNaker is a massively-parallel neuromorphic computing architecture designed to model v...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
Animal brains still outperform even the most performant machines with significantly lower speed. Non...
SpiNNaker is a digital neuromorphic hardware designed to reduce simulation time and power consumptio...
Computer simulation of neural matter is a promising methodology for understanding the function of th...
While the adult human brain has approximately 8.8 × 1010 neurons, this number is dwarfed by its 1 × ...
The cortical microcircuit is a building block of the mammalian brain. In a model of the network belo...
The modelling of large systems of spiking neurons is computationally very demanding in terms of proc...
It is believed that neuromorphic hardware will accelerate neuroscience research and enable the next ...
Full scale simulations of neuronal network models of the brain are challenging due to the high densi...
This work presents the first simulation of a large-scale, bio-physically constrained cerebellum mode...
This work presents the first simulation of a large-scale, bio-physically constrained cerebellum mode...
SpiNNaker (Spiking Neural Network Architecture) is a specialized computing engine, intended for real...
NEST (http://www.nest-initiative.org) is a spiking neural network simulator used in computational ne...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
Abstract — SpiNNaker is a massively-parallel neuromorphic computing architecture designed to model v...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
Animal brains still outperform even the most performant machines with significantly lower speed. Non...
SpiNNaker is a digital neuromorphic hardware designed to reduce simulation time and power consumptio...
Computer simulation of neural matter is a promising methodology for understanding the function of th...
While the adult human brain has approximately 8.8 × 1010 neurons, this number is dwarfed by its 1 × ...
The cortical microcircuit is a building block of the mammalian brain. In a model of the network belo...
The modelling of large systems of spiking neurons is computationally very demanding in terms of proc...
It is believed that neuromorphic hardware will accelerate neuroscience research and enable the next ...
Full scale simulations of neuronal network models of the brain are challenging due to the high densi...
This work presents the first simulation of a large-scale, bio-physically constrained cerebellum mode...
This work presents the first simulation of a large-scale, bio-physically constrained cerebellum mode...
SpiNNaker (Spiking Neural Network Architecture) is a specialized computing engine, intended for real...
NEST (http://www.nest-initiative.org) is a spiking neural network simulator used in computational ne...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
Abstract — SpiNNaker is a massively-parallel neuromorphic computing architecture designed to model v...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
Animal brains still outperform even the most performant machines with significantly lower speed. Non...