While the adult human brain has approximately 8.8 × 1010 neurons, this number is dwarfed by its 1 × 1015 synapses. From the point of view of neuromorphic engineering and neural simulation in general this makes the simulation of these synapses a particularly complex problem. SpiNNaker is a digital, neuromorphic architecture designed for simulating large-scale spiking neural networks at speeds close to biological real-time. Current solutions for simulating spiking neural networks on SpiNNaker are heavily inspired by work on distributed high-performance computing. However, while SpiNNaker shares many characteristics with such distributed systems, its component nodes have much more limited resources and, as the system lacks global synchronizati...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
In this paper we present a top-down methodology aimed at evaluating the scalability of Spiking Neura...
Abstract — Recent development of neuromorphic hardware offers great potential to speed up simulation...
SpiNNaker is a digital, neuromorphic architecture designed for simulating large-scale spiking neural...
SpiNNaker is a digital neuromorphic hardware designed to reduce simulation time and power consumptio...
The digital neuromorphic hardware SpiNNaker has been developed with the aim of enabling large-scale ...
International audienceMany of the precise biological mechanisms of synaptic plasticity remain elusiv...
Many of the precise biological mechanisms of synaptic plasticity remain elusive, but simulations of ...
International audienceMany of the precise biological mechanisms of synaptic plasticity remain elusiv...
International audienceMany of the precise biological mechanisms of synaptic plasticity remain elusiv...
Computer simulation of neural matter is a promising methodology for understanding the function of th...
Abstract — SpiNNaker is a massively-parallel neuromorphic computing architecture designed to model v...
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...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
In this paper we present a top-down methodology aimed at evaluating the scalability of Spiking Neura...
Abstract — Recent development of neuromorphic hardware offers great potential to speed up simulation...
SpiNNaker is a digital, neuromorphic architecture designed for simulating large-scale spiking neural...
SpiNNaker is a digital neuromorphic hardware designed to reduce simulation time and power consumptio...
The digital neuromorphic hardware SpiNNaker has been developed with the aim of enabling large-scale ...
International audienceMany of the precise biological mechanisms of synaptic plasticity remain elusiv...
Many of the precise biological mechanisms of synaptic plasticity remain elusive, but simulations of ...
International audienceMany of the precise biological mechanisms of synaptic plasticity remain elusiv...
International audienceMany of the precise biological mechanisms of synaptic plasticity remain elusiv...
Computer simulation of neural matter is a promising methodology for understanding the function of th...
Abstract — SpiNNaker is a massively-parallel neuromorphic computing architecture designed to model v...
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...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
In this paper we present a top-down methodology aimed at evaluating the scalability of Spiking Neura...
Abstract — Recent development of neuromorphic hardware offers great potential to speed up simulation...