Neuromorphic hardware systems provide new possibilities for the neuroscience modeling community. Due to the intrinsic parallelism of the micro-electronic emulation of neural computation, such models are highly scalable without a loss of speed. However, the communities of software simulator users and neuromorphic engineering in neuroscience are rather disjoint. We present a software concept that provides the possibility to establish such hardware devices as valuable modeling tools. It is based on the integration of the hardware interface into a simulator-independent language which allows for unified experiment descriptions that can be run on various simulation platforms without modification, implying experiment portability and a huge simplif...
We present PyCARL, a PyNN-based common Python programming interface for hardware-software cosimulati...
[Abstract] Background: The human brain is the most complex system in the known universe, it is there...
This paper demonstrates a framework that entails a bottom-up approach to accelerate research, develo...
In this article, we present a methodological framework that meets novel requirements emerging from u...
Modeling networks of spiking neurons is a common scientific method that helps to understand how biol...
Neuromorphic computing is gaining momentum as an alternative hardware platform for large-scale neura...
Accelerated mixed-signal neuromorphic hardware presents a promising approach to overcome run time an...
Abstract — Modeling neural tissue is an important tool to investigate biological neural networks. Un...
Neuromorphic computing is gaining momentum as an alternative hardware platform for large-scale neura...
Neuromorphic engineering attempts to understand the computational properties of neural processing sy...
Neuroscientists use computer simulations of neural systems in their efforts to understand processes...
Neuromorphic hardware offers an electronic substrate for the realization of asynchronous event-based...
Neuromorphic hardware is based on emulating the natural biological structure of the brain. Since its...
Neuromorphic hardware offers an electronic substrate for the realization of asynchronous event-based...
We present PyCARL, a PyNN-based common Python programming interface for hardware-software cosimulati...
We present PyCARL, a PyNN-based common Python programming interface for hardware-software cosimulati...
[Abstract] Background: The human brain is the most complex system in the known universe, it is there...
This paper demonstrates a framework that entails a bottom-up approach to accelerate research, develo...
In this article, we present a methodological framework that meets novel requirements emerging from u...
Modeling networks of spiking neurons is a common scientific method that helps to understand how biol...
Neuromorphic computing is gaining momentum as an alternative hardware platform for large-scale neura...
Accelerated mixed-signal neuromorphic hardware presents a promising approach to overcome run time an...
Abstract — Modeling neural tissue is an important tool to investigate biological neural networks. Un...
Neuromorphic computing is gaining momentum as an alternative hardware platform for large-scale neura...
Neuromorphic engineering attempts to understand the computational properties of neural processing sy...
Neuroscientists use computer simulations of neural systems in their efforts to understand processes...
Neuromorphic hardware offers an electronic substrate for the realization of asynchronous event-based...
Neuromorphic hardware is based on emulating the natural biological structure of the brain. Since its...
Neuromorphic hardware offers an electronic substrate for the realization of asynchronous event-based...
We present PyCARL, a PyNN-based common Python programming interface for hardware-software cosimulati...
We present PyCARL, a PyNN-based common Python programming interface for hardware-software cosimulati...
[Abstract] Background: The human brain is the most complex system in the known universe, it is there...
This paper demonstrates a framework that entails a bottom-up approach to accelerate research, develo...