<div><p>Advancing the size and complexity of neural network models leads to an ever increasing demand for computational resources for their simulation. Neuromorphic devices offer a number of advantages over conventional computing architectures, such as high emulation speed or low power consumption, but this usually comes at the price of reduced configurability and precision. In this article, we investigate the consequences of several such factors that are common to neuromorphic devices, more specifically limited hardware resources, limited parameter configurability and parameter variations due to fixed-pattern noise and trial-to-trial variability. Our final aim is to provide an array of methods for coping with such inevitable distortion mec...
Neuromorphic hardware is based on emulating the natural biological structure of the brain. Since its...
In the biological nervous system, large neuronal populations work collaboratively to encode sensory ...
Sheik S, Stefanini F, Neftci E, Chicca E, Indiveri G. Systematic configuration and automatic tuning ...
Advancing the size and complexity of neural network models leads to an ever increasing demand for co...
Mixed-signal accelerated neuromorphic hardware is a class of devices that implements physical models...
Recent developments in neuromorphic hardware engineering make mixed-signal VLSI neural network model...
Neuromorphic hardware is based on emulating the natural biological structure of the brain. Since its...
In this article, we present a methodological framework that meets novel requirements emerging from u...
Simulations are a powerful tool to explore the design space of hardware systems, offering the flexib...
In this study, we present a highly configurable neuromorphic computing substrate and use it for emul...
Nowadays, understanding the topology of biological neural networks and sampling their activity is po...
Neuromorphic processing systems implementing spiking neural networks with mixed signal analog/digita...
Neuromorphic computing is gaining momentum as an alternative hardware platform for large-scale neura...
Accelerated simulations of biological neural networks are in demand to discover the principals of bi...
For that reason, designers of neuromorphic hardware often include auxiliary parameters which allow t...
Neuromorphic hardware is based on emulating the natural biological structure of the brain. Since its...
In the biological nervous system, large neuronal populations work collaboratively to encode sensory ...
Sheik S, Stefanini F, Neftci E, Chicca E, Indiveri G. Systematic configuration and automatic tuning ...
Advancing the size and complexity of neural network models leads to an ever increasing demand for co...
Mixed-signal accelerated neuromorphic hardware is a class of devices that implements physical models...
Recent developments in neuromorphic hardware engineering make mixed-signal VLSI neural network model...
Neuromorphic hardware is based on emulating the natural biological structure of the brain. Since its...
In this article, we present a methodological framework that meets novel requirements emerging from u...
Simulations are a powerful tool to explore the design space of hardware systems, offering the flexib...
In this study, we present a highly configurable neuromorphic computing substrate and use it for emul...
Nowadays, understanding the topology of biological neural networks and sampling their activity is po...
Neuromorphic processing systems implementing spiking neural networks with mixed signal analog/digita...
Neuromorphic computing is gaining momentum as an alternative hardware platform for large-scale neura...
Accelerated simulations of biological neural networks are in demand to discover the principals of bi...
For that reason, designers of neuromorphic hardware often include auxiliary parameters which allow t...
Neuromorphic hardware is based on emulating the natural biological structure of the brain. Since its...
In the biological nervous system, large neuronal populations work collaboratively to encode sensory ...
Sheik S, Stefanini F, Neftci E, Chicca E, Indiveri G. Systematic configuration and automatic tuning ...