Brain-inspired, spike-based computation in electronic systems is being investigated for developing alternative, non-conventional computing technologies. The Neural Engineering Framework provides a method for programming these devices to implement computation. In this paper we apply this approach to perform arbitrary mathematical computation using a mixed signal analog/digital neuromorphic multi-neuron VLSI chip. This is achieved by means of a network of spiking neurons with multiple weighted connections. The synaptic weights are stored in a 4-bit on-chip programmable SRAM block. We propose a parallel event-based method for calibrating appropriately the synaptic weights and demonstrate the method by encoding and decoding arbitrary mathematic...
An increasing number of research groups are developing custom hybrid analog/digital very large scale...
Hardware implementations of spiking neural networks offer promising solutions for a wide set of task...
State-dependent computation is one of the main signatures of cognition. Recently, it has been shown ...
Indiveri G, Chicca E. A VLSI neuromorphic device for implementing spike-based neural networks. Prese...
Hardware implementations of spiking neural networks offer promising solutions for computational task...
Implementing compact, low-power artificial neural processing systems with real-time on-line learning...
Several analog and digital brain-inspired electronic systems have been recently proposed as dedicate...
Neuromorphic Very Large Scale Integration (VLSI) devices emulate the activation dynamics of biologic...
Neuromorphic hardware designs realize neural principles in electronics to provide high-performing, e...
Abstract—Hardware implementations of spiking neural net-works offer promising solutions for a wide s...
In this work we model and implement detailed and large- scale neural and synaptic dynamics in silico...
ABSTRACT | Several analog and digital brain-inspired elec-tronic systems have been recently proposed...
This work addresses neural and analog computation on reconfigurable mixed-signal platforms. Many eng...
Neftci E, Chicca E, Indiveri G, Douglas RJ. A systematic method for configuring VLSI networks of spi...
We describe a programmable multi-chip VLSI neuronal system that can be used for exploring spike-base...
An increasing number of research groups are developing custom hybrid analog/digital very large scale...
Hardware implementations of spiking neural networks offer promising solutions for a wide set of task...
State-dependent computation is one of the main signatures of cognition. Recently, it has been shown ...
Indiveri G, Chicca E. A VLSI neuromorphic device for implementing spike-based neural networks. Prese...
Hardware implementations of spiking neural networks offer promising solutions for computational task...
Implementing compact, low-power artificial neural processing systems with real-time on-line learning...
Several analog and digital brain-inspired electronic systems have been recently proposed as dedicate...
Neuromorphic Very Large Scale Integration (VLSI) devices emulate the activation dynamics of biologic...
Neuromorphic hardware designs realize neural principles in electronics to provide high-performing, e...
Abstract—Hardware implementations of spiking neural net-works offer promising solutions for a wide s...
In this work we model and implement detailed and large- scale neural and synaptic dynamics in silico...
ABSTRACT | Several analog and digital brain-inspired elec-tronic systems have been recently proposed...
This work addresses neural and analog computation on reconfigurable mixed-signal platforms. Many eng...
Neftci E, Chicca E, Indiveri G, Douglas RJ. A systematic method for configuring VLSI networks of spi...
We describe a programmable multi-chip VLSI neuronal system that can be used for exploring spike-base...
An increasing number of research groups are developing custom hybrid analog/digital very large scale...
Hardware implementations of spiking neural networks offer promising solutions for a wide set of task...
State-dependent computation is one of the main signatures of cognition. Recently, it has been shown ...