We have performed different simulation experiments in relation to hardware neural networks (NN) to analyze the role of the number of synapses for different NN architectures in the network accuracy, considering different datasets. A technology that stands upon 4-kbit 1T1R ReRAM arrays, where resistive switching devices based on HfO2 dielectrics are employed, is taken as a reference. In our study, fully dense (FdNN) and convolutional neural networks (CNN) were considered, where the NN size in terms of the number of synapses and of hidden layer neurons were varied. CNNs work better when the number of synapses to be used is limited. If quantized synaptic weights are included, we observed that NN accuracy decreases significantly as the number of...
Low-precision neural network models are crucial for reducing the memory footprint and computational...
Artificial neural networks (ANN) are well known for performing Recognition, Data mining and Synthesi...
On metrics of density and power efficiency, neuromorphic technologies have the potential to surpass ...
The authors acknowledge financial support by the German Research Foundation (DFG) under Project 434...
Quantization of synaptic weights using emerging non-volatile memory devices has emerged as a promis...
Recently, in-memory analog computing through memristive crossbar arrays attracted a lot of attention...
Data-intensive computing operations, such as training neural networks, are essential but energy-inte...
Analog switching memristive devices can be used as part of the acceleration block of Neural Network...
The increasing scale of neural networks and their growing application space have produced demand for...
<p>In recent years, neuromorphic architectures have been an increasingly effective tool used to solv...
This paper discusses some of the limitations of hardware implementations of neural networks. The aut...
Nowadays, many real world problems need fast processing neural networks to come up with a solution i...
What makes a neural microcircuit computationally powerful? Or more precisely, which measurable quant...
Neuromorphic systems are gaining signi cant importance in an era where CMOS digital techniques are r...
A synapse device array based on the gated Schottky diodes (GSDs) is fabricated. This GSD operates in...
Low-precision neural network models are crucial for reducing the memory footprint and computational...
Artificial neural networks (ANN) are well known for performing Recognition, Data mining and Synthesi...
On metrics of density and power efficiency, neuromorphic technologies have the potential to surpass ...
The authors acknowledge financial support by the German Research Foundation (DFG) under Project 434...
Quantization of synaptic weights using emerging non-volatile memory devices has emerged as a promis...
Recently, in-memory analog computing through memristive crossbar arrays attracted a lot of attention...
Data-intensive computing operations, such as training neural networks, are essential but energy-inte...
Analog switching memristive devices can be used as part of the acceleration block of Neural Network...
The increasing scale of neural networks and their growing application space have produced demand for...
<p>In recent years, neuromorphic architectures have been an increasingly effective tool used to solv...
This paper discusses some of the limitations of hardware implementations of neural networks. The aut...
Nowadays, many real world problems need fast processing neural networks to come up with a solution i...
What makes a neural microcircuit computationally powerful? Or more precisely, which measurable quant...
Neuromorphic systems are gaining signi cant importance in an era where CMOS digital techniques are r...
A synapse device array based on the gated Schottky diodes (GSDs) is fabricated. This GSD operates in...
Low-precision neural network models are crucial for reducing the memory footprint and computational...
Artificial neural networks (ANN) are well known for performing Recognition, Data mining and Synthesi...
On metrics of density and power efficiency, neuromorphic technologies have the potential to surpass ...