The current work reports an efficient deep neural network (DNN) accelerator where synaptic weight elements are controlled by ferroelectric domain dynamics. An integrated device-to-algorithm framework for benchmarking novel synaptic devices is used. In P(VDF-TrFE) based ferroelectric tunnel junctions, analog conductance states are measured using a custom pulsing protocol and associated custom circuits and array architectures for DNN training is simulated. Our results show precise control of polarization switching dynamics in multi-domain, polycrystalline ferroelectric thin films can produce considerable weight update linearity in metal-ferroelectric-semiconductor (MFS) tunnel junctions. Ultrafast switching and low junction current in these d...
Neuromorphic computing has been proposed to accelerate the computation for deep neural networks (DNN...
Ferroelectric tunnel junctions (FTJs) have been regarded as one of the most promising candidates for...
Neuromorphic computing architectures demand the development of analog, non-volatile memory component...
Online training of deep neural networks (DNN) can be significantly accelerated by performing in situ...
Online training of deep neural networks (DNN) can be significantly accelerated by performing in situ...
Parallel information processing, energy efficiency and unsupervised learning make the human brain a ...
Novel Deep Neural Network (DNN) accelerators based on crossbar arrays of non-volatile memories (NVMs...
Classical computer architectures are optimized to process pre-formatted information in a determinist...
We propose a novel synaptic design of more efficient neuromorphic edge-computing with substantially ...
Artificial synapses can boost neuromorphic computing to overcome the inherent limitations of von Neu...
In the brain, learning is achieved through the ability of synapses to reconfigure the strength by wh...
Energy efficiency, parallel information processing, and unsupervised learning make the human brain a...
In the brain, learning is achieved through the ability of synapses to reconfigure the strength by wh...
Energy efficiency, parallel information processing, and unsupervised learning make the human brain a...
Energy efficiency, parallel information processing, and unsupervised learning make the human brain a...
Neuromorphic computing has been proposed to accelerate the computation for deep neural networks (DNN...
Ferroelectric tunnel junctions (FTJs) have been regarded as one of the most promising candidates for...
Neuromorphic computing architectures demand the development of analog, non-volatile memory component...
Online training of deep neural networks (DNN) can be significantly accelerated by performing in situ...
Online training of deep neural networks (DNN) can be significantly accelerated by performing in situ...
Parallel information processing, energy efficiency and unsupervised learning make the human brain a ...
Novel Deep Neural Network (DNN) accelerators based on crossbar arrays of non-volatile memories (NVMs...
Classical computer architectures are optimized to process pre-formatted information in a determinist...
We propose a novel synaptic design of more efficient neuromorphic edge-computing with substantially ...
Artificial synapses can boost neuromorphic computing to overcome the inherent limitations of von Neu...
In the brain, learning is achieved through the ability of synapses to reconfigure the strength by wh...
Energy efficiency, parallel information processing, and unsupervised learning make the human brain a...
In the brain, learning is achieved through the ability of synapses to reconfigure the strength by wh...
Energy efficiency, parallel information processing, and unsupervised learning make the human brain a...
Energy efficiency, parallel information processing, and unsupervised learning make the human brain a...
Neuromorphic computing has been proposed to accelerate the computation for deep neural networks (DNN...
Ferroelectric tunnel junctions (FTJs) have been regarded as one of the most promising candidates for...
Neuromorphic computing architectures demand the development of analog, non-volatile memory component...