Online training of deep neural networks (DNN) can be significantly accelerated by performing in situ vector-matrix multiplication in a crossbar array of analog memories. However, training accuracies often suffer due to nonideal properties of synapses such as nonlinearity, asymmetry, limited bit precision, and dynamic weight update range within a constrained power budget. Herein, a fully scalable process is reported for digital and analog ferroelectric memory transistors with possibilities for both volatile and nonvolatile data retention and <4 V operation that would be suitable as programmable synaptic weight elements. Ferroelectric copolymer P(VDF-TrFE) gate insulator and 2D semiconductor MoS2 as the n-type semiconducting channel materi...
Neuromorphic computing is a computing architecture that mimics biological neural systems. Successful...
Energy efficiency, parallel information processing, and unsupervised learning make the human brain a...
Neuromorphic computing is a promising alternative to conventional computing systems as it could enab...
Online training of deep neural networks (DNN) can be significantly accelerated by performing in situ...
The current work reports an efficient deep neural network (DNN) accelerator where synaptic weight el...
Neuromorphic computing is a promising alternative to conventional computing systems as it could enab...
Parallel information processing, energy efficiency and unsupervised learning make the human brain a ...
An artificial synaptic element consisting of a three terminal Ferroelectric Field-Effect Transistor ...
Development of unconventional computing architectures, including neuromorphic computing, relies heav...
Development of unconventional computing architectures, including neuromorphic computing, relies heav...
Development of unconventional computing architectures, including neuromorphic computing, relies heav...
A ferroelectric thin‐film transistor (FeTFT)‐based synaptic device with an indium–gallium–zinc oxide...
Due to the voltage driven switching at low voltages combined with nonvolatility of the achieved pola...
Neuromorphic computing that mimics the biological brain has been demonstrated as a next-generation c...
Ferroelectric field-effect transistors (FeFETs) have been considered as promising electrically switc...
Neuromorphic computing is a computing architecture that mimics biological neural systems. Successful...
Energy efficiency, parallel information processing, and unsupervised learning make the human brain a...
Neuromorphic computing is a promising alternative to conventional computing systems as it could enab...
Online training of deep neural networks (DNN) can be significantly accelerated by performing in situ...
The current work reports an efficient deep neural network (DNN) accelerator where synaptic weight el...
Neuromorphic computing is a promising alternative to conventional computing systems as it could enab...
Parallel information processing, energy efficiency and unsupervised learning make the human brain a ...
An artificial synaptic element consisting of a three terminal Ferroelectric Field-Effect Transistor ...
Development of unconventional computing architectures, including neuromorphic computing, relies heav...
Development of unconventional computing architectures, including neuromorphic computing, relies heav...
Development of unconventional computing architectures, including neuromorphic computing, relies heav...
A ferroelectric thin‐film transistor (FeTFT)‐based synaptic device with an indium–gallium–zinc oxide...
Due to the voltage driven switching at low voltages combined with nonvolatility of the achieved pola...
Neuromorphic computing that mimics the biological brain has been demonstrated as a next-generation c...
Ferroelectric field-effect transistors (FeFETs) have been considered as promising electrically switc...
Neuromorphic computing is a computing architecture that mimics biological neural systems. Successful...
Energy efficiency, parallel information processing, and unsupervised learning make the human brain a...
Neuromorphic computing is a promising alternative to conventional computing systems as it could enab...