Related references
Note: Only part of the references are listed.Supervised Learning in All FeFET-Based Spiking Neural Network: Opportunities and Challenges
Sourav Dutta et al.
FRONTIERS IN NEUROSCIENCE (2020)
High-Uniformity Threshold Switching HfO2-Based Selectors with Patterned Ag Nanodots
Yujia Li et al.
ADVANCED SCIENCE (2020)
Programmable coupled oscillators for synchronized locomotion
Sourav Dutta et al.
NATURE COMMUNICATIONS (2019)
Performance Enhancement of Ag/HfO2 Metal Ion Threshold Switch Cross-Point Selectors
Benjamin Grisafe et al.
IEEE ELECTRON DEVICE LETTERS (2019)
Fundamental Understanding and Control of Device-to-Device Variation in Deeply Scaled Ferroelectric FETs
Kai Ni et al.
2019 SYMPOSIUM ON VLSI TECHNOLOGY (2019)
Benchmark of Ferroelectric Transistor-Based Hybrid Precision Synapse for Neural Network Accelerator
Yandong Luo et al.
IEEE JOURNAL ON EXPLORATORY SOLID-STATE COMPUTATIONAL DEVICES AND CIRCUITS (2019)
Equivalent-accuracy accelerated neural-network training using analogue memory
Stefano Ambrogio et al.
NATURE (2018)
Neuro-Inspired Computing With Emerging Nonvolatile Memory
Shimeng Yu
PROCEEDINGS OF THE IEEE (2018)
Write Disturb in Ferroelectric FETs and Its Implication for 1T-FeFET AND Memory Arrays
Kai Ni et al.
IEEE ELECTRON DEVICE LETTERS (2018)
A ferroelectric field effect transistor based synaptic weight cell
Matthew Jerry et al.
JOURNAL OF PHYSICS D-APPLIED PHYSICS (2018)
Anatomy of Ag/Hafnia-Based Selectors with 1010 Nonlinearity
Rivu Midya et al.
ADVANCED MATERIALS (2017)
Comprehensive scaling study of NbO2 insulator-metal-transition selector for cross point array application
Euijun Cha et al.
APPLIED PHYSICS LETTERS (2016)
Stochastic phase-change neurons
Tomas Tuma et al.
NATURE NANOTECHNOLOGY (2016)
Stochastic Synapses Enable Efficient Brain-Inspired Learning Machines
Emre O. Neftci et al.
FRONTIERS IN NEUROSCIENCE (2016)
Experimental Demonstration and Tolerancing of a Large-Scale Neural Network (165 000 Synapses) Using Phase-Change Memory as the Synaptic Weight Element
Geoffrey W. Burr et al.
IEEE TRANSACTIONS ON ELECTRON DEVICES (2015)
Fully parallel write/read in resistive synaptic array for accelerating on-chip learning
Ligang Gao et al.
NANOTECHNOLOGY (2015)
Bioinspired Programming of Memory Devices for Implementing an Inference Engine
Damien Querlioz et al.
PROCEEDINGS OF THE IEEE (2015)
MIEC (mixed-ionic-electronic-conduction)-based access devices for non-volatile crossbar memory arrays
Rohit S. Shenoy et al.
SEMICONDUCTOR SCIENCE AND TECHNOLOGY (2014)
Nanoelectronic Programmable Synapses Based on Phase Change Materials for Brain-Inspired Computing
Duygu Kuzum et al.
NANO LETTERS (2012)
Neural Dynamics as Sampling: A Model for Stochastic Computation in Recurrent Networks of Spiking Neurons
Lars Buesing et al.
PLOS COMPUTATIONAL BIOLOGY (2011)
The free-energy principle: a unified brain theory?
Karl J. Friston
NATURE REVIEWS NEUROSCIENCE (2010)
The low synaptic release probability in vivo
J. Gerard G. Borst
TRENDS IN NEUROSCIENCES (2010)
Energy-efficient neuronal computation via quantal synaptic failures
WB Levy et al.
JOURNAL OF NEUROSCIENCE (2002)