In contrast to software simulations of neural networks, hardware implementations have often limited or no tunability. While such networks promise great improvements in terms of speed and energy efficiency, their performance is limited by the difficulty to apply efficient training. We propose and realize experimentally an optical system where highly efficient backpropagation training can be applied through an array of highly nonlinear, non-tunable nodes. The system includes exciton-polariton nodes realizing nonlinear activation functions. We demonstrate a high classification accuracy in the MNIST handwritten digit benchmark in a single hidden layer system
Optical neural networks are emerging as a promising type of machine learning hardware capable of ene...
Photonic neural network (PNN) is a remarkable analog artificial intelligence (AI) accelerator that c...
Neural networks are currently implemented on digital Von Neumann machines, which do not fully levera...
We propose all-optical neural networks characterized by very high energy efficiency and performance...
We demonstrate that time-delayed nonlinear effects in exciton-polaritons can be used to construct ne...
Exciton-polaritons are hybrid light-matter quasiparticles. Being such hybrid, they inherit the fast ...
Machine learning software applications are ubiquitous in many fields of science and society for thei...
Integrated photonic neural networks provide a promising platform for energy-efficient, high-throughp...
Optical implementation of a backpropagating neuron by means of a nonlinear Fabry-Perot etalon requir...
Click on the DOI link below to access the article (may not be free)The optical bench training of an ...
Nonlinear activation is a crucial building block of most machine-learning systems. However, unlike i...
We study artificial neural networks with nonlinear waves as a computing reservoir. We discuss univer...
This is the author accepted manuscript. The final version is available from Nature Research via the ...
We show theoretically that neural networks based on disordered exciton-polariton systems allow the r...
The explosive growth of computation and energy cost of artificial intelligence has spurred strong in...
Optical neural networks are emerging as a promising type of machine learning hardware capable of ene...
Photonic neural network (PNN) is a remarkable analog artificial intelligence (AI) accelerator that c...
Neural networks are currently implemented on digital Von Neumann machines, which do not fully levera...
We propose all-optical neural networks characterized by very high energy efficiency and performance...
We demonstrate that time-delayed nonlinear effects in exciton-polaritons can be used to construct ne...
Exciton-polaritons are hybrid light-matter quasiparticles. Being such hybrid, they inherit the fast ...
Machine learning software applications are ubiquitous in many fields of science and society for thei...
Integrated photonic neural networks provide a promising platform for energy-efficient, high-throughp...
Optical implementation of a backpropagating neuron by means of a nonlinear Fabry-Perot etalon requir...
Click on the DOI link below to access the article (may not be free)The optical bench training of an ...
Nonlinear activation is a crucial building block of most machine-learning systems. However, unlike i...
We study artificial neural networks with nonlinear waves as a computing reservoir. We discuss univer...
This is the author accepted manuscript. The final version is available from Nature Research via the ...
We show theoretically that neural networks based on disordered exciton-polariton systems allow the r...
The explosive growth of computation and energy cost of artificial intelligence has spurred strong in...
Optical neural networks are emerging as a promising type of machine learning hardware capable of ene...
Photonic neural network (PNN) is a remarkable analog artificial intelligence (AI) accelerator that c...
Neural networks are currently implemented on digital Von Neumann machines, which do not fully levera...