We demonstrate that time-delayed nonlinear effects in exciton-polaritons can be used to construct neural networks where information is coded in optical pulses arriving consecutively on the sample. The highly nonlinear effects are induced by time-dependent interactions with the excitonic reservoir. These nonlinearities allow to create a nonlinear XOR logic gate that can perform operations on the picosecond timescale. An optoelectronic neural network based on the constructed logic gate performs classification of spoken digits with a high accuracy rate
Reservoir computing has recently been introduced as a new paradigm in the field of machine learning....
Reservoir computing (RC) is a technique in machine learning inspired by neural systems. RC has been ...
In today’s data-driven world, the ability to process large data volumes is crucial. Key tasks, such ...
In contrast to software simulations of neural networks, hardware implementations have often limited ...
We propose all-optical neural networks characterized by very high energy efficiency and performance...
Exciton-polaritons are hybrid light-matter quasiparticles. Being such hybrid, they inherit the fast ...
We show theoretically that neural networks based on disordered exciton-polariton systems allow the r...
International audienceReservoir computing, originally referred to as an echo state network or a liqu...
Nonlinear photonic delay systems present interesting implementation platforms for machine learning m...
Machine learning software applications are ubiquitous in many fields of science and society for thei...
We present in simulation a photonic neural circuit achieving a 200 ns spike delay, based on excitabi...
International audienceDelay dynamics are well known for their infinite dimensional phase space. An a...
International audienceWe report on the experimental demonstration of a hybrid optoelectronic neuromo...
Delayed feedback systems are known to exhibit a rich dynamical behavior, showing a wide variety of d...
Machine learning techniques have proven very efficient in assorted classification tasks. Nevertheles...
Reservoir computing has recently been introduced as a new paradigm in the field of machine learning....
Reservoir computing (RC) is a technique in machine learning inspired by neural systems. RC has been ...
In today’s data-driven world, the ability to process large data volumes is crucial. Key tasks, such ...
In contrast to software simulations of neural networks, hardware implementations have often limited ...
We propose all-optical neural networks characterized by very high energy efficiency and performance...
Exciton-polaritons are hybrid light-matter quasiparticles. Being such hybrid, they inherit the fast ...
We show theoretically that neural networks based on disordered exciton-polariton systems allow the r...
International audienceReservoir computing, originally referred to as an echo state network or a liqu...
Nonlinear photonic delay systems present interesting implementation platforms for machine learning m...
Machine learning software applications are ubiquitous in many fields of science and society for thei...
We present in simulation a photonic neural circuit achieving a 200 ns spike delay, based on excitabi...
International audienceDelay dynamics are well known for their infinite dimensional phase space. An a...
International audienceWe report on the experimental demonstration of a hybrid optoelectronic neuromo...
Delayed feedback systems are known to exhibit a rich dynamical behavior, showing a wide variety of d...
Machine learning techniques have proven very efficient in assorted classification tasks. Nevertheles...
Reservoir computing has recently been introduced as a new paradigm in the field of machine learning....
Reservoir computing (RC) is a technique in machine learning inspired by neural systems. RC has been ...
In today’s data-driven world, the ability to process large data volumes is crucial. Key tasks, such ...