Biological neural networks effortlessly tackle complex computational problems and excel at predicting outcomes from noisy, incomplete data, a task that poses significant challenges to traditional processors. Artificial neural networks (ANNs), inspired by these biological counterparts, have emerged as powerful tools for deciphering intricate data patterns and making predictions. However, conventional ANNs can be viewed as "point estimates" that do not capture the uncertainty of prediction, which is an inherently probabilistic process. In contrast, treating an ANN as a probabilistic model derived via Bayesian inference poses significant challenges for conventional deterministic computing architectures. Here, we use chaotic light in combinatio...
Machine Learning (ML) approaches like Deep Neural Networks (DNNs) have emerged as a powerful tool fo...
Tuneable all-optical signal processing has been the holy grail of information photonics; it has been...
International audienceThe implementation of artificial neural networks in hardware substrates is a m...
Artificial neural networks are efficient computing platforms inspired by the brain. Such platforms c...
The probabilistic inference model has been widely used in various areas, such as error-control codin...
Reservoir computing is a bioinspired computing paradigm for processing time-dependent signals. Its h...
For many challenging problems where the mathematical description is not explicitly defined, artifici...
Driven by the remarkable breakthroughs during the past decade, photonics neural networks have experi...
Reservoir Computing is a bio-inspired computing paradigm for processing time dependent signals (Jaeg...
Artificial neural networks are efficient computing platforms inspired by the brain. Such platforms c...
Neural networks find widespread use in scientific and technological applications, yet their implemen...
Photonic computing has attracted much attention due to its great potential to accelerate artificial ...
Frontiers in Optics 2017. Washington, D.C. United States, 18–21 September 2017.We introduce a novel ...
Forecasting the dynamics of chaotic systems from the analysis of their output signals is a challengi...
International audienceAn efficient photonic hardware integration of neural networks can benefit us f...
Machine Learning (ML) approaches like Deep Neural Networks (DNNs) have emerged as a powerful tool fo...
Tuneable all-optical signal processing has been the holy grail of information photonics; it has been...
International audienceThe implementation of artificial neural networks in hardware substrates is a m...
Artificial neural networks are efficient computing platforms inspired by the brain. Such platforms c...
The probabilistic inference model has been widely used in various areas, such as error-control codin...
Reservoir computing is a bioinspired computing paradigm for processing time-dependent signals. Its h...
For many challenging problems where the mathematical description is not explicitly defined, artifici...
Driven by the remarkable breakthroughs during the past decade, photonics neural networks have experi...
Reservoir Computing is a bio-inspired computing paradigm for processing time dependent signals (Jaeg...
Artificial neural networks are efficient computing platforms inspired by the brain. Such platforms c...
Neural networks find widespread use in scientific and technological applications, yet their implemen...
Photonic computing has attracted much attention due to its great potential to accelerate artificial ...
Frontiers in Optics 2017. Washington, D.C. United States, 18–21 September 2017.We introduce a novel ...
Forecasting the dynamics of chaotic systems from the analysis of their output signals is a challengi...
International audienceAn efficient photonic hardware integration of neural networks can benefit us f...
Machine Learning (ML) approaches like Deep Neural Networks (DNNs) have emerged as a powerful tool fo...
Tuneable all-optical signal processing has been the holy grail of information photonics; it has been...
International audienceThe implementation of artificial neural networks in hardware substrates is a m...