A critical feature in signal processing is the ability to interpret correlations in time series signals, such as speech. Machine learning systems process this contextual information by tracking internal states in recurrent neural networks (RNNs), but these can cause memory and processor bottlenecks in applications from edge devices to data centers, motivating research into new analog inference architectures. But whereas photonic accelerators, in particular, have demonstrated big leaps in uni-directional feedforward deep neural network (DNN) inference, the bi-directional architecture of RNNs presents a unique challenge: the need for a short-term memory that (i) programmably transforms optical waveforms with phase coherence , (ii) minimizes a...
Despite ever increasing computational power, recognition and classification problems remain challeng...
[EN] The implementation of nonlinear activation functions is one of the key challenges that optical ...
All-optical platforms for recurrent neural networks can offer higher computational speed and energy ...
The rapid evolution of artificial intelligence (AI) technologies results in ascending demand for com...
Neuromorphic Computing implemented in photonic hardware is one of the most promising routes towards ...
In recent years, remarkable advances in photonic computing have highlighted the need for photonic me...
Reservoir computing (RC) is a technique in machine learning inspired by neural systems. RC has been ...
Nowadays most of computers are still based on concepts developed more than 60 years ago by Alan Turi...
We present a complex network of interconnected optical structures for information processing. This n...
Neuromorphic computing using photonic hardware is a promising route towards ultrafast processing whi...
We report high-speed, energy-efficient artificial optoelectronic spiking neurons based upon resonant...
The ability of deep neural networks to perform complex tasks more accurately than manually-crafted s...
Reservoir computing is a recent approach from the fields of machine learning and artificial neural n...
Photonic neural network implementation has been gaining considerable attention as a potentially disr...
Over the past decade, Deep Learning (DL) and Deep Neural Network (DNN) have gone through a rapid dev...
Despite ever increasing computational power, recognition and classification problems remain challeng...
[EN] The implementation of nonlinear activation functions is one of the key challenges that optical ...
All-optical platforms for recurrent neural networks can offer higher computational speed and energy ...
The rapid evolution of artificial intelligence (AI) technologies results in ascending demand for com...
Neuromorphic Computing implemented in photonic hardware is one of the most promising routes towards ...
In recent years, remarkable advances in photonic computing have highlighted the need for photonic me...
Reservoir computing (RC) is a technique in machine learning inspired by neural systems. RC has been ...
Nowadays most of computers are still based on concepts developed more than 60 years ago by Alan Turi...
We present a complex network of interconnected optical structures for information processing. This n...
Neuromorphic computing using photonic hardware is a promising route towards ultrafast processing whi...
We report high-speed, energy-efficient artificial optoelectronic spiking neurons based upon resonant...
The ability of deep neural networks to perform complex tasks more accurately than manually-crafted s...
Reservoir computing is a recent approach from the fields of machine learning and artificial neural n...
Photonic neural network implementation has been gaining considerable attention as a potentially disr...
Over the past decade, Deep Learning (DL) and Deep Neural Network (DNN) have gone through a rapid dev...
Despite ever increasing computational power, recognition and classification problems remain challeng...
[EN] The implementation of nonlinear activation functions is one of the key challenges that optical ...
All-optical platforms for recurrent neural networks can offer higher computational speed and energy ...