With the proliferation of ultrahigh-speed mobile networks and internet-connected devices, along with the rise of artificial intelligence (AI)1, the world is generating exponentially increasing amounts of data that need to be processed in a fast and efficient way. Highly parallelized, fast and scalable hardware is therefore becoming progressively more important2. Here we demonstrate a computationally specific integrated photonic hardware accelerator (tensor core) that is capable of operating at speeds of trillions of multiply-accumulate operations per second (1012 MAC operations per second or tera-MACs per second). The tensor core can be considered as the optical analogue of an application-specific integrated circuit (ASIC). It achieves para...
Abstract Signal processing has become central to many fields, from coherent optical telecommunicatio...
Today's conventional cloud computing and mobile platforms have been challenged by the advent of Mach...
Convolutional operation is a very efficient way to handle tensor analytics, but it consumes a large ...
This is the author accepted manuscript. The final version is available from Nature Research via the ...
The explosion of artificial intelligence and machine-learning algorithms, connected to the exponenti...
This is the final version. Available on open access from De Gruyter via the DOI in this recordThe in...
Convolutional neural network (CNN) is one of the best neural network structures for solving classifi...
The emergence of parallel convolution-operation technology has substantially powered the complexity ...
This is the final version. Available on open access from Nature Research via the DOI in this record....
The positive societal impacts of artificial intelligence (AI) through the field of deep learning hav...
In this work, we introduce an additional parallelism with combination of space and wavelength domain...
Integrated photonics is a promising technology for next-generation computing because of the essentia...
Deep learning has become the most mainstream technology in artificial intelligence (AI) because it c...
Digital signal processing has become central to many fields, from coherent optical telecommunication...
We report ultrahigh bandwidth applications of Kerr microcombs to optical neural networks and to opti...
Abstract Signal processing has become central to many fields, from coherent optical telecommunicatio...
Today's conventional cloud computing and mobile platforms have been challenged by the advent of Mach...
Convolutional operation is a very efficient way to handle tensor analytics, but it consumes a large ...
This is the author accepted manuscript. The final version is available from Nature Research via the ...
The explosion of artificial intelligence and machine-learning algorithms, connected to the exponenti...
This is the final version. Available on open access from De Gruyter via the DOI in this recordThe in...
Convolutional neural network (CNN) is one of the best neural network structures for solving classifi...
The emergence of parallel convolution-operation technology has substantially powered the complexity ...
This is the final version. Available on open access from Nature Research via the DOI in this record....
The positive societal impacts of artificial intelligence (AI) through the field of deep learning hav...
In this work, we introduce an additional parallelism with combination of space and wavelength domain...
Integrated photonics is a promising technology for next-generation computing because of the essentia...
Deep learning has become the most mainstream technology in artificial intelligence (AI) because it c...
Digital signal processing has become central to many fields, from coherent optical telecommunication...
We report ultrahigh bandwidth applications of Kerr microcombs to optical neural networks and to opti...
Abstract Signal processing has become central to many fields, from coherent optical telecommunicatio...
Today's conventional cloud computing and mobile platforms have been challenged by the advent of Mach...
Convolutional operation is a very efficient way to handle tensor analytics, but it consumes a large ...