To respond to the need for efficient training and inference of deep neural networks, a plethora of domain-specific architectures have been introduced, such as Google Tensor Processing Units and NVIDIA Tensor Cores. A common feature of these architectures is the design for efficiently computing a dense matrix product of a given small size. In order to broaden the class of algorithms that exploit these systems, we propose a computational model, named the TCU model, that captures the ability to natively multiply small matrices. We then use the TCU model for designing fast algorithms for several problems, including dense and sparse matrix multiplication and the Discrete Fourier Transform. We finally highlight a relation between the TCU model an...
The emergence of hardware accelerators has brought about several orders of magnitude improvement in ...
Modern deep neural network (DNN) applications demand a remarkable processing throughput usually unme...
Tensor algorithms are a rapidly growing field of research with applications in many scientific domai...
To respond to the intense computational load of deep neural networks, a plethora of domain-specific ...
Tensor Core Units (TCUs) are hardware accelerators developed for deep neural networks, which efficie...
We have repurposed Google Tensor Processing Units (TPUs), application-specific chips developed for m...
140 pagesTensor algebra lives at the heart of big data applications. Where classical machine learnin...
Popular Machine Learning (ML) and High Performance Computing (HPC) workloads contribute to a signifi...
Computational intensive applications such as pattern recognition, and natural language processing, a...
There has been a surge in the demand for a Domain Specific Architecture due to wide ranging deep lea...
Together with the improvements in state-of-the-art accuracies of various tasks, deep learning models...
We introduce deep tensor networks, which are exponentially wide neural networks based on the tensor ...
Deep learning algorithms are gaining popularity in autonomous systems. These systems typically have ...
Machine learning has gained success in many application domains including medical data analysis, fin...
Deep Neural Networks (DNNs) have achieved unprecedented success in various applications like autonom...
The emergence of hardware accelerators has brought about several orders of magnitude improvement in ...
Modern deep neural network (DNN) applications demand a remarkable processing throughput usually unme...
Tensor algorithms are a rapidly growing field of research with applications in many scientific domai...
To respond to the intense computational load of deep neural networks, a plethora of domain-specific ...
Tensor Core Units (TCUs) are hardware accelerators developed for deep neural networks, which efficie...
We have repurposed Google Tensor Processing Units (TPUs), application-specific chips developed for m...
140 pagesTensor algebra lives at the heart of big data applications. Where classical machine learnin...
Popular Machine Learning (ML) and High Performance Computing (HPC) workloads contribute to a signifi...
Computational intensive applications such as pattern recognition, and natural language processing, a...
There has been a surge in the demand for a Domain Specific Architecture due to wide ranging deep lea...
Together with the improvements in state-of-the-art accuracies of various tasks, deep learning models...
We introduce deep tensor networks, which are exponentially wide neural networks based on the tensor ...
Deep learning algorithms are gaining popularity in autonomous systems. These systems typically have ...
Machine learning has gained success in many application domains including medical data analysis, fin...
Deep Neural Networks (DNNs) have achieved unprecedented success in various applications like autonom...
The emergence of hardware accelerators has brought about several orders of magnitude improvement in ...
Modern deep neural network (DNN) applications demand a remarkable processing throughput usually unme...
Tensor algorithms are a rapidly growing field of research with applications in many scientific domai...