The remarkable successes of deep learning models\ud across various applications have resulted in the design of\ud deeper networks that can solve complex problems. How-\ud ever, the increasing depth of such models also results in\ud a higher storage and runtime complexity, which restricts\ud the deployability of such very deep models on mobile and\ud portable devices, which have limited storage and battery\ud capacity. While many methods have been proposed for deep\ud model compression in recent years, almost all of them have\ud focused on reducing storage complexity. In this work, we\ud extend the teacher-student framework for deep model com-\ud pression, since it has the potential to address runtime and\ud train time complexity too. We pro...
Deep neural networks have exhibited state-of-the-art performance in many com- puter vision tasks. H...
The success of overparameterized deep neural networks (DNNs) poses a great challenge to deploy compu...
This paper addresses the challenges of training large neural network models under federated learning...
The remarkable successes of deep learning models across various applications have resulted in the d...
Deep Neural Networks give state-of-art results in all computer vision applications. This comes with ...
Deep Convolutional Neural Networks and "deep learning" in general stand at the cutting edge on a ran...
Deep Convolutional Neural Networks and "deep learning" in general stand at the cutting edge on a ran...
Deep Convolutional Neural Networks and "deep learning" in general stand at the cutting edge on a ran...
In order to solve the problem of large model computing power consumption, this paper proposes a nove...
Deep neural networks (DNNs) continue to make significant advances, solving tasks from image classifi...
Neural networks employ massive interconnection of simple computing units called neurons to compute t...
This paper introduces model compression algorithms which make a deep neural network smaller and fast...
In recent years, the deep neural networks have gained more and more attention with the rapid develop...
Over the past years the size of deep learning models has been growing consistently. This growth has ...
Neural networks employ massive interconnection of simple computing units called neurons to compute t...
Deep neural networks have exhibited state-of-the-art performance in many com- puter vision tasks. H...
The success of overparameterized deep neural networks (DNNs) poses a great challenge to deploy compu...
This paper addresses the challenges of training large neural network models under federated learning...
The remarkable successes of deep learning models across various applications have resulted in the d...
Deep Neural Networks give state-of-art results in all computer vision applications. This comes with ...
Deep Convolutional Neural Networks and "deep learning" in general stand at the cutting edge on a ran...
Deep Convolutional Neural Networks and "deep learning" in general stand at the cutting edge on a ran...
Deep Convolutional Neural Networks and "deep learning" in general stand at the cutting edge on a ran...
In order to solve the problem of large model computing power consumption, this paper proposes a nove...
Deep neural networks (DNNs) continue to make significant advances, solving tasks from image classifi...
Neural networks employ massive interconnection of simple computing units called neurons to compute t...
This paper introduces model compression algorithms which make a deep neural network smaller and fast...
In recent years, the deep neural networks have gained more and more attention with the rapid develop...
Over the past years the size of deep learning models has been growing consistently. This growth has ...
Neural networks employ massive interconnection of simple computing units called neurons to compute t...
Deep neural networks have exhibited state-of-the-art performance in many com- puter vision tasks. H...
The success of overparameterized deep neural networks (DNNs) poses a great challenge to deploy compu...
This paper addresses the challenges of training large neural network models under federated learning...