Deep neural networks (DNNs) underpin many machine learning applications. Production quality DNN models achieve high inference accuracy by training millions of DNN parameters which has a significant resource footprint. This presents a challenge for resources operating at the extreme edge of the network, such as mobile and embedded devices that have limited computational and memory resources. To address this, models are pruned to create lightweight, more suitable variants for these devices. Existing pruning methods are unable to provide similar quality models compared to their unpruned counterparts without significant time costs and overheads or are limited to offline use cases. Our work rapidly derives suitable model variants while maintaini...
Deploying deep learning neural networks on edge devices, to accomplish task specific objectives in ...
Deep Neural Network (DNN) models are now commonly used to automate and optimize complicated tasks in...
Neural Networks (NN), although successfully applied to several Artificial Intelligence tasks, are of...
Funding: This research is funded by Rakuten Mobile, Japan .Deep neural networks (DNNs) underpin many...
Model compression techniques on Deep Neural Network (DNN) have been widely acknowledged as an effect...
In recent years, deep neural networks have achieved remarkable results in various artificial intelli...
Deep neural networks (DNNs) have achieved significant success in many applications, such as computer...
MasterTargeting the resource-limited intelligent mobile system, the two most significant factors lim...
DNNs are highly memory and computationally intensive, due to which they are unfeasible to depl...
The performance of a deep neural network (deep NN) is dependent upon a significant number of weight ...
Artificial Intelligent (AI) has become the most potent and forward-looking force in the technologies...
Deep neural networks (DNNs) have become an important tool in solving various problems in numerous di...
Deep neural networks (DNNs) have become a fundamental component of various applications. They are tr...
The rapidly growing parameter volume of deep neural networks (DNNs) hinders the artificial intellige...
Deep Neural Networks have memory and computational demands that often render them difficult to use i...
Deploying deep learning neural networks on edge devices, to accomplish task specific objectives in ...
Deep Neural Network (DNN) models are now commonly used to automate and optimize complicated tasks in...
Neural Networks (NN), although successfully applied to several Artificial Intelligence tasks, are of...
Funding: This research is funded by Rakuten Mobile, Japan .Deep neural networks (DNNs) underpin many...
Model compression techniques on Deep Neural Network (DNN) have been widely acknowledged as an effect...
In recent years, deep neural networks have achieved remarkable results in various artificial intelli...
Deep neural networks (DNNs) have achieved significant success in many applications, such as computer...
MasterTargeting the resource-limited intelligent mobile system, the two most significant factors lim...
DNNs are highly memory and computationally intensive, due to which they are unfeasible to depl...
The performance of a deep neural network (deep NN) is dependent upon a significant number of weight ...
Artificial Intelligent (AI) has become the most potent and forward-looking force in the technologies...
Deep neural networks (DNNs) have become an important tool in solving various problems in numerous di...
Deep neural networks (DNNs) have become a fundamental component of various applications. They are tr...
The rapidly growing parameter volume of deep neural networks (DNNs) hinders the artificial intellige...
Deep Neural Networks have memory and computational demands that often render them difficult to use i...
Deploying deep learning neural networks on edge devices, to accomplish task specific objectives in ...
Deep Neural Network (DNN) models are now commonly used to automate and optimize complicated tasks in...
Neural Networks (NN), although successfully applied to several Artificial Intelligence tasks, are of...