Neural networks become the only way to solve problems in some areas. Such tasks as recognition of images, sounds, classification require serious processor power and memory for training and functioning of the network. Modern mobile devices have quite good characteristics for primary layers of deep neural networks, but there are not enough resources for whole network. Since neural networks for mobile devices are trained separately on external resources, a method of distributed work of a neural network with vertical distribution over sets of layers with synchronization of training data was developed. The model is divided after saving its state, all layers on the mobile device are converted to the format for the mobile framework and synchronize...
These days, working with deep neural networks goes hand in hand with the use of GPUs. Once a deep ne...
Existing edge computing architectures do not support the updating of neural network models, nor are ...
The rapid growth of data and ever increasing model complexity of deep neural networks (DNNs) have en...
Neural networks employ massive interconnection of simple computing units called neurons to compute t...
Memory management is very essential task for large-scale storage systems; in mobile platform generat...
Fog computing is a potential solution for heterogeneous resource-constrained mobile devices to colla...
The exponential increase in internet data poses several challenges to cloud systems and data centers...
With the development of the mobile systems, we gain a lot of benefits and convenience by leveraging ...
Designing effective methods for image classification and real-time object detection is one of the mo...
In the mobile-edge-cloud continuum, a plethora of heterogeneous data sources and computation-capable...
International audienceDeploying neural networks models over embedded devices have an increased inter...
This article investigates the tradeoff between communication and memory usage in different methods o...
Nowadays, Deep Neural Networks (DNN) are emerging as an excellent candidate in many ap- plications (...
The mobile computing environment experiences wireless problems and suffers from limited bandwidth, w...
In recent years, machine learning applications are progressing on mobile systems for enhanced user ...
These days, working with deep neural networks goes hand in hand with the use of GPUs. Once a deep ne...
Existing edge computing architectures do not support the updating of neural network models, nor are ...
The rapid growth of data and ever increasing model complexity of deep neural networks (DNNs) have en...
Neural networks employ massive interconnection of simple computing units called neurons to compute t...
Memory management is very essential task for large-scale storage systems; in mobile platform generat...
Fog computing is a potential solution for heterogeneous resource-constrained mobile devices to colla...
The exponential increase in internet data poses several challenges to cloud systems and data centers...
With the development of the mobile systems, we gain a lot of benefits and convenience by leveraging ...
Designing effective methods for image classification and real-time object detection is one of the mo...
In the mobile-edge-cloud continuum, a plethora of heterogeneous data sources and computation-capable...
International audienceDeploying neural networks models over embedded devices have an increased inter...
This article investigates the tradeoff between communication and memory usage in different methods o...
Nowadays, Deep Neural Networks (DNN) are emerging as an excellent candidate in many ap- plications (...
The mobile computing environment experiences wireless problems and suffers from limited bandwidth, w...
In recent years, machine learning applications are progressing on mobile systems for enhanced user ...
These days, working with deep neural networks goes hand in hand with the use of GPUs. Once a deep ne...
Existing edge computing architectures do not support the updating of neural network models, nor are ...
The rapid growth of data and ever increasing model complexity of deep neural networks (DNNs) have en...