Transfer learning uses a profound labeled set of data from the source domain to deal with a similar problem for the target domain. Transfer learning provides accurate decision- making when insufficient data samples are available and when building a new prediction model takes more time and effort. This study explains comparative analysis of traditional machine learning techniques and transfer learning approaches over edge networks to enhance the performance and networking latency within discrete nodes. Edge networks are widely used to improve the efficiency and staging of any algorithm as the embedded systems focus on implementing some particular events based on the microprocessors and, at the same time, working on the least resources that r...
International audienceFuture sixth-generation (6G) networks will rely on the synergies of edge compu...
Transfer learning allows us to exploit knowledge gained from one task to assist in solving another b...
The aim of this paper is to propose a resource allocation strategy for dynamic training and inferenc...
Traditional machine learning models used for network intrusion detection systems rely on vast amount...
abstract: With the emergence of edge computing paradigm, many applications such as image recognition...
Exponential growth in the need for low latency offloading of computation was answered by the introdu...
Bringing the success of modern machine learning (ML) techniques to mobile devices can enable many ne...
Last twenty years have seen the explosive growth of information technology, and we have stepped into...
Existing edge computing architectures do not support the updating of neural network models, nor are ...
Abstract Fueled by the availability of more data and computing power, recent breakthroughs in cloud...
Under the federated learning paradigm, a set of nodes can cooperatively train a machine learning mod...
In this paper we examine the relevance of transfer learning in deep learning context, we review diff...
With the advent of beyond 5G and 6G systems, wireless communication networks will evolve from a pure...
The evolution of the Machine Learning (ML) has led to the emergence of Transfer Learning (TL) approa...
The number of Internet of Things (IoT) edge devices are exponentially on the rise that have both com...
International audienceFuture sixth-generation (6G) networks will rely on the synergies of edge compu...
Transfer learning allows us to exploit knowledge gained from one task to assist in solving another b...
The aim of this paper is to propose a resource allocation strategy for dynamic training and inferenc...
Traditional machine learning models used for network intrusion detection systems rely on vast amount...
abstract: With the emergence of edge computing paradigm, many applications such as image recognition...
Exponential growth in the need for low latency offloading of computation was answered by the introdu...
Bringing the success of modern machine learning (ML) techniques to mobile devices can enable many ne...
Last twenty years have seen the explosive growth of information technology, and we have stepped into...
Existing edge computing architectures do not support the updating of neural network models, nor are ...
Abstract Fueled by the availability of more data and computing power, recent breakthroughs in cloud...
Under the federated learning paradigm, a set of nodes can cooperatively train a machine learning mod...
In this paper we examine the relevance of transfer learning in deep learning context, we review diff...
With the advent of beyond 5G and 6G systems, wireless communication networks will evolve from a pure...
The evolution of the Machine Learning (ML) has led to the emergence of Transfer Learning (TL) approa...
The number of Internet of Things (IoT) edge devices are exponentially on the rise that have both com...
International audienceFuture sixth-generation (6G) networks will rely on the synergies of edge compu...
Transfer learning allows us to exploit knowledge gained from one task to assist in solving another b...
The aim of this paper is to propose a resource allocation strategy for dynamic training and inferenc...