Federated edge learning (FEEL) has emerged as a revolutionary paradigm to develop AI services at the edge of 6G wireless networks as it supports collaborative model training at a massive number of mobile devices. However, model communication over wireless channels, especially in uplink model uploading of FEEL, has been widely recognized as a bottleneck that critically limits the efficiency of FEEL. Although over-the-air computation can alleviate the excessive cost of radio resources in FEEL model uploading, practical implementations of over-the-air FEEL still suffer from several challenges, including strong straggler issues, large communication overheads, and potential privacy leakage. In this article, we study these challenges in over-the-...
New technologies bring opportunities to deploy AI and machine learning to the edge of the network, a...
In this study, we propose a digital over-the-air computation (OAC) scheme for achieving continuous-v...
With the aim of integrating over-the-air federated learning (AirFL) and non-orthogonal multiple acce...
To efficiently exploit the massive amounts of raw data that are increasingly being generated in mobi...
Federated edge learning (FEEL) is a popular framework for model training at an edge server using dat...
Bringing the success of modern machine learning (ML) techniques to mobile devices can enablemany new...
Mass data traffics, low-latency wireless services and advanced artificial intelligence (AI) technolo...
Federated learning (FL) is a distributed machine learning technology for next-generation AI systems ...
We study federated edge learning (FEEL), where wireless edge devices, each with its own dataset, lea...
The next-generation of wireless networks will enable many machine learning (ML) tools and applicatio...
Edge computing, as one of the key technologies in 6G networks, establishes a distributed computing e...
New technological advancements in wireless networks have enlarged the number of connected devices. T...
The sixth-generation (6G) mobile networks are expected to feature the ubiquitous deployment of machi...
Abstract Fueled by the availability of more data and computing power, recent breakthroughs in cloud...
Edge intelligence is an emerging paradigm for real-time training and inference at the wireless edge,...
New technologies bring opportunities to deploy AI and machine learning to the edge of the network, a...
In this study, we propose a digital over-the-air computation (OAC) scheme for achieving continuous-v...
With the aim of integrating over-the-air federated learning (AirFL) and non-orthogonal multiple acce...
To efficiently exploit the massive amounts of raw data that are increasingly being generated in mobi...
Federated edge learning (FEEL) is a popular framework for model training at an edge server using dat...
Bringing the success of modern machine learning (ML) techniques to mobile devices can enablemany new...
Mass data traffics, low-latency wireless services and advanced artificial intelligence (AI) technolo...
Federated learning (FL) is a distributed machine learning technology for next-generation AI systems ...
We study federated edge learning (FEEL), where wireless edge devices, each with its own dataset, lea...
The next-generation of wireless networks will enable many machine learning (ML) tools and applicatio...
Edge computing, as one of the key technologies in 6G networks, establishes a distributed computing e...
New technological advancements in wireless networks have enlarged the number of connected devices. T...
The sixth-generation (6G) mobile networks are expected to feature the ubiquitous deployment of machi...
Abstract Fueled by the availability of more data and computing power, recent breakthroughs in cloud...
Edge intelligence is an emerging paradigm for real-time training and inference at the wireless edge,...
New technologies bring opportunities to deploy AI and machine learning to the edge of the network, a...
In this study, we propose a digital over-the-air computation (OAC) scheme for achieving continuous-v...
With the aim of integrating over-the-air federated learning (AirFL) and non-orthogonal multiple acce...