Guest Editorial Distributed Signal Processing for Edge Learning in B5G IoT Networks

You are here

Top Reasons to Join SPS Today!

1. IEEE Signal Processing Magazine
2. Signal Processing Digital Library*
3. Inside Signal Processing Newsletter
4. SPS Resource Center
5. Career advancement & recognition
6. Discounts on conferences and publications
7. Professional networking
8. Communities for students, young professionals, and women
9. Volunteer opportunities
10. Coming soon! PDH/CEU credits
Click here to learn more.

Guest Editorial Distributed Signal Processing for Edge Learning in B5G IoT Networks

By: 
Wei Xu; Derrick Wing Kwan Ng; Marco Levorato; Yonina C. Eldar; Mérouane Debbah

The papers in this special section focus on distributed signal processing for edge learning (EL). EL is a new and promising technology for implementing artificial intelligence (AI) algorithms at edge devices over wireless networks. With the explosive growth in global data traffic, the number of edge devices such as mobile edge computing (MEC), satellite networks, and the Internet-ofthings (IoT) devices increase rapidly. Machine learning (ML) techniques, including deep learning (DL), federated learning (FL), and reinforcement learning (RL), are effective approaches to improve the performance and efficiency of edge networks.

Edge learning (EL) is a promising technology for implementing artificial intelligence (AI) algorithms at edge devices over wireless networks. With the explosive growth in global data traffic, the number of edge devices such as mobile edge computing (MEC), satellite networks, and the Internet-of-things (IoT) devices increase rapidly. Machine learning (ML) techniques, including deep learning (DL), federated learning (FL), and reinforcement learning (RL), are effective approaches to improve the performance and efficiency of edge networks. Traditionally, the AI model in communication systems is trained on a centralized cloud server, which may suffer from the problem of large computational complexity and heavy signaling overhead. Since EL deploys computation-intensive model training at the network edge, highly-distributed real-time data generated by edge devices can be accessed rapidly to accelerate AI training. However, edge devices with limited computational and storage resources lead to new challenges in resource allocation. Other open challenges include data privacy protection and communication latency control. A detailed introduction to distributed EL is given in paper [A1], entitled “Edge Learning for B5G Networks with Distributed Signal Processing: Semantic Communication, Edge Computing, and Wireless Sensing,” which provides a comprehensive overview of practical distributed EL techniques and their interplay with advanced wireless communication optimization designs.

SPS Social Media

IEEE SPS Educational Resources

IEEE SPS Resource Center

IEEE SPS YouTube Channel