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Generative Learning for Wireless Communications

Fundamentals and Applications

  • 1st Edition - July 1, 2026
  • Latest edition
  • Editors: Songyang Zhang, Shuai Zhang, Chuan Huang
  • Language: English

Generative learning (GL) has emerged as an essential tool for data processing and network optimization in the broad area of next-generation communication systems. Generative Le… Read more

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Description

Generative learning (GL) has emerged as an essential tool for data processing and network optimization in the broad area of next-generation communication systems. Generative Learning for Wireless Communications: Fundamentals and Applications provides a comprehensive and systematic tutorial for applying generative learning models to wireless communications. It explains the core concepts of state-of-the-art generative learning models, including generative adversarial nets, variational autoencoder, and other advanced models, such as transformers and diffusion models, and then shows their application to specific areas in wireless communications.

Key features

  • Explains the fundamental concepts of the state-of-the-art generative learning models
  • Presents the most advanced methods of generative AI in wireless communications
  • Gives practical guidance on how to apply generative AI in wireless communications
  • Includes case studies and algorithm designs
  • Presents the critical challenges of GL today and promising future directions

Readership

Academic researchers, graduate students and industry R&D engineers interested in: Generative Learning Algorithms, Machine Learning for Communications, Cyber-based and Networked AI Systems, Cognitive Radio & AI-Enabled Networks, Communication & Information System Security, Wireless networking for distributed AI, IoT & Sensor Networks, Next-Generation Networking & Mobile Edge Computing, Signal Processing for Communications, Wireless Communications, Private and Distributed Computation in Communications

Table of contents

Part I - Introduction

1. Wireless Communications in the Era of Artificial Intelligence

2. Overview of Generative AI models and Potentials in Wireless Communications

Part II – Foundations of Generative Learning Models

3. Fundamentals of Generative Adversarial Nets

4. Fundamentals of Variational Auto Encoder

5. Introduction of Advanced Generative AI Models: Diffusion and Transformers

Part III – Generative AI for Physical Networking and Communication Theory

6. Generative AI for Channel Modeling and Estimation

7. Generative AI for Integrated Sensing and Communications

8. Generative AI for Spectrum Sensing and Coverage Estimation

Part IV – Generative AI for Data Transmission and Communication Architecture

9. Generative AI for Joint Source and Channel Coding

10. Generative AI for Data-Oriented Communications

11. Generative AI for Semantic and Task-Oriented Communications

Part V – Generative AI for Distributed Networking and Edge Computing

12. Generative AI Empowered Federated Learning

113. Generative AI for Mobile Edge Computing

Part VI – Generative AI for Emerging Technologies and Applications

14. Generative AI and Digital Twin

15. AI-Generated Content Service

16. Trustworthy Generative AI for Wireless Communications

17. Data Management for Generative AI in Wireless Communications

Part VII – Conclusion

18. Summary, Insights and Future Directions

Product details

  • Edition: 1
  • Latest edition
  • Published: July 1, 2026
  • Language: English

About the editors

SZ

Songyang Zhang

Dr. Songyang Zhang received the Ph.D. degree from the Department of Electrical and Computer Engineering at the University of California, Davis, CA, USA. He is currently an Assistant Professor in the Department of Electrical and Computer Engineering at the University of Louisiana at Lafayette, Lafayette, LA, USA.

Affiliations and expertise
University of Louisiana, Lafayette, USA

SZ

Shuai Zhang

Dr. Shuai Zhang received his Ph.D. degree from the Department of Electrical, Computer, and Systems Engineering at Rensselaer Polytechnic Institute (RPI) in 2021. He is currently an Assistant Professor in the Ying Wu College of Computing at the New Jersey Institute of Technology (NJIT), NJ, USA.

Affiliations and expertise
New Jersey Institute of Technology, USA

CH

Chuan Huang

Prof. Chuan Huang received his Ph.D. degree from the Department of Electrical and Computer Engineering at Texas A&M University, College Station, TX, USA, in 2012. He is currently a Professor in Shenzhen Institute for Advanced Study at University of Electronic Science and Technology of China, Shenzhen, China.

Affiliations and expertise
The Chines University of Hong Kong, Shenzhen, China