• IEEE.org
  • IEEE CS Standards
  • Career Center
  • About Us
  • Subscribe to Newsletter

0

IEEE-CS_LogoTM-orange
  • MEMBERSHIP
  • CONFERENCES
  • PUBLICATIONS
  • EDUCATION & CAREER
  • VOLUNTEER
  • ABOUT
  • Join Us
IEEE-CS_LogoTM-orange

0

IEEE Computer Society Logo
Sign up for our newsletter
IEEE COMPUTER SOCIETY
About UsBoard of GovernorsNewslettersPress RoomIEEE Support CenterContact Us
COMPUTING RESOURCES
Career CenterCourses & CertificationsWebinarsPodcastsTech NewsMembership
BUSINESS SOLUTIONS
Corporate PartnershipsConference Sponsorships & ExhibitsAdvertisingRecruitingDigital Library Institutional Subscriptions
DIGITAL LIBRARY
MagazinesJournalsConference ProceedingsVideo LibraryLibrarian Resources
COMMUNITY RESOURCES
GovernanceConference OrganizersAuthorsChaptersCommunities
POLICIES
PrivacyAccessibility StatementIEEE Nondiscrimination PolicyIEEE Ethics ReportingXML Sitemap

Copyright 2026 IEEE - All rights reserved. A public charity, IEEE is the world’s largest technical professional organization dedicated to advancing technology for the benefit of humanity.

  • Home
  • /Profiles
  • Home
  • /Profiles

Yan Zhang

2023-2025 Distinguished Visitor

Featured Image

Professor Yan Zhang, IEEE Fellow,  is currently a Full Professor at the Department of Informatics, University of Oslo, Norway. He received a Ph.D. degree in School of Electrical & Electronics Engineering, Nanyang Technological University, Singapore. His current research interests include: 6G networks, Internet of Things (e.g., transport, smart grid). His works in these areas have received more than 35000+ citations and H-index 98. He received the prestigious award Clarivate Analytics (previously Thomson Reuters) "Highly Cited Researcher" since 2018. He is IEEE Fellow, IET Fellow, an elected member of Academia Europaea (MAE), an elected member of Royal Norwegian Society of Sciences and Letters Academy (DKNVS), and an elected member of Norwegian Academy of Technological Sciences (NTVA).   He serves as the Chair of IEEE ComSoc TCGCC (Technical Committee on Green Communications & Computing) during 2021-2023 and 2019-2021. He is IEEE VTS (Vehicular Technology Society) Distinguished Lecturer for two terms (2016-2018 and 2018-2020). He served as a symposium/track/general chair in many conferences, including IEEE/ACM IWQoS 2022, IEEE ICC 2021, IEEE SmartGridComm 2021, IEEE Globecom 2017, IEEE PIMRC 2016, and IEEE SmartGridComm 2015. He is currently serving as an Area Editor/Editor/Associate Editor of several top-ranked IEEE Transactions/Magazines: IEEE Transactions on Wireless Communications, IEEE Network Magazine; IEEE Transactions on Network Science and Engineering; IEEE Transactions on Industrial Informatics; IEEE Transactions on Sustainable Computing; IEEE Transactions on Vehicular Technology; IEEE Transactions on Green Communications and Networking; IEEE Internet of Things Journal; IEEE Systems Journal; IEEE Vehicular Technology Magazine.

https://folk.universitetetioslo.no/yanzhang/

DVP term expires December 2025


Presentations

Digital Twin

In this tutorial, we will present basic concepts related to digital twin and key enabling technologies with respect to communications, computation, machine learning, and cyber-physical optimization. We will first introduce the main concepts and challenges related to Digital Twin (DT) and we will provide a thorough perspective on why and how DT can be adapted for different applications. Then, we present a novel scenario DITEN (Digital Twin Edge Networks) and the research challenges related to offloading and edge association. In this scenario, we will focus on resource allocation, system models and optimization problems, and various offloading and edge association techniques. Next, we will present DT and machine learning to add intelligence and present our ideas on utilizing deep learning (deep reinforcement learning, federated learning) for low-latency, privacy-preservation, energy-efficiency and Quality-of-Service.

Vehicular Edge Computing and Networks

We first created the term and the research field "Vehicle Edge Computing (VEC)" in 2017, which is currently the most active research area in Internet of Vehicles. In this tutorial, we will first present the key concepts and main principles related to vehicle edge computing. Then, we will present the recent studies on computation offloading, edge caching, joint design and Blockchain for VEC. Different optimization and machine learning approaches have been exploited to address key challenges, including game theory, federated learning and deep reinforcement learning. Open research issues will be also pointed out throughout the talk.

Edge Intelligence

In this tutorial, we will present basic concepts related to edge intelligence and key enabling technologies with respect to communications, computation, machine learning, deep learning and cyber-physical optimization. We will first introduce the main concepts and challenges in the future-generation wireless mobile networks. Then, we will provide a thorough perspective on how mobile edge computing concepts can be adapted for the future networks. In this scenario, we will focus on resource allocation, models and optimization problems, and various offloading and caching techniques. Next, we will extend mobile edge computing to edge intelligence and present our ideas on utilizing deep reinforcement learning (deep Q-learning, DDPG) for data transmission, offloading and content distribution in different scenarios, e.g., intelligent transport systems.

Presentations
  • Vehicular Edge Computing and Network
  • Digital Twin
  • Edge Intelligence

 

LATEST NEWS
Behind the Scenes: How SC Volunteers Power One of the World’s Fastest Growing Conferences and Trade Show
Behind the Scenes: How SC Volunteers Power One of the World’s Fastest Growing Conferences and Trade Show
Computing’s Top 30: Bo Han
Computing’s Top 30: Bo Han
From Clicks to Conversations: How HCI Is Evolving in an AI-First World
From Clicks to Conversations: How HCI Is Evolving in an AI-First World
The AI Adoption Gap: Why Enterprise AI Fails After Deployment
The AI Adoption Gap: Why Enterprise AI Fails After Deployment
Inspiring Tomorrow’s Innovators: IEEE CS Juniors TechXperience Kenya 2026
Inspiring Tomorrow’s Innovators: IEEE CS Juniors TechXperience Kenya 2026
Read Next

Behind the Scenes: How SC Volunteers Power One of the World’s Fastest Growing Conferences and Trade Show

Computing’s Top 30: Bo Han

From Clicks to Conversations: How HCI Is Evolving in an AI-First World

The AI Adoption Gap: Why Enterprise AI Fails After Deployment

Inspiring Tomorrow’s Innovators: IEEE CS Juniors TechXperience Kenya 2026

Parallel Systems, Leadership, and Research Strategy in Computing: an Interview with Jean-Luc Gaudiot

Top HCI Trends in 2026: The Rise of AI Agents and Invisible Interfaces

From CMDB to Dynamic Digital Twins: Lessons Learned in Building Enterprise Digital Brains

Get the latest news and technology trends for computing professionals with ComputingEdge
Sign up for our newsletter