Machine learning at the wireless edge | ITU Journal | Webinar
Wireless networks can be used as platforms for machine learning, taking advantage of the fact that data is often collected at the edges of the network, and also mitigating the latency and privacy concerns that backhauling data to the cloud can entail. This webinar will present an overview of some results on distributed learning at the edges of wireless networks, in which machine learning algorithms interact with the physical limitations of the wireless medium. Two topics will be considered: federated learning, in which end-user devices interact with edge devices such as access points to implement joint learning algorithms; and decentralized learning, in which end-user devices learn by interacting in a peer-to-peer fashion without the benefit of an aggregating edge device. Open topics for future research will also be discussed briefly.
WISDOM CORNER: LIVE LIFE LESSONS
Participants will have the chance to hear from Professor Poor about his impactful life lessons over the years as well as his advice to young researchers in the field of information and communication technologies.
This Webinar is organized by the @itutelecommunication Journal on Future and Evolving Technologies (ITU J-FET), an international journal providing complete coverage of all communications and networking paradigms, free of charge for both readers and authors. The ITU Journal considers yet-to-be-published papers addressing fundamental and applied research. Open topics for future research will be discussed. See more information on the ITU Journal webinar series and the open Calls for Papers for the upcoming ITU Journal’s issues here.
Read the ITU Journal on Future and Evolving Technologies (ITU J-FET) here:
https://www.itu.int/en/journal/j-fet/Pages/default.aspx
Explore the full ITU Journal webinar series here:
https://www.itu.int/en/journal/j-fet/webinars/Pages/default.aspx
Opening remarks:
Chaesub Lee, Director of the Telecommunication Standardization Bureau, International Telecommunication Union (ITU)
Ian F. Akyildiz, Editor-in-Chief, ITU Journal on Future and Evolving Technologies (ITU-J FET)
Speaker:
Vincent Poor, Michael Henry Strater University Professor, Princeton University
Moderators:
Vishnu Ram OV, Independent Research Consultant
Alessia Magliarditi, ITU Journal and ITU-T Academia Coordinator, International Telecommunication Union (ITU)
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The views and opinions expressed are those of the panelists and do not reflect the official policy of the ITU.
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