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Toggle navigation
Home
About MILCOM
About AFCEA
About IEEE ComSoc
Technical Track Chairs
Board Members
Unclassified Technical Program Chairs
Technical Program Committee
SIGNAL Magazine
ComSoc Magazines
Program
Agenda
Technical Program
Unclassified Technical Papers
Unclassified Technical Papers Schedule
Restricted Access Technical Program
Technical Panels
Tutorials
Continuing Education
Slide Template Download
Exhibitors & Sponsors
Exhibitor Listing
Sponsor Listing
Floor Plan
Corporate Opportunities
Why Demo & Sponsor
Exhibit Options/Rates
Sponsorship Opportunities
Exhibitor Login
Contact Us
2018 Event Coverage
Yanning Shen
University of Minnesota
Profile
Yanning Shen (S’13) received her B.Sc. and M.Sc degrees in Electrical Engineering from the University of Electronic Science and Technology of China, in 2011 and 2014, respectively. Since September 2014, she has been working towards her Ph.D. degree with the Department of Electrical and Computer Engineering, University of Minnesota. Her research interests include signal processing on graphs, network science and machine learning. She was a Best Student Paper Award finalist of the 2017 IEEE International Workshop on Computational Advances in Multi-Sensor Adaptive Processing. She was selected to participate in the 2017 Rising Stars in EECS Workshop at Stanford University, and she received the UMN Doctoral Dissertation Fellowship in 2018.
Sessions
Tutorial: Resilient and Scalable Interactive Learning
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