Learn to Communicate - Communicate to Learn
Deniz Gunduz -
Imperial College London
Abstract
Machine learning and communications are
intrinsically connected. The fundamental problem of communications,
as stated by Shannon, "reproducing at one point either exactly or
approximately a message selected at another point,” can be considered
as a classification problem. With this connection in mind, I will focus on
the fundamental joint source-channel coding problem using modern
machine learning techniques. I will introduce uncoded
"analog” schemes for wireless image transmission, and show their
surprising performance both through simulations and
practical implementation. This result will be used to motivate
unsupervised learning techniques for wireless image
transmission, leading to a "deep joint source-channel encoder”
architecture, which behaves similarly to analog transmission, and
not only improves upon state-of-the-art digital schemes, but also
achieves graceful degradation with channel quality, and
performs exceptionally well over fading channels despite not utilizing
explicit pilot signals or channel state estimation.
In the second part of the talk, I will focus on
distributed machine learning, particularly targeting wireless edge
networks, and show that ideas from coding and communication theories can
help improve their performance. Finally, I will introduce the novel
concept of "over-the-air stochastic gradient descent" for
wireless edge learning, and show that it significantly improves the
efficiency of machine learning across bandwidth and power limited wireless
devices compared to the standard digital approach that separates
computation and communication. This will close the circle, making another
strong case for analog communication in future communication systems.
Biography:
Deniz Gunduz received
his M.S. and Ph.D. degrees in electrical engineering from NYU
Polytechnic School of Engineering (formerly Polytechnic University)
in 2004 and 2007, respectively. After his PhD, he served as a postdoctoral
research associate at Princeton University, and as a
consulting assistant professor at Stanford University. He was a
research associate at CTTC in Barcelona, Spain until September 2012,
when he joined the Electrical and Electronic Engineering Department
of Imperial College London, UK, where he is currently a Reader (Associate
Professor) in information theory and communications, and leads the
Information Processing and Communications Lab.
His research interests lie in the areas of
information theory, machine learning and privacy. Dr. Gunduz
is an Editor of the IEEE Transactions on Green Communications and Networking,
a Guest Editor for the IEEE Journal on Selected Areas in Communications
Special Issue on “Machine Learning for Wireless Communications”, and
served as an Editor of the IEEE Transactions on Communications
(2013-2018). He is the recipient of the IEEE Communications Society
- Communication Theory Technical Committee (CTTC) Early Achievement Award in
2017, a Starting Grant of the European Research Council (ERC) in
2016, IEEE Communications Society Best Young Researcher Award for
the Europe, Middle East, and Africa Region in 2014, Best Paper Award
at the 2016 IEEE WCNC, and the Best Student Paper Awards at the 2018
IEEE WCNC and the 2007 IEEE ISIT. He is a co-chair of the 2019 London
Symposium on Information Theory, and previously served as the co-chair
of the 2016 IEEE Information Theory Workshop, and the 2012 IEEE
European School of Information Theory.