Where: Bldg. 9 Lecture Hall 2322 ≤ 154
Credit: 9
Description
The field of big data processing is currently percieved as a crucial tool for many scientific disciplines, including signal processing, finance, biology... Significant progress has been achieved in the development of a wide variety of algorithms for solving many problems in big data processing. This fast development was, however, contrasted by a lack of theoretical tools enabling performance assessment of these algorithms.
3-days course on big data processing
To allow for comparison between existing methods and to obtain better designs, theoretical analysis of alogrithms was needed. Recent works were able to make a compelling connection between theory of large dimensional random matrices and big data processing. This 3-day course will go beyond providing an overview of tools; from this theory to promoting their use for addressing problems in big data processing.
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Participant are encouraged to attend the lecture about “When random matrix Approach meet Machine learning on Thursday 25th January (12:30 – 13:30)
Jamal Najim
Jamal Najim is deputy head of the Computer Science laboratory at Université Paris-Est, France. He obtained his PhD in 2001 from Université Paris-Ouest, France. Prior to his current position, he worked as a senior scientist at Centre National de la Recherche Scientifique (CNRS). His research interests are in probability theory at large, and especially random matrices and applications to statistics and wireless communications.
Romain Couillet
Professor Romain Couillet currently works in the Laboratory of Signals and Systems at CentraleSupélec, University of ParisSaclay, France. His research interests are in statistics, signal processing, machine learning, wireless communications, graph theory, and random matrix theory. He is the recipient of several awards including the 2013 CNRS Bronze Medal, 2013 IEEE ComSoc Outstanding Young Researcher Award, 2011 EEA/GdR ISIS/GRETSI best PhD thesis award, and Valuetools 2008 best student paper award. He is also an IEEE senior member. Couillet has also co-authored the book, “Random matrix methods for wireless communications”.
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