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, Dario Bega is a research assistant with IMDEA Networks Institute in Madrid and a Ph.D. student in Telematic Engineering at University Carlos III of Madrid (UC3M). He received his B.Sc (2010) and M.Sc (2013) degrees in Telecommunication Engineering from the University of Pisa, Italy. His research work focuses on wireless networks, multitenancy and machine learning approaches for 5G

, Marco Gramaglia is a post-doc researcher at University Carlos III of Madrid (UC3M), where he received M.Sc (2009) and Ph.D (2012) degrees in Telematics Engineering. He held post-doctoral research positions at ISMB (Italy), the CNR-IEIIT (Italy) and IMDEA Networks (Spain). He was involved in EU projects and authored more than 40 papers appeared in international conference and journals

M. Fiore, He was associate professor at INSA Lyon, (France), associate researcher at Inria (France), visiting researcher at Rice University (USA) and UPC, (Spain), and visiting research fellow at UCL (UK), S'05, M'09, SM'17) is a researcher at CNR-IEIIT (Italy) a Royal Society visiting research fellow, and a Marie Curie fellow

, Since 2003 he is with the University Carlos III of Madrid, Spain, where he is currently Full Professor and has a double affiliation as Deputy Director of the IMDEA Networks institute. Prof. Banchs has served in many conference TPCs, Albert Banchs (M'04-SM'12) received his M.Sc. and Ph.D. degrees from the Polytechnic University of Catalonia (UPC-BarcelonaTech) in 1997 and 2002, respectively. He worked at ICSI, 1997.