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AUTHORS’ BIOGRAPHIES
Dr. Olmer Garcia Bedoya is an associate professor at the School of Engineering of
the Universidad Jorge Tadeo Lozano in Colombia. He obtained his degree in
Mechatronics Engineering in 2005 at Universidad Militar Nueva Granada (UMNG) -
Colombia, a Master degree in Electronics Engineering at the Universidad de Los Andes
(2010) - Bogota, Colombia, and he obtained his Ph.D. degree in mechanical engineering
at the Campinas State University - Brazil in 2016. His current research interests are
autonomous vehicles, model predictive control, robotics, machine learning, automation,
and the internet of things.
Dr. Cesar O. Diaz graduated in Electrical Engineering at Universidad de Los Andes
in 2001. He obtained a MS in Electronic Engineering from Pontificia Universidad
Javeriana. He earned his Ph.D. in Computer Science from the University of Luxembourg
in Luxembourg (2014). Since 2002 he has been a professor and researcher in several
universities in Colombia until 2010. He did a postdoctoral research in Universidad de Los
Andes in 2015. He is currently a professor in Universidad Jorge Tadeo Lozano. His
research interests are in Future Generation Computer Systems, IoT, Big Data Analytics,
Big Data Infrastructure, Distributed Systems, Green and Cloud Computing, Energy-
efficient scheduling, and resource allocation on cloud computing.