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E. Maggiori, 15) received the Engineering degree in computer science from The same year he joined AYIN and STARS teams at Inria Sophia Antipolis- Méditerranée as a research intern in the field of remote sensing image processing, Since 2015, he has been working on his Ph.D. within TITANE team, studying machine learning techniques for large-scale processing of satellite imagery, 2014.