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, He earned his Master's Degree in Mathematics, Computing and Applications at the Université Grenoble Alpes. He is interested in data science and statistics as applied to the health sciences, AUTHOR BIOGRAPHY Nassim Sahki is Phd Student in Applied Mathematics and Statistics at the Université de Lorraine

, She received her PhD in mathematics at the Université de Provence. Her research area is mathematical statistics, modelling with application to reliability and life science. She is the head of the Inria team BIology Genetics and Statistics (BIGS), She is member of European Network for Business and Industrial Statistics (ENBIS)

, She received her PhD in Applied Mathematics at the Université de Lorraine, on Stochastic Differential Equations. Her current research interests are Applied Statistics, in particular applications to medical topics. She belongs to the Inria team BIGS. She is a member of the European Network for Business and Industrical Statistics (ENBIS)