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P. Pinson-was-born-in-poitiers and F. , He received his applied mathematics MSc degree from the National Institute for Applied Sciences (lNSA Toulouse) He is currently a PhD student at the Center of Energy Studies of Ecole des Mines de Paris. His research interests include artificial intelligence and renewable energies