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Part of the ENBIS-26 Florence conference.
This half-day course is a joint initiative from ENBIS and ECAS (http://ecas.fenstats.eu/) which has provided courses since 1987 to achieve training in special areas of statistics for both researchers and teachers for universities and professionals in industry fields.
Yannig Goude (EDF, France)
This course focuses on adaptive machine learning tools for time series forecasting. Drawing on research developed at EDF R&D, we will cover interpretable machine learning methods, such as Generalized Additive Models (GAMs) and Kalman-filtered GAMs, designed to adapt to non-stationary contexts (e.g., data drift, structural breaks). The second part of the course explores modern approaches, including foundation models for time series and tabular data, as well as online expert aggregation methods.
We will discuss the theoretical foundations of these methods alongside practical examples (R and Python notebooks) using the following packages:
We will illustrate these methods using real-world datasets (electricity demand, renewable production, electricity prices). These datasets provide excellent examples of time-varying environments, reflecting longer-term changes in consumption habits and the increasing penetration of intermittent power generation.
This 4-hour applicative course will include about 1 hour of hands-on practice (notebook presentation).
Yannig Goude is a Senior Researcher at EDF R&D and an Associate Professor in the Mathematics Department at Université Paris-Saclay (France) where he currently teaches courses on machine learning and time series analysis. At EDF R&D, he works at the OSIRIS department (Optimization, Simulation, Risk, and Statistics). His research centers on statistical methods and machine learning for the energy sector, with specific interests in:
He has authored numerous papers in leading journals such as IEEE Transactions on Smart Grid and the Journal of the Royal Statistical Society, JASA, NeurIPS, ICML..
