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The MALICE Inria project team

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raw text

MALICE Toggle navigation About (current) Blog Bibliography Publications Team MALICE MAchine Learning with Integration of surfaCe Engineering knowledge Lab. Hubert Curien UMR CNRS 5516 Saint-Etienne, FRANCE The goal of the MALICE Inria project-team is to combine the interdisciplinary skills present at the Hubert Curien laboratory in statistical learning and laser-matter interaction to foster the development of new joint methodological contributions at the interface between Machine Learning and Surface Engineering. Axis 1: Theoretical frameworks when learning from data and background knowledge Axis 2: Integration and extraction of knowledge in surface engineering Axis 3: Domain generalization and transfer learning for surface engineering As such, MALICE is inherently rooted at the crossroads of Applied Mathematics, Statistical Learning Theory, Optimization, Physics and Differentiable Simulation. news Mar 26, 2024 Official visit for the start of the ...

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