Sort by
Refine Your Search
-
Category
-
Employer
-
Field
-
programme aims to advance fundamental understanding of heat transfer and turbulence physics in wall-bounded flows through numerical simulations, data-driven modelling, and machine learning techniques. Key
-
intelligence called hybrid AI, integrating data driven learning techniques and symbolic or mathematical models that permit us to express constraints and to carry out logical reasoning. ANITI also has ambitious
-
your arrival. The EM2C laboratory is seeking a highly motivated candidate for a PhD in data-driven, physics-informed, and probabilistic modeling of turbulent combustion. The PhD work will combine
-
of heat transfer and turbulence physics in wall-bounded flows through numerical simulations, data-driven modelling, and machine learning techniques. Key goals include optimising convective heat transfer
-
on the integration of solar systems across spatial scales, linking resource characterisation, building physics, and data-driven modelling. The research is conducted in close connection with the INES platform (Institut
-
the formation of rocks and determine the mechanical properties of many engineered materials, making them a key area of research in both Earth Science and Metallurgy. When subjected to changes in environmental
-
particle detectors, as well as technical research and development and associated applications for energy, health, and environment. The laboratory has important technical staff (approximately 280 engineers