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) and Chemical C Computational (CC) teams at UM6P. The work aims to develop robust computational models to capture the Multiphysics behavior— including fluid flow, heat transfer, and reaction dynamics
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. Computational tools for simulating such processes - both traditional based e.g. on computational fluid dynamics and more recent based on AI/machine learning - constitute fundamental scientific domains that act as
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Computational Fluid Dynamics (CFD) solvers into Python-based AI frameworks (e.g., PyTorch, JAX) to enable high-efficiency, scalable simulations of aerosol transport systems. The developed model will incorporate
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for buildings and district heating systems Smart control systems for heat storage and energy systems Computational fluid dynamics and system simulation for design optimization Experience with experimental
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leading group in high-order methods: a class of finite element methods that is now leading the way for future computational fluid dynamics simulations. Specifically, our group develops the Nektar++ spectral
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. in Aerospace Engineering, or a related area of study; extensive experience in high-fidelity computational fluid dynamics using supercomputers with system identification, reduced order modeling and
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Specific Requirements Requirements for candidates: Hold a Engineering, Graduate or Bahcelor’s degree. - Knowledge of computational mechanics - Knowledge of computationl fluid dynamics. - Knowledge of linear
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substantially equivalent knowledge in some other way. Good oral and written proficiency in English is required. The candidate is expected to have good numerical programming skills and knowledge of fluid dynamics
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the courses attended on the following topics: Analysis of Partial Differential Equations, Continuum Mechanics and Fluid Dynamics, Functional Analysis, Numerical Analysis, Probability and Stochastic Processes
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PhD Research Fellow in ML-assisted reservoir characterization/modelling for CO2 storage (ref 290702)
Deadline 31 Dec 2025 - 23:00 (Europe/Oslo) Type of Contract Temporary Job Status Full-time Hours Per Week 37.5 Is the job funded through the EU Research Framework Programme? Not funded by a EU programme Is