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Inria, the French national research institute for the digital sciences | Pau, Aquitaine | France | 27 days ago
are well known: Poor performance on complex geometries and topography. High numerical dispersion for high-frequency modeling. Difficulty in coupling with adaptive meshes. High-order spectral finite element
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Inria, the French national research institute for the digital sciences | Pau, Aquitaine | France | about 2 months ago
continuous/discontinuous Galerkin spectral finite element solver for seismic wave simulation, with applications in subsurface imaging and CO₂ monitoring. The project combines the efficiency of continuous
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Eligibility criteria Numerical analysis and finite element method Solving anisotropic problems Website for additional job details https://emploi.cnrs.fr/Offres/CDD/UMR7340-SOPBAU-024/Default.aspx Work Location
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jelly membrane through finite element analysis, in: Proceedings of SB2024. Compiégne, France. Da Rocha, A., Chatelin, S., Po, C., Laurent, C., Perroud, O., Kerdjoudj, H., Mauprivez, C., Baldit, A., 2025a
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of the fabricated fibers within optical networks. - Design of innovative hollow-core fiber structures using the finite element method. - Fabrication of specific optical fibers on a fiber drawing tower. - Linear
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differences, finite volumes, finite elements, spectral methods) - At least one experience in developing a numerical solver for a differential equation or in developing a diagnostic for a numerical simulation
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The successful candidate will hold a PhD in applied mathematics, and will have knowledge of PDE discretization methods such as finite elements, finite volumes, etc. Practical knowledge of at least one programming
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engineering, finite element modelling • Probability theory, stochastic process modelling, statistical tools • Artificial Intelligence and Machine learning approaches • Programming (python) A first experience
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on finite element models previously developed and validated within the laboratory. This will involve running parametric simulation campaigns, preparing computational cases, analyzing results, and structuring
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finite elements, finite volumes, etc. Practical knowledge of at least one programming language (preferably C++). English : level C2 _ All research exchanges will be in English Additional comments ERC