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around 30 doctoral and postdoctoral students. The position is in a sector subject to the protection of scientific and technical potential (PPST) and therefore, in accordance with regulations, requires your
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, along with approximately 20 to 22 PhD students and postdoctoral researchers. The laboratory is located at IRCOF in Rouen (CNRS, University, and INSA of Rouen), France. The IRCOF hosts around 60 CNRS
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interaction models to thermal boundary layers requires collaborating with the PhD student, who will undertake direct numerical simulations (DNS) using in-house codes to analyse heat transfer enhancement under
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adapted to the probing of these volatile components. Computation using the DEW (Deep Earth Water) code is mandatory. For each equipment, we have topnotch technical support at ISTO as well as in
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the models developed and identify the main technical obstacles to be overcome for future industrial implementation. 7. Improvement of the internal code for simulating thermodynamic cycles. The existing
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candidate will use the 'Phase_Field' code developed within the GPM UMR 6634 modeling team. - Writing of scientific publications. GPM (Materials Physics Group, UMR CNRS 6634) is organized in 5 departments
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. Activities: Development of mathematical models. Development of probabilistic inference algorithms. Code implementation, with a particular focus in Julia. Method validation. Application of models on curated
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pumping Expected skills: - degree in Physics and Master's degree, awarded at the latest by the starting - an excellent academic record and strong motivation - good practical and coding skills, a commitment
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be open, transparent, and merit-based, fully aligned with the Code of Conduct for the Recruitment of Researchers. The selection will be based on the quality of applications and gender balance will also
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. • Demonstrated skills in bioinformatic and statistical analyses of microbiome and ecological data including sequencing data. • Analysis skills: write and execute code in R, Python, GitHub etc., high-performance