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for modeling combustion of NH3 & CH3OH, including pollutant formation (CNRS, POLIMI) Supervisor: Benoit Fiorina (CNRS) Where to apply E-mail desire-project@polimi.it Requirements Research FieldEngineering
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of turbulent flames in distributed combustion regime via a hybrid RANS (Reynolds averaged Navier Stokes approach) / LES (Large Eddy Simulation) formulation (CNRS, ULB) Supervisor: Denis Veynante (CNRS) Where
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), via the EM2C Laboratory, a CNRS research unit located at CentraleSupélec. Politecnico di Milano (POLIMI) will co-host the research. The research will be supervised by Prof. Ronan Vicquelin (UPS), Dr
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Europe | about 1 month ago
-light scattering on coupling in MCFHost institution: CNRS-PhLAM, FranceSupervisors: Prof. L. Bigot (CNRS-PhLAM), Prof. Y. Quiquempois (CNRS-PhLAM)DC 4 – OpenProject Title: Innovative MCF amplifier
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Hadermann, the support and MEMS fabrication will be done at CNRS Caen under guidance of Prof. Dr. Mathieu Denoual. The preferred starting date is 1 December. General You will prepare a doctoral thesis in the
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models. TensorFlow or PyTorch is desirable. How to apply To apply, please ensure you have digital copies of the below information: • Curriculum vitae; encompassing any research presentations and/or
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elicitation. Integrated in an international team of collaborators (CCMAR PT, CNRS FR, GEOMAR DE & NORD NO), combining expertise in kelp cultivation, defense elicitation, the kelp microbiome, ‘omics and
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for a cause or cure for IBD. The award is designed for candidates at an early stage in their careers, for example (but not confined to) graduates in any health care discipline or science who are seeking
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the PhD thesis in either language, English or German. Full-time / part-time full-time Mode of study Hybrid Programme duration 6 semesters Beginning Only for doctoral programmes: any time Additional
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government background checks (allow for between 4 to 8 weeks) and complete any other CSIRO requirements. Selection criteria To be eligible applicants must: Have a basic understanding of machine learning