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9 Jan 2026 Job Information Organisation/Company Université Savoie Mont Blanc Research Field Environmental science Mathematics Physics Researcher Profile First Stage Researcher (R1) Recognised
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fundamental and applied contexts. Using state-of-the-art laboratory facilities, we advance understanding of turbulent incompressible, compressible, and multiphase flows through coordinated research
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techniques such as tensile, compression, DSC/TGA, etc. as well as analysis of the data with good knowledge of possible errors. hands-on experience with alloy design strategies, including high-throughput
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FieldPhysicsYears of Research Experience4 - 10 Research FieldPhysicsYears of Research Experience4 - 10 Additional Information Website for additional job details https://academicpositions.com Work Location(s) Number
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Model. Int. J. Hydrog. Energy 2014, 39 (9), 4516–4530. https://doi.org/10.1016/j.ijhydene.2014.01.036.  ; [3] Carral, C.; Mele, P. Modeling the Original and Cyclic Compression Behavior of Non-Woven
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sample, such as a manuscript or a thesis chapter Reference requirements 3 required (contact information only) Apply link: https://aprecruit.ucmerced.edu/JPF02022 Help contact: snspersonnel@ucmerced.edu
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Old Dominion University Research Fountation | Norfolk, Virginia | United States | about 13 hours ago
of new positivity-preserving entropy stable spectral collocation schemes for simulation of 3-D compressible viscous flows on unstructured grids. Our department has a history of producing exceptionally
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of future Earth scenarios, for example “what if” scenarios; develop advanced embedding strategies and neural compression techniques to efficiently represent high-dimensional EO data for scalable learning and
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, including filament extrusion, compression molding, injection molding, and fused deposition modeling. This position requires the preparation of ISO/ASTM test specimens for mechanical (tensile and flexural