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language is an asset. During the interview, your motivation for applying to this role will be explored. Knowledge and background in Computational Fluid Dynamics (CFD) and programming (e.g. C++, Python) is an
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/ProvinceBarcelonaCityTerrassaPostal Code08222StreetColom, 1Geofield Contact State/Province Barcelona City Barcelona Website https://www.upc.edu/ Street C. Jordi Girona, 31 Postal Code 08034 E-Mail personalinvestigador.sp@upc.edu
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://doi.org/10.1680/jgeot.17.P.161 [6] Sanvitale N., Zhao B., Bowman E. & O’Sullivan C. (2021) Particle-scale observation of seepage flow in granular soils using PIV and CFD. Géotechnique. https://doi.org
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computational fluid dynamics (CFD) and computer-aided design (CAD) software. They should also be prepared to engage in both computational analysis and experimental testing as required. Essential criteria
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experienced by hypersonic vehicles and quantifying the overall uncertainty. The candidate will assume the role of a software developer in the Computational Fluid Dynamics (CFD) and Propulsion Laboratory, a
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/ProvinceMurciaCityCartagenaPostal Code30202StreetCampus Muralla del Mar, C/ Dr. Fleming s/n Contact State/Province Murcia City Cartagena Website http://www.upct.es https://industriales.upct.es/ https://hrs-researcher.upct.es/ Street
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/Qualifications Technical Skills: Heat and mass transfer, CFD&HT. Programming with C++. Linux. Other requirements to consider: Teamwork. Communication skills. Specific Requirements Educational Requirements
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dispersion. Yet conventional Computational Fluid Dynamics (CFD) workflows rely on watertight geometric models and volumetric meshes that are slow, complex, and costly to produce. Within the POINT-TWINS project
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(especially optical measurement techniques) or willingness to acquire these skills Familiarity with computational fluid dynamics (CFD), ideally including turbulence modeling, multiphase flow, or population
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applications. To achieve this, you will employ computational fluid dynamics (CFD) and machine learning (ML) to investigate degradation mechanisms under various operating conditions and develop strategies