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, analysis (liquid and/or gas chromatograph-mass spectroscopy Fire Research 1. developing, using, and deploying multiscale fire testing and computational tools to reduce the fire hazard of building content
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, 2026 Offer Starting Date – July 1, 2026 Work location - Prague, Czech Republic Where to apply - recruitment@jh-inst.cas.cz MS-RADAM (“MultiScale phenomena in RAdiation DAMage”) is a European Doctoral
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position (m/f/d) in multiscale, multiphysics, mathematical modelling of plant morphogenesis as soon as possible. Description of the project Plant growth is a complex hydromechanical process in which cells
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of software to validate the integrity and durability of a nuclear power plant containment structure, based on a multiphysics-multiscale approach and data to build a digital twin. • Participate in consortium
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this project share conceptual similarities with adaptive network and multiscale modelling strategies used in other domains within the computational mechanics group of Prof. Stéphane Bordas (www.legato ‐team.eu
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on multiscale study of hydrogen embrittlement in steels. The primary mission of the postdoc is to support experimental efforts as well as large scale simulations by means atomistic simulations. Designing and
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of Community Multiscale Air Quality program (CMAQ), Sparse Matrix Operator Kerner Emissions program (SMOKE), Data Assimilation, Surrogate Tools, and other modeling skillsets. Instructions to Applicants: For full
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manufacturing processes. Crucially, it will link multiscale metamaterial design and manufacture to overcome degradation and variation in quality of sustainable feedstock, while meeting geometric part requirements
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obtained with PVD; (ii) theoretical and experimental studies of the behaviour of the microstructure and mechanical properties of deposited films in multiscale; (iii) evaluation of the effect of changing
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the complex multiscale nonlinear interactions at the origin of such extreme events. In this project, you will develop machine learning-based reduced-order models which can accurately forecast