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Team : We seek a researcher with demonstrated experience in perturbative modeling of LSS (in particular biased tracers of dark matter), analysis of simulated datasets, and strong programming in Python
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deformation behaviors. This will be supported by numerical simulations developed by the LEM where nanoindentation simulations at the atomic scale will be performed by Molecular Dynamic (MD) as well as finite
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optimize deep learning models, trained for the reconstruction of events generated with this simulation framework and targeting their application on a distributed trigger system based on several processing
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experiments on model aeronautical fuels to measure the products formed in this process and will develop analytical methods to monitor the kinetics. Main activities: - Bibliographic research, - experimental
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Research Framework Programme? Not funded by a EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description Modelling the oil market: A first output of this project
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. The approach combines theoretical developments, experimental observations and advanced modeling. More and more technologies, implemented in nowadays devices or foreseen in next-generation ones, are or will be
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charged GAGs which, when combined with collagen, produce an osmotic effect. The fluid-structure interaction will be modelled as a homogenised continuous medium within the framework of poromechanics, while
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collaboration with Michelin, is to develop surrogate models capable of rapidly approximating the simulator's results while accounting for uncertainty. Particular attention will be paid to the model's lightness
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. * Design numerical simulations of 2-D dike propagation coupling viscous flow and fracturing of elastic host rocks, building on existing frameworks for modeling hydrofractures. * Implement boundary conditions
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), whose objective is to extend the HLA-Epicheck model, originally developed within the framework of a PhD thesis, and to implement new deep learning approaches to assess donor–recipient compatibility in