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finite-difference resolvent solver incorporating stabilising filters as well as a domain-decomposition strategy suitable for complex geometries, - Use efficient time-integration methods to compute
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of the optimised geometries in the anechoic wind tunnels of Institut PPRIME, using source localisation systems based on microphone arrays. UPR 3346, Pprime Institute, is a CNRS unit under a specific agreement with
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, including, but not restricted to, geometry or shape optimization, parameter optimization, or multi-objective optimization. · Strong programming skills (e.g. Python, C/C++, R or similar) and experience
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Carl von Ossietzky Universität Oldenburg | Oldenburg Oldenburg, Niedersachsen | Germany | 10 days ago
, the project aims to uncover the molecular mechanisms underlying the differential vulnerability of cochlear and vestibular systems and relate these mechanisms to clinical disease trajectories. Tasks include
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commissioning of experimental hardware Running and processing concept geometries Comparison with CFD or other low-order design methods Determining underlying three-dimensional flow mechanisms Writing research
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of Iowa is soliciting applications for a Postdoctoral Research Scholar position in Geometry and Topology. This position is full time 12-month appointment that is renewable up to 3 years, starting
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on band geometry and strong correlations (e.g. fractional Chern insulators) and connections to experimentally relevant moiré platforms Main responsibilities The position involves research in topology in
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nutrients with the soil through adaptive root and fungal networks. The successful candidate will design and implement a modelling framework based on Partial Differential Equations (PDEs) to represent
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differentiable programming techniques. The selected candidate will be expected to publish findings in scientific journals, present results at international conferences, and contribute to dedicated working groups
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learning - deep neural network, recurrent neural network, LSTM Optimization theory Stochastic geometry Strong programming skills in at least one of the following: MATLAB, Python, JULIA or C++ Language