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to turbulence, and wall shear stress, with direct relevance to cardiovascular flows. The research work will be primarily experimental and will involve laboratory studies of pulsatile pipe flows in straight
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reactions. The recruited QUANTASTIC PhD student will: -Contribute to the development of an experimental setup, -Develop and evaluate different kinetic models, including runaway scenarios, -Work in close
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computing. Person specification. The successful candidate must have: • A master's degree in physics, Engineering, Material Sciences or related areas. • Demonstrate a keen interest in pursuing experimental
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on a resolvent formulation of the Boundary Element Method. He/she will apply this tool to perform the shape optimisation of a landing gear. He/she will then carry out the experimental validation
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University and a second one at Aix-Marseille University. The results will be correlated to experimental (IR and EPR spectroscopic data) and theoretical results (magnetic properties calculation) obtained in
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of experimental data. - Presentation of the progress of the work and results at laboratory/consortium meetings and at national and international scientific conferences. - Contribution to the writing of activity
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ranging from fundamental thermodynamic requirements to practical experimental demands, for future large-scale quantum computers. The role of physical resources in quantum error correction will likely be
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, combining theoretical (DFT modeling) and experimental approaches. - Study of reaction mechanisms: Identify key intermediates and reaction pathways that promote the formation of C–C bonds, using in situ
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, metabarcoding / metagenomics) • Excellent organizational skills for research activities: optimization of experimental protocols, data compilation and management • Ability to generate reliable, high-quality data
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the experimental foundation and enables quantitative evaluation. Representation learning with physics-guided data augmentation and adaptation: Design of self-supervised learning strategies to learn shared and