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through the EU Research Framework Programme? Not funded by a EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description Remuneration: 580€ net/month; Duration:6
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et la productivité dépendent de dynamiques complexes de compétition interne pour les ressources. Cependant, leur adoption reste limitée par la difficulté à paramétrer ces modèles à partir de données
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the approximation over time, (2) Energy-based optimization that balances accuracy and mesh complexity, or (3) Graph-based techniques that seek near-optimal connectivity structures for mesh representation. • Recent
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of launches of small satellites. However, these missions are increasingly complex, requiring a propulsion system in the satellite to control its trajectory in a durable, accurate and reliable manner. Electric
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experimental approaches to characterize the Dorsal Diencephalic Conduction system (DDC), a neuronal network mediating the development of aversive internal emotional states in response to negatively-valued
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· Contribute to a life cycle analysis Your activities The engineer's main activities will be carried out in close collaboration with the project partners: · Energy measurement experiments in a private 5G network
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imaging. It will: • establish a robust methodology for fine-grained comparison of complex embryonic morphologies, • design neural networks adapted to the specific challenges of 3D+time microscopy, • provide
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for separate neural networks, reducing computational complexity and improving the overall efficiency of autonomous navigation.
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on efficiency in surface, power consumption, and computing performance. Vision Transformers (ViTs) have recently demonstrated superior performance over Convolutional Neural Networks (CNNs) in a wide
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Research FieldPhysics » Applied physicsEducation LevelMaster Degree or equivalent Skills/Qualifications Cryoporometry, NMR relaxation, pore network structure LanguagesENGLISHLevelGood