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’ positions. Thanks to these tools, Num’Agnel aims to reduce uncertainty margins and ensure enhanced mo- nitoring, even in the physical absence of the farmer. This approach, based on artificial intelligence
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indicators, including uncertainty assessment • Development of automated scripts (model execution and comparison) • Production and recommendation of a global methodology for comparing spatial modeling of SERMs
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The successful applicant will carry out independent research and supervision activities in the field of Operations Research and Uncertainty Modeling. We are particularly interested in candidates working in
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implemented within an ensemble variational data assimilation system, enabling short-term forecasts based on sea ice concentration and thickness data while providing associated uncertainty estimates. In a second
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annihilation and propagating uncertainties from NN and NbarN N interactions, we will deliver validated nuclear inputs for experiments (PUMA/ALICE) and astroparticle applications. A dedicated work package will
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demonstrated background in scalable flood inundation modeling, Impact-based flood forecasting stormwater infrastructure design under uncertainty. We welcome applicants with recent PhDs and individuals seeking
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imaging configurations that minimize acquisition time and maximize measurement quality, (b) estimating measurement uncertainty due to camera defects, (c) accelerating 3D tomographic reconstruction from
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offers and actions on https://cluster-ia-enact.ai/ . You will work in a rare environment at the intersection of frugal AI, analog computing, reconfigurable electronics and THz imaging. The PhD is directly
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estimators. Provide uncertainty quantification of the resulting estimators. Deploy the results developed in the first stage for linear value-function estimation problems in reinforcement learning theory. Lay
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, BioM will unite ecology, statistics, and philosophy to improve the modelling and governance of biodiversity under uncertainty. The project develops process-explicit, hierarchical models that capture key