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machine learning applications. Position Objective : The primary focus of this position is to develop concentration inequalities in the nonstationary setting, specifically for periodic Markov chains and
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learning this approach will be part of the project. Website for additional job details https://emploi.cnrs.fr/Offres/CDD/UMR7358-LYDFRA-010/Default.aspx Work Location(s) Number of offers available1Company
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Complexity; Quantum Information and Quantum Learning. The successful candidate will work closely with Augustin Vanrietvelde and his team on the topics of quantum foundations, quantum reference frames and
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-criteria, defining their formalization as fuzzy subsets, and characterizing their uncertainty; Integrating Machine Learning algorithms to better account for low-level sensor data (precipitation, wind-driven
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the University of Poitiers as well as collaborators in France and abroad. The post-doc will have the possibility to interact and learn from scientists from these diverse backgrounds. We are looking for motivated
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, alongside a demonstrated capacity to acquire new methodological skills. - Project Management Skills : Experience coordinating multidisciplinary projects and managing team activities, including interns and
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Description Conduct a part of the ANR MetaTime (setting-up experiments, acquisition and processing of data, writing scientific reports) • Perform a review of the existing litterature on the topics • Acquire
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. Creativity Cross-functional skills. Ability to learn new technologies/languages. Bibliographic monitoring Website for additional job details https://emploi.cnrs.fr/Offres/CDD/UMR5239-CHRCHA-003/Default.aspx
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dimensional information, classification and/or deep learning methods may also be developed. In addition, the complementarity between the different data sources used (particularly between aerial LiDAR data and
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in the area of scientific computing and Computational Fluid Dynamics. Prior Experience in turbulence modelling, machine learning or the Lattice Boltzmann method is an advantage. Operational skills