30 machine-learning "https:" "https:" "https:" "https:" "https:" "https:" "https:" "Simons Foundation" scholarships at CNRS in France
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carried out under high voltage at LAAS to demonstrate the advantages of these new devices. Where to apply Website https://emploi.cnrs.fr/Candidat/Offre/UMR7073-MICPEF-095/Candidater.aspx Requirements
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with experimental groups that will study a physical realization of the qubit will be part of the project. Where to apply Website https://emploi.cnrs.fr/Candidat/Offre/UMR5798-FABPIS-015/Candidater.aspx
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, soil, and plants aid in the collection of real-time data directly from the ground. Based on these historical data predictive machine learning (ML) algorithms that can alert even before a problem occurs
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Flows in Geometrically Complex Systems Where to apply Website https://emploi.cnrs.fr/Candidat/Offre/UMR7010-ATUVAR-001/Candidater.aspx Requirements Research FieldPhysicsEducation LevelPhD or equivalent
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gas analysis, a GC/MS, and an HPLC/MS. DFT calculations will be performed using annual allocations on national high-performance computing centers. More details here: https://iramis.cea.fr/en/nimbe/lcmce
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, autonomy, rigor and taste for teamwork Where to apply Website https://emploi.cnrs.fr/Candidat/Offre/UPR3407-ARMMIC-001/Candidater.aspx Requirements Research FieldEngineeringEducation LevelMaster Degree
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. Where to apply Website https://emploi.cnrs.fr/Candidat/Offre/UMR5217-MAGRIC-001/Candidater.aspx Requirements Research FieldBiological sciencesEducation LevelMaster Degree or equivalent Research
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of the project (https://anr.fr/projet-ANR-24-CE28-5107 ). Main Tasks • Development of a research axis: The recruited researcher will be responsible for leading the research axis focusing on the relationship
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Cellular-Resolution Imaging Where to apply Website https://emploi.cnrs.fr/Candidat/Offre/UMR7587-PEDBAR-008/Candidater.aspx Requirements Research FieldEngineeringEducation LevelPhD or equivalent Research
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point-based PhorEau projections using a machine-learning model predicting tree species richness as a function of spatially explicit abiotic and biotic covariates, including satellite-derived data