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Field
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) at multiple microwave frequencies. This work will be complemented by the systematic quantitative analysis of experimental data through spectral simulation, in combination with the use of various substrates
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called ANTARES which is used by the CEA-Itésé and NaTran teams to model the European power system. The project includes the development of a European-scale model, based on a combination of REMix and
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to develop an innovative individualized neurofeedback software suite for ADHD remediation, combining fMRI and EEG. The postdoctoral researcher will work closely with imaging engineers (CERMEP), ADHD clinical
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An unprecedented model in France combining a university, a university hospital (CHU de Nantes), a technological research institute (IRT Jules Verne), a national research organization (Inserm) and the Grandes Écoles
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Description Rationale: Rising CO2 and temperature combined with changes in water availability will modify terrestrial ecosystem photosynthetic uptake and respiratory losses in the near future, but it still
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Vision Profiler (UVP), and to analyse its spatial and temporal variability. This will be done by combining different data sources and machine learning (ML). Data used for this ML approach include - a
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electrogravimetric response. To do this, we will implement a multi-stage approach, combining the development of model electroactive materials, their physico-chemical characterisation, and the advanced exploitation
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architectures capable of combining data from morphological MRI (T1, T2, FLAIR) and MRS (metabolic spectra) for better tumor characterization. 2. Design predictive models of tumor growth over time, integrating
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aerosol properties by combining global satellite observations from DARDAR-Nice and EarthCARE with reanalysis aerosol products. Using Lagrangian transport modelling tools such as FLEXPART and CLaMS-Ice, the
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cataloguing of relevant case studies, combining satellite observations, reanalyses, and geostationary imagery to track the formation and evolution of cirrus under strongly perturbed conditions. Building