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such as Euclid poses many modeling challenges. The COLIBRI ERC aims precisely to develop new theoretical and numerical tools to overcome one of these challenges: baryon modeling. The CDD will have two
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spectrographs with various spectral resolutions, operating from 0.5 to 28 µm. Our group has developed the Bayesian modeling tool FORMOSA (Petrus et al. 2023). It allows the inference of low-resolution (R = λ/Δλ
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Research Framework Programme? Not funded by a EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description Deep learning models, and in particular large language
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the parameterisations of aerosol optical properties in the ALADIN-CLIMAT model. Data exploitation: - Writing scientific articles for publication in high-impact international journals. - Presenting results at project
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FieldEconomicsEducation LevelPhD or equivalent LanguagesFRENCHLevelBasic Research FieldEconomicsYears of Research ExperienceNone Additional Information Eligibility criteria PhD on the economic modelling of the oil market
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permanent staff members, plus some 15 PhD candidates and 4 post-doc researchers. Where to apply Website https://emploi.cnrs.fr/Candidat/Offre/UMR5801-GERVIG1-053/Candidater.aspx Requirements Research
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at conferences; Supervise and mentor Master's students or PhD candidates involved in the project; Contribute to the scientific dissemination and valorization of the research (papers, patents, presentations
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LanguagesFRENCHLevelBasic Research FieldNeurosciencesYears of Research ExperienceNone Research FieldBiological sciencesYears of Research ExperienceNone Additional Information Eligibility criteria - PhD in neuroscience
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twenty years have required the development of more generic codes capable of accounting for certain specificities such as continuous fuel recycling or the modeling of effects associated with the migration
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), whose objective is to extend the HLA-Epicheck model, originally developed within the framework of a PhD thesis, and to implement new deep learning approaches to assess donor–recipient compatibility in