481 structural-engineering "https:" "https:" "https:" "https:" "https:" "ICube laboratory CNRS" positions at CNRS
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engineering Researcher Profile First Stage Researcher (R1) Application Deadline 28 Feb 2026 - 23:59 (UTC) Country France Type of Contract Temporary Job Status Full-time Hours Per Week 35 Offer Starting Date 16
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of Section n°12 or the priority theme(s) above-mentioned. Where to apply Website https://concourschercheurs2026.dsi.cnrs.fr/index.php?langue=uk Requirements Research FieldChemistryEducation LevelPhD
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pertains to the themes and sub-themes of Section n°11 or the priority theme(s) above-mentioned. Where to apply Website https://concourschercheurs2026.dsi.cnrs.fr/index.php?langue=uk Requirements Research
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specialist of the sociology of Wikipedia and a senior data engineer from the Wikimedia Foundation. Candidates (M/F) should hold a Master's degree in Theoretical Physics and/or Complex systems, and have a good
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the conditions of their formation as well as their structure and stability. The transformation or formation of extra species during oxidative water treatment processes will be studied varying different parameters
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composites (rheology, DMA, tensile testing, etc.) will then be studied in order to establish structure–property relationships. This work will be carried out within the Chemistry & Macromolecular Materials
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(MESR). The Marie Sklodowska-Curie GLYCOCALYX doctoral network (https://www.glycocalyx.org/ ) brings together 15 European partners implementing a multidisciplinary research and training program to study
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filled. Shortlisted candidates will be invited to a remote interview in May 2026. About LAPTh (https://www.lapth.cnrs.fr ): LAPTh is a joint research unit (UMR) of CNRS and Université Savoie Mont Blanc
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, particle physics, and mathematical physics. The Astroparticle and Cosmology group (https://astrocosmolapth.com ) conducts research on cosmic large-scale structure, cosmic microwave and infrared backgrounds
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implement machine learning models dedicated to the prediction, interpretation, and quantitative analysis of Raman vibrational spectra, establishing explicit links between structure, local chemical environment