475 structural-engineering "https:" "https:" "https:" "https:" "https:" "https:" "Dip" positions at CNRS
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Field Laboratory (EMFL), the LNCMI actively contributes to scientific progress at the European level. Where to apply Website https://emploi.cnrs.fr/Candidat/Offre/UPR3228-CATKNO-050/Candidater.aspx
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7 Feb 2026 Job Information Organisation/Company CNRS Department Institut des matériaux de Nantes Jean Rouxel Research Field Engineering Physics Technology Researcher Profile First Stage Researcher
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17 Jan 2026 Job Information Organisation/Company CNRS Department Centre de recherche sur l'hétéroepitaxie et ses applications Research Field Engineering Physics Technology Researcher Profile First
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23 Jan 2026 Job Information Organisation/Company CNRS Department Centre de recherche sur l'hétéroepitaxie et ses applications Research Field Engineering Physics Technology Researcher Profile First
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Régis de la Bretèche and Cathy Swaenepoel. Where to apply Website https://emploi.cnrs.fr/Candidat/Offre/UMR7586-REGDUM-001/Candidater.aspx Requirements Research FieldMathematicsEducation LevelPhD
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days' annual leave, including RTT, for full-time work Where to apply Website https://emploi.cnrs.fr/Candidat/Offre/UPR3228-ALEGAS-062/Candidater.aspx Requirements Research FieldMathematicsEducation
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research. It is part of the interdisciplinary institute of excellence "ISIS – Institute of Supramolecular Science and Engineering" (UMR 7006). The offices are located on the Cronenbourg campus in Strasbourg
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29 Jan 2026 Job Information Organisation/Company CNRS Department Laboratoire Lorrain de Chimie Moléculaire Research Field Chemistry Physics Technology Researcher Profile Recognised Researcher (R2
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complexes with nucleic acids; 2) Evaluation of the delivry complexes for inhalation by Aerosol technology; 4) Analysis of the structure-activity relationship of dendrimers for nucleic acid delivery via
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Starrydata2). The work will include the implementation of machine learning models (neural networks, random forests, SISSO), generative approaches for predicting crystal structures, the use of machine learning