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ultrasound, Laboratoire d'imagerie Biomedical, LIB , https://www.lib.upmc.fr/ ) and nanoparticle engineering ( PHENIX Laboratory https://phenix.cnrs.fr/ ). The LIB is located in the Centre de Recherche des
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the “polymerization catalysis and engineering” team. The Superpowers of Non-N-Heterocyclic Carbenes: Applications in Materials Chemistry, Catalysis, and Upcycling of End-of-Life Polymers Carbenes, which are divalent
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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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student will be supervised by a teacher-researcher (Dr. A. Chemtob) and a research engineer (Dr. C. Le). The PhD student will work on the synthesis of polymer monomers and colloids. The main applications
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, engineers) and 100 contractual staff (PhD students, postdoctoral researchers, engineers, and technicians). The institute also hosts dozens of interns and visiting scientists each year. IGE is spread across
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will be co-supervised by LATMOS (A. Määttänen) and LMD (A. Podglajen), and will work within a team of researchers specialising in atmospheric physics and research engineers with expertise in modelling
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eNSEMPLE. It is an interdisciplinary project at the interface between Statistical Physics, Data Science, Network Science, Computer Science and Sociology, and will involve collaborations with researchers from
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. Research within LIG is organized into 5 focus areas: Intelligent Systems for Bridging Data, Knowledge and Humans, Software and Information System Engineering, Formal Methods, Models, and Languages
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at the Aix-Marseille University Doctoral School (NeuroSchool program). Regular interactions with team members in Maastricht are planned (videoconference meetings, joint workshops). Candidate Profile • Required
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AI researchers from ANITI, IMT and CERFACS, as well as with researchers/engineers in weather forecastings from the CNRM (Météo-France). Hybridization methods between neural networks and physical models