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/rDA). • Optimizing reaction conditions. • Assessing the generality of ihDA/rDA sequences. • Translating reactions into flow chemistry for real-time NMR monitoring (in collaboration with ANR SOFTNMR
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exploration and optimization of operating conditions. Where to apply Website https://emploi.cnrs.fr/Offres/Doctorant/UMR5623-LOUBRE-001/Default.aspx Requirements Research FieldChemistryEducation LevelMaster
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through the EU Research Framework Programme? Not funded by a EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description -The PhD will be conducted
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project (2025-2030) will cover the salary, all consumable and operating costs, including any potential stay in a laboratory outside France during the PhD. Contacts have been established with colleagues in
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.) must contribute to the effort to reduce GHG emissions. Clouds, despite their ability to optimize processes in other sectors (transport, energy, agriculture), are no exception to this observation
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contract. Expected start: 1 October 2026. PhD enrolment: Université de Lorraine (doctoral school C2MP). The project is part of the ENACT AI Cluster, in the priority area “AI for Engineering and Scientific
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: • Developing and optimizing DGT passive samplers for simultaneous monitoring of PFAS, antibiotics, and biocides • Designing and conducting laboratory experiments (performance tests, kinetics, microcosms
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systems capable of selecting and combining models of different complexity, in order to better represent groundwater dynamics and improve large-scale predictions under climate change. Objective — The PhD
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doctoral research, supported by rigorous scientific supervision. The team hosting the PhD candidate is internationally recognized for its expertise in materials science and process engineering, particularly
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to guide the selection of optimal functionalization strategies. Simulating gas adsorption (CO, O₂, H₂, NOₓ, etc.) on ND surfaces to predict binding configurations and IR spectral signatures, enabling