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, access to computer cluster Where to apply Website https://emploi.cnrs.fr/Candidat/Offre/UMR8197-VALHER-212/Candidater.aspx Requirements Research FieldBiological sciencesEducation LevelPhD or equivalent
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-month European LACE project. The LACE (Lacer CEramics) project aims to the development of technologies to design the first technological bricks for High Energy Lasers (HEL). In particular, the LACE
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economic, social, and cultural progress. Internationally recognised for the excellence of its scientific research, the CNRS is a reference in the world of research and development, as well as for the general
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A postdoctoral position is available to study dynamic processes in early development of insects and mammals. Successful candidates will join a collaborative and interdisciplinary venture in
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of these genetic systems and their applications to the development of novel tools to study and control bacteria, with a specific focus on bacteria of the microbiome. The successful candidate will be able to define
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host determinants of infection to inform the development of translational malaria prevention strategies. The postdoctoral fellow will contribute to loss-of-function and image-based high-throughput
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and educational issues with the common goal of contributing to an inclusive, open and resourceful society. The Department of Geography and Spatial Planning focuses on spatial development processes
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department and the Plant Reproductive Strategies (SRP) team. Our team focuses on the evolution of plant reproductive systems, using diverse approaches including theory, experimentation, bioinformatics, and
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international environment, and actively shape interdisciplinary theory on sustainable transformations and well-being. The successful candidate will join the Institute for Lifespan Development, Family and Culture
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that methodological advances are developed with direct translational and scalability considerations. Responsabilities: Lead the development of hybrid foundation model-graph neural network architectures for gene