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the collaborative HFSP project outlined below, contributing to the design and execution of experiments aimed at identifying the behavioural and physiological mechanisms that facilitate nematode adaptation to arsenic
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of materials. The main activities will include: – adapting the generative LegoXtal code to the design of MOF coordination polymers and porous materials by assembling elementary molecular bricks in the generation
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interactions by exploiting spatial transcriptomics data and network-theoretic approaches. Contract start date: May 1st 2026 or later depending on your availability Activities : - design of a new mathematical
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to apply Website https://emploi.cnrs.fr/Offres/CDD/UMR5300-GERLOO-006/Default.aspx Requirements Research FieldBiological sciencesEducation LevelPhD or equivalent Research FieldEnvironmental scienceEducation
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Innovation. The project focuses on detecting radioactive contaminants in liquids. The postdoctoral researcher will participate in the production of materials and contribute to the development of dedicated
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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 postdoctoral researcher will design
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to innovation for patient care. Jean-Léon Maître, head of the “Mammalian Developmental Mechanics” team (https://institut-curie.org/team/maitre ), is seeking a postdoctoral researcher with a strong interest in
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of this postdoctoral position is to enable the formal verification of security protocols involving non-negligible probabilities. Formal methods have proven their value in the design and analysis of security protocols
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technologies within our laboratory. - Design and develop processes for synthesizing hollow fiber membranes to meet the specific needs of our research and development projects. - Design and develop processes
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. In this project, we aim to develop digital tools combining density functional theory (DFT) and machine learning (ML) to accelerate the in-silico design of solid catalysts for the DA process. - Perform