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siderophore-dependent iron acquisition systems in bacteria. The recruited candidate will be enrolled in the Doctoral School of Life and Health Sciences (ED414) at the University of Strasbourg. The project is
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-researchers, experimentalists, and theoreticians, and its research activity is supported by around sixty engineers, technicians, and administrative staff. The laboratory welcomes a large number of undergraduate
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LevelMaster Degree or equivalent Skills/Qualifications Experience and proficiency in cytometry. Experience with cell culture Experience in cell metabolism analysis Strong analytical and writing skills Excellent
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numerical simulations using a GRMHD-PIC technique, which allows to track VHE ions on the fly. These simulations will be supplemented by cutting-edge analytical methods for injecting particles onto the grid
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Inria, the French national research institute for the digital sciences | Montbonnot Saint Martin, Rhone Alpes | France | 5 days ago
Framework Programme? Not funded by a EU programme Reference Number 2025-09322 Is the Job related to staff position within a Research Infrastructure? No Offer Description Context. This PhD thesis is part of
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. This issue can have safety implications, particularly in closed-loop setups. Physically Informed Machine Learning (PIML), and in particular Physics-Informed Neural Networks (PINN), are less dependent on data
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computational research. In particular: • A high-quality imaging platform • A dedicated biocomputing hub that guarantees reliable data storage, management, and advanced analytical capacity. Our laboratory is
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of LYON (IRCELYON) is located in Villeurbanne (France). It is one of the largest European laboratories dedicated to heterogeneous catalysis. Structured in 5 teams supported by an analytical platform
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engineering skills and at least some experience with common collaborative development tools: git, GitHub, CMake, Docker, Spack, gtest, ctest, etc. You are pragmatic and take initiative; your analytical skills
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be tasked with finely characterizing the structure of the building blocks of these polymers, their modifications, and their interactions using advanced analytical and physicochemical techniques: liquid