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to efficiently identify materials with optimal mechanical properties and controlled degradability. The primary task is to develop techniques for synthesizing degradable polymers and copolymers using ring-opening
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that overcomes the yield limitations of existing betavoltaic sources. The aim of the contract is to develop GaN or AlGaN nanowires with a high form factor using a top-down approach, this step being key
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promotion (oral presentations, articles), • Development of ontologies and inference rules, • Participation in the implementation of validation scenarios in simulated environments. L'équipe « Robotique et
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obtained by MOCVD deposition. A PhD student at LMGP is currently developing and optimizing the operating conditions to control nanowire geometry, network density and connectivity, and coverage. The recruited
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requires fundamental and applied research for their optimization, better understanding and industrialization. The project aims to develop and characterize new “reactive” hydrophilic and lipophilic DES
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proteins in lipid droplets; (2) development and maintenance of the POP_MD code for non-equilibrium molecular dynamics simulations of biological systems. The successful candidate will be responsible
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(GHGs), by greatly improving the accuracy of spectral line data, traceable to the International System of Units (SI). The candidate will develop molecular dynamics simulations to investigate refined
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-Performance Computing for Exascale" contributes to the design and development of numerical methods and software components that will equip future European Exascale and post-Exascale machines. This program is
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Postdoctoral Researcher to join our team for a 18 months position based at Femto-ST in Besançon. This role offers a unique opportunity to contribute to pioneering research and development in integrated photonics
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), whose objective is to extend the HLA-Epicheck model, originally developed within the framework of a PhD thesis, and to implement new deep learning approaches to assess donor–recipient compatibility in