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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
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complexes using X-ray crystallography and/or electron microscopy. In addition, the candidate will develop nucleosome reconstitution methods and genome-wide HSF-DNA binding assays. This project will be
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interactions. Application of mineral amendment as an environmentally and economically sustainable method for soil organic matter increase will be explored. Cutting-edge in situ imaging techniques will be used
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ion velocity. The system will use a continuous laser diode and will rely on a photon counting method. The CNRS ICARE laboratory in Orléans has around 80 staff, including 30 researchers and lecturers
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, combining analytical approaches (Boltzmann equation, Keldysh formalism) with numerical simulations. The project will take place at the Laboratoire Kastler Brossel, within the PEPR “Dyn1D” program. Where
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-linear optical setup development (including microscopy) are required. A hand-on knowledge of nanofabrication techniques is highly desired. A good background in data analysis methods and spoken/written
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LanguagesFRENCHLevelBasic Research FieldMathematicsYears of Research ExperienceNone Research FieldHistory » History of scienceYears of Research ExperienceNone Additional Information Eligibility criteria PhD in mathematics
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for theoretical descriptions of stress correlations in polymeric liquids. The aim of this project is to extend the analysis method of viscoelasticity, devised in [6] and based upon collective spatio-temporal stress
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criteria • PhD in Physical Chemistry, Physics, or a closely related discipline • Strong hands-on experience with ultra-high vacuum (UHV) systems, infrared spectroscopy, cryogenics, and/or molecular beam
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in the Earth's outer core, with implications for deep Earth processes [1]. A variety of inverse methods (data assimilation, machine learning, etc.) has been employed to recover the fluid motions in