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level and offers several high-quality educational programs, we are now seeking a postdoctoral researcher to work on privacy for data-driven models and high-dimensional data. The position is full-time for
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and also be able to work independently. Specific tasks include: Statistical analysis of complex datasets Development and application of predictive models Contribution to study design, and choice
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educational programs, we are now seeking a postdoctoral researcher to work on privacy for data-driven models and high-dimensional data. The position is full-time for two years, starting on 8th January 2026
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and combine these protein fractions to maximise their functionality in complex model food product based on emulsions, gels and foams. Detailed description of work duties: You will be responsible
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stability in thin-film equations, which includes mathematical modelling, well-posedness analysis, analytical bifurcation, and spectral theory. The study of related subjects and the development of new tools
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a new approach to high-frequency electromagnetic (georadar or controlled-source electromagnetic CSEM) data modelling based on full wave 3D inversion to expand our competence in the characterisation
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machine learning models in simple, standalone devices that are capable of advanced processing. Building on our work on solution-based neuromorphic classifiers (https://doi.org/10.1002/advs.202207023
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approach to high-frequency electromagnetic (georadar or controlled-source electromagnetic CSEM) data modelling based on full wave 3D inversion to expand our competence in the characterisation and monitoring
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high-temperature systems. Proven ability in process modeling and simulation, preferably using Aspen Plus. Ability to conduct independent research, plan and analyze experiments, and document results
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project “COPD-HIT”, an international multicenter project aimed at developing and validating an in vitro loading model against in vivo blood and muscle adaptations (biopsies) from individuals with Chronic