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The position is part of the project "Multispecies biofilm for investigating non-antibiotic therapies in dentistry (MISFAITH)," led by PI Prof. Håvard J Haugen . The project is funded by the Norwegian Research
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experiments. It is planned that the numerical simulations and experiments will help advance our understanding of these membrane wetting dynamics. The PhD research fellowship will be part of the group of Prof
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research projects will combine disciplinary expertise, with interdisciplinary elements, and integrating the use of computational methods. The main purpose of a postdoctoral fellowship is to provide
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Deadline 9 Apr 2025 - 23:00 (Europe/Oslo) Type of Contract Temporary Job Status Full-time Hours Per Week 37.5 Is the job funded through the EU Research Framework Programme? Not funded by a EU programme Is
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PhD Research Fellow in Experimental Fluid Mechanics: Tunable hairy surfaces for droplet flow control
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, methods and applications. The areas represented include: fluid mechanics, biomechanics, statistics and data science, computational mathematics, combinatorics, partial differential equations, stochastics and
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computing language. Experience with machine learning methods is a plus. The research fellow must take part in the faculty’s approved PhD program and is expected to complete the project within the set
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with methods for causal inference Familiarity with administrative register data or other types of big data Familiarity with Stata, R, or other relevant computing languages Personal skills A collaborative
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knowledge of IRT models, a basic understanding of common estimation methods, and strong programming skills in R, Python, or another relevant computing language. Experience with machine learning methods is a