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employment that the PhD Research Fellow is enrolled in USN’s PhD-program in PhD in Technology within three months of accession in the position. It may be possible to get a four-year full-time period consisting
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of Bergen (Profs. Ritske Huismans and Rob Gawthorpe), University of Manchester (Prof. Cathy Hollis), University of Oslo (Prof. Jan Inge Faleide) and Imperial College (Prof. Chris Jackson). About the project
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at the Department). The PhD-project will be connected to the research group of Prof. Nathalie Reuter at the Department of Chemistry and the Computational Biology Unit , in collaboration with Prof. Odd André Karlsen
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environment Career guidance throughout the postdoctoral program and together with you we will prepare a career plan, which containsthe skills and knowledge you will acquire Open and inclusive working
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PhD Research Fellow in Experimental Fluid Mechanics: Tunable hairy surfaces for droplet flow control
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An exciting job with an important social mission An engaging scientific environment with a strong and international team Career guidance throughout the postdoctoral program and together with you we will prepare
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, Energy and Environmental Technology from 01.08.2025. The position is located at the Department of Process, Energy and Environmental Technology and reports to the Head of the Department, Prof. Lars-Erik Øi
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://www.uib.no/en/biomedisin ) in the group of Prof. Dr. Ruth Brenk (https://www.uib.no/en/rg/brenk ) there is a vacancy for a postdoctoral research fellow position within Artificial intelligence enabled structure
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(IRT) models in small samples. The ideal candidate has prior knowledge of IRT models, a basic understanding of common estimation methods, and strong programming skills in R, Python, or another relevant