10 assistant-professor-computer-science-data "https:" "https:" "https:" "https:" "Dr" "St" "St" PhD positions at Radboud University in Netherlands
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28 Feb 2026 Job Information Organisation/Company Radboud University Research Field Political sciences » Public policy Political sciences » Science and society Researcher Profile First Stage
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qualitative data to study how parents’ social network connections and resources shape their children’s career outcomes. As a PhD candidate, you will work on your own project within the SHINE programme. The aim
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. Where you will be working You will work within the Physical-Organic Chemistry department as part of the Big Chemistry Robotlab team. At the Robot Lab, a team of chemists, computer scientists and engineers
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and how we handle your personal data and internal and external candidates. Website for additional job details https://www.academictransfer.com/358144/ Work Location(s) Number of offers available1Company
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data and internal and external candidates. Website for additional job details https://www.academictransfer.com/358092/ Work Location(s) Number of offers available1Company/InstituteRadboud
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and transforming the city with communities of care’ (WECARE). WECARE is a comparative participatory and co-production research project led by Dr Sonja Marzi, Assistant Professor at the Department
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(RICH) under the joint supervision of Prof. Johan Oosterman (thesis supervisor) and Dr Cécile de Morrée (PI of CONSENT). In addition to writing your PhD thesis, you will present your results in written
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Employment 1.0 FTE Gross monthly salary € 3,059 - € 3,881 Required background Research University Degree Organizational unit Faculty of Science Application deadline 04 January 2026 Apply now Do you
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medical center, who share an interest in intensive longitudinal data. This project will be supervised by Dr Erik Bijleveld in collaboration with Dr Fred Hasselman and Prof. Sabine Geurts. Faculty of Social
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-of-the-art AI solutions (machine learning, reinforcement learning, optimal control, neuromorphic computing) that help bring the consortium forward in modelling and understanding biological intelligence