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-creation processes by designing methods of co-creation differently. This is the main research aim of this PhD research. Specifically, this project focuses on key research frontiers: how co-creation can
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and expertise in the biomedical domain. The PhD project brings together expertise on transition management and Science and Technology Studies (STS). The main goal is to further co-develop with the field
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career objectives. About 20% of your time will be dedicated to this training component, which includes training on the job in assisting in the Bachelor and Master programmes of the department at Utrecht
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component, which includes training on the job in assisting in the Bachelor and Master programmes of the department at Utrecht University. Your qualities We welcome a motivated team-player who recognizes
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, and principal investigators (PIs), all working together to achieve FLOW’s ambitious goals. You will directly profit from the excellent infrastructure in Groningen and Utrecht. In Utrecht, this is
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activists with tools to integrate mental health awareness into their strategies. This research project is funded by the European Research Council (ERC). The principal investigator is Assistant Professor Dr
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within the Reproduction Team of Utrecht University’s Equine Clinic and conduct research within the Reproductive Genetics team. Your job Your main tasks will consist of supporting a vibrant clinical
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this. Implement and test such a framework, in a clinical setting. Help teach explainable AI to bachelor’s students and master's students and/or decision makers. For example, by developing workshops and training
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methods of reading instruction. Your primary focus will be to conduct original data-driven research that contributes to this project’s objectives and culminates in a successful doctoral dissertation. You
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. Your main tasks and responsibilities include: Assessing the magnetic stability of vortex-state particles as a function of their size, shape, and mineralogy by developing data-driven micromagnetic