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possibilities in adaptive materials or soft robotics. Imagine interactive hydrogels that self-assemble from a ’’design-less’ state and can get their morphology optimised to perform targeted mechanical operations
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the European Research Council. As such, the PhD candidate will be part of a team at the University of Groningen working on the topic of contract-based modular control systems design. International collaboration
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. Understanding human needs for bias mitigation – Understanding how individuals interact with biased AI systems to identify challenges and the types of support needed for effective intervention. Designing and
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arrangements support or hinder NBS implementation. This PhD project explores institutional, social, and political factors shaping NBS uptake across Europe. It will contribute to a deeper understanding of how
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PhD project plan. Organisation Since its foundation in 1614, the University of Groningen has enjoyed an international reputation as a dynamic and innovative center of higher education offering high
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of argumentation, with a specific focus on (audio-)visually implicit meanings. The PhD student will be given space to develop their own detailed PhD project plan. Organisation Since its foundation in 1614
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PhD position on past, present and future global inland-water methane budget Faculty: Faculty of Geosciences Department: Department of Earth Sciences Hours per week: 36 to 40 Application deadline
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Engineering are looking for a PhD student for the project “Assessing the reliability of news and online information: fostering critical digital literacy skills for Generative AI”. The project is funded by a M20
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unclear strategies for bias mitigation limit its effectiveness in practice. This PhD project addresses the following central research question: how can we design human-AI collaboration to mitigate biases