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, with emphasis on micro- and nano-fabrication and optical technologies for sensing, actuation, and control. The research includes the design, fabrication, and experimental validation of micro-scale
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research programme consists of 15 PhD projects which will contribute to the development of innovative methodologies, tools and design strategies that make AM a reliable, scalable and economically viable
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, tools and design strategies that make AM a reliable, scalable and economically viable solution for repair and remanufacturing across industrial sectors. The research will address key technical and
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approach that combines semantic material data, design-for-circularity, and hub logistics to scale high-quality reuse in regional infrastructure ecosystems (primary focus: Twente; validation: Brabant). Reuse
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design thinking. You will collaborate closely during joint research days, workshops and events, while being based at the Copernicus Institute of Sustainable Development at Utrecht University. As part of
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subsurface use. You will design and conduct microfluidic experiments to investigate clay behaviour under environmental stressors, including temperature fluctuations, pressure gradients, salinity changes, and
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fuzzers, detect more potential flaws than organisations can fix. We plan to design and develop automated techniques to holistically analyse discovered vulnerabilities, assess their causes and risks, and
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or political psychology). You have a good command of quantitative research methods, particularly regarding the design and technical execution of survey experiments. You can work both independently and in a team
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of Methodology and Statistics. Members of the group conduct cutting-edge research on a broad range of topics, including survey design, measurement error, nonresponse, data integration, register-based statistics
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). The field of Machine Learning on Graphs aims to extract knowledge from graph-structured and network data through powerful machine learning models. Designing provably powerful learning models for graphs will