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Field
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relies heavily on students’ self-regulated learning skills, including monitoring and evaluating one's own understanding. High-quality, timely feedback is crucial for fostering these skills. However
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mediators that aim to improve the stability of the system, the development of materials that can function as solid booster materials to improve the energy density, and their assessment of performance in
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Mathematics (Inverse Problems), Computer Science (Machine Learning, Computer Vision, Efficient Algorithms and High-Performance Computing), and Physics (Image Formation Modelling). Your project is part of
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Mathematics (Inverse Problems), Computer Science (Machine learning, Efficient Algorithms and High-Performance Computing), and Physics (Image Formation Modelling). Your project is part of the NXTGen High-tech
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. The NanoElectronics Group (NE) performs research and provides education in the field of nanoelectronics, comprising the study of the electronic and magnetic properties of systems with critical dimensions in
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matchmaking 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
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. In this project we will continue development of a new high-throughput method that will speed up and improve such predictions. We will further develop a combination of automated patch clamping and
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to what extent data poisoning attacks can influence the output of LLM models in security and safety critical infrastructure. 3. Perform the attack under different scenarios and model the impact. 4. Evaluate
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to support advanced PIC design. Design and test specialized structures to isolate key physical effects in InP-based SOAs. Perform electro‑optical measurements and analyze data to characterize active photonic
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recognised Certificate of Proficiency in the English Language. What we offer you We will give you a temporary employment contract (1.0 FTE) of 1.5 years, after which your performance will be evaluated