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on principles from engineering, cognitive neuroscience, artificial intelligence, and human-computer interaction. It has potential applications in education, training, and cognitive rehabilitation, and contributes
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closed-loop control. The technology, developed through detailed computer simulations, will be validated with preclinical experiments. The candidate will be part of a multidisciplinary team working towards
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disciplines: computer science/engineering or biomedical engineering. You have an excellent academic record of accomplishment. In particular, you have a good command of, and a strong interest in, computer
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/fracture mechanics tests, etc.) and characterization (scanning electron microscopy, X-ray tomography), to calibrate and validate the numerical simulations. You will be responsible for conducting finite
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of Bioscience Engineering, we are looking for a m/f/x Doctoral fellow within the ERC Consolidator Grant project "Novel light regimes and drought effects on temperate forest plant biodiversity (CanopyChange
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for focal epilepsy with ultrasound neurorecording, modulation, and deep reinforcement learning (DRL) closed-loop control. The technology will be developed through detailed computer simulations and preclinical
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performed on advanced building blocks. This doctoral mandate is part of the EU PHARMECO project. Job profile You hold a Master’s degree in Bioscience Engineering (Chemistry and Bioprocess technology) or a
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internationally. Job profile You hold a Master’s degree in computer science, electrical engineering, (technical) cognitive science, Human-Computer Interaction or areas relevant to the research topic (for example
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degree in Bioscience Engineering (Chemistry and Bioprocess Technology) or a Master in Sciences (Chemistry), or equivalent. You need to fulfill the criteria on the date of the start of the mandate. • You do
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of Bioscience Engineering we are looking for a m/f/x Doctoral fellow within the Horizon Europe project "Risks from climate change and biodiversity loss across systems and scales: Leveraging the potential of tree