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other are developing regulations that provides both incentives and constraints for the energy transition and emission reduction. The research objective of the PhD is to develop models that captures
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relevant component development tasks in the project Contribute to relevant simulation and modelling activities in the project Required selection criteria You must have a professionally relevant background in
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, and entrepreneurship. Doctoral Candidates will gain transferable skills and learn from industry role models, equipping them to make significant contributions to solving the AMR crisis. The succsesssful
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have a strong background in marine hydrodynamics or applied mathematics, as the study will involve mathematical modelling and taking demanding PhD courses. Both potential flow theory and CFD will be
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to mouse models. We use both patient samples and healthy control cells. Example tasks: Optimize T cell and stem cell ex vivo editing & culturing conditions Transplant edited cells to humanized mice Design
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organismal level. Using salmon as the model, the studies will employ primary cells and established cell lines to uncover the functional potential of algal compounds. This will be achieved through in-depth
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introduces an unexplored therapeutic target in cancer. About the project/work tasks: Determine the expression of scramblases (PLSCR1, TMEM16F, Xkr8) using highly standardised GBM stem cell models. Visualize
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-cycle fatigue. The research methods are based on both small-scale and full-scale experimental testing and on Finite Element Modelling. Are you motivated to take a step towards a doctorate and open
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. Special focus will be devoted to the interpretability of the predictions and to the use of physical models in combination with machine learning techniques. You will work alongside other highly motivated and
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, compared with state-of-the-art rule-based methods as baselines. Design of control barrier functions (CBFs) considered for safeguarding control setpoints. Dynamic programming and model-predictive control