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31st October 2025 Languages English English English The Department of Geosciences has a vacancy for a PhD Candidate in Efficient Reservoir Simulation and Optimisation of Large-Scale CO₂ Storage
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grading scale . If you do not have letter grades from previous studies, you must have an equally good academic foundation. If you have a weaker grade background, you maybe considered if you can document
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operations that are more efficient, and according to the needs of the current project mix and milestones at the yard. The position is funded by the research project “TWinYards - Scaling up for offshore wind at
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is equal to B or better compared to NTNU's grading scale . If you do not have letter grades from previous studies, you must have an equally good academic foundation. If you have a weaker grade
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Cybernetics at NTNU is offering a fully funded PhD position in the area of learning-based control and decision-making for complex multi-agent systems. The project explores new computational frameworks
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-based control and decision-making for complex multi-agent systems. The project explores new computational frameworks that combine principled reasoning with the efficiency of modern machine learning
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website: Digitalisation and Society Estimated starting date: January 1 2026 (flexible, earlier or later dates may be possible) The candidate is expected to: actively take part in inter- and multi
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scale. If you do not have letter grades from previous studies, you must have an equally good academic basis. If you have a weaker grade background, you may be assessed if you can document that you are
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: Characterization of realistic inflow environments and their impact on turbine performance Assessment of clearance effects on loads and efficiency near the sea surface and seabed Development and use of multi-fidelity
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of realistic inflow environments and their impact on turbine performance Assessment of clearance effects on loads and efficiency near the sea surface and seabed Development and use of multi-fidelity models