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of dynamic physical systems and control system algorithms experience in software development, data analysis and AI practical experience in experimental work motivation and potential for research within
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modelling, or modelling of physical/dynamical systems. familiarity with AI/machine learning/system identification techniques and their application to engineering problems. knowledge of digital twin concepts
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15th June 2026 Languages English English English PhD Research Fellow in Cybersecurity Management Apply for this job See advertisement About the position A 100 % position is available
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a vacancy for a PhD Research Fellow in Climate Dynamics and Prediction at the Geophysical Institute and the Bjerknes Centre for Climate Research . The position is for a fixed-term period of 3 years
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Fellow position in in structural geology and tectonics available at the Department of Geosciences, University of Oslo Starting date no later than September 1, 2026. The fellowship period is three years. A
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Applied Mathematics (Fluid Mechanics) There is a vacancy for a PhD Research Fellow in Applied Mathematics at the Department of Mathematics . The position is for a fixed-term period of 3 years with
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energy Apply for this job See advertisement This is NTNU NTNU is a broad-based university with a technical-scientific profile and a focus in professional education. The university is located in three
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on SPH simulations, and then to analyse the results in the context of the geophysics, geochemistry and dynamics of the terrestrial planets. What distinguishes this approach is its focus on post-giant
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on SPH simulations, and then to analyse the results in the context of the geophysics, geochemistry and dynamics of the terrestrial planets. What distinguishes this approach is its focus on post-giant
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and accelerate the development of more high-performing PNSEs. The ultimate goal of the project is to develop, implement, and validate novel deep-learning models for molecular dynamics and coarse-grained