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project which focuses on the understanding of the biophysical processes as droplets/condensates wet membrane compartments in cells. Numerical simulations and theoretical membrane models will be developed
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. Numerical simulations and theoretical membrane models will be developed, aiming to couple viscous interfacial fluid flow, elastic deformations and wetting-like processes at cellular membranes. The theoretical
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preconditioners for Newton methods. Concrete model problems and numerical examples will be used to guide and prototype the development. About the Department of Mathematics at UiB The prospective PhD candidate will
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green transition. About the project/work tasks: The overall goal of this PhD project is to develop methodologies for real-time modeling and inversion of geophysical well logs, with a particular focus on
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to develop methodologies for real-time modeling and inversion of geophysical well logs, with a particular focus on borehole electromagnetic data during drilling. This includes the further development
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dynamics, sediment sources, carbon cycling, during past warm periods; provide geophysical constraints for i2B numerical modelling teams for example, palaeo-bathymetry, palaeo-ice dynamics and palaeo
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understanding, including changes in current patterns, glacial dynamics, sediment sources, carbon cycling, during past warm periods; provide geophysical constraints for i2B numerical modelling teams for example
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://www.uib.no/en/sefas About the project/work tasks: The postdoctoral research fellow will perform quantitative data analysis using advanced techniques such as signal processing and dynamic systems modeling, and
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techniques such as signal processing and dynamic systems modeling, and will contribute to developing knowledge-driven decision-making models. The postdoctoral research fellow will actively participate during
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models, aiming to reduce CO₂ emissions and improve resource efficiency through enhanced data-driven lifecycle management. A DPP can be viewed as a structured, machine-readable knowledge artifact