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. Project background The assistant will work with the instructor to typeset lecture slides, support the development of problem sets, and other presentation materials. The course involves formal modeling and
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research, and its efforts to put new knowledge and innovations into practice. The Center for Climate Systems Modeling (C2SM) at ETH and the Federal Institute of Meteorology and Climatology MeteoSwiss jointly
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with experts in material science, numerical modelling and laser physics, enabling you to integrate diverse expertise into robust control frameworks. This collaboration provides a unique opportunity to
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the goal to improve our understanding of the atmospheric cycling of the essential micronutrient selenium (Se) by integrating measurements and a computational atmospheric Se model. Knowing the chemical forms
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for in vitro disease modeling. Our group integrates mechanical design, materials science, and bioengineering to build functional 3D organoid systems and reduce reliance on the use of animal models. We
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Barrier Models for Bacterial Lung and Bladder Infections.We are seeking a highly motivated and enthusiastic PhD student, who will work in a highly international environment in Basel, Switzerland. In
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(CPU/GPU), numerical modeling/Monte Carlo simulations are an asset Visualisation skills are an asset Careful way of working, checking of results Candidates can have an M.Sc. degree in STEM, or a Ph.D
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Dynamics , which pursues a broad range of experimental, numerical and theoretical research efforts in a friendly and inclusive environment with state-of-the-art infrastructure. The blood-brain barrier (BBB
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. Dagmar Iber, which uses advanced imaging and computational tools to develop data-driven, mechanistic models of biological systems. Located in Basel, the Department of Biosystems Science and Engineering (D
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100%, Zurich, fixed-term The Chair in Nonlinear Dynamics at ETH Zürich is seeking a highly motivated PhD student in the area of data-driven model-reduction for high-dimensional nonlinear physical