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identify structures with improved stability, performance, and scalability. At ETH Zurich, this work is embedded in an interdisciplinary research environment spanning organic and inorganic synthesis
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at both ETH Zurich and Eawag. Job description The successful candidate will conduct fundamental research on WS/DP adsorption and establish (semi-)quantitative polymer structure–adsorption relationships by
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remote sensing missions. The team’s work bridges earth observation with applied forest monitoring, including tree species identification, forest structural changes, and forest resilience assessments, with
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Zurich is the leading institute for applied research in economics in Switzerland. KOF conducts well-founded and independent research on the Swiss and international economy. It addresses structural and
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CCS. Your main tasks will include: Processing and imaging the newly acquired high-density 3D seismic dataset and integrating vintage 3D seismic data to image and characterise the geological structures
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-structure interactions of flapping flags (Bio-inspired) unsteady vortex formation and interaction More information about the lab and the ongoing and past projects can be found here: https://www.epfl.ch/labs
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materials, surgical technologies. Ability to collaborate and communicate across engineering, materials science - chemistry, manufacturing, and clinical teams. Structured, detail-oriented, and rigorous
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predict protein-protein complementarity, design artificial protein binders, investigate the effects of mutations on protein structure and function, and apply protein representation learning to uncover