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layers, thorough FLA processing, and extensive materials characteri-zation using XRD, electron microscopies, TOF-SIMS, electrochemical methods, etc. Modeling and simulations should help us to explain
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their subsequent simultaneous analysis. This project aims at overcoming these challenges to reliably measure atmospheric levels of PFASs and model their respective emission strengths in Switzerland
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. Empa is a research institution of the ETH Domain. Our Centre for X-ray Analytics developsX-ray analytical and imaging methods for understanding materials structure in material, life- and medical sciences
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, interactions, catalytic mechanisms etc. in real-time. Building on our published and unpublished work, the successful candidate will advance nanopore trapping in new directions using solid-state and biological
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understanding of district heating and cooling, renewable energy integration, multi-energy systems, and energy conversion and storage technologies. You have strong skills in programming, modelling, and data
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. Empa is a research institution of the ETH Domain. Empa's Laboratory of Biomimetic Membranes and Textiles is a pioneer in physics-based modeling at multiple scales. We bridge the virtual to the real world
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microbiology, as well as bioinformatics and the analysis of big datasets. Moreover, the Biozentrum offers excellent internal support from various core facilities with expert staff, and a structured PhD program
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. This project will center on high-entropy oxides, a promising class of catalysts, to help transform CO2 into valuable hydrocarbons. The work is part of a broader initiative aimed at advancing materials
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100%, Zurich, fixed-term The Nonlinear optics for Epitaxial growth of Advanced Thin films (NEAT) laboratory within the institute of Multifunctional Ferroic Materials in the Materials Department is
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challenges. Our core research topics include but not limited to the following topics: Interpretability and explainability of AI models in clinical settings Fairness and bias mitigation in pediatric AI