23 algorithm-development-"Multiple"-"Simons-Foundation" "Prof" positions at Empa in Switzerland
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. Empa is a research institution of the ETH Domain. The Urban Energy Systems Laboratory develops methods and tools to model, design and assess energy systems at various scales with a focus on energy hubs
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of nanoparticles for healthcare and industrial applications. As a PhD candidate, you will: Develop and refine SAXS and FCCS methods to quantify size, concentration, density and internal structure of diverse
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with our team of experienced scientists, postdocs and PhD students, you will develop materials that contribute to the development of the next generation of sustainable biocomposite materials. This project is
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. Empa is a research institution of the ETH Domain. The Urban Energy Systems Laboratory (UESL) pioneers strategies, solutions, and methods to support the development of sustainable, resilient, and
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. Together with our team of experienced scientists, postdocs and PhD students, you will develop materials that contribute to the development of the next generation of bio-based hybrid materials. The goal
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. Together with our team of experienced scientists, postdocs and PhD students, you will develop materials that contribute to the development of the next generation of advanced hydrogels for wound care
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. The results are directly relevant to the FOEN and will support regulatory decisions regarding PFASs. Your tasks Develop and validate methods to sample and analyze various PFASs in ambient air Conduct sampling
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at Empa in Dübendorf drives innovations in joining technologies and corrosion management to enable evolution towards increasingly efficient, reliable and sustainable material technologies. Joining
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materials, technologies and systems. Your tasks Develop a model to investigate strategies to increase dynamic supply of secondary raw materials based on future sources and technologies and explore
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. The acquired and already existing database will be used to further develop ML models for the automated detection of clinically relevant markers. The goal is to develop the technique towards potential clinical