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of the institute. In addition, we are interested in the application of emerging technologies and methods such as machine learning. You bring the following qualifications and motivations: You have a PhD degree and a
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) at the Department of Earth Sciences at ETH Zürich invites applications for a fully funded 4-year PhD position in Machine Learning Seismology and Induced Earthquakes. The preferred starting date for this position is
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100%, Zurich, fixed-term The Swiss Seismological Service (SED ) at the Department of Earth Sciences at ETH Zürich invites applications for a fully funded 4-year PhD position in Machine Learning
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, and machine learning. We collaborate with several of them as well as institutions and companies in Switzerland and abroad. chevron_right Working, teaching and research at ETH Zurich We value diversity
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Research. The project is in close collaboration with the Computer Graphics Laboratory at ETH Zürich (Prof. Barbara Solenthaler PhD) who develops a fully virtual infant face and head model. The project will
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a PhD in solid-state NMR, DNP, EPR or a related field Have an excellent track record in reserach proven by publications in this field Have a good understanding of NMR theory and computer simulations
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, numerical simulations and experimental implementation of pulse sequences Have experience with computer simulations and programming We offer ETH offers an exciting opportunity to work at the forefront
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strategies to design pulse sequences for high-resolution solid-state NMR under magic-angle spinning and static DNP in close collaboration with two PhD students working on these topics. The efficiency
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sequences Have experience with computer simulations and programming Your workplace Your workplace We offer ETH offers an exciting opportunity to work at the forefront of scientific research. Collaborations
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collaborate with other PhD students working on muscle technology, manipulation, control, and machine learning. The output of the PhD thesis will significantly contribute to the advancement of musculoskeletal