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PhD in Computational Materials Physics or a related area is required. Experience with electronic structure calculations is essential. Familiarity with the use of machine-learning tools in materials
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means of CMOS-based high density microelectrode arrays (HD-MEAs). The overall goal of this project is to combine advanced optical methods for light-stimulus shaping with high-spatiotemporal-resolution
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and mental wellness. Comprehensive healthcare insurance coverage Flexible hybrid work arrangement (up to 2 days per week from home) Abundant networking opportunities across various disciplines
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Global) as one of the programmes. It is home to a community of over 100 PhD, Postdoctoral and Professorial researchers working on diverse themes related to sustainable cities and resilient infrastructure
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100%, Zurich, fixed-term The Laboratory of Ecosystems and Landscape Evolution at the ETH Zurich is looking for candidates to fill a post-doctoral position as part of the fully funded SNFS
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with exam grading. - The anticipated start date is 1 September 2025 (earlier start dates can be considered). - A PhD in Mathematics (completed by the start date) is required. Please submit your
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100%, Zurich, fixed-term The Laboratory for Mesoscopic Systems based at the Paul Scherrer Institute (PSI) is a joint laboratory between the ETH Zurich and the Paul Scherrer Institute, which is the
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Postdoctoral researcher position on Resilient Energy Infrastructures for the Swiss Energy Transition
100%, Zurich, fixed-term The Research Center for Energy Networks (Forschungsstelle Energienetze – FEN ) of the Swiss Federal Institute of Technology, Zurich (ETHZ ) acts as a bridge between academic
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candidate who is motivated to precisely understand complex biological systems through fundamental research, who is passionate about driving and performing research in an interdisciplinary team, and who can
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100%, Zurich, fixed-term The Forest Resources Management group is seeking a postdoctoral researcher to join the UPSCALE project to develop data fusion algorithms able to quantify forest composition