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://psychologie.unibas.ch/en/faculty/centers/social-psychology/ ) we are currently looking for dynamic and independent graduate students (Master's degree) or physicians who are interested in carrying out their PhD work in
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Bardow, focuses on sustainability in energy and chemical process systems. We develop methods to advance sustainable energy and chemical process systems from the molecular to the systems scale. In our work
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) will be part of the PhD programme of the Department of Management, Technology, and Economics of ETH Zurich, and will be a member of the labour market division at KOF. In addition, the candidate will work
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are currently looking for dynamic and independent graduate students (Master's degree) or physicians who are interested in carrying out their PhD work in biomedical ethics or psychology. The PhD position is part
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by an EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description PhD Position in Machine Learning Seismology The Swiss Seismological Service (SED
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conditions. The gross salary will be the standard salary rate for PhD students at ETH Zurich. chevron_right Working, teaching and research at ETH Zurich We value diversity In line with our values , ETH Zurich
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8 May 2024 Job Information Organisation/Company Fondation Artanim Research Field Neurosciences Researcher Profile First Stage Researcher (R1) Country Switzerland Application Deadline 31 May 2024
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), Switzerland (http://ibmb.unibas.ch/ ), is currently looking for dynamic and independent graduate students (Master's degree) who are interested in carrying out their PhD work in the ethics of automation. The PhD
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» Statistics Physics » Biophysics Researcher Profile First Stage Researcher (R1) Country Switzerland Application Deadline 11 Jul 2024 - 21:59 (UTC) Type of Contract Temporary Job Status Full-time Hours Per Week
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experiments, and enhanced geothermal systems worldwide. Job description The PhD student will focus on constructing and training advanced machine learning models tailored to characterize induced earthquakes