385 assistant-professor-computer-science-data-"https:"-"https:"-"https:" positions in Switzerland
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Computer Science, Biomedical Engineering, Data Science, Cognitive Science, or a related field Strong Python programming skills and experience with PyTorch or TensorFlow Interest in multimodal data, time-series
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7 Jan 2026 Job Information Organisation/Company EPFL Department ENAC-IIE Research Field Engineering » Mechanical engineering Researcher Profile Recognised Researcher (R2) Positions Postdoc Positions
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Your position The candidate will have the opportunity to exploit some of the cutting-edge experimental and computational methods, comprising constraint-based and kinetic modeling, statistical
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31 Jan 2026 Job Information Organisation/Company ETH Zürich Research Field Economics » Environmental economics Economics » Other Engineering » Other Technology » Energy technology Researcher Profile
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3 Jan 2026 Job Information Organisation/Company University of Basel Research Field Agricultural sciences » Soil science Agricultural sciences » Other Environmental science » Earth science
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, the research group has investigated effects of trainings that help people recognize misleading data visualizations, thereby reducing their negative impact on information extraction (for example, see Rho et al
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20 Jan 2026 Job Information Organisation/Company University of Basel Research Field Economics » Political economy Political sciences » Other Sociology » Other Researcher Profile First Stage
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or mechanical engineering, or CS Solid knowledge of computer vision and ML, particularly anomaly detection methods Experience with multimodal data (e.g., image + time series, sensor fusion) is a strong ad-vantage
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challenges. The work is conducted at the interface of mechanics, artificial intelligence, and computational science. The developed methods will be validated on benchmark problems and real-world data and
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of mathematics, computer science, and evolutionary biology. We develop methods to understand evolutionary, ecological, epidemiological, and developmental processes on different scales based on genetic data. In our