45 computer-security "https:" "https:" "https:" "https:" "https:" "U.S" "U.S" "St" positions at University of Tübingen
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und Innere Dienste VII – Finance Division VIII – Construction, Safety, and Environment Staff units Gender equality Back Gender Equality Representative Equity Team Beauftragte für Chancengleichheit
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large-scale scientific research and foundation models. The Machine Learning Science Cloud is part of the AI/ML compute ecosystem in Tübingen. Our users work on diverse research and transfer projects
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Your profile: Background in Psychology, Educational Science, Computer Science, Neuroscience, or a related field Fluent in German Strong verbal communication skills Ability to work independently and
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16.02.2026 Application deadline : 15.03.2026 The Collaborative Research Center (CRC) 1233 “Robust Vision” brings together leading researchers in machine learning, computer vision, and systems
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21.04.2026 Application deadline : 08.05.2026 At the Institute of Education at the University of Tübingen, a position as Research Associate in the area of learning sciences (m/f/d, E13 TV-L, 75%, 4 years) is to be filled as soon as possible. The position is embedded in a Momentum grant of the...
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of molecular plant sciences, plant biomechanics and computational approaches would be desirable. The postdoc should be eager to work within a larger international and interdisciplinary group. Additional
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”. A precondition for application would be a Master degree in economics (or alternatively, an current enrolment in a doctoral student program in economics). We expect previous activities in economic
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in computer science, data science, and research IT. The overarching goal is to jointly develop sustainable, FAIR-compliant data structures that will support scientific discovery within the cluster in
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applications, although this is not the primary goal of the position. What you will bring (position requirements): A PhD in machine learning or data science and a background in computer science, physics
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. Applicants should have a background in population genetics/genomics, molecular ecology, biodiversity informatics, or a related field. Experience with large-scale data analysis is essential. Additional