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preference in case of generally equivalent suitability, aptitude and professional performance. Data Protection Information: When you apply for a position with the Technical University of Munich (TUM), you are
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the gastrointestinal system. This large-scale project, with partners at the LSB and the IUF in Düsseldorf (Leibniz Research Institute for Environmental Medicine), combines cellular and molecular biology, sensory science
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Innovation. This position brings together four research groups at TUM: the Chair of Data Science in Earth Observation (Prof. Xiao Xiang Zhu), the Chair of Hydrology and River Basin Management (Prof. Markus
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persons. Disabled applicants will be given preference in case of generally equivalent suitability, aptitude and professional performance. Data Protection Information: When you apply for a position with the
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accessible to users from science and industry Your qualifications: ■ Master’s or equivalent graduate degree in computer science, artificial intelligence, machine learning, mathematics, statistics, data science
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motivation and CV in a single PDF to: claus.schwechheimer@tum.de The position is available instantly and will remain open until filled. Further information: https://www.mls.ls.tum.de/en/plasysbio/home
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in-situ experimental data to the landscape scale. Doing so, you will address questions of climate change impacts on meteorological extremes, phenology of selected forest tree and animal species and
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epidemiology. This collaborative environment fosters innovation and skill development, providing hands-on training in organoid culture, pollutant exposure methods, and data analysis. Additionally, through a
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experience in remote sensing and programming is a plus (e.g., using QGIS or R) Good communication skills Ability to work in a team Your tasks You will conduct research on the use of remote sensing data
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. Hence, you will have substantial freedom to define projects. We focus on methods-driven ML for scientific modeling, currently emphasizing the integration of data-driven and mechanistic approaches