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9 Apr 2026 Job Information Organisation/Company University of Basel Research Field Computer science » Other Mathematics » Applied mathematics Physics » Other Researcher Profile First Stage
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field (e.g., Environmental or Soil Sciences, AI, Data Science, Geosciences). Basic knowledge of soil science and strong interest in AI and soil health. Experience with data analysis/modelling and
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with data analysis/modelling and programming (R or Python). Advantageous: geostatistics, digital soil mapping, remote sensing, GIS, big data or cloud tools. Proactive working style, strong communication
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analysis of large datasets, high-throughput metabolomics, time-lapse microscopy, to investigate how to pharmacologically interfere with fundamental mechanisms in the regulation of cancer metabolism
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2 Apr 2026 Job Information Organisation/Company University of Basel Research Field Biological sciences » Other Environmental science » Earth science Environmental science » Ecology Geography » Other
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, including the use of CRISPR-engineered cancer cell lines and metastatic models. In addition, the project integrates high-throughput metabolic profiling of genetic perturbations, computational data analysis
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-on mouse experience will not be considered. The project also includes high-throughput metabolic profiling of genetic perturbations, computational data analysis, and next-generation sequencing (NGS) of pooled
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biochemical models, data assimilation, spatial analysis and GIS approaches. • Programing skills (e.g. R or Python) for data manipulation and visualisation, and to perform statistical analysis (e.g. mixed models
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single cell sequencing approaches. Analysing and visualizing high-dimensional data. Engineering of T cell receptors with CRISPR-Cas9. Testing B and T cell priming conditions in organoids and mouse models
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sequencing approaches. Analysing and visualizing high-dimensional data. Engineering of T cell receptors with CRISPR-Cas9. Testing B and T cell priming conditions in organoids and mouse models of infection