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modeling to create a predictive tool that spans orders of magnitude in length and time. Hands-On Numerical Modeling: Implement your model in a custom-made data analysis tool that uses advanced optimization
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15 Apr 2026 Job Information Organisation/Company Graz University of Technology Department Institute of Architecture and Media Research Field Architecture Researcher Profile Recognised Researcher (R2
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analysis Participation in administrative tasks of the institute Your Profile In-depth knowledge of transportation planning, road design and traffic data analysis Very good computer skills German and English
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sampling of zooplankton along environmental gradients Statistical analysis and interpretation of experimental data Publication of research results in peer-reviewed scientific journals Presentation
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29 Jan 2026 Job Information Organisation/Company Universität Innsbruck Department Department of Microbiology Research Field Biological sciences » Other Researcher Profile First Stage Researcher (R1
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(preferably in R, Python, GIS) • Competences in quantitative research methods - ideally knowledge of several of the following aspects of quantitative data analysis: analysis of large/longitudinal datasets
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from chem- and bioinformatics to computer vision and social network analysis. Machine learning with graphs aims at exploiting the potential of the growing amount of structured data in all these areas
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and learning algorithms for structured data. Graphs and networks are ubiquitous in various domains from chem- and bioinformatics to computer vision and social network analysis. Machine learning with
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aspects of quantitative data analysis: analysis of large/longitudinal datasets, latent variable modelling techniques, structural equation modelling – and strong motivation and curiosity to enlarge
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social network analysis. Machine learning with graphs aims at exploiting the potential of the growing amount of structured data in all these areas to automate, accelerate and improve decision making