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Theory and Machine Learning, can easily integrate into our team, independently contribute to current research, and work with responsibility for results. The research project is a collaboration between the
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the working group Economic Geography, which focuses on theory-led, evidence-based, and policy relevant research on spatial aspects of innovation-based socio-economic sustainability transitions. Our research
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an expert in the field of grammar theory (especially based on Romance data). Research competence and initiative proven through international publications in peer-relevant media. Experience in the scientific
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profile development, combining method development, application to real-world problems, and collaboration with experimental groups. Your project will complement ongoing work by other members in the group
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knowledge of methods and theories Experience or willingness to engage in academic teaching Very good English skills and, if possible, German skills or another foreign language What we offer: Work-life balance
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Teaching Methodology. In addition, the areas of Gender Studies, Cultural Studies, Media Theory, Literary Theory, and Literature for Children and Young Adults are well established. More than 5000 students
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of Classical Philology / Latin Studies Excellent command of Latin and Ancient Greek A specialization in ancient epic or ancient drama is desirable; interest in literary theory, narratology, and reception history
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methodological expertise in Ottoman/Turkish and European history, cultural theory, and digital humanities (DH) Research competence and initiative proven through international publications in peer-relevant media
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History. You will be part of the Department of History and will work closely with colleagues here in Vienna as well as with international research networks. Your future tasks: Active participation in
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Assistant (Postdoc) to join the research team led by Univ. Prof. Olga Mula. Our group’s work sits at the forefront of numerical analysis for Partial Differential Equations, enriched with data-driven