77 computer-programmer-"the"-"U"-"UCL"-"U.S"-"IMPRS-ML" positions at UNIVERSITY OF VIENNA
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the field of Operations Research. You have a Master’s degree in industrial engineering, information systems, business administration and/or economics, computer science or a related field. Experience
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The University of Vienna plans to expand the existing Research Data Management services by offering discipline-specific support through the new Data Stewardship program. The Faculty of Earth Sciences, Geography
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publication-ready habilitation. You hold courses independently in the Bachelor programme „Languages and Cultures of South Asia and Tibet” and the Master programme “Languages and Cultures of South Asia” within
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a variety of approaches, such as stochastic processes, kinetic theory, variational analysis, finite element methods, and data-driven techniques. The Vienna School of Mathematics doctoral program
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Studies (https://dshcs.univie.ac.at/en). The Master’s program in Digital Humanities provides an institutional platform for cooperation between the Faculty of Historical and Cultural Studies and the Faculty
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of the group contribute to the teaching at the Faculty of Physics at all levels from the Bachelor to the Doctoral program. The successful candidate is expected to participate in the research projects
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of Vienna, Faculty of Chemistry, is home of the Vienna Doctoral School in Chemistry (DoSChem). DoSChem is the largest doctoral training program in Austria focusing on the field of chemistry and closely
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academia. Your responsibilities will include conducting CV checks and mock interviews, as well as developing training and programmes tailored to specific target groups. You will proactively establish and
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, and building up an independent research profile you publish internationally and present papers in conferences and workshops give you independently teach courses in the BA program (proseminars), one
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. program and will work on the development and analysis of statistical methods for machine learning, particularly in the context of high-dimensional models and with a particular focus on methods such as