168 machine-learning "https:" "https:" "https:" "https:" "https:" "https:" "https:" "UCL" uni jobs at University of Vienna in Austria
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and Master), and in two doctoral programs. Details on the department can be access on http://geographie.univie.ac.at/en/home/ . Your personal sphere of influence: The position is assigned to the working
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and explaining human behavior in the usage of information technology. For this purpose, the group applies methods from reinforcement learning, explainable AI, natural language processing, and lab
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, morphological, and physiological levels. Successful candidates will join a structured doctoral programme offering first-class supervision, vibrant research networks, and opportunities to publish, teach, and
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in the heart of Europe. Successful candidates will join a structured doctoral programme offering first-class supervision, vibrant research networks, and opportunities to publish, teach, and engage
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networks, and opportunities to publish, teach, and engage internationally. Candidates can select from a list of various open positions of supervisors in the participating doctoral schools (available
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The University of Vienna is a cosmopolitan hub for more than 10,000 employees, of whom around 7,500 work in research and teaching. They want to do research and teach at a place that suits their
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: 01.09.2026 | Working hours: 40,00 | Classification CBA: §48 VwGr. B1 lit. b (postdoc) Limited contract until: 31.08.2032 Job ID: 4863 Among the many reasons to research and teach at the University
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: 40,00 | Classification CBA: §48 VwGr. B1 lit. b (postdoc) Limited contract until: 31.08.2032 Job ID: 4862 Among the many reasons to research and teach at the University of Vienna there is one in
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(https://haitrans.univie.ac.at/ ) based in the University of Vienna Centre for Translation Studies. HAITrans investigates the behavioural and cognitive effects which technologies such as machine
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faculty. Our current research focuses on industrial plant security, digital twins, synthetic data for machine learning in privacy research, formalisation of security risk management and security and privacy