148 data-"https:" "https:" "https:" "https:" "https:" "https:" "https:" "IFM" "IFM" "IFM" positions at UNIVERSITY OF VIENNA in United Kingdom
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. Space for personalities. Since 1365. Data protection Application deadline: 01/18/2026 Prae Doc https://jobs.univie.ac.at/job-invite/499
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areas of work here: https://lit-ktf.univie.ac.at Your future tasks: You will actively participate in research, teaching and administration, which means: Preparation of a dissertation at our Department
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: 30 | Collective bargaining agreement: §48 VwGr. B1 Grundstufe (praedoc) Limited until: 31.01.2030 Reference no.: 5037 We invite you to join the Operational Quantum Information Team (Dakić Group
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(Master / PhD / Postdoc). Our expertise lies in quantum foundations, quantum information theory and quantum technologies. For additional information, please visit: https://dakic.univie.ac.at/ . Your future
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. The focus of our research is in the field of biomathematics. You can find more information about our research area and our team on our website: https://sites.google.com/view/saramerinoaceituno. As a team, we
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Cognitive Science Hub to the Faculty of Psychology as a replacement for the previous technical support provided by a data scientist. Transfer of collected scientific data, data backup/cloud-based
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for the analysis of ONT data are expected. The successful applicant will work in the team of the Joint Microbiome Facility of the Medical Univeristy of Vienna and the Univeristy of Vienna (JMF), and support Centre
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. Your future tasks: Participation in the administration of PhD call advertisements and selection/admission procedures Ensuring effective information exchange between the Steering Committee, the non
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will also become part of the UniVie Doctoral School Computer Science (DoCS), which builds an essential framework to foster excellence in research and teaching. The Research Group Multimedia Information
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with Graphs led by Prof. Nils M. Kriege. Our research focuses on the development of new methods and learning algorithms for structured data. Graphs and networks are ubiquitous in various domains from