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of machine learning What We Offer: On the basis of full-time employment (40 hours/week) the minimum salary in accordance with the collective agreement is € 5,014.30 gross per month (14 x per year, CA Job Grade
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(https://oskar-morgenstern-doctoral-school.univie.ac.at/), providing them with additional funding for research, and the possibility to learn from and with students from adjacent disciplines. Outside
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and machine learning. Internal further training & coaching: The Vienna Doctoral School as well as the Department of Human Resources offer plenty of opportunities to grow your skills in over 600 courses
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| Working hours: 30 | Collective bargaining agreement: §48 VwGr. B1 Grundstufe (praedoc) Limited until: 31.03.2030 Reference no.: 5335 Among the many good reasons to want to research and teach
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no.: 5115 Explore and teach at the University of Vienna, where over 7,500 brilliant minds have found a unique balance of freedom and support. Join us if you’re passionate about groundbreaking international
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the contract. We are looking for graduates from: Renowned management programs: e.g., M.Sc. in Business or Adjacent disciplines such as economics, psychology, engineering, or computer sciences: e.g., M.Sc. in
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skills, including proficiency in statistics, scientific programming, and/or modelling. We especially welcome candidates interested in applying AI and machine learning to analyse heritage datasets
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statistics, scientific programming, and/or modelling. We especially welcome candidates interested in applying AI and machine learning to analyse heritage datasets. What we offer: • A stimulating
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morphometrics. Desirable but not strictly required are knowledge and application of Amira and/or Drishti software packages for reconstructing CT data. Basic knowledge about machine learning is of advantage. Very
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simulation methods and quantum theoretical calculations in principle can address this but have hitherto struggled with tackling such challenging systems. With the emergence of machine learning methods in