467 machine-learning "https:" "https:" "https:" "UCL" "UCL" "UCL" uni jobs in Austria
Sort by
Refine Your Search
-
Listed
-
Employer
- University of Vienna
- Nature Careers
- Universität Wien
- Graz Medical University
- University of Graz
- Johannes Kepler University
- AIT Austrian Institute of Technology
- University of Innsbruck
- Veterinärmedizinische Universität Wien (University of Veterinary Medicine Vienna)
- University for Continuing Education Krems
- academy of fine arts vienna
- Graz University of Technology
- TU Wien
- WU Vienna University of Economics and Business
- Personalabteilung der Montanuniversität Leoben
- BBMRI-ERIC
- CeMM - Research Center for Molecular Medicine of the Austrian Academy of Sciences
- Institute of Science and Technology Austria
- Institute of Science and Technology Austria (ISTA)
- Medizinische Universität Wien (Medical University of Vienna)
- UNIVERSITY OF EAST LONDON
- University of Salzburg
- ;
- Academic Europe
- Austrian Academy of Sciences, The Austrian Centre for Digital Humanities (ACDH)
- Austrian Academy of Sciences, The Institute for Medieval Research (IMAFO)
- Austrian Academy of Sciences, The Institute for Social Anthropology (ISA)
- Austrian Academy of Sciences, The Vienna Institute of Demography (VID)
- Austrian Academy of Sciences, the Institute for the Cultural and Intellectual History of Asia (IKGA)
- Austrian Academy of Sciences, the Johann Radon Institute for Computational and Applied Mathematics (RICAM)
- Austrian Centre of Industrial Biotechnology (ACIB GmbH)
- Central European University;
- EpiFlaMe Consortium (located at University of Salzburg, University of Linz, and Medical University of Vienna)
- IIASA
- IST Austria
- ISTA
- Insitute for Human Sciences (IWM)
- Institute for Advanced Studies
- Karl Landsteiner University of Health Sciences
- Kunstuniversität Linz
- St. Anna Children's Cancer Research Institute (St. Anna CCRI)
- St. Anna Kinderkrebsforschung e.V.
- University of Music and Performing Arts, Graz (KUG)
- Universität für angewandte Kunst Wien
- mdw - University of Music and Performing Arts Vienna
- 35 more »
- « less
-
Field
-
Learning & Development Specialist
-
As Austria's largest research and technology organisation for applied research, we are dedicated to make substantial contributions to solving the major challenges of our time, climate change and digitalisation. To achieve our goals, we rely on our specific research, development and technology...
-
to develop intelligent solutions in computer vision, robotics and control. We work closely with industrial and academic partners to bring cutting-edge algorithms onto real machines and into real environments
-
of the doctoral studies. The successful applicant will get a contract as university assistant (prae doc) and will be working in the research group Data Mining and Machine Learning at the Faculty of Computer Science
-
. The successful applicant will get a contract as university assistant (prae doc) and will be working in the research group Data Mining and Machine Learning at the Faculty of Computer Science. The group’s research
-
-DV-2026-003697 All applicants are invited to submit their application online via the recruiting platform. For further job related details see link below: https://www.medunigraz.at/offene-stellen
-
-HNO-2026-003724 All applicants are invited to submit their application online via the recruiting platform. For further job related details see link below: https://www.medunigraz.at/offene-stellen
-
machine learning-based information systems, big data analytics, sociotechnical criteria of AI, and data quality. What to expect Research: You will collaborate on ongoing research topics and projects as
-
, DeepFields (using drones, airborne optical sectioning (AOS) -a unique synthetic aperture sensing technique developed by JKU-, and machine learning for harvest and damage estimation in agriculture), in
-
., research stays, conference participation) Excellent computer skills, particularly in data analysis and scientific documentation Interdisciplinary thinking and the ability to work effectively in a