Sort by
Refine Your Search
-
Category
-
Program
-
Employer
- University of Vienna
- Universität Wien
- University of Innsbruck
- Graz University of Technology
- Johannes Kepler University
- Karl-Franzens-University Graz
- Atominstitut TU Wien
- Austrian Academy of Sciences, The Space Research Institute (IWF)
- University of Graz
- Vienna University of Technology
- WU Vienna University of Economics and Business
- Klagenfurt University
- LEC GmbH
- MedUni Vienna
- Medical University Graz
- Nature Careers
- Personalabteilung der Montanuniversität Leoben
- St. Anna Children's Cancer Research Institute (CCRI)
- St. Anna Kinderkrebsforschung e.V.
- TU Wien
- 10 more »
- « less
-
Field
-
particular by employing advanced methods from the field of artificial intelligence (AI) and its subfield machine learning (ML). Where to apply E-mail career@lec.tugraz.at Requirements Research FieldEngineering
-
science, mathematics, life sciences and beyond. Open PhD Projects in the summer PhD Call:*Artificial Intelligence & Machine Learning:Pharmacokinetic modelling of [18F]FET PET in Gliomas and associations with tumor
-
ability to express yourself both orally and in writing Computer literacy (MS-Office; Imaging Software) Basic experience in academic writing Didactic competences / experience with e-learning Excellent
-
• Computer literacy (MS-Office; Imaging Software) • Basic experience in academic writing • Didactic competences / experience with e-learning • Excellent command of written and spoken English (C1 Level
-
classical and quantum mechanics, and machine learning, will be employed alongside the development of precise enzymatic assays and high-throughput robotic platforms to deliver novel enzyme activities
-
acquisition process, identification of parameters, variational modeling, and generative machine learning methods; see https://imsc.uni-graz.at/mr-dynamo for further details. As part of this research effort, we
-
profound knowledge of current statistics and omics analysis methods and an understanding of the common fragmentation mechanism of analyzed biomolecules, and current statistics, including machine-learning
-
leveraging advanced computer vision and deep learning-based pose estimation from football match footage to analyze pre-injury biomechanical patterns and joint load dynamics. The research aims to create
-
process, identification of parameters, variational modeling, and generative machine learning methods; see https://imsc.uni-graz.at/mr-dynamo for further details. As part of this research effort, we invite
-
experimental, econometric, machine-learning, or qualitative research methods sound intriguing? Then consider applying for our open tenure track positions. Department of Marketing Fulltime, 40 hours/week Starting