Sort by
Refine Your Search
-
Category
-
Employer
- Graz University of Technology
- University of Vienna
- AIT Austrian Institute of Technology
- Atominstitut TU Wien
- Austrian Academy of Sciences, the Erich Schmid Institute of Materials Science (ESI)
- Carinthia University for Applied Sciences
- Karl Landsteiner Privatuniversität
- LEC GmbH
- MedUni Vienna
- St. Anna Children's Cancer Research Institute (CCRI)
- St. Anna Kinderkrebsforschung e.V.
- University for Continuing Education Krems
- Universität Wien
- Vienna University of Technology
- 4 more »
- « less
-
Field
-
19 Feb 2025 Job Information Organisation/Company Graz University of Technology Department Institute of Analysis and Number Theory Research Field Mathematics Researcher Profile First Stage Researcher
-
in particular in ML techniques Experience in data analysis using Python, R or similar Interpersonal skills with initiative and perseverance Collaborative work in a multidisciplinary team Not afraid
-
Biological Insights in Preclinical Glioma ModelsMulti-modal machine learning for predicting Glioma progressionHealthAEye: Deep Learning for Retinal Image Analysis and Disease Monitoring *Life Sciences:Germs
-
Participation in the research projects Development of 2D/3D in vitro cell culture models, immunological analysis Supervision of students YOUR PROFILE Diploma or master's degree in life sciences Interest in
-
analysis and experimental techniques are especially encouraged to apply. Cross-disciplinary experience will be an asset. LanguagesENGLISHLevelExcellent Research FieldGeosciencesYears of Research Experience1
-
by challenges in sensor integration, automated data analysis, standardization, and operator training. ASSESS bridges the gap between research and industry by advancing the design, manufacturing, and
-
for measurement and analysis. The Institute has a powerful IT infrastructure, including modelling software, GIS applications and an in-house computer cluster for data-driven simulations. In addition, a wastewater
-
, competitive, and sustainable living spaces, we develop and integrate state-of-the-art evidence-based analysis and simulation tools for sustainable transportation, systemic urban transformation, as
-
, competitive, and sustainable living spaces, we develop and integrate state-of-the-art evidence-based analysis and simulation tools for sustainable transportation, systemic urban transformation, as
-
techniques for the analysis of arrays of RTD oscillators 5. Equation learning methods for nonlinear models for RTD oscillators Further details on the doctoral programme and the individual PhD topics can be