Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Program
-
Field
-
39 Faculty of Computer Science Startdate: 01.10.2025 | Working hours: 30 | Collective bargaining agreement: §48 VwGr. B1 Grundstufe (praedoc) Limited until: 31.03.2026 Reference no.: 4287 Among
-
applicants for a 6-month paternity leave replacement who have a strong interest in using computational methods such as cognitive and psychophysiological modeling, (Bayesian) statistics and optimal experimental
-
. Computing time is available on our local cluster and on the Vienna Scientific Cluster (VSC), a supercomputer shared by Austria's major universities. We focus on the development of methods to solve the many
-
part of the research team of the professorship of Ancient Philosophy of Prof. Dr. George Karamanolis. The main research areas associated with this professorship are: The philosophy of Aristotle with
-
home of several third-party funded research projects. Through cooperation with numerous academic institutions worldwide, the Department is very well connected with the international scholarly community
-
central administration team and independently carry out all administrative tasks relating to personnel, budget and teaching. The preferred candidate will be responsible for providing support to Univ.-Prof
-
actively participate in research, teaching & administration, which means: Merging computer science and qualitative and quantitative social science methods, you explore the conceptual data models
-
materials discovery and machine-learning-accelerated materials simulation. You lead and guide the development of novel computational materials discovery and molecular simulation methods. You take a key role
-
. Interests could include geological field-based methods and big data applications and machine learning methods. Research focus will be on feedback processes between erosion, sedimentation, tectonics and
-
instrumental analytical methods and, on the other hand, will deal with the computer-aided analysis and processing of large analytical-chemical data sets. Experience and knowledge of digital teaching and