Sort by
Refine Your Search
-
that generate substantial amounts of data. You will become part of the department’s data team and a network of data managers across the Faculty of Natural Sciences, where data management, high-performance
-
performative aspects of dictators’ communication, and it seeks to explain how and why such communication changes across different strategic contexts (such as during different types of crises). Utilizing, among
-
-performance computing (HPC) facilities, including Center for Scientific Computing Aarhus (CSCAA) and GenomeDK. Applying for other computing resources on European HPCs (i.e., LUMI through DeiC) is supported
-
”, affiliated with the Danish Innovation Index (DII) at the PhD Programme Management, and will establish the Danish Innovation Index as a research excellence group at the Department. The positions are available
-
you provide a 2-3 page plan for research over the next 3-5 years within focused parts of the research area and have a clear potential to perform high-quality research as well as attract external funding
-
to algorithms with actionable performance guarantees. More specifically, the research will revolve around the following theme: High probability convergence in stochastic optimization under heavy-tailed noise
-
Technical Sciences Tenure Track Aarhus University offers talented scientists from around the world attractive career perspectives via the Technical Sciences Tenure Track Programme. Highly qualified
-
student mentorship, and strong interpersonal and communication skills. Documented ability to publish scientific work in high‑ranking journals. Responsibilities Conduct state‑of‑the‑art research within
-
quantitative characterization of mixed defined microbial communities, including adaptive evolution. This project is a collaboration with chemists to produce high quality carbon materials from waste CO2 . Systems
-
at the Department of Electrical and Computer Engineering, Aarhus University, where we are advancing communication-efficient and distributed foundation model inference across the computing continuum