Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- Technical University of Denmark
- Nature Careers
- Aarhus University
- University of Southern Denmark
- Aalborg University
- University of Copenhagen
- Copenhagen Business School , CBS
- ;
- Aalborg Universitet
- Copenhagen Business School
- Queen Mary University of London
- Technical University Of Denmark
- 2 more »
- « less
-
Field
-
abilities. Prior experience with metabolomics, transcriptomics, bioinformatics, and imaging is a plus. For more information, please feel free to contact Per Svenningsen at psvenningsen@health.sdu.dk
-
on working in Denmark and at DTU at DTU – Moving to Denmark . Application procedure Your complete online application must be submitted no later than 28 September 2025 (23:59 Danish time). Applications must be
-
of dynamic operation, which is essential for effective system-level integration. The technology should have a high and stable electrochemical performance. Furthermore, mechanical robustness is a challenge
-
the pdf-files into a single file, as each field handles only one file. We do not accept zip-files, jpg or other image files. All pdf-files must be unlocked and allow binding and may not be password
-
For further information, please contact: Assistant professor Rasmus Kock Flygaard, email: rkf@mbg.au.dk Deadline Applications must be received no later than 24th September 2025. Application procedure
-
procedure Shortlisting is used. This means that after the deadline for applications – and with the assistance from the assessment committee chairman, and the appointment committee if necessary, – the head of
-
of molecular and biochemical techniques, primary culture, as well as imaging. In addition to research, the duties of the postdoctoral fellow will also include administrative and teaching tasks
-
-term resilience of restored wetlands under pressures such as climate extremes and wildfires remains poorly understood. Biogeochemical processes governing carbon, nitrogen, and phosphorus cycling, as
-
approach will create a unique foundation for advanced data analysis, including AI, machine learning, and statistical modeling, aimed at uncover the key traits that define successful microbial biofertilizers
-
embedded in the section for Process & Materials Engineering, where the research focus is almost entirely on development of new sustainable solutions, materials and processes for the green transition. AU-BCE