Sort by
Refine Your Search
-
Category
-
Employer
- Nature Careers
- Technical University of Denmark
- Aarhus University
- Geological Survey of Denmark and Greenland (GEUS)
- University of Copenhagen
- University of Southern Denmark
- ;
- ; University of Copenhagen
- Aalborg University
- Copenhagen Business School
- Copenhagen Business School , CBS
- Section for Computational and RNA Biology, Department of Biology, University of Copenhagen
- The University of Copenhagen
- 3 more »
- « less
-
Field
-
September 1st, 2025, or as soon as possible. The positions are for two years with potential for extension. We seek outstanding candidates to develop generative-AI-based statistical methods for blood-based
-
(e.g., Statistics, Mathematics, Physics). You will be passionate about science, hardworking, and excited to learn and improve skills in an outstanding research environment. You will be part of a
-
or in a related quantitative field (e.g., Statistics, Mathematics, Physics). You will be passionate about science, hardworking, and excited to learn and improve skills in an outstanding research
-
phenological data using camera and drone-based imagery. Use genetic analyses to assess the relationship between genetic differentiation and phenological variation. Develop and implement advanced statistical
-
analyses to assess the relationship between genetic differentiation and phenological variation. Develop and implement advanced statistical models to quantify phenological responses. Collaborate with internal
-
and a demonstrable interest and experience in the use of computational methods. The candidate should combine the use of quantitative and statistical approaches with (solid) historical analysis, in line
-
and a demonstrable interest and experience in the use of computational methods. The candidate should combine the use of quantitative and statistical approaches with (solid) historical analysis, in line
-
patterns, and extreme climate events remains a subject of debate. Using a combination of climate modelling, statistical methods, and machine learning, ArcticPush aims to uncover the conditions under which
-
patterns, and extreme climate events remains a subject of debate. Using a combination of climate modelling, statistical methods, and machine learning, ArcticPush aims to uncover the conditions under which
-
study programmes: mathematics(including a specialization in statistics at the master level), mathematical economics, and mathematics-technology. What we offer We offer a unique opportunity to strengthen