Sort by
Refine Your Search
-
Listed
-
Category
-
Employer
- NTNU - Norwegian University of Science and Technology
- Nord University
- University of Oslo
- University of Bergen
- Molde University College
- UiT The Arctic University of Norway
- NORCE
- NHH Norwegian School of Economics
- Norwegian Meteorological Institute
- Norwegian University of Life Sciences (NMBU)
- SINTEF
- Østfold University College
- 2 more »
- « less
-
Field
-
computational skills (using R, modelling software, working on a remote linux-based server) and experience in analyzing Next Generation Sequencing data, including PCA, outlier analysis, GO-term enrichment analysis
-
archaeological excavations and dating with climate modelling on the one hand and research on human minds and sociality on the other. The PhD position will be part of an interdisciplinary project with the goal
-
Abandonment (P&A) Technology and within the framework of the ongoing industry sponsored research program SFI – Center for Subsurface Well Integrity, Plugging and Abandonment (SWIPA) https://www.sintef.no/en
-
Cookie-erklæringen var sist oppdatert 12.06.2025 Hva er en cookie? En cookie er en liten datafil som lagres på datamaskinen, nettbrettet eller mobiltelefonen din. En cookie er ikke et program som kan
-
selection criteria You must have an academically relevant background within Civil / Environmental / Hydraulic Engineering, Computer Science, Applied Mathematics, or related areas. You must have a Master's
-
at NTNU and entering their final year during 2025. Such applicants will be considered for the Integrated PhD program. The position's working place is NTNU campus in Trondheim or Gjøvik. Your immediate
-
. Addressing housing-related health risks in the USA, Vietnam, Turkey, and Ecuador, the project integrates community engagement, data science, and computational modeling. The key objectives of ComDisp
-
computational modeling. The key objectives of ComDisp are: • Identifying and understanding housing, air quality, and respiratory health issues in each case study. • Linking climate change models to housing