Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Employer
- UNIVERSITY OF HELSINKI
- Tampere University
- University of Oulu
- University of Turku
- AALTO UNIVERSITY
- University of Jyväskylä
- Itä-Suomen yliopisto
- LUT University
- Nature Careers
- ;
- Aalto University
- Academic Europe
- ELLIS Institute Finland
- Helsinki Institute of Physics
- Natural Resources Institute Finland (Luke)
- TAMPERE UNIVERSITY
- University of Vaasa
- VTT
- 8 more »
- « less
-
Field
-
, electrocatalysis, and high-performance computing. Its objective is to develop computational methodologies and to advance the fundamental understanding of alcohol electro-oxidation reactions on transition metal
-
single-cell sequencing with high-throughput cell phenotyping and comparative evo-devo across species and developmental stages to link molecular cell states to quantitative phenotypes and evolutionary
-
independent scholarly activity and potential to pursue scholarly activity at a high international level of excellence, Teaching skills required to successfully perform the duties and functions of the position
-
25 Feb 2026 Job Information Organisation/Company University of Oulu Research Field Computer science » Programming Computer science » Other Researcher Profile Established Researcher (R3) Application
-
resource‑efficient future. By combining its expertise in engineering and digitalization, ABB helps various industrial sectors operate at high performance while increasing their efficiency, productivity, and
-
Researcher (R2) Application Deadline 25 Mar 2026 - 14:00 (UTC) Country Finland Type of Contract Temporary Job Status Full-time Is the job funded through the EU Research Framework Programme? Not funded by a EU
-
particular 2D/3D radiation-hydrodynamic simulations using high-performance computing (HPC) and comparison to observational data. The positions are fixed-term for two years and start immediately, preferablyno
-
into genomics and medicine | FinnGen , nationwide longitudinal health registry, iCAN flagship discovery platform and EHR data. The research is supported by high-performance supercomputer LUMI and highly
-
have solid skills in programming and working with libraries for training and using machine learning models. Previous experience in managing large volumes of data and high-performance computing is
-
resolution by integrating plasmonic nanopores with a high-speed Raman detection system, an automated control system, computer simulations, and advanced Raman-based bioinformatics. The RamanProSeq consortium