Sort by
Refine Your Search
-
Listed
-
Employer
-
Field
-
of applications may be used in the initial selection process. Living and working in Denmark Foreign applicants will be offered Danish language training as part of the employment. The International Staff Office (ISO
-
PM/23.59 (CET/CEST) Assessment and selection process Assessment of applications will be done under existing Appointment Order for universities. Applications will be assessed by an assessment committee
-
to strengthen DTU’s research within solvent-based carbon capture by developing experimental and modelling insights into solvent CO2 interactions and process performance. You will work closely with colleagues in
-
energy system. Qualified applicants must have: PhD degree in physics, astronomy, engineering, computer science or similar. Experience with finite element modeling, ideally Comsol Multiphysics. Experience
-
at the bottom of the jobpost. Further information Read more about our recruitment process here The appointment process at Aalborg University involves a shortlisting process. You can read more about the
-
Two postdoctoral positions (3-year) in Experimental Evolution of Methanogenic Microbiomes in Bioe...
genome-scale and process-level models and contribute to comparative analyses across scales and experimental conditions. Postdoctoral researcher in experimental evolution of complex methanogenic microbiomes
-
environment with an emphasis on international collaboration. Your profile Applicants across the disciplines of physics, chemistry and biology are considered for this position. Outside of having a strong
-
candidates will be involved in materials crystallography research in collaboration with other members of the Iversen group. The candidates must have a PhD in chemistry, crystallography, physics, materials
-
, at 11.59 PM/23.59 (CET/CEST) Assessment and selection process Applications will be assessed by an assessment committee. Shortlisting may be applied. Shortlisted candidates will receive a written assessment
-
will: Develop and implement model-based and data-driven (AI) optimization algorithms for battery charging Integrate physics-informed models and data-driven tools to design health-aware charging protocols