22 evolution-"https:"-"https:"-"https:"-"https:"-"https:"-"Dip" research jobs at University of Lund
Sort by
Refine Your Search
-
technology development to biomedical studies. The main research areas include sensitization, immuno-oncology, and biomarkers. The modern facilities are located at Medicon Village, where academic research is
-
focusing on protein characterization; however, there is a possibility for method development work for interested candidates. Work duties The main duties involved in a post-doctoral posistion is to conduct
-
laser pulses, develop attosecond pulse sources and to study ultrafast processes in semiconductor nanostructures using electron instrumentation. The position(s) imply the development of ultra-short pulse
-
simultaneously with measurements of the gas-phase composition. The work involves the development and application of advanced experimental methods to link surface structure, gas-phase reactions, and catalytic
-
researcher and to create the opportunity of further development. Detailed description of the work duties: To be responsible for research on methods to protect distributed AI systems, where sensitive data is
-
interdisciplinary knowledge in the humanities and social sciences about AI and autonomous systems and their impact on human and social development. WASP-HS enables cutting-edge research, expertise, and competence
-
biology, analytical chemistry, evolution, and data science. The workplace offers access to state-of-the-art core facilities for advanced microscopy and cytometry, cell and molecular biology, extracellular
-
University initially includes researchers from ten departments, and three areas of research have been identified for strategic development: materials research, integration of batteries with power electronics
-
Description of the workplace The Department of Immunotechnology conducts research ranging from advanced technology development to biomedical studies. The main research areas include immuno-oncology
-
particular, the candidate will work on the development of novel deep-learning reconstruction algorithms to retrieve 3D and 4D (3D+time) imaging acquired by advanced X-ray imaging techniques. Such developments