Sort by
Refine Your Search
-
Listed
-
Employer
-
Field
-
: Establishing an efficient and robust pipeline for collecting video, audio, survey, and contextual data from weekly concerts in Symphonic Hall, Musikhuset Aarhus; Developing applause-based candidate metrics
-
://mbg.au.dk/en/ What we offer The department/centre offers: a well-developed research infrastructure, laboratories and access to shared equipment an exciting interdisciplinary environment with many national
-
. Moreover, you will develop and apply next-generation molecular single-cell workflows to better understand e.g. stem cell differentiation, disease heterogeneity, and complex cellular interplays in time and
-
amino acids, e.g. lysine, using fermentation technology. For this purpose, microorganisms that efficiently secrete amino acids will be developed. The vision is that microorganisms, in the future, can be
-
: Develop and refine experimental tasks. Manage collaborations with external partners. Plan and execute analysis strategies. Work with large datasets and apply advanced analytical methods. Contribute to both
-
Job Description We are searching for an excellent, ambitious, and driven experimentalist for a 2-year postdoc position to drive a project aiming to develop resource-efficient programmable photonic
-
to the air. This project aims at developing analytical methods and capacity to sample and quantify volatile PFAS compounds and air emissions from Danish landfills and treatment plants. The project is carried
-
, Postdocs, and academic staff to develop cutting-edge methodologies. The research is cross-disciplinary, combining advanced quantitative analysis, simulation, and systems integration. Your work will be
-
Leicester Institute of Structural and Chemical Biology, United Kingdom. Your work may include clinical and biomedical projects. It may also include technique development work aimed at combining imaging
-
contribute to development of research grant applications. Your profile The applicants should hold a PhD in structural dynamics with focus on data-driven methods (e.g., for input/state/parameter estimation) and