Sort by
Refine Your Search
-
understanding and innovative fabrication processes to solve urgent problems in organic electronic devices, and enable new components with sustainable functionalities. Collaboration with industry partners will
-
electronic doping to control and modify their electronic characteristics. The project’s goal is to develop fundamental understanding and innovative fabrication processes to solve urgent problems in organic
-
, including manuscript preparation, submission, and peer review processes It is considered an advantage if you have/are: experience with immunological techniques such as immunohistochemistry (IHC) and
-
in the acquired autoimmune disorder immune thrombocytopenia as well as in inborn errors of immunity. You will conduct research using human blood samples, processing them for imaging flow cytometry
-
and Information Science. These positions are funded by the Wallenberg AI, Autonomous Systems and Software Program (WASP). Wallenberg AI, Autonomous Systems and Software Program (WASP) is Sweden’s
-
curiosity-drive person, fascinated by the complexity of biological systems and their ability to self-organize, and the manner in which they come about via evolutionary processes. You are also drawn
-
procedure Apply for the position by clicking the “Apply” button below. Your application must reach Linköping University no later than September 11, 2025. Applications and documents received after the date
-
samples (blood, serum, feces, urine, saliva etc.) experience with Anova knowledge of registers at ABIS, as well as other national registers good computer skills, including knowledge of SPSS and Exel
-
novel machine learning method development. However, you will be part of a larger cross-disciplinary research initiative involving both computer and material scientists, providing excellent opportunities
-
cross-disciplinary research initiative involving both computer and material scientists, providing excellent opportunities for practical impact by taking the outputs from the developed machine learning