Sort by
Refine Your Search
-
Financing yes Type of Position Full PhD Working Language English Required Degree Master Areas of study Theoretical Physics, Physics, Applied Mathematics Description Description The PhD students will engage in
-
Apr 2026 Financing yes Type of Position Full PhD Working Language English Required Degree Master Areas of study Theoretical Physics, Physics, Applied Mathematics Description Description The PhD students
-
to mastering the great challenges facing society today. The Institute of Radiation Physics conducts research for states of matter under extreme conditions and in very small dimensions. The Department of Laser
-
bacterial species, the sequential process of multicomponent ECM formation in the extracellular space remains unclear. In this project, the interdisciplinary team will combine their expertise in bio
-
to mastering the great challenges facing society today. At the Institute of Radiopharmaceutical Cancer Research scientists (f/m/d) from the fields of physics, chemistry, biology, pharmacy, immunology, medicine
-
of Excellence REC2 offers at the Faculty of Physics, Institute of Applied Physics, Chair of Ultrafast Microscopy and Photonics a position as Research Associate / PhD Student (m/f/x) (subject to personal
-
, their achievements and productivity to the success of the whole institution. At the Faculty of Physics, Institute of Applied Physics, the Chair of Ultrafast Microscopy and Photonics offers a position as Research
-
hierarchically organised samples. To achieve this, we need to improve our understanding of the physical image formation and data recovery processes, among other topics. The advertised positions will focus
-
are an advantage Ability to communicate and carry out work in an interdisciplinary research team (radiochemistry, biochemistry, geochemistry, physical chemistry) and willingness to participate in scientific
-
, the details of the process are not yet fully understood. Mechanistic learning, the combination of mathematical mechanistic modelling and machine learning, enables a data-driven investigation of the processes