Sort by
Refine Your Search
-
Job Advertisement 2026-03 At the Leibniz Institute of Atmospheric Physics (IAP), a part-time position (75%) in the Department “Modelling of Atmospheric Processes” is available as PhD student
-
process or the selection procedure, please contact Ms. Jeannette Meurer from the HR Department (meurer(at)bnitm.de ). For further questions please contact Dr. Felix Sauer (felix.sauer(at)bnitm.de , phone
-
organizational levels of the brain – from molecular and cellular processes to complex neuronal networks and behavior. The Department Cellular Neuroscience of Prof. Dr. Stefan Remy in association with the Research
-
research to advance the understanding of vertical coupling processes between the lower and upper atmosphere as part of our team. The role involves investigating how dynamical and chemical processes in
-
regarding the formal application process or the selection procedure, please contact Ms. Jeannette Meurer from the HR Department (meurer(at)bnitm.de ). For all other questions, please contact Prof. Thomas Otto
-
. The time limitation of the contract is based on the Wissenschaftszeitvertragsgesetz (WissZeitVG). ISAS collects and processes the personal data of its applicants in accordance with European and German legal
-
. An existing team with expertise and drive to move forward synthetic biology in cancer immunotherapy. A well-structured on-boarding process and clear responsibilities. A highly professional and supportive
-
, archive files like zip, rar etc. Word documents cannot be processed and therefore cannot be considered!) with the usual documents, in particular Cover letter, CV, proof of qualification and certificates
-
position, please contact PD Dr. Ekin Tilic at ekin.tilic(at)senckenberg.de . For data protection information on the processing of personal data as part of the application and selection process, please refer
-
/biomedical engineering or of relevant scientific field A solid background in machine learning Extensive experience with either computer vision or image analysis Good knowledge of deep learning packages