20 data-"https:" "https:" "https:" "https:" "https:" "https:" "Dr" research jobs at Technical University of Munich
Sort by
Refine Your Search
-
. She will also be happy to provide you with further information in advance. Prof. Dr. Karen Alim Technische Universität München Ernst-Otto-Fischer-Str. 8 85748 Garching b. München k.alim@tum.de
-
of TUM. Kontakt: silke.heindl@tum.de More Information https://transform-cluster.de/
-
this call for applications, you may contact Prof. Dr. Katharina Anders (k.anders{at}tum.de). As part of your application, you provide personal data to the Technical University of Munich (TUM). Please view our
-
Regulation (GDPR)). By submitting your application, you confirm that you have acknowledged the above data protection information of TUM. Kontakt: bewerbungen.cdt@mgt.tum.de More Information https
-
PDF document to agapp@hfp.tum.de by February 6, 2026 at the latest. Information on the processing of your data can be found at: https://www.hfp.tum.de/hfp/aktuelles/stellenangebote/datenschutzhinweise
-
organoid-based research. For more information go to: https://www.bauschlab.org Your Qualification: High motivation, curiosity, and commitment to scientific excellence PhD in stem cell biology, developmental
-
for tissue self-organization. For more information go to: https://www.bauschlab.org Your Qualification: High motivation, curiosity, and commitment to scientific excellence Master's degree (for PhD
-
kinetic mechanisms and key elementary reactions involved. Addressing this shortcoming is the goal of this project. Please visit the DFG research unit description for more information on the topic https
-
basis through January 30, 2026 . For additional information on the projects and the position, please contact Maria Vrachioli, Ph.D. (maria.vrachioli@tum.de ) or Dr. Fabian Frick (fabian.frick@tum.de ). As
-
, agricultural sciences with a focus in economics, or related disciplines - strong analytical and methodological skills with a focus on quantitative data analysis (e.g., econometrics, sta-tistics, machine learning