Sort by
Refine Your Search
-
Listed
-
Category
-
Field
-
available in the further tabs (e.g. “Application requirements”). Programme Description The Munich Aerospace e.V. Bavarian Research Network was initiated in 2010 to combine key expertise in the field
-
sciences and build an interdisciplinary network of experts on the environment. To this end, the scholarships help finance doctoral theses which clearly address topical environmental protection and nature
-
Mobility (IAM), considering ecological, economic, technological, and sociological factors. The RTG's structured PhD program aims to train young researchers in highly automated, networked mobility, featuring
-
Value 1,500 EUR per month contribution to statutory health insurance networking within student and working groups comprehensive seminar programme participation in symposia Application Papers Application
-
Excellent command of spoken and written English Our offer A vibrant research community in an open, diverse and international work environment Scientific excellence and extensive professional networking
-
in living adaptive networks Biophysics: High-resolution structural and mechanical studies of molecular motor proteins at the nanoscale Required Documents Required Documents CV Certificates Motivation
-
Mobility (IAM), considering ecological, economic, technological, and sociological factors. The RTG's structured PhD program aims to train young researchers in highly automated, networked mobility, featuring
-
to the alumni network of the Ernst Ludwig Ehrlich Studienwerk. Target Group technically qualified Jewish doctoral candidates in all disciplines and concentrations (except medicine) and non-Jewish PhD students who
-
science, applied mathematics, physics or a similar area very good programming skills in Python good prior experience with neural networks using common Python-ML libraries such as PyTorch preferably also background
-
. Only online applications will be accepted. AVAILABLE PROJECTS: Nanoscience: Application of bistable DNA devices Biophysics: Learning in living adaptive networks Biophysics: High-resolution structural