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engineering (e.g., software architecture, development processes, quality assurance). Very good programming skills (at least in Python and C++); ideally strong hands-on experience with ROS2. Experience in AI
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forms and further information on the application procedure can be found here . Application Deadline Applications may be submitted at any time; there are, however, specific timelines which are detailed
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the team, is required. We are looking for a competent, proactive personality with commitment and motivation, the ability to work independently, and enjoyment of teaching. As part of the application process
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, proactive personality with commitment and motivation, the ability to work independently, and enjoyment of teaching. As part of the application process, candidates are required to complete a scientific
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Description The interdisclipinary and highly international PhD program Medical Research in Epidemiology and Public Health ( PhD EPH ) at the Institute for Medical Information Processing, Biometry
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America, Asia or Africa). The PhD process will be accompanied by integration into TUM’s School of Life Sciences or School of Management and participation in the related Graduate School training programs
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programme via the DAAD Portal. Regardless of this first step, applicants must at the same time apply for admission at SEARCA using the contact details and procedure prescribed by the institution
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part of the PhD research experience and are explicitly encouraged (e.g. South America, Asia or Africa). The PhD process will be accompanied by integration into TUM’s School of Life Sciences or School
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of pathogens and their host interactions. The Sondermann lab [ Link ] is interested in deciphering the molecular processes that determine bacterial interactions in microbial communities. This PhD project
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THE FIELDS OF: ATMOSPHERIC PHYSICS AND CHEMISTRY, ELECTROCHEMISTRY, ELECTROCHEMICAL ENERGY STORAGE (BATTERIES), ELECTRONICS, ELECTRICAL AND MECHANICAL ENGINEERING, HIGH-PERFORMANCE COMPUTING, MACHINE LEARNING