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regional excellence with the aim to trigger synergies. The PhD scholarships by Munich Aerospace are designed to allow junior scientists to fully focus on their research work and obtain their degrees in a
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", the foundation supports around 1,450 students and 200 doctoral students from all academic backgrounds and types of higher educational institutions in Germany and abroad. Each year, up to 250 new scholarship
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scientific standard of the laboratory, in which the project is to be realised. Number of Scholarships about 45 fellowships per year Duration 2 years with the option to apply for an extension of up to 18 months
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for Digital Economics is part of the school of Management Sciences and Technology at the Hamburg University of Technology. We study decision making, strategic interaction and the impact of digitisation
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available in the further tabs (e.g. “Application requirements”). Programme Description The DBU scholarship programme for PhD students aims to support young academics in the field of applied environmental
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an artistic development project at a higher education institution in Mecklenburg-West Pomerania are welcome to apply. The PhD scholarships are awarded to graduates with excellent academic achievements who have
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available in the further tabs (e.g. “Application requirements”). Programme Description The ESV scholarships are open to protestant students from all disciplines and subjects wishing to study full-time at a
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available in the further tabs (e.g. “Application requirements”). Programme Description Every year the Studienwerk funds scholarships and a wide range of educational programmes for about 300 German and foreign
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procedure here . Application Deadline Deadlines for scholarship application are 31 March for admission on 1 October of the same year and 30 September for admission to the programme starting 1 April
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– from the modeling of material behavior to the development of the material to the finished component. PhD position on physics-based machine learning modeling for materials and process design Reference