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project in Germany as part of your fellowship; if you are a postdoc, long-term academic research (12-24 months). It should focus on combating climate change, adaptation strategies, preserving ecosystems and
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of the German Armed Forces Munich), the DLR (German Aerospace Center) with its Oberpfaffenhofen institutes, and the BHL, the Bauhaus Luftfahrt. This pooling of research, graduate programmes and teaching merges
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Description For our location in Hamburg we are seeking: Doctoral Researcher in Machine Learning and Data Processing in the Field of Seismic Measurements Remuneration Group 13 | Limited: 3 years
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January 2027. Funding or extension beyond 31 January 2027 is not possible. Scholarships cannot be extended. Value monthly scholarship payments of 1.400 euros for doctoral candidates and postdocs, 2.000
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Type D – Senior Scientists: 1 to 3 months Type E – Visiting Researchers PhD/Postdoc Level: 1 to 6 months Value Type A – Graduate Students (Research in Germany): monthly instalment of 992 euros; plus e.g
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of industrial processes. In a joint effort of both institutes, the Department AI4Quantum – Machine Learning for Quantum Simulation and Computing and Thermal Energy and Process Engineering are looking for a PhD
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; Bachelor's students and postdocs cannot receive funding. Duration up to 6 months Scholarship Value individual financial support, but limited to 10,000 EUR per request Application Papers Application forms and
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machine learning (ML) along with data from previously solved problem instances to solve new, yet similar, instances more efficiently than with general purpose algorithms such as Newton`s method. In
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), doctoral students, postdoctoral researchers (postdocs, university teachers) working/enrolled in higher education institutions in Ukraine, regardless of the country in which they currently reside. What can be
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the development and application of probabilistic inference methods and machine learning techniques for quantitative uncertainty modeling and for the integration of heterogeneous climate data