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of the “Landscape Archaeology and Architecture” doctoral program of the BerGSAS, https://www.berliner-antike-kolleg.org/en/bergsas/index.html We welcome applications from highly qualified graduates from the fields
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of study in the field of architecture. The scholarships also promote the exchange of experience and networking amongst colleagues. Who can apply? You can apply if you have gained a first university degree in
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Cyber Physical Production Systems (CPPS). The architectures of current specialized machinery are often monolithic and transition paths towards reconfigurable distributed platforms are unclear. Besides
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innovative solutions for current and future key topics. Become a part of our team and join us on our journey of research and innovation! What you will do Testing new foundation model architectures for weather
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collaboration with experimental groups, to address questions of biomedical or industrial relevance. The candidate will develop and use machine learning methods (mainly graph neural network architectures
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resume with professional and technical skills, and exploring the scientific and cultural diversity in Europe and North America? The graduate training program in Scalable 2D-Materials Architectures (2D
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-based AI model evaluation XAI in Physics-Informed Neural Networks (PINNs) Applications in a wide range of machine learning models, architectures, inference targets and data modalities Intersection
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-fertilisation rates and N loss predicitions integration and testing of the model ensemble into a database driven cloud architecture upscale the modelled N-fluxes across European pedo-climatic zones support
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of Scientific Collections (DiSSCo)) Strategic and thematic conception of the data architecture and data flows (with a focus on research data), with consideration of national and international standards and
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architectures [5] and Neural ODEs [2], creating a cohesive end-to-end hydrological model. Transformers will be utilized to pre-process and analyse the raw input data, capturing essential spatial and temporal