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candidate must have documented expertise in large-scale high-performance computing analysis within environmental genomics and experience with systems administration of high-performance computing clusters
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enable students, companies, and society at large to address the grand challenges in an increasingly volatile, uncertain, complex, and ambiguous (VUCA) world. The successful candidate will join a dynamic
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-drive systems. Across the above areas, you are expected to contribute to model-based and data-driven/AI-based methods, including digital twins, physics-informed learning, data analytics, and AI-assisted
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research experience and must not have a doctoral degree. Your work tasks The energy transition poses fundamental challenges for our power grids: large conventional power plants with synchronous generators
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research and education directed towards the end-user. Your work tasks This position will involve working with real-time graphics, computer vision, applied AI and integrating Large Language Models (LLMs
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spaceborne Earth observation (EO) systems rely on highly sophisticated instruments on board of few large and extremely expensive spacecraft, fundamentally limiting the constellation size and, consequently
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of Computer Science, the Technical Faculty of IT & Design. We invite applications for two fully funded PhD stipends in the area of Natural Language Processing (NLP), Knowledge Graphs (KGs), and Large Language Models
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more about the department at www.es.aau.dk. Your work tasks The PhD project is part of a bigger Novo Nordisk Foundation (NNF) New Exploratory Research and Discovery grant entitled: Information Theoretic
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tasks The scope of the PhD position(s) fall within the areas of novel low-complexity neural network architectures, generative audio techniques, and the integration of large language and speech foundation
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candidate is expected to hold: A master degree in biomedical engineering or computer science, Excellent programming skills (Python). Experience with data curation, large-scale datasets, and machine learning