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microscopy. Experience with cancer organoid models and/or bioinformatics is an advantage. We offer broad training possibilities in the required experimental methods within a stimulating academic environment in
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. Integreat develops theories, methods, models, and algorithms that integrate general and domain-specific knowledge with data, laying the foundations of next generation machine learning. We do this by combining
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Integreat develop theories, methods, models, and algorithms that integrate general and domain-specific knowledge with data. By combining the mathematical and computational cultures, and the methodologies
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at Integreat - Norwegian Centre for Knowledge-driven Machine Learning is a Centre of Excellence, funded by the Research Council of Norway. Researchers at Integreat develop theories, methods, models, and
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continuously updated with real-time data to simulate, predict, or analyse the performance or behaviour of the twinned system. Digital twins rely heavily on data to maintain their operations, which includes both
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presented before taking up the position. CV A copy of the doctoral thesis. If you are close to submitting, you can attach a draft of the thesis. A project sketch containing proposals for an overall
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presented by the applicants, and the detailed description draw up for the position. A copy of the assessment report will be sent to all applicants. The applicants who are assessed as best qualified will be
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) and economics (or related fields). Applicants must have experience in one or more of the topics: Model-predictive control Numerical optimization Econometrics Virtual power plants Power systems and/or
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updates, and interoperability at scale. In close collaboration with project partners, the PhD candidate will focus on relevant data modeling and processing approaches for data gap filling, redundancy
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guidelines . CV A copy of the master thesis and, if applicable, a list of other scientific publications. 2-3 personal references including contact information and relation to the applicant Copy of education