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Teaching will primarily be in Modelica-based simulation of building and district energy systems, indoor environmental quality, and building engineering systems, but also in other study programs at Aalborg University. You may obtain further professional information from Professor Alireza Afshari,...
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degree in computer science or a closely related field such as mathematics or control engineering. Due to the project’s angle, applicants should have a strong background in at least one of the following
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, mathematics, engineering, or a field relating to data science with emphasis on statistical modelling. You are required to have: Experience with statistical modelling Strong programming skills in one of the main
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science, statistical analysis, and mathematics. Experience with programming languages such as MATLAB and Python. Excellent analytical, problem-solving, and modeling skills. Strong written and verbal
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We seek PhD students that will contribute to new generations of scalable, model-based tools for cyber-physical systems based on a mathematical sound foundation, that enables trade-offs between
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Research areas will be within the domain of risk, resilience and sustainability of complex systems. This involves utilization of advanced techniques for probabilistic modeling and analysis of systems, and their further development such as to enhance their efficiency, ensure consistency in...
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science(e.g., mathematics, physics, computer science, etc.), a strong background in data science, statistics, or machine learning, and an interest in biomedicine. Alternatively, a candidate with a
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Postdoc in statistics to develop Bayesian privacy metrics for synthetic health data (2024-224-05725)
. Qualification requirements: You should hold a PhD degree in computer science, statistics, physics, mathematics, engineering, or a field of science relating to data science with emphasis on statistical
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proper decisions. The trade-off between safety and greediness are assessed using stochastic constrained optimization. At the outset, it is assumed that the mathematical model of the system is known