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At The Department of Mathematical Sciences, Faculty of Engineering and Science, Aalborg University, one PhD stipend in statistics for medical research is open for appointment from Aug 1, 2026
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degree in architectural engineering, civil engineering or a related field. Candidates with experience in areas such as building performance simulation, environmental sensing, data mining, and statistics
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training, you will complete relevant PhD courses and engage in academic and departmental activities, which may include limited teaching or supervision tasks in accordance with departmental needs and your own
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, there may be groups of different parameters producing the same output as the true system parameters, making it almost impossible to uniquely recover the actual ones. AI:Wind-Lab aims to develop a set of
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-loss events undermine statistical confidence. The aim is to develop i) edge intelligence (on-turbine smart algorithms for data preprocessing), ii) resilient data movement (error-tolerant, cybersecure
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to multi-task learning for multi-cancer risk prediction. To develop these models, you will have access to unique biobank data containing genetic information linked to Danish registry data for approximately
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engineering program in the world. According to the recent Times Higher Education Impact ranking, Aalborg University ranks 9th in the World for UN SDG Impact. The Department of Mathematical Sciences conducts
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, Denmark, aims to advance next-generation hearing assistive technologies through machine learning and statistical signal processing. The research in the centre focuses on enabling robust, real-time speech
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Denmark. The work consists of quantitative research, including developing research questions, conducting theory-driven statistical analyses of longitudinal register data, and, where relevant, linking
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this study) and the novel models and data established in this project. Application of statistical methods to deal with the uncertainty and the probabilistic nature of the models. This study requires strong pre