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about the department at www.es.aau.dk . Description of the position The position focuses on developing next-generation learning-based decision-making and control for autonomous robots operating safely in
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++) Knowledge of the fundamentals of ML/AI algorithms for communications and networking, and their implementation A creative mindset and curiosity to research and develop new solutions with highly skilled
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of the Built Environment at Aalborg University is a leading national centre for research and education in sustainable architecture, building technology, and urban development. The department integrates
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the Department of Sustainability and Planning (PLAN) within the Development and Planning PhD program. The stipend is open for appointment from 1 February 2026 or soon hereafter. The duration of the position is
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. Statistics for high-dimensional data. Stochastic volatility models. Time Series modeling in continuous and discrete time Developing the Group for Research in Econometrics And Time series including attracting
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funded by the Innovation Fund Denmark under the Grand Solution program. Who are we AAU Energy is a dynamic and internationally oriented research department at Aalborg University, dedicated to developing
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algorithmic solution development. The group focuses particularly on automated decision-making in autonomous cyber-physical systems, combining mathematical optimization, machine learning, and decision theory
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“baseline” with traditional material characterization methods on selected traditional, reused and novel biobased materials. Development of modelling and testing methods to reveal the complex behaviour
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oriented research department at Aalborg University, dedicated to developing clean and sustainable energy systems. Our research spans electrical, thermal, and mechatronic energy technologies, and we work
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entities, such as robots, vehicles, or sensors, forms internal representations of space, time, and motion when interacting in complex non-stationary environments. The objective is to study and develop models