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programme Electrical and Electronic Engineering; as per August 1st, 2026, or as soon as possible thereafter. In electronic engineering, Aalborg University is known worldwide for its high academic quality and
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crystalline materials is often responsible for improved materials performance, but it is commonly overlooked in computational materials design. In this project, we will focus on developing accelerated
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, molecular dynamics, and the use of high-performance computing is advantageous. Also, experience from synchrotron or neutron facilities is an advantage but not a requirement. Excellent oral and written
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, computer science, and statistics The objective of this PhD project is to develop machine learning algorithms that perform efficiently and coherently across both classical and quantum computing platforms. The PhD
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. The professor is expected to contribute significantly to the department’s strategic ambitions by: Advancing high-level research within educational psychology and contributing to the department’s strategic
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application to our PhD Stipend. At the Faculty of Engineering and Science, Department of Chemistry and Bioscience, a PhD stipend is available within the general study program. The PhD stipend is open for
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are available within the general study programme in Mathematics. The stipends are open for appointment from August 1, 2026, or soon as possible thereafter. The stipends are available for 3 or 4 years depending
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of complex systems. Experience with high-fidelity numerical modelling, for example using computational fluid dynamics or advanced process simulation tools, is highly relevant. It is an advantage if you are
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advance leadership and management accounting research (e.g performance management, business partnering, digitalization, action learning, etc) within the Accounting Research Group at Aalborg University
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Prediction (AI-focused) This position focuses on developing cutting-edge AI methods for genetic risk prediction across multiple cancer types, with a strong focus on model performance and explainability