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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 appointment
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At the Faculty of Engineering and Science, AAU Energy, a position as PhD stipend is available within the general study program. The stipend is open for appointment from 1. July 2026 or soon
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, software, and High Performance Computation (HPC) infrastructure; • Excellent scientific infrastructure; • Participation in project meetings and international conferences; • Flexible working hours
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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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, 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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Assistance in Complex Acoustic Environments within the general study programme Electrical and Electronic Engineering. The PhD Stipends are open from August 1, 2026, and the integrated PhD stipends are open for
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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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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