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processes across multiple nodes. Qualification requirements Appointment as postdoc requires academic qualifications at PhD level. Due to the project’s angle, the candidate should have a strong background in
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electronically by clicking APPLY NOW below. Profile We are looking for a highly motivated and enthusiastic scientist with the following competencies and experience: PhD in HCI, Computer Science
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of risk management, and remain poorly understood, even within the physical and engineering sciences communities. This project will investigate the environmental, technical, social, legal, and policy
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, while also fostering a positive and constructive working environment through openness to interdisciplinary collaboration across the department and with external collaborators. Profile and Requirements PhD
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strength. Your competencies The applicant is expected to demonstrate the following competencies and qualifications Hold a PhD degree in chemistry, materials science, physics, nanoscience or a closely related
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You have academic qualifications at PhD level within biomedical engineering, engineering, physics, medical physics, chemistry, biophysics or a related discipline. We expect applicants to have a strong
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support for professionals at Aalborg University! This interdisciplinary project investigates how generative AI can be incorporated into the building design and operation process. Particularly, we seek
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closely with Per Juel Hansen, Dep. of Biology. We are looking for the following qualifications: ● PhD in marine plankton biology, preferably with a background and interest in taxonomy, biodiversity and
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optimize chemical compounds. Your work relies heavily on the ability to synthesize complex chemical structures and to investigate and understand chemical-physical and biological properties of chemical
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scale DNA libraries with generative synthesis models, translating in silico predictions into physical gene libraries for experimental testing. Building and evaluating probabilistic deep learning models