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Experience in planning and conducting field-work Experience in planning and conducting laboratory work within nitrous oxide field measurements, soil sampling and the quantification of soil physical, biological
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friendly atmosphere of large and interacting communities for e.g. structural biology, molecular cell biology, computational biology, neurobiology, and molecular medicine that encourages lively, open, and
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We are seeking applicants for a 2-year postdoc in Ultrafast X-ray probes of Quantum Materials to join us at the Department of Physics and Astronomy. Starting Date and Period The position is for 2
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at the University. Concretely the scientific assistant will support the first semester of the bachelors program in Sustainable Design. Preferred applicants have documented research experience on sustainable
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, proteins and DNA origami constructs, and computational procedures for data analysis. The project is a collaboration between the single molecule biophysics and chemistry group at iNANO/Department
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Read more about our recruitment process here The appointment process at Aalborg University involves a shortlisting process. You can read more about the shortlisting and appointment process here
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? Then the Department of Electrical and Computer Engineering invites you to apply for a 2 year postdoc position bridging research with industrial implementation and innovation. Expected start date and
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the fundamental understanding of molecular thermodynamics, and realize the importance of different types of properties in selecting the most physically sound thermodynamic model for water and electrolytes
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exchangingexperiences with localactors (primarilyhousing organisations and municipalities). Teachingwillprimarilybe in the bachelor’s programme in Urban, Energy and Environmental Planning as well as the master’s
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description You will be contributing to developing and implementing novel algorithms at the intersection of computational physics and machine learning for the data-driven discovery of physical models. You will