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responsibility for progress and quality of projects. Proved expertise in computational/theoretical physics, chemistry, materials science and related areas. Proved expertise in materials modelling is required. You
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with strong interconnection between experimental and theoretical physics. We provide a large network of collaborators to develop ideas and new projects. Excellent experimental research infrastructure
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transition. This includes also methods for designing hierarchies of energy markets, which respect the dynamics and stochasticity of physics linked to buildings, industry and cities. We do also take leading
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, several parameters and estimates may be ambiguous, i.e., imprecise, or unknown. Particularly, experimental research has shown that people are averse to such ambiguity, and theoretical researchers have
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of mathematics and computer science teaching and learning at the university level. The research design focuses on a dynamic, iterative process where innovative teaching methods are developed, used in practice, and
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respect and academic freedom tempered by responsibility. At DTU Physics, we perform research, teaching, and innovation in experimental and theoretical physics with the overall aim to benefit society. We
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candidate’s research is to analyse work processes and robotic tasks from a manufacturing perspective to optimise production lines. The candidate will gain theoretical knowledge and practical aspects of product
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their universities. To be considered the applicant must have a basic education at master's level (corresponding to the 3 + 2 Bologna process) have received the grade of 10 (or equivalent) for the master's thesis
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through a competitive application process. Online applications will be screened against a set of criteria and a shortlist of candidates will be assessed by a specifically formed committee. The PhD will
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the value of the green transition. The project will involve a multi-stakeholder innovation process, utilizing a framework of multiple-loop learning to encourage farmers to reflect on their relationship with