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Research Framework Programme? Not funded by a EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description PhD Project in developing more resilient, biodiverse
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in the group of Niels Engholm Henriksen (https://www.kemi.dtu.dk/english/research/physical-chemistry ). You must have a solid foundation and interests in quantum chemistry, applied mathematics
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maintenance planning framework for wind turbine technologies, with a focus on enhancing structural resilience and operational efficiency. Key objectives include the development of a tailored risk-based
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will focus on developing a robust framework for uncertainty quantification (UQ) and technology qualification, aimed at validating the safety, performance, and longevity of advanced wind turbine
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. An individual career development plan containing research and transferable courses, international research visits, mentoring and career activities, is also a central element. Please visit https://www.interact
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, this PhD position might be the right fit for you! You will develop methodology for sustainability assessment of aggregate resource use in the construction sector applying a dissipation perspective on the
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return migration as well as later-life social and political integration among older non-Western immigrants in Denmark. The work consists of quantitative research, including developing research questions
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The Computational Protein Engineering (CPE) group at The Novo Nordisk Foundation Centre for Biosustainability (DTU Biosustain) is developing novel methods to engineer proteins more effectively using
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Declaration of interest regarding PhD project within the field of biomarker and therapeutic targe...
in tissue damage and disease development. The research is characterized by close integration of basic and translational approaches, as well as well-established collaboration with clinical environments
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thereafter. The PhD project will focus on developing and testing AI-assisted computational workflows for predictions of both ground- and excited-state material properties, with applications spanning