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distinct and demanding failure modes: turbine blades suffer complex aerodynamic loading and leading-edge erosion from high-speed particulate impact, while transition pieces and support structures endure
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programme at the institution. The documentation that is necessary to ensure that the admission requirements are met must be uploaded as an attachment. Main tasks Perform cell culture work and isolate melano
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and multilateral drilling concepts for cost-effective heat extraction Thermodynamic aspects of deep drilling: heat transfer, fluid–rock interaction, and downhole thermal effects on drilling performance
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waste. Bioprotective cultures are increasingly used in fermented foods to inhibit spoilage organisms and pathogens, yet their performance varies across substrates and processing conditions. To fully
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well as several associated partners (https://www.nnrc.uio.no/english/research-themes/rt-5/ ). The PhD candidate will be part of a dynamic and productive academic team with a large international network covering
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methods, datasets, and prototypes that demonstrate how AI can transform design processes, support sustainability goals, and enable new types of high-performance vessel concepts. Duties of the position
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interconnected Internet-of-Energy (IoE) ecosystems. In this context, the MSCA Doctoral Network project SAILING (https://Secure AI and Digital Twin Empowered Smart Internet-of-Energy ) aims to establish a
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the design of a scalable, interoperable, and resilient quantum internet architecture and protocol stack for real-world operation in hybrid quantum–classical networks across intra- and inter-domain settings
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27th April 2026 Languages English English English The Department of Structural Engineering has a vacancy for Two PhD positions in “Micromechanics-based modelling of ductile failure in high-strength
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. Strong (inter-)national network in field of application. Experience with high-performance computing (HPC) and large datasets. Experience with machine learning applied to geophysical signals. Experience in