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6th March 2026 Languages English English English The Department of Computer Science has a vacancy for a PhD Candidate in Modeling Edge AI Computer Architectures Apply for this job See advertisement
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6th March 2026 Languages English English English The Department of Computer Science has a vacancy for a PhD Candidate in Computer Architecture Focusing on Dependency-Aware Performance Analysis Apply
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2nd February 2026 Languages English English English PhD Candidate in Technology with specialization in ICT - Integrated PhD program Apply for this job See advertisement About the position
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magnets, unconventional magnetic systems, and topological materials. The candidate will develop and apply advanced computational techniques, including (TD)DFT and post-DFT analyses, alongside spin dynamics
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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 This is NTNU NTNU is a broad-based university with a
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your PhD project, topic, method, theoretical approach, and why this course will be relevant for your project. About the programme The PhD programme in Innovation for Sustainability is based
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numerical and data-driven method will be exploited in this project to systematically integrate natural design principles into the development of bioinspired materials. Particularly, artificial intelligence
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the mandatory PhD research education programme Develop a hybrid numerical and data-driven method to integrate natural design principles into the development of bioinspired materials Perform independent, high
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experimental data, physics-based models, and data-driven methods to support design, manufacturing, and decision-making across aluminium value chains. Education and competence building are central pillars of FAST
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structural design, and lifecycle performance. A key outcome of FAST is the development of the FAST Virtual Lab, a digital framework combining experimental data, physics-based models, and data-driven methods