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samples. Optimize reconstruction algorithms for efficient large-scale 3D imaging, including high-performance and GPU-accelerated computing where appropriate. Design, optimize, and validate a refractive
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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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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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. - Strong programming and system development skills and experience with quantum computing software architectures or middleware. - Strong expertise with software testing, benchmarking, and performance
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. Admission to the PhD programme in Artistic Research at the University of Bergen is a prerequisite for employment, and the study period begins upon commencement of the position. The PhD Fellow is expected
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application for admission to a PhD 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 The main
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and accelerate the development of more high-performing PNSEs. The ultimate goal of the project is to develop, implement, and validate novel deep-learning models for molecular dynamics and coarse-grained
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for this position. Applicants should be proficient in R, Python, or equivalent statistical software. Some background knowledge in (computational) Bayesian methods and statistical learning for high-dimensional data is
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and quantitative imaging data Experience in computational modeling of gene regulation and morphogenesis Experience working on high-performance computing environments Personal skills Strong analytical
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that demonstrate how AI can transform design processes, support sustainability goals, and enable new types of high-performance vessel concepts. Duties of the position Complete the doctoral education in collaboration