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- University of Oslo
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of the universe and the formation of cosmic structures by measuring the redshift of millions of galaxies out to 10 billion years into the past shining light on dark matter, dark energy and allow us to test
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parameters, and statistical data analyses (like, e.g., bootstrapped correlation and response functions, regression frameworks, multivariate statistics using R) Where to apply Website https://www.jobbnorge.no
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. Applicants must be able to work independently and in a structured manner and demonstrate good collaborative skills. Applicants must be proficient in both written and oral English. Personal and relational
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hairy surfaces and when actively driving a soft sheet near a wall. Essential to the projects is developing a new understanding of the fluid-structure interactions, that is to say, the coupling between
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and magnetic data to map subsurface structures 3. Basin modelling, with knowledge of sedimentary processes and tectonic evolution The project would contribute to mapping the thickness of sedimentary
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materials under applied electric fields Magnetic and magnetoelectric measurements at cryogenic temperatures Structural and microstructural characterization using diffraction and microscopy techniques Use
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, researchers, postdoctoral Research Fellows, PhD Research Fellows, engineers, admin and master students. The research group has an excellent infrastructure, MiNaLab, covering chemical, structural, optical and
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and structural effects of various peptides on both simplified and complex membrane systems. The project will entail a combination of computational and experimental work, both directly and in
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), (c) estimation methods for latent variable models (e.g., two-step approaches or approximate maximum likelihood estimation), or (d) meta-analytic models to address complex data structures (e.g., spatial
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: simulation and risk modelling using advanced statistical and machine learning based methods. strategic portfolio management and dependency structure modelling for financial assets. effects of climate change