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quantum developers and industry stakeholders. Q-VERSE will develop dedicated GAIA-X-compliant quantum interfaces and will build its foundation on the first fully European-developed, open-source quantum
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period at the University of Oslo. Place of work is Department of Informatics at Blindern, Oslo. Job description Unsupervised machine learning (ML) methods are widely used to explore structure in complex
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modelling, scientific synthesis, and science-policy engagement—central to enabling young researchers to navigate the complexity of transdisciplinary research and build strong academic identities. For more
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active galactic nuclei. The successful candidate will also post-processing large sets of simulation data and make detailed comparison with multi-wavelength observations of the stellar and gaseous
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trained to work on both galaxy clustering and weak gravitational lensing, using N-body simulations to simulate structure formation and connecting the simulations to observables. The candidate will also be
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research themes: (1) Planets and Early Earth, (2) Modern Earth, and (3) Exo-Earths, we are keen to explore the internal and external driving forces that make a planet habitable and inhabited. We are looking
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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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fundamental insight into the structure-composition-function correlations that govern the performance of heterogeneous catalysts in reactions relevant to the Cyclic Carbon Economy: CO2 hydrogenation with green
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machine learning (ML) methods are widely used to explore structure in complex and high-dimensional data, particularly in the life sciences, where clustering analyses often form the basis for biological
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PhD Research Fellow in Theoretical and Computational Active Matter Physics for Glioblastoma Invasion
Language requirement: Good oral and written communication skills in English English requirements for applicants from outside of EU/ EEA countries and exemptions from the requirements: https://www.mn.uio.no