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, methods and applications. The areas represented include: fluid mechanics, biomechanics, statistics and data science, computational mathematics, combinatorics, partial differential equations, stochastics and
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with and/or a well-described interest in the field of economics of innovation and the economics of ICTs / AI. Experience with one or more of the following empirical research methods will be considered
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technology. Biofilm-based bioreactor design, construction and operation. Biofiom characterization and knowledge of DNA sequencing. Solid knowledge on standard methods for wastewater characterization
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of Oslo. The Department is engaged in teaching and research covering a wide spectrum of subjects within mathematics, mechanics and statistics. The research is on theory, methods and applications. The areas
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to calculate your points for admission. Emphasis is also placed on your: background in algebraic or symplectic geometry or mathematical physics programming skills and experience with computer algebra packages
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project (maximum two pages) Transcripts and diplomas for Bachelor’s-, Master’s- and PhD degrees. If you have not yet completed your PhD, you must provide confirmation on your estimated date for the doctoral
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-use ropes in aquaculture, exploring their usage patterns, methods to reduce their consumption, and the implementation of biodegradable alternatives. The project work will involve field experiments
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before 01.08.2025. It is a condition of employment that the master's degree has been awarded. Experience working with intermediate to advanced remote sensing data and methods is a requirement regardless of
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regional aquifers. It aims to approximate full-physics simulations and update predictions using observational pressure and seismic data. The approach combines physical modelling and machine learning, using
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intermittent. The PhD will work will be twofold. The first part will be to improve and develop datasets and estimation algorithms for renewable energy that will enhance the simulation capabilities of the open