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processing, material recycling, nuclear chemistry, as well as theory and modelling. We have projects and competence that are in the top front in certain areas, and present results that are met with a lot of
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, system-wide efficient, as well as fair for heterogeneous participants. Addressing these challenges requires new mathematical models and algorithms that blend optimization, game theory, and control with
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Mathematics » Probability theory Mathematics » Statistics Researcher Profile First Stage Researcher (R1) Country Sweden Application Deadline 9 Jan 2026 - 22:59 (UTC) Type of Contract Temporary Job Status Full
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critical discourse analysis Collecting and coding the media material Quantitative content analysis of media and mapping actor-discourse networks Qualitative content analysis and critical discourse analysis
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methods ranging from effective field theory, topological solitons, statistical mechanics of the phase transitions, topological systems to modern microscopic quantum many-body techniques. One of our research
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topology, algorithms and complexity, combinatorics, differential geometry and general relativity, dynamical systems, mathematical physics, mathematical statistics, number theory, numerical analysis
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ability demonstrated research expertise in at least one of the following domain: Human-robot interaction (HRI) Human-computer interaction (HCI) Dynamic system theories Developmental psychology The candidate
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on economic theory and quantitative methods as important tools. The research topics are oriented towards issues of high relevance for society. The Department has an acknowledged international publication record
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theoretical analysis, implementation of methods in computer codes, use of state-of-the-art high-performance computers in Sweden and in Europe, application of machine-learning and AI techniques, and
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of this position is to conduct independent research and develop theories and methodologies that help in improving the reliability and trustworthiness of large-scale machine learning models (e.g., LLMs) in a