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the aggregation intervals are adjusted to reflect intrinsic demand-supply patterns, price volatility, and grid conditions. Methodologically, this requires the development of adaptive algorithms and statistical
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algorithms in the analysis of the measurement data, in order to develop AI tools for structural health monitoring applications. Qualification requirements We are looking for applicants with a strong academic
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data, and boreholes. The candidate will revisit the current fault seal integrity algorithms and will contribute to improving the algo-rithms utilizing deep learning among other methods. A part of the
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deterministic PDEs and equations subject to stochastic perturbations, integrating approaches from machine learning algorithms, transport theory, and optimization. Examples of relevant equations include, but
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); mathematical modelling of cancer; probabilistic modelling and Bayesian inference, stochastic algorithms and simulation-based inference; and statistical machine learning. More about the position The position is
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associated with The Center for Digital Narrative (CDN) . The Center focuses on algorithmic narrativity, interactive environments, materialities, and shifting cultural contexts in which digital narratives
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Narrative (CDN) . The Center focuses on algorithmic narrativity, interactive environments, materialities, and shifting cultural contexts in which digital narratives are received and processed. The CDN
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that the PhD has been awarded at the latest within 5 months after the closing date for applications. The applicant must have good programming skills, good general knowledge of algorithms, numerical
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, algorithms, visual computing, AI, databases, software engineering, information systems, learning technology, HCI, CSCW, IT operations and applied data processing. The Department has groups in both Trondheim
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data, nonparametric inference, algorithmic methods/machine learning, Bayesian inference, statistical computing, causal learning, graphical models, model selection, boosting methodology, time-to-event