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position, you will lead the development of a probabilistic, error-aware surrogate model capable of delivering fast, uncertainty-quantified predictions for complex multiscale–multiphysics processes in OFPV
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this, probabilistic models will be constructed for microbial response (growth, thermal inactivation, and biofilm formation) using multilevel models that consider three sources of variability: between lineages
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incorporates probabilistic prediction models and hybrid optimization and machine learning techniques. This approach will enable the efficient assessment, planning, and offering of flexibility in scenarios
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for REF 2021 - Research Excellence Framework. For more information about our research results and case studies please visit the following link: https://www.exeter.ac.uk/research/ref2021/ Projects Available
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features that support decision analysis and risk management in energy finance. These features include probabilistic models, which estimate the full conditional distribution of energy derivative prices and
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within a Research Infrastructure? No Offer Description Postdoctoral Researchers in Mathematics in probabilistic and algebraic approaches to quantum field theory Aalto University is where science and art
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Postdoctoral Researchers in Mathematics in probabilistic and algebraic approaches to quantum field theory Aalto University is where science and art meet technology and business. We shape a
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analytic plans. Knowledge and understanding of data science, probabilistic matching methods, or U.S. criminal justice research literature strongly preferred. Proven ability to work with and analyze criminal
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functions are: - Parametric and nonparametric statistical inference - Probabilistic and statistical foundations of machine learning and data science - Statistical models for complex data. Where to apply
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measurements are most informative and guiding where, when and how to observe next. By combining Bayesian inference, probabilistic modeling, and machine learning, the project aims to make Arctic observations more