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. Incorporating information about plasticity can aid genomic prediction modeling of tree growth and health under future climates. This project seeks to address generalizable principles underlying the genetic basis
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statistical models to predict treatment response; optimizing individualized rTMS targeting using neuronavigation and computational modeling; designing and conducting n-of-1 trials embedded in routine clinical
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therapeutics by protein design. This project will apply cutting-edge generative AI methods—including protein design, structure–function prediction, and multimodal learning—to develop and optimize a new
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their analytical and numerical predictions with available experimental data. Applying the developed models to provide quantitative understanding of how the spatiotemporal profile of corticoids and androgens varies
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. The research in the PhD project will focus on core spatio-temporal machine learning method development, including: generative models for grid-based and particle-based spatio-temporal data; controlled generation
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by comparing their analytical and numerical predictions with available experimental data. Applying the developed models to provide quantitative understanding of how the spatiotemporal profile
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-temporal machine learning method development, including: generative models for grid-based and particle-based spatio-temporal data; controlled generation methods for data assimilation; and graph-based multi
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carried out in a controlled cooling carousel E. Experimental validation of the numerical model of the heat treatment process for controlled air cooling in a carousel F. Generation of a numerical prediction
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-focused, will directly support advanced flood risk modelling, hydrological predictions, and adaptation planning. As the student, you will gain expertise in climate extremes, data science, and hydrology
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the various phases of silicon in various 3D stress configurations. A predictive model should properly account for the complex physics, damage and fracture. The loading conditions in contact and scratching