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to the Carefree Models Project , a large-scale initiative aimed at improving the resilience, efficiency, and sustainability of predictive models in process industries. Information Predictive models are central to
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healthy aging in families, and 2) the prediction of health outcomes in the general population using molecular, socioeconomic, and environmental data. You will work with very large, globally unique registry
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of Biomedical Data Sciences and healthcampus The Hague, you will play a key role in studying 1) the concentration of socioeconomic differences in health and healthy aging in families, and 2) the prediction
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Control Section is to perform research and train next-generation students on the topic of understanding and predicting the dynamics of complex engineering systems in order to develop advanced control
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You will develop and validate advanced AI models that integrate medical imaging, multi-modal clinical and omics data, and explainable AI (XAI) for the prediction of hepatocellular carcinoma (HCC
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, and how plausible memory models can predict diverse quantitative data in linguistics and cognitive science. The project has two components: an empirical one and a computational one. The empirical strand
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drug development still relies on simplified in vitro model systems and on animal models that do not accurately predict clinical responses in humans, likely due to differences between human and rodent
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representation of real-world marine structures and their corrosion processes. By integrating comprehensive sensor measurements, experimental data on corrosion, and advanced predictive modelling (including physics
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are challenging to detect early with conventional single-sensor approaches. To ensure reliability and enable predictive maintenance, there is a pressing need for AI-supported, high-speed non-destructive monitoring
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models that do not accurately predict clinical responses in humans, likely due to differences between human and rodent biology. Furthermore, preclinical in vivo arthritis models can be severe and cause