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) multi-omics analysis for the identification of therapeutic targets (biomarkers or druggable targets). The candidate will also develop and implement AI-driven tools to predict disease prognosis and
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experimental data, our ability to develop predictive models for the properties and long-term performance of reactor materials is also limited. This position is part of the MAGIC-RR project (Materials Ageing and
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evolving technological landscape of the aviation sector. The postdoctoral researcher will focus on developing prognostic methodologies capable of predicting discharge time while accounting for both battery
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focus on developing prognostic methodologies capable of predicting discharge time while accounting for both battery aging and operational conditions. These predictions will provide valuable input
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this project is how to effectively prioritize the millions of unknown biosynthetic gene clusters and metabolite features for the discovery of new antimicrobials through predicting structural and functional
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of Science at UvA. What are you going to do? The aim of the project is to use advanced Machine Learning techniques to predict the anharmonic vibrational spectra of large Polycyclic Aromatic Hydrocarbon (PAH
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machine learning to facilitate crop breeding by design. This project envisions to build a system that enables precise introgression of desirable traits into elite crop varieties by predicting recombination
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of Science at UvA. What are you going to do? The aim of the project is to use advanced Machine Learning techniques to predict the anharmonic vibrational spectra of large Polycyclic Aromatic Hydrocarbon (PAH
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perovskites — for applications in sustainable energy, spintronics, and quantum technologies. By combining physics-based theory with data-driven models, you will contribute to the next generation of predictive
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introgression of desirable traits into elite crop varieties by predicting recombination landscapes across a vast number of potential parental crosses. Implementing the project involves working with a variety of