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PhD Scholarship Develop multimodal machine learning models to predict glioblastoma treatment outcomes using imaging and clinical data. Work with real-world data from John Hunter Hospital in a
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pipelines to predict, prioritize, and validate bioactive compounds. Your work will help accelerate the process from genomic data to lead molecules. Strong communication skills and the ability to collaborate
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://www.biologie.uni-hamburg.de/en/forschung/grk2530.html). The doctoral candidate will investigate the effects of increasing flooding frequency (as predicted under climate change) on the interactions between alluvial
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measurements, data collection, and analysis. Prediction of service life and assessment of fatigue behavior of automotive structures. Preparation of research outputs, including reports, publications, and
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systems, mainly plants. The BM^2 Lab is mainly computational and uses ad-hoc developed modeling tools such as MorphoMechanX to provide explanatory and predictive scenarios for developmental problems. We
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University of Massachusetts Medical School | Worcester, Massachusetts | United States | about 6 hours ago
modalities Developing and applying polygenic risk scores and causal inference models to predict disease onset, progression, and treatment response Implementing machine learning and statistical genetics
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is to discovering the mechanisms of resistance evolution and develop biomarkers that can predict which patients are at risk of developing resistance. Work at Manchester and Liverpool has focused
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large language models, to develop new hypotheses and predictive models for unique health conditions. Experience with obesity intervention trials in children is preferred. In partnership with Children’s
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to increase synergy and impact to the region and nation. The positions will concentrate on computational simulations and AI-driven tools, including materials discovery, design, property prediction, process
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at the University of California, Irvine (UCI) invites applications for a research position in Energetic Particle (EP) Plasma Physics. The primary area of research will be in validating codes that predict EP physics