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Mathematics, Applied Mechanics, or related disciplines (a minimum honours degree at UK first or upper second-class level) Experience in computational fluid dynamic/finite element modelling by using commercial
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to train tomorrow’s leaders in earth and environmental science. For further details about the programme please see http://nercgw4plus.ac.uk/ For eligible successful applicants, the studentships comprises
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of the most thermally extreme habitats on Earth. Intertidal organisms face unique challenges, exposed to both marine and atmospheric heatwaves, often in rapid succession or concomitantly. Understanding
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plants. To better understand how distantly-related land plants defend themselves against pathogen infection, our group investigates the molecular genetic mechanisms controlling disease resistance in
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Application deadline: 01/12/2025 Research theme: Applied Mathematics, Continuum Mechanics, Nonlinear PDEs How to apply: https://uom.link/pgr-apply-2425 UK only due to funding restrictions. The
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Project Supervisor - Dr James Bull A PhD position is available in laser spectroscopy to probe the excited- and ground-state dynamics of next-generation photomolecular motors (PMMs). The position is
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studentship. The studentship will start on 01 October 2026 Project Description Scientific background Our seas have absorbed ~90% of the heat accumulated on Earth in the past 50 years. Consequently, sea surface
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counterfactual reasoning frameworks that uncover latent mechanisms and enable principled hypothesis testing. Our goal is to advance the theory of representation learning and causal inference in high-dimensional
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evolved physiologies and carbonate secretion mechanisms specifically adapted to these chemical conditions [1, 2]. Understanding the environmental variability of these ions will help to better predict
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, megafire-prone conditions could become more prevalent (3-4). However, the key mechanisms that promote or inhibit megafires are under-studied for most regions globally. This project addresses critical