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Field
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PhD in MEM-3D: Membrane Engineering with 3D Printing for Advanced CO₂ Separations Award Summary 100% fees covered, and a minimum tax-free annual living allowance of £20,780 (2025/26 UKRI rate
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to about the size of a drinks can. In this project we will use emerging 3D visual sensing technologies such as implicit neural rendering (NeRF, Gaussian Splatting) and Geometric Foundation Models
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, enabling both injectable therapies and advanced 3D bioprinting. Delivered in collaboration with an industrial partner and global leader in biomaterials for healthcare applications, the research is strongly
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other labs will be developed for comparison with other techniques and computer IRIS Lab for analyses of the 3D mapping by IA models References [1] A. Kiełbasa, K. Kowalczyk, K. Chajec-Gierczak, J. Bała
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About the project: From Brittle to Ductile: Machine Learning 3D Fracture Simulations for Extreme Environments Supervisor: Prof, James Kermode, University of Warwick Develop cutting-edge machine
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, voids, delamination, corrosion, and internal structural discontinuities. The PhD candidate will investigate Vision Language Models (VLMs), Multi-modal AI solutions, and 3D scene reasoning approaches
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their personal skillset to the discovery, development, and commercial translation of new 3D nanoscale magnetic metamaterials. What You’ll Do in this Project Size, weight, and power: the future is small
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liquid and solid, is also at the basis for many innovations such as 3D printing, biological tissue engineering, and robotics. Sound waves, and their associated “radiation pressure,” can apply average
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include the specific objectives: Develop species-neutral viewscapes using terrestrial LiDAR-derived 3D enclosure models and ray-tracing modelling. Identify species-specific visual field characteristics, and
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, with a particular focus on identifying and characterizing rare endosomal escape events. The tasks include developing, training, and validating deep learning–based models for event detection and vesicle