377 web-programmer-developer-"https:"-"https:"-"https:"-"https:"-"https:"-"https:" positions at University of Sheffield in United Kingdom
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@sheffield.ac.uk Next steps in the recruitment process It is anticipated that the selection process will take place on 7th April 2026. This will consist ofInterview and activity. We plan to let candidates know
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computationally prohibitive for full-scale reactor design. To bridge this gap, we are developing a low-cost Coarse-Grid CFD (CG-CFD) approach. This methodology combines the industrial efficiency of sub-channel
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bridges and wind turbines respond to traffic, wind, waves, temperature, and other factors. In doing so, they help engineers monitor condition, anticipate problems, and proactively plan maintenance, and are
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evidence-based, climate-aware tools to plan infrastructure improvements. With limited budgets and the challenge of reducing emissions while adapting to climate change, it must prioritise investments
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of developing novel computational frameworks that seamlessly integrate machine learning techniques with established methods in computational mechanics, such as the Phase-field Finite Element Methods. Potential
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Development and Validation of a Multimodal Wearable Headband for Objective Bruxism Monitoring Using Machine Learning (S3.5-DEN-Boissonade)
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to the complex interaction of thermal, mechanical, and chemical processes occurring across multiple scales. This PhD project will develop a new class of multiphysics, phase-field-based numerical models
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to changing conditions, and recover quickly, ensuring continuity of energy supply even under stress. This PhD project aims to address this critical challenge by developing a flexible and transferable resilience
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needs, this research topic brings together expertise in semiconductor optoelectronic devices, novel optical systems and laser powder bed fusion processes in order to develop AM systems that are tuned
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Developing a Mechanistic and Predictive 'Source-to-Health' Model for Airborne Engineered Wear Particle Toxicity (S3.5-SMP-Johnston)