712 computer-programmer-"https:"-"FEMTO-ST" "https:" "https:" "https:" "https:" "https:" "U.S" "U.S" positions at University of Sheffield
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computational implementation and validation against experimental observations. The PhD offers in-depth training in multiphysics modelling, computational mechanics, and high-temperature material behaviour
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that the outcomes of the programme curricula and the requirements of the professional bodies are met. This includes producing appropriate evidence-based lesson plans and delivering teaching sessions as required as
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knowledge or skills are required, beyond general computer literacy, as all training will be provided. The project requires a highly motivated research associate, with excellent communication skills in French
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. The research will integrate advanced full-field imaging techniques, including X-ray computed tomography, neutron tomography, and related methods, with modern machine-learning approaches such as sparse regression
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to access a wide range of opportunities and events. It also plays a key role in our reporting, helping to drive data-driven decision-making across our programme of engagement and fundraising activities. We
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systems including email, VPN, Wi-Fi, printing services, and learning management platforms Set up and configure equipment including computers, monitors, printers, and other peripherals Maintain and
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AI-Driven Facial Movement Analysis for Early Stroke Identification in Pre-Hospital Settings (S3.5-COM-CChen1) School of Computer Science PhD Research Project Competition Funded Students Worldwide Dr
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BBSRC Yorkshire Bioscience DLA Programme: Signalling complexes and cell wall changes during plant reproduction
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energy physics software GEANT4 as a case study. This is a widely used program that simulates how particles move through matter. GEANT4 underpins experiments such as ATLAS at CERN’s Large Hadron Collider
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. To fill in this gap, in collaboration with industrial partners, the research will develop novel Machine Learning and Computer Vision methods for detecting and localising. These will be used to develop