658 computer-programmer-"https:"-"UCL" "https:" "https:" "https:" "BioData" uni jobs at University of Sheffield
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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
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Explainable and Causal AI for Visual Analytics in Regenerative and Climate-Smart Agriculture (C3.5-COM-Cruz Villa-Uriol) School of Computer Science PhD Research Project Competition Funded Students
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constitutive relationships directly from data, ensuring both predictive accuracy and interpretability. The project places strong emphasis on rigorous mechanics, inverse modelling, and computational
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programme, enabling them to develop novel experimental characterisation techniques to study the flow behaviour of DFCs, and subsequently develop a constitutive material model to be incorporated into a virtual
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leading plant science clusters, with access to advanced growth, imaging, genomics and computing platforms. Main duties and responsibilities Design, plan, and conduct experiments in controlled laboratory
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, industry, and data-intensive research. Why Sheffield? Sheffield offers a comprehensive graduate development programme, including training in research planning, academic writing, and leadership. You’ll have
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through their programme. The ideal candidate will have outstanding customer service and interpersonal skills, and an ability to put people at ease through sophisticated and sensitive verbal and non-verbal
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purchasing. Plan and work safely at all times, complying with health and safety legislation, regulations, environmental compliance procedures and systems and other relevant guidelines. Use diagnostic methods
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evaporation and flow patterns can disrupt the uniformity of the ink film, and in turn degrade the quality, performance, and value of the film. The PhD research programme will look to find ways to control; (i
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Magnetic Nanodevices for Energy-Efficient Neuromorphic Computing (S3.5-CMB-Hayward)