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relationships, and contributing to requirement gathering, design, data migration, testing, business change, training, and post-live support. We are looking for candidates with experience in IT projects, CRM
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university strategy launching later this year. Key responsibilities include project delivery tasks such as requirement gathering, design input, data migration oversight, system integration and user acceptance
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. Working in a team, the successful candidate will need good communication skills and exchange technical information with scientists from different disciplines. What you will get in return: Fantastic market
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researchers, under the supervision of Prof David Wedge. Collectively, this team has expertise in the analysis of multilevel omic and imaging data; data integration and machine learning; risk prediction. This
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examining listening intentions in everyday life and how they shape hearing aid outcomes with the ultimate aim of using the information to personalise hearing aid settings and thus improve hearing aid outcomes
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materials • AI, data and advanced computing We seek to employ an Application Scientist with expertise in the materials science of one of the following: sustainable polymers, nanomaterials, data analytics
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. The PDRA will contribute to model based design of experiments, algal bioprocess modelling and optimisation, machine learning and data-driven modelling, and business case development, ensuring the technology
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transcriptomic organisation, using high-resolution single-cell and spatial transcriptomic data. The successful candidate will develop computational frameworks to integrate and analyse multi-modal datasets
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of mathematical, biological, and clinical sciences. The successful candidate will contribute to ongoing efforts to link multi-omic data with advanced image segmentation and analysis, enabling a more holistic
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therapeutically targeted during inflammation due to limited understanding of their basic biology. Our Glyco-Immunology (Dyer) lab has produced published and preliminary data demonstrating that an under-appreciated