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support processes (undergraduate and postgraduate taught) relating to programme delivery, programme management, teaching quality assurance, student experience, student cases, assessments, awards and
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Description Job Purpose To contribute to the development, optimisation and validation of a novel RNA-based diagnostic assay for prostate cancer within a translational research programme. The postholder will
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: • Servicing learning and teaching committees to a professional standard. • Maintaining and updating the Business School’s Programme Information. • Supporting internal and external quality assurance
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team members in welfare issues, escalating as necessary to specialist support areas. Provide support, feedback and pastoral care to students registered with the Career Confident programme. Ensure
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computer and IT skills, Kinetics, Oracle, Microsoft Word, Excel, emails, including use of internet and online calendar. Level 3 Food Safety and Level 2 Health and Safety. Desirable CriteriaExperience
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organising events, including the ability to demonstrate outcomes and impact. 5. Substantial experience of working within student recruitment, widening participation, education or public engagement. Customer
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the ongoing management of the university metering infrastructure assets and energy management system. Share recommendations with the Net Zero Programme Manager for action Establish working relationships with
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computer-based tools. To complete in-house MRI safety and operator training, then acquire structural and functional magnetic resonance imaging data on participants using a 3T MRI Scanner To complete in-house
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- Genetics of complex diseases - High Performance Computing - Big data manipulation and analyses - Analysis of rare genetic variants Knowledge of current status of research in biostatistics
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advanced computer modelling (in silico), through robot driven testing of implanted knees (in vitro), to 3-dimensional X-ray imaging of moving patients (in vivo) with Machine Learning driven analysis