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/Trusts; support the University’s teaching, learning and research programmes; support the University’s strategy. You will engage and uphold the University Library Service’s values and behaviours. (See
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bioinformatics, machine learning, software development and lab-based R&D. • Contribute to platform design and development by processing and interpreting high-throughput NGS data generated by our lab R&D team
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to enable us to achieve our vision. University IT provides critical support to c7,000 staff, 35,000 students, and 38 academic and professional service schools and departments. The needs of learning and
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Professional Services and in Academic Departments. While undertaking your role, you will be an agent for change, reviewing your own performance and progress, looking for opportunities to learn. You will review
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highlighting the benefits of work experience Undertake a variety of administrative duties to support the department Instruct and guide other employees across the University on work experience programmes
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to the changing needs of University staff, students and those of our partner NHS Health Board/Trusts; support the University’s teaching, learning and research programmes; support the University’s strategy. You will
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customer centric administrative support function for the Estates & Campus Facilities Team, specifically related to Computer Aided Facility Management (CAFM) system support. This varied and exciting new role
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research fields: Data Intensive Science Software Engineering Machine Learning Human-centred computing Visual computing Cybersecurity and privacy Knowledge of current status of research in specialist field
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; are responsive to the changing needs of University staff, students and those of our partner NHS Health Board/Trusts; support the University’s teaching, learning and research programmes; support the University’s
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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, to deliver a