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-located School of Computer Science and Informatics (COMSC) Research Office as plans are developed and implemented to combine resources to support research across both schools following their planned merger
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a range of initiatives, including community-based activities, driving the data and evidence collection programme, delivering extensive stakeholder engagement and seeking additional funding where
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. Experience in obtaining recombinant proteins by expression in Bacillus subtilis. 14. Experience in using computer-based methods to understand protein structure and protein/ligand complexes. 15
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Fellowship Programme which will give you with accreditation as a Higher Education Academy Fellow on completion of the programme. Informal enquiries are welcomed and may be directed to Steve Evans, Professional
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at undergraduate and postgraduate levels, and to contribute to module development as part of a module team. To independently contribute to module and course development and lead modules. To contribute to programme
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that the ULS Regulations are observed; participate in a continuing programme of training and development; actively contribute to the provision of outstanding/excellent customer service in line with the
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than an application submitted in English. Job Description As part of the Iso-in-a-box programme, the Training Developer will work closely with project partners who develop standardised bioinformatics
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active for over 40 years and has now developed a programme of support for all KTP associates that focusses clearly on career and personal development. This 3 year post-doctoral position includes a
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are completed according to the requirements of the programme. Work closely with the Academic Director of Recruitment and Admissions (DoRA) to ensure that all requirements are met. The successful candidate will
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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