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View All Vacancies Infrastructure Services Division Location: Hawkshead (nr Potters Bar, Herts) Salary: £52,453 to £67,123 Per Annum Including London Weighting Permanent / Full Time Closing Date: 23.59 hours BST on Sunday 03 August 2025 Interview Date: Monday 11 August 2025 Reference: ...
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for a '100% paid' prior to a programme start date. You will regularly run outstanding payment reports to ensure outstanding debts are paid, minimising the open debt by clearing 100% of unpaid invoices
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View All Vacancies Infrastructure Services Division Location: Hawkshead (nr Potters Bar, Herts) Salary: £34,824 to £39,969 Per Annum Including London Weighting Permanent / Full Time Closing Date: 23.59 hours BST on Friday 01 August 2025 Interview Date: Tuesday 12 August 2025 Reference: ...
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an extensive portfolio of in person, blended and online programme titles delivered from our campuses in London and Dubai and customized blended programmes delivered around the world. Programmes are targeted
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guarantee of a permanent position upon completion of the apprenticeship. By the time you have completed the programme, you will have both the qualifications and experience to pursue a successful career in
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to the set-up and conduct of a funded research project aiming to co-create a national weight management programme in Thailand. The duties of the post will involve coordinating and writing ethical approval
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About the Role To provide professional support for all UG students in the School of Economics and Finance, and to provide programme management support for the portfolio of UG programmes. The post
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to improve people's health in developing countries by striving for excellence in research, healthcare, and training. Our research program spans basic scientific research, clinical studies, epidemiological
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About the Role This role will involve undertaking the evaluation of a digital social intervention in primary care in England. A summary of the programme grant is found here. The individual will be
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responsibility for implementing a deep learning work-package as part of a Cancer Research UK-funded programme, developing an image-recognition model to identify morphological features corresponding to clonal