94 algorithm-development-"Multiple"-"Simons-Foundation"-"Prof" positions at University of Leeds
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, professional and innovative learning for online CPD courses. You will have excellent communication and organisational skills and experience of the professional and timely delivery of multiple, concurrent
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support of services that underpin a range of business critical activities and projects for our Digital Education Service as we undertake an 18 month change programme. This will focus on developing and
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venue. To realise this ambition, we seek to appoint a Business Development Manager who can proactively support the development, implementation and delivery of an ambitious sales strategy to grow and
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discussing flexible working arrangements. Do you have experience in developing and delivering programme and project management strategies? Are you organised with the ability to multitask and prioritise
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are looking for a correlative imaging scientist to develop, innovate, and support in-situ structural biology workflows working across the Cheney Biomedical Accelerator and Astbury Biostructure Laboratory
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We are recruiting for multiple part-time roles, all of which will be based on the university campus with scope for them to be undertaken in a hybrid manner. We are also open to discussing flexible
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and internet-based systems. You will be able to demonstrate a high degree of independent working and initiative in all areas of the role as well as working with multiple teams to achieve end goals. In
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). This role is an exciting opportunity to take a role in the development, management and analysis of a new repository of Individual Participant Data (IPD) from ageing research trials. The work is an
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School of Dentistry Are you interested in teaching undergraduate and postgraduate dental students in paediatric dentistry? Do you wish to continue to develop your skills in this area and contribute
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international specialists. Within Cumulus, you will lead the development of “downscaling” methods for sub-seasonal (2-4 week) forecasts. Our priority will be to implement deep-learning based methods, to turn