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Number of Positions: 1 Eligibility: UK Only Funding: School of Chemistry Studentship in collaboration with the Schools of Mechanical Engineering and Chemical & Process Engineering, in support of
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digital research mission. We design, build, and support the advanced computing platforms that power research in High Performance Computing (HPC), Artificial Intelligence (AI), Bioinformatics, and Data
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, building and supporting innovative solutions to research computing problems and supporting our research community across a range of domains, including Artificial Intelligence, Language Models, Bioinformatics
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the School of Chemistry. Working in the Hub you will be responsible for delivering a high-quality counter service to staff and students, whilst enabling the operation of the school by managing deliveries
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and commitment to improving processes and systems? Do you have an interest in supporting and developing our employee relations practices? You will join our Specialist Support Team, providing support to
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on the University campus with scope for it to be undertaken in a hybrid manner. Working on one of the University's transformational programmes, the Corporate Processes & Systems Programme is providing the opportunity
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communications? Can you help embed new processes that improve the student experience long after your internship ends? Are you confident in coordinating work across multiple teams to embed change? We’re looking
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hydrological models to improve malaria transmission estimates’ funded by the UKRI Natural Environment Research Council (NERC). The project aims to embed hydrological processes in models of malaria transmission
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underpinning research. As MSCA PhD Fellow (DC2) in Leeds, you will investigate how molecular self-assembly governs the ultrastructure of PNNs. PNNs play a pivotal role in regulating neuroplasticity, a process
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online process analytical technology (PAT), embedding sustainability metrics into the optimisation loop, and apply transfer learning to accelerate the transition from batch to continuous flow processes