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Health Research Location: Bailrigg, Lancaster, UK Salary: Professorial Closing Date: Monday 20 October 2025 Interview Date: Wednesday 12 November 2025 Reference: 0456-25-R Programme Director
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internal / external systems and data sources Develop scalable C# .NET Core applications with a focus on high performance Building user interfaces using Angular or similar frameworks Develop and optimise SQL
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prototyping with access to Lancaster's high-performance computing facilities. Essential Requirements • PhD in Machine Learning, Computer Science, Computational Neuroscience, or related field
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2026 Reference: 0543-25 Lancaster University is delivering a major Curriculum Transformation Programme to reshape how education is designed, delivered and managed across the institution. This is a fixed
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January 2026 Reference: 0926-25 We invite applications for a Research Software Engineer to join the Prob_AI Hub. This £8.5M programme is funded by EPSRC and brings together research groups from
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future complex distributed systems. Developing high quality and impactful publications. Developing collaborations with academic, industry partners and EPSRC projects. You will have a PhD in Computer
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content is inclusive, accessible, high quality and aligned with student needs. You will also gather feedback, analyse engagement data and use insights to continuously improve our digital materials. We’re
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Technology Enhanced Learning (TEL) to become part of our internationally leading TEL doctoral programme team for 12 months. The TEL doctoral programme is delivered by colleagues in the discipline of
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the sports centre offices student residencies, or at indoor events. You will be part of our Facilities – Service Delivery department - a team of 250 people – delivering a safe and high-quality environment
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of reliable gold-standard training data. Key Responsibilities Adapt and test existing automatic accent/dialect classification technology Generate results and data visualisations to reflect system performance