61 developer-"https:"-"https:"-"FORTH"-"Embry-Riddle-Aeronautical-University" positions at Lancaster University
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for an experienced HR Systems Developer to join them in delivering key projects and future system developments to support the day to day operations of the POE team. You will be experienced in working in a Systems
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Lancaster University is seeking a Developer to work on an ambitious, institution-wide projects. This is a fixed term role until 31st July 2026. These multi-year strategic initiatives are reshaping the design
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are seeking to appoint a Physicist Programmer (Research Fellow) to join the Experimental Particle Physics Group from 13th April 2026 or as soon as possible thereafter. You would work under the supervision
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Lancaster University Information Systems Services (ISS) department is looking for a Senior Developer to join the Enterprise Operations team on a Fixed Term Contract. The contract will be 6 months duration
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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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Trust funded project: i-motif DNA based asymmetric catalysis with gold carbenes. You will be involved in the development of novel i-motif DNA-Au carbene hybrids for enantioselective Au catalysis using
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-26 Governance Officer Strategic Planning and Governance This is an opportunity for an ambitious individual wanting to develop a career in governance within a large and diverse organisational setting
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position requires collaboration across academic and professional services to analyse complex processes, gather requirements, manage stakeholder expectations, and contribute to the development of innovative
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, delivery, and management of undergraduate and postgraduate education to ensure a distinctive, inclusive, and future-ready offering. You will support the development and delivery of a complex, high-impact
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MRI recordings of the vocal tract during speech, we aim to develop machine learning approaches that don’t just predict acoustic output from articulatory configurations, but reveal why and how