70 web-programmer-developer-"https:"-"https:"-"https:"-"Mines-Paris-PSL" positions at Lancaster University
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Partnership with administrative tasks such as organizing the annual conference, contributing to the writing of the newsletter and web content, and supporting with social media and other duties as required
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, teachers and schools/colleges, you will coordinate in person and online events/activities as part of the Lancaster Access Programme (LAP). The Lancaster Access Programme is a widening access scheme for Year
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confirmed Reference: 0163-25-R2 Lancaster University is part of a 5-year £6.8 million EPSRC Programme Grant on “Securing Convergent Ultra-large Scale Infrastructures (SCULI) ” conducted jointly with Bristol
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postgraduate programmes. This is a full-time position for a one year fixed period, with potential for extension. You should be able to demonstrate a strong computer science background and excellence in lab-based
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development, quality assurance, and wider academic responsibilities within the Accounting & Finance programme. You should have a PhD in the relevant areas and with some years teaching experience in Higher
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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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Centre for Polar Observation and Modelling (CPOM) land ice altimetry activities at Lancaster University, and will work to deliver a programme of high impact research. The primary responsibilities
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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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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