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that data platforms, analytics tools, and enterprise systems are aligned with institutional needs. You will support the implementation of a new reporting framework encompassing modern technical reporting
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partners. Main Duties Improve, develop, implement, and apply advanced computational tools and workflows to process, analyse, and interpret large-scale LCMS-based metabolomics datasets across multiple species
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flexible approach. Ability to work with minimum supervision on multiple projects and/or work streams in an environment with tight deadlines. Firm but diplomatic attitude to ensure appropriate and realistic
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. Manage multiple university processes and systems, applying consistent practice and explaining complicated processes to others. Developing solutions independently and obtaining support from others internal
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a range of channels including social media, websites, emails and printed materials. The successful candidate will also have experience in SEO, crafting copy aligned to best practice, and editing
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events to promote the Worklink service to students. Contributing to regular team meetings, one-to-ones and performance reviews ensuring that own skills are aligned to team, department, and University
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Leadership Lead the University’s approach to research governance, ethics, and integrity, ensuring alignment with the University’s Research Code of Practice, the Concordat to Support Research Integrity, and
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.). Work closely with the Research Support Manager, Head of Research Support, and Business Engagement Partners as appropriate; Provide expert advice on proposal content to ensure alignment with funding
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with protected characteristics are treated equally and fairly. Dimensions As a key team manager you will be expected to lead and motivate a team or teams with multiple members to provide an excellent
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development of mathematical models and algorithms for the analysis of biopharmaceutical manufacturing processes with a focus on assuring safety and alignment of machine learning models with the expected