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recent publications of staff and postdocs can be found on the Department's website: http://www.sociology.cam.ac.uk The post is fixed term to 31 July 2026 (please note that the funding for this role has
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a range of professional service staff, academics, and students (both current and prospective) - confidence with standard software packages (e.g. Word, Excel, Outlook), and experience or willingness
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opportunities will allow you to bridge ex vivo and in vivo approaches. Highly driven postdocs who establish efficient slice workflows may broaden their skillset to include complementary in vivo approaches
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and other key software platforms used across the function. Troubleshoot and resolve technical issues, manage upgrades, and ensure systems are secure and up to date. Collaborate with internal teams and
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will need a minimum of 5 GSCE's as part of the apprenticeship requirements. Your role will involve fault diagnosis, maintenance for both hardware and software, networking, data management and security
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team of systems engineers, research software engineers and data scientists, developing advanced solutions to support world-class science and via the delivery of configurable, robust distributed digital
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undergraduate projects, participating in project meetings, maintaining software and its documentation, maintaining a web site. The candidate will have obtained (or be close to obtaining) a PhD in Nuclear
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digital print devices software and finishing equipment to fold leaflets, bind booklets, collate inserts, laminate posters and assembling banners. Using initiative to prioritising work as required and manage
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operations and managing modest budgets. You must have excellent interpersonal skills, working proactively and independently. Excellent IT skills, using Excel, Word, Adobe, and CAFM programmes software will be
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. Familiarity with standard design verification (DV) procedures and continuous integration (CI) setups would be beneficial. Knowledge of machine learning workloads and the design of machine-learning accelerators