39 programming-"Multiple"-"U"-"O.P"-"FEMTO-ST-institute" positions at University of Sheffield
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interview Ability to plan and progress multiple work activities simultaneously. Essential Application and interview Able to undertake role without close supervision, with experience of working effectively as
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/ Interview Ability to work proactively using own initiative, with minimum supervision and to multiple deadlines. Essential Application /Interview Ability to gain trust, confidence and respect amongst
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landscapes and provide real-time visibility across product areas. Essential Application/ Interview Strong experience identifying, managing, and mitigating delivery risks and issues across multiple workstreams
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technical problems. Collaborate with colleagues from multiple teams to plan workload and resources to fit project timescales. Research into novel technology to advance knowledge, evaluate new techniques, and
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and/or machine learning. A strong analytical and quantitative skillset and experience of programming languages (e.g. R, Python) are also essential. This post will be supervised by Dr Christopher Cooney
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for children and young people with profound and multiple learning disabilities: INTERACT trial www.interacttrial.com The research study is evaluating an interaction and communication approach called Intensive
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complex, involving multiple partners, working on innovative technology to provide practical solutions to industrial problems. As a member of the multi-functional project team, you will contribute
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datasets, and utilising internal and external data sources in reporting and ability to quickly assimilate and analyse complex data from multiple sources. Essential Application/Task Experience of project
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healthcare sustainability and the use of polymeric bio-based materials. Desirable Application/Interview Ability to manage, organise and analyse datasets from multiple sources (e.g., material testing results
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collaboration experience. Main duties and responsibilities Develop findable, accessible, interoperable, and reusable (FAIR) AI / machine learning software, tools, and workflows to support multiple exploratory