317 data-"https:" "https:" "https:" "https:" "https:" "https:" "https:" "U.S" uni jobs at University of Oxford
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5 years. The appointments will be in the area of statistical quantitative finance/financial econometrics, in particular data science and machine learning applied to quantitative finance
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Process Informal enquiries may be addressed to Nadine Gilhome (nadine.gilhome@eng.ox.ac.uk). For more information about working at the Department, see www.eng.ox.ac.uk/about/work-with-us/ Only online
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to problems, or to progress key tasks. They will have an excellent standard of computer-literacy and will have the ability to handle numerical and financial data with confidence and accuracy. This is a
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in day-to-day delivery of the study, from handling patient samples and assays to data analysis and liaison with clinical and industry partners, and be closely involved in technology development
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Grade 8: £49,119 - £58,265 per annum including the Oxford University Weighting of £1,730 per annum Fixed-term (one year), full-time (37.5 hours per week) Oxford Saïd’s Digital and Information
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contact details of two referees. The supporting statement should explain how you meet the essential criteria for the post using clear examples. Please click here for information and advice on writing
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within a team. You will have up-to-date knowledge of UK employment law, and awareness of data protection and information security guidelines. You will enjoy providing a high level of customer service and
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(RCTs). For Grade 7 applicants, you must also be fluent in trial design and skilled in statistical techniques relevant to RCTs. Clear communication of statistical information in simple terms is essential
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Development Review (PDR) process, to promoting apprenticeships, coaching, LinkedIn Learning and leadership development. You will also play a central role in our move to improve our data and digital fluency
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audiences and communicate complex concepts in a clear and engaging way. Experience of working in a research/higher education environment would be desirable. For more information about the ORI, please see