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Medical Statistician

University of Oxford - NDPH

Location: Oxford
Salary: £32,236 to £39,609 with a discretionary range to £43,267 p.a. (Grade 7)
Hours: Full Time
Contract Type: Fixed-Term/Contract
Placed On: 20th August 2019
Closes: 20th September 2019
Job Ref: 142447

NDPH, Old Road Campus, Headington, Oxford

The Nuffield Department of Population Health (NDPH) contains world-renowned population health research groups and provides an excellent environment for multi-disciplinary research and teaching. Based within NDPH, The Translational Epidemiology Unit (TEU) establishes causes of disease and translates epidemiologic findings to population-wide interventions to improve the public health through precision prevention.

As a medical statistician in the TEU, you will work to address important questions such as risk factors for chronic diseases. The main responsibilities will include data management and cleaning, data integration, constructing advanced statistical models, and preparation of reports and presentation of research.

To be considered you will have a postgraduate degree in statistics (or closely related subjects) or equivalent experience, a substantial part of which relating to medical statistics. Proficient knowledge of statistical modelling using Stata, SAS or R is essential, as well as exceptional time management and problem solving skills.  Experience in large scale data management is desirable.

The post is full-time (part-time considered) and fixed-term for 2 years in the first instance.

The closing date for applications is 12.00 noon on 20 September 2019.

Closing Date: 20-SEP-2019 12:00

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