Performance Analysis & Modelling Analyst

Oxford Brookes University
Oxford
7 months ago
Applications closed

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We are looking for a data analyst to support the production of analysis and management information for improving decision-making across the University. The Performance Analysis and Modelling Analyst role will involve producing analyses for a number of key university areas including student outcomes, student experience and access and participation.
 
You will be based within the Modelling, Analysis and Resource Planning team but will work closely with colleagues from across the university. The immediate team is relatively small but supportive and enthusiastic and you can expect to be provided with some training and mentoring.
 
The Performance Analysis and Modelling Analyst role would suit someone with a background in data analysis and/or research and intelligence work, and with an ability to effectively communicate findings to a range of stakeholders.
 
The role is full-time and permanent but can also be offered part-time at no less than 0.8 FTE. At the moment we are working in a hybrid (office/home) pattern.
 
Flexible working:
We support a work-life balance for all staff, including career breaks, job sharing, flexible hours, etc. The team is based in our recently refurbished offices on our Headington Campus, joining other colleagues who work approximately one or two days a week in the office on average and the remainder at home. The agile workspace is designed to offer various styles of working, such as collaborative spaces, hybrid meeting spaces, individual workstations and a more relaxed setting of comfy sofas.
 
Benefits
As a Performance Analysis and Modelling Analyst You will also enjoy the benefits of working at Oxford Brookes University with up to 38 days holiday, rising to 41 days holiday (this includes 13 Bank Holidays and Concessionary Days), a generous Local Government pension scheme (19.2% Employer contribution rate), cycle to work scheme and access to a variety of university facilities (Brookes Nursery, Gym and sports facilities).
 
As one of the largest employers in Oxford we pride ourselves in the great experience we offer our staff. You’ll be joining a friendly, professional environment where every member of staff is recognised as important to the success of Oxford Brookes University.  To find out more about the benefits of working for Oxford Brookes please visit: www.brookes.ac.uk/job-vacancies/working-at-brookes.
 

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