Data Analyst (Operational Data) (Internal Only)

Bournemouth University
Bournemouth
1 week ago
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About The Role

We are offering an exciting opportunity for an enthusiastic professional to join the Student Records and Reporting team. Working collaboratively with colleagues across Academic Services and wider university, you will support the effective operational use, analysis and interpretation of student records data. You will contribute to the development and enhancement of data-related processes and procedures in order to maintain operational stability. You will identify opportunities to improve data quality, clarity, efficiency and regulatory compliance. Additionally, you will work closely with the Student Records team to facilitate SLC reporting.

The ideal candidate will enjoy working with data, have an accomplished methodical and systematic approach, exceptional analytical skills and excellent attention to detail to analyse, audit and transform the large and complex datasets contained within the university’s student record system to ensure it fulfils both operational and statutory requirements.

This is an excellent opportunity for an individual to gain experience in advanced data management in support of the effective use and optimisation of the student record. Using a variety of software and techniques, you will be responsible for data quality and process improvement within a team that embraces creative thinking and innovation.

Primarily based at our Lansdowne Campus, you will have access to modern open-plan offices situated close to Bournemouth seafront, receive 30 days annual leave plus seasonal closure (between Christmas and New Year), free travel between two vibrant campuses, hybrid working, and enjoy corporate discounts from numerous local businesses and services.

For further information, or an informal discussion, please contact Jon Mildenhall, Student Records and Reporting Manager, Academic Services by email:

THIS POSITION IS OPEN TO BOURNEMOUTH UNIVERSITY STAFF AND AGENCY STAFF CURRENTLY WORKING AT BOURNEMOUTH UNIVERSITY ONLY

About The Department

About us

Bournemouth University’s vision is worldwide recognition as a leading university for inspiring learning, advancing knowledge and enriching society through the fusion of education, research and practice. Our highly skilled and creative workforce is comprised of individuals drawn from a broad cross section of the globe, who reflect a variety of backgrounds, talents, perspectives and experiences that help to build our global learning community.

BU values and is committed to an inclusive working environment. We seek a diverse community through attracting, developing and retaining staff from different backgrounds to contribute to inspirational learning, advancing knowledge and enriching society. To support and enable our staff to achieve a balance between work and their personal lives, we will also consider proposals for flexible working or job share arrangements.

A job description for this position is available at the top of this page. If you require this in a different format, please contact us at .

Responsibilities
  • Support the effective operational use, analysis and interpretation of student records data.
  • Contribute to development and enhancement of data-related processes and procedures to maintain operational stability.
  • Identify opportunities to improve data quality, clarity, efficiency and regulatory compliance.
  • Work closely with the Student Records team to facilitate SLC reporting.
Qualifications and Qualities
  • Enjoy working with data and possess a methodical, systematic approach.
  • Excellent analytical skills and attention to detail to analyse, audit and transform large and complex datasets in the student record system.
  • Ability to ensure data meets operational and statutory requirements.
  • Experience with advanced data management and data quality/process improvement within a collaborative team.


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