At a Glance
- Tasks: Create impactful dashboards and reports to support education teams.
- Company: Sandwell Metropolitan Borough Council, committed to community and education.
- Benefits: Hybrid working model, competitive salary, and opportunities for professional growth.
- Other info: Join a supportive team dedicated to improving local education services.
- Why this job: Make a difference in education by transforming data into actionable insights.
- Qualifications: Degree or experience in statistics, with skills in data analysis and reporting.
The predicted salary is between 30000 - 40000 £ per year.
This role is within the Data Intelligence Unit within the Children and Education Directorate. We are looking for a skilled Data Analysis and Information Officer who can play a central role in the development of dashboards, reports and analysis tools to support teams across the Education Directorate.
In this role you will:
- Design and produce reports and analysis from a variety of data sources for school and local authority customers
- Interpret requirements, develop and maintain dashboards using the latest tools such as Power BI to support the business plan priorities within the local authority
- Train and advise local authority and school staff to use the software and reports provided by the Data Intelligence Unit
- Maintain up to date knowledge of legislation and guidance to develop analysis that meets current requirements and needs
- Support the delivery of the Data Intelligence Unit agreement to schools
Essential Requirements:
- Degree or significant experience with a focus on statistics and numerical analysis
- Experience of designing complex reports and undertaking data analysis
- Knowledge of software including Advanced Excel, Intermediate Microsoft Access and specialist analytics software such as Power BI or SSRS
- Embody the council’s Values and Behaviours framework
- Skills relating to the presentation and analysis of data in a variety of formats
The organisation operates to a hybrid working model, currently with 3 days at an office location.
Closing date: 31st July 2026
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