Business Intelligence Manager

Northampton
2 weeks ago
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Job Title: Business Intelligence Manager

Location: WFH 4 days per week, every Thursday at the Thrapston office

Rate of Pay: £450 per day Umbrella OR £333.40 per day PAYE

Working Hours: Full Time - 37 hours

Type: Temporary Role 6 Months

Opus People Solutions are working with North Northamptonshire Council to recruit for a Business Intelligence Manager.

Duties:

You will have a specific project around assessing performance and governance of NNC partnerships.
There will be another specific project around implementing a new Microsoft Fabric data platform and Power BI dashboards
Ensure provision of accurate, robust and reliable business intelligence, using modern visualisation platforms such as Power BI, at operational, tactical and strategic levels for the services that the team supports (including partnerships)
Lead the improvement of processes for producing data products and analysis, including improving data quality for systems within the areas the team supports
Support the development and transformation of the team and the Council at large to support implementation of data strategy
Provide professional leadership around data handling, analytics, analysis and communication for the team and the Council at large

Person Specification:

Experience in team manager level work for a data / analysis team in local government
Skills in project management
Experience of working with a Power BI / Qlik / Tableau data platform deployed across a large organisation.
Change Management experience
Knowledge of organisational structures and decision-making and governance
Technical knowledge about database concepts and structures
Experience of working in a political environment.
Awareness of the National and Local Government agenda, current issues and challenges.

For more information or to process your application for this role, please apply online now

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