Senior Developer - Data and Business Intelligence

Diego Puglisi
Worcester
3 days ago
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Senior Developer - Data and Business IntelligenceUniversity of Worcester3 days ago Worcester - United KingdomFull–time --- ## Position DescriptionSenior Developer Data and BI Sub Department Corporate Information Systems Location St Johns Campus Salary £38,249 to £42,882 Post Type Full Time Contract Type Fixed Term - Ends 30/11/2026 Closing Date Monday 02 February 2026 Reference IT2601 We are seeking an experienced Power BI Developer to support our data team during a period of growth. The position will begin as maternity cover for the BI lead and could potentially evolve into a permanent role reporting to the BI lead, forming a dedicated P... ---

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