BI Reporting Lead - Power BI & Data Warehouse

Spinwell Global
Sheffield
2 weeks ago
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A leading recruitment agency is seeking a Technical Lead (Reporting) to assist in business intelligence reporting within the public sector. This role includes designing and implementing reporting systems and conducting advanced data analysis. Candidates should have extensive knowledge of Business Intelligence tools, particularly Power BI and SQL. The majority of work is remote with occasional office requirements in Sheffield or Hull. This is an excellent opportunity for those looking to contribute to strategic business decisions.
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