Financial Data Analyst – Power BI & BI Insights

Taylor James Resourcing
City of London
2 months ago
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A financial services recruitment agency seeks a Financial Data Analyst with proficiency in Power BI to provide analytical support in London. The ideal candidate will have a degree in a numerate field and at least 12 months of relevant experience. Responsibilities include developing BI reports and providing insights for business decisions. This is a permanent office-based position offering a salary between £36,000 and £40,000 per annum.
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