Lead Data Governance & Quality Manager — Data-Led Impact

Stepchange
Leeds
3 weeks ago
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A forward-thinking charity in the UK is seeking a Lead Data Governance & Quality Manager to drive its digital transformation. This pivotal role will establish authority across all data assets and shape the charity's data governance function. The ideal candidate will bring hands-on experience in building data governance frameworks and have deep knowledge of governance tools within financial services. This leadership role plays a crucial part in cultivating a data-led culture, ensuring robust data quality and compliance.
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