Data Quality Manager

Harrison Holgate
London
15 hours ago
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Data Quality Manager - LondonWe're looking for a Data Quality Manager to play a key role in driving data governance and ensuring the integrity of critical business information.This is an exciting opportunity to lead data quality operations, engage with stakeholders across the business, and embed best-practice processes in a collaborative, inclusive environment. The RoleYou will be responsible for operationalising the Data Quality and Governance Framework, leading day-to-day data quality monitoring, issue management, and stewardship engagement. You'll own the data quality rulesets, workflow systems, and performance reporting, helping the business make better decisions, meet regulatory requirements, and achieve a higher level of data maturity. Key Responsibilities Lead the operation and continual enhancement of data quality workflow tools, including ruleset development and lifecycle management. Conduct data profiling, monitoring, and quality assessments for priority datasets. Manage the end-to-end data quality issue lifecycle, from identification to remediation and closure. Produce dashboards, KRIs/KPIs, and management information to support governance forums. Work closely with business stakeholders, Data Stewards, and Data Owners, providing guidance, training, and operational support. Collaborate with BI, Data Architecture, and IT teams to embed monitoring within data pipelines and ensure data completeness, consistency, and availability. Identify opportunities to automate and improve data quality processes, contributing to the long-term operating model. About You Experienced in data quality, data governance, or a related operational risk function. Strong understanding of data profiling, quality metrics, and issue management. Skilled in stakeholder engagement and able to translate complex requirements into practical, actionable solutions. Familiarity with data workflow tools, BI platforms (e.g., Qlik), and reporting frameworks. Collaborative, proactive, and committed to promoting a culture of accountability and transparency. Location & Type Location: London/Hybrid Type: Permanent, Full-time This is a fantastic opportunity for a hands-on leader to shape the way an organisation manages and governs its data.Tracking.aspx?m7MzxAmMKxR6ssOoL92Da5rLWV4B%2ftEej

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