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Data Governance Analyst

IPS Group
London
6 days ago
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Data Governance AnalystInsurance - City of London - HybridWe’re looking for a Data Governance Analyst to help strengthen how data is managed, defined, and trusted across the organisation. This role is ideal for someone who enjoys solving data problems, working with stakeholders, and improving the quality and consistency of core data assets.What you’ll be doing

  • Supporting master data management activities to maintain a clean, accurate view of customer data.
  • Managing reference data updates and ensuring codes and classifications are consistent across systems.
  • Maintaining the data catalogue and business glossary, ensuring datasets, definitions, and lineage are clearly documented.
  • Running regular data quality checks, investigating issues, and helping improve data quality rules and controls.
  • Acting as a point of contact for questions around data definitions, customer data, and reference data.

What we’re looking for

  • Experience in data governance, master data or reference data management.
  • Solid understanding of data quality, lineage, business glossaries, and core data management principles.
  • Confident with SQL and data analysis.
  • Strong communication skills and the ability to work effectively with different business teams.
  • Understanding of regulatory expectations in financial services or insurance (helpful but not essen...

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