Data Governance Manager

Pingewood
3 weeks ago
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Data Governance Custodian
24 months – until December 2027
Hybrid – occasional travel to Reading
Rate TBD
Role Requirements:

  • Experience: Background in data governance, data management, or related disciplines.
  • Knowledge: Familiarity with governance frameworks, metadata management, and compliance requirements.
  • Technical Awareness: Understanding of governance tooling (e.g., Microsoft Purview or similar).
  • Collaboration: Ability to work with multiple stakeholders across nations and business areas.
    Key Responsibilities:
  • Work under the Data Governance Manager to define foundational governance for a greenfield data environment.
  • Define and maintain data dictionaries, glossary terms, standards, naming conventions, and metadata structures.
  • Implement governance tooling once selected (e.g., Purview or equivalent).
  • Engage with business areas and national representatives to understand data usage, classification, and control.
  • Contribute to drafting governance policies and procedures aligned with security classifications and compliance requirements.
  • Support early-stage activities such as data auditing, monitoring approaches, and documenting lineage/ownership models.
  • Act as a bridge between business users and future architecture during framework creation.
    Desirable Skills:
  • Experience with data governance tools (Purview, Collibra, Informatica, etc.).
  • Knowledge of metadata management, data lineage, and data quality frameworks.
  • Strong understanding of security classifications, export-control constraints, and compliance in regulated environments.
  • Excellent stakeholder engagement and communication skills.
  • Ability to work in greenfield, multinational defence contexts

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