IT Specialist - Enterprise Data Governance

Fusion People Ltd
London
1 month ago
Applications closed

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IT Specialist - Enterprise Data Governance

Permanent role

London-based (hybrid, 2 days per week in office)

Grade 5

We are seeking an experienced IT Specialist Enterprise Data Governance to lead and advance our organisation's data governance capability. This is a senior level role responsible for shaping the frameworks, standards, and practices that ensure the integrity, quality, and security of our enterprise data assets.

If you are passionate about data governance, enjoy working cross-functionally, and want to influence strategy at a regional or global level, we'd love to hear from you.

About the Role:

  • As a key technical expert within Data & Analytics, you will:
  • Develop, implement, and maintain enterprise data governance frameworks, policies, and procedures
  • Ensure governance standards align with organisational strategy and IT priorities
  • Support and guide Data Owners and Data Stewards in fulfilling their responsibilities
  • Define and maintain the enterprise data dictionary and metadata management standards
  • Lead data quality initiatives, audits, and governance forums
  • Drive continuous improvement in data integrity, security, and compliance
  • Promote a strong culture of data literacy and accountability across the organisation
  • Provide expert guidance on large-scale, cross-functional technical initia...

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