Data Governance Analyst

Harnham - Data & Analytics Recruitment
London
3 days ago
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Data Governance Analyst

London - 3 days a week - £50,000

Company

A leading global professional services firm is investing heavily in its data capability and is expanding its Data Governance function. Operating across multiple regions and business lines, the organisation relies on high-quality, well-governed data to support decision-making at both operational and leadership level.

You'll be joining a central data team with strong senior sponsorship and a clear mandate to improve how data is defined, managed, and used across the firm.

Responsibilities

As a Data Governance Analyst, you'll play a hands-on, operational role in embedding and supporting the firm's Data Governance Framework.

Key responsibilities include:

  • Working closely with Data Stewards and business stakeholders to understand data needs and usage
  • Supporting the implementation, adoption, and day-to-day use of the firm's data governance framework
  • Maintaining and curating the data catalogue, including business glossaries, metadata, lineage, and reference data
  • Managing and prioritising the data governance issues log, ensuring issues are tracked, resolved, and documented
  • Supporting metadata ingestion and configuration within the firm's data management / catalogue tool
  • Identifying opportunities to improve data quality, con...

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