ERP Data Governance Specialist (SAP)

Delaney & Bourton
Leeds
1 week ago
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Full-Time | Permanent

Are you passionate about turning data into a strategic asset? Join a global transformation programme as a market leader roll out a new SAP ERP system and play a key role in shaping how data is governed, understood, and used across multiple territories.

We're looking for a detail-driven Data Governance Analyst to support the design and implementation of data governance frameworks that ensure our data is consistent, accurate, secure, and compliant.

💼 What You’ll Do

As part of the Global Data Governance team, you’ll:

  • Help build and maintain our global data catalogue and business glossary
  • Monitor and report on data quality, supporting issue resolution with local teams
  • Prepare and support governance council meetings, policies, and standards
  • Act as a key link between global and local data stakeholders
  • Ensure compliance with GDPR and internal data policies
  • Lead requirements gathering for data-related initiatives

This is a cross-functional, international role where you'll work closely with business users, data owners, data stewards, and senior stakeholders, helping embed good governance practices across the organisation.

  • 1–3 years' experience in a data governance, data analyst, or business analyst role
  • Strong understanding of data definitions, metadata, and governance principles
  • Excellent communication and stakeholder engagement skills
  • Organised, detail-oriented, and proactive in problem-solving
  • Proficient in Excel, PowerPoint, and collaboration tools (e.g., SharePoint, Jira)
  • Experience with tools like Alation, Collibra or Informatica is a bonus
  • Have a degree in Data Management, Information Systems, or a related field
  • Are working towards (or interested in) certifications like DAMA, DCAM or CDMP
  • Have exposure to SAP or large-scale ERP data projects

This is a rare opportunity to help shape the data governance landscape of a global business working alongside passionate professionals on a major enterprise transformation journey. If you’re curious, structured, and excited about the power of well-managed data, we want to hear from you.


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