Data Governance Analyst

EDF Energy
Exeter
2 days ago
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About the Role

Ready to make data governance simple and impactful? Want to help shape how EDF uses data to power better decisions? At EDF, Success is Personal – your journey matters as much as ours.


The Opportunity

As a Data Governance Analyst, you’ll play a key role in embedding governance standards across EDF Business Solutions, supporting our journey towards An Electric Britain. Your work will help ensure data is accurate, consistent and trusted – driving better outcomes for our customers and our business.


We’ll support your growth with on-the-job learning, coaching and opportunities to progress within our analyst framework. You’ll gain exposure to strategic projects, regulatory reporting and data quality initiatives – all while helping us build a culture of compliance and continuous improvement.


This is a hybrid role with flexibility to work from home and attend our #Exeter office when needed. You’ll collaborate with stakeholders across EBS and beyond, making governance accessible and actionable for everyone.


Who You Are

We’re looking for a Data Governance Analyst who’s proactive, detail-focused and passionate about making data work for everyone. To be shortlisted, you need to offer:



  • Experience in data governance or data quality frameworks
  • Ability to conduct audits and produce compliance reports
  • Skills in creating clear training materials and delivering workshops
  • Strong communication skills to engage non-technical audiences
  • Knowledge of regulatory or industry data standards

What You’ll Be Doing

  • Auditing data processes to identify compliance gaps and risks
  • Developing and delivering governance training and guidance
  • Producing clear documentation and playbooks for business users
  • Collaborating with data owners and governance forums on remediation actions
  • Driving adoption of governance policies and measuring success

Pay, Benefits and Culture

Alongside a salary of circa £35,600pa (depending on experience), potential for an annual bonus, and a market-leading pension scheme, your package will include customisable benefits such as electric vehicle leasing, discounted gym membership, life assurance, tech vouchers, experience days and more.


At EDF, we believe there are multiple definitions of what it means to succeed. That’s why we offer you the freedom to develop a career that’s unique to you. Here, Success is Personal – it’s your journey, powered by us.


Everyone is welcome at EDF; we’re committed to building a workforce that reflects gender balance, social mobility and inclusion of minority ethnic backgrounds, LGBTQ+ communities and those with disabilities. As a Disability Confident employer, we will support applicants requiring adjustments.


Join us and find your success at EDF!


#SuccessIsPersonal #EDFcareers #LI-Hybrid


Closing date for applications: 2nd February 2026


Success is Personal. It's your journey, powered by us. Join us and drive the transition towards an ElectricBritain.


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