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Data Governance Analyst

The AA
Basingstoke
1 week ago
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The AA – Basingstoke, England, United Kingdom


Data Governance Analyst

The AA is the nation’s leading motoring organisation, offering roadside assistance, home and motor insurance, and driving technologies to millions of customers. We are expanding, diversifying and modernising, and we need a Data Governance Analyst to help shape the future of data governance in a dynamic, forward‑thinking organisation.


Location & Employment

Hybrid working – 3 days per week in our Basingstoke office.


Permanent, full‑time role. Annual bonus available.


What will I be doing?

  • Collaborate with stakeholders across Data, IT and the business to ensure data is accurately classified, documented, and GDPR compliant.
  • Maintain and enhance the Business Glossary within Microsoft Purview.
  • Support implementation of data quality rules, profiling and lineage for improved transparency and trust.
  • Drive continuous improvement of the Data Governance Framework and identify opportunities to strengthen governance practices.
  • Act as 1st Line Risk Coordinator, ensuring timely updates to the Risk Portal and supporting enterprise risk activities.
  • Communicate complex data concepts clearly to both technical and non‑technical audiences, fostering data fluency across the organisation.

What do I need?

  • Experience in a data governance role, ideally within a multi‑product or regulated environment.
  • Strong understanding of data governance principles – classification, lineage, profiling, and quality.
  • Hands‑on experience with tools such as Microsoft Purview, Databricks Unity Catalog, or similar platforms.
  • Proven ability to communicate complex data concepts clearly to both technical and non‑technical audiences.
  • Strong relationship building skills with stakeholders at all levels.
  • Analytical mindset with strong problem‑solving skills and a proactive approach to continuous improvement.

Benefits

  • 25 days annual leave plus bank holidays; holiday buying scheme.
  • Worksave pension scheme with up to 7% employer contribution.
  • Free AA breakdown membership from day one, 50% discount for family and friends.
  • Discounts on AA products, including car and home insurance.
  • Employee discount scheme – car salary sacrifice, health care, shopping, holidays and more.
  • Company‑funded life assurance.
  • Diverse learning and development opportunities.
  • Dedicated Employee Assistance Programme and 24/7 remote GP service.

We’re an equal opportunities employer and welcome applications from everyone. The AA values diversity and the difference it brings to our culture and our customers. We actively seek people from diverse backgrounds to join us and become part of an inclusive company where you can be yourself, be empowered, and feel like you truly belong.


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