Enterprise Data Architect

Harvey Nash
Manchester
5 days ago
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About the Role

Reporting into senior architecture leadership, you will define, govern and evolve the organisation’s enterprise data architecture, aligning data, technology and business strategy. This is a hands‑on strategic role, combining deep technical expertise with architectural leadership. You will work directly with data models, standards and definitions while also shaping long‑term data strategy and overseeing major transformation initiatives. You will collaborate closely with technology, product and engineering teams, as well as senior business stakeholders, to ensure data is high quality, secure, well‑governed and accessible, supporting the organisation’s ambition to become a truly data‑led enterprise.


Responsibilities

  • Define and deliver the Enterprise Data Architecture Strategy and Roadmap
  • Own and evolve the Enterprise Data Model, aligned to industry standards
  • Design scalable data architectures including data lakes, data warehouses and real‑time streaming platforms
  • Establish and lead data governance, master data, metadata, lineage, quality, security and retention frameworks
  • Chair enterprise data forums and assure alignment across programmes and projects
  • Provide architectural leadership and assurance for major transformation initiatives
  • Act as the senior data authority within design and governance forums

About You

  • Extensive experience as an Enterprise Data Architect in a complex, regulated environment
  • Strong expertise in data modelling, integration, ETL and cloud platforms (Azure, AWS or GCP)
  • Deep understanding of data governance, MDM, metadata management and regulatory compliance
  • Knowledge of modern data architectures (Medallion, Lambda, Data Mesh)
  • Experience with real‑time data platforms (Kafka, Spark) and BI tools (Power BI, Tableau)
  • Confident communicator, able to influence senior stakeholders and chair governance forums
  • Experience with complex operational systems is advantageous

What’s On Offer

  • Competitive salary and bonus
  • Hybrid and flexible working
  • Annual leave plus public holidays
  • Travel and lifestyle benefits
  • Volunteering days and wellbeing support

Our Client’s Commitment

Our client is committed to creating an inclusive, diverse and supportive workplace.


How to Apply

If you are an experienced Enterprise Data Architect and looking for a move, where you can make meaningful impact by designing enterprise data foundations that support growth, innovation and operational excellence, then I would like to hear from you.


Please apply directly online, and if your application is successful one of the team will be in touch.


Job Information

  • Seniority level: Mid‑Senior level
  • Employment type: Full‑time
  • Job function: Information Technology
  • Industries: Information Services and Technology, Information and Media
  • Location: Manchester, England, United Kingdom


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