Data Architect

Pinnova Talent
London
2 months ago
Applications closed

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Job Description

Data Architect – London (Hybrid, 2 days in the office)


We’re looking for a Data Architect who can take ownership of enterprise‑wide data governance and shape the future of data architecture across a complex, fast‑moving financial services environment. If you’re passionate about building scalable, compliant, cloud‑ready data ecosystems, this role puts you right at the centre of transformation.


What You’ll Be Doing


  • Developing and embedding governance frameworks covering ownership models, metadata strategy, lifecycle policies, and retention standards
  • Leading cross‑functional governance activity, including chairing a Data Governance Council and driving stewardship across the organisation
  • Defining and enforcing data quality standards while ensuring alignment with GDPR, CCPA, and wider regulatory expectations
  • Designing and delivering modern data platforms, supporting cloud adoption, and shaping architecture across data lakes, warehouses, and content systems
  • Promoting a data‑first culture through training, awareness, and best‑practice enablement


What You’ll Bring


Essential:

  • Strong experience in data architecture and modelling (conceptua...

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