Senior and Principle Data Architect (multiple roles)

Harnham - Data & Analytics Recruitment
London
1 day ago
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Senior and Principal Data Architect (Two opportunities)

Location: UK (Hybrid)Permanent role, Salary from £80k - £117k

Overview

We're partnering with a leading financial services consultancy to hire a Senior and Principal Data Architect. This is a senior leadership role focused on shaping and delivering enterprise data architecture strategies across large-scale transformation programmes.

Key Responsibilities:

  • Lead data architecture design and delivery across complex programmes
  • Define and implement enterprise data strategy and governance frameworks
  • Advise senior stakeholders on best practice data architecture
  • Design modern cloud-based data platforms and data lakes
  • Align data architecture across multiple business units and programmes
  • Lead teams and contribute to capability development and business growth

Requirements:

  • Strong experience in enterprise data architecture within financial services
  • Proven track record delivering data strategy, architecture, and governance
  • Experience designing cloud-based data platforms (AWS, Azure, or GCP)
  • S...

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