Lead Data Architect

WRK digital
Worcester
1 day ago
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The Lead Data Architect will play a key advisory role during the initial discovery phase of a large-scale data remediation initiative. The role will shape the current-state assessment, define target-state architectural principles, and inform remediation and investment options. There is an expectation of architectural continuity into later delivery phases, subject to programme approval.

Key responsibilities (Discovery phase)
  • Assess current-state data architecture, data flows, ownership, and constraints across priority domains
  • Identify architectural root causes contributing to data quality, trust, and usability challenges
  • Define a target-state data reference architecture to support remediation and insight enablement
  • Inform remediation options, delivery complexity, dependencies, and sequencing
  • Provide architectural input into cost, risk, and benefit assessments for the investment business case
  • Contribute to the design of early proof-of-concept concepts (conceptual design only)
Experience and profile
  • Senior-level data architect with experience in large, complex organisations
  • Strong background in data platforms, integration, analytics, and data governance
  • Comfortable operating in discovery-led environments with a high degree of ambiguity
  • Able to communicate effectively with senior stakeholders and translate technical complexity into clear options and trade-offs
Continuity

The role is expected to provide architectural continuity into subsequent phases of the programme, subject to discovery outcomes and funding decisions.


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