Data Architect

Sanderson Recruitment
Berkshire
5 days ago
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Data Architect / Technical Data Architect / Senior Data Architect / Lead Data Architect

The client is are searching for multiple experienced Data Architect's to play a key role in a large-scale organisational transformation focused on significantly improving enterprise data capabilities. This role will shape the target data architecture, enable modern data platform adoption, and support the delivery of trusted, scalable, and governed data products across the organisation.

Working closely with engineering, analytics, governance, and senior business stakeholders, you will help define the future-state data ecosystem and ensure architectural alignment across multiple transformation initiatives.

This is a highly impactful role, combining architecture leadership with hands-on technical architecture work, alongside collaboration across delivery teams.



Key Responsibilities

  • Define and deliver the enterprise data architecture vision as part of a major data and digital transformation programme.
  • Design target-state architectures for data platforms, including data lakes, warehouses, integration layers, and analytics capabilities.
  • Establish architectural standards and patterns for data modelling, metadata management, lineage, interoperability, and reuse.
  • Partner with data engineering and delivery teams to ensure solutions are scalable, secure, and aligned to architectural principles....

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