Data Architect 24 month FTC

Tenth Revolution Group
Hatfield
2 months ago
Applications closed

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Data Architect - £60,000-£80,000 | Hybrid (Hatfield, 2 Days Onsite) | January Start

A leading UK utility company is seeking an experienced Data Architect to join their team and play a pivotal role in shaping and governing their enterprise data landscape. This is a strategic and hands-on position, ideal for someone who can hit the ground running and deliver high-quality data architecture in a complex, multi-domain environment.

The Role:

  • Design and implement robust data architectures for operational, analytical, and regulatory workloads.
  • Develop conceptual, logical, and physical data models and define modelling patterns (3NF, dimensional/star, Data Vault).
  • Embed data governance and data quality frameworks across pipelines.
  • Work with the existing technology stack (Redshift Data Lake, Talend, Oracle, QlikView) while leveraging knowledge of modern platforms such as Snowflake, Databricks, Synapse.
  • Engage with senior stakeholders and lead architectural decisions that align with business strategy.

The Ideal Candidate:

  • Proven experience as a Data Architect or senior data professional.
  • Strong expertise in data modelling, governance, and quality frameworks.
  • Familiarity with cloud data platforms and ability to operate at both strategic and hands-on levels.
  • Excellent stakeholder engag...

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