Enterprise Data Architect

LUMORA SOLUTIONS
London
3 days ago
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Job Title: Enterprise Data Architect

Location: Remote (UK-based) with occasional travel to London

Basic Salary: Up to £140,000

Summary:

We are partnering with a leading global consultancy who are looking to hire an experienced Enterprise Data Architect to drive data strategy and architecture across complex client environments. This is a senior, hands-on role focused on designing enterprise-scale data platforms in multi-cloud environments (AWS, Azure, GCP), supporting large transformation programmes across multiple industries.

Responsibilities:

  • Lead enterprise data architecture design across AWS, Azure, and GCP environments.
  • Define target and transition architectures, standards, and reference models.
  • Own data governance, metadata management, lineage, and master data strategies.
  • Design data platforms including data lakes, lakehouse, and streaming architectures.
  • Collaborate with engineering, security, and platform teams to ensure architectural alignment.

Skills:

  • Proven delivery of enterprise-scale, multi-cloud data platforms.
  • Strong expertise across AWS, Azure, and GCP data services.
  • Deep knowledge of data modelling (conceptual, logical, physical) and domain-driven design.
  • Experience with Snowflake, Databricks, BigQuery, Redshift, ...

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