Data Architect Lead Data Platform Migration

McGregor Boyall Associates
London
5 days ago
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Data Architect Lead - Data Platform Transformation


A growing, data-driven organisation is investing in a modern data platform and is seeking a Data Architect Lead to take ownership of enterprise data modelling and design.


This role will lead the definition of robust, scalable data models and integrations, ensuring alignment with business requirements, governance standards, and best practice data architecture.


Job Title: Lead Data Architect
Location: London, Hybrid (3 Days On-Site)
Role Type: Permanent
Salary: Competitive + Bonus & Benefits
Start Date: Open To Notice Periods


Key Responsibilities:

  • Lead the design and evolution of enterprise data models across a modern data platform.
  • Define robust data structures and integrations that support analytics, reporting, and operational needs.
  • Ensure data modelling standards are consistently applied.
  • Provide architectural oversight and design assurance across multiple initiatives.
  • Support and embed data governance, controls, and architectural standards.

Required Skills & Experience:

  • Hands-on experience with modern data platforms, including Snowflake.
  • Extensive SQL experience.
  • Strong experience in data warehouse modelling (e.g. Data Vault...

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