Data Architect

Falcon Chase International
Leeds
1 week ago
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Job Summary

We are seeking an experienced Data Architect to define, design, and govern enterprise data models, data flows, and data life cycle processes across multiple integrated systems. The role requires strong expertise in AWS-based solutions, NoSQL data modelling, data governance, and integration across heterogeneous systems.

Working closely with engineering teams, data governance functions, and senior stakeholders, the Data Architect will ensure data structures, documentation, and processes align with business objectives and comply with organisational and regulatory governance standards.

Candidate must be SC eligible or cleared.

Key Responsibilities Data Architecture & Modelling

  • Define and maintain logical and physical data models, including NoSQL data structures, to meet business and technical requirements.
  • Establish and document end-to-end data structures, data flows, and life cycle processes across integrated systems.
  • Define and document data requirements, inputs, outputs, and lineage using approved data lineage and traceability tools.

Integration & Documentation

  • Lead the creation and maintenance of API documentation and data integration specifications.

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