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Data Architect

Randstad Digital
London
1 day ago
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Job Description

Lead – Data Models for Microsoft Fabric

Location: London, UK - (with occasional on-site collaboration)

Contract Type: 3-6 month Contract

Department: Data & Analytics


About the Role

Seeking an experienced Lead, Data Models for Microsoft Fabric to spearhead the design and oversight of semantic data models, metadata, and end-to-end lineage. This senior, hands-on role ensures full data traceability from ingestion to consumption for quality reporting, strong governance, and confident decision-making. You will build and manage robust master data and metadata, ensuring definition, risk-assessment, and alignment with enterprise standards. Collaborate closely with Data Architecture, BI & Analytics, and Change Engineering to underpin all reporting with high-quality semantic models, logical lineage, and data glossaries.


Key Responsibilities

Metadata & Lineage

  • Partner with business analysts and solution designers to embed metadata capture into change and operational processes.
  • Maintain metadata and process mapping artefacts, escalating issues and resolving gaps where needed.
  • Oversee logical and physical lineage across data domains, ensuring accurate mapping to Microsoft Fabric and...

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