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Data Architect - Azure Data Factory - SC Cleared

ZipRecruiter
City of London
1 week ago
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Overview

Data Architect - Azure Data Factory – SC Cleared - Part Time - Remote - Inside IR35


Lead the migration of data capabilities from a legacy stack onto a newly delivered Azure Data Factory platform for a major UK public sector programme. You’ll set the target data architecture, govern the migration, and work closely with stakeholders and engineers to deliver a secure, performant and cost-effective solution. This is a part-time role, offering 3 days per week. Due to the nature of the role, we require candidates with an active SC Clearance.


Responsibilities

  • Own the target data architecture (ingest → transform → serve) and standards/guardrails.
  • Plan and govern migration from Oracle/PL-SQL to Azure (e.g. Azure SQL/T-SQL), including cutover and risk.
  • Define conceptual/logical/physical data models and interfaces.
  • Oversee ETL/ELT in Azure Data Factory, ensuring reliability, observability and cost optimisation.
  • Guide PL/SQL → T-SQL conversion, recommending tooling (e.g. SSMA).
  • Champion DevOps practices (Git/GitHub, CI/CD) and produce clear design/runbook docs.
  • Engage senior technical and non-technical stakeholders effectively.

Skills & experience

Essential



  • Advanced SQL; strong Oracle PL/SQL and T-SQL (migration/conversion experience).
  • Proven Azure Data Factory design/governance at scale.
  • Data modelling & RDBMS fundamentals.
  • Excellent stakeholder management and communication.

Desirable

  • Data engineering on Azure; monitoring and cost control.
  • SSMA, Git/GitHub, VS Code, GitHub Copilot / basic LLM prompting (foundational knowledge fine).
  • Data architecture & network basics in Azure (VNets/private endpoints).
  • Power BI / SAP BusinessObjects exposure.


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