SC Cleared Senior Data Engineer

Anglia IT Recruitment
London
1 week ago
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Role

SC Cleared Senior Data Engineer
Duration: 3 Months – until 23rd April 2026
Location: London – Hybrid (2 days onsite) + travel to other sites as required.
Rate: Competitive Rate (Inside IR35)


Project

  • Implement data flows to connect operational systems, analytics platforms, and business intelligence (BI) systems.
  • Document source-to-target mappings and define data architecture.
  • Re-engineer manual data flows to enable scalability and reusability.
  • Support the build of data streaming and batch processing systems.
  • Write ETL (extract, transform, load) scripts and code to ensure optimal ETL performance.
  • Develop reusable business intelligence reports and dashboards.
  • Build accessible and governed data solutions for analysis.
  • Recognise opportunities to reuse existing data flows and optimise processes.
  • Lead the implementation of data streaming solutions and best practices.
  • Optimise code and ensure high-performance data processing.
  • Lead work on database management, ensuring security, scalability, and reliability.
  • Development of data products such as data warehousing, data models, reporting, and business applications at scale to support improved business outcomes.
  • Provision of specialist skills in Microsoft BI Stack (Azure SQL, Fabric, Synapse Analytics, Power BI).
  • Understanding in Power Platform to deliver new business intelligence solutions and maintain existing solutions.

Skills Required

  • ETL/ELT development using tools such as Azure Data Factory.
  • Extensive experience with SQL Server and Data Warehousing.
  • Strong understanding and experience working with Microsoft Fabric.
  • Experience working with large and complex datasets.
  • Data Modelling and Design expertise.
  • Basic DBA skills.
  • Report development in Power BI.
  • Experience with data lake and cloud data warehousing.
  • ServiceNow experience is an advantage.
  • Code version control via GitHub or similar would be an advantage.
  • CI/CD experience would be an advantage.
  • Microsoft certification in Fabric or Power BI is an advantage.

Other

  • Candidates must hold or be willing to undergo SC Clearance.
  • This is a hybrid role – 2 days onsite in London. However, candidates must be willing to travel to other UK client sites as required.
  • Competitive rate.


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