Data Engineer DV Cleared

Datatech
London
3 days ago
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Data Engineer Opportunity, DV-cleared only

London Manchester Bristol

A progressive, leading-edge UK consulting and technology organisation is hiring Data Engineers to deliver mission-critical work across defence and security programmes, building modern data platforms and production-grade pipelines that enable better decisions at pace. Active DV clearance is essential, we are seeking DV cleared candidates only.

The role
You'll design and deploy production-grade data pipelines, from ingestion through to consumption, within a modern big data architecture. Work is delivery focused and delivered using agile engineering practices.

Typical responsibilities
• Build and operate robust pipelines across ingestion, processing, and consumption
• Use scripting, APIs, and SQL to extract, transform, and curate data
• Process large structured and unstructured datasets, integrating multiple sources
• Collaborate with stakeholders and delivery teams to drive outcomes
Core skills (indicative)
• Production pipeline design and deployment experience
• Strong engineering capability with Python, SQL, plus big data tooling (e.g., Spark, and Java/Scala where relevant
• AWS, Azure, GCP

Working pattern

Hybrid working, with the team on client site or in the office a minimum of two days per week. Actual time and location will vary by role or assignment

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