Lead Data Engineer...

Harnham - Data & Analytics Recruitment
London
17 hours ago
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Lead Data Engineer Fully Remote (UK) Up to £120,000 + Benefits We're partnering with a high-growth, product-led digital business to hire a Lead Data Engineer to own and scale their data platform during an exciting phase of expansion. This is a hands-on leadership role where you'll define technical direction, mentor engineers, and build reliable, production-grade data systems that power analytics and real-time decision-making across the company. Why consider this role? Own the data engineering strategy for a rapidly scaling platform Lead architecture, pipelines, and engineering standards end-to-end Fully remote role (UK-based) Salary up to £120,000 plus a strong benefits package High-impact position with genuine influence at senior level What you'll be doing Setting technical direction and best practices across the data function Designing and scaling modern data pipelines and platforms Partnering with senior stakeholders to align data initiatives to business goals Coaching and developing data engineers Embedding testing, monitoring, automation, and quality into the data stack Driving long-term platform evolution and architecture decisions What we're looking for Extensive experience in data engineering, including time in a lead role Strong Python and SQL skills Experience with orchestration tools (Airflow, Dagster, Prefect) Hands-on dbt, AWS, and modern data warehouses Strong data

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