Lead Data Engineer - Databricks

ARCA Resourcing Ltd
London
3 days ago
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Lead Data Engineer - Databricks

Location: Remote UK or hybrid / onsite at one of our clients’ offices

Working Pattern: Remote UK / Hybrid or office based

Salary: Competitive

ARCA Resourcing is proud to be partnered with an innovative and leading retailer that is investing heavily in its data capabilities to drive smarter decision-making across the business. As part of this transformation, we’re looking for a Lead Data Engineer to play a key role in shaping and delivering the organisation’s modern Enterprise Data Platform.

This is an opportunity to combine hands-on engineering with technical leadership, working with cutting-edge technologies while mentoring engineers and influencing the direction of a high-impact data platform.

The Opportunity

The organisation operates a modern data stack built around a Databricks-based lakehouse architecture, alongside a Customer Data Platform (CDP), enterprise analytics tooling, and self-service reporting capabilities.

As a Lead Data Engineer, you will oversee multiple delivery squads, ensuring consistent engineering standards and guiding the design and delivery of scalable data solutions. You’ll coordinate technical delivery across teams while remaining hands-on with architecture, pipelines, and best practice development.

This role is ideal for someone who en...

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