Data Engineer - Databricks Contract

Harnham - Data & Analytics Recruitment
Birmingham
3 days ago
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A leading UK organisation is undergoing a major customer and data transformation programme and is looking for an experienced Contract Data Engineer to support a large-scale platform and data migration.

This is a high-impact role within a fast-paced environment, suited to a contractor who can operate autonomously, bring structure to complex data challenges, and implement best-practice ingestion and engineering processes across a modern cloud stack.

THE ROLE

You will join a critical transformation programme focused on consolidating multiple legacy platforms into a new customer engagement ecosystem. The role will centre around building and optimising data ingestion pipelines, supporting real-time integrations, and enabling analytics-ready datasets across the business.

This is a hands-on engineering role requiring strong experience across Databricks, Python, and modern cloud data environments, as well as the ability to work across multiple third-party systems and stakeholders.

KEY RESPONSIBILITIES

  • Design, build and optimise real-time and batch data ingestion pipelines.

  • Implement best practice data engineering and architecture across Databricks and Azure.

  • Support migration and consolidation of data from multiple legacy systems into a new platform ecosystem.

  • Cleanse, merge, and deduplicate complex customer and transactional datase...

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