Python Data Engineer

Brightbox GRP
Greater London
5 days ago
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Python Engineer
Contract | £400£458 per day (Inside IR35)
Active SC Clearance is essential
Remote

We are seeking a highly capable Python-focused Data Engineer to join a delivery-driven team building and supporting complex data platforms in Azure. This role is heavily weighted towards Python software engineering rather than traditional ETL-only work. The successful candidate will be someone who writes clean, maintainable, and well-tested Python code, and is comfortable treating data pipelines as production-grade software.
A significant portion of the work involves designing and maintaining complex, test-driven Python data flows, with PySpark used as the execution engine rather than the primary focus. Strong Python fundamentals, testing discipline, and code quality are critical to success in this role.
What youll be doing

  • Designing and building scalable data pipelines with a Python-first approach
  • Developing complex data flows with a strong emphasis on clean architecture, reusable Python modules, and testability
  • Writing comprehensive unit tests and BDD tests (Behave), including mocking and patching
  • Using PySpark to process large-scale datasets while keeping business logic in Python
  • Creating, maintaining, and optimising Delta Lake tables for performance and reliability
  • Building and running appl...

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