Python Data Engineer Azure & PySpark

Brightbox GRP
London
1 month ago
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Python Data Engineer Azure & PySpark - SC Cleared
Contract
£400-£458pd (Inside IR35)
SC Clearance is Essential

Summary
Were looking for a Python Data Engineer skilled in PySpark, Delta Lake, Azure services, containerized development, and Behave-based testing. Youll design and build scalable data pipelines and maintain high-quality, test-driven code in a cloud environment.
What youll do

  • Build and maintain Python/PySpark pipelines for data ingestion, processing, and validation.
  • Write unit and BDD tests using Behave, including mocking and patching.
  • Create and optimize Delta Lake tables for reliable, performant data storage.
  • Use Docker to manage consistent development, testing, and deployment environments.
  • Build configurable, parameter-driven code for modular data solutions.
  • Work with Azure Functions, Key Vault, and Blob Storage for cloud-based workflows.
  • Collaborate with architects, data scientists, and DevOps on CI/CD and deployment.
  • Tune and troubleshoot Spark jobs in production.
  • Document solutions and follow cloud security and governance best practices.

Skills you need

  • Strong Python skills with a focus on clean, test-driven code.
  • Experience writing Behave tests and using mocking/patching techniques....

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