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Principal Data Engineer – Winchester/London (Hybrid) - £84,000 + 10% bonus

Ada Meher
Winchester
1 day ago
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Principal Data Engineer – Winchester/London (Hybrid) - £84,000 + 10% bonus

We are recruiting a Principal Data Engineer for a market leader in Digital Telecommunication & Broadcasting technology solutions. The successful candidate will join a migration project from on-prem to an AWS based Enterprise Data Platform, working hands‑on with batch and streaming pipelines, designing systems from scratch and contributing to the strategic roadmap.


Working the hours that suit you around life’s other commitments is a priority – you are expected to be present 1‑2 days a week in either the Winchester or Central London offices based on business need.



  • Demonstrable expertise and experience working on large‑scale Data Engineering projects
  • Strong experience in Python/PySpark, Databricks & Apache Spark
  • Hands‑on experience with both batch & streaming pipelines
  • Strong experience in AWS and associated tooling (e.g., S3, Glue, Redshift, Lambda, Terraform etc)
  • Experience designing Data Engineering platforms from scratch

Benefits include Private Medical, enhanced pension contributions and wellness/gymflex programmes.


Send your CV to today to apply.


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