Senior Data Engineer

Oliver Bernard
Newcastle upon Tyne
1 week ago
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📍 Newcastle (3 days onsite) | 🏡 2 days WFH


We’re looking for an experienced Senior Data Engineer to join a high‑impact programme delivering scalable, cloud‑based data solutions for a major organisation based in Newcastle.


This is a 6–12 month contract, outside IR35, offering a competitive day rate and a flexible hybrid working model.


🔎 The Role

You’ll play a key role in designing, building, and optimising robust data pipelines and cloud-native data platforms. Working closely with architects, analysts, and engineering teams, you’ll help drive best practice in data engineering and deliver reliable, high-performance solutions.



  • Design and build scalable data pipelines using Python and SQL
  • Develop and optimise big data solutions using Apache Spark
  • Implement and manage cloud-based data platforms within AWS
  • Build and maintain ETL/ELT processes
  • Ensure data quality, governance, and performance optimisation
  • Collaborate with cross‑functional teams to translate business requirements into technical solutions
  • Contribute to architectural decisions and technical best practice

âś… Required Skills & Experience

  • Strong commercial experience as a Senior Data Engineer
  • Advanced proficiency in Python
  • Solid experience with Apache Spark
  • Strong SQL and data modelling skills
  • Hands‑on experience with AWS (e.g. S3, Glue, Redshift, EMR, Lambda)
  • Experience building and maintaining scalable data pipelines
  • Strong understanding of data architecture and best practices
  • Experience with CI/CD and DevOps practices
  • Infrastructure as Code (e.g. Terraform)
  • Experience working in Agile environments
  • Exposure to data governance and security frameworks


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