Data Engineer

CBSbutler Ltd.
Telford
3 weeks ago
Create job alert

Data Engineer - ETL Developer


+ £515 per day
+ Long term contract - 6-12 months
+ SC is required for this role.
+ Telford - at least 2 days per week


Key Skills:


+ ETL based solutions


+ Oracle RDS


ETL Developer - Talend / Oracle RDS


We're expanding our data engineering capability to meet growing demand across the AEOI programme - supporting ongoing work on the DPRS regime and taking on new challenges with the CARF regime.


We're looking for an experienced ETL Developer to join our established data engineering team. You'll help deliver high-quality data management and ETL solutions across multiple concurrent projects in a fast-paced, collaborative environment.


As part of one of our core project teams, you'll take ownership of solution delivery while also contributing to our shared Talend framework and supporting the wider data delivery function.


What you'll be working on:



  • Developing and maintaining ETL solutions using Talend within our existing framework and patterns


  • Working with Oracle RDS databases


  • Contributing to the continuous improvement of our CI/CD deployment pipelines and job scheduling processes



What we're looking for:



  • Solid experience with Talend ETL (essential)


  • Hands‑on experience with Oracle RDS


  • Good knowledge of SQL and CI/CD deployment practices


  • Experience with other ETL tools (e.g. Pentaho or Informatica) is also valuable



If you are interested in this role or wish to apply, please feel free to reply to this advert or call me on


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