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Data Engineer

RaptorTech Recruitment
Ipswich
4 weeks ago
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This is an excellent new vacancy for a Data Engineer to join an Ipswich based business who are looking to really bring to the fore their data capabilities.


Reporting to the Head Of Development you will design, develop and deploy a range of greenfield data projects to improve the way the capture, store and report on data. Projects will include the creation of a cloud based data warehouse, building / integrating data pipelines, optimising data performance and improving general data security.


To be successful it is likely that you will have:


  • Commercial data engineering skills and excellent SQL
  • Well-rounded knowledge of Azure and its services
  • The ability to design and develop end to end data services
  • Solid scripting skills (python)

In return they are offering:


  • A salary of up to £60,000.
  • Hybrid working (1 day in office a week).
  • 25 days holiday + bank holidays.
  • Pension.
  • Access to professional training.


If you feel you have the skills to be successful, and would like to know more, please apply now.

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National AI Awards 2025

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