Senior Data Engineer

JSS Transform
Southampton
10 months ago
Applications closed

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Senior Data Engineer

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Senior Data Engineer

Senior Data Engineer

We’re working with a leading insurance organisation undergoing a large-scale data transformation, and they’re now seeking aSenior Data Engineerto play a key role in building and improving their data architecture and governance capabilities as part of a major programme of work.


Key Responsibilities:

  • Design and implement robust data pipelines and integration frameworks.
  • Support the implementation and enhancement ofMaster Data Management (MDM)solutions.
  • Work with business and technical stakeholders to ensure data quality, consistency, and governance across systems.
  • Collaborate closely with data architects, analysts, and engineering teams to support strategic data initiatives.


Key Skills & Experience:


  • Strong experience as a Data Engineer in enterprise environments.
  • Proven expertise withMDM tools(e.g. Informatica MDM, Reltio, Semarchy, IBM InfoSphere, etc.).
  • Solid background in data integration, ETL, and data warehousing concepts.
  • Proficiency in SQL and modern data engineering tools/platforms.
  • Experience working in theinsuranceor financial services sector is highly desirable.
  • Excellent communication skills and stakeholder management.


Why apply?

  • Outside IR35engagement – flexible, contractor-friendly setup.
  • Remote-firstwith collaborative teams and strong technical leadership.
  • Opportunity to make an impact on a major data programme within a top-tier insurer.


If you’re a Senior Data Engineer with MDM experience looking for your next outside IR35 contract, we’d love to hear from you.

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