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Senior Data Engineer, Insurance

JR United Kingdom
City of London
1 week ago
Applications closed

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Senior Data Engineer, Insurance

Senior Data Engineer

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Senior Data Engineer Insurance, Lloyd's Managing Agent Lloyd's/London Markets Experience Needed

Senior Data Engineer | Insurance, Lloyd’s Managing Agent | Lloyd’s/London Markets Experience Needed

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Senior Data Engineer, Insurance, london (city of london)

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Client:

ARC IT Recruitment

Location:

london (city of london), United Kingdom

Job Category:

Other

-

EU work permit required:

Yes

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Job Views:

3

Posted:

22.08.2025

Expiry Date:

06.10.2025

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Job Description:

Senior Data Engineer is required to join a forward-thinking data team within a thriving city-based insurance group. This role will see you playing a critical role in delivering reliable, scalable and business-focused data solutions. With a strong focus on Microsoft technologies and cloud-based tools, you’ll work directly with key business stakeholders, MI teams and technical teams to drive performance and decision-making through data.

The ideal candidate here will have a strong background in MI or reporting—experience within insurance is essential.

Key Responsibilities

  • Deliver data solutions and changes that support evolving business requirements.
  • Build and maintain robust, scalable data pipelines using SQL and ETL best practices.
  • Collaborate with stakeholders to analyse, define and implement solutions to complex data challenges.
  • Proactively assess the impact of changes on the broader data model and ensure integrity is maintained.
  • Work alongside the MI/reporting team to ensure data is accurately reflected in dashboards and reporting tools.
  • Consult with business analysts, system owners and architects to align technical delivery with strategic objectives.
  • Build deep knowledge of internal systems and promote collaboration across teams.

Key Skills & Experience:

  • Significant experience with SQL and ETL development.
  • Strong experience with MS SQL Server, T-SQL, Azure Data Factory, Azure Databricks, Python, Data Lake.
  • Strong background in MI or reporting—experience within an MGA or insurance carrier is essential.
  • A sharp analytical mind with the ability to work quickly, efficiently and methodically.
  • Strong communication skills with excellent stakeholder management and influencing skills.
  • Solid understanding of Insurance Operations, Credit Control, and Finance functions.
  • A team player who thrives in an agile, fast-moving, and highly collaborative environment.

For a full consultation on this pivotal role, send your CV to ARC IT Recruitment today.


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