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

IPS Group
City of London
4 days ago
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We’re working with a respected and fast-evolving Lloyd’s managing agent that’s leading the way across multiple lines, including Property, Casualty, and Specialty. As part of a major transformation, they’re building a modern, business-driven data platform from the ground up – and they’re looking for a Senior Data Engineer to help shape it.

About the Business
This Lloyd’s managing agent is authorised and regulated by the PRA and FCA, managing a high-performing syndicate. They are known for underwriting excellence and are investing heavily in data and technology to support their long-term growth.


Why this role?
You’ll play a key role in delivering a robust, scalable data platform that unlocks better MI, improves data quality, and drives automation across the business. You’ll work closely with teams across Actuarial, Finance, and IT – helping to bring their data needs to life.
This is a genuinely exciting opportunity to influence the data direction of a Lloyd’s business, not just maintain it.


Key responsibilities:

Design and build Data Lake and Data Warehouse solutions


Create scalable, automated batch and streaming data pipelines
Optimise metadata, catalogue, lineage, and data quality processes
Support business teams with data visualisation and reporting solutions
Ensure secure handling of complex and sensitive data
Collaborate with stakeholders across the business to deliver value-driven solutions

What we’re looking for:

London/Lloyd’s Market experience is essential


Strong programming skills in Python and SQL; knowledge of Java or Scala is a plus
Solid experience with relational databases and data modelling (Data Vault, Dimensional)
Proficiency with ETL tools and cloud platforms (AWS, Azure or GCP)
Experience working in Agile and DevOps environments
Knowledge of AI/ML applications in data workflows is desirable
Familiarity with visualisation tools like Power BI, Tableau, or Qlik

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