Data Engineer - Python, AWS (Glue / Lambda)

Wilson Brown
City of London
4 days ago
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Data Engineer


Python | AWS | AWS Glue | AWS Lambdas | Accounting Data | Insurance | London (Hybrid) | Up to £80K

A leading insurance firm is seeking a Data Engineer to join a newly formed Data squad responsible for building a greenfield data platform. This Data Engineer will work closely with internal Accounting and Finance stakeholders, supporting business-critical reporting and regulated financial processes.

As a Data Engineer, you will take ownership of designing and building data pipelines from scratch, working primarily with Python and AWS. This is a true 01 initiative, where the Data Engineer will help define architecture, data standards, and engineering best practices within a growing data function.

This role is ideal for a Data Engineer who enjoys early-stage build work, close stakeholder collaboration, and working with complex financial datasets in a regulated environment.


Salary: Up to £80,000

Location:London


Data Engineer Responsibilities

  • Design, build, and maintain robust data pipelines from the ground up

  • Develop and optimise ETL workflows using Python and AWS

  • Work closely with Accounting and Finance ...

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