Finance Data Engineering Manager

Aegon UK
Edinburgh
1 month ago
Applications closed

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Overview

Finance Data Engineering Manager

Permanent

Location: Edinburgh (We believe in the power of in-person collaboration, and our hybrid model requires colleagues to be in the office a minimum of 40% of their time)

Salary: A competitive salary from £64,400 - £80,500 (effective April 2026) depending on the experience you can bring

Closing date: 12 February 2026

We’re a company of ambitious, collaborative problem-solvers who get things done – we’re looking for like-minded people to join us.

We help people live their best lives. We help them with the big stuff, for the moments that matter: Pensions, Savings, Investments. At Aegon, we strive in creating a diverse organisation that plays a meaningful role in driving greater equity, inclusion and belonging.

The Finance Data Management team is part of the Aegon UK’s Finance function, with accountability for key Finance systems and their operation. It develops and maintains a high-quality data resource that, through a chain of information and knowledge, supports the business goals of the organisation. This team drives and manages the data, ensuring design principles are embedded and that they are the single point of contact for projects and change.

As Finance Data Engineering Manager, you will lead the teams responsible for developing new data led solutions and to drive process improvements across the finance teams. In this position you will also assume ownership of all data warehouse responsibilities with the support of your team. You will also oversee and manage key SLAs on our data, supported by Internal Audit, SOx, and IT governance.


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