Finance Data Engineering Lead

London, United Kingdom
Last week
£750 – £950 pd

Salary

£750 – £950 pd

Job Type
Contract
Work Location
Hybrid
Seniority
Lead
Education
Degree
Posted
18 May 2026 (Last week)

Finance Data Engineering Lead - Insurance Programme

Contract | Outside IR35 | London (Hybrid)

We are working with a leading insurance organisation seeking a Finance Data Engineering Lead to join a major programme at a critical stage of delivery.

This is a hands-on role focused on building and delivering data solutions within an established cloud data environment.

The Role

You will play a key role in developing and deploying finance and actuarial data pipelines, supporting reporting, analytics and reconciliation capabilities.

Key responsibilities include:

Developing Python / PySpark data pipelines within cloud platforms

Building datasets and models for finance, actuarial and risk reporting

Integrating with existing data ingestion and orchestration frameworks

Supporting reconciliation, validation and data quality processes

Collaborating with design and architecture teams to deliver aligned solutions

Experience Required

Strong experience as a Data Engineer within insurance (essential)

Proficiency in Python, PySpark and Spark-based processing

Experience working with Databricks or similar cloud data platforms

Exposure to finance, actuarial or regulatory reporting data

Ability to operate within live programme environments and deliver at pace

Engagement Details

Contract: Outside IR35

Day Rate: £750 - £950 (flexible for strong profiles)

Duration: 6-12 months

Location: London (3 days per week onsite)This role is ideal for someone who enjoys hands-on delivery, working within established environments, and contributing to high-impact programmes.

If you receive suspicious outreach claiming to be from us, please contact us via the ManpowerGroup website

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