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Data Engineer

eSynergy Solutions
London
1 week ago
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Want to work on real use cases like underwriting and claims with actual impact?

Role overview

We are seeking an experienced Data Engineer to support the design and delivery of a modern, cloud-native data platform. This role is critical to the success of a large-scale transformation programme, focused on consolidating multiple data sources into a unified, scalable architecture to enable improved analytics, data governance, and operational insights.

Technical requirements:

Substantial experience designing and implementing data solutions on Microsoft Azure


Hands-on expertise with Snowflake, including data modelling, performance optimisation, and secure data sharing practices.
Proficiency in DBT (Data Build Tool), with a strong understanding of modular pipeline development, testing, and version control.
Familiarity with Power BI, particularly in integrating data models to support both enterprise reporting and self-service analytics.
Candidates must demonstrate experience working in Agile environments, delivering in iterative cycles aligned to business value.

Tech Stack:


Azure

Power BI
DBT
Snowflake

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National AI Awards 2025

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