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Data Engineer

KDR Talent Solutions
City of London
2 weeks ago
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Data Engineer | Location: London (Hybrid - 2 days WFO) | Salary: £60,000-£80,000 | London Market Insurance experience ESSENTIAL.


The Opportunity

Are you passionate about building cutting-edge data platforms that drive business growth? Our client is seeking who is a Speciality Insurer a skilled and motivated Data Engineer with Insurance experience to play a key role in the creation of a brand-new data platform within the Azure ecosystem and Databricks.


This is an exciting opportunity to be at the forefront of data innovation, working within a newly formed Data & Analytics team in a long standing London Market Insurer. You’ll help shape the data strategy, improve data quality, and empower the business to make data-driven decisions.


As a Lead Data Engineer, you'll work closely with both technical and business stakeholders, leveraging your expertise to design, develop, and optimize a high-performance data platform built on Databricks. This platform will be built to scale, incorporating the latest advancements in data intelligence while supporting strategic business objectives.


Key Responsibilities

🔹 Build & Develop – Design and maintain a robust Databricks Data Platform, ensuring performance, scalability, and availability.

🔹 Data Pipelines – Connect APIs, databases, and data streams to the platform, implementing ETL/ELT processes.

🔹 Data Integrity – Embed quality measures, monitoring, and alerting mechanisms.

🔹 CI/CD & Automation – Create deployment pipelines and automate workflows.

🔹 Collaboration – Work with stakeholders across Global IT, Data, and Broking teams to translate business requirements into technical solutions.

🔹 Futureproofing – Drive the evolution of the data platform, ensuring adaptability for new data sources, analytical models, and emerging technologies.


What You’ll Bring

Extensive hands-on experience with Databricks, and Microsoft Azure data tools (must-have: Azure Data Factory, Azure Synapse, or Azure SQL).

Dimensional modelling / DWH Design

Medallion Architecture

✅ Strong ETL/ELT development skills.

Python scripting experience for data automation.

✅ Experience with CI/CD methodologies for data platforms.

✅ Previous London Market Insurance experience


Why Join?

🚀 Greenfield Project – Work on an all-new data platform, shaping its architecture from the ground up.

🌍 Collaborative Culture – Engage with global teams in an agile, innovative environment.

📈 Career Growth – Play a pivotal role in driving data excellence within a forward-thinking business.

💡 Cutting-Edge Tech – Work with the latest advancements in Azure, Databricks, and Data Engineering.


This is a fantastic opportunity for a Lead Data Engineer looking to make a tangible impact. If you’re ready to take on a challenging and rewarding role, apply today!

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