Data Engineer

Adecco
London
8 months ago
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Job Role: Data Engineer - Join Our Fintech Revolution!

Location: London, UK

Job Type: Full-time, in-office

Reports To: Chief Technology Officer

Salary: Competitive

About Us

We are an innovative fintech organisation committed to reshaping the future of homeownership by providing cutting-edge mortgage and insurance products. Our mission is to empower underserved borrower segments in the UK mortgage market. We pride ourselves on fostering a culture of excellence, collaboration, and support, enabling our team members to thrive!

Job Purpose

Are you a data enthusiast ready to take on an exciting challenge? As a Data Engineer, you will design, build, and operate our internal data platform, ensuring data from third-party systems is accurate, structured, and ready for insightful analysis. You will play a crucial role in managing data pipelines and ensuring high-quality data flows that meet our business needs.

Key Responsibilities

Data Platform & Engineering

Build and maintain data ingestion pipelines using Azure Data Lake (ADLS Gen2) and Microsoft Fabric.

Seamlessly integrate third-party platforms and implement data transformations.

Develop datasets for Power BI and support management information reporting.

Contribute to data architecture discussions, aligning with best practises.

Data Quality & Governa...

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