Senior Data Engineer // Remote (UK)

Akkodis
Bexleyheath
3 months ago
Applications closed

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Senior Data Engineer (UK-Based, Remote)

I'm looking for an experienced Senior Data Engineer to help shape the next generation of my client's data platform - leveraging Microsoft Fabric and the latest Azure technologies to drive innovation, insight, and business value.

This role is remote-based (UK only), with occasional travel to client offices or sites as required. Please do also note that this is a permanent role.

About the Role

As a Senior Data Engineer, you'll design and deliver scalable, reliable, and secure data solutions that power analytics, reporting, and strategic decision-making across the business.

You'll work closely with analysts, developers, and stakeholders to build a trusted data foundation - enabling smarter insights and self-service analytics.

Beyond hands-on engineering, you'll also act as a mentor and technical leader, helping evolve data engineering standards, championing best practices, and fostering a culture of innovation and continuous improvement.

Key Responsibilities

Design, build, and maintain robust data pipelines and integrations across a modern Azure data stack.
Develop and optimise relational and dimensional data models to support reporting and analytics.
Leverage Microsoft Fabric, Azure Synapse, Databricks, and Data Lake (Gen2) for processing, transformation, and storage.
Implement and maintain CI/CD pipelines for high-quality, reusable, and testable code.
Support data...

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