Data Engineer

London
1 week ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer - Databricks / Fabric - Azure - Hybrid - London - £50k-£65k

Are you ready to take your Data Engineering career to the next level? Join one of the UK's fastest-growing consultancies and work on cutting-edge Azure projects, next-gen lakehouse architectures, and enterprise-scale transformation programmes that truly make an impact.

This is more than just a job, it's a chance to own meaningful projects, accelerate your growth, and become part of a team that's shaping the future of data engineering.

Why This Role Stands Out

Modern Tech Stack: Work hands-on with Azure Synapse, Databricks, and Microsoft Fabric on innovative solutions.
Enterprise Impact: Deliver scalable, high-performance data platforms for major organisations across diverse industries.
Career Acceleration: Structured training, funded certifications, and clear progression paths, your growth is a priority.
Flexibility: London office

What You'll Do

Design and deliver modern data solutions using Databricks, Synapse, and Fabric.
Build and optimise ETL/ELT pipelines and data models with SQL & Python.
Develop Power BI dashboards that drive insight-led decisions.
Implement data lakes and medallion lakehouse architectures.
Champion data quality, governance, and security standards.
Collaborate in Agile, cross-functional teams on major cloud migration and modernisation projects.

Looking For

Strong experience with Azure Synapse, Databricks, or Microsoft Fabric.
Solid SQL & Python skills for ETL/ELT development.
Hands-on experience with data lakes and large datasets.
Good understanding of BI, data warehousing, and modern data architectures.

Why You'll Love It Here

High-Growth Environment: Be part of a consultancy that's scaling fast and leading the Microsoft data space.
Real Impact: Your work will shape enterprise-grade solutions and transformation programmes.
Continuous Learning: Certifications, training, and mentorship to keep you ahead of the curve.

Ready to make your mark?
Roles like this don't stay open for long, apply now and take the next big step in your career

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