Senior Data Engineer - Azure | Permanent | Hybrid

Havant
3 months ago
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Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer - Azure | Permanent | Hybrid

Are you a data enthusiast with a passion for building scalable, high-performing solutions? We're looking for a Senior Data Engineer to join a forward-thinking organisation that's committed to innovation, sustainability, and creating an inclusive workplace.

This is your chance to work on cutting-edge Azure cloud architecture, optimise data pipelines, and mentor a talented team-all while enjoying a culture that values flexibility, growth, and collaboration.

What's in it for you?

Competitive salary + excellent benefits
Hybrid working (office in Hampshire)
25 days holiday + bank holidays
Discounts, wellbeing perks, and learning opportunities
A company recognised as one of the UK's best places to work

What you'll be doing

Designing and optimising Azure-based data models and pipelines
Leading ETL processes and integrating new data sources
Enhancing SSAS architecture and supporting Power BI reporting
Collaborating with stakeholders to deliver actionable insights
Mentoring junior engineers and driving best practices

What we're looking for

Strong experience with Azure Data Factory, LogicApps, SSAS
Advanced T-SQL and Python skills
Knowledge of BI tools (Power BI) and data modelling
Ability to troubleshoot, innovate, and communicate technical concepts clearly

If you're ready to take ownership of data architecture and make a real impact, apply today

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