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Senior Data Engineer (GenAI) - Leading Tech Company!

Robert Half Careers
City of London
2 weeks ago
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Senior Data Engineer (GenAI) - Leading Tech Company | London (Hybrid)

Hybrid: 1 day in the office / 4 days WFH

Permanent role only

Represented by Robert Half Limited

Please note: No visa sponsorship on offer, No B2B,B2C, Fully remote workers or contractors on offer.

The Opportunity

We're looking for a Senior Data Engineer with hands-on GenAI experience to join a forward-thinking technology business that's building data-driven solutions with real-world impact.

This is a highly visible, senior-level role where you'll take ownership of data pipelines, architecture, and GenAI operational frameworks - helping shape the next generation of AI-driven products and analytics.

If you enjoy combining engineering rigor with AI innovation, this role gives you the platform, freedom, and backing to make it happen.

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