Senior Data Engineering & DataOps Leader – Azure

Heathrow Airport
Hounslow
5 days ago
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A leading international airport in the UK seeks a Senior Data Engineering Leader to shape and deliver the engineering vision for data products and platforms. You will build and manage a high-performing team, drive DataOps maturity, and ensure a reliable and scalable data ecosystem. This role demands proven leadership in enterprise environments and requires expertise in Microsoft Azure and Databricks, as well as strong stakeholder management experience. Join us to create impactful solutions that enhance airport operations and the passenger experience.
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