Head of Data Engineering — Scale Data Platforms & Teams

Parking Network BV
Manchester
2 months ago
Applications closed

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A leading technology company in Manchester is seeking a Head of Data Engineering to shape and scale their centralized data engineering function. The successful candidate will lead a team, oversee data architecture, and ensure robust data pipelines. Candidates should have significant experience with modern data engineering practices, strong programming skills, and the ability to mentor. The role offers a dynamic work environment and various benefits. Join us in transforming airport travel with innovative data solutions.
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