Lead Data Engineer: Azure Databricks & Cloud Data Pipelines

Cyber Security training courses
Nottingham
3 days ago
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A leading technology firm in Nottingham is seeking a Data Engineering Lead to mentor and lead a data engineering function in a modern hybrid environment. This role involves hands-on solution design, overseeing data pipelines, and implementing best practices. The ideal candidate will have strong experience with Databricks and Azure data services. Competitive salary up to £90,000 is offered along with a discretionary bonus and the opportunity to significantly shape the data engineering practice.
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