Hybrid Data Engineering Lead - Azure & Databricks

Cyber Security training courses
Nottingham
1 week ago
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A leading tech education provider is seeking a Data Engineering Lead in Nottingham to guide and mentor a high-performing team in a hybrid working environment. Responsible for shaping data solutions using Databricks and Azure, you will drive best practices while collaborating across teams. The ideal candidate will balance strategic vision with hands-on delivery, offering a competitive salary up to £90,000 and various benefits including a discretionary bonus. Join us to influence and scale the data engineering practice.
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