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Data Engineering Lead

Luton
2 days ago
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Data Engineering Lead - Hybrid - Azure/Databricks - London
Permanent
Salary: £90,000

Are you a seasoned Data Engineering professional ready to lead the charge in building scalable, high-performance data platforms? An industry leading, global firm is seeking a Data Engineering Lead to drive innovation across their hybrid Azure/Databricks environment.

About the role:

Shape data strategy for global projects
Lead a talented team of BI Developers
Enjoy a flexible working culture and industry-leading benefits
Work with cutting-edge tech in a collaborative, inclusive environmentKey Responsibilities:

Architect and optimize robust data pipelines for large-scale ingestion, transformation, and delivery
Leverage Azure and Databricks to enable seamless data integration and enrichment
Implement best practices for orchestration, monitoring, and error handling
Lead and mentor a BI team, ensuring timely delivery of dashboards and data products
Champion data governance, quality, and security across platformsRequirements:

Proven expertise in Azure, SQL, Databricks, and Azure Data Factory
Experience implementing medallion architecture frameworks
Strong leadership and stakeholder engagement skills
Hands-on Power BI and DAX experience

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