Azure Data Engineer (Databricks)

Newcastle upon Tyne
2 months ago
Applications closed

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Azure Data Engineer (Databricks) - Must be SC Cleared

(Outside IR35)
Contract: 6 months
Location: Newcastle Upon Tyne (2-3 days onsite per week)
Expenses: Not reimbursable
Domain: Public Sector
Clearance: SC Clearance is mandatory

Role Overview:

We are seeking an experienced Azure Data Engineer with strong expertise in Databricks to join a public sector project. The successful candidate will work on designing, building, and optimizing data pipelines and solutions within the Azure ecosystem.

Key Responsibilities:

Develop and maintain scalable data pipelines using Azure Databricks.
Implement data solutions aligned with business requirements and compliance standards.
Collaborate with cross-functional teams to ensure data integrity and security.
Optimize data workflows for performance and cost efficiency.

Essential Skills & Experience:

Proven experience as a Data Engineer in Azure environments.
Strong hands-on expertise with Databricks and Spark.
Knowledge of Azure Data Lake, Azure Synapse, and related services.
Experience in Public Sector projects.
SC Clearance (must be active).

Must be SC Cleared
Candidates ideally based in or around Newcastle
No expenses will be covered by the client.If you meet the requirements please send me your CV

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