Azure Data Engineer

Tenth Revolution Group
Newcastle upon Tyne
3 days ago
Applications closed

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Role: Senior Data engineerLocation - Newcastle upon Tyne/Hybrid (2-3 days per week in office)Contract - 6 monthsDaily rate - £450 (outside IR35)Active SC clearance is a must have

Key Responsibilities

Design, build, and optimise data pipelines and solutions on the Azure platform.Implement best practices for data architecture, security, and performance.Collaborate with stakeholders to deliver robust and scalable data solutions.Troubleshoot and resolve complex data engineering challenges.

Required Skills & Experience

Proven experience as a Senior Data Engineer with strong Azure expertise.Strong hands-on experience with Databricks.Proficiency in Python, SQL, and data modelling.Strong understanding of ETL processes, data warehousing, and cloud architecture.Excellent problem-solving skills and ability to work independently

Visa sponsorship is not available for this role.

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