Data Engineer

Robert Walters
Leicester
3 months ago
Applications closed

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Data Engineer

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Data Engineer Leicester (remote) £65,000 to £75,000 Permanent

I am currently looking for a Data Engineer to join a forward-thinking organisation, where you will play a pivotal role in building a modern, enterprise-scale data platform.

Data Engineer - What will you be doing?

* Designing and implementing modern data architectures including lakehouse and medallion models using Azure and Databricks.* Developing, maintaining, and optimising data pipelines, quality validation tools, and lineage tracking systems to guarantee high-quality data outputs.* Manage MS SQL and Azure SQL databases efficiently while ensuring optimal performance across all environments.* Utilising Azure Data Factory, Python, and other tools to build efficient ETL processes.* Delivering clean, insightful data outputs through Power BI dashboards and reports.* Ensuring strong governance, data integrity, and security across all platforms.* Collaborate closely with cross-functional teams, delivering projects on time and within scope.

Data Engineer - What will you need?

* Experience data engineering within enterprise environments.* Power BI experience.* Deep understanding of SQL.* Experience with Azure and Databricks.* Proficient Python programming skills.* Demonstrated ability to design lakehouse architectures.* Experience implementing CI/CD pipeline management for reliable solution delivery.

Robert Walters ar...

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