Lead Data Engineer

Fruition Group
Leeds
2 weeks ago
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Job Title: Lead Data Engineer
Location: Leeds, 2x per week
Salary: Up to £80,000 per annum


Why Apply?
This is an exciting opportunity to work as a Lead Data Engineer delivering scalable, high quality data solutions for a leading client in the technology sector. This position offers professional growth, challenging projects, and access to cutting edge cloud data technologies.


Lead Data Engineer Responsibilities:

  • Design, develop, and optimise robust, scalable data pipelines and architectures to support business intelligence and analytics initiatives.
  • Manage and maintain cloud-based data platforms (AWS, Azure, or Google Cloud) including data lakes, warehouses, and lakehouse solutions.
  • Transform and process structured and unstructured data using modern ETL/ELT frameworks (Apache Spark, Airflow, dbt).
  • Collaborate closely with product managers, analysts, and software developers to ensure seamless integration and high-quality data availability.
  • Develop, maintain, and enhance reporting and analytics capabilities through tools such as PowerBI, Tableau, or QuickSight.
  • Apply best practices in data governance, data quality, and performance optimisation.
  • Operate in an agile environment, contributing to technical discussions and problem-solving initiatives.

Lead Data...

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