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Data Engineer

Venn Group
Lancashire
1 week ago
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We’re working with a well-known public sector organisation in Lancashire who are looking to appoint a Data Engineer on a permanent basis. This role sits within a growing Information & BI function and offers the chance to make a real impact across their data landscape.


The role will involve:



  • Supporting the BI reporting team by creating and maintaining data solutions for KPI reporting.
  • Developing scalable, performance-optimised ELT/ETL pipelines using T-SQL, Python, ADO, C#, PySpark and Jupyter Notebooks.
  • Working with the Gazetteer and GIS teams to maintain stable, consolidated database platforms for mapping and GIS systems.
  • Contributing to the development and maintenance of a Data Warehouse and organisation-wide BI reporting environment.
  • Implementing and managing data flows with tools such as Azure Data Factory and SSIS.
  • Working closely with the Business Systems Manager to automate data quality assessments and produce data quality metrics.
  • Helping shape best practice through improved development standards, documentation and continuous improvement.
  • Thoroughly testing data engineering solutions (unit, integration and UAT).
  • Any experience with Microsoft Fabric would be extremely advantageous


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