Business Intelligence Developer

Jackson Hogg
Sunderland
3 days ago
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Are you a motivated Business Intelligence Developer? This is an exciting opportunity to join an agile BI team and help transform reporting and analytics across the organisation.

In this role, you’ll design and build governed, high-performance reporting models using Azure Databricks and Azure SQL. Your work will underpin certified Tableau data sources and executive reporting across Finance, Compliance, Operations, and Senior Leadership.

This is more than dashboard development — it’s an opportunity to shape the BI platform, embed governance, and mature an evolving reporting landscape.

What You’ll Do

  • Design and develop scalable data transformations in Azure Databricks using Python and Spark
  • Build and maintain star-schema models aligned to business KPI definitions
  • Collaborate with Data Engineering to improve data quality and reliability
  • Support and enhance Tableau dashboards and certified data sources
  • Centralise KPI logic and improve reporting consistency and governance
  • Optimise performance, refresh reliability, and row-level security
  • Contribute to sprint-based delivery (Jira-managed backlog) and shared BI Duty ownership

What We’re Looking For

  • 3+ years’ experience in BI, analytics engineering, or data-focused roles
  • Strong SQL skills (complex queries, optimisation, data validation)
  • Hands-on experience with Python and Spark, ideally in Az...

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