Business Intelligence Developer

Michael Page Technology
Birmingham
1 month ago
Applications closed

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Join a forward-thinking public sector organisation as a Business Intelligence Developer in Birmingham, Cardiff or Leeds. This role focuses on utilising analytics to drive data-driven decisions and enhance operational efficiency

Client Details

This public sector organisation operates within the analytics field and is committed to improving processes and decision-making through data insights. As a large organisation, it offers the opportunity to make a meaningful impact while working on diverse and impactful projects

Description

  • Develop and maintain business intelligence solutions to support organisational goals.
  • Create Power BI dashboards and reports to present data insights effectively.
  • Work closely with the Performance Analysts, lead BI Developer, CRM and SharePoint specialists to ensure that new and changed reporting requirements are properly captured prior to analysis and development.
  • Lead in the design and support of robust routines for the production and delivery of reliable, accurate, agreed Management Information from key systems (case management, telephony, finance and HR)
  • Assess requirements, design solutions, document models, and deliver ETL solutions using SSIS and Azure Data Factory.
  • Develop and modify existing ETL models to support changes to the business process or emerging business needs.
  • Collaborate with stakeholde...

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