Business Intelligence Developer

Retinue
London
1 day ago
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Company Description

Retinue is a leading provider of specialist workforce management solutions across Health & Care, Social Housing & Built Environment. By leveraging deep sector knowledge, we significantly improve cost, control, continuity, and compliance for our clients. Our robust supply chain capabilities ensure high fill rates even in challenging markets while delivering substantial savings. We combine recruitment, procurement, and technology expertise to create mutually beneficial outcomes for our clients, nurturing sustainable relationships that often span over a decade.


Role Description

This is a full-time hybrid role for a Power BI Developer, located in the London Area, United Kingdom, with some work-from-home flexibility. The Power BI Developer will be responsible for developing and managing BI solutions, designing dashboards, creating data models, and performing data warehousing tasks. The candidate will also extract, transform, and load (ETL) data from different sources, ensuring data integrity and optimizing reporting processes using Power BI.


Technical Experience

  • 2+ years hands on experience designing, developing and maintaining dashboards in Power BI                                             
  • Strong understanding of data modelling and visualisation concepts.                                                                    
  • Expertise in SQL server & T-SQL                                                            
  • Integrating with data warehouse / data lakes                              
  • DAX                                                                                                    
  • Excel/PowerPoint                                                                                   
  • PowerQuery                                                                     
  • Azure technologies preferred                             


Required Soft Skills

  • Team collaboration
  • Proactive, ready to propose new solutions
  • Attention to detail, problem-solving skills, and analytical thinking
  • English language on good communicative level
  • Accurate communication and documentation
  • Ability to engage, influence and build relationships with a varied stakeholder group 

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