Business Intelligence Developer

Artington
1 day ago
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Business Intelligence Developer
Guildford / Hybrid
£700 per day (Umbrella)
A Police Service is seeking an experienced Business Intelligence Developer to support the development of advanced data and automation solutions. This role focuses on transforming and modelling complex data, building automation through Robotic Process Automation (RPA), and delivering reliable data assets that enable data-driven decision making across the organisation.
You will design and implement scalable data solutions using platforms such as Microsoft Fabric, Blue Prism, MuleSoft, Power Automate and Power BI, helping streamline processes, improve data quality and unlock insight from organisational data. The role also includes line management of junior developers and collaboration with technical and non-technical stakeholders across multiple teams.
Key Responsibilities

  • Develop and implement Robotic Process Automations using Blue Prism to streamline repetitive business processes.
  • Transform, test and document data to create clean, reliable data models for analytics and reporting.
  • Design and maintain Lakehouses, data warehouses and semantic models within Microsoft Fabric.
  • Build data pipelines and automation workflows using Power Automate, Power Apps and integration tools such as MuleSoft.
  • Enable developers and analysts to produce dashboards and insights through Power BI and other visualisation tools.
  • Work closely with stakeholders to gather requirements and deliver data solutions that support operational decision making.
  • Ensure strong data governance, documentation and testing standards, including UAT processes.
  • Mentor and provide guidance to junior developers.
    Experience Required
  • Must have experience using Blue Prism
  • Strong experience developing Power BI / Microsoft Analytics solutions.
  • Proven background in data modelling, semantic models, Lakehouses and data warehouses.
  • Experience working with Microsoft Fabric or cloud-based data platforms.
  • Knowledge of SQL, DAX, MDX and data visualisation tools.
  • Experience developing Robotic Process Automation using Blue Prism.
  • Ability to work with multiple data sources and manage data pipelines.
  • Strong stakeholder engagement and requirements gathering skills.
    Additional Information
  • Hybrid working in Surrey
  • £700 per day (Umbrella)
  • Police Vetting will be required

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