Business Intelligence Developer

mthree
Stanwell
3 days ago
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The Opportunity

We’re looking for a Power BI Developer to join a data and analytics team responsible for delivering modern reporting and dashboard solutions across a large technology environment.


This role focuses on building high-quality Power BI dashboards, automated reporting solutions, and data visualisations that help business teams make better decisions. You’ll work closely with stakeholders to transform complex datasets into clear, reliable insights.


You’ll also play a key role in maintaining and optimising the Power BI platform, ensuring reporting solutions remain scalable, secure, and performant.


What You’ll Do

  • Design, develop, and maintain Power BI dashboards and automated reporting solutions
  • Create dynamic visualisations and data models to support business decision-making
  • Manage and maintain data connections and integrations to ensure accurate and reliable reporting
  • Perform data validation and quality checks to guarantee consistency across reports
  • Optimise Power BI refresh schedules and resource usage to maintain performance and system stability
  • Support Power BI platform governance, including workspace security and capacity monitoring
  • Collaborate with business stakeholders and technical teams to refine reporting requirements
  • Continuously improve reporting solutions and contribute to best practices within the data platform

Key Technical Requirements

  • Strong experience with Microsoft Power BI
  • Experience working with Power Query and DAX
  • Experience building interactive dashboards and data visualisations
  • Understanding of data modelling and reporting best practices
  • Experience working with Power BI Service and managing workspaces or environments
  • Experience working in collaborative Agile teams
  • Strong communication skills and ability to work with distributed teams and stakeholders

Nice to Have

  • Knowledge of Microsoft Fabric
  • Experience with Azure data platforms or cloud services
  • Background in data analysis, data mining, or database design
  • Microsoft certification such as Power BI Data Analyst Associate (PL-300)

About mthree

mthree partners with leading financial services and technology firms to deliver high-quality, job-ready technology talent.


We provide:

  • Targeted training aligned to client environments
  • Long-term consulting roles at top-tier organisations
  • Ongoing career support, mentoring, and progression

At mthree, consultants gain real project experience, continuous development, and a clear pathway for long-term career growth.


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