Business Intelligence Analyst

Michael Page Technology
Walsall
3 days ago
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You will be responsible for delivering high quality business intelligence through hands-on technical analysis, using SQL and Power BI to transform data into trusted actionable insight. You will act as a strategic data partner to a defined area of the business, working closely with senior stakeholders to understand priorities, influence decision-making, and translate complex data into clear, compelling insights

Client Details

This organisation operates in the Not For Profit sector and is a medium-sized enterprise based in Walsall. They are focused on delivering services that benefit the community and utilise analytics to drive their mission forward.

Description

Key Responsibilities:

  • Deliver end-to-end analysis, from requirements gathering through to SQL based data extraction, modelling and insight delivery.
  • Design, develop and maintain Power BI dashboards and reports using DAX and Power Query, ensuring solutions are accurate, performant and aligned to agreed definitions.
  • Oversee and continuously improve existing reports, streamlining where possible and ensuring data integrity.
  • Develop and maintain reusable datasets, data models and metrics that support consistent reporting across teams.
  • Provide timely, high-quality responses to ad-hoc reporting and insight requests.
  • Support regulatory and external data submissions.
  • Data Quali...

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