Business Intelligence Developer

Harnham - Data & Analytics Recruitment
Manchester
1 day ago
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Power BI Developer

Up to £35,000

Hybrid - Manchester (2x days per week)

This is an exciting opportunity to join a growing data team where you will shape how stakeholders use insight every day. If you enjoy building visually engaging, commercially impactful dashboards and want the freedom to influence best practice, this role offers exactly that.

The Company

They are a specialist data function sitting at the centre of a wider digital and marketing group. Working alongside teams across analytics, technology and creative, they transform complex datasets into meaningful insight that supports smarter decision-making. With a focus on collaboration, high-quality delivery and innovation, they offer a supportive environment where data professionals can thrive. Their work spans multiple sectors and channels, giving you exposure to a wide range of analytical challenges.

The Role

You will:

* Design and develop Power BI dashboards with strong visual storytelling and user experience.

* Build clean, scalable data models using star schema principles.

* Create efficient DAX calculations to support flexible reporting.

* Shape and transform data using Power Query within Power BI.

* Maintain consistent design standards, themes and reusable components.

* Work directly with stakeholders ...

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