Power BI Data Analyst

VIQU IT Recruitment
Birmingham
1 day ago
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Power BI Data Analyst (12-month FTC)

Location: Remote (UK-based)
Salary: £40,000 – £45,000
Sponsorship: No sponsorship available

VIQU have partnered with a large, values-driven organisation operating at national scale within the education sector. Supporting a wide and diverse network of institutions, they are on a multi-year journey to modernise how data underpins teaching, leadership, and strategic decision-making.

The organisation is investing heavily in its data and analytics capability, moving away from manual, fragmented reporting towards a modern, automated insight platform. With a clear focus on innovation, efficiency, and real-world impact, data is viewed as a strategic asset rather than a back-office function.

The Role

This is a 12-month fixed-term contract covering maternity leave, suited to an experienced Power BI Analyst who enjoys autonomy, stakeholder engagement, and owning reporting solutions end-to-end.

You'll play a key role in delivering trusted reporting to senior leaders a...

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