Head of Business Intelligence & Reporting

MLC Partners
London
4 days ago
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MLC Partners are working with prestigious London based College to support them with the recruitment of a newly created Head of Business Intelligence & Reporting role. This role would be for someone who likes the prospect of working in a greenfield environment and working with Executive teams to ensure the Data strategy links in to the wider organisational and Digtal Strategy.

If you're a self sufficient, driven individual with strong previous exposure to the Higher Education sector... please read on!

Job Purpose

Lead the development and delivery of business intelligence solutions to support evidence-based decision-making across the College. This pivotal role shapes the institution’s data strategy, drives continuous improvement, and fosters a culture of data literacy and collaboration. The postholder will champion best practice, engage key stakeholders, and ensure the service continually evolves to meet institutional needs.

Key Areas:

* Develop and maintain dashboards to report and monitor the College's KPIs

* Manage the delivery and prioritisation of strategic data projects for the College

* Lead on the development of dashboards and semantic data models in Power BI

* Be responsible for an annual cycle of updates to existing reports

* Be highly proficient in external Higher Education data and relevant internal student record systems

* Support decision making through intuitive data visualisation ...

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