Data Analyst

FOOTBALL ASSOCIATION
London
2 days ago
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The FA's Grassroots division is looking for a Data Analyst with a collaborative mindset and the ability to communicate complex concepts to a variety of audiences. You will play a critical role in transforming Grassroots Football's data into actionable insights and easy‑to‑use self‑serve tools that empower internal teams and County FAs to make evidence‑based decisions.

What will you be doing?

  • Develop and maintain self‑serve dashboards and reporting tools that allow colleagues and the County FA network to independently explore and interpret data
  • Proactively identify emerging insights, trends, and opportunities across Grassroots Football data and translate them into recommendations that support strategic decisions
  • Support the integration of relevant external data sources including ONS, health, demographic, and local authority datasets to enrich place-based insight, strengthen forecasting, and inform opportunities across Grassroots Football
  • Create repeatable frameworks and templates - like place-based insight packs - that help the wider identify, act on, and monitor participation trends and opportunities across Grassroots Football
  • Lead the insight-generation process for Grassroots Strategy KPIs, ensuring that data is not only reported but clearly interpreted and communicated, and used to drive future-state planning
  • Collaborate with the Digital ...

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