Data Analyst – Motorsport

Silverstone
9 months ago
Applications closed

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Data Analyst – Motorsport

Silverstone | Up to £65,000 + Benefits DOE We're working with a high-profile motorsport team based in Silverstone who are looking for a Data Analyst to join their growing IT function. This role will support departments outside the FIA Financial Regulations, including Finance, HR, Commercial and Sustainability — so it’s your chance to make an impact behind the scenes of a top-tier racing operation.

This is an onsite, full-time role at their Silverstone HQ, with occasional travel.

Job Duties 
Build and manage Power BI dashboards and reports that deliver real insight

Work with stakeholders to understand data requirements and business goals

Design and maintain data models, pipelines and integrations

Handle data mapping, governance, and security

Take ownership of a BI Centre of Excellence – set best practices and support Power BI adoption across the business

Automate data flows and manage APIs

Support key functions by ensuring data reliability and availability

What They’re Looking For
Expert-level Power BI skills – storytelling, modelling (DAX), and visuals

Strong experience with SQL/TSQL and Azure tools – Data Factory, Synapse, Databricks, Data Lake, Delta Lake

Knowledge of Microsoft Fabric and Azure DevOps

Scripting in Python or C# a bonus (especially for advanced analytics)

Understanding of data governance (e.g. Purview)

Strong communicator – able to simplify the complex and influence non-technical stakeholders

Self-starter with a proactive, can-do attitude

Apply now or drop us a message for a confidential chat. We’ll walk you through the full spec and tell you why this is a cracking opportunity with a genuinely exciting team

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