Data Analyst Apprentice

QA
Southampton
3 days ago
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About Specialist Sports:

We are a leading performance sports distribution and brand marketing agency with over 30 years’ experience. We provide expert capabilities from brand marketing and sales strategy to product creation, distribution and logistics.

About the role:

The Data Analyst Apprentice will play a key role in supporting Specialist Sports’ mission to make data-driven decisions across every department. Working within the Business Intelligence team, this role will focus on creating clear, insightful reports and dashboards that drive commercial understanding, influence decision making and operational efficiency across the business.

This is an entry-level position offering structured development, mentorship, and support to achieve a degree-level qualification through an accredited apprenticeship programme.

Responsibilities:

  • Develop and maintain Power BI dashboards and reports for Sales, Marketing, Finance and Operations teams.
  • Support the development of data models and datasets using Microsoft Fabric, Power BI and Business Central.
  • Produce commercial analysis and insights leveraging datasets, analytic tools and AI to inform business decisions.
  • Lead and deliver reporting projects from day one, with scope to take ownership of larger analytical projects as experience grows.
  • Work closely with stakeholders across the...

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