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Data Analyst

Harnham
Gillingham
5 days ago
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Data Analyst

Salary: £32,000–£38,000 (max. £40,000 for excellent candidates)

Location: Gillingham

Working Model: 3 days onsite, 2 days WFH


About the Company/Role

A fast-growing retail business that has doubled its sites in the past year is looking for a Data Analyst to help embed data-driven decision making across the organisation. This is a greenfield role where you’ll shape reporting, insights, and analytics foundations to support continued expansion.


ROLE AND RESPONSIBILITIES

  • Build and maintain Power BI dashboards with advanced DAX calculations
  • Analyse large data sets to drive business insights and operational decisions
  • Collaborate with key stakeholders to understand and translate data needs
  • Interrogate data using SQL and Excel to support reporting requirements
  • Contribute to the setup and improvement of the data warehouse environment


SKILLS AND EXPERIENCE

Required:

  • 2+ years of advanced Power BI and DAX experience
  • Strong SQL and Excel skills
  • Confident communicator – able to engage with non-technical stakeholders
  • Hands-on analytical mindset with ability to work independently


Nice to have:

  • Experience in retail, automotive, or manufacturing
  • Exposure to Python or cloud databases (e.g. Snowflake)


Apply below!

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