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Data Analyst

Vertical Advantage
Hayes
1 day ago
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We’re working with a fast-growing FMCG business that’s carving out a strong position in the healthy snacking space. Known for their high-quality, natural products, they’re expanding rapidly in the UK and have ambitious plans to take their brand global. It’s an exciting time to join a company that values data-driven thinking and encourages collaboration across all areas of the business.

The Role


As a Data Analyst, you’ll play a key role in turning complex information into clear, actionable insights. Working closely with teams across category, supply chain, and finance, you’ll help shape decisions that drive commercial growth and operational efficiency.

This is a hands-on role where curiosity, accuracy, and strong technical skills come together - perfect for someone who loves finding patterns in data and making sense of the bigger picture.


Responsibilities:

  • Analyse and interpret data from multiple sources to support category, supply chain and financial decisions
  • Develop and maintain dashboards and reports to track business performance
  • Identify trends, risks, and opportunities, providing recommendations to key stakeholders
  • Work closely with internal teams to improve data processes and visibility
  • Ensure data accuracy and consistency across business systems
  • Support the wider team with ad-hoc analysis and insight requests


Requirements:

  • Strong analytical mindset with excellent attention to detail
  • Highly proficient in Excel and confident using Python and SQL
  • Comfortable managing and manipulating large datasets
  • Strong communication skills – able to translate data into meaningful insights for non-technical teams
  • Naturally curious, proactive, and collaborative
  • Experience in FMCG, retail or a similar fast-paced industry would be an advantage

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