Junior Data Analyst

Vehicle Data Global Ltd
Chesterfield
5 days ago
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Junior Data Analyst | Chesterfield | Starting at £26,000

Are you passionate about data and fascinated by cars and road vehicles? Ready to take the next step in your analytics career? We’re looking for a detail-driven Junior Data Analyst to join our growing team at Vehicle Data Global Ltd in Chesterfield!

Why Join Us?

At Vehicle Data Global, we power the UK’s vehicle data industry. From cutting-edge VRM Lookup services to full vehicle history checks through our VDI Check platform, we deliver fast, reliable, and accurate vehicle data to businesses and consumers alike.

Now, we’re on the lookout for a data-savvy team player who’s eager to grow with a forward-thinking company where accuracy, innovation, and curiosity are valued every day.

Key Responsibilities of the Junior Data Analyst:

This is a hands-on role where your day might include:

  • Conducting vehicle data research and analysis
  • Cleaning, processing, and maintaining large datasets
  • 1 Line Support (telephone, chat and email)
  • Using tools like Excel, Google Sheets, and our internal Intranet/interface to extract and visualise key insights
  • Data matching and linking data from different data sources
  • Supporting senior analysts with advanced data projects
  • Presenting f...

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