Data Analyst – Automotive Industry

Glen Callum Associates
Luton
4 days ago
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Data Analyst – Automotive Industry

Do you love working with data and want to help shape real business decisions?


Join a dynamic, well-established automotive parts supplier and play a key role in marketing, pricing, and product data analysis across the UK and French markets.


This is a fantastic opportunity for someone with experience in data analysis, pricing, product, or marketing analytics, especially if you’re looking to deepen your expertise in a commercial environment.


What’s in It for You

  • Salary – competitive
  • Enhanced pension, healthcare, and life assurance
  • 25 days holiday + bank holidays
  • Excellent training and development support
  • Hybrid working after probation (3 days office / 2 days home)

Location

Office-based in Hemel Hempstead (Mon–Fri). Easily commutable from:


St Albans, Berkhamsted, Harpenden, Luton, Watford, Dunstable, Leighton Buzzard, WGC, Amersham, Borehamwood, Wembley, Harrow, and surrounding areas.


What You’ll Be Doing

  • Support pricing and market insights for both the UK & France: benchmark competitors, track new-to-range products, maintain and improve reporting tools
  • Collaborate with pricing and data teams on customer pricing and rebates
  • Analyse marketing campaigns, loyalty programmes, and social media data
  • Monitor industry trends, competitor activities, and customer feedback
  • Present key insights to senior leadership and commercial teams

What We’re Looking For

  • Proven experience handling and analysing product or pricing data
  • Skilled in Microsoft Office & Google Workspace (Excel / Sheets essential)
  • Familiarity with Tableau, Google BI, or other BI tools (training available)
  • Able to create clear, insightful reports and dashboards
  • Automotive industry knowledge a bonus, but not essential
  • Strong attention to detail, communication, and problem‑solving skills
  • Comfortable engaging with senior stakeholders and adapting in a fast‑paced team

Ready to Apply?

Send your CV to Kayleigh Bradley, Senior Recruiter at Glen Callum Associates, at , or give Kayleigh a call at for more information.


Job Reference : Data Analyst – Automotive 4269KB


Take the next step in your career—apply today!


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