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Data Analyst – Automotive Industry

Glen Callum Associates
Northamptonshire
1 month ago
Applications closed

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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 competitorsTrack new-to-range productsMaintain 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

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