Pricing and Data Analyst

Barrus
Bicester
1 week ago
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As a Pricing and Data Analyst in our Parts department, you’ll play a key role in developing data-driven pricing strategies and reporting to improve profitability, competitiveness, and customer value across the marine, industrial, and outdoor sectors. You’ll collaborate with teams across Parts, Sales, IT, and Finance to analyse sales performance, supplier price lists, market trends, customer behaviour, and competitor pricing. Your insights will help ensure optimal price positioning in a fast-paced and evolving industry.


Key Accountabilities:

  • Develop and maintain pricing lists and campaigns for marine, industrial engine, and outdoor vehicle parts and accessories across B2B & Retail channels.
  • Analyse sales performance, margin trends, and customer segmentation to inform pricing decisions and assist with order forecasting and planning.
  • Monitor competitor pricing and market movements within the OEM and Aftermarket landscape.
  • Collaborate with suppliers, sales, IT, and finance to align pricing strategies with business objectives.
  • Provide recommendations for margin improvement, promotional pricing, and discount structures.
  • Support new product introductions with pricing analysis based on cost structures, sales demand, and competitive benchmarks.
  • Create and maintain management dashboards and reports using tools like Power BI, Infor, B2WISE, or Excel.
  • Ensure data accuracy and consistency across ERP and pricing systems.
  • Contribute to pricing governance and compliance processes.

Professional Qualifications & Experience Sought:

  • Experience in pricing, data analysis, or commercial strategy within the marine, industrial, outdoor, automotive, agricultural, or spare parts industry.
  • Strong analytical skills with proficiency in Excel and data visualisation tools.
  • Familiarity with parts catalogues, ERP systems, and pricing software.
  • Ability to interpret complex datasets and translate findings into actionable business strategies.
  • Excellent communication skills and a proactive, detail-oriented approach.
  • Degree or qualifications in Business, Data Science, Automotive Engineering, or a related field.
  • Experience in the OEM or Aftermarket environment.
  • Knowledge of vehicle lifecycle pricing, service plans, and warranty structures.
  • Understanding of multi-channel pricing dynamics and digital platforms.
  • Analytical thinking
  • Communication
  • Initiative
  • Problem-solving

You’ll be part of a collaborative, forward-thinking team that values innovation, quality, and customer satisfaction. We offer a supportive environment where your contributions make a real impact, and your growth is encouraged.


This role is 100% on-site.


A competitive package will be offered to the right candidate.


Please apply enclosing your full CV to: Recruitment, E.P. Barrus Ltd, Glen Way, Launton Road, Bicester, Oxfordshire, OX26 4UR or email:


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