Data Analyst

Macildowie Recruitment and Retention
Coventry
3 months ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Location: Coventry (4 days per week on-site)Salary: Up to £50,000Recruiting on behalf of our client

I'm supporting a market-leading client in Coventry who is looking to hire a talented Data Analyst to join their growing Pricing function. This role is ideal for someone with strong analytical capability, a solid mathematical mindset, and the technical skills to turn complex data into meaningful commercial insight. The successful candidate will be embedded within a pricing team focused on improving pricing strategy, margin performance, and overall commercial decision-making.

Key Responsibilities

  • Work closely with the Pricing Manager and wider commercial teams to deliver insight across pricing, margin, and product performance.

  • Use advanced SQL to extract, manipulate, and optimise large datasets for analysis and reporting.

  • Apply Python to build models, automate processes, and support deeper statistical or predictive analytics.

  • Perform scenario modelling, price elasticity analysis, and profitability assessments to help shape pricing strategies.

  • Support continuous improvement across pricing workflows through data automation and enhanced analytical processes.

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