Trials Data Analyst: Insightful Retail Analytics

Boots UK
Nottingham
4 days ago
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A leading pharmacy-led retailer in the UK is seeking a data analyst to join their Space, Range and Location Analytics team in Nottingham. The ideal candidate will translate complex analytics into actionable insights, utilizing skills in SQL, Python, and statistics. This role offers opportunities to drive business solutions and will require both independent and collaborative work. Rewarding benefits include pension membership, annual bonuses, and employee discounts. This position encourages career growth and welcomes diverse backgrounds.
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