CRM Executive — Elevate Data Integrity & Customer Experience

Group 1 Automotive
Milton Keynes
3 weeks ago
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A leading automotive retailer in Milton Keynes is seeking a CRM Executive to support customer relationship managers by ensuring robust lead management and data accuracy across divisions. The role involves creating reports, managing data updates, and assisting in training needs. Ideal candidates are highly organized team players with strong communication skills and are enthusiastic about delivering great experiences. This position offers competitive salary and a range of employee benefits.
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