SCM Data Analyst | Hybrid, Data Integrity & ERP Setup

Brakes UK
Ashford
1 month ago
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A leading supply chain firm in Ashford is currently seeking an experienced SCM Data Analyst to join their team on a full-time permanent basis. In this role, you will manage and maintain essential data within supply chain operations, ensuring accuracy and efficiency across ERP systems. Your responsibilities will include performing data checks, configuring new product setups, and leading the development of long-term solutions. The position offers a hybrid working model, requiring attendance in the Kent office for 1-2 days a week, especially during onboarding.
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