Consumer Data Manager

Melton Mowbray
9 months ago
Applications closed

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Shape the future of data in our EU Food business with real impact across markets. Join us to lead consumer data and reporting across 14 European markets. This role combines data strategy, supplier management, and advanced data analysis-owning tools like our Data Lake and internal reporting platform (SPRINT).

Role: EU Consumer Data & Reporting Manager
Location: Remote
Contract: 6 months
Start Date: ASAP

Must-have experience:

Nielsen or Circana or EPOS or Kantar or GfK
Data Lakes & reporting systems
Advanced data analyst skills (data cleaning, modeling, visualization)
SQL/Excel proficiency, strong analytical thinking
Data contract & supplier managementIf you're ready to take your skills to the next level and make a difference in a dynamic environment, we want to hear from you! Apply now or send your CV to sharmistha. ghosal @ randstad .co .uk

Randstad Technologies is acting as an Employment Business in relation to this vacancy

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