PIM Data Analyst

Orpington
1 month ago
Applications closed

PMI Data Analyst

Our client, one of the UK’s leading retail businesses demonstrating consistent, profitable growth and an on-going planned expansion are seeking a PMI Data Analyst to lead the implementation of a new PMI system and subsequently manage the day to day running of the system to ensure that the buying team are able to fully optimise system usage.

  • Import product details from current formats into the new system.

  • Utilise the system to identify discrepancies, errors, or contradictions in product data & documents.

  • Use the system to inform suppliers and internal teams with details of product.

  • Maintain data consistency for regulatory purposes.

  • Support the setup and onboarding of new product lines, ensuring consistent data quality.

  • Act as the first line of support for issues with product data.

  • Assist the PIM system admin with user access requests, attribute creation, validation list additions, and other system administration tasks with a focus on data quality.

  • Support project work with product data reporting and insights into best practices.

  • Respond to high-priority incidents quickly to prevent downtime.

    PMI Data Analyst – requirements :-

  • Substantial background in working with product data.

  • Keen eye for detail with the ability to spot incorrect data.

  • Experience using a PIM system.

  • Advanced excel knowledge and experienced Microsoft office user.

  • Ability to work independently, mange own workload, and contribute to the broader team.

  • Strong communication skills and relationship-building across various teams and stakeholders at all levels.

  • Candidates with good knowledge of Pimberly are of particular interest but this is not essential.

  • PMI Data Analyst Salary

    £40,000 – £45,000 plus excellent benefits package

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