Stores Person

Stamford
10 months ago
Applications closed

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Storeman

Are you an experienced Storeman with a keen eye for detail and a strong understanding of Bill of Materials (BOM) processes? Join our dynamic team and play a pivotal role in maintaining efficient operations!

Key Responsibilities:

  • Manage and maintain inventory levels, ensuring accuracy and efficiency.

  • Process, review, and interpret Bill of Materials (BOM) for stock allocation and replenishment.

  • Organize and oversee the receiving, storage, and dispatch of materials.

  • Maintain accurate records of stock movements using [insert relevant software/system].

  • Conduct regular stock counts and audits to ensure data integrity.

  • Collaborate with procurement, production, and other departments to meet operational needs.

  • Adhere to health and safety standards in the warehouse.

    Requirements:

  • Proven experience as a Storeman or in a similar inventory management role.

  • Strong knowledge of Bill of Materials (BOM) processes and inventory systems.

  • Proficiency in using inventory management software (e.g., SAP, Oracle, or similar).

  • Excellent organizational and time-management skills.

  • Attention to detail and accuracy in handling stock records.

  • Forklift license (desirable but not essential).

  • Strong communication and teamwork skills.

    For more Info please Click Apply Today

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