Coats manufactures thread, structural components, and performance materials for apparel, footwear, automotive, and protective-equipment supply chains. The tech stack—SAP, Power BI, Azure Data Factory, ServiceNow—reflects a traditional manufacturing operations foundation. Current hiring velocity is accelerating across finance, ops, and sales roles (18 placements in the last 30 days), with senior-level positions dominating, while active projects cluster around operational efficiency: PO automation, inventory optimization, manufacturing safety procedures, and platform modernization. Pain points center on compliance, cost control, and inventory management—typical scaling challenges for a global manufacturing operation.
Coats is a FTSE250 public company headquartered in London with over 17,000 employees across approximately 50 countries. Founded in 1755, the company serves apparel, footwear, automotive, telecoms, personal protection, and outdoor goods industries with specialized threads, yarns, composite materials, and software solutions. 2022 revenues reached $1.6bn. The organization operates three dedicated innovation hubs for collaborative R&D with partners, participates in the UN Global Compact, and has committed to Science Based sustainability targets with a net-zero goal by 2050. Operations span procurement, manufacturing, quality assurance, distribution, and software delivery.
Coats operates on SAP (core ERP), Power BI and Tableau (analytics), Azure Data Factory and Azure Synapse (cloud data integration), ServiceNow (IT operations), and SAP SuccessFactors (HR). This reflects heavy enterprise software investment focused on manufacturing operations and finance.
Key projects include PO automation, inventory optimization, manufacturing safety procedure development, fire protection monitoring, platform modernization, and conversion of approved customer specifications. These reflect cost-reduction and compliance priorities across a complex, multi-country manufacturing footprint.
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