Supply chain consulting with in-house implementation and AI capabilities
Spinnaker SCA pairs supply chain strategy consulting with hands-on implementation across planning, warehouse, and transportation systems. The tech stack reveals a services org heavily invested in specialized supply chain platforms (Blue Yonder, Kinaxis RapidResponse, SAP SCM, Manhattan Associates) rather than building proprietary software — indicating the business model is advisory and systems integration, not product. Active projects center on MRP integration, warehouse simulation, and legacy system modernization, while pain points cluster around batch processing inefficiencies and outdated planning infrastructure, suggesting their client base is managing fragmented, aging supply chain tooling.
Spinnaker SCA is a supply chain consulting and services firm headquartered in New York. The company operates across supply chain strategy, connected planning, warehouse operations, and AI-enabled data platforms, serving mid-market and enterprise companies working to modernize fragmented supply chain operations. Rather than advisory-only engagement, Spinnaker builds and implements solutions, often leveraging platforms like Kinaxis RapidResponse, Blue Yonder, and SAP SCM. The firm is owned by Publicis Sapient, which provides complementary digital and AI capabilities. Project focus areas include design blueprints, automation strategy, organizational change management, and system deployments — indicating a full-cycle modernization practice.
Spinnaker's primary platforms include Blue Yonder, Kinaxis RapidResponse, SAP SCM, and Manhattan Associates. The stack also includes Oracle, simulation tools (AnyLogic, FlexSim), and configuration languages (PL/SQL, XML) for implementation.
Active projects include Kinaxis RapidResponse MRP integration, warehouse simulation modeling, legacy supply chain system modernization, automation strategy evaluation, and facility design programs focused on scalability and right-sizing automation.
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