Manhattan Active's architecture is built for extensibility, with AI integration points primarily at its RESTful APIs, event-driven message bus, and mobile task execution layer. Key surfaces for AI injection include:
- Task Management APIs: To inject AI-optimized directives (e.g., dynamic pick paths, interleaved tasks) directly into the mobile RF workflow for associates.
- Warehouse Management Events: To subscribe to real-time events (e.g.,
TaskCompleted,InventoryUpdated,ExceptionRaised) and trigger AI-driven resolution workflows or predictive analytics. - Data Services & Extensions: To augment core logic—like slotting rules, wave planning, or labor standards—by calling external AI models via custom extensions deployed within Manhattan's cloud platform.




