Inventory agents continuously rebalance stock across the network,
recommending orders and transfers that keep service high with less capital.
inventory
Optimization
AI agents that continuously monitor demand, lead times, supplier performance, and on-hand/ pipeline stock across all locations.
Multi-echelon Optimization
AI agents to optimize recommended dynamic safety stocks, reorder points, and ideal stocking policies by SKU-location.
Automated
Purchase Orders
Let agents propose purchase orders and stock transfers within guardrails, with planners focusing on exceptions and overrides.
Working
Capital
Embed working-capital targets so agents explicitly trade off service levels versus capital tied up in inventory.
Agentic AI layer that unifies data across existing systems, continuously optimizes decisions, and shifts planners to an exception-driven, human-in-the-loop model that delivers compounding business impact over time.
Integrated network view of inventory and working capital
Build a single, AI-ready view of demand, lead times, and stock across DCs and branches to optimize service and cash simultaneously
Agentic replenishment and rebalancing
Use inventory agents to propose POs, transfers, and safety-stock changes within guardrails, turning replenishment into a repeatable, autonomous process.
Non-disruptive activation around existing tool
Plug optimization and replenishment agents into current ERP/WMS, minimizing IT lift while modernizing decisions “inside” the tools planners already use.
Continuous improvement and compounding impact
Treat each inventory optimization wave (by category, region, or channel) as a building block that compounds gains in working capital, service, and waste reduction over time.