Case study / 2026-03-27 / 11 min
Eight million dollars in long-tail procurement, automated
What a multi-agent procurement system actually looks like when you wire it into SAP and let it learn from outcomes.
What a multi-agent procurement system actually looks like when you wire it into SAP and let it learn from outcomes.
Production AI work has a way of punishing abstractions. The useful lesson usually appears after a model has met a real workflow, a real constraint, and a stakeholder who can say precisely what would make the system unsafe.
At Kryse we write these notes as field documentation: what we saw, what we measured, what failed, and what pattern we would reuse. The goal is not novelty. The goal is a system another senior engineer could operate without theatrical confidence.
The durable pattern is simple: define the failure modes, turn them into evals, wire those evals into the release path, and make the human handoff explicit before the model does anything expensive.