Feature engineering destroys signal. Even with a great data science team, flattening relational tables into feature vectors discards the nuanced relationships that actually drive predictions. Your supply chain data connects suppliers → purchase orders → shipments → warehouses → SKUs → demand signals → logistics partners. That structure encodes why demand shifts, which suppliers are at risk, and where bottlenecks will form. Flatten it, and you lose it. This is a structural limitation of traditional ML, not a team quality problem.
You only have your data. KumoRFM is pre-trained on thousands of relational schemas across industries. It already knows what demand patterns, supplier failure modes, and logistics signals look like across hundreds of different data structures. Your team — no matter how talented — can only learn from the data inside your four walls. KumoRFM brings external pattern knowledge that no in-house model can replicate.
Your existing team will love it. KumoRFM 10x's your data science team. Feature engineering — the work that consumes 80% of their time — disappears entirely. Teams go from 3–5 models per year to 50+ per quarter. Your best people stop writing ETL and start solving the interesting problems: defining prediction targets, interpreting results, and driving business decisions.
One platform. Same connected data. Demand sensing, supplier risk, inventory optimization, lead time prediction, and every other supply chain prediction — without a single feature pipeline.