Feature engineering destroys signal. Even with a world-class data science team, the traditional ML approach forces you to flatten 10, 20, 50 relational tables into feature vectors. When you do that, you discard the nuanced relationships between policyholders, claims, adjusters, providers, agents, and billing history. A fraud ring spanning three clinics and twelve claimants becomes a row of aggregated counts. This isn't a talent problem — it's a structural limitation of the approach itself.
You only have your data. Even the best internal model is trained on one carrier's data. KumoRFM is pre-trained on thousands of relational schemas across industries. It has already learned what patterns look like across hundreds of different data structures — the same advantage GPT has over a custom NLP model. Your team, no matter how talented, cannot replicate foundation-model scale.
Your existing team will love it. KumoRFM doesn't replace your data scientists — it 10x's them. Instead of spending months on feature engineering and pipeline work, they define predictions in a simple query language. They go from shipping 3–5 models per year to 50+ per quarter. The tedious work disappears; the interesting work remains.
One platform powers claims fraud detection, underwriting risk, pricing optimization, churn prediction, and every other insurance prediction — from the same connected data, with the same team, at 10x the velocity.