Feature engineering destroys signal. Even with a world-class DS team, the feature engineering step is a structural bottleneck. Flattening relational tables into rows discards the nuanced relationships between subscribers → devices → towers → CDRs → billing → support tickets → network events. This isn't a team quality problem — it's a fundamental limitation of the approach. The signal lives in the connections, and flattening destroys them.
You only have your data. KumoRFM is pre-trained on thousands of relational schemas. It already knows what churn patterns, network anomalies, and fraud signals look like across hundreds of database structures. Your internal team, no matter how talented, can only learn from your data. KumoRFM brings the same advantage GPT has over a custom NLP model — breadth of pre-training that no single organization can replicate.
Your existing team will love it. KumoRFM 10x's your data science team — it doesn't replace them. Feature engineering disappears. Your team goes from shipping 3–5 models per year to 50+ per quarter. The interesting work — defining problems, interpreting results, driving business impact — stays with your people.
One platform powers churn prediction, network anomaly detection, fraud detection, capacity planning, and every other telecom prediction — from the same connected data.