Kumo Co-Founder Hema Raghavan Named to Inc.’s 2026 Female Founders 500

Learn more

Industry

The first AI that learns from your energy data. Not flattened feature tables

Demand forecasting errors cost utilities millions in over-procurement and penalty charges. Traditional ML makes it worse by flattening relational data into feature tables, destroying the signals that actually predict demand, outages, and usage anomalies. KumoRFM learns directly from the relationships in your data and is pre-trained on tens of thousands of datasets, delivering higher accuracy than any internally-built model, in hours, not months.

Book a demo and get a free trial of the full platform: data science agent, fine-tune capabilities, and forward-deployed engineer support.

By submitting, you accept the Terms and Privacy Policy.

Why energy leaders choose Kumo

Predict demand, prevent outages, optimize the grid

Here's how Kumo transforms energy and utilities operations with relational AI.

35%

More accurate demand forecasts

KumoRFM learns from meter data, weather, grid topology, and seasonal patterns simultaneously. Traditional models flatten these into a single row and lose the multi-hop signals that actually predict demand spikes.

4x

Faster outage detection

Predict equipment failures and grid stress before they cascade. KumoRFM traces failure propagation paths across your asset network, catching patterns your time-series models structurally cannot see.

Hours

Not months to production

Deploy demand forecasting, outage prediction, anomaly detection, and grid optimization models from the same platform. No custom pipelines per use case, no feature store maintenance.

Loved by data scientists, ML engineers & CXOs at

Catalina Logo

Use cases

Energy & utilities predictions powered by relational learning

From demand forecasting to outage prediction, Kumo learns from every relationship in your data to deliver predictions that traditional ML misses.

Demand forecasting

Forecast energy demand by learning from consumption patterns, weather data, industrial activity, grid topology, and seasonal trends connected across your operational data.

Explore →

Outage prediction

Predict outages before they happen by analyzing equipment age, weather patterns, grid stress signals, maintenance histories, and failure propagation paths across the network.

Explore →

Customer segmentation

Segment customers by learning from usage patterns, billing histories, service interactions, location data, and behavioral signals connected across your customer database.

Smart grid optimization

Optimize grid operations by learning from real-time load data, distributed energy resources, storage patterns, and demand response signals across interconnected grid nodes.

Usage anomaly detection

Detect usage anomalies — theft, meter failures, billing errors — by learning from consumption patterns, peer comparisons, and temporal signals across your metering infrastructure.

Explore →

Renewable energy forecasting

Forecast renewable energy generation by connecting weather patterns, historical output data, grid capacity, and demand signals to optimize integration and reduce curtailment.

Explore →

Equipment failure prediction

Predict equipment failures by learning from sensor data, maintenance records, environmental conditions, and failure cascade patterns across your asset network.

Rate optimization

Optimize rate structures by analyzing customer usage patterns, demand elasticity, competitive dynamics, and regulatory constraints connected across your pricing data.

Carbon footprint prediction

Predict carbon footprint impacts by learning from energy mix data, consumption patterns, grid topology, and emissions factors across your generation and distribution network.

The energy data advantage

Your operational data already encodes the signals that predict demand, prevent outages, and optimize the grid.

Feature engineering destroys signal. Even with a great data science team, flattening relational tables into feature vectors discards the nuanced relationships that actually predict outcomes. Your energy data connects meters → grid segments → customers → usage events → weather → outages → billing. When you flatten that into a single row, you lose the structural signals that separate proactive grid management from reactive crisis response. 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 predictive patterns look like across hundreds of database structures — the same advantage GPT has over a custom NLP model. Your team, no matter how talented, cannot replicate this breadth of relational knowledge from a single utility's data.

Your existing team will love it. KumoRFM 10x's your data science team. Feature engineering disappears entirely. Teams go from 3–5 models per year to 50+ per quarter. The interesting work — defining grid strategy, interpreting demand signals, driving operational decisions — remains. The drudgery vanishes.

One platform powers demand forecasting, outage prediction, equipment maintenance, customer segmentation, and every other energy prediction — from the same connected data.

UsersOrdersEventsProductsKumoChurn scores0.93Lead rankingTop 5%LTV prediction$12,400

95%

Less data preparation

Automated feature engineering

20–35%

Outage prediction improvement

Over traditional forecasting models

20x

Faster to production

From months to hours

$2.4M

Average annual savings

Per enterprise deployment

Superhuman Prediction Accuracy

KumoRFM isn't limited to your data alone. Pre-trained on billions of relational patterns across diverse datasets and fine-tuned to your schema, it sees what no in-house model can. As per the SAP SALT benchmark.

LLM

GPT4 + AutoML

63%

PhD Data Scientist

Feature eng. + XGBoost

75%

KumoRFM

Relational Foundation Model

91%

40%

lift in prediction accuracy

Beating internal XGBoost model on key metrics with far less data/features — on Kumo pre-trained. We replaced six months of pipeline work with a single afternoon.

Matt Loskamp

GTM Data Science Leader, Enterprise Financial Customer

Trusted by leading enterprises

From startups to enterprises, leading organizations rely on Kumo to deliver predictive insights at scale.

Peer-reviewed

Open research your team can evaluate

Kumo is built on 40+ peer-reviewed papers at NeurIPS, ICML, and KDD. The methodology is public and reproducible.

RFMZero-shotFine-tunedTransfer
ICML 2024

KumoRFM: A Relational Foundation Model for Predictive Analytics

K. Huang, M. Fey, J. Leskovec et al.

A foundation model for relational data - pre-trained across schemas, it delivers accurate predictions out of the box and improves with fine-tuning on your specific data.

Read paper
ABC
NeurIPS 2024

Relational Deep Learning: Graph Representation Learning on Relational Databases

M. Fey, W. Hu, K. Huang, J. Leskovec et al.

Introduces learning predictive models directly on relational databases, eliminating the feature engineering pipeline that has historically bottlenecked enterprise ML.

Read paper
T1T2T3T4T5+20+20+23+22+35BaselineKumo30 tasks
NeurIPS 2024 · Datasets Track

RelBench: A Benchmark for Deep Learning on Relational Databases

J. Robinson, R. Miao, K. Huang et al.

An open benchmark for evaluating relational prediction methods across 11 databases and 30 tasks. Kumo consistently outperforms traditional ML baselines.

Read paper