Home/Solutions/ Forecast Kit

Forecasting models
ready to fine-tune.

Commodity and demand forecasting pre-trained on your vertical — CPG, energy, retail, agriculture. License Forecast Kit and go live in weeks with models that already understand your market's seasonality, events and volatility.

StatusAvailable for license
VerticalsCPG · Energy · Retail
DeploymentAPI or on-premise
Module · Time-series

Ensemble Forecasting Engine

ARIMA, Prophet, TFT and gradient-boosted ensembles that automatically blend predictions. Better accuracy than any single model, especially in volatile markets.

Module · Transfer

Pre-Trained Vertical Models

Models already trained on millions of data points from your sector. Fine-tune on your own data in hours — not weeks of cold-start training.

Module · Monitoring

Model Health Monitoring

Drift detection, MAPE tracking, concept-shift alerts and automated retraining triggers. Models stay accurate as markets evolve.

Module · API

REST Forecast API

Forecast any SKU, commodity or location with a single API call. Confidence intervals, scenario analysis and what-if simulation included.

Module · Planning

Planning Integration

Connectors for SAP IBP, Oracle Demantra, Excel and custom ERP systems. Push forecasts directly into your planning workflows.

Module · Explain

Forecast Explainability

SHAP-based driver analysis shows exactly which factors — weather, events, price, seasonality — are driving each forecast. Build trust with leadership.

Proven in production

Patanjali Case Study

Forecast Kit was deployed for Patanjali Ayurved across 12 commodity SKUs to reduce hedging cost and smooth procurement planning in a volatile raw-materials market.

The ensemble model — combining ARIMA with a gradient-boosted layer — produced 4-week forecasts with MAPE below 8%. Planning cycles that took a fortnight now close in 4 days.

Read the full case study →
−18%
Hedging cost
Faster planning cycle
4wk
MAPE window
12
SKUs in production

Need forecasting models in production faster?

Discuss a license →