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Platform

Forecasting

AI demand forecast with 85–92% accuracy for 30–90 days

How it works

1

Historical data ingestion

The system imports 2+ years of daily sales data per SKU, grouped by store location. Handles gaps, returns, and promotional anomalies automatically — no manual cleaning required.

2

Model selection tournament

Four stochastic models (polynomial, sinusoidal, exponential, logarithmic) compete on your data. The system picks the best-fit model per SKU based on MAPE score, then generates P10/P50/P90 scenarios.

3

52-week seasonality mapping

Each product gets a weekly seasonality coefficient from a full year of patterns. This catches micro-seasonality that monthly averages miss — like Monday retail spikes or Friday electronics peaks.

4

Live forecast & alerts

Forecasts update automatically with every data sync. When actual demand deviates from predictions by >20%, the system triggers a demand surge or demand drop alert with recommended action.

Under the Hood

StochasticProjector

4 model candidates (polynomial, sinusoidal, exponential, logarithmic) compete per SKU. Weighted R² automatically selects the winner — no manual tuning.

Poisson Confidence Bands

P10/P50/P90 intervals calculated via Poisson distribution for reliable inventory planning under demand uncertainty.

52-Week Seasonality Engine

Each product-week gets a coefficient from a full year of patterns. 5 types: peak, growth, off-season, discount, and spot.

Real-World Example

Real example

Omega-3 Fish Oil: the system detected weekly seasonality and predicted a 40% demand surge 3 weeks before it happened, preventing a stockout that would have cost $12K in lost sales.

Try it on your data

Free audit in 15 minutes. Connect your data in 1 day.

Get Started
Forecasting — invent.sale