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Enter 12 months of historical data and forecast future demand with trend projection, optional seasonality, and confidence intervals.
Expected annual growth adjustment
Seasonal patterns applied
12,531
Next 6 months
2,089
Per month
1,542
Past 12 months
+35.5%
vs. historical average
Solid blue = actual data. Dashed green = forecast. Shaded area = 95% confidence interval.
| Month | Forecast | Confidence Low | Confidence High |
|---|---|---|---|
| Jan | 1,861 | 1,571 | 2,151 |
| Feb | 2,070 | 1,769 | 2,371 |
| Mar | 1,669 | 1,358 | 1,980 |
| Apr | 2,105 | 1,784 | 2,426 |
| May | 2,311 | 1,980 | 2,642 |
| Jun | 2,515 | 2,174 | 2,856 |
Without demand forecasting, businesses either overstock (tying up capital and increasing waste) or understock (losing sales and damaging customer relationships). Research shows that companies with mature forecasting processes achieve 15-30% reduction in inventory costs and 5-10% increase in revenue through better product availability.
This tool uses basic trend projection, which is a good starting point. Modern ERP systems offer exponential smoothing, ARIMA, and machine learning models that factor in promotions, pricing changes, weather, and economic indicators. The key is starting with a systematic approach and refining over time.
ECOSIRE implements ERP demand forecasting modules with machine learning, seasonal decomposition, and automated inventory optimization.