This document discusses demand forecasting in supply chains. It explains that demand forecasting is essential for planning decisions throughout the supply chain. Accurate forecasts are difficult to achieve as they are influenced by factors like historical demand trends, seasonality, and random error. Common forecasting methods include qualitative, time series, causal, and simulation approaches. Time series methods decompose historical demand data into systematic trends, seasonal variations, and random error. Adaptive forecasting improves forecasts over time by updating estimates as new demand data becomes available.