--- title: "Uncertainty Quantification with TimeGPT" description: "Learn how to generate quantile forecasts and prediction intervals to capture uncertainty in your forecasts." icon: "question" --- In time series forecasting, it is important to consider the full probability distribution of the predictions rather than a single point estimate. This provides a more accurate representation of the uncertainty around the forecasts and allows better decision-making. **TimeGPT** supports uncertainty quantification through quantile forecasts and prediction intervals. ## Why Consider the Full Probability Distribution? When you focus on a single point prediction, you lose valuable information about the range of possible outcomes. By quantifying uncertainty, you can: - Identify best-case and worst-case scenarios - Improve risk management and contingency planning - Gain confidence in decisions that rely on forecast accuracy