Description: Temporal features are aspects that capture the relationship of data with time, allowing machine learning and data analysis models to understand patterns, trends, and behaviors over specific periods. These features can include elements such as seasonality, trend, and periodicity, which are fundamental for time series analysis. By incorporating temporal information, models can make more accurate and relevant predictions, as they can identify how past events influence future outcomes. In the context of data analysis and machine learning, temporal features are essential for tasks such as forecasting, traffic analysis, and anomaly detection, where time plays a crucial role in data interpretation. The ability to extract and utilize these features enables systems to adapt and respond to changes in the environment, thereby improving their effectiveness and accuracy.