Description: The ‘Temporal Outlier’ refers to a data point that significantly deviates from the expected pattern over time. This concept is fundamental in anomaly detection, where the goal is to identify unusual behaviors in datasets that may indicate problems or extraordinary events. Temporal outliers can arise for various reasons, such as errors in data collection, sudden changes in the environment, or rare events affecting the system under study. Their identification is crucial across multiple domains, as they can influence the quality of analyses and data-driven decisions. In the context of data analysis, advanced algorithms are used to detect these outliers, enabling organizations to proactively respond to situations that could compromise their operations or security. The ability to recognize normal patterns and distinguish them from anomalies is essential for improving the accuracy of predictive models and informed decision-making.