Description: Temporal data anonymization is the process of removing or modifying sensitive time-related information in datasets to protect individuals’ identities. This process is crucial in a world where data collection and analysis have become ubiquitous, especially in contexts such as medical research, consumer behavior analysis, and personal data management. Anonymization involves techniques that ensure data cannot be traced back to a specific person, even when combined with other information sources. The main characteristics of temporal data anonymization include the removal of timestamps, generalization of dates, and the creation of time intervals that make it difficult to identify individuals. The relevance of this process lies in its ability to balance the need for data analysis with privacy protection, complying with regulations such as GDPR in Europe. In an environment where privacy is increasingly valued, temporal data anonymization becomes an essential tool for organizations seeking to use data in a responsible manner while ensuring the protection of individual privacy.