Description: Sensor data analysis is the process of examining and processing information collected by measurement devices known as sensors, with the aim of identifying patterns, trends, and particularly anomalies. These sensors can measure a variety of parameters such as temperature, pressure, humidity, motion, among others. Anomaly detection refers to the identification of data that significantly deviates from what is considered normal or expected, which may indicate problems or failures in systems or processes. This analysis relies on artificial intelligence (AI) techniques that enable efficient and effective processing of large volumes of data. The combination of sensors and AI algorithms facilitates real-time monitoring and informed decision-making, improving operational efficiency and safety across various applications. The relevance of this analysis lies in its ability to prevent failures, optimize performance, and ensure quality in sectors such as manufacturing, healthcare, agriculture, and infrastructure management, among others.