Description: X-Performance refers to the evaluation of how well an AI model performs its tasks. This concept is fundamental in the field of artificial intelligence, as it allows measuring the effectiveness and efficiency of algorithms in various applications. X-Performance can be broken down into several metrics, such as accuracy, recall, F1-score, and response time, which help developers understand how a model behaves in real-world situations. Moreover, X-Performance is not limited to evaluating models in controlled environments; it also considers their performance under variable and challenging conditions. This is crucial for critical applications, where a failure in detection or prediction can have significant consequences. The importance of X-Performance lies in its ability to guide model optimization, allowing researchers and professionals to adjust parameters and improve the quality of automated decisions. In a world where automation and artificial intelligence are constantly growing, understanding and improving X-Performance becomes a primary goal to ensure that AI-based solutions are effective and reliable.