Description: Machine learning monitoring refers to the practice of overseeing machine learning models to ensure they maintain their performance and accuracy over time. As models are deployed in real-world environments, they can be affected by changes in data, variations in user behavior, or even the passage of time. Therefore, it is crucial to establish metrics and tools that allow for continuous evaluation of these models’ effectiveness. Monitoring involves not only assessing accuracy and performance but also detecting biases, identifying anomalies, and adapting to new conditions. This practice has become essential in various applications, where poor performance can have significant consequences. Machine learning monitoring enables organizations to maintain the quality of their models and make proactive adjustments to enhance their effectiveness and adaptability. In summary, monitoring is a vital component in the machine learning lifecycle, ensuring that models remain relevant and useful in a constantly changing environment.