Model Monitoring

Description: Model monitoring is the continuous process of tracking the performance and behavior of machine learning models in production. This process is essential to ensure that models remain accurate and relevant over time, as data and environmental conditions can change. Monitoring involves collecting key metrics such as accuracy, recall, and error rate, as well as evaluating model drift, which refers to changes in data distribution that can affect model performance. Additionally, model monitoring allows for proactive problem detection, facilitating the identification of biases or errors in predictions. The tools and techniques used in this process may include data visualizations, automated alerts, and trend analysis, enabling teams to make informed decisions about the need to retrain or adjust models. In a business environment, effective model monitoring not only improves prediction quality but also optimizes resource use and contributes to trust in AI-based decisions.

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