Machine Learning (ML) Model Monitoring System

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A Machine Learning (ML) Model Monitoring System is a software monitoring system that can support ML model monitoring tasks.

  • AKA: ML Model Monitoring Platform, Machine Learning Model Performance Monitoring System.
  • Context:
    • It can collect, analyze, and visualize key Performance Metrics such as accuracy, precision, recall, and F1 score to help stakeholders understand the model's performance.
    • It can detect and notify users of any significant changes in the model's performance, data quality, or data drift, enabling quick identification and resolution of issues.
    • It can provide historical tracking of model performance, allowing for trend analysis and identification of recurring issues.
    • It can integrate with existing data pipelines, infrastructure, and alerting systems to streamline monitoring.
    • It can facilitate collaboration between Data Scientists, ML Engineers, and other stakeholders for diagnosing and resolving issues with the model.
    • It can support automated model retraining and deployment to maintain model performance in dynamic environments.
  • Example(s):
  • Counter-Example(s):
  • See: ML Model Drift, Data Drift, Concept Drift, Model Retraining.


References

2023