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Module monitoring

Module monitoring 

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Production monitoring with drift detection Production monitoring with drift detection and model degradation alerts

This module provides comprehensive monitoring capabilities for transformation pipelines in production environments, including data drift detection, performance monitoring, and automated alerting.

Structs§

ARIMAConfig
Configuration for ARIMA (AutoRegressive Integrated Moving Average) model
AdvancedAnomalyDetector
Advanced anomaly detection system
AlertConfig
Alert configuration
AnomalyFeedback
Feedback for anomaly detection tuning
AnomalyInsights
Anomaly insights summary
AnomalyRecord
Anomaly record for historical analysis
AnomalyThresholds
Anomaly detection thresholds
ChangePointConfig
Configuration for change point detection
DriftDetectionResult
Data drift detection result
EnsembleAnomalyDetector
Ensemble anomaly detector combining multiple methods
ForecastModel
Time series forecasting model configuration
IsolationForestConfig
Configuration structures for various anomaly detection methods
LOFConfig
Configuration for Local Outlier Factor (LOF) detection
MLAnomalyDetector
Machine learning anomaly detector
OneClassSVMConfig
Configuration for One-Class SVM anomaly detection
PerformanceMetrics
Performance degradation metrics
SeasonalConfig
Configuration for seasonal time series decomposition
StatisticalDetector
Statistical anomaly detector using multiple statistical methods
TimeSeriesAnomalyDetector
Time series anomaly detector
TimeSeriesPoint
Time series data point
TransformationMonitor
Production monitoring system

Enums§

AlertType
Alert types
AnomalySeverity
Anomaly severity levels
DriftMethod
Drift detection methods
FeedbackType
Type of feedback for anomaly detection accuracy