monitor-model-drift
Acerca de
Esta habilidad detecta la deriva de datos y conceptos en modelos de ML en producción utilizando Evidently AI y pruebas estadísticas como PSI y KS. Configura monitoreo automatizado, alertas e informes para detectar tempranamente la degradación del rendimiento. Úsela cuando los modelos se degraden inesperadamente, las distribuciones de datos cambien o para cumplimiento normativo.
Instalación rápida
Claude Code
Recomendadonpx skills add pjt222/agent-almanac -a claude-code/plugin add https://github.com/pjt222/agent-almanacgit clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/monitor-model-driftCopia y pega este comando en Claude Code para instalar esta habilidad
Documentación
Monitor Model Drift
See Extended Examples for complete configuration files and templates.
Detect + alert on data drift + concept drift in prod ML models via statistical tests + automated monitoring.
Use When
- Prod ML models w/ unexplained perf degradation
- New data distributions differ from training
- Seasonal/temporal shifts in input features
- Need proactive alerts before business metrics impacted
- Regulatory: SR 11-7, EU AI Act
- Multi model versions deployed → drift comparison
In
- Required: Prod predictions + features (last 30-90 days)
- Required: Reference dataset (training or validation)
- Required: Ground truth labels (may be delayed)
- Optional: Feature importance / SHAP values
- Optional: Business metric thresholds for alerting
- Optional: Historical drift reports for trend
Do
Step 1: Install + Config Evidently AI
Set up monitoring framework + deps.
# Create virtual environment
python -m venv venv
source venv/bin/activate # On Windows: venv\Scripts\activate
# Install Evidently and dependencies
pip install evidently pandas scikit-learn prometheus-client
# Create monitoring directory structure
mkdir -p monitoring/{reports,config,alerts}
Config file:
# monitoring/config/drift_config.py
from evidently.metric_preset import DataDriftPreset, TargetDriftPreset
from evidently.metrics import (
DatasetDriftMetric,
DatasetMissingValuesMetric,
ColumnDriftMetric,
)
# ... (see EXAMPLES.md for complete implementation)
→ Config created w/ thresholds matching model tolerance.
If err: start conservative (PSI > 0.2, KS p-value < 0.01) + tune by false positive rate.
Step 2: Data Drift Detection
Drift detection pipeline w/ multiple statistical tests.
# monitoring/drift_detector.py
import pandas as pd
import numpy as np
from scipy.stats import ks_2samp, chi2_contingency
from evidently.report import Report
from evidently.metric_preset import DataDriftPreset
from evidently.metrics import ColumnDriftMetric, DatasetDriftMetric
from datetime import datetime, timedelta
# ... (see EXAMPLES.md for complete implementation)
→ Drift detection runs, JSON report w/ per-feature stats, drifted features identified.
If err: check missing values (impute/drop), reference + current data same cols, data types match.
Step 3: Generate Evidently Reports
Visual HTML reports for human review + debugging.
# monitoring/generate_reports.py
from evidently.report import Report
from evidently.metric_preset import DataDriftPreset, TargetDriftPreset
from evidently.metrics import (
ColumnDriftMetric,
DatasetDriftMetric,
DatasetMissingValuesMetric,
)
# ... (see EXAMPLES.md for complete implementation)
→ HTML reports in monitoring/reports/, browser-viewable w/ interactive charts showing distribution comparisons.
If err: write perms to output dir, Evidently version ≥ 0.4.0, data frames have ≥100 rows recommended.
Step 4: Concept Drift Detection
Monitor pred perf → detect concept drift (relationship features-target changes).
# monitoring/concept_drift.py
import pandas as pd
import numpy as np
from sklearn.metrics import roc_auc_score, mean_squared_error, accuracy_score
from typing import Dict, List
import json
# ... (see EXAMPLES.md for complete implementation)
→ Perf monitoring detects when accuracy/AUC drops below threshold → potential concept drift.
If err: ground truth labels available (may need delayed validation batch), prediction scores calibrated (0-1 range classification), no label leakage in features.
Step 5: Automated Alerting
Integrate w/ Slack, PagerDuty, email.
# monitoring/alerting.py
import requests
import json
from typing import Dict, List
import logging
logging.basicConfig(level=logging.INFO)
logger = logging.getLogger(__name__)
# ... (see EXAMPLES.md for complete implementation)
→ Alerts sent on drift, severity by drift share + critical feature involvement.
If err: test webhook URLs w/ curl, PagerDuty integration key has perms, firewall outbound HTTPS, retry logic for transient failures.
Step 6: Schedule Monitoring Jobs
Automate drift detection on schedule (daily/weekly).
# monitoring/scheduler.py
import schedule
import time
import logging
from datetime import datetime, timedelta
import pandas as pd
logging.basicConfig(
# ... (see EXAMPLES.md for complete implementation)
Cron alternative:
# Add to crontab (crontab -e)
# Run daily at 2 AM
0 2 * * * cd /path/to/monitoring && /path/to/venv/bin/python scheduler.py >> logs/cron.log 2>&1
Or Airflow DAG:
# airflow/dags/drift_monitoring_dag.py
from airflow import DAG
from airflow.operators.python import PythonOperator
from datetime import datetime, timedelta
default_args = {
'owner': 'ml-team',
'depends_on_past': False,
# ... (see EXAMPLES.md for complete implementation)
→ Monitoring runs auto on schedule, reports generated, alerts only when drift exceeds thresholds, all activity logged.
If err: scheduler process running (ps aux | grep scheduler), cron service active, data sources accessible, review logs for exceptions, dead man's switch alert if job doesn't run.
Check
- PSI + KS test calculations match expected values for known drift scenarios
- Evidently HTML reports render correctly + show distribution overlays
- Critical feature drift → immediate alerts
- Concept drift detector identifies perf degradation within 3 days
- Alerts delivered all configured channels (Slack, email, PagerDuty)
- Scheduled job runs w/o manual intervention 7+ days
- False positive rate < 5% (tune thresholds if higher)
- Drift detection completes < 5min for 1M rows
Traps
- Stale reference data: Update quarterly or after retraining to reflect natural data evolution
- Sample size mismatch: Current + reference datasets similar sizes (>1000 rows each) for reliable stats
- Missing ground truth: Concept drift needs labels; implement delayed labeling if real-time unavailable
- Seasonality confusion: Weekly/monthly patterns → false positives; time-aligned reference windows or deseasonalize features
- Alert fatigue: Start high thresholds, lower based on actual retraining cadence
- Ignore data quality drift: Monitor missing values, outliers, encoding errors separately from distribution drift
- Over-reliance on aggregate: Per-feature analysis crucial; aggregate drift may mask individual feature shifts
- Neglect prediction distribution: Even w/o ground truth, sudden prediction shifts signal issues
→
detect-anomalies-aiops— time series anomaly detection for operational metricsdeploy-ml-model-serving— model deployment patterns + versioningsetup-prometheus-monitoring— infrastructure metrics collectionreview-data-analysis— statistical analysis validation + peer review
Repositorio GitHub
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