| name | MLOps Observability |
| description | Guide to implement full stack observability including reproducibility, lineage, monitoring, alerting, and explainability. |
MLOps Observability
Goal
To implement a "Glass Box" system where every result is Reproducible, every asset has Lineage, and system health is Monitored, Alerted on, and Explained.
Prerequisites
- Language: Python
- Context: Production monitoring and debugging.
- Platform Suggestion: MLflow, SHAP, Evidently, ...
Instructions
1. Guarantee Reproducibility
Consistency is key. For instance:
- Randomness: Set seeds for
random, numpy, torch, tensorflow.
- Environment: Use
docker and locked dependencies (uv.lock).
- Builds: Use
justfile with uv build --build-constraint for deterministic wheels.
- Code: Track git commit hash for every run.
2. Track Data Lineage
Know the origin of your data. For instance:
- Datasets: Create MLflow Datasets with
mlflow.data.from_pandas.
- Logging: Log inputs to MLflow context with
mlflow.log_input.
- Versioning: Version data files (e.g.,
data/v1.csv) or use DVC.
- Transformations: Log preprocessing parameters mapping data versions to model versions.
3. Monitoring & Drift Detection
Watch for silent failures. For instance:
- Validation: Use
MLflow Evaluate to gate models against quality thresholds.
- Drift: Use
evidently to compare reference (training) vs current (production) data.
- Detect Data Drift (input distribution changes) and Concept Drift (relationship changes).
- System: Enable MLflow System Metrics (
log_system_metrics=True) for CPU/GPU.
4. Alerting
Don't stare at dashboards. For instance:
- Local: Use
plyer for desktop notifications during long training runs.
- Production: Use
PagerDuty (critical) or Slack (warnings).
- Thresholds: Use Static (fixed value) or Dynamic (anomaly detection) rules.
- Action: Alerts must link to a dashboard or playbook.
5. Explainability (XAI)
Trust but verify. For instance:
- Global: Use Feature Importance (e.g., Random Forest) to understand overall logic.
- Local: Use
SHAP values to explain individual predictions.
- Artifacts: Save explanations (plots/tables) as MLflow artifacts.
6. Infrastructure & Costs
Optimize resources. For instance:
- Tags: Tag runs with
project, env, user.
- Costs: Log
run_time and instance type to estimate ROI.
Self-Correction Checklist