Submitted:
30 October 2025
Posted:
31 October 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Drift Detection Techniques
3. Remediation Strategies
| Listing 1. Automated retraining loop triggered by drift detection. |
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4. Frameworks and Platforms for Self-Healing ML
5. Case Studies: Applying Self-Healing ML Pipelines
5.1. Finance: Fraud Detection
5.2. Healthcare: Predictive Analytics
5.3. E-Commerce: Recommendation Engines
5.4. Key Lessons Learned
6. Challenges and Ethical Considerations
7. Conclusions and Future Directions
References
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| Method | Strengths | Limitations | Use Cases |
|---|---|---|---|
| Statistical Tests | Simple, interpretable | Struggles with high-dimensional data | Tabular features, monitoring dashboards |
| Distance Metrics | Sensitive to gradual shifts | Requires embeddings or distributions | NLP embeddings, image features |
| ML-based Detectors | Captures complex drift | Risk of false positives | Adversarial validation, fraud detection |
| Streaming Algorithms | Low-latency, memory-efficient | Limited flexibility in concept drift | Online recommendations, IoT data streams |
| Strategy | Advantages | Limitations |
|---|---|---|
| Incremental Learning | Fast, adaptive | May accumulate noise |
| Rollback | Ensures stability | Reverts to suboptimal model |
| Active Learning | Reduces labeling cost | Relies on annotation pipeline |
| Scheduled Retraining | Simple to implement | Wastes compute if drift absent |
| Ensemble Switching | High resilience | Increased resource usage |
| Framework | Strengths | Limitations | Best Use Cases |
|---|---|---|---|
| Kubeflow | Kubernetes-native, scalable | Steep learning curve | Large-scale enterprise ML |
| MLflow | Tracking, model registry | Needs orchestration integration | Experiment mgmt, retraining triggers |
| SageMaker | Built-in monitoring | Cloud vendor lock-in | Retail, finance cloud ML |
| Azure ML | Event-driven automation | Limited OSS portability | Enterprise AI compliance |
| Airflow / Prefect | Flexible DAG orchestration | External monitoring needed | Workflow-driven remediation |
| Domain | Benefits | Challenges |
|---|---|---|
| Finance | Adaptive fraud detection, lower false positives | Need for real-time labeling |
| Healthcare | Improved predictive accuracy, compliance support | Complex model governance |
| E-commerce | Higher engagement, faster trend adaptation | Resource-intensive retraining |
| Challenge | Risk | Mitigation Strategy |
|---|---|---|
| Explainability | Loss of stakeholder trust | Audit trails, interpretable dashboards |
| Fairness & Bias | Amplified inequities | Fairness audits, representative sampling |
| Compliance | Regulatory violations | Governance frameworks, documentation |
| Resource Cost | High compute expenditure | Hybrid retraining, resource scaling |
| Engineering Complexity | Difficult debugging | Strong observability, layered monitoring |
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