Data Versioning Strategies for MLOps: Introduction
MLOps combines machine learning, DevOps, and data engineering to manage the end-to-end lifecycle of machine learning models in production.
Why MLOps Is Important
- Ensures model reliability in production
- Improves collaboration between data and engineering teams
- Enables faster experimentation and deployment
Core MLOps Components
- Data versioning
- Model training and validation
- CI/CD for ML pipelines
- Monitoring and drift detection
Production Challenges
- Data drift and model decay
- Reproducibility issues
- Scalability constraints
Best Practices
- Automate retraining pipelines
- Track experiments and metrics
- Implement continuous monitoring
Conclusion
MLOps is essential for organizations scaling AI initiatives and delivering reliable machine learning systems.



