MLOps Prod ML
Concepts

MLOps Overview

Learn how MLOps extends DevOps to cover the entire ML lifecycle: data, training, deployment, and monitoring.

ML Lifecycle

  • Data collection & versioning.
  • Experiment tracking & model training.
  • Model packaging & deployment.
  • Monitoring, alerts, and retraining.

Key Components

CI/CD for ML

Automated testing and deployment of ML pipelines and models.

Monitoring

Track latency, errors, and data drift in production predictions.

Data & Model Versioning

Use tools like DVC, MLflow, or Weights & Biases to track artifacts.