MLOps: Machine Learning in Production

MLOps: Machine Learning in Production

Build the infrastructure and workflows to reliably train, deploy, monitor, and iterate on machine learning models at scale.

What You’ll Learn

  • ML pipelines with Kubeflow, Airflow, and Prefect
  • Experiment tracking with MLflow and Weights & Biases
  • Model versioning, registry, and CI/CD for ML
  • Containerizing ML workloads with Docker and Kubernetes
  • Feature stores and data versioning with DVC
  • Monitoring model performance and data drift in production