Take models from notebook to production. Master model versioning, serving, monitoring pipelines, and CI/CD for Machine Learning.
Building a model is easy; keeping it running in production is hard. MLOps (Machine Learning Operations) bridges the gap between Data Science and DevOps. This course teaches you to package models with Docker, track experiments with MLflow, and deploy APIs using FastAPI. You will learn to monitor models for 'data drift' where performance degrades over time, and build automated CI/CD pipelines to retrain and redeploy models automatically. Essential for any engineer working in a mature AI team.
Estimated completion time: 21 lessons • Self-paced learning • Lifetime access
Concepts apply, but we focus on Docker/Cloud first.
Yes, specialized DevOps for the unique needs of ML.
Tools taught are open source and cloud-agnostic.
It is the industry standard open-source MLOps tool.