Deploying and Maintaining Production AI Systems

By Coursera on Coursera · Data Science
Price
Free

About This Course

Most machine learning models fail in production not due to poor algorithms, but from inadequate deployment practices, unmonitored performance drift, and missing operational safeguards. This course equips you with the MLOps and site reliability engineering skills to deploy generative AI systems safely, automate model lifecycle management, and maintain peak performance in production environments. You will learn to orchestrate deployment workflows with canary releases and automated rollbacks, implement CI/CD pipelines with compliance checks and drift-triggered retraining, and design observability systems using logs, metrics, and tracing. Through hands-on projects, you will create performance dashboards that connect user experience with operational KPIs and build automation pipelines that improve reliability without sacrificing speed. These practical skills prepare you for roles as MLOps engineers, AI deployment specialists, and site reliability engineers. By the end of this course, you will be able to make data-driven release decisions, reduce downtime through proactive monitoring, and implement robust operational practices for AI systems at scale.

Instructor

Professionals from the Industry

Frequently Asked Questions

How much does Deploying and Maintaining Production AI Systems cost?
Visit the Deploying and Maintaining Production AI Systems course page for current pricing and available discounts.
Who teaches Deploying and Maintaining Production AI Systems?
Deploying and Maintaining Production AI Systems is taught by Professionals from the Industry, Coursera.
What skill level is Deploying and Maintaining Production AI Systems for?
This course is designed for all levels learners.