Please sign in to continue.
Enter your registered email address.
We've just sent you a new password on your registered email address.
Please check your inbox/spam/junk folder. If you did not receive the mail, click here to login it.
It's quick and easy.
Thanks for registering for an account.
We've sent an email to with a link to activate your account. Follow the instructions to complete the account registration.
Please check your inbox/spam/junk folder.
MLOps Engineering on AWS is a hands-on course that teaches you how to operationalize machine learning workflows using AWS services. It covers key concepts such as automating model deployment, monitoring, scaling, and governance. With tools like Amazon SageMaker, you’ll learn to streamline the ML lifecycle and ensure reliable, secure, and efficient production-level ML operations.
In order to create, train, and implement machine learning (ML) models, this course expands and builds upon the DevOps methodology, which is widely used in software development. The four-level MLOPs maturity structure serves as the foundation for the training. The first three levels—the initial, repeatable, and reliable levels—are the main emphasis of the course. For ML deployments to be successful, the course emphasizes the significance of data, model, and code. It illustrates how to overcome the difficulties posed by handoffs between data scientists, data engineers, software developers, and operations by utilizing tools, automation, procedures, and collaboration. Using tools and procedures to keep an eye on and respond when the model prediction in production deviates from established KPIs is another topic covered in the course.
Bringing MLOps to experimentation
Setting up the ML experimentation environment
Creating and Updating a Lifecycle Configuration for SageMaker Studio
Provisioning a SageMaker Studio Environment with the AWS Service Catalog
Workbook: Initial MLOps
Fill out this form and download the course curriculum.
Top instructors from around the world teach millions of students on CloudFreeks.
Get a free free counsellig to decide your next career step.