MLOps Engineering on AWS
Productionize ML models using repeatable and reliable workflows with MLOps Engineering on AWS
Could your Machine Learning (ML) workflow use some DevOps agility? MLOps Engineering on AWS will help you bring DevOps-style practices into the building, training, and deployment of ML models by learning from an expert AWS instructor.
In this 3-day, course you will learn how to address the challenges associated with hand-offs between data engineers, data scientists, software developers, and operations through the use of tools, automation, processes, and teamwork. By the end of the course, go from learning to doing by building and troubleshooting an ML pipeline.
What you'll learn
- Explain the benefits of MLOps
- Compare and contrast DevOps and MLOps
- Evaluate the security and governance requirements for an ML use case and describe possible solutions and mitigation strategies
- Set up experimentation for MLOps with Amazon SageMaker
- And much more
Who should take this course
- MLOps engineers who want to productionize and monitor ML models in the AWS cloud
- DevOps engineers who will be responsible for successfully deploying and maintaining ML models in production
What experience you'll need
Required:
- AWS Technical Essentials course (classroom or digital)
- DevOps Engineering on AWS course, or equivalent experience
- Practical Data Science with Amazon SageMaker course, or equivalent experience
Course overview
Level: Intermediate
Type: Classroom (virtual and in person)
Length: 3 days
Languages offered
This course is offered in English.
Need more information?
Download the course outline for more information about what this course covers.
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