Confirm and Proceed
View More
View Less
System Message
An unknown error has occurred and your request could not be completed. Please contact support.
Reserved - Scan in at least 10 minutes before the beginning of the session.
This has been added to your Planner. Please note: This is not a reserved seat.
Waitlisted - You may be assigned a reserved seat if one becomes available.

Please be sure to check the session schedule for any repeats of this session. In order to search for repeats of this session, please type the Session ID into the search bar at the top of the page.
Personal Calendar
Conference Event
There aren't any available sessions at this time.
Conflict Found
This session is already scheduled at another time. Would you like to...
Please enter a maximum of {0} characters.
{0} remaining of {1} character maximum.
Please enter a maximum of {0} words.
{0} remaining of {1} word maximum.
must be 50 characters or less.
must be 40 characters or less.
Session Summary
We were unable to load the map image.
This has not yet been assigned to a map.
Search Catalog
Replies ()
New Post
Microblog Thread
Post Reply
Your session timed out.
Meeting Summary

AIM306 - Deploying machine learning models in production

Session Description

Amazon SageMaker is a modular service that makes it easy to build, train, and deploy machine learning models. In this session, we dive deep into how to deploy machine learning models in the cloud and on edge devices. Amazon SageMaker lets you deploy your trained model in production with a single click so that you can start generating predictions. We also explain how to reduce inference costs by up to 75 percent using Amazon Elastic Inference, and how to train models once and run them anywhere using Amazon SageMaker Neo. Come away understanding all of your options for model deployment.

Additional Information
Artificial Intelligence & Machine Learning
300 - Advanced
Please note that session information is subject to change.
Session Schedule