Enable Model Training on SageMaker

This video forms part of the course Hands-On Machine Learning Using Amazon SageMaker

 

The biggest challenge facing a Machine Learning professional is to train, tune, and deploy Mac

English
Created by
Last updated Thu, 19-Mar-2020
+ View more
Course overview

This video forms part of the course Hands-On Machine Learning Using Amazon SageMaker

 

The biggest challenge facing a Machine Learning professional is to train, tune, and deploy Machine Learning on the cloud. AWS SageMaker offers a powerful infrastructure to experiment with Machine Learning models. You probably have an existing ML project that uses TensorFlow, Keras, CNTK, scikit-learn, or some other library.

This practical course will teach you to run your new or existing ML project on SageMaker. You will train, tune, and deploy your models in an easy and scalable manner by abstracting many low-level engineering tasks. You will see how to run experiments on SageMaker Jupyter notebooks and code training and prediction workflows by working on real-world ML problems.

By the end of this course, you'll be proficient on using SageMaker for your Machine Learning applications, thus spending more time on modeling than engineering.

 

Target Audience

This course is designed for Machine Learning practitioners who have a working knowledge of Machine Learning and are keen to build, train, and deploy models on Amazon SageMaker.

What will i learn?

  • This video will guide you how to shape the existing ML project to be trainable on SageMaker.
  • Implement the train(...) function required by SageMaker
  • Configure Dockerfile
  • Finally, reshape an existing ML project
Requirements
Curriculum for this course
1 Lessons 8 mins
Enable Model Training on SageMaker
1 Lessons 00:08:00 Hours
  • Enable Model Training on SageMaker
    Preview 00:08:00
+ View more
Other related courses
About instructor
Includes:
  • 8 mins On demand videos
  • 1 Lessons
  • Access on mobile and tv
  • Full lifetime access