Course Outline

Introduction

  • Understanding machine learning with SageMaker
  • Machine learning algorithms

Overview of AWS SageMaker Features

  • AWS and cloud computing
  • Models development

Setting up AWS SageMaker

  • Creating an AWS account
  • IAM admin user and group

Familiarizing with SageMaker Studio

  • UI overview
  • Studio notebooks

Preparing Data Using Jupyter Notebooks

  • Notebooks and libraries
  • Creating a notebook instance

Training a Model with SageMaker

  • Training jobs and algorithms
  • Data and model parallel trainings
  • Post-training bias analysis

Deploying a Model in SageMaker

  • Model registry and model monitor
  • Compiling and deploying models with Neo
  • Evaluating model performance

Cleaning Up Resources

  • Deleting endpoints
  • Deleting notebook instances

Troubleshooting

Summary and Conclusion

Requirements

  • Experience with application development
  • Familiarity with Amazon Web Services (AWS) Console

Audience

  • Data scientists
  • Developers
 21 Hours

Number of participants



Price per participant

Testimonials (2)

Related Courses

Amazon DynamoDB for Developers

14 Hours

Advanced Amazon Web Services (AWS) CloudFormation

7 Hours

AWS CloudFormation

7 Hours

AWS IoT Core

14 Hours

Amazon Web Services (AWS) IoT Greengrass

21 Hours

Industrial Training IoT (Internet of Things) with Raspberry PI and AWS IoT Core 「4 Hours Remote」

4 Hours

Industrial Training IoT (Internet of Things) with Raspberry PI and AWS IoT Core 「8 Hours Remote」

8 Hours

Advanced AWS Lambda

14 Hours

AWS Lambda for Developers

14 Hours

H2O AutoML

14 Hours

AutoML with Auto-sklearn

14 Hours

AutoML with Auto-Keras

14 Hours

Advanced Stable Diffusion: Deep Learning for Text-to-Image Generation

21 Hours

Introduction to Stable Diffusion for Text-to-Image Generation

21 Hours

AlphaFold

7 Hours

Related Categories

1