Practical Machine Learning with AWS

Practical Machine Learning with AWS: Process, Build, Deploy, and Productionize Your Models Using AWS

eBook Details:

  • Paperback: 258 pages
  • Publisher: WOW! eBook; 1st edition (November 24, 2020)
  • Language: English
  • ISBN-10: 1484262212
  • ISBN-13: 978-1484262214

eBook Description:

Practical Machine Learning with AWS: Process, Build, Deploy, and Productionize Your Models Using AWS

Successfully build, tune, deploy, and productionize any machine learning model, and know how to automate the process from data processing to deployment.

This book is divided into three parts. Part I introduces basic cloud concepts and terminologies related to AWS services such as S3, EC2, Identity Access Management, Roles, Load Balancer, and Cloud Formation. It also covers cloud security topics such as AWS Compliance and artifacts, and the AWS Shield and CloudWatch monitoring service built for developers and DevOps engineers. Part II covers machine learning in AWS using SageMaker, which gives developers and data scientists the ability to build, train, and deploy machine learning models. Part III explores other AWS services such as Amazon Comprehend (a natural language processing service that uses machine learning to find insights and relationships in text), Amazon Forecast (helps you deliver accurate forecasts), and Amazon Textract.

What You Will Learn

  • Be familiar with the different machine learning services offered by AWS
  • Understand S3, EC2, Identity Access Management, and Cloud Formation
  • Understand SageMaker, Amazon Comprehend, and Amazon Forecast
  • Execute live projects: from the pre-processing phase to deployment on AWS

By the end of the Practical Machine Learning with AWS book, you will understand the machine learning pipeline and how to execute any machine learning model using AWS. The book will also help you prepare for the AWS Certified Machine Learning – Specialty certification exam.


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