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Modern Data Architecture on AWS

You're reading from  Modern Data Architecture on AWS

Product type Book
Published in Aug 2023
Publisher Packt
ISBN-13 9781801813396
Pages 420 pages
Edition 1st Edition
Languages
Author (1):
Behram Irani Behram Irani
Profile icon Behram Irani

Table of Contents (24) Chapters

Preface Part 1: Foundational Data Lake
Prologue: The Data and Analytics Journey So Far Chapter 1: Modern Data Architecture on AWS Chapter 2: Scalable Data Lakes Part 2: Purpose-Built Services And Unified Data Access
Chapter 3: Batch Data Ingestion Chapter 4: Streaming Data Ingestion Chapter 5: Data Processing Chapter 6: Interactive Analytics Chapter 7: Data Warehousing Chapter 8: Data Sharing Chapter 9: Data Federation Chapter 10: Predictive Analytics Chapter 11: Generative AI Chapter 12: Operational Analytics Chapter 13: Business Intelligence Part 3: Govern, Scale, Optimize And Operationalize
Chapter 14: Data Governance Chapter 15: Data Mesh Chapter 16: Performant and Cost-Effective Data Platform Chapter 17: Automate, Operationalize, and Monetize Index Other Books You May Enjoy

ML using Amazon Redshift and Amazon Athena

Many times, all the data is already processed, stored, and consumed out of Amazon Redshift using SQL-based queries. Database engineers can easily create complex SQL-based consumption patterns, but they lack the understanding to stitch together all the components of ML pipelines using SageMaker. To make their day-to-day-job lives easy, they can now build ML models inside Amazon Redshift using SQL syntax. Redshift ML handles all interactions with Amazon SageMaker, transparent to the data developer.

Some of the benefits of using Redshift ML are set out here:

  • Simplicity: Makes it easy to create ML models using SQL. Even the predictions are done using SQL statements.
  • Flexibility: Allows the user to select specific ML algorithms such as XGBoost. Under the covers, the best ML model is automatically trained and tuned.
  • Performant: Even though under the covers the models are trained with SageMaker, they are eventually deployed in...
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