Reader small image

You're reading from  Serverless Machine Learning with Amazon Redshift ML

Product typeBook
Published inAug 2023
Reading LevelBeginner
PublisherPackt
ISBN-139781804619285
Edition1st Edition
Languages
Right arrow
Authors (4):
Debu Panda
Debu Panda
author image
Debu Panda

Debu Panda, a Senior Manager, Product Management at AWS, is an industry leader in analytics, application platform, and database technologies, and has more than 25 years of experience in the IT world. Debu has published numerous articles on analytics, enterprise Java, and databases and has presented at multiple conferences such as re:Invent, Oracle Open World, and Java One. He is lead author of the EJB 3 in Action (Manning Publications 2007, 2014) and Middleware Management (Packt, 2009).
Read more about Debu Panda

Phil Bates
Phil Bates
author image
Phil Bates

Phil Bates is a Senior Analytics Specialist Solutions Architect at AWS. He has more than 25 years of experience implementing large-scale data warehouse solutions. He is passionate about helping customers through their cloud journey and leveraging the power of ML within their data warehouse.
Read more about Phil Bates

Bhanu Pittampally
Bhanu Pittampally
author image
Bhanu Pittampally

Bhanu Pittampally is Analytics Specialist Solutions Architect at Amazon Web Services. His background is in data and analytics and is in the field for over 16 years. He currently lives in Frisco, TX with his wife Kavitha and daughters Vibha and Medha.
Read more about Bhanu Pittampally

Sumeet Joshi
Sumeet Joshi
author image
Sumeet Joshi

Sumeet Joshi is an Analytics Specialist Solutions Architect based out of New York. He specializes in building large-scale data warehousing solutions. He has over 17 years of experience in the data warehousing and analytical space.
Read more about Sumeet Joshi

View More author details
Right arrow

Summary

In this chapter, we discussed the benefits and use cases of Amazon Redshift ML BYOM for local and remote inference. We created two SageMaker models and then imported them into Redshift ML as local inference and remote inference model types. We loaded test datasets in Redshift and then we ran the prediction functions and validated both types. This demonstrates how Redshift simplifies and empowers the business community to perform inference on new data using models created outside. This method speeds up the delivery of machine learning models created outside of Redshift to the data warehouse team.

In the next chapter, you are going to learn about Amazon Forecast, which enables you to perform forecasting using Redshift ML.

lock icon
The rest of the page is locked
Previous PageNext Chapter
You have been reading a chapter from
Serverless Machine Learning with Amazon Redshift ML
Published in: Aug 2023Publisher: PacktISBN-13: 9781804619285

Authors (4)

author image
Debu Panda

Debu Panda, a Senior Manager, Product Management at AWS, is an industry leader in analytics, application platform, and database technologies, and has more than 25 years of experience in the IT world. Debu has published numerous articles on analytics, enterprise Java, and databases and has presented at multiple conferences such as re:Invent, Oracle Open World, and Java One. He is lead author of the EJB 3 in Action (Manning Publications 2007, 2014) and Middleware Management (Packt, 2009).
Read more about Debu Panda

author image
Phil Bates

Phil Bates is a Senior Analytics Specialist Solutions Architect at AWS. He has more than 25 years of experience implementing large-scale data warehouse solutions. He is passionate about helping customers through their cloud journey and leveraging the power of ML within their data warehouse.
Read more about Phil Bates

author image
Bhanu Pittampally

Bhanu Pittampally is Analytics Specialist Solutions Architect at Amazon Web Services. His background is in data and analytics and is in the field for over 16 years. He currently lives in Frisco, TX with his wife Kavitha and daughters Vibha and Medha.
Read more about Bhanu Pittampally

author image
Sumeet Joshi

Sumeet Joshi is an Analytics Specialist Solutions Architect based out of New York. He specializes in building large-scale data warehousing solutions. He has over 17 years of experience in the data warehousing and analytical space.
Read more about Sumeet Joshi