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Serverless Machine Learning with Amazon Redshift ML

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

Product type Book
Published in Aug 2023
Publisher Packt
ISBN-13 9781804619285
Pages 290 pages
Edition 1st Edition
Languages
Authors (4):
Debu Panda Debu Panda
Profile icon Debu Panda
Phil Bates Phil Bates
Profile icon Phil Bates
Bhanu Pittampally Bhanu Pittampally
Profile icon Bhanu Pittampally
Sumeet Joshi Sumeet Joshi
Profile icon Sumeet Joshi
View More author details
Toc

Table of Contents (19) Chapters close

Preface 1. Part 1:Redshift Overview: Getting Started with Redshift Serverless and an Introduction to Machine Learning
2. Chapter 1: Introduction to Amazon Redshift Serverless 3. Chapter 2: Data Loading and Analytics on Redshift Serverless 4. Chapter 3: Applying Machine Learning in Your Data Warehouse 5. Part 2:Getting Started with Redshift ML
6. Chapter 4: Leveraging Amazon Redshift ML 7. Chapter 5: Building Your First Machine Learning Model 8. Chapter 6: Building Classification Models 9. Chapter 7: Building Regression Models 10. Chapter 8: Building Unsupervised Models with K-Means Clustering 11. Part 3:Deploying Models with Redshift ML
12. Chapter 9: Deep Learning with Redshift ML 13. Chapter 10: Creating a Custom ML Model with XGBoost 14. Chapter 11: Bringing Your Own Models for Database Inference 15. Chapter 12: Time-Series Forecasting in Your Data Warehouse 16. Chapter 13: Operationalizing and Optimizing Amazon Redshift ML Models 17. Index 18. Other Books You May Enjoy

Introducing XGBoost

XGBoost gets its name because it is built on the Gradient Boosting framework. Using a tree-boosting technique provides a fast method for solving ML problems. As you have seen in previous chapters, you can specify the model type, which can help speed up model training since SageMaker Autopilot does not have to determine which model type to use.

You can learn more about XGBoost here: https://docs.aws.amazon.com/sagemaker/latest/dg/xgboost.html.

When you create a model with Redshift ML and specify XGBoost as the model type, and optionally specify AUTO OFF, this turns off SageMaker Autopilot and you have more control of model tuning. For example, you can specify the hyperparameters you wish to use. You will see an example of this in the Creating a binary classification model using XGBoost section.

You will have to perform preprocessing when you set AUTO to OFF. Carrying out the preprocessing ensures we will get the best possible model and is also necessary...

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