Serverless Machine Learning with Amazon Redshift: Create, train, and deploy machine learning models using familiar SQL commands


Serverless Machine Learning with Amazon Redshift: Create, train, and deploy machine learning models using familiar SQL commands
by 作者: Debabrata Panda (Author), Phil Bates (Author), Bhanu Pittampally (Author), Sumeet Joshi (Author)
Publisher Finelybook 出版社: Packt Publishing - ebooks Account (September 11, 2023)
Language 语言: English
pages 页数: 384 pages
ISBN-10 书号: 1804619280
ISBN-13 书号: 9781804619285


Book Description
Supercharge and deploy Amazon Redshift Serverless, train and deploy Machine learning Models using Amazon Redshift ML and run inference queries at scale.

Key Features
Learn to build Multi-Class Classification Models
Create a model, validate a model and draw conclusion from K-means clustering
Learn to create a SageMaker endpoint and use that to create a Redshift ML Model for remote inference

Book Description
Amazon Redshift Serverless enables organizations to run PetaBytes scales Cloud data warehouses in minutes and in most cost effective way Developers, data analysts and BI analysts can deploy cloud data warehouses and use easy-to-use tools to train models and run predictions. Developers working with Amazon Redshift data warehouses will be able to put their SQL knowledge to work with this practical guide to train and deploy Machine Learning Models. The book provides a hands-on approach to implementation and associated methodologies that will have you up-and-running, and productive in no time. Complete with step-by-step explanations of essential concepts, practical examples and self-assessment questions, you will begin Deploying and Using Amazon Redshift Serverless and then dive into learning and deploying various types of Machine learning projects using familiar SQL Code. You will learn how to configure and deploy Amazon Redshift Serverless, understand the foundations of data analytics and types of data machine learning. Then you will deep dive into Redshift ML By the end of this book, you will be able to configure and deploy Amazon Redshift Serverless, train and deploy Machine learning Models using Amazon Redshift ML and run inference queries at scale.

What you will learn
Learn how to implement an end-to-end serverless architecture for ingestion, analytics and machine learning using Redshift Serverless and Redshift ML
Learn how to create supervised and unsupervised models, and various techniques to influence your model
Learn how to run inference queries at scale in Redshift to solve a variety of business problems using models created with Redshift ML or natively in Amazon SageMaker
Learn how to optimize your Redshift data warehouse for extreme performance
Learn how to ensure you are using proper security guidelines with Redshift ML
Learn how to use model explainability in Amazon Redshift ML, to help understand how each attribute in your training data contributes to the predicted result.

Who this book is for
Data Scientists and Machine Learning developers who work with Amazon Redshift and want to explore it's machine learning capabilities will find this definitive guide helpful. Basic understanding of machine learning techniques and working knowledge of Amazon Redshift is needed to get the best from this book.

Table of contents
1.Introduction to Redshift Serverless
2.Data Loading and analytics on Redshift Serverless
3.Applying Machine Learning in Your Warehouse
4.Redshift ML Overview
5.Building your first model
6.Building classification models
7.Building Regression models
8.Building Unsupervised Models with K-Means Clustering
9.Redshift Auto ON ys Auto OFF
10.Creating models with XGBoost
11.Bring Your Own Models for in database inference
12.Bring Your Own Models for in remote endpoint invocation
13.Performance Considerations
14.Personalizing/Operationalizing
Amazon page

下载地址 Download
打赏
未经允许不得转载:finelybook » Serverless Machine Learning with Amazon Redshift: Create, train, and deploy machine learning models using familiar SQL commands

相关推荐

  • 暂无文章

觉得文章有用就打赏一下

您的打赏,我们将继续给力更多优质内容

支付宝扫一扫打赏

微信扫一扫打赏