Data Scaling and Normalization: A Comprehensive Guide to Enhancing Data Quality and Model Performance

"Data Scaling and Normalization: A Comprehensive Guide to Enhancing Data Quality and Model Performance" offers an in-depth exploration of the crucial techniques used in preprocessing data to enhance the quality of machine learning models. Designed for data scientists, machine learning engineers, and analysts, this book provides a clear and comprehensive understanding of how scaling and normalization techniques impact model accuracy, efficiency, and interpretability.

Inside, you'll find detailed explanations of the core concepts of data scaling and normalization, including Min-Max scaling, Z-score normalization, robust scaling, and more. The book covers when and how to apply these techniques to various types of data, from numerical to categorical, and explores their role in improving model convergence, reducing biases, and enhancing generalization.

Key topics include:

  • The importance of data scaling and normalization in preparing data for machine learning models
  • Practical applications of scaling and normalization methods across different machine learning algorithms
  • Real-world examples and case studies showcasing the impact on model performance
  • Advanced techniques and considerations for scaling complex datasets
  • Best practices for ensuring data quality through preprocessing

With step-by-step guidance, code examples, and expert insights, this book is an essential resource for anyone looking to master data preprocessing and take their machine learning models to the next level.

This comprehensive guide will help you understand the nuances of scaling and normalization and how they directly affect the success of your machine learning projects.

1146753901
Data Scaling and Normalization: A Comprehensive Guide to Enhancing Data Quality and Model Performance

"Data Scaling and Normalization: A Comprehensive Guide to Enhancing Data Quality and Model Performance" offers an in-depth exploration of the crucial techniques used in preprocessing data to enhance the quality of machine learning models. Designed for data scientists, machine learning engineers, and analysts, this book provides a clear and comprehensive understanding of how scaling and normalization techniques impact model accuracy, efficiency, and interpretability.

Inside, you'll find detailed explanations of the core concepts of data scaling and normalization, including Min-Max scaling, Z-score normalization, robust scaling, and more. The book covers when and how to apply these techniques to various types of data, from numerical to categorical, and explores their role in improving model convergence, reducing biases, and enhancing generalization.

Key topics include:

  • The importance of data scaling and normalization in preparing data for machine learning models
  • Practical applications of scaling and normalization methods across different machine learning algorithms
  • Real-world examples and case studies showcasing the impact on model performance
  • Advanced techniques and considerations for scaling complex datasets
  • Best practices for ensuring data quality through preprocessing

With step-by-step guidance, code examples, and expert insights, this book is an essential resource for anyone looking to master data preprocessing and take their machine learning models to the next level.

This comprehensive guide will help you understand the nuances of scaling and normalization and how they directly affect the success of your machine learning projects.

4.95 In Stock
Data Scaling and Normalization: A Comprehensive Guide to Enhancing Data Quality and Model Performance

Data Scaling and Normalization: A Comprehensive Guide to Enhancing Data Quality and Model Performance

by Chuck Sherman

Narrated by Ray Collins

Unabridged — 3 hours, 25 minutes

Data Scaling and Normalization: A Comprehensive Guide to Enhancing Data Quality and Model Performance

Data Scaling and Normalization: A Comprehensive Guide to Enhancing Data Quality and Model Performance

by Chuck Sherman

Narrated by Ray Collins

Unabridged — 3 hours, 25 minutes

Audiobook (Digital)

$4.95
FREE With a B&N Audiobooks Subscription | Cancel Anytime
$0.00

Free with a B&N Audiobooks Subscription | Cancel Anytime

START FREE TRIAL

Already Subscribed? 

Sign in to Your BN.com Account


Listen on the free Barnes & Noble NOOK app


Get an extra 15% off all audiobooks in June to celebrate Audiobook Month! This discount will be reflected at checkout in your cart. Some exclusions apply. See details here.

Related collections and offers

FREE

with a B&N Audiobooks Subscription

Or Pay $4.95

Overview

"Data Scaling and Normalization: A Comprehensive Guide to Enhancing Data Quality and Model Performance" offers an in-depth exploration of the crucial techniques used in preprocessing data to enhance the quality of machine learning models. Designed for data scientists, machine learning engineers, and analysts, this book provides a clear and comprehensive understanding of how scaling and normalization techniques impact model accuracy, efficiency, and interpretability.

Inside, you'll find detailed explanations of the core concepts of data scaling and normalization, including Min-Max scaling, Z-score normalization, robust scaling, and more. The book covers when and how to apply these techniques to various types of data, from numerical to categorical, and explores their role in improving model convergence, reducing biases, and enhancing generalization.

Key topics include:

  • The importance of data scaling and normalization in preparing data for machine learning models
  • Practical applications of scaling and normalization methods across different machine learning algorithms
  • Real-world examples and case studies showcasing the impact on model performance
  • Advanced techniques and considerations for scaling complex datasets
  • Best practices for ensuring data quality through preprocessing

With step-by-step guidance, code examples, and expert insights, this book is an essential resource for anyone looking to master data preprocessing and take their machine learning models to the next level.

This comprehensive guide will help you understand the nuances of scaling and normalization and how they directly affect the success of your machine learning projects.


Product Details

BN ID: 2940194551903
Publisher: Chuck Sherman
Publication date: 12/25/2024
Edition description: Unabridged
From the B&N Reads Blog

Customer Reviews