Applied Machine Learning, Jason Hodson (9781493227587) — Readings Books

Become a Readings Member to make your shopping experience even easier. Sign in or sign up for free!

Become a Readings Member. Sign in or sign up for free!

Hello Readings Member! Go to the member centre to view your orders, change your details, or view your lists, or sign out.

Hello Readings Member! Go to the member centre or sign out.

We can't guarantee delivery by Christmas, but there's still time to get a great gift! Visit one of our shops or buy a digital gift card.

Applied Machine Learning
Paperback

Applied Machine Learning

$133.99
Sign in or become a Readings Member to add this title to your wishlist.

Put machine learning theory into practice with this hands-on guide! Learn about the real-world application of machine learning models by following three use cases, each with its own dataset. Get started with tools like GitHub and Anaconda, and then follow detailed instructions to prepare your data, select your model, evaluate its results, and measure its impact over time. With sample code for download, this book has everything you need to implement machine learning models for your business!

In this book, you'll learn about:

a. Data Preparation The first step is to understand your data. Learn about the different data sources, and then explore your data through visualization, descriptive statistics, and correlation analysis. Clean up your data by identifying errors, writing dummy code, and more.

b. Model Selection Choose the machine learning model that suits your needs! Follow a model decision framework and master key algorithms: regression, decision trees, random forest, gradient boosting, clustering, and ensembling.

c. Evaluation and Iteration Assess and improve the quality of your model! Apply a variety of validation metrics to your model and enhance interpretability to avoid black box code. Then iterate through feature engineering and adding or removing data.

d. Implementation and Monitoring Your model is ready to go--now see it in action! Learn how to implement the model to make predictions, monitor its performance, and measure its impact for your business.

Highlights include:

1) Real-world use cases 2) Data exploration 3) Data cleaning 4) Model decision framework 5) Regression algorithms 6) Decision trees 7) Clustering 8) Validation metrics 9) Model iteration 10) Interpretability 11) Implementation 12) Monitoring

Read More
In Shop
Out of stock
Shipping & Delivery

$9.00 standard shipping within Australia
FREE standard shipping within Australia for orders over $100.00
Express & International shipping calculated at checkout

MORE INFO

Stock availability can be subject to change without notice. We recommend calling the shop or contacting our online team to check availability of low stock items. Please see our Shopping Online page for more details.

Format
Paperback
Publisher
Rheinwerk Computing
Country
United States
Date
25 March 2026
Pages
450
ISBN
9781493227587

Put machine learning theory into practice with this hands-on guide! Learn about the real-world application of machine learning models by following three use cases, each with its own dataset. Get started with tools like GitHub and Anaconda, and then follow detailed instructions to prepare your data, select your model, evaluate its results, and measure its impact over time. With sample code for download, this book has everything you need to implement machine learning models for your business!

In this book, you'll learn about:

a. Data Preparation The first step is to understand your data. Learn about the different data sources, and then explore your data through visualization, descriptive statistics, and correlation analysis. Clean up your data by identifying errors, writing dummy code, and more.

b. Model Selection Choose the machine learning model that suits your needs! Follow a model decision framework and master key algorithms: regression, decision trees, random forest, gradient boosting, clustering, and ensembling.

c. Evaluation and Iteration Assess and improve the quality of your model! Apply a variety of validation metrics to your model and enhance interpretability to avoid black box code. Then iterate through feature engineering and adding or removing data.

d. Implementation and Monitoring Your model is ready to go--now see it in action! Learn how to implement the model to make predictions, monitor its performance, and measure its impact for your business.

Highlights include:

1) Real-world use cases 2) Data exploration 3) Data cleaning 4) Model decision framework 5) Regression algorithms 6) Decision trees 7) Clustering 8) Validation metrics 9) Model iteration 10) Interpretability 11) Implementation 12) Monitoring

Read More
Format
Paperback
Publisher
Rheinwerk Computing
Country
United States
Date
25 March 2026
Pages
450
ISBN
9781493227587