Skip to main content
Discounted
Angular 4 Pocket Primer

Angular 4 Pocket Primer

Previous price: $39.95 Current price: $29.95
Publication Date: July 12th, 2017
Publisher:
Mercury Learning and Information
ISBN:
9781683920359
Pages:
352
The MIT Press Bookstore
1 on hand, as of Feb 28 6:04pm
(CS:PR)
On Our Shelves Now

Description

As part of the best-selling Pocket Primer series, this book provides an overview of the major aspects and the source code to use the latest versions of Angular 4. It has coverage of the fundamental aspects of Angular that are illustrated via numerous code samples. This Pocket Primer is primarily for self-directed learners who want to learn Angular 4 programming, and it serves as a starting point for deeper exploration of its numerous applications. A companion disc (also available for downloading from the publisher) with source code and color images is included.

FEATURES
-Contains latest material on Angular 4, graphics/animation, mobile apps,
-Includes companion files with all of the source code and images from the book
-Provides coverage of the fundamental aspects of Angular4 that are illustrated via code samples

BRIEF TABLE OF CONTENTS
1. A Quick Introduction to Angular. 2. UI Controls and User Input. 3. Graphics and Animation.
4. HTTP Requests and Routing. 5. Forms, Pipes, and Services. 6. Angular and Express.
7. Flux, Redux, GraphQL, Apollo, and Relay. 8. Angular and Mobile Apps.
9. Functional Reactive Programming. 10. Miscellaneous Topics. Index.

ON THE COMPANION FILES
-Hundreds of source code samples
-All images from the text (including 4-color)

eBook Customers: Companion files are available for downloading with order number/proof of purchase by writing to the publisher at info@merclearning.com.

About the Author

Campesato Oswald: Oswald Campesato (San Francisco, CA) is an adjunct instructor at UC-Santa Clara and specializes in Deep Learning, Java, Android, TensorFlow, and NLP. He is the author/co-author of over twenty-five books including TensorFlow 2 Pocket Primer, Python 3 for Machine Learning, and the NLP Using R Pocket Primer (all Mercury Learning and Information).