Extending Microsoft Power Apps with Power Apps Component Framework (Packt)
Monday, 08 March 2021

Power Apps Component Framework is used to extend the capabilities of model-driven and canvas apps. In this book, Danish Naglekar shows the basics as well as advanced topics using practical examples. The book covers different ways of debugging code components and guides you through the process of building code components for datasets. You'll also explore the functions and methods provided by the framework to enhance your controls using powerful sets of libraries and extensions.

<ASIN:1800564910>

 

Author: Danish Naglekar
Publisher: Packt Publishing
Date: February 2021
Pages: 318
ISBN: 978-1800564916
Print: 1800564910
Kindle: B08LLDZJC4
Audience: PowerApp developers
Level: Introductory/Intermediate
Category: Applications 

powerapp

 

  • Understand the fundamentals of Power Apps Component Framework
  • Explore the tools that make it easy to build code components
  • Build code components for both a field and a dataset
  • Debug using test harness and Fiddler
  • Implement caching techniques
  • Find out how to work with the Dataverse Web API
  • Build code components using React and Fluent UI controls
  • Discover different deployment strategies

 

For more Book Watch just click.

Book Watch is I Programmer's listing of new books and is compiled using publishers' publicity material. It is not to be read as a review where we provide an independent assessment. Some, but by no means all, of the books in Book Watch are eventually reviewed.

To have new titles included in Book Watch contact  BookWatch@i-programmer.info

Follow @bookwatchiprog on Twitter or subscribe to I Programmer's Books RSS feed for each day's new addition to Book Watch and for new reviews.

 

 

Banner
 


Learn Enough JavaScript to Be Dangerous

Author: Michael Hartl
Publisher: Addison-Wesley
Date: June 2022
Pages: 304
ISBN: 978-0137843749
Print: 0137843747
Kindle: B09RDSVV7N
Audience: Would-be JavaScript developers
Rating: 2
Reviewer: Mike James
To be dangerous? Is this a good ambition?



Foundational Python For Data Science

Author: Kennedy Behrman
Publisher: Pearson
Pages:256
ISBN: 978-0136624356
Print: 0136624359
Kindle: B095Y6G2QV
Audience: Data scientists
Rating: 4.5
Reviewer: Kay Ewbank

This book sets out to be a simple introduction to Python, specifically how to use it to work with data.


More Reviews