Course Outline

Introduction

Understanding the Need to Merge Web Development and Data Science

Overview of Shiny

Overview of R

Overview of HTML

Understanding the Benefits of Using Shiny, R, and HTML Together

Installing and Setting Up the RStudio Platform

Installing the Shiny Package

Understanding and Working with the Basics of Shiny

Understanding and Working with the Basics of Reactive Programming

Creating and Running a Shiny Web Application: User Interface Component

Creating and Running a Shiny Web Application: Server Component

Creating a Plot in Shiny

Implementing Reactive Expression for Automatic Updating of Plots in Shiny

Understanding the Benefits and Implications of Reactive Plots for Data Science Applications

Customizing the Appearance of Your Apps Using Shiny's Built-In Functions

Editing the User Interface Code in R to Perform HTML Customization

Summary and Conclusion

Requirements

  • Basic experience with R programming
  • Basic experience with HTML
 7 Hours

Number of participants



Price per participant

Testimonials (5)

Related Courses

Introduction to Data Visualization with Tidyverse and R

7 Hours

Advanced R

7 Hours

Algorithmic Trading with Python and R

14 Hours

Anomaly Detection with Python and R

14 Hours

Programming with Big Data in R

21 Hours

R Fundamentals

21 Hours

Cluster Analysis with R and SAS

14 Hours

Data and Analytics - from the ground up

42 Hours

Data Analytics With R

21 Hours

Data Mining with R

14 Hours

Deep Learning for Finance (with R)

28 Hours

Deep Learning for Banking (with R)

28 Hours

Data Mining & Machine Learning with R

14 Hours

Foundation R

7 Hours

Forecasting with R

14 Hours

Related Categories

1