R: Data Visualization with R – A Complete Guide!: 3-in-1
R: Data Visualization with R – A Complete Guide!: 3-in-1, available at $19.99, has an average rating of 4.05, with 104 lectures, 2 quizzes, based on 20 reviews, and has 153 subscribers.
You will learn about Deepen your knowledge by adding bar-charts, scatterplots, and time series plots using ggplot2. Create a fully-featured website using Shiny with real-time features such as adding and controlling functionalities. Create simple and quick visualizations using the basic graphics tools in R. Introduce users to basic R functions and data manipulation techniques while creating meaningful visualizations. Add elements, text, animation, and colors to your plot to make sense of data. Perform predictive modeling and create animated applications. This course is ideal for individuals who are Data Analysts, Data Scientists or Data Journalist, who wants to learn about Data Visualization and represent complex sets of data in an impressive way. It is particularly useful for Data Analysts, Data Scientists or Data Journalist, who wants to learn about Data Visualization and represent complex sets of data in an impressive way.
Enroll now: R: Data Visualization with R – A Complete Guide!: 3-in-1
Summary
Title: R: Data Visualization with R – A Complete Guide!: 3-in-1
Price: $19.99
Average Rating: 4.05
Number of Lectures: 104
Number of Quizzes: 2
Number of Published Lectures: 104
Number of Published Quizzes: 1
Number of Curriculum Items: 106
Number of Published Curriculum Objects: 105
Original Price: $199.99
Quality Status: approved
Status: Live
What You Will Learn
- Deepen your knowledge by adding bar-charts, scatterplots, and time series plots using ggplot2.
- Create a fully-featured website using Shiny with real-time features such as adding and controlling functionalities.
- Create simple and quick visualizations using the basic graphics tools in R.
- Introduce users to basic R functions and data manipulation techniques while creating meaningful visualizations.
- Add elements, text, animation, and colors to your plot to make sense of data.
- Perform predictive modeling and create animated applications.
Who Should Attend
- Data Analysts, Data Scientists or Data Journalist, who wants to learn about Data Visualization and represent complex sets of data in an impressive way.
Target Audiences
- Data Analysts, Data Scientists or Data Journalist, who wants to learn about Data Visualization and represent complex sets of data in an impressive way.
Effective visualization helps you get better insights from your data, make better and more informed business decisions! R is one of the most widely used open source languages for data and graph analysis. It is platform-independent and allows users to load various packages as well as develop their own packages to interpret data better. R gives aspiring analysts and data scientists the ability to represent complex sets of data in an impressive way. So, if you’re a data science professional and want to learn about the powerful data visualization techniques of R, then go for this Learning Path.
This comprehensive 3-in-1 course follows a practical approach, where each recipe presents unique functions of plots, charts, and maps as well as visualization of 2D and 3D interactive plots in a step-by-step manner! You’ll begin with generating various plots in R using the basic R plotting techniques. Utilize R packages to add context and meaning to your data. Finally, you’ll design interactive visualizations and integrate them on your website or blog!
By the end of the course, you’ll master the visualization capabilities of R to build interactive graphs, plots, and Pie charts as well as visualize 2D and 3D interactive plots.
Contents and Overview
This training program includes 3 complete courses, carefully chosen to give you the most comprehensive training possible.
The first course, Learning R for Data Visualization, covers getting to grips with R’s most popular packages and functions to create interactive visualizations for the web. We start by importing data in R from popular formats such as CSV and Excel tables. Then you will learn how to create basic plots such as histograms, scatterplots, and more, with the default options, which guarantees stunning results. In the final part of the course, the Shiny package will be extensively discussed. This allows you to create fully-featured web pages directly from the R console, and Shiny also allows it to be uploaded to a live website where your peers and colleagues can browse it and you can share your work. You will see how to build a complete website to import and plot data, plus we will present a method to upload it for everybody to use. Finally, you will revise all the concepts you’ve learned while having some fun creating a complete website.
By the end of the course, you will have an armor full of different visualization techniques, with the capacity to apply these abilities to real-world data sets.
The second course, R Data Visualization – Basic Plots, Maps, and Pie Charts, covers mastering the visualization capabilities of R to build interactive graphs, plots, and Pie. We start – off with the basics of R plots and an introduction to heat maps and customizing them. After this, we gradually take you through creating interactive maps using the googleVis package. Finally, we generate choropleth maps and contouring maps, bubble plots, and pie charts.
The third course, R Data Visualization – Word Clouds and 3D Plots, covers advanced visualization techniques in R to build word clouds, 3D plots, and more. We start off with the basics of R plots and an introduction to heat maps and customizing them. After this, we gradually take you through creating interactive maps using the googleVis package. Finally, we generate choropleth maps and contouring maps, bubble plots, and pie charts.
By the end of the course, you’ll master the visualization capabilities of R to build interactive graphs, plots, and Pie charts as well as visualize 2D and 3D interactive plots.
About the Authors
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Fabio Veronesiobtained a Ph.D. in digital soil mapping from Cranfield University and then moved to ETH Zurich, where he has been working for the past three years as a postdoc. In his career, Dr. Veronesi worked at several topics related to environmental research: digital soil mapping, cartography, and shaded relief, renewable energy and transmission line siting. During this time Dr. Veronesi specialized in the application of spatial statistical techniques to environmental data.
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Atmajit Singh Gohilworks as a senior consultant at a consultancy firm in New York City. After graduating, he worked in the financial industry as a Fixed Income Analyst. He writes about data manipulation, data exploration, visualization, and basic R plotting functions on his blog. He has a master’s degree in financial economics from the State University of New York (SUNY), Buffalo. He also graduated with a Master of Arts degree in economics from the University of Pune, India. He loves to read blogs on data visualization and loves to go out on hikes in his free time.
Course Curriculum
Chapter 1: Learning R for Data Visualization
Lecture 1: The Course Overview
Lecture 2: Preview of R Plotting Functionalities
Lecture 3: Introducing the Dataset
Lecture 4: Loading Tables and CSV Files
Lecture 5: Loading Excel Files
Lecture 6: Exporting Data
Lecture 7: Creating Histograms
Lecture 8: The Importance of Box Plots
Lecture 9: Plotting Bar Charts
Lecture 10: Plotting Multiple Variables – Scatterplots
Lecture 11: Dealing with Time – Time-series Plots
Lecture 12: Handling Uncertainty
Lecture 13: Changing Theme
Lecture 14: Changing Colors
Lecture 15: Modifying Axis and Labels
Lecture 16: Adding Supplementary Elements
Lecture 17: Adding Text Inside and Outside of the Plot
Lecture 18: Multi-plots
Lecture 19: Exporting Plots as Images
Lecture 20: Adjusting the Page Size
Lecture 21: Getting Started with Interactive Plotting
Lecture 22: Creating Interactive Histograms and Box Plots
Lecture 23: Plotting Interactive Bar Charts
Lecture 24: Creating Interactive Scatterplots
Lecture 25: Developing Interactive Time-series Plots and Saving
Lecture 26: Getting Started with Shiny
Lecture 27: Creating a Simple Website
Lecture 28: File Input
Lecture 29: Conditional Panels – UI
Lecture 30: Conditional Panels – Servers
Lecture 31: Deploying the Site
Chapter 2: R Data Visualization – Basic Plots, Maps, and Pie Charts
Lecture 1: The Course Overview
Lecture 2: Installing Packages and Getting Help in R
Lecture 3: Data Types and Special Values in R
Lecture 4: Matrices and Editing a Matrix in R
Lecture 5: Data Frames and Editing a Data Frame in R
Lecture 6: Importing and Exporting Data in R
Lecture 7: Writing a Function and if else Statement in R
Lecture 8: Basic and Nested Loops in R
Lecture 9: The apply, lapply, sapply, and tapply Functions
Lecture 10: Using and Saving par to Beautify a Plot in R
Lecture 11: Introducing a Scatter Plot with Texts, Labels, and Lines
Lecture 12: Connecting Points and Generating an Interactive Scatter Plot
Lecture 13: A Simple and Interactive Bar Plot
Lecture 14: Introduction to Line Plot and Its Effective Story
Lecture 15: Generating an Interactive Gantt/Timeline Chart in R
Lecture 16: Merging Histograms
Lecture 17: Making an Interactive Bubble Plot
Lecture 18: Constructing a Waterfall Plot in R
Lecture 19: Constructing Simple Dendrogram
Lecture 20: Creating Dendrograms with Colors and Labels
Lecture 21: Creating Heat Maps
Lecture 22: Generating a Heat Map with Customized Colors
Lecture 23: Generating an Integrated Dendrogram and a Heat Map
Lecture 24: Creating a Three-Dimensional Heat Map and Stereo Map
Lecture 25: Constructing A Tree Map in R
Lecture 26: Introducing Regional Maps
Lecture 27: Introducing Choropleth Maps
Lecture 28: A Guide to Contour Maps
Lecture 29: Constructing Maps with bubbles
Lecture 30: Integrating Text with Maps
Lecture 31: Introducing Shapefiles
Lecture 32: Creating Cartograms
Lecture 33: Generating a Simple Pie Chart
Lecture 34: Constructing Pie Charts with Labels
Lecture 35: Creating Donut Plots and Interactive Plots
Lecture 36: Generating a Slope Chart
Lecture 37: Constructing a Fan Plot
Chapter 3: R Data Visualization – Word Clouds and 3D Plots
Lecture 1: The Course Overview
Lecture 2: Constructing a 3D Scatter Plot
Lecture 3: Generating a 3D Scatter Plot with Text
Lecture 4: A Simple 3D Pie Chart
Lecture 5: A Simple 3D Histogram
Lecture 6: Generating a 3D Contour Plot
Lecture 7: Integrating a 3D Contour and a Surface Plot
Lecture 8: Animating a 3D Surface Plot
Lecture 9: Constructing a Sunflower Plot
Lecture 10: Creating a Hexbin Plot
Lecture 11: Generating Interactive Calendar Maps
Lecture 12: Creating Chernoff Faces in R
Lecture 13: Constructing a Coxcomb Plot in R
Lecture 14: Constructing Network Plots
Lecture 15: Constructing a Radial Plot
Lecture 16: Generating a Very Basic Pyramid Plot
Lecture 17: Generating a Candlestick Plot
Lecture 18: Generating Interactive Candlestick Plots
Lecture 19: Generating a Decomposed Time Series
Lecture 20: Plotting a Regression Line
Lecture 21: Constructing a Box and Whiskers Plot
Lecture 22: Generating a Violin Plot
Lecture 23: Generating a Quantile-Quantile Plot (QQ Plot)
Lecture 24: Generating a Density Plot
Lecture 25: Generating a Simple Correlation Plot
Lecture 26: Generating a Word Cloud
Lecture 27: Constructing a Word Cloud from a Document
Lecture 28: Generating a Comparison Cloud
Instructors
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Packt Publishing
Tech Knowledge in Motion
Rating Distribution
- 1 stars: 0 votes
- 2 stars: 1 votes
- 3 stars: 5 votes
- 4 stars: 6 votes
- 5 stars: 8 votes
Frequently Asked Questions
How long do I have access to the course materials?
You can view and review the lecture materials indefinitely, like an on-demand channel.
Can I take my courses with me wherever I go?
Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!
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