Advanced Data Visualization with R
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Advanced Data Visualization with R
This course is part of Data Visualization & Dashboarding with R Specialization
Instructor: Collin Paschall
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Skills you'll gain
- Statistical Visualization
- Data Visualization
- Geospatial Information and Technology
- Data Visualization Software
- Data Manipulation
- Tidyverse (R Package)
- Plot (Graphics)
- Graphing
- Statistical Reporting
- Data Wrangling
- Spatial Analysis
- Scatter Plots
- Interactive Data Visualization
- Spatial Data Analysis
- Geospatial Mapping
Tools you'll learn
Details to know
6 assignments
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There are 3 modules in this course
Data visualization is a critical skill for anyone that routinely using quantitative data in his or her work - which is to say that data visualization is a tool that almost every worker needs today. One of the critical tools for data visualization today is the R statistical programming language. Especially in conjunction with the tidyverse software packages, R has become an extremely powerful and flexible platform for making figures, tables, and reproducible reports. However, R can be intimidating for first time users, and there are so many resources online that it can be difficult to sort through without guidance.
This course is the third in the Specialization "Data Visualization and Dashboarding in R." Learners come into this course with a foundation using R to make many basic kinds of visualization, primarily with the ggplot2 package. Accordingly, this course focuses on expanding the learners' inventory of data visualization options. Drawing on additional packages to supplement ggplot2, learners will made more variants of traditional figures, as well as venture into spatial data. The course ends make interactive and animated figures. To fill that need, this course is intended for learners who have little or no experience with R but who are looking for an introduction to this tool. By the end of this course, students will be able to import data into R, manipulate that data using tools from the popular tidyverse package, and make simple reports using R Markdown. The course is designed for students with good basic computing skills, but limited if any experience with programming.
In this module, we will work through making a number of different figures using ggplot2 and a few additional R packages. You should begin by watching the introductory videos in each lesson. Then, carefully review the readings and reference materials provided. Once you have done that, I recommend watching the videos again to check your understanding. You will take a few quizzes as you progress through the material to make sure you are keeping up.
What's included
3 videos12 readings3 assignments1 peer review
3 videosβ’Total 19 minutes
- Variations on Scatterplotsβ’7 minutes
- Variations on Line Plotsβ’4 minutes
- Flows and Circlesβ’8 minutes
12 readingsβ’Total 145 minutes
- Note on Previewing Figures in R Studioβ’5 minutes
- Adding Best Fit Linesβ’20 minutes
- Drawing Scatterplot Matricesβ’10 minutes
- Correlation Plotsβ’10 minutes
- Dot Plotsβ’20 minutes
- Shading in a line plotβ’10 minutes
- Making a stacked area graphβ’10 minutes
- Making dumbbell chartsβ’10 minutes
- Making Alluvial Diagramsβ’20 minutes
- Packed Circles Figuresβ’10 minutes
- Pie Chartsβ’10 minutes
- A Note About Peer Review Assignmentsβ’10 minutes
3 assignmentsβ’Total 15 minutes
- Scatterplot Variations Quizβ’5 minutes
- Additional Temporal Figures Quizβ’5 minutes
- Flows and Circles Quizβ’5 minutes
1 peer reviewβ’Total 120 minutes
- Advanced ggplot Figuresβ’120 minutes
In this module, we go through an introduction for making spatial figures (maps) in R. You should begin by watching the introductory videos in each lesson. Then, carefully review the readings and reference materials provided. Once you have done that, I recommend watching the videos again to check your understanding. You will take a few quizzes as you progress through the material to make sure you are keeping up.
What's included
4 videos4 readings1 assignment1 peer review
4 videosβ’Total 22 minutes
- Introduction to Mapsβ’7 minutes
- Choroplethsβ’3 minutes
- Bubble Mapsβ’4 minutes
- Simple Featuresβ’8 minutes
4 readingsβ’Total 80 minutes
- Wickham Chapter 7β’30 minutes
- R Graph Gallery for Mapsβ’20 minutes
- Note on sf library and albersusaβ’10 minutes
- Simple Features for R Documentationβ’20 minutes
1 assignmentβ’Total 10 minutes
- Spatial Figures Quizβ’10 minutes
1 peer reviewβ’Total 45 minutes
- Spatial Figures Peer Reviewβ’45 minutes
In this module, we will work on animating figures and making them interactive. You should begin by watching the introductory videos in each lesson. Then, carefully review the readings and reference materials provided. Once you have done that, I recommend watching the videos again to check your understanding. You will take a few quizzes as you progress through the material to make sure you are keeping up.
What's included
5 videos4 readings2 assignments1 peer review
5 videosβ’Total 21 minutes
- gganimate Part 1β’5 minutes
- gganimate Part 2β’7 minutes
- gganimate Part 3β’3 minutes
- ggplotly Part 1β’4 minutes
- ggplotly Part 2β’3 minutes
4 readingsβ’Total 85 minutes
- Note: Known issue with gganimateβ’5 minutes
- gganimateβ’45 minutes
- Making ggplot figures interactive with ggplotly()β’20 minutes
- Animating ggplot figures with ggplotlyβ’15 minutes
2 assignmentsβ’Total 10 minutes
- gganimate Quizβ’5 minutes
- ggplotly Quizβ’5 minutes
1 peer reviewβ’Total 60 minutes
- Animations and Interactivity Peer Reviewβ’60 minutes
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Reviewed on Apr 20, 2021
It's a very good course and you'll learn a lot of topics related to advanced visualizations.
Reviewed on Aug 15, 2021
My skills have vastly improved in R with this specialization. I've utilized on multiple occasion the tasks here in my professional job.
Reviewed on Jul 15, 2021
Tβhis course help me in doing my assignments with beautiful colors of graphs etc. I love it.
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When you enroll in the course, you get access to all of the courses in the Specialization, and you earn a certificate when you complete the work. Your electronic Certificate will be added to your Accomplishments page - from there, you can print your Certificate or add it to your LinkedIn profile.
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