R: Complete Data Visualization Solutions
R: Complete Data Visualization Solutions, available at $44.99, has an average rating of 3.9, with 71 lectures, 10 quizzes, based on 27 reviews, and has 248 subscribers.
You will learn about Create professional data visualizations and interactive reports Deepen your knowledge by adding bar-charts, scatterplots, and time series plots using ggplot2 Enhance the user experience using dynamic visualisation Test your coding limits by creating stunning interactive plots for the web Gain insight into how data scientists visualize data using some of the most popular R packages Understand how to apply useful data visualization techniques in R for real-world applications Build an assortment of interactive maps, reports, and more Make your visualizations interactive using R This course is ideal for individuals who are This Integrated Course is useful whether someone is a hobbyist, analyst, an aspiring or professional data scientist, or even learning data visualization for the first time. Those already familiar with the basics of R, but want to learn to utilize the full power of R’s data visualization capabilities will also find this Integrated Course a match for their needs. It is particularly useful for This Integrated Course is useful whether someone is a hobbyist, analyst, an aspiring or professional data scientist, or even learning data visualization for the first time. Those already familiar with the basics of R, but want to learn to utilize the full power of R’s data visualization capabilities will also find this Integrated Course a match for their needs.
Enroll now: R: Complete Data Visualization Solutions
Summary
Title: R: Complete Data Visualization Solutions
Price: $44.99
Average Rating: 3.9
Number of Lectures: 71
Number of Quizzes: 10
Number of Published Lectures: 71
Number of Published Quizzes: 10
Number of Curriculum Items: 81
Number of Published Curriculum Objects: 81
Original Price: $199.99
Quality Status: approved
Status: Live
What You Will Learn
- Create professional data visualizations and interactive reports
- Deepen your knowledge by adding bar-charts, scatterplots, and time series plots using ggplot2
- Enhance the user experience using dynamic visualisation
- Test your coding limits by creating stunning interactive plots for the web
- Gain insight into how data scientists visualize data using some of the most popular R packages
- Understand how to apply useful data visualization techniques in R for real-world applications
- Build an assortment of interactive maps, reports, and more
- Make your visualizations interactive using R
Who Should Attend
- This Integrated Course is useful whether someone is a hobbyist, analyst, an aspiring or professional data scientist, or even learning data visualization for the first time. Those already familiar with the basics of R, but want to learn to utilize the full power of R’s data visualization capabilities will also find this Integrated Course a match for their needs.
Target Audiences
- This Integrated Course is useful whether someone is a hobbyist, analyst, an aspiring or professional data scientist, or even learning data visualization for the first time. Those already familiar with the basics of R, but want to learn to utilize the full power of R’s data visualization capabilities will also find this Integrated Course a match for their needs.
If you are looking for that one course that includes everything about data visualization with R, this is it. Let’s get on this data visualization journey together.
This course is a blend of text, videos, code examples, and assessments, which together makes your learning journey all the more exciting and truly rewarding. It includes sections that form a sequential flow of concepts covering a focused learning path presented in a modular manner. This helps you learn a range of topics at your own speed and also move towards your goal of learning data visualization with R.
The R language is a powerful open source functional programming language. R is becoming the go-to tool for data scientists and analysts. Its growing popularity is due to its open source nature and extensive development community. R is increasingly being used by experienced data science professionals instead of Python and it will remain the top choice for data scientists in 2017. Large companies continue to use R for their data science needs and this course will make you ready for when these opportunities come your way.
This course has been prepared using extensive research and curation skills. Each section adds to the skills learned and helps us to achieve mastery of data visualization. Every section is modular and can be used as a standalone resource. This course covers different visualization techniques in R and assorted R graphs, plots, maps, and reports. It is a practical and interactive way to learn about R graphics, all of which are discussed in an easy-to-grasp manner. This course has been designed to include topics on every possible data visualization requirement from a data scientist and it does so in a step-by-step and practical manner.
We will start by focusing on “ggplot2” and show you how to create advanced figures for data exploration. Then, we will move on to customizing the plots and then cover interactive plots. We will then cover time series plots, heat maps, dendograms. Following that, we will look at maps and how to make them interactive. We will then turn our attention to building an interactive report using the “ggvis” package and publishing reports and plots using Shiny. Finally, we will cover data in higher dimensions which will complete our extensive tour of the data visualization capabilities possible using R.
This course has been authored by some of the best in their fields:
Dr. Fabio Veronesi
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 has specialized in the application of spatial statistical techniques to environmental data.
Atmajitsinh Gohil
Atmajitsinh Gohil works as a senior consultant at a consultancy firm in New York City. 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.
Yu-Wei, Chiu (David Chiu)
Yu-Wei, Chiu (David Chiu) is the founder of LargitData, a start-up company that mainly focuses on providing Big Data and machine learning products. In addition to being a start-up entrepreneur and data scientist, he specializes in using Spark and Hadoop to process big data and apply data mining techniques for data analysis. Yu-Wei is also a professional lecturer and has delivered lectures on big data and machine learning in R and Python, and given tech talks at a variety of conferences.
Course Curriculum
Chapter 1: Introducing Plotting in R
Lecture 1: Introduction
Lecture 2: Preview of R plotting functionalities
Lecture 3: Loading tables and CSV files
Lecture 4: Loading Excel files
Lecture 5: Exporting data
Chapter 2: Visualizing Data with ggplot2
Lecture 1: Creating basic plots with ggplot2
Lecture 2: Changing aesthetics mapping
Lecture 3: Introducing geometric objects
Lecture 4: Performing transformations
Lecture 5: Adjusting scales
Lecture 6: Faceting
Lecture 7: Adjusting themes
Lecture 8: Combining plots
Chapter 3: Scientific Plotting in ggplot2
Lecture 1: Creating histograms
Lecture 2: The importance of box plots
Lecture 3: Plotting bar charts
Lecture 4: Plotting multiple variables – scatterplots
Lecture 5: Dealing with time – time-series plots
Lecture 6: Handling uncertainty
Chapter 4: Customizing Plots
Lecture 1: Changing the theme
Lecture 2: Changing colors
Lecture 3: Modifying axis and labels
Lecture 4: Adding supplementary elements
Lecture 5: Adding text inside and outside of the plots
Lecture 6: Multi-plots
Chapter 5: Interactive Plots in rCharts
Lecture 1: Getting started with interactive plotting
Lecture 2: Creating interactive histograms and box plots
Lecture 3: Plotting interactive bar charts
Lecture 4: Creating interactive scatterplots
Lecture 5: Developing interactive time-series plots and saving
Chapter 6: Heat Maps and Dendrograms
Lecture 1: Constructing a simple dendrogram and modifying it with colors and labels
Lecture 2: Creating a heat map and modifying it with customized colors
Lecture 3: Generating an integrated dendrogram and a heat map
Lecture 4: Creating a three-dimensional heat map and a stereo map
Lecture 5: Constructing a tree map in R
Chapter 7: Maps
Lecture 1: Introducing regional maps
Lecture 2: Introducing choropleth maps
Lecture 3: A guide to contour maps
Lecture 4: Constructing maps with bubbles
Lecture 5: Integrating text with maps
Lecture 6: Introducing shapefiles
Lecture 7: Creating cartograms
Chapter 8: Interactive Maps
Lecture 1: Understanding interactive maps
Lecture 2: Plotting vector data on Google Maps
Lecture 3: Adding layers
Lecture 4: Plotting raster data on Google Maps
Lecture 5: Using Leaflet to plot on OpenStreetMaps
Chapter 9: Creating Global Economic Maps with Open Data
Lecture 1: Data available from the World Bank
Lecture 2: Importing Data from the World Bank
Lecture 3: Adding Geocoding Information
Lecture 4: Additional tricks
Chapter 10: Making Interactive Reports
Lecture 1: Creating R Markdown reports
Lecture 2: Embedding R code chunks
Lecture 3: Creating interactive graphics with ggvis
Lecture 4: Understanding the basic syntax and grammar of ggvis
Lecture 5: Controlling axes and legends and using scales
Lecture 6: Adding interactivity to a ggvis plot
Lecture 7: Creating an R Shiny document
Lecture 8: Publishing an R Shiny report
Chapter 11: Creating a Website with Shiny
Lecture 1: Getting started with Shiny
Lecture 2: Creating a simple website
Lecture 3: File input
Lecture 4: Conditional panels – UI
Lecture 5: Conditional panels – servers
Lecture 6: Deploying the site
Chapter 12: Data in Higher Dimensions
Lecture 1: Constructing a sunflower plot and a hexbin plot
Lecture 2: Generating interactive calendar maps
Lecture 3: Creating Chernoff faces in R
Lecture 4: Constructing a coxcomb plot in R
Lecture 5: Constructing network plots and radial plots
Lecture 6: Generating a very basic pyramid plot
Instructors
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Packt Publishing
Tech Knowledge in Motion
Rating Distribution
- 1 stars: 1 votes
- 2 stars: 4 votes
- 3 stars: 7 votes
- 4 stars: 6 votes
- 5 stars: 9 votes
Frequently Asked Questions
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Can I take my courses with me wherever I go?
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