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Advance your data visualization skills using r packages. Master ggplot2, lattice, interactive plots with ggvis package What you'll learn Visualize real world datasets in the professional industries such as finance, health, insurance, marketing, sales How to visualize data with ggplot2 package Statistical Data visualizations with qplot function Statistical Data visualizations with ggplot function Master themes in R using ggplot2 package Master Faceting with facet_wrap and facet_grid Master scaling and guides R using scaling functions from ggplot2 package Use plot function in R to create histograms, box and whisker plots, scatterplots, pie charts, barplots Intermediate Data Visualization with the lattice package How to use lattice package to create grouped scatterplots, barcharts Master panel functions and high level functions in lattice package How to switch between Graphics devices in R Learn how to use ggvis package How to create interactive plots with ggvis package from shiny Create interactive scatterplots, histograms, boxplots with input slider from ggvis package Data Analysis with dplyr package Data Analysis with tidyr package Data Analysis with reshape package Factors in R and regular expressions Master 3D Scatterplots in R Use ggplot2 to visualize real world datasets Use lattice package to visualize real world datasets Create interactive plots from real world datasets with ggvis package Requirements No R programming experience everything is explained Internet connection for installing R 4.2 and R Studio Eager to learn data visualization with R Not being in a rush to master everything at once! Description Learn data visualizations by projects that use real world datasets in the professional industries such as finance, marketing, sales etc.This course will help you master data visualizations techniques and create graphics in R using packages such as ggplot2, lattice package and ggvis package from shiny for adding interactivity into you R graphics.Real world datasets are used for projects. So, not only will you master the graphics in r, you will also be able to interpret your graphics and make an impressive plots. All done by yourself. Why learn data visualization with R?Data Visualization helps people see, interact with, and better understand the data. Whether simple or complex, the right visualization can bring everyone on the same page, regardless of their level of expertise.Almost all the professional industries benefit from making data more understandable. Every STEM field benefits from data analysts that are able to understand data—and so do fields in government, finance, marketing, history, consumer goods, service industries, education, sports, and so on.As the “age of Big Data” and "Artificial Intelligence (AI)" kicks into high gear, visualization is an increasingly key tool to make sense of the trillions of rows of data generated every day. Data visualization helps to tell stories by curating data into a form easier to understand, highlighting the trends and outliers. A good visualization tells a story, removing the noise from data and highlighting useful information. With R tools such as ggplot2 , lattice package, we can create visually appealing graphics and data visualizations by writing few lines of code. For this purpose R is widely used and it is easy to use and understand when it comes to data visualizations, good appealing graphics, data analysis (dplyr) etc. Through R, we can easily customize our data visualization by chag axes, fonts, legends, annotations, and labels.In this data visualization course you will learn the following:R for bners: Vectors, Matrices, Arrays, Data frames and ListsFactors in R: Create factors, understand factor levelsregular expressions in r: grep and gsub functionsreshape package for data analysis: melt and casting functionstidyr package for data analysis: gather and spread functionsdplyr package for data analysis: merge functions, filter, select, sort, arrange, pipe operator etcAfter Mastering R Programming for bners and Data Analysis, you will b creating graphics with r and visualizations. Here is the summary overview of what you will learn:Graphics in R: Bner LevelGraphic Devices & ColorsThe Plot FunctionLow Level FunctionsData Visualization in R: Bner LevelBarplots & Pie ChartsHistograms in rBox and Whisker PlotsScatterplotsIntermediate Data Visualization & Graphics in RWhat is ggplot2?qplot functionggplot functionData Visualization with Lattice PackageLattice GraphicsHigh Level Functions in lattice packageLattice Package panel functionsGoing further with data visualizationHow to Handle and switch between graphicsControlling layout with layout functionggplot2 scales and guides: scale_x_continous, scale_y_continous, scale_color_manual,scale_fill_manualscale_shape_manual,scale_shape_manual,scale_alpha_continousguide_legend, gudei_colorbarggplot2 faceting: facet_wrap vs facet_gridggplot2 themesggvis package: scatterplot with layers, interactive plots with input_slider, add_legend, add_axis etcAfter completing the course you will receive the electronic certificate that you can add on your resume or CV and LinkedIn profile from Udemy. The access to this course is also life, hence you will learn at your own pace. The course is also updated regularly to ensure it meets all the students demands and students enrolled are learning latest version of r and r studioI am certain with all the material covered in this course you will be able to advance you Data visualization and Data Analysis skills! See you in the first lecture! Overview Section 1: Introduction Lecture 1 Introduction to the Course Section 2: R and R Studio set up Lecture 2 R 4.2.2 and R Studio and installation Lecture 3 R studio walkthrough Section 3: R for Bners: Data Structures Crash Lecture 4 Creating vectors with c function Lecture 5 Creating named vectors with names function Lecture 6 Vectors: Attributes Lecture 7 Matrices: Creating matrices with rbind and cbind Lecture 8 Matrices: Creating matrices with matrix function Lecture 9 Matrices: creating matrices with names Lecture 10 Arrays: Creating Arrays in r Lecture 11 Arrays Attributes & subsets Lecture 12 Creating lists Lecture 13 subscripting lists: subsets of a list Lecture 14 Referencing elements in a list Lecture 15 Appending elements in a list Lecture 16 Creating dataframe Lecture 17 Querying data frames attributes Lecture 18 Selecting columns in a data frame Section 4: Introduction to Factors in R Lecture 19 Creating factors in R Lecture 20 Factors with factor levels Lecture 21 grep and gsub functions Section 5: Importing data into R with tidyverse package Lecture 22 Importing a csv file in r Lecture 23 Importing an excel file in r with tidyverse package Section 6: Data Analysis, Transformation and Manipulation Lecture 24 Introduction to Data Manipulation Lecture 25 sorting datasets with sort function Lecture 26 Appending Lecture 27 Duplicated Values Section 7: Meg with merge function Lecture 28 Understanding Meg Lecture 29 Meg data frames with merge function Lecture 30 left, right & outer meg using merge function Section 8: reshape package: melting and casting Lecture 31 what is melting and casting? Lecture 32 melting with melt function Lecture 33 casting with cast function Section 9: tidyr package: gather and spread function Lecture 34 introduction to gather and spread function Lecture 35 gather function Lecture 36 spread function Section 10: dplyr package Lecture 37 Introduction to dplyr package for data analysis Lecture 38 create a table_df object from a data frame Lecture 39 dplyr sort descending and ascending with arrange function Lecture 40 subscripting with filter and select function Lecture 41 add a new column with mutate function Lecture 42 inner join function Lecture 43 dplyr meg functions Lecture 44 what is a pipe operator? Lecture 45 pipe operator example Section 11: Graphics in R: Bner Level Lecture 46 Introduction to Graphics Lecture 47 Graphic device: create pdf file Lecture 48 Graphic device: create image device Lecture 49 Introduction to the plot function Lecture 50 Plot function in R Lecture 51 Plot Types Lecture 52 Line Graph with base R Lecture 53 Introduction to low level graphics functions in R Lecture 54 Adding points and lines Lecture 55 Adding text Lecture 56 Adding Legend Lecture 57 Multiple displays with par function Lecture 58 Coding Exercise Instructions Lecture 59 Coding Exercise Solution Section 12: Data Visualization in R: Bner Level Lecture 60 Introduction to Data Visualizations Lecture 61 Barplots & Pie Charts > The understanding Lecture 62 Barplots in R: Favorite EPL team mock survey dataset Lecture 63 Controlling width and space of the bars Lecture 64 Adding Titles to barplot Lecture 65 Adding legend and creating a horizontal bar plot Lecture 66 Stacked and Grouped Bar plots Lecture 67 Pie Chart in R Lecture 68 Pie Chart with percentages with R Lecture 69 Histogram > The understanding Lecture 70 Histogram with R Lecture 71 Histogram with value marker: (Histogram with mean and labels) Lecture 72 Histogram with Kernel density (KDE) in r Lecture 73 Multiple Histograms Lecture 74 Boxplot > The understanding Lecture 75 Boxplot in R Lecture 76 Adding means to a boxplot Lecture 77 Scatterplots > The understanding Lecture 78 Scatterplot revisited Section 13: Bner Project: Financial Budget Analysis Lecture 79 Project Outline Lecture 80 Project Solution Lecture 81 Percentage Distributions of the Funds Section 14: Bner Project: Billionaires Analysis Lecture 82 Project Outline Lecture 83 Analyzing Billionaires by their Net Worth using R programming Section 15: Intermediate Data Visualization & Graphics with GGPLOT 2 Lecture 84 Understanding ggplot2 package Section 16: ggplot2 package: qplot function in action! Lecture 85 Understanding qplot function Lecture 86 Visualization with qplot function in R Lecture 87 qplot function: adding geometric layers Lecture 88 devices with ggplot2: ggsave fucntion Lecture 89 Available geometric layers in ggplot2: regular expression Lecture 90 Creating scatterplots and line graphs with geometric layers with qplot function Lecture 91 smooth with qplot function Lecture 92 grouped scatterplots with qplot Lecture 93 qplot: adding text to a scatterplot Lecture 94 Boxplot and violin plot with qplot function Lecture 95 Histogram with qplot function Lecture 96 Creating density plot with qplot function Section 17: ggplot2: ggplot function in action! Lecture 97 What are Aesthetics? Lecture 98 Understanding ggplot2 with ggplot function Lecture 99 Visualization with ggplot function Lecture 100 Aesthetics in R Lecture 101 Creating scatterplots with ggplot function Lecture 102 Example: Visualizing gdp growth with ggplot function Lecture 103 Grouped line chart with ggplot function Lecture 104 E-commerce website visits with ggplot function: Barplots with ggplot2 Lecture 105 Visualizing stock returns with ggplot function: Boxplots with ggplot2 Lecture 106 Stock returns with ggplot: Aesthetics in boxplots Lecture 107 E-commerce website visits with ggplot function: Create histogram with ggplot2 Lecture 108 E-commerce website visits with ggplot function: Histogram mapping with ggplot2 Section 18: ggplot2 project: Billionaires Analysis with ggplot2 package Lecture 109 Project Outline: Material Lecture 110 Analyzing Billionares using ggplot2: Solution walkthrough Section 19: Lattice Package Lecture 111 Introduction to Lattice Package Lecture 112 Creating scatterplots with Lattice Package Lecture 113 Grouped Scatterplots with lattice package Lecture 114 Grouping scatterplots with panels Lecture 115 Creating Bargraphs with lattice package Lecture 116 Grouped bar graphs with lattice package Lecture 117 Grouping bar charts with panels using lattice package Lecture 118 Creating Boxplots with lattice package Lecture 119 Controlling layout with lattice package Lecture 120 Creating dot plot and strip plot with lattice package Lecture 121 Creating Histogram with lattice package Lecture 122 Creating density plot with lattice package Lecture 123 Understanding lattice panel functions Lecture 124 Lattice package panel functions in R Lecture 125 Creating a panel function with Lattice Package Section 20: Lattice Package project: Home Loan Approvals Visualization project Lecture 126 Home Loans Approval dataset Lecture 127 Home loan approval analysis with lattice package: Solution Section 21: Going Further with Data Visualizations Lecture 128 Handling devices in R: Switching between devices in r Lecture 129 Closing devices in r Lecture 130 Layout function in r Lecture 131 showing layout with layout.show Section 22: ggplot2 scales and guides Lecture 132 What is scaling in ggplot2? Lecture 133 scale_x_continous Lecture 134 scale_y_continous Lecture 135 scale_color_manual Lecture 136 scale_fill_manual Lecture 137 scale_shape_manual Lecture 138 scale_size_manual Lecture 139 scale_alpha_continous Lecture 140 ggplot2 with guide: guide = guide_legend Lecture 141 ggplot2 with guide argument: guide_colorbar Section 23: Faceting with gglot2 Lecture 142 Faceting ( a.k.a paneling) Lecture 143 ggplot facet_wrap Lecture 144 ggplot facet_grid Section 24: ggplot2 themes Lecture 145 ggplot2 themes examples Lecture 146 ggplot2 legend themes Lecture 147 ggplot2 global themes Section 25: Credit Card Approvals Visualization Project Lecture 148 Credit Card Approval dataset description Lecture 149 Credit Card Approvals project solution with ggplot2 Lecture 150 Credit Card Approvals project solution with ggplot2 continue Section 26: Interactive r plots ggvis package from shiny Lecture 151 ggvis package explained Lecture 152 Scatterplot with ggvis package Lecture 153 ggvis interactive scatter plot: ggvis input slider Lecture 154 ggvis add_axis: labels, title Lecture 155 ggvis add_legend Lecture 156 ggvis add regression line , confidence intervals Lecture 157 ggvis barplot or bar graph, line graph with points Lecture 158 ggvis boxplot and interactive histogram example Section 27: Supermarket Sales Visualization Project Lecture 159 Supermarket Sales data and outline Lecture 160 Supermarket Sales Analysis solution walkthrough Lecture 161 Supermarket Sales Analysis solution walkthrough part 2 Section 28: 3d scatter plots in r Lecture 162 3D Scatterplot example in r Lecture 163 3D Scatterplot in r group by shapes Lecture 164 3D Scatterplot in r group by color Lecture 165 3D Scatterplot in r group by shapes and color Bners in R programmers who are not in a rush to master everything at once,Bner R programmers who want to learn data visualization,Absolute bners in Programming,University or college students wanting to learn data visualizations using R,Post graduates students who are keen on using R for exploration and data analysis HomePage: gfxtra__Graphicsin.part1.rar.html gfxtra__Graphicsin.part2.rar.html gfxtra__Graphicsin.part3.rar.html gfxtra__Graphicsin.part4.rar.html
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