Last updated 6/2018MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHzLanguage: English | Size: 1.77 GB | Duration: 11h 18m
Harness the power of R for effective data analysis and visualizations What you'll learn Import and export data in various formats in R Perform advanced statistical data analysis Visualize your data on Google or Open Street maps Create simple and quick visualizations using the basic graphic tools in R Implement interactive visualizations using ggplot2. Add elements, text, animation, and colors to your plot to make sense of data Master network, radial, and coxcomb plots Requirements Basic programming knowledge of R Basic knowledge of Math and Statistics Description R is one of the most comprehensible statistical tool for managing and manipulating data. With the ever increasing number of data, there is a very high demand of professionals who have got skills to analyze these data. If you're looking forward to becoming an expert data analyst, then go for this Learning Path. Packt’s Video Learning Paths are a series of individual video products put together in a logical and stepwise manner such that each video builds on the skills learned in the video before it. The highlights of this Learning Path are Manipulate and analyze small and large sets of data with R Practice with real-world examples of data analysis and visualization Let’s take a quick look at your learning journey! This Learning Path bs with familiarizing you with the programming and statistics aspects of R. You will learn how CRAN works and why to use it. Acquire the ability to conduct data analysis in practical contexts with R, using core language packages and tools. You will then generate various plots in R using the basic R plotting techniques. Learn how to make plots, charts, and maps in step-by-step manner. Utilize R packages to add context and meaning to your data. Moving ahead, the Learning Path will gradually take you through creating interactive maps using the googleVis package. Finally, you will generate chloropleth maps and contouring maps, bubble plots, and pie charts. By the end of this Learning Path, you will be equipped with all data analysis and visualization techniques and build a strong foundation for moving into data science. About the Author We have combined the best works of the following esteemed authors to ensure that your learning journey is smooth Dr. Samik Sen is a theoretical physicist and loves thinking about hard problems. After his PH.D. in developing computational methods to solve problems for which no solutions existed, he began thinking about how to tackle math problems while lecturing. He has a YouTube channel associated with data science, which also provides a valuable engagement with people round the world who look at problems from a different perspective.Fabio Veronesi obtained 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 , he specialized in the application of spatial statistical techniques to environmental data.Atmajit Singh Gohil works 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. Overview Section 1: Speaking ‘R’ - The Language of Data Science Lecture 1 The Course Overview Lecture 2 What Is R? Lecture 3 Getting and Setting Up R/Rstudio Lecture 4 Using RStudio Lecture 5 Packages Lecture 6 A Lot Is the Same Lecture 7 Familiar Building Programming Blocks Lecture 8 Putting It All Together Lecture 9 Core R Types Lecture 10 Some Useful Operations Lecture 11 More Useful Operations Lecture 12 Titanic Lecture 13 Tennis Lecture 14 It's Mostly Cleaning Up Lecture 15 The Most Widely Used Statistical Package Lecture 16 Distributions Lecture 17 to Get Graphical Lecture 18 Plotting to Another Dimension Lecture 19 Facets Section 2: Learning Data Analysis with R Lecture 20 The Course Overview Lecture 21 Importing Data from Tables (read.table) Lecture 22 ing Open Data from FTP Sites Lecture 23 Fixed-Width Format Lecture 24 Importing with read.lines (The Last Resort) Lecture 25 Cleaning Your Data Lecture 26 Loading the Required Packages Lecture 27 Importing Vector Data (ESRI shp and GeoJSON) Lecture 28 Transfog from data.frame to SpatialPointsDataFrame Lecture 29 Understanding Projections Lecture 30 Basic /dates formats Lecture 31 Introducing the Raster Format Lecture 32 Reading Raster Data in NetCDF Lecture 33 Mosaicking Lecture 34 Stacking to Include the Temporal Component Lecture 35 Exporting Data in Tables Lecture 36 Exporting Vector Data (ESRI shp File) Lecture 37 Exporting Rasters in Various Formats (GeoTIFF, ASCII Grids) Lecture 38 Exporting Data for WebGIS Systems (GeoJSON, KML) Lecture 39 Preparing the Dataset Lecture 40 Measuring Spread (Standard Deviation and Standard Distance) Lecture 41 Understanding Your Data with Plots Lecture 42 Plotting for Multivariate Data Lecture 43 Finding Outliers Lecture 44 Introduction Lecture 45 Re-Projecting Your Data Lecture 46 Intersection Lecture 47 Buffer and Distance Lecture 48 Union and Overlay Lecture 49 Introduction Lecture 50 Converting Vector/Table Data into Raster Lecture 51 Subsetting and Selection Lecture 52 Filtering Lecture 53 Raster Calculator Lecture 54 Plotting Basics Lecture 55 Adding Layers Lecture 56 Color Scale Lecture 57 Creating Multivariate Plots Lecture 58 Handling the Temporal Component Lecture 59 Introduction Lecture 60 Plotting Vector Data on Google Maps Lecture 61 Adding Layers Lecture 62 Plotting Raster Data on Google Maps Lecture 63 Using Leaflet to Plot on Open Street Maps Lecture 64 Introduction Lecture 65 Importing Data from the World Bank Lecture 66 Adding Geocoding Information Lecture 67 Concluding Remarks Lecture 68 Theoretical Background Lecture 69 Introduction Lecture 70 Intensity and Density Lecture 71 Spatial Distribution Lecture 72 Modelling Lecture 73 Theoretical Background Lecture 74 Data Preparation Lecture 75 K-Means Clustering Lecture 76 Optimal Number of Clusters Lecture 77 Hierarchical Clustering Lecture 78 Concluding Lecture 79 Theoretical Background Lecture 80 Reading -Series in R Lecture 81 Subsetting and Temporal Functions Lecture 82 Decomposition and Correlation Lecture 83 Forecasting Lecture 84 Theoretical Background Lecture 85 Data Preparation Lecture 86 Mapping with Deteistic Estimators Lecture 87 Analyzing Trend and Checking Normality Lecture 88 Variogram Analysis Lecture 89 Mapping with kriging Lecture 90 Theoretical Background Lecture 91 Dataset Lecture 92 Linear Regression Lecture 93 Regression Trees Lecture 94 Support Vector Machines Section 3: R Data Visualization - Basic Plots, Maps, and Pie Charts Lecture 95 The Course Overview Lecture 96 Installing Packages and Getting Help in R Lecture 97 Data Types and Special Values in R Lecture 98 Matrices and Editing a Matrix in R Lecture 99 Data frames and Editing a data frame in R Lecture 100 Importing and Exporting Data in R Lecture 101 Writing a Function and if else Statement in R Lecture 102 Basic and Nested Loops in R Lecture 103 The apply, lapply, sapply, and tapply Functions Lecture 104 Using and Saving Par to Beautify a Plot in R Lecture 105 Introducing a Scatter Plot with Texts, Labels, and Lines Lecture 106 Connecting Points and Generating an Interactive Scatter Plot Lecture 107 A Simple and Interactive Bar Plot Lecture 108 Introduction to Line Plot and Its Effective Story Lecture 109 Generating an Interactive Gantt/line Chart in R Lecture 110 Meg Histograms Lecture 111 Making an Interactive Bubble Plot Lecture 112 Constructing a Waterfall Plot in R Lecture 113 Constructing a Simple Dendrogram Lecture 114 Creating Dendrograms with Colors and Labels Lecture 115 Creating Heat Maps Lecture 116 Generating a Heat Map with Customized Colors Lecture 117 Generating an Integrated Dendrogram and a Heat Map Lecture 118 Creating a Three- Dimensional Heat Map and Stereo Map Lecture 119 Constructing a Tree Map in R Lecture 120 Introducing Regional Maps Lecture 121 Introducing Choropleth Maps Lecture 122 A Guide to Contour Maps Lecture 123 Constructing Maps with bubbles Lecture 124 Integrating Text with Maps Lecture 125 Introducing Shapefiles Lecture 126 Creating Cartograms Lecture 127 Generating a Simple Pie Chart Lecture 128 Constructing Pie Charts with Labels Lecture 129 Creating Donut Plots and Interactive Plots Lecture 130 Generating a Slope Chart Lecture 131 Constructing a Fan Plot This Learning Path is aimed at aspiring or professional statisticians, data analysts, or data scientists who want to analyze and visualize data for gaining deeper insights of it. 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