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Big Data

R Programming

מספר הקורס 3551

16 סה"כ שעות אקדמאיות
2 מפגשים
* מספר המפגשים והשעות למפגש עשויים להשתנות בין קורס לקורס
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המועדים הקרובים

קורס לקבוצות

הקורס נפתח במתכונת של קבוצה בלבד, בהתאמה אישית לארגונים.
לפרטים נוספים: Muzman@johnbryce.co.il

ספרו לי עוד

Overview

Over the past few years, R has been steadily gaining popularity with business analysts, statisticians and data scientists as a tool of choice for conducting statistical analysis of data as well as supervised and unsupervised machine learning.

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On Completion, Delegates will be able to

This intensive training course helps students learn the practical aspects of the R programming language. The course is supplemented by many hands-on labs which allow attendees to immediately apply their theoretical knowledge in practice.

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Who Should Attend

Business Analysts

Technical Managers

Programmers

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תכנית הלימודים

Full Syllabus
PDF להורדה

CHAPTER 1. INTRODUCTION

  • Installing R
  • Character Terminal and GUI Interfaces to R
  • Other GUI Integrated Development Environments

CHAPTER 2. WORKING WITH R

  • Running R
  • Learning GUI Integrated Development Environment
  • Interacting with R Interpreter
  • R Sessions and Workspaces
  • Saving Your Workspace
  • Loading Your Workspace
  • Removing Objects in Workspace
  • Getting Help
  • Getting System Information
  • Standard R Packages
  • Loading Packages
  • CRAN (The Comprehensive R Archive Network)
  • Extending R

CHAPTER 3. R SYNTAX

  • General Notes on R Commands and Statements
  • Variables
  • Assignment Operators
  • Arithmetic Operators
  • Logical Operators

CHAPTER 4. R DATA STRUCTURES

  • R Objects
  • Vectors
  • Logical Vectors
  • Character Vectors
  • Creating and Working with Vectors
  • Lists
  • Creating and Working with Lists
  • Matrices
  • Creating and Working with Matrices
  • Data Frames
  • Creating and Working with Data Frames
  • Interactive Creation of Data Frames
  • Getting Info about a Data Frame
  • Sorting Data in Data Frames
  • Matrices vs Data Frames

CHAPTER 5. FUNCTIONS

  • Using R Common Functions
  • Numeric Functions
  • Character / String Functions
  • Date and Time Functions
  • Other Useful Functions
  • Applying Functions to Matrices and Data Frames
  • Type Conversion
  • Creating and Using User-Defined Functions

CHAPTER 6. CONTROL STATEMENTS

  • Conditional Execution
  • Repetitive Execution

CHAPTER 7. SCRIPTS

  • Creating Scripts
  • Loading and Executing Scripts
  • Batch Execution Mode

CHAPTER 8. INPUT / OUTPUT

  • Reading Data from Files
  • Writing Data to Files
  • Getting the List of Files in a Directory
  • Diverting System Output to a File

CHAPTER 9. DATA IMPORT AND EXPORT

  • Import and Export Operations in R
  • Working with CSV Files
  • Reading Data from Excel
  • Exporting Data in SPSS Data Format

CHAPTER 10. R STATISTICAL COMPUTING FEATURES

  • Basic Statistical Functions
  • Writing Your Own skew and kurtosis Functions
  • Generating Normally Distributed Random Numbers
  • Generating Uniformly Distributed Random Numbers
  • Using the summary() Function
  • Math Functions Used in Data Analysis
  • Correlations
  • Testing Correlation Coefficient for Significance
  • Regression Analysis
  • Types of Regression
  • Simple Linear Regression Model
  • Least-Squares Method (LSM)
  • LSM Assumptions
  • Fitting Linear Regression Models in R
  • Confidence Intervals for Model Parameters
  • Multiple Regression Analysis
  • Finding the Best-Fitting Regression Model
  • Comparing Regression Models with anova and AIC

CHAPTER 11. DATA VISUALIZATION

  • R Graphics
  • Graphics Export Options
  • Creating Bar Plots in R
  • Using barplot() with Matrices
  • Stacked vs Juxtaposed Layouts
  • Customizing Plots
  • Histograms
  • Building Histograms with hist()
  • Pie Charts
  • Generic X-Y Plotting
  • Dot Plots

CHAPTER 12. DATA SCIENCE ALGORITHMS AND ANALYTICAL METHODS

  • Supervised and Unsupervised Machine Learning Algorithms
  • k-Nearest Neighbors
  • Monte Carlo Simulation

 

Prerequisites

Participants should have the general knowledge of statistics and programming

Schedule Appointment

Fill out the form below, and we will be in touch shortly.

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