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Course Outline

Day One: Language Basics

  • Course Introduction
  • Overview of Data Science
    • Defining Data Science
    • The Data Science Process
  • Introduction to the R Language
  • Variables and Data Types
  • Control Structures (Loops and Conditionals)
  • R Scalars, Vectors, and Matrices
    • Creating R Vectors
    • Working with Matrices
  • String and Text Manipulation
    • Character Data Types
    • File Input/Output
  • Lists
  • Functions
    • Function Fundamentals
    • Closures
    • Using lapply and sapply
  • DataFrames
  • Labs covering all sections

Day Two: Intermediate R Programming

  • DataFrames and File Input/Output
  • Reading Data from Files
  • Data Preparation
  • Utilizing Built-in Datasets
  • Data Visualization
    • The Graphics Package
    • Using plot(), barplot(), hist(), boxplot(), and scatter plots
    • Heat Maps
    • The ggplot2 Package (qplot(), ggplot())
  • Data Exploration with Dplyr
  • Labs covering all sections

Day Three: Advanced Programming with R

  • Statistical Modeling in R
    • Statistical Functions
    • Handling Missing Values (NA)
    • Probability Distributions (Binomial, Poisson, Normal)
  • Regression Analysis
    • Introduction to Linear Regression
  • Recommendation Systems
  • Text Processing (tm package and Wordclouds)
  • Clustering Techniques
    • Introduction to Clustering
    • K-Means Clustering
  • Classification Algorithms
    • Introduction to Classification
    • Naive Bayes
    • Decision Trees
    • Model Training with the caret Package
    • Evaluating Algorithm Performance
  • R and Big Data
    • Connecting R to Databases
    • Understanding the Big Data Ecosystem
  • Labs covering all sections

Requirements

  • A foundational understanding of programming is preferred

Setup

  • A modern laptop
  • The latest version of R Studio and the R environment installed
 21 Hours

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