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2024 R 4.0 Programming for Data Science -- Beginners to Pro

  • Development
  • Mar 17, 2025
Synopsis2024 R 4.0 Programming for Data Science || Beginners to Pro,...
2024 R 4.0 Programming for Data Science -- Beginners to Pro  No.1

2024 R 4.0 Programming for Data Science || Beginners to Pro, available at $59.99, has an average rating of 4.65, with 126 lectures, based on 150 reviews, and has 13014 subscribers.

You will learn about Learn to write a program in R 4.0 Learn fundamentals of R programming How to use R-Studio How to analyze the data How to plot beautiful plots Real exercise for data analysis Use for Machine Learning programming Write code for Linear Regression and Logistic Regression Analysis Data visualization on real dataset | Covid-19, Boston Housing Price and Titanic dataset Learn Plotly for Covid-19 Data Analysis Advanced Plotly in R Linear Regression in R Non-Linear and Polynomial Regression Multiple Simple Linear Regression in R on Boston Housing Price Prediction This course is ideal for individuals who are Data Scientist Beginners or R Programmers or Data Scientist who codes in R or Data Analyst who codes in R or Data Scientist managers, executives or students It is particularly useful for Data Scientist Beginners or R Programmers or Data Scientist who codes in R or Data Analyst who codes in R or Data Scientist managers, executives or students.

Enroll now: 2024 R 4.0 Programming for Data Science || Beginners to Pro

Summary

Title: 2024 R 4.0 Programming for Data Science || Beginners to Pro

Price: $59.99

Average Rating: 4.65

Number of Lectures: 126

Number of Published Lectures: 126

Number of Curriculum Items: 126

Number of Published Curriculum Objects: 126

Original Price: $199.99

Quality Status: approved

Status: Live

What You Will Learn

  • Learn to write a program in R 4.0
  • Learn fundamentals of R programming
  • How to use R-Studio
  • How to analyze the data
  • How to plot beautiful plots
  • Real exercise for data analysis
  • Use for Machine Learning programming
  • Write code for Linear Regression and Logistic Regression Analysis
  • Data visualization on real dataset | Covid-19, Boston Housing Price and Titanic dataset
  • Learn Plotly for Covid-19 Data Analysis
  • Advanced Plotly in R
  • Linear Regression in R
  • Non-Linear and Polynomial Regression
  • Multiple Simple Linear Regression in R on Boston Housing Price Prediction
  • Who Should Attend

  • Data Scientist Beginners
  • R Programmers
  • Data Scientist who codes in R
  • Data Analyst who codes in R
  • Data Scientist managers, executives or students
  • Target Audiences

  • Data Scientist Beginners
  • R Programmers
  • Data Scientist who codes in R
  • Data Analyst who codes in R
  • Data Scientist managers, executives or students
  • Take your first step towards becoming a data science expert with our comprehensive R programming course. This course is designed for beginners with little or no programming experience, as well as experienced R developers looking to expand their skill set.

    You’ll start with the basics of R programming and work your way up to advanced techniques used in data science. Along the way, you’ll gain hands-on experience with popular R libraries such as dplyr, ggplot2, and tidyr.

    You will learn how to import, clean and manipulate data, create visualizations and statistical models to gain insights and make predictions. You will also learn data wrangling techniques and how to use R for data visualization.

    By the end of the course, you’ll have a solid understanding of R programming and be able to apply your new skills to a wide range of data science projects. You’ll also learn how to use R in Jupyter notebook, so that you can easily share your work and collaborate with others.

    So, if you’re ready to take your first step towards becoming a data science expert, this is the course for you! With our hands-on approach and interactive quizzes, you’ll be able to put your new skills into practice right away.

    In this course, you learn:

  • How to install R-Packages

  • How to work with R-data types

  • What is R DataFrame, Matrices, Vectors, etc?

  • How to work with DataFrames

  • How to perform join and merge operations on DataFrames

  • How to plot data using ggplot2 in R 4.0

  • Analysis of real-life dataset Covid-19

  • How this course will help you?

    This course will give you a very solid foundation in machine learning. You will be able to use the concepts of this course in other machine learning models. If you are a business manager or an executive or a student who wants to learn and excel in machine learning, this is the perfect course for you.

    What makes us qualified to teach you?

    I am a Ph.D. Scholar in Machine Learning and taught tens of thousands of students over the years through my classes at the KGP Talkie YouTube channel. A few of my courses are part of Udemy’s top 5000 courses collection and curated for Udemy Business. I promise you will not regret it.

    Course Curriculum

    Chapter 1: Introduction

    Lecture 1: Install R and R-Studio for Data Science

    Lecture 2: Download Code Files || Do Not Skip This!!!

    Lecture 3: R-Studio Introduction

    Chapter 2: R Programming Fundamentals

    Lecture 1: Variable Assignments

    Lecture 2: Rules of Variable Names in R

    Lecture 3: Arithmetic Operators

    Lecture 4: Relational Operators

    Lecture 5: Logical Operators

    Lecture 6: Assignment Operators

    Lecture 7: Miscellaneous Operators

    Lecture 8: Function in R

    Lecture 9: Data Types in R

    Lecture 10: Strings Assignment

    Lecture 11: paste() Function for String Manipulation

    Lecture 12: format() Function for Numeric Data Formatting

    Lecture 13: Colon (:) Operator for Vector Generation

    Lecture 14: Using [] Operator and c() Function to Access Vector Elements

    Lecture 15: Vector Manipulation

    Lecture 16: List Creation

    Lecture 17: Named List

    Lecture 18: List Manipulation and Merging

    Lecture 19: List to Vectors and Vectors to List

    Lecture 20: Introduction to Matrix

    Lecture 21: Arithmetic Operations on Matrix

    Lecture 22: Arrays Introductions

    Lecture 23: Arrays Naming and Accessing the Values

    Lecture 24: Factors in R

    Lecture 25: If If-Else and If-Else-If Statements

    Lecture 26: repeat() and while() Loops

    Lecture 27: for() Loop

    Lecture 28: next Statement and break Statement

    Chapter 3: Fundamentals of DataFrames in R Programming

    Lecture 1: Create DataFrame in R

    Lecture 2: Get the DataFrame Details

    Lecture 3: Working with [, [[ and $ Operator

    Lecture 4: Access DataFrames Like Matrix

    Lecture 5: Modify a DataFrame

    Lecture 6: Loading a DataFrame from .CSV File

    Lecture 7: Load DataFrame from Excel .xlsx File

    Lecture 8: Loading a DataFrame from .XML File

    Lecture 9: Loading a DataFrame from .json File

    Lecture 10: Bind Rows || rbind() and bind_rows()

    Lecture 11: Bind Columns || cbind() and bind_cols()

    Lecture 12: Data Frame Selection and Indexing

    Lecture 13: Conditional DataFrame Selection with subset()

    Lecture 14: Working with DateTime in DataFrame

    Lecture 15: Export DataFrame in .CSV File

    Lecture 16: Data Frame Sorting

    Lecture 17: Groupby on DataFrame in R

    Lecture 18: Data Frame Merge and Join || Inner Join

    Lecture 19: Left, Right, and Outer Merge (Join) of DataFrame in R

    Chapter 4: Jupyter Notebook Introduction for R Programming

    Lecture 1: Jupyter Notebook Introduction

    Lecture 2: Anaconda Installation for Windows 10

    Lecture 3: Anaconda Installation for Linux

    Lecture 4: R 4.x Installation in Anaconda with Jupyter Notebook

    Lecture 5: Jupyter Notebook Shortcuts Part 1

    Lecture 6: Jupyter Notebook Shortcuts Part 2

    Lecture 7: Jupyter Notebook Shortcuts Part 3

    Lecture 8: Jupyter Notebook Shortcuts Part 4

    Lecture 9: R Coding Practice with Jupyter Notebook vs R-Studio

    Chapter 5: Fundamentals of Data Visualization with GGPlot2

    Lecture 1: Introduction to GGPlot2

    Lecture 2: R Packages Installation and Loading

    Lecture 3: Must Read

    Lecture 4: Covid-19 Dataset Loading

    Lecture 5: Bar Plot – Top 10 Worst Hit Countries

    Lecture 6: Add Title, Subtitle and Caption in GGPlot

    Lecture 7: Change Title and Caption Style- Font Size, Color and Face

    Lecture 8: Change Text Position and Increase Figure Size

    Lecture 9: Scatter Plot (Point Plot) for Covid-19 Dataset

    Lecture 10: Line Plot for Covid-19 Data || Confirmed, Recovered and Deaths Analysis

    Lecture 11: Loading the Boston Housing Price Dataset for Visualization

    Lecture 12: Scatter Plot for Boston Housing Data

    Lecture 13: Pair Plot – Scatter Matrix Plot for Boston Housing Dataset

    Lecture 14: Load Titanic Dataset for Visualization

    Lecture 15: Data Cleaning and Bar Plot

    Lecture 16: Scatter Plot for Titanic Dataset

    Lecture 17: Histogram Plot

    Lecture 18: Stacked Histogram

    Lecture 19: Density Plot

    Lecture 20: Box Plot

    Lecture 21: Violin Plot

    Chapter 6: Data Preprocessing and Analysis with tidyverse and dplyr

    Lecture 1: Jupyter Notebook Opening

    Lecture 2: Getting Started with tidyverse and dplyr

    Lecture 3: Must Read

    Lecture 4: select() – Select Columns of a Dataframe

    Lecture 5: filter() || Extract subset of Rows

    Lecture 6: arrange() – DataFrame Sorting

    Lecture 7: rename() || Renaming DataFrame Columns

    Lecture 8: mutate() || Compute Transformations of Variables

    Lecture 9: group_by() || Group DataFrame Column-wise

    Lecture 10: %>% || Pipeline Operator

    Lecture 11: distinct() || Get the Unique Rows

    Lecture 12: count() tally() add_count() add_tally() || Count the Unique Values in DataFrame

    Lecture 13: rename_with() || Rename Columns by using Function

    Lecture 14: summarise() and summarize() || Create Summary of Columns in a DataFrame

    Instructors

  • 2024 R 4.0 Programming for Data Science -- Beginners to Pro  No.2
    Laxmi Kant | KGP Talkie
    AVP, Data Science Join Ventures | IIT Kharagpur | KGPTalkie
  • Rating Distribution

  • 1 stars: 0 votes
  • 2 stars: 7 votes
  • 3 stars: 13 votes
  • 4 stars: 35 votes
  • 5 stars: 95 votes
  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!