R programming with Statistics for Data science : Learn Hands-On

With its Open source feature, R programming can be used for many purposes. Learn how it can also be used for Data Science.

Features Includes:
  • Self-paced with Life Time Access
  • Certificate on Completion
  • Access on Android and iOS App

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  • 121 Students Enrolled

Use R Programming for Data Science.


R is most popular and the leading open source language language in data science and statistics. Today, R language is the choice for most data science professionals in every industry and academics.

This course is thoroughly described R programming, Statistics and Data Science for beginners using real life examples.

Basic knowledge

No Basic knowledge is required

What will you learn

Let’s parse that.

  •  This course does not require a prior quantitative or mathematics background. It starts fundamental concepts of R programming, introducing basic concepts such as the mean, median etc and eventually covers all aspects of an analytics (or) data science career from analyzing and preparing raw data to visualizing your findings.
  • This course is an introduction to Data Science and Statistics using the R programming language. It covers both the theoretical aspects of Statistical concepts and the practical implementation using R.
  • Real life examples: Every concept is explained with the help of examples, case studies and source code in R wherever necessary.
  • Course material in the form for articles include in this program
  • Data Analysis with R: Datatypes and Data structures in R, Vectors, Arrays, Matrices, Lists, Data Frames, Reading data from files, Aggregating, Sorting & Merging Data Frames.
  • Linear Regression: Regression, Simple Linear Regression in Excel, Simple Linear Regression in R, Multiple Linear Regression in R, Categorical variables in regression, Robust regression, Parsing regression diagnostic plots
  • Descriptive Statistics: Mean, Median, Mode, IQR, Standard Deviation, Frequency Distributions, Histograms, Boxplots
  • Inferential Statistics: Hypothesis testing, Test statistic, Test of significance.

Course Curriculum
Number of Lectures: 53 Total Duration: 07:18:14
Daniele De Rosa – February 23, 2021

40/53 Lessons, no scrolled the videos and in the main page I see 0% completed instead of 76 %? Very bad, so disappointed...I paid to take a certificate for job...I hope that when I'll finish the lessons I'll get back my certificate.

Sherine Saghir – June 28, 2020

simple, straight to the point, however, hands-on practice can never be enough

Jaime Knoch – March 18, 2020

Great course, very hands on and practical!!