• star

    4.6

  • star

    4.89

  • star

    4.94

  • star

    4.7

  • star

    4.6

  • star

    4.89

  • star

    4.94

  • star

    4.7

Free R Programming Courses

img icon BASICS
Introduction to RAG
2.1K+ learners 1 hr

Skills: LLMs and prompt engineering, embeddings and vector databases, information retrieval techniques, RAG pipeline development, data preprocessing and document handling, and managing challenges like hallucinations, latency, and scalability

img icon BASICS
Introduction to R
star   4.56 174.9K+ learners 1 hr

Skills: R programming fundamentals, variables, data types, data structures, control structures, functions, packages, importing data into R, manipulating data in R, performing statistical analysis in R, data cleaning and wrangling, statistical modeling,

img icon BASICS
Introduction to Recommendation Systems
star   4.26 827 learners 0.5 hr

Skills: Overview of Recommendation System

img icon BASICS
NEW
Getting Started with Looker Studio
star   4.61 4.1K+ learners 1 hr

Skills: Introduction to Looker Studio, Overview of Looker Interface, Google Search Console Report, Google Analytics Report

img icon BASICS
STM32 Microcontroller Programming Essentials
1.4K+ learners 1.5 hrs

Skills: STM32 family understanding, STM32CubeIDE usage, ARM architecture principles, Cortex-M core functions, STM32 clock configuration, STM32CubeMX tool proficiency, interrupt handling basics.

img icon BASICS
R Studio Basics
star   4.54 5.9K+ learners 1 hr

Skills: Hands on example with R-Studio

free icon BASICS
Introduction to RAG
star   4.62 2.1K+ learners 1 hr

Skills: LLMs and prompt engineering, embeddings and vector databases, information retrieval techniques, RAG pipeline development, data preprocessing and document handling, and managing challenges like hallucinations, latency, and scalability

free icon BASICS
Introduction to R
star   4.56 174.9K+ learners 1 hr

Skills: R programming fundamentals, variables, data types, data structures, control structures, functions, packages, importing data into R, manipulating data in R, performing statistical analysis in R, data cleaning and wrangling, statistical modeling,

free icon BASICS
Introduction to Recommendation Systems
star   4.26 827 learners 0.5 hr

Skills: Overview of Recommendation System

free icon BASICS
Getting Started with Looker Studio
star   4.61 4.1K+ learners 1 hr

Skills: Introduction to Looker Studio, Overview of Looker Interface, Google Search Console Report, Google Analytics Report

free icon BASICS
STM32 Microcontroller Programming Essentials
star   4.18 1.4K+ learners 1.5 hrs

Skills: STM32 family understanding, STM32CubeIDE usage, ARM architecture principles, Cortex-M core functions, STM32 clock configuration, STM32CubeMX tool proficiency, interrupt handling basics.

free icon BASICS
R Studio Basics
star   4.54 5.9K+ learners 1 hr

Skills: Hands on example with R-Studio

Get Free R Programming Courses

R is a popular programming language used to develop software applications. R in the subject is taken after its developers, Ross Ihaka and Robert Gentleman. It provides a free platform for statistical computation and graphics which is supported by the R Foundation for Statistical Computing. It is popularly used amongst statisticians and data scientists to extract the useful data for developing statistical software and also for data analysis. 

The R programming environment is used to clean, analyze and graph the data. It is popularly used amongst researchers from various disciplines to predict and display the results by technologies such as statistics and research methods. It is a free programming platform hence making it an attractive option. However, it does not completely depend on the programming code. It more conveniently uses a drop down menu and buttons to work with application development. 

R is used over other programming languages for various reason such as:

  • It is an open-source programming tool. Anybody can get hold of the code used to run an application and add the code into it. It performs trending analysis quickly and fixes the errors faster in a transparent manner. It brings together a group of programmers. 
  • Programmers code their own program in R and add up to the huge list of R tools. These codes are submitted in the form of packages. A few packages specialize in a particular kind of analysis and a few other work in a broader way. For example, the “pwr” package is specialized in conducting power analysis. On the other hand, “psych” package does actions ranging from descriptive statistics to item-response theory and to mediation analysis. In the beginning of the year 2017, there were about 10,000 packages, but later after the statistical approach was designed, the numbers increased drastically. 
  • Anybody who is interested can go through the code in the package. This can help in correcting the errors when the users are going through them. Authors of a particular piece of code will be notified about the errors when the other person corrects it or validates. This way, errors are found very quickly and also can be dealt with in an efficient way. One does not have to wait for a very long time for the newer version of the tool, it will be sonner available since the authors keep working on the packages. These package updates are released, making the process entirely transparent. 
  • The dynamics between the authors that codes and creates the new technologies and the users examining the data and the package is collaborative. It is more research oriented, always towards development. It can be as simple as Googling your doubts to being partners to the introduction of newer and fancier updates. It is a big community of coders and analysts. 
  • R is used literally for everything. It can do the job of tools like SPSS, SAS and STATA on a single platform. It can perform the descriptive analysis, regression equations, ANOVA or MANCOVA, and also hierarchical linear modelling of user’s desire. It also covers structural equation modeling that is normally accomplished by MPlus. Merging datasets, cleaning data, identifying rows and columns, updating sheets can also be accomplished by R instead of using Excel for these tasks. R can create plots and graphic images in both #d and interactive. The platform can be used with the text processors like Latex to integrate the results into the manuscripts. It can create APA formatted tables, complete it with good efficiency, horizontal lines and export them as .doc files. It is capable of performing both frequentist and Bayesian statistics. It makes use of a multicore processor and can run analysis in parallel. R bootstraps, simulates, randomizes, resample, multiples and imputes an object. 
  • R addresses many global challenges to perform reproducible research. It can average, sum, reverse-score and also produce item-sum theory. These operations are applied on the data. R uses scripting remedies to solve any problems, big or small. It manipulates data through codes and performs analysis on the data that the user requires. The data of an author is shared with another augmented by online databases. 
  • R is extensively used and the growth is rapid. It is an industry standard in the realm of data analytics which is also known as data science. POpular companies like Facebook, Merck, Pfizer hire psychology PhD students with solid hold on both statistics and programming. R is most apt for such career options. 

The free R Programming certification course offered by Great Learning shall take you through what the subject is, how it works, its features, and various applications of it. At the end of the course, you will be able to use the platform efficiently and perform combined tasks since it provides support to various operations performed on different tools at different times. You can also learn a free R Programming course online. You will gain a certificate after the successful completion of the course. Happy learning!

 

down arrow img
Our learners also choose

Learner reviews of the Free R Programming Courses

Our learners share their experiences of our courses

4.56
71%
21%
5%
1%
2%
Reviewer Profile

5.0

Country Flag South Africa
“RAG”
This course provided a clear and practical introduction to RAG systems, covering embeddings, vector search, and hybrid retrieval. The hands-on project helped me understand how to build grounded AI applications using real documents.
Reviewer Profile

5.0

Country Flag India
“Amazing experience ”
Its easy to follow up on the topic and the assignment was easier than expected which is very encouraging. Also the mini project is very easy to follow along.
Reviewer Profile

5.0

Country Flag India
“I have successfully completed the Introduction to RAG course.”
Course was too much helpful to understand Introduction of RAG.
Reviewer Profile

5.0

Country Flag United States
“Introduction to RAG”
Good overview
Reviewer Profile

4.0

Country Flag India
“Introduction to R Programming Language”
I really enjoyed the hands-on approach in the course, especially the way we learned to manipulate data using R's powerful functions. The practical examples of working with data frames and creating matrices were particularly insightful. I also liked the interactive exercises that helped solidify my understanding of key concepts like data visualization and statistical analysis. The clarity of explanations and the use of real-world examples made the course very engaging.
Reviewer Profile

5.0

Country Flag India
“The Learning Experience is Practical, Interactive, and Designed to Help You Solve Real-World Problems Using R”
In an R introduction course, you will learn the basics of R programming, including working with data structures like vectors, matrices, and data frames. You'll gain skills in importing, cleaning, and manipulating data, as well as performing basic statistical analysis. The course typically introduces simple data visualization techniques and familiarizes you with essential R functions and packages. Through hands-on exercises and examples, you'll build a solid foundation for using R for data analysis and statistics.
Reviewer Profile

5.0

Country Flag India
“One of the Standout Features of the Course Was the Way the Material Was Structured”
The R Programming course was an exceptional learning experience that exceeded my expectations. The course provided a thorough understanding of R, a powerful language widely used for data analysis and statistical computing. As someone who values practical learning, I found this course to be perfectly balanced between theoretical knowledge and hands-on application. It offered a deep dive into the core aspects of R while also emphasizing real-world usage, making the learning both engaging and immediately relevant.
Reviewer Profile

5.0

Country Flag India
“My Experience with the Introduction to R Course on Great Learning Was Both Insightful and Engaging”
One of the standout features of the course was the hands-on coding practice within the platform. This provided immediate feedback, which helped me learn through practice rather than just theory. The user interface was straightforward, which made the overall experience seamless and enjoyable. If there’s one area for improvement, I would suggest adding more case studies or examples from different industries. This could give learners a broader perspective on the versatility of R in various fields.
Reviewer Profile

5.0

Country Flag India
“Great Foundational Skills and Practical Exercises in R”
I appreciated the structured approach of the course, which made complex topics accessible and easy to grasp.
Reviewer Profile

5.0

Country Flag India
“The Course Provided Clear Explanations of R Programming Concepts”
It is a comprehensive and well-structured course for beginners. It offers a clear introduction to the basics of R programming, making it easy to follow along even for those with no prior experience. The practical examples and exercises are particularly helpful in reinforcing the concepts. A great starting point for anyone looking to dive into data analysis using R!

Meet your faculty

Meet industry experts who will teach you relevant skills in artificial intelligence

instructor img

Mr. Bharani Akella

Data Scientist
Bharani has been working in the field of data science for the last 2 years. He has expertise in languages such as Python, R and Java. He also has expertise in the field of deep learning and has worked with deep learning frameworks such as Keras and TensorFlow. He has been in the technical content side from last 2 years and has taught numerous classes with respect to data science.
instructor img

Aditya Tomar

CEO at Sukriti, Ex-NXP Semiconductors, an IIT Roorkee alumni, with 10+ years of experience in embedded system design and development

Frequently Asked Questions

What is R programming used for?

R programming language is used for statistical computing and graphics. It is used to clean, analyze and graph the developed or existing data. It is used by researchers of diverse disciplines to estimate and display the results. Statistics and research teachers also use it to display research methods. 

 

Is R programming hard to learn?

Yes! The R programming language is hard to learn. The language is much different from other programming languages. The syntax used to program in R language is hard to learn and understand, unlike languages like Python.

How do I start learning R programming?

R programming language can be learnt online for free. Register on to Great Learning Academy to learn a free R programming course online. You will be able to thoroughly understand and work with the language from the offered course.

How long will it take to learn R?

R programming language is one of the tough programming languages to learn. It will take roughly about 4-6 weeks to understand the basics and all the components, syntax of R. If you are one with the basic understanding of the programming language, then it might take 2-4 weeks to learn R programming language. You can learn R programming by registering on Great Learning Academy.