R vs Python - GeeksforGeeks (2024)

Last Updated : 09 Sep, 2024

Summarize

Comments

Improve

R Programming Language and Python are both used extensively for Data Science. Both are very useful and open-source languages as well. For data analysis, statistical computing, and machine learning Both languages are strong tools with sizable communities and huge libraries for data science jobs. A theoretical comparison between R and Python is provided below:

R vs Python - GeeksforGeeks (1)

R vs Python

In this article, we will cover the following topics:

  • R Programming Language
  • Python Programming Language
  • Difference between R Programming and Python Programming
  • Ecosystem in R Programming and Python Programming
  • Advantages and disadvantages in R Programming and Python Programming
  • R and Python usages in Data Science
  • Example in R and Python

R Programming Language

R Programming Language is used for machine learning algorithms, linear regression, time series, statistical inference, etc. It was designed by Ross Ihaka and Robert Gentleman in 1993. R is an open-source programming language that is widely used as a statistical software and data analysis tool. R generally comes with the Command-line interface. R is available across widely used platforms like Windows, Linux, and macOS. Also, the R programming language is the latest cutting-edge tool.

Python Programming Language

Python is a widely-used general-purpose, high-level programming language. It was created by Guido van Rossum in 1991 and further developed by the Python Software Foundation. It was designed with an emphasis on code readability, and its syntax allows programmers to express their concepts in fewer lines of code.

Difference between R Programming and Python Programming

Below are some major differences between R and Python:

FeatureRPython
IntroductionR is a language and environment for statistical programming which includes statistical computing and graphics.Python is a general-purpose programming language for data analysis and scientific computing
ObjectiveIt has many features which are useful for statistical analysis and representation.It can be used to develop GUI applications and web applications as well as with embedded systems
WorkabilityIt has many easy-to-use packages for performing tasksIt can easily perform matrix computation as well as optimization
Integrated development environmentVarious popular R IDEs are Rstudio, RKward, R commander, etc.Various popular Python IDEs are Spyder, Eclipse+Pydev, Atom, etc.
Libraries and packagesThere are many packages and libraries like ggplot2, caret, etc.Some essential packages and libraries are Pandas, Numpy, Scipy, etc.
ScopeIt is mainly used for complex data analysis in data science.It takes a more streamlined approach for data science projects.

Ecosystem in R Programming and Python Programming

Python supports a very large community of general-purpose data science. One of the most basic uses for data analysis, primarily because of the fantastic ecosystem of data-centric Python packages. Pandas and NumPy are one of those packages that make importing and analyzing, and visualization of data much easier.

R Programming has a rich ecosystem to use in standard machine learning and data mining techniques. It works in statistical analysis of large datasets, and it offers a number of different options for exploring data and It makes it easier to use probability distributions, apply different statistical tests.

R vs Python - GeeksforGeeks (2)

R vs Python

FeaturesRPython
Data collectionIt is used for data analysts to import data from Excel, CSV, and text files.It is used in all kinds of data formats including SQL tables
Data explorationIt optimized for the statistical analysis of large datasetsYou can explore data with Pandas
Data modelingIt supports Tidyverse, making it easy to import, manipulate, visualize, and report on data.You can use NumPy, SciPy, scikit-learn, TansorFlow
Data visualizationYou can use ggplot2 and ggplot tools to plots complex scatter plots with regression lines.You can use Matplotlib, Pandas, Seaborn

Statistical Analysis and Machine Learning In R and Python

Statistical analysis and machine learning are critical components of data science, involving the application of statistical methods, models, and techniques to extract insights, identify patterns, and draw meaningful conclusions from data. Both R and Python have widely used programming languages for statistical analysis, each offering a variety of libraries and packages to perform diverse statistical and machine learning tasks. Some comparison of statistical analysis and modeling capabilities in R and Python.

Capability

R

Python


Basic Statistics


Built-in functions (mean, median, etc.)


NumPy (mean, median, etc.)


Linear Regression


lm() function and Formulas

Statsmodels (OLS)

Ordinary Least Squares (OLS) Method


Generalized Linear Models (GLM)


glm() function


Statsmodels (GLM)


Time Series Analysis


Time Series packages (forecast)


Statsmodels (Time Series)


ANOVA and t-tests


Built-in functions (aov, t.test)


SciPy (ANOVA, t-tests)


Hypothesis Tests


Built-in functions (wilcox.test, etc.)


SciPy (Mann-Whitney, Kruskal-Wallis)


Principal Component Analysis (PCA)


princomp() function


scikit-learn (PCA)


Clustering (K-Means, Hierarchical)


kmeans(), hclust()


scikit-learn (KMeans, AgglomerativeClustering)


Decision Trees


rpart() function


scikit-learn (DecisionTreeClassifier)


Random Forest


randomForest() function


scikit-learn (RandomForestClassifier)

Advantages in R Programming and Python Programming

R ProgrammingPython Programming
It supports a large dataset for statistical analysisGeneral-purpose programming to use data analyze
Primary users are Scholar and R&DPrimary users are Programmers and developers
Support packages like tidyverse, ggplot2, caret, zooSupport packages like pandas, scipy, scikit-learn, TensorFlow, caret
Support RStudio and It has a wide range of statistics and general data analysis and visualization capabilities.Support Conda environment with Spyder, Ipython Notebook

Disadvantages in R Programming and Python Programming

R Programming

Python Programming

R is much more difficult as compared to Python because it mainly uses for statistics purposes.

Python does not have too many libraries for data science as compared to R.

R might not be as fast as languages like Python, especially for computationally intensive tasks and large-scale data processing.

Python might not be as specialized for statistics and data analysis as R. Some statistical functions and visualization capabilities might be more streamlined in R.

Memory management in R might not be as efficient as in some other languages, which can lead to performance issues and memory-related errors

Python visualization capabilities might not be as polished and streamlined as those offered by R’s ggplot2.

R and Python usages in Data Science

Python and R programming language is most useful in data science and it deals with identifying, representing, and extracting meaningful information from data sources to be used to perform some business logic with these languages. It has a popular package for Data collection, Data exploration, Data modeling, Data visualization, and statical analysis.

Example in R and Python

Program for the addition of two numbers

Python
# Python program to add two numbersnumb1 = 8numb2 = 4# Adding two numberssum = numb1 + numb2# Printing the resultprint("The sum is", sum)
R
# R program to add two numbersnumb1 <- 8numb2 <- 4# Adding two numbers sum <- numb1 + numb2 print(paste("The sum is", sum))

Output

The sum is 12


A

achintkaur18

R vs Python - GeeksforGeeks (3)

Improve

Previous Article

Interesting Facts about R Programming Language

Next Article

Environments in R Programming

Please Login to comment...

R vs Python - GeeksforGeeks (2024)
Top Articles
Does a Title Car Loan Affect Your Credit Score
For-Loops in Python - Data Science Discovery
Jail Inquiry | Polk County Sheriff's Office
Joe Taylor, K1JT – “WSJT-X FT8 and Beyond”
Section 4Rs Dodger Stadium
Durr Burger Inflatable
Form V/Legends
Phcs Medishare Provider Portal
Kaydengodly
Valley Fair Tickets Costco
Midflorida Overnight Payoff Address
Ofw Pinoy Channel Su
Koordinaten w43/b14 mit Umrechner in alle Koordinatensysteme
Rainbird Wiring Diagram
My.doculivery.com/Crowncork
zopiclon | Apotheek.nl
Immediate Action Pathfinder
5808 W 110Th St Overland Park Ks 66211 Directions
What is the difference between a T-bill and a T note?
Diablo 3 Metascore
Insidekp.kp.org Hrconnect
Dallas’ 10 Best Dressed Women Turn Out for Crystal Charity Ball Event at Neiman Marcus
Powerball winning numbers for Saturday, Sept. 14. Check tickets for $152 million drawing
Plan Z - Nazi Shipbuilding Plans
U Arizona Phonebook
Ratchet & Clank Future: Tools of Destruction
Amazing deals for Abercrombie & Fitch Co. on Goodshop!
Shiftselect Carolinas
Nz Herald Obituary Notices
John Chiv Words Worth
Pirates Of The Caribbean 1 123Movies
Dark Entreaty Ffxiv
2000 Ford F-150 for sale - Scottsdale, AZ - craigslist
Healthy Kaiserpermanente Org Sign On
Darknet Opsec Bible 2022
Shauna's Art Studio Laurel Mississippi
134 Paige St. Owego Ny
Renfield Showtimes Near Marquee Cinemas - Wakefield 12
Vistatech Quadcopter Drone With Camera Reviews
Chattanooga Booking Report
Ark Unlock All Skins Command
New Gold Lee
Merge Dragons Totem Grid
Smith And Wesson Nra Instructor Discount
Mixer grinder buying guide: Everything you need to know before choosing between a traditional and bullet mixer grinder
Craigslist Lakeside Az
Anthem Bcbs Otc Catalog 2022
Senior Houses For Sale Near Me
Babykeilani
Port Huron Newspaper
New Starfield Deep-Dive Reveals How Shattered Space DLC Will Finally Fix The Game's Biggest Combat Flaw
Volstate Portal
Latest Posts
Article information

Author: Fr. Dewey Fisher

Last Updated:

Views: 6305

Rating: 4.1 / 5 (62 voted)

Reviews: 85% of readers found this page helpful

Author information

Name: Fr. Dewey Fisher

Birthday: 1993-03-26

Address: 917 Hyun Views, Rogahnmouth, KY 91013-8827

Phone: +5938540192553

Job: Administration Developer

Hobby: Embroidery, Horseback riding, Juggling, Urban exploration, Skiing, Cycling, Handball

Introduction: My name is Fr. Dewey Fisher, I am a powerful, open, faithful, combative, spotless, faithful, fair person who loves writing and wants to share my knowledge and understanding with you.