R (programming language)

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R logo.svg
R terminal.jpg
R terminal
ParadigmsMulti-paradigm: procedural, object-oriented, functional, reflective, imperative, array[1]
Designed byRoss Ihaka and Robert Gentleman
DeveloperR Core Team
First appearedAugust 1993; 29 years ago (1993-08)
Stable release
4.2.1[2] / 23 June 2022; 3 months ago (23 June 2022)
Typing disciplineDynamic
Platformarm64 and x86-64
LicenseGNU GPL v2
Filename extensions
Websitewww.r-project.org Edit this at Wikidata
Influenced by

R is a programming language for statistical computing and graphics supported by the R Core Team and the R Foundation for Statistical Computing. Created by statisticians Ross Ihaka and Robert Gentleman, R is used among data miners, bioinformaticians and statisticians for data analysis and developing statistical software.[6] Users have created packages to augment the functions of the R language.

According to user surveys and studies of scholarly literature databases, R is one of the most commonly used programming languages used in data mining.[7] As of March 2022, R ranks 11th in the TIOBE index, a measure of programming language popularity, in which the language peaked in 8th place in August 2020.[8][9]

The official R software environment is an open-source free software environment within the GNU package, available under the GNU General Public License. It is written primarily in C, Fortran, and R itself (partially self-hosting). Precompiled executables are provided for various operating systems. R has a command line interface.[10] Multiple third-party graphical user interfaces are also available, such as RStudio, an integrated development environment, and Jupyter, a notebook interface.


R is an open-source implementation of the S programming language combined with lexical scoping semantics from Scheme, which allow objects to be defined in predetermined blocks rather than the entirety of the code.[1] S was created by Rick Becker, John Chambers, Doug Dunn, Jean McRae, and Judy Schilling at Bell Labs around 1976. Designed for statistical analysis, the language is an interpreted language whose code could be directly run without a compiler.[11] Many programs written for S run unaltered in R.[10] As a dialect of the Lisp language, Scheme was created by Gerald J. Sussman and Guy L. Steele Jr. at MIT around 1975.[12]

In 1991, statisticians Ross Ihaka and Robert Gentleman at the University of Auckland, New Zealand, embarked on an S implementation.[13] It was named partly after the first names of the first two R authors and partly as a play on the name of S.[10] They began publicizing it on the data archive StatLib and the s-news mailing list in August 1993.[14] In 1995, statistician Martin Mächler convinced Ihaka and Gentleman to make R free and open-source software under the GNU General Public License.[14][15][16] The first official release came in June 1995.[14] The first official "stable beta" version (v1.0) was released on 29 February 2000.[17][18]

The Comprehensive R Archive Network (CRAN) was officially announced on 23 April 1997. CRAN stores R's executable files, source code, documentations, as well as packages contributed by users. CRAN originally had 3 mirrors and 12 contributed packages.[19] As of January 2022, it has 101 mirrors[20] and 18,728 contributed packages.[21] In addition to hosting packages CRAN hosts binaries for major distributions of Linux, MacOS and Windows.[22]

The R Core Team was formed in 1997 to further develop the language.[10][23] As of January 2022, it consists of Chambers, Gentleman, Ihaka, and Mächler, plus statisticians Douglas Bates, Peter Dalgaard, Kurt Hornik, Michael Lawrence, Friedrich Leisch, Uwe Ligges, Thomas Lumley, Sebastian Meyer, Paul Murrell, Martyn Plummer, Brian Ripley, Deepayan Sarkar, Duncan Temple Lang, Luke Tierney, and Simon Urbanek, as well as computer scientist Tomas Kalibera. Stefano Iacus, Guido Masarotto, Heiner Schwarte, Seth Falcon, Martin Morgan, and Duncan Murdoch were members.[14][24] In April 2003,[25] the R Foundation was founded as a non-profit organization to provide further support for the R project.[10]


Data processing[edit]

R's data structures include vectors, arrays, lists, and data frames.[26] Vectors are ordered collections of values and can be mapped to arrays of one or more dimensions in a column major order. That is, given an ordered collection of dimensions, one fills in values along the first dimension first, then fill in one-dimensional arrays across the second dimension, and so on.[27] R supports array arithmetics and in this regard is like languages such as APL and MATLAB.[26][28] The special case of an array with two dimensions is called a matrix. Lists serve as collections of objects that do not necessarily have the same data type. Data frames contain a list of vectors of the same length, plus a unique set of row names.[26] R has no scalar data type.[29] Instead, a scalar is represented as a length-one vector.[30]

R and its libraries implement various statistical techniques, including linear, generalized linear and nonlinear modeling, classical statistical tests, spatial and time-series analysis, classification, clustering, and others. For computationally intensive tasks, C, C++, and Fortran code can be linked and called at run time. Another of R's strengths is static graphics; it can produce publication-quality graphs that include mathematical symbols.[31]


R is an interpreted language; users can access it through a command-line interpreter. If a user types 2+2 at the R command prompt and presses enter, the computer replies with 4.

R supports procedural programming with functions and, for some functions, object-oriented programming with generic functions.[32] Due to its S heritage, R has stronger object-oriented programming facilities than most statistical computing languages.[citation needed] Extending it is facilitated by its lexical scoping rules, which are derived from Scheme.[33] R uses S-expressions to represent both data and code.[citation needed] R's extensible object system includes objects for (among others): regression models, time-series and geo-spatial coordinates. Advanced users can write C, C++,[34] Java,[35] .NET[36] or Python code to manipulate R objects directly.[37]

Functions are first-class objects and can be manipulated in the same way as data objects, facilitating meta-programming that allows multiple dispatch. Function arguments are passed by value, and are lazy—that is to say, they are only evaluated when they are used, not when the function is called.[38] A generic function acts differently depending on the classes of the arguments passed to it. In other words, the generic function dispatches the method implementation specific to that object's class. For example, R has a generic print function that can print almost every class of object in R with print(objectname).[39] Many of R's standard functions are written in R,[citation needed] which makes it easy for users to follow the algorithmic choices made. R is highly extensible through the use of packages for specific functions and specific applications.


R's capabilities are extended through user-created[40] packages, which offer statistical techniques, graphical devices, import/export, reporting (RMarkdown, knitr, Sweave), etc. These packages and their easy installation and use has been cited as driving the language's widespread adoption in data science.[41][42][43][44][45] The packaging system is also used by researchers to organize research data, code and report files in a systematic way for sharing and archiving.[46]

Multiple packages are included with the basic installation. Additional packages are available on CRAN,[20] Bioconductor, R-Forge,[47] Omegahat,[48] GitHub, and other repositories.[49][50][51]

The "Task Views" on the CRAN website[52] lists packages in fields including Finance, Genetics, High Performance Computing, Machine Learning, Medical Imaging, Meta-Analysis,[53] Social Sciences and Spatial Statistics.[53] R has been identified by the FDA as suitable for interpreting data from clinical research.[54] Microsoft maintains a daily snapshot of CRAN that dates back to Sept. 17, 2014.[55]

Other R package resources include R-Forge,[56][47] a platform for the collaborative development of R packages. The Bioconductor project provides packages for genomic data analysis, including object-oriented data-handling and analysis tools for data from Affymetrix, cDNA microarray, and next-generation high-throughput sequencing methods.[57]

A group of packages called the Tidyverse, which can be considered a "dialect" of the R language, is increasingly popular among developers.[note 1] It strives to provide a cohesive collection of functions to deal with common data science tasks, including data import, cleaning, transformation and visualisation (notably with the ggplot2 package). Dynamic and interactive graphics are available through additional packages.[58]

R is one of 5 languages with an Apache Spark API, along with Scala, Java, Python, and SQL.[59][60]


A list of changes in R releases is maintained in various "news" files at CRAN.[61] Some highlights are listed below for several major releases.

Release Date Description
0.16 This is the last alpha version developed primarily by Ihaka and Gentleman. Much of the basic functionality from the "White Book" (see S history) was implemented. The mailing lists commenced on 1 April 1997.
0.49 1997-04-23 This is the oldest source release which is currently available on CRAN.[62] CRAN is started on this date, with 3 mirrors that initially hosted 12 packages.[63] Alpha versions of R for Microsoft Windows and the classic Mac OS are made available shortly after this version.[citation needed]
0.60 1997-12-05 R becomes an official part of the GNU Project. The code is hosted and maintained on CVS.
0.65.1 1999-10-07 First versions of update.packages and install.packages functions for downloading and installing packages from CRAN.[64]
1.0 2000-02-29 Considered by its developers stable enough for production use.[65]
1.4 2001-12-19 S4 methods are introduced and the first version for Mac OS X is made available soon after.
1.8 2003-10-08 Introduced a flexible condition handling mechanism for signalling and handling condition objects.
2.0 2004-10-04 Introduced lazy loading, which enables fast loading of data with minimal expense of system memory.
2.1 2005-04-18 Support for UTF-8 encoding, and the beginnings of internationalization and localization for different languages.
2.6.2 2008-02-08 Last version to support Windows 95, 98, Me and NT 4.0[66]
2.11 2010-04-22 Support for Windows 64-bit systems.
2.12.2 2011-02-25 Last version to support Windows 2000[67]
2.13 2011-04-14 Adding a new compiler function that allows speeding up functions by converting them to bytecode.
2.14 2011-10-31 Added mandatory namespaces for packages. Added a new parallel package.
2.15 2012-03-30 New load balancing functions. Improved serialisation speed for long vectors.
3.0.0 2013-04-03 Support for numeric index values 231 and larger on 64-bit systems.
3.3.3 2017-03-06 Last version to support Microsoft Windows XP.
3.4.0 2017-04-21 Just-in-time compilation (JIT) of functions and loops to byte-code enabled by default.
3.5.0 2018-04-23 Packages byte-compiled on installation by default. Compact internal representation of integer sequences. Added a new serialisation format to support compact internal representations.
3.6.0 2019-04-26 Improved sampling from a discrete uniform distribution, which was noticeably non-uniform on large populations.[68] New serialisation format supported since 3.5.0 becomes the default.
4.0.0 2020-04-24 R now uses a stringsAsFactors = FALSE default, and hence by default no longer converts strings to factors in calls to data.frame() and read.table(). Reference counting is used for tracking object sharing, which reduces the need for copying objects. New syntax for raw string constants.
4.1.0 2021-05-18 Introduced |> as the pipe operator for base R syntax (similar to the %>% operator of the magrittr package) and the anonymous function shortcut syntax \(x) x+1
4.2.0 2022-04-22 R uses UTF-8 as the native encoding on recent Windows systems. Support for 32-bit Windows builds has been dropped. Calling if() or while() with a condition of length greater than one is now an error.


Various applications can be used to edit or run R code.[69]

Early developers preferred to run R via the command line console,[70] succeeded by those who prefer an IDE.[71] IDEs for R include (in alphabetical order) R.app (OSX/macOS only), Rattle GUI, R Commander, RKWard, RStudio, and Tinn-R.[70] R is also supported in multi-purpose IDEs such as Eclipse via the StatET plugin,[72] and Visual Studio via the R Tools for Visual Studio.[73] Of these, RStudio is the most commonly used.[71]

Statistical frameworks which use R in the background include Jamovi and JASP.

Editors that support R include Emacs, Vim (Nvim-R plugin),[74] Kate,[75] LyX,[76] Notepad++,[77] Visual Studio Code, WinEdt,[78] and Tinn-R.[79] Jupyter Notebook can also be configured to edit and run R code.[80]

R functionality is accessible from scripting languages including Python,[81] Perl,[82] Ruby,[83] F#,[84] and Julia.[85] Interfaces to other, high-level programming languages, like Java[86] and .NET C#[87][88] are available.


The main R implementation is written in R, C, and Fortran.[89] Several other implementations aimed at improving speed or increasing extensibility. A closely related implementation is pqR (pretty quick R) by Radford M. Neal with improved memory management and support for automatic multithreading. Renjin and FastR are Java implementations of R for use in a Java Virtual Machine. CXXR, rho, and Riposte[90] are implementations of R in C++. Renjin, Riposte, and pqR attempt to improve performance by using multiple cores and deferred evaluation.[91] Most of these alternative implementations are experimental and incomplete, with relatively few users, compared to the main implementation maintained by the R Development Core Team.

TIBCO, who previous sold the commercial implementation S-PLUS, built a runtime engine called TERR, which is part of Spotfire.[92]

Microsoft R Open (MRO) is a fully compatible R distribution with modifications for multi-threaded computations.[93][94] As of 30 June 2021, Microsoft started to phase out MRO in favor of the CRAN distribution.[95]


R has local communities worldwide for users to network, share ideas, and learn.[96][97]

A growing number of R events bring users together, such as conferences (e.g. useR!, WhyR?, conectaR, SatRdays),[98][99] meetups,[100] as well as R-Ladies groups[101] that promote gender diversity. The R Foundation taskforce focuses on women and other under-represented groups.[102]

useR! conferences[edit]

The official annual gathering of R users is called "useR!".[103] The first such event was useR! 2004 in May 2004, Vienna, Austria.[104] After skipping 2005, the useR! conference has been held annually, usually alternating between locations in Europe and North America.[105] History:[103]

  • useR! 2006, Vienna, Austria
  • useR! 2007, Ames, Iowa, US
  • useR! 2008, Dortmund, Germany
  • useR! 2009, Rennes, France
  • useR! 2010, Gaithersburg, Maryland, US
  • useR! 2011, Coventry, United Kingdom
  • useR! 2012, Nashville, Tennessee, US
  • useR! 2013, Albacete, Spain
  • useR! 2014, Los Angeles, California, US
  • useR! 2015, Aalborg, Denmark
  • useR! 2016, Stanford, California, US
  • useR! 2017, Brussels, Belgium
  • useR! 2018, Brisbane, Australia
  • useR! 2019, Toulouse, France
  • useR! 2020, took place online due to COVID-19 pandemic
  • useR! 2021, took place online due to COVID-19 pandemic
  • useR! 2022, took place online due to COVID-19 pandemic

The dates and the location for the next useR! event is to be decided as of July 2022.

The R Journal[edit]

The R Journal is an open access, refereed journal of the R project. It features short to medium length articles on the use and development of R, including packages, programming tips, CRAN news, and foundation news.

Comparison with alternatives[edit]

R is comparable to popular commercial statistical packages such as SAS, SPSS, and Stata. One difference is that R is available at no charge under a free software license.[106]

In January 2009, the New York Times ran an article charting the growth of R, the reasons for its popularity among data scientists and the threat it poses to commercial statistical packages such as SAS.[107] In June 2017 data scientist Robert Muenchen published a more in-depth comparison between R and other software packages, "The Popularity of Data Science Software".[108]

R is more procedural than either SAS or SPSS, both of which make heavy use of pre-programmed procedures (called "procs") that are built-in to the language environment and customized by parameters of each call. R generally processes data in-memory, which limits its usefulness in processing larger files.[109]

Commercial support[edit]

Although R is an open-source project, some companies provide commercial support and extensions.

In 2007, Richard Schultz, Martin Schultz, Steve Weston and Kirk Mettler founded Revolution Analytics to provide commercial support for Revolution R, their distribution of R, which includes components developed by the company. Major additional components include: ParallelR, the R Productivity Environment IDE, RevoScaleR (for big data analysis), RevoDeployR, web services framework, and the ability for reading and writing data in the SAS file format.[110] Revolution Analytics offers an R distribution designed to comply with established IQ/OQ/PQ criteria that enables clients in the pharmaceutical sector to validate their installation of REvolution R.[111] In 2015, Microsoft Corporation acquired Revolution Analytics[112] and integrated the R programming language into SQL Server, Power BI, Azure SQL Managed Instance, Azure Cortana Intelligence, Microsoft ML Server and Visual Studio 2017.[113]

In October 2011, Oracle announced the Big Data Appliance, which integrates R, Apache Hadoop, Oracle Linux, and a NoSQL database with Exadata hardware.[114] As of 2012, Oracle R Enterprise[115] became one of two components of the "Oracle Advanced Analytics Option"[116] (alongside Oracle Data Mining).[citation needed]

IBM offers support for in-Hadoop execution of R,[117] and provides a programming model for massively parallel in-database analytics in R.[118]

TIBCO offers a runtime-version R as a part of Spotfire.[119]

Mango Solutions offers a validation package for R, ValidR,[120][121] to comply with drug approval agencies, such as the FDA. These agencies required the use of validated software, as attested by the vendor or sponsor.[122]


Basic syntax[edit]

The following examples illustrate the basic syntax of the language and use of the command-line interface. (An expanded list of standard language features can be found in the R manual, "An Introduction to R".[123])

In R, the generally preferred assignment operator is an arrow made from two characters <-, although = can be used in some cases.[124][125]

> x <- 1:6 # Create a numeric vector in the current environment
> y <- x^2 # Create vector based on the values in x.
> print(y) # Print the vector’s contents.
[1]  1  4  9 16 25 36

> z <- x + y # Create a new vector that is the sum of x and y
> z # Return the contents of z to the current environment.
[1]  2  6 12 20 30 42

> z_matrix <- matrix(z, nrow=3) # Create a new matrix that turns the vector z into a 3x2 matrix object
> z_matrix 
     [,1] [,2]
[1,]    2   20
[2,]    6   30
[3,]   12   42

> 2*t(z_matrix)-2 # Transpose the matrix, multiply every element by 2, subtract 2 from each element in the matrix, and return the results to the terminal.
     [,1] [,2] [,3]
[1,]    2   10   22
[2,]   38   58   82

> new_df <- data.frame(t(z_matrix), row.names=c('A','B')) # Create a new data.frame object that contains the data from a transposed z_matrix, with row names 'A' and 'B'
> names(new_df) <- c('X','Y','Z') # Set the column names of new_df as X, Y, and Z.
> print(new_df)  # Print the current results.
   X  Y  Z
A  2  6 12
B 20 30 42

> new_df$Z # Output the Z column
[1] 12 42

> new_df$Z==new_df['Z'] && new_df[3]==new_df$Z # The data.frame column Z can be accessed using $Z, ['Z'], or [3] syntax, and the values are the same. 
[1] TRUE

> attributes(new_df) # Print attributes information about the new_df object
[1] "X" "Y" "Z"

[1] "A" "B"

[1] "data.frame"

> attributes(new_df)$row.names <- c('one','two') # Access and then change the row.names attribute; can also be done using rownames()
> new_df
     X  Y  Z
one  2  6 12
two 20 30 42

Structure of a function[edit]

One of R's strengths is the ease of creating new functions. Objects in the function body remain local to the function, and any data type may be returned.[126] Example:

# Declare function “f” with parameters “x”, “y“
# that returns a linear combination of x and y.
f <- function(x, y) {
  z <- 3 * x + 4 * y
  return(z) ## the return() function is optional here
> f(1, 2)
[1] 11

> f(c(1,2,3), c(5,3,4))
[1] 23 18 25

> f(1:3, 4)
[1] 19 22 25

Modeling and plotting[edit]

The R language has built-in support for data modeling and graphics. The following example shows how R can easily generate and plot a linear model with residuals.

Diagnostic plots from plotting “model” (q.v. “plot.lm()” function). Notice the mathematical notation allowed in labels (lower left plot).
> x <- 1:6 # Create x and y values
> y <- x^2  
> model <- lm(y ~ x)  # Linear regression model y = A + B * x.
> summary(model)  # Display an in-depth summary of the model.

lm(formula = y ~ x)

      1       2       3       4       5       6       7       8      9      10
 3.3333 -0.6667 -2.6667 -2.6667 -0.6667  3.3333

            Estimate Std. Error t value Pr(>|t|)   
(Intercept)  -9.3333     2.8441  -3.282 0.030453 * 
x             7.0000     0.7303   9.585 0.000662 ***
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1

Residual standard error: 3.055 on 4 degrees of freedom
Multiple R-squared:  0.9583, Adjusted R-squared:  0.9478
F-statistic: 91.88 on 1 and 4 DF,  p-value: 0.000662

> par(mfrow = c(2, 2))  # Create a 2 by 2 layout for figures.
> plot(model)  # Output diagnostic plots of the model.

Mandelbrot set[edit]

Short R code calculating Mandelbrot set through the first 20 iterations of equation z = z2 + c plotted for different complex constants c. This example demonstrates:

"Mandelbrot.gif" – graphics created in R with 14 lines of code in Example 2
  • use of community-developed external libraries (called packages), in this case caTools package
  • handling of complex numbers
  • multidimensional arrays of numbers used as basic data type, see variables C, Z and X.
install.packages("caTools")  # install external package
library(caTools)             # external package providing write.gif function
jet.colors <- colorRampPalette(c("green", "pink", "#007FFF", "cyan", "#7FFF7F",
                                 "white", "#FF7F00", "red", "#7F0000"))
dx <- 1500                    # define width
dy <- 1400                    # define height
C  <- complex(real = rep(seq(-2.2, 1.0, length.out = dx), each = dy),
              imag = rep(seq(-1.2, 1.2, length.out = dy), dx))
C <- matrix(C, dy, dx)       # reshape as square matrix of complex numbers
Z <- 0                       # initialize Z to zero
X <- array(0, c(dy, dx, 20)) # initialize output 3D array
for (k in 1:20) {            # loop with 20 iterations
  Z <- Z^2 + C               # the central difference equation
  X[, , k] <- exp(-abs(Z))   # capture results
write.gif(X, "Mandelbrot.gif", col = jet.colors, delay = 100)

See also[edit]


  1. ^ As of 13 June 2020, Metacran listed 7 of the 8 core packages of the Tidyverse in the list of most download R packages.


  1. ^ a b Morandat, Frances; Hill, Brandon; Osvald, Leo; Vitek, Jan (11 June 2012). "Evaluating the design of the R language: objects and functions for data analysis". European Conference on Object-Oriented Programming. 2012: 104–131. doi:10.1007/978-3-642-31057-7_6. Retrieved 17 May 2016 – via SpringerLink.
  2. ^ Peter Dalgaard (23 June 2022). "R 4.2.1 is released". Retrieved 23 June 2022.
  3. ^ "R scripts". mercury.webster.edu. Retrieved 17 July 2021.
  4. ^ "R Data Format Family (.rdata, .rda)". Loc.gov. 9 June 2017. Retrieved 17 July 2021.
  5. ^ "Introduction". The Julia Manual. Archived from the original on 20 June 2018. Retrieved 5 August 2018.
  6. ^ Giorgi, Federico M.; Ceraolo, Carmine; Mercatelli, Daniele (27 April 2022). "The R Language: An Engine for Bioinformatics and Data Science". Life. 12 (5): 648. doi:10.3390/life12050648. ISSN 2075-1729. PMC 9148156. PMID 35629316.
  7. ^ R's popularity
  8. ^ "TIOBE Index - The Software Quality Company". TIOBE. Retrieved 12 March 2022.{{cite web}}: CS1 maint: url-status (link)
  9. ^ "TIOBE Index: The R Programming Language". TIOBE. Retrieved 23 May 2022.
  10. ^ a b c d e Kurt Hornik. The R FAQ: Why R?. ISBN 3-900051-08-9. Retrieved 29 January 2008.
  11. ^ Becker, Richard A., A Brief History of S, CiteSeerX, retrieved 12 January 2022
  12. ^ Sussman, Gerald Jay; Steele, Guy L. (1 December 1998). "The First Report on Scheme Revisited". Higher-Order and Symbolic Computation. 11 (4): 399–404. doi:10.1023/A:1010079421970. ISSN 1573-0557. S2CID 7704398.
  13. ^ "Academic unfazed by rock star status". NZ Herald. Retrieved 30 December 2021.
  14. ^ a b c d Ihaka, Ross (1998). R : Past and Future History (PDF) (Technical report). Statistics Department, The University of Auckland, Auckland, New Zealand.
  15. ^ "R license". r-project. Retrieved 5 August 2018.
  16. ^ GNU project
    • "GNU R". Free Software Foundation (FSF) Free Software Directory. 23 April 2018. Retrieved 7 August 2018.
    • R Project (n.d.). "What is R?". Retrieved 7 August 2018.
  17. ^ "Over 16 years of R Project history". Revolutions. Retrieved 30 May 2016.
  18. ^ Ihaka, Ross. "The R Project: A Brief History and Thoughts About the Future" (PDF). stat.auckland.ac.nz.
  19. ^ Kurt Hornik (23 April 1997). "Announce: CRAN". r-help. Wikidata Q101068595..
  20. ^ a b "CRAN - Mirrors". cran.r-project.org. Retrieved 15 January 2022.
  21. ^ "CRAN - Contributed Packages". cran.r-project.org. Retrieved 3 January 2022.
  22. ^ Hornik, Kurt (2012). "The Comprehensive R Archive Network". WIREs Computational Statistics. 4 (4): 394–398. doi:10.1002/wics.1212. ISSN 1939-5108. S2CID 62231320.
  23. ^ Fox, John (2009). "Aspects of the Social Organization and Trajectory of the R Project". The R Journal. 1 (2): 5. doi:10.32614/RJ-2009-014. ISSN 2073-4859.
  24. ^ "R: Contributors". R Project. Retrieved 14 July 2021.
  25. ^ Mächler, Martin; Hornik, Kurt (December 2014). "R Foundation News" (PDF). The R Journal. Retrieved 30 December 2021.{{cite web}}: CS1 maint: url-status (link)
  26. ^ a b c Dalgaard, Peter (2002). Introductory Statistics with R. New York, Berlin, Heidelberg: Springer-Verlag. pp. 10–18, 34. ISBN 0387954759.
  27. ^ An Introduction to R, Section 5.1: Arrays. Retrieved in 2010-03 from https://cran.r-project.org/doc/manuals/R-intro.html#Arrays.
  28. ^ Chen, Han-feng; Wai-mee, Ching; Da, Zheng. "A Comparison Study on Execution Performance of MATLAB and APL" (PDF). McGill University. Retrieved 16 February 2022.
  29. ^ Ihaka, Ross; Gentlman, Robert (September 1996). "R: A Language for Data Analysis and Graphics" (PDF). Journal of Computational and Graphical Statistics. American Statistical Association. 5 (3): 299–314. doi:10.2307/1390807. JSTOR 1390807. Retrieved 12 May 2014.
  30. ^ "Data structures · Advanced R." adv-r.had.co.nz. Retrieved 26 September 2016.
  31. ^ "R: What is R?". R-project.org. Retrieved 17 February 2022.
  32. ^ White, Homer. 14.1 Programming Paradigms | Beginning Computer Science with R.
  33. ^ Jackman, Simon (Spring 2003). "R For the Political Methodologist" (PDF). The Political Methodologist. Political Methodology Section, American Political Science Association. 11 (1): 20–22. Archived from the original (PDF) on 21 July 2006. Retrieved 13 September 2018.
  34. ^ Eddelbuettel, Dirk; Francois, Romain (2011). "Rcpp: Seamless R and C++ Integration". Journal of Statistical Software. 40 (8). doi:10.18637/jss.v040.i08.
  35. ^ "nution-j2r: Java library to invoke R native functions". Retrieved 13 September 2018.
  36. ^ .NET Framework
  37. ^ R manuals. "Writing R Extensions". r-project.org. Retrieved 13 September 2018.
  38. ^ "Functions · Advanced R." adv-r.had.co.nz.
  39. ^ R Core Team. "Print Values". R Documentation. R Foundation for Statistical Computing. Retrieved 30 May 2016.
  40. ^ Hadley, Wickham; Bryan, Jenny. "R packages: Organize, Test, Document, and Share Your Code". {{cite journal}}: Cite journal requires |journal= (help)
  41. ^ Chambers, John M. (2020). "S, R, and Data Science". The R Journal. 12 (1): 462–476. doi:10.32614/RJ-2020-028. ISSN 2073-4859.
  42. ^ Vance, Ashlee (6 January 2009). "Data Analysts Captivated by R's Power". New York Times.
  43. ^ Tippmann, Sylvia (29 December 2014). "Programming tools: Adventures with R". Nature News. 517 (7532): 109–110. doi:10.1038/517109a. PMID 25557714.
  44. ^ Thieme, Nick (2018). "R generation". Significance. 15 (4): 14–19. doi:10.1111/j.1740-9713.2018.01169.x. ISSN 1740-9713.
  45. ^ widely used
  46. ^ Marwick, Ben; Boettiger, Carl; Mullen, Lincoln (26 August 2017). "Packaging data analytical work reproducibly using R (and friends)". PeerJ Preprints. doi:10.7287/peerj.preprints.3192v1. ISSN 2167-9843.
  47. ^ a b Theußl, Stefan; Zeileis, Achim (2009). "Collaborative Software Development Using R-Forge". The R Journal. 1 (1): 9. doi:10.32614/RJ-2009-007. ISSN 2073-4859.
  48. ^ "Omegahat.net". Omegahat.net. Retrieved 16 September 2018.
  49. ^ packages available from repositories
  50. ^ Wickham, Hadley; Bryan, Jennifer. Chapter 10 Object documentation | R Packages.
  51. ^ "Rd formatting". cran.r-project.org. Retrieved 16 August 2021.
  52. ^ "CRAN Task Views". cran.r-project.org. Retrieved 16 September 2018.
  53. ^ a b Hornik, Kurt; Zeileis, Achim (2013). "Changes on CRAN" (PDF). The R Journal. 5 (1): 239–264.
  54. ^ "FDA: R OK for drug trials". Retrieved 16 September 2018.
  55. ^ "CRAN Time Machine. MRAN". Retrieved 26 December 2019.
  56. ^ "R-Forge: Welcome". Retrieved 16 September 2018.
  57. ^ Huber, W; Carey, VJ; Gentleman, R; Anders, S; Carlson, M; Carvalho, BS; Bravo, HC; Davis, S; Gatto, L; Girke, T; Gottardo, R; Hahne, F; Hansen, KD; Irizarry, RA; Lawrence, M; Love, MI; MacDonald, J; Obenchain, V; Oleś, AK; Pagès, H; Reyes, A; Shannon, P; Smyth, GK; Tenenbaum, D; Waldron, L; Morgan, M (2015). "Orchestrating high-throughput genomic analysis with Bioconductor". Nature Methods. Nature Publishing Group. 12 (2): 115–121. doi:10.1038/nmeth.3252. PMC 4509590. PMID 25633503.
  58. ^ Lewin-Koh, Nicholas (7 January 2015). "CRAN Task View: Graphic Displays & Dynamic Graphics & Graphic Devices & Visualization". The Comprehensive R Archive Network. Archived from the original on 26 September 2016. Retrieved 13 September 2018. {{cite journal}}: Cite journal requires |journal= (help)
  59. ^ "Spark API Documentation". Spark.
  60. ^ "SparkR (R on Spark)". Spark.
  61. ^ Changes in versions 3.0.0 onward: "R News". cran.r-project.org. Retrieved 3 July 2014. Earlier change logs (by major release number):
    • "NEWS". cran.r-project.org. Retrieved 28 June 2020.
    • "NEWS.3". cran.r-project.org. Retrieved 28 June 2020.
    • "NEWS.2". cran.r-project.org. Retrieved 8 April 2017.
    • "NEWS.1". cran.r-project.org. Retrieved 8 April 2017.
    • "NEWS.0". cran.r-project.org. Retrieved 8 April 2017.
  62. ^ "Index of /src/base/R-0". cran.r-project.org.
  63. ^ "ANNOUNCE: CRAN". stat.ethz.ch.
  64. ^ "0.99 SERIES NEWS : CHANGES IN R VERSION 0.99.0". Cran.r-project.org. Retrieved 18 February 2022.
  65. ^ Peter Dalgaard. "R-1.0.0 is released". Stat.ethz.ch. Retrieved 6 June 2009.
  66. ^ "CHANGES IN R VERSION 2.7.0". Cran-archive.r-project.org. Retrieved 18 February 2022.
  67. ^ "R FAQ". Cran.r-project.org. Retrieved 20 March 2020.
  68. ^ Ottoboni, Kellie; Stark, Philip B. (2018). "Random problems with R". arXiv:1809.06520 [cs.MS].
  69. ^ "Recommendations for Windows text editor for R (StackOverflow)". Stackoverflow.com. Retrieved 20 December 2020.
  70. ^ a b "Poll: R GUIs you use frequently (2011)". kdnuggets.com. Retrieved 18 September 2018.
  71. ^ a b "R Programming - The State of Developer Ecosystem in 2020 Infographic". JetBrains: Developer Tools for Professionals and Teams. Retrieved 16 August 2021.
  72. ^ Stephan Wahlbrink. "StatET for R".
  73. ^ "Work with R in Visual Studio". Retrieved 14 December 2020.
  74. ^ "Nvim-R - Plugin to work with R : vim online". Vim.org. Retrieved 6 March 2019.
  75. ^ "Syntax Highlighting". Kate Development Team. Archived from the original on 7 July 2008. Retrieved 9 July 2008.
  76. ^ Paul E. Johnson & Gregor Gorjanc. "LyX with R through Sweave". Retrieved 4 April 2017.
  77. ^ "NppToR: R in Notepad++". sourceforge.net. 8 May 2013. Retrieved 18 September 2013.
  78. ^ Uwe Ligges (5 January 2017). "RWinEdt: R Interface to 'WinEdt'". Retrieved 4 April 2017.
  79. ^ "Tinn-R". Retrieved 5 March 2019.
  80. ^ "Using the R programming language in Jupyter Notebook". Anaconda. Retrieved 14 September 2020.
  81. ^ Gautier, Laurent. "rpy2 - R in Python". Retrieved 30 November 2021.{{cite web}}: CS1 maint: url-status (link)
  82. ^ Florent Angly. "Statistics::R - Perl interface with the R statistical program". Metacpan.org.
  83. ^ Alex Gutteridge (15 July 2021). "GitHub - alexgutteridge/rsruby: Ruby - R bridge". Github.com.
  84. ^ BlueMountain Capital. "F# R Type Provider".
  85. ^ "JuliaInterop/RCall.jl". Github.com. 2 June 2021.
  86. ^ "Rserve - Binary R server - RForge.net". Rforge.net.
  87. ^ "konne/RserveCLI2". Github.com. 8 March 2021.
  88. ^ "R.NET". Jmp75.github.io. Retrieved 18 February 2022.
  89. ^ "r-source: Read only mirror of R source code on GitHub". GitHub. Retrieved 14 September 2019.
  90. ^ Talbot, Justin; DeVito, Zachary; Hanrahan, Pat (1 January 2012). "Riposte: A Trace-driven Compiler and Parallel VM for Vector Code in R". Proceedings of the 21st International Conference on Parallel Architectures and Compilation Techniques. ACM: 43–52. doi:10.1145/2370816.2370825. S2CID 1989369.
  91. ^ Neal, Radford (25 July 2013). "Deferred evaluation in Renjin, Riposte, and pqR". Radford Neal's blog. Retrieved 6 March 2017.
  92. ^ Jackson, Joab (16 May 2013). TIBCO offers free R to the enterprise. PC World. Retrieved 20 July 2015.
  93. ^ "Home". mran.microsoft.com. Retrieved 22 November 2021.
  94. ^ "Microsoft R Open: The Enhanced R Distribution". Retrieved 30 June 2018.
  95. ^ "Looking to the future for R in Azure SQL and SQL Server". 30 June 2021. Retrieved 7 November 2021.
  96. ^ "Local R User Group Directory". Revolutions Blog. Retrieved 12 May 2018.
  97. ^ A list of R conferences and meetings. Jumping Rivers. Retrieved 12 May 2018.
  98. ^ "official website of WhyR? conference". WhyR?. Retrieved 26 June 2019.
  99. ^ "SatRdays listing". SatRdays. Retrieved 26 June 2019.
  100. ^ "R Project for Statistical Computing". Meetup. Retrieved 12 May 2018.
  101. ^ "R Ladies". R Ladies. Retrieved 12 May 2018.
  102. ^ "Forwards". Retrieved 23 March 2020.
  103. ^ a b "R: Conferences". r-project.org. 1 November 2019. Retrieved 19 November 2019.
  104. ^ "useR! 2004 - The R User Conference". 27 May 2004. Retrieved 9 September 2018.
  105. ^ R Project (9 August 2013). "R-related Conferences". Retrieved 15 August 2019.
  106. ^ Burns, Patrick (27 February 2007). "Comparison of R to SAS, Stata and SPSS" (PDF). Retrieved 18 September 2013.
  107. ^ R as competition for commercial statistical packages
  108. ^ Muenchen, Robert (19 June 2017). "The Popularity of Data Science Software". Retrieved 21 November 2018.
  109. ^ "R vs. SPSS".
  110. ^ Morgan, Timothy Prickett (2011-02-07). "'Red Hat for stats' goes toe-to-toe with SAS". The Register, 7 February 2011. Retrieved from https://www.theregister.co.uk/2011/02/07/revolution_r_sas_challenge/.
  111. ^ "Analyzing clinical trial data for FDA submissions with R". Revolution Analytics. 14 January 2009. Retrieved 20 September 2018.
  112. ^ Sirosh, Joseph. "Microsoft Closes Acquisition of Revolution Analytics". blogs.technet.com. Microsoft. Retrieved 20 September 2018.
  113. ^ "Introducing R Tools for Visual Studio". Retrieved 20 September 2018.
  114. ^ Oracle Corporation's Big Data Appliance
  115. ^ Chris Kanaracus (2012); Oracle Stakes Claim in R With Advanced Analytics Launch, PC World, February 8, 2012.
  116. ^ Doug Henschen (2012); Oracle Stakes Claim in R With Advanced Analytics Launch, InformationWeek, April 4, 2012.
  117. ^ "What's New in IBM InfoSphere BigInsights v2.1.2". IBM. Archived from the original on 6 September 2014. Retrieved 8 May 2014.
  118. ^ "IBM PureData System for Analytics" (PDF). IBM. Archived from the original (PDF) on 17 May 2014. Retrieved 8 May 2014.
  119. ^ Tibco. "Unleash the agility of R for the Enterprise". Retrieved 15 May 2014.
  120. ^ "ValidR on Mango website". Retrieved 24 September 2018.
  121. ^ Andy Nicholls at Mango Solutions. "ValidR Enterprise: Developing an R Validation Framework" (PDF). Retrieved 24 September 2018.
  122. ^ FDA. "Statistical Software Clarifying Statement" (PDF). Food and Drug Administration. Retrieved 24 September 2018.
  123. ^ "An Introduction to R. Notes on R: A Programming Environment for Data Analysis and Graphics" (PDF). Retrieved 3 January 2021.
  124. ^ R Development Core Team. "Assignments with the = Operator". Retrieved 11 September 2018.
  125. ^ most used assignment operator in R is <-
  126. ^ Kabacoff, Robert (2012). "Quick-R: User-Defined Functions". statmethods.net. Retrieved 28 September 2018.

External links[edit]