.C and .Fortrandyn.load and dyn.unload.Call and .External
Next: Acknowledgements [Contents][Index]
This is a guide to extending R, describing the process of creating R add-on packages, writing R documentation, R’s system and foreign language interfaces, and the R API.
This manual is for R, version 3.5.2 (2018-12-20).
Copyright © 1999–2018 R Core Team
Permission is granted to make and distribute verbatim copies of this manual provided the copyright notice and this permission notice are preserved on all copies.
Permission is granted to copy and distribute modified versions of this manual under the conditions for verbatim copying, provided that the entire resulting derived work is distributed under the terms of a permission notice identical to this one.
Permission is granted to copy and distribute translations of this manual into another language, under the above conditions for modified versions, except that this permission notice may be stated in a translation approved by the R Core Team.
Next: Creating R packages, Previous: Top, Up: Top [Contents][Index]
The contributions to early versions of this manual by Saikat DebRoy
(who wrote the first draft of a guide to using .Call and
.External) and Adrian Trapletti (who provided information on the
C++ interface) are gratefully acknowledged.
Next: Writing R documentation files, Previous: Acknowledgements, Up: Top [Contents][Index]
Packages provide a mechanism for loading optional code, data and documentation as needed. The R distribution itself includes about 30 packages.
In the following, we assume that you know the library() command,
including its lib.loc argument, and we also assume basic
knowledge of the R CMD INSTALL utility. Otherwise, please
look at R’s help pages on
?library ?INSTALL
before reading on.
For packages which contain code to be compiled, a computing environment including a number of tools is assumed; the “R Installation and Administration” manual describes what is needed for each OS.
Once a source package is created, it must be installed by
the command R CMD INSTALL.
See Add-on-packages in R Installation and Administration.
Other types of extensions are supported (but rare): See Package types.
Some notes on terminology complete this introduction. These will help with the reading of this manual, and also in describing concepts accurately when asking for help.
A package is a directory of files which extend R, a
source package (the master files of a package), or a tarball
containing the files of a source package, or an installed
package, the result of running R CMD INSTALL on a source
package. On some platforms (notably macOS and Windows) there are also
binary packages, a zip file or tarball containing the files of an
installed package which can be unpacked rather than installing from
sources.
A package is not1 a library. The latter is used in two senses in R documentation.
There are a number of well-defined operations on source packages.
R CMD INSTALL or
install.packages.
library(), but since the advent of package
namespaces this has been less clear: people now often talk about
loading the package’s namespace and then attaching the
package so it becomes visible on the search path. Function
library performs both steps, but a package’s namespace can be
loaded without the package being attached (for example by calls like
splines::ns).
The concept of lazy loading of code or data is mentioned at several points. This is part of the installation, always selected for R code but optional for data. When used the R objects of the package are created at installation time and stored in a database in the R directory of the installed package, being loaded into the session at first use. This makes the R session start up faster and use less (virtual) memory. (For technical details, see Lazy loading in R Internals.)
CRAN is a network of WWW sites holding the R distributions and contributed code, especially R packages. Users of R are encouraged to join in the collaborative project and to submit their own packages to CRAN: current instructions are linked from https://CRAN.R-project.org/banner.shtml#submitting.
Next: Configure and cleanup, Previous: Creating R packages, Up: Creating R packages [Contents][Index]
The sources of an R package consists of a subdirectory containing a
files DESCRIPTION and NAMESPACE, and the subdirectories
R, data, demo, exec, inst,
man, po, src, tests, tools and
vignettes (some of which can be missing, but which should not be
empty). The package subdirectory may also contain files INDEX,
configure, cleanup, LICENSE, LICENCE and
NEWS. Other files such as INSTALL (for non-standard
installation instructions), README/README.md2, or ChangeLog will be ignored by R, but may
be useful to end users. The utility R CMD build may add files
in a build directory (but this should not be used for other
purposes).
Except where specifically mentioned,3 packages should not contain Unix-style ‘hidden’ files/directories (that is, those whose name starts with a dot).
The DESCRIPTION and INDEX files are described in the subsections below. The NAMESPACE file is described in the section on Package namespaces.
The optional files configure and cleanup are (Bourne) shell scripts which are, respectively, executed before and (if option --clean was given) after installation on Unix-alikes, see Configure and cleanup. The analogues on Windows are configure.win and cleanup.win.
For the conventions for files NEWS and ChangeLog in the GNU project see https://www.gnu.org/prep/standards/standards.html#Documentation.
The package subdirectory should be given the same name as the package. Because some file systems (e.g., those on Windows and by default on OS X) are not case-sensitive, to maintain portability it is strongly recommended that case distinctions not be used to distinguish different packages. For example, if you have a package named foo, do not also create a package named Foo.
To ensure that file names are valid across file systems and supported
operating systems, the ASCII control characters as well as the
characters ‘"’, ‘*’, ‘:’, ‘/’, ‘<’, ‘>’,
‘?’, ‘\’, and ‘|’ are not allowed in file names. In
addition, files with names ‘con’, ‘prn’, ‘aux’,
‘clock$’, ‘nul’, ‘com1’ to ‘com9’, and ‘lpt1’
to ‘lpt9’ after conversion to lower case and stripping possible
“extensions” (e.g., ‘lpt5.foo.bar’), are disallowed. Also, file
names in the same directory must not differ only by case (see the
previous paragraph). In addition, the basenames of ‘.Rd’ files may
be used in URLs and so must be ASCII and not contain %.
For maximal portability filenames should only contain only
ASCII characters not excluded already (that is
A-Za-z0-9._!#$%&+,;=@^(){}'[] — we exclude space as many
utilities do not accept spaces in file paths): non-English alphabetic
characters cannot be guaranteed to be supported in all locales. It
would be good practice to avoid the shell metacharacters
(){}'[]$~: ~ is also used as part of ‘8.3’ filenames on
Windows. In addition, packages are normally distributed as tarballs,
and these have a limit on path lengths: for maximal portability 100
bytes.
A source package if possible should not contain binary executable files:
they are not portable, and a security risk if they are of the
appropriate architecture. R CMD check will warn about
them4 unless they are listed (one filepath per line) in a file
BinaryFiles at the top level of the package. Note that
CRAN will not accept submissions containing binary files
even if they are listed.
The R function package.skeleton can help to create the
structure for a new package: see its help page for details.
| • The DESCRIPTION file: | ||
| • Licensing: | ||
| • Package Dependencies: | ||
| • The INDEX file: | ||
| • Package subdirectories: | ||
| • Data in packages: | ||
| • Non-R scripts in packages: | ||
| • Specifying URLs: |
Next: Licensing, Previous: Package structure, Up: Package structure [Contents][Index]
The DESCRIPTION file contains basic information about the package in the following format:
Package: pkgname Version: 0.5-1 Date: 2015-01-01 Title: My First Collection of Functions Authors@R: c(person("Joe", "Developer", role = c("aut", "cre"), email = "Joe.Developer@some.domain.net"), person("Pat", "Developer", role = "aut"), person("A.", "User", role = "ctb", email = "A.User@whereever.net")) Author: Joe Developer [aut, cre], Pat Developer [aut], A. User [ctb] Maintainer: Joe Developer <Joe.Developer@some.domain.net> Depends: R (>= 3.1.0), nlme Suggests: MASS Description: A (one paragraph) description of what the package does and why it may be useful. License: GPL (>= 2) URL: https://www.r-project.org, http://www.another.url BugReports: https://pkgname.bugtracker.url
The format is that of a version of a ‘Debian Control File’ (see the help for ‘read.dcf’ and https://www.debian.org/doc/debian-policy/index.html#document-ch-controlfields: R does not require encoding in UTF-8 and does not support comments starting with ‘#’). Fields start with an ASCII name immediately followed by a colon: the value starts after the colon and a space. Continuation lines (for example, for descriptions longer than one line) start with a space or tab. Field names are case-sensitive: all those used by R are capitalized.
For maximal portability, the DESCRIPTION file should be written entirely in ASCII — if this is not possible it must contain an ‘Encoding’ field (see below).
Several optional fields take logical values: these can be specified as ‘yes’, ‘true’, ‘no’ or ‘false’: capitalized values are also accepted.
The ‘Package’, ‘Version’, ‘License’, ‘Description’, ‘Title’, ‘Author’, and ‘Maintainer’ fields are mandatory, all other fields are optional. Fields ‘Author’ and ‘Maintainer’ can be auto-generated from ‘Authors@R’, and may be omitted if the latter is provided: however if they are not ASCII we recommend that they are provided.
The mandatory ‘Package’ field gives the name of the package. This should contain only (ASCII) letters, numbers and dot, have at least two characters and start with a letter and not end in a dot. If it needs explaining, this should be done in the ‘Description’ field (and not the ‘Title’ field).
The mandatory ‘Version’ field gives the version of the package.
This is a sequence of at least two (and usually three)
non-negative integers separated by single ‘.’ or ‘-’
characters. The canonical form is as shown in the example, and a
version such as ‘0.01’ or ‘0.01.0’ will be handled as if it
were ‘0.1-0’. It is not a decimal number, so for example
0.9 < 0.75 since 9 < 75.
The mandatory ‘License’ field is discussed in the next subsection.
The mandatory ‘Title’ field should give a short description
of the package. Some package listings may truncate the title to 65
characters. It should use title case (that is, use capitals for
the principal words: tools::toTitleCase can help you with this),
not use any markup, not have any continuation lines, and not end in a
period (unless part of …). Do not repeat the package name: it is
often used prefixed by the name. Refer to other packages and external
software in single quotes, and to book titles (and similar) in double
quotes.
The mandatory ‘Description’ field should give a comprehensive description of what the package does. One can use several (complete) sentences, but only one paragraph. It should be intelligible to all the intended readership (e.g. for a CRAN package to all CRAN users). It is good practice not to start with the package name, ‘This package’ or similar. As with the ‘Title’ field, double quotes should be used for quotations (including titles of books and articles), and single quotes for non-English usage, including names of other packages and external software. This field should also be used for explaining the package name if necessary. URLs should be enclosed in angle brackets, e.g. ‘<https://www.r-project.org>’: see also Specifying URLs.
The mandatory ‘Author’ field describes who wrote the package. It is a plain text field intended for human readers, but not for automatic processing (such as extracting the email addresses of all listed contributors: for that use ‘Authors@R’). Note that all significant contributors must be included: if you wrote an R wrapper for the work of others included in the src directory, you are not the sole (and maybe not even the main) author.
The mandatory ‘Maintainer’ field should give a single name
followed by a valid (RFC 2822) email address in angle brackets. It
should not end in a period or comma. This field is what is reported by
the maintainer function and used by bug.report. For a
CRAN package it should be a person, not a mailing list
and not a corporate entity: do ensure that it is valid and will remain
valid for the lifetime of the package.
Note that the display name (the part before the address in angle brackets) should be enclosed in double quotes if it contains non-alphanumeric characters such as comma or period. (The current standard, RFC 5322, allows periods but RFC 2822 did not.)
Both ‘Author’ and ‘Maintainer’ fields can be omitted if a
suitable ‘Authors@R’ field is given. This field can be used to
provide a refined and machine-readable description of the package
“authors” (in particular specifying their precise roles), via
suitable R code. It should create an object of class "person",
by either a call to person or a series of calls (one per
“author”) concatenated by c(): see the example
DESCRIPTION file above. The roles can include ‘"aut"’
(author) for full authors, ‘"cre"’ (creator) for the package
maintainer, and ‘"ctb"’ (contributor) for other contributors,
‘"cph"’ (copyright holder), among others. See ?person for
more information. Note that no role is assumed by default.
Auto-generated package citation information takes advantage of this
specification. The ‘Author’ and ‘Maintainer’ fields are
auto-generated from it if needed when building5 or installing.
An optional ‘Copyright’ field can be used where the copyright holder(s) are not the authors. If necessary, this can refer to an installed file: the convention is to use file inst/COPYRIGHTS.
The optional ‘Date’ field gives the release date of the current version of the package. It is strongly recommended6 to use the ‘yyyy-mm-dd’ format conforming to the ISO 8601 standard.
The ‘Depends’, ‘Imports’, ‘Suggests’, ‘Enhances’, ‘LinkingTo’ and ‘Additional_repositories’ fields are discussed in a later subsection.
Dependencies external to the R system should be listed in the ‘SystemRequirements’ field, possibly amplified in a separate README file.
The ‘URL’ field may give a list of URLs separated by commas or whitespace, for example the homepage of the author or a page where additional material describing the software can be found. These URLs are converted to active hyperlinks in CRAN package listings. See Specifying URLs.
The ‘BugReports’ field may contain a single URL to which
bug reports about the package should be submitted. This URL
will be used by bug.report instead of sending an email to the
maintainer. A browser is opened for a ‘http://’ or ‘https://’
URL. As from R 3.4.0, bug.report will try to
extract an email address (preferably from a ‘mailto:’ URL or
enclosed in angle brackets).
Base and recommended packages (i.e., packages contained in the R source distribution or available from CRAN and recommended to be included in every binary distribution of R) have a ‘Priority’ field with value ‘base’ or ‘recommended’, respectively. These priorities must not be used by other packages.
A ‘Collate’ field can be used for controlling the collation order for the R code files in a package when these are processed for package installation. The default is to collate according to the ‘C’ locale. If present, the collate specification must list all R code files in the package (taking possible OS-specific subdirectories into account, see Package subdirectories) as a whitespace separated list of file paths relative to the R subdirectory. Paths containing white space or quotes need to be quoted. An OS-specific collation field (‘Collate.unix’ or ‘Collate.windows’) will be used in preference to ‘Collate’.
The ‘LazyData’ logical field controls whether the R datasets use lazy-loading. A ‘LazyLoad’ field was used in versions prior to 2.14.0, but now is ignored.
The ‘KeepSource’ logical field controls if the package code is sourced
using keep.source = TRUE or FALSE: it might be needed
exceptionally for a package designed to always be used with
keep.source = TRUE.
The ‘ByteCompile’ logical field controls if the package code is to be byte-compiled on installation: since R 3.5.0, the default is to byte-compile. Prior to R 3.5.0, the default was not to, but recommended packages were already byte-compiled. This can be overridden by installing with flag --no-byte-compile.
The ‘ZipData’ logical field was used to control whether the automatic Windows build would zip up the data directory or not prior to R 2.13.0: it is now ignored.
The ‘Biarch’ logical field is used on Windows to select the
INSTALL option --force-biarch for this package.
The ‘BuildVignettes’ logical field can be set to a false value to
stop R CMD build from attempting to build the vignettes, as
well as preventing7 R CMD check from testing
this. This should only be used exceptionally, for example if the PDFs
include large figures which are not part of the package sources (and
hence only in packages which do not have an Open Source license).
The ‘VignetteBuilder’ field names (in a comma-separated list) packages that provide an engine for building vignettes. These may include the current package, or ones listed in ‘Depends’, ‘Suggests’ or ‘Imports’. The utils package is always implicitly appended. See Non-Sweave vignettes for details. Note that if, for example, the vignette ‘engine’ is ‘knitr::rmarkdown’ this field needs to declare both knitr and rmarkdown.
If the DESCRIPTION file is not entirely in ASCII it
should contain an ‘Encoding’ field specifying an encoding. This is
used as the encoding of the DESCRIPTION file itself and of the
R and NAMESPACE files, and as the default encoding of
.Rd files. The examples are assumed to be in this encoding when
running R CMD check, and it is used for the encoding of the
CITATION file. Only encoding names latin1, latin2
and UTF-8 are known to be portable. (Do not specify an encoding
unless one is actually needed: doing so makes the package less
portable. If a package has a specified encoding, you should run
R CMD build etc in a locale using that encoding.)
The ‘NeedsCompilation’ field should be set to "yes" if the
package contains code which to be compiled, otherwise "no" (when
the package could be installed from source on any platform without
additional tools). This is used by install.packages(type =
"both") in R >= 2.15.2 on platforms where binary packages are the
norm: it is normally set by R CMD build or the repository
assuming compilation is required if and only if the package has a
src directory.
The ‘OS_type’ field specifies the OS(es) for which the
package is intended. If present, it should be one of unix or
windows, and indicates that the package can only be installed
on a platform with ‘.Platform$OS.type’ having that value.
The ‘Type’ field specifies the type of the package: see Package types.
One can add subject classifications for the content of the package using the fields ‘Classification/ACM’ or ‘Classification/ACM-2012’ (using the Computing Classification System of the Association for Computing Machinery, http://www.acm.org/about/class/; the former refers to the 1998 version), ‘Classification/JEL’ (the Journal of Economic Literature Classification System, https://www.aeaweb.org/econlit/jelCodes.php, or ‘Classification/MSC’ or ‘Classification/MSC-2010’ (the Mathematics Subject Classification of the American Mathematical Society, http://www.ams.org/msc/; the former refers to the 2000 version). The subject classifications should be comma-separated lists of the respective classification codes, e.g., ‘Classification/ACM: G.4, H.2.8, I.5.1’.
A ‘Language’ field can be used to indicate if the package documentation is not in English: this should be a comma-separated list of standard (not private use or grandfathered) IETF language tags as currently defined by RFC 5646 (https://tools.ietf.org/html/rfc5646, see also https://en.wikipedia.org/wiki/IETF_language_tag), i.e., use language subtags which in essence are 2-letter ISO 639-1 (https://en.wikipedia.org/wiki/ISO_639-1) or 3-letter ISO 639-3 (https://en.wikipedia.org/wiki/ISO_639-3) language codes.
An ‘RdMacros’ field can be used to hold a comma-separated list of
packages from which the current package will import Rd macro
definitions. These package should also be listed in ‘Imports’,
‘Suggests’ or ‘Depends’. The macros in these packages will be
imported after the system macros, in the
order listed in the ‘RdMacros’ field, before any macro definitions
in the current package are loaded. Macro definitions in individual
.Rd files in the man directory are loaded last, and are
local to later parts of that file. In case of duplicates, the last
loaded definition will be used8 Both R CMD
Rd2pdf and R CMD Rdconv have an optional flag
--RdMacros=pkglist. The option is also a comma-separated list
of package names, and has priority over the value given in
DESCRIPTION. Packages using Rd macros should depend on
R 3.2.0 or later.
Note: There should be no ‘Built’ or ‘Packaged’ fields, as these are added by the package management tools.
There is no restriction on the use of other fields not mentioned here
(but using other capitalizations of these field names would cause
confusion). Fields Note, Contact (for contacting the
authors/developers9) and MailingList are in common use. Some
repositories (including CRAN and R-forge) add their own
fields.
Next: Package Dependencies, Previous: The DESCRIPTION file, Up: Package structure [Contents][Index]
Licensing for a package which might be distributed is an important but potentially complex subject.
It is very important that you include license information! Otherwise, it may not even be legally correct for others to distribute copies of the package, let alone use it.
The package management tools use the concept of ‘free or open source software’ (FOSS, e.g., https://en.wikipedia.org/wiki/FOSS) licenses: the idea being that some users of R and its packages want to restrict themselves to such software. Others need to ensure that there are no restrictions stopping them using a package, e.g. forbidding commercial or military use. It is a central tenet of FOSS software that there are no restrictions on users nor usage.
Do not use the ‘License’ field for information on copyright holders: if needed, use a ‘Copyright’ field.
The mandatory ‘License’ field in the DESCRIPTION file should specify the license of the package in a standardized form. Alternatives are indicated via vertical bars. Individual specifications must be one of
GPL-2 GPL-3 LGPL-2 LGPL-2.1 LGPL-3 AGPL-3 Artistic-2.0 BSD_2_clause BSD_3_clause MIT
as made available via https://www.R-project.org/Licenses/ and contained in subdirectory share/licenses of the R source or home directory.
Abbreviations GPL and LGPL are ambiguous and
usually10 taken to mean any version of the license: but it is better
not to use them.
If a package license restricts a base license (where permitted, e.g., using GPL-3 or AGPL-3 with an attribution clause), the additional terms should be placed in file LICENSE (or LICENCE), and the string ‘+ file LICENSE’ (or ‘+ file LICENCE’, respectively) should be appended to the corresponding individual license specification. Note that several commonly used licenses do not permit restrictions: this includes GPL-2 and hence any specification which includes it.
Examples of standardized specifications include
License: GPL-2 License: LGPL (>= 2.0, < 3) | Mozilla Public License License: GPL-2 | file LICENCE License: GPL (>= 2) | BSD_3_clause + file LICENSE License: Artistic-2.0 | AGPL-3 + file LICENSE
Please note in particular that “Public domain” is not a valid license, since it is not recognized in some jurisdictions.
Please ensure that the license you choose also covers any dependencies (including system dependencies) of your package: it is particularly important that any restrictions on the use of such dependencies are evident to people reading your DESCRIPTION file.
Fields ‘License_is_FOSS’ and ‘License_restricts_use’ may be
added by repositories where information cannot be computed from the name
of the license. ‘License_is_FOSS: yes’ is used for licenses which
are known to be FOSS, and ‘License_restricts_use’ can have values
‘yes’ or ‘no’ if the LICENSE file is known to restrict
users or usage, or known not to. These are used by, e.g., the
available.packages filters.
The optional file LICENSE/LICENCE contains a copy of the license of the package. To avoid any confusion only include such a file if it is referred to in the ‘License’ field of the DESCRIPTION file.
Whereas you should feel free to include a license file in your source distribution, please do not arrange to install yet another copy of the GNU COPYING or COPYING.LIB files but refer to the copies on https://www.R-project.org/Licenses/ and included in the R distribution (in directory share/licenses). Since files named LICENSE or LICENCE will be installed, do not use these names for standard license files. To include comments about the licensing rather than the body of a license, use a file named something like LICENSE.note.
A few “standard” licenses are rather license templates which need additional information to be completed via ‘+ file LICENSE’.
Next: The INDEX file, Previous: Licensing, Up: Package structure [Contents][Index]
The ‘Depends’ field gives a comma-separated list of package names
which this package depends on. Those packages will be attached before
the current package when library or require is called.
Each package name may be optionally followed by a comment in parentheses
specifying a version requirement. The comment should contain a
comparison operator, whitespace and a valid version number,
e.g. ‘MASS (>= 3.1-20)’.
The ‘Depends’ field can also specify a dependence on a certain version of R — e.g., if the package works only with R version 3.0.0 or later, include ‘R (>= 3.0.0)’ in the ‘Depends’ field. You can also require a certain SVN revision for R-devel or R-patched, e.g. ‘R (>= 2.14.0), R (>= r56550)’ requires a version later than R-devel of late July 2011 (including released versions of 2.14.0).
It makes no sense to declare a dependence on R without a version
specification, nor on the package base: this is an R package
and package base is always available.
A package or ‘R’ can appear more than once in the ‘Depends’ field, for example to give upper and lower bounds on acceptable versions.
It is inadvisable to use a dependence on R with patchlevel (the third digit) other than zero. Doing so with packages which others depend on will cause the other packages to become unusable under earlier versions in the series, and e.g. versions 3.x.1 are widely used throughout the Northern Hemisphere academic year.
Both library and the R package checking facilities use this
field: hence it is an error to use improper syntax or misuse the
‘Depends’ field for comments on other software that might be
needed. The R INSTALL facilities check if the version of
R used is recent enough for the package being installed, and the list
of packages which is specified will be attached (after checking version
requirements) before the current package.
The ‘Imports’ field lists packages whose namespaces are imported from (as specified in the NAMESPACE file) but which do not need to be attached. Namespaces accessed by the ‘::’ and ‘:::’ operators must be listed here, or in ‘Suggests’ or ‘Enhances’ (see below). Ideally this field will include all the standard packages that are used, and it is important to include S4-using packages (as their class definitions can change and the DESCRIPTION file is used to decide which packages to re-install when this happens). Packages declared in the ‘Depends’ field should not also be in the ‘Imports’ field. Version requirements can be specified and are checked when the namespace is loaded (since R >= 3.0.0).
The ‘Suggests’ field uses the same syntax as ‘Depends’ and lists packages that are not necessarily needed. This includes packages used only in examples, tests or vignettes (see Writing package vignettes), and packages loaded in the body of functions. E.g., suppose an example11 from package foo uses a dataset from package bar. Then it is not necessary to have bar use foo unless one wants to execute all the examples/tests/vignettes: it is useful to have bar, but not necessary. Version requirements can be specified but should be checked by the code which uses the package.
Finally, the ‘Enhances’ field lists packages “enhanced” by the package at hand, e.g., by providing methods for classes from these packages, or ways to handle objects from these packages (so several packages have ‘Enhances: chron’ because they can handle datetime objects from chron even though they prefer R’s native datetime functions). Version requirements can be specified, but are currently not used. Such packages cannot be required to check the package: any tests which use them must be conditional on the presence of the package. (If your tests use e.g. a dataset from another package it should be in ‘Suggests’ and not ‘Enhances’.)
The general rules are
library(pkgname) should be listed in the ‘Imports’ field
and not in the ‘Depends’ field. Packages listed in imports
or importFrom directives in the NAMESPACE file should
almost always be in ‘Imports’ and not ‘Depends’.
library(pkgname) must be listed in the ‘Depends’
field.
R CMD check on the package must
be listed in one of ‘Depends’ or ‘Suggests’ or ‘Imports’.
Packages used to run examples or tests conditionally (e.g. via
if(require(pkgname))) should be listed in ‘Suggests’
or ‘Enhances’. (This allows checkers to ensure that all the
packages needed for a complete check are installed.)
In particular, packages providing “only” data for examples or vignettes should be listed in ‘Suggests’ rather than ‘Depends’ in order to make lean installations possible.
Version dependencies in the ‘Depends’ and ‘Imports’ fields are
used by library when it loads the package, and
install.packages checks versions for the ‘Depends’,
‘Imports’ and (for dependencies = TRUE) ‘Suggests’
fields.
It is increasingly important that the information in these fields is complete and accurate: it is for example used to compute which packages depend on an updated package and which packages can safely be installed in parallel.
This scheme was developed before all packages had namespaces (R 2.14.0 in October 2011), and good practice changed once that was in place.
Field ‘Depends’ should nowadays be used rarely, only for packages which are intended to be put on the search path to make their facilities available to the end user (and not to the package itself): for example it makes sense that a user of package latticeExtra would want the functions of package lattice made available.
Almost always packages mentioned in ‘Depends’ should also be imported from in the NAMESPACE file: this ensures that any needed parts of those packages are available when some other package imports the current package.
The ‘Imports’ field should not contain packages which are not
imported from (via the NAMESPACE file or :: or
::: operators), as all the packages listed in that field need to
be installed for the current package to be installed. (This is checked
by R CMD check.)
R code in the package should call library or require
only exceptionally. Such calls are never needed for packages listed in
‘Depends’ as they will already be on the search path. It used to
be common practice to use require calls for packages listed in
‘Suggests’ in functions which used their functionality, but
nowadays it is better to access such functionality via ::
calls.
A package that wishes to make use of header files in other packages needs to declare them as a comma-separated list in the field ‘LinkingTo’ in the DESCRIPTION file. For example
LinkingTo: link1, link2
The ‘LinkingTo’ field can have a version requirement which is checked at installation.
Specifying a package in ‘LinkingTo’ suffices if these are C++ headers containing source code or static linking is done at installation: the packages do not need to be (and usually should not be) listed in the ‘Depends’ or ‘Imports’ fields. This includes CRAN package BH and almost all users of RcppArmadillo and RcppEigen.
For another use of ‘LinkingTo’ see Linking to native routines in other packages.
The ‘Additional_repositories’ field is a comma-separated list of
repository URLs where the packages named in the other fields may be
found. It is currently used by R CMD check to check that the
packages can be found, at least as source packages (which can be
installed on any platform).
| • Suggested packages: |
Previous: Package Dependencies, Up: Package Dependencies [Contents][Index]
Note that someone wanting to run the examples/tests/vignettes may not
have a suggested package available (and it may not even be possible to
install it for that platform). The recommendation used to be to make
their use conditional via if(require("pkgname")):
this is OK if that conditioning is done in examples/tests/vignettes,
although using if(requireNamespace("pkgname")) is
preferred, if possible.
However, using require for conditioning in package code is
not good practice as it alters the search path for the rest of the
session and relies on functions in that package not being masked by
other require or library calls. It is better practice to
use code like
if (requireNamespace("rgl", quietly = TRUE)) {
rgl::plot3d(...)
} else {
## do something else not involving rgl.
}
Note the use of rgl:: as that object would not necessarily be
visible (and if it is, it need not be the one from that namespace:
plot3d occurs in several other packages). If the intention is to
give an error if the suggested package is not available, simply use
e.g. rgl::plot3d.
If the conditional code produces print output, function
withAutoprint can be useful.
Note that the recommendation to use suggested packages conditionally in tests does also apply to packages used to manage test suites: a notorious example was testthat which in version 1.0.0 contained illegal C++ code and hence could not be installed on standards-compliant platforms.
Some people have assumed that a ‘recommended’ package in ‘Suggests’ can safely be used unconditionally, but this is not so. (R can be installed without recommended packages, and which packages are ‘recommended’ may change.)
As noted above, packages in ‘Enhances’ must be used
conditionally and hence objects within them should always be accessed
via ::.
Next: Package subdirectories, Previous: Package Dependencies, Up: Package structure [Contents][Index]
The optional file INDEX contains a line for each sufficiently
interesting object in the package, giving its name and a description
(functions such as print methods not usually called explicitly might not
be included). Normally this file is missing and the corresponding
information is automatically generated from the documentation sources
(using tools::Rdindex()) when installing from source.
The file is part of the information given by library(help =
pkgname).
Rather than editing this file, it is preferable to put customized information about the package into an overview help page (see Documenting packages) and/or a vignette (see Writing package vignettes).
Next: Data in packages, Previous: The INDEX file, Up: Package structure [Contents][Index]
The R subdirectory contains R code files, only. The code
files to be installed must start with an ASCII (lower or upper
case) letter or digit and have one of the extensions13 .R,
.S, .q, .r, or .s. We recommend using
.R, as this extension seems to be not used by any other software.
It should be possible to read in the files using source(), so
R objects must be created by assignments. Note that there need be no
connection between the name of the file and the R objects created by
it. Ideally, the R code files should only directly assign R
objects and definitely should not call functions with side effects such
as require and options. If computations are required to
create objects these can use code ‘earlier’ in the package (see the
‘Collate’ field) plus functions in the ‘Depends’ packages
provided that the objects created do not depend on those packages except
via namespace imports.
Two exceptions are allowed: if the R subdirectory contains a file
sysdata.rda (a saved image of one or more R objects: please
use suitable compression as suggested by tools::resaveRdaFiles,
and see also the ‘SysDataCompression’ DESCRIPTION field.)
this will be lazy-loaded into the namespace environment – this is
intended for system datasets that are not intended to be user-accessible
via data. Also, files ending in ‘.in’ will be
allowed in the R directory to allow a configure script to
generate suitable files.
Only ASCII characters (and the control characters tab, formfeed, LF and CR) should be used in code files. Other characters are accepted in comments14, but then the comments may not be readable in e.g. a UTF-8 locale. Non-ASCII characters in object names will normally15 fail when the package is installed. Any byte will be allowed in a quoted character string but ‘\uxxxx’ escapes should be used for non-ASCII characters. However, non-ASCII character strings may not be usable in some locales and may display incorrectly in others.
Various R functions in a package can be used to initialize and clean up. See Load hooks.
The man subdirectory should contain (only) documentation files for the objects in the package in R documentation (Rd) format. The documentation filenames must start with an ASCII (lower or upper case) letter or digit and have the extension .Rd (the default) or .rd. Further, the names must be valid in ‘file://’ URLs, which means16 they must be entirely ASCII and not contain ‘%’. See Writing R documentation files, for more information. Note that all user-level objects in a package should be documented; if a package pkg contains user-level objects which are for “internal” use only, it should provide a file pkg-internal.Rd which documents all such objects, and clearly states that these are not meant to be called by the user. See e.g. the sources for package grid in the R distribution. Note that packages which use internal objects extensively should not export those objects from their namespace, when they do not need to be documented (see Package namespaces).
Having a man directory containing no documentation files may give an installation error.
The man subdirectory may contain a subdirectory named macros; this will contain source for user-defined Rd macros. (See User-defined macros.) These use the Rd format, but may not contain anything but macro definitions, comments and whitespace.
The R and man subdirectories may contain OS-specific subdirectories named unix or windows.
The sources and headers for the compiled code are in src, plus
optionally a file Makevars or Makefile. When a package is
installed using R CMD INSTALL, make is used to control
compilation and linking into a shared object for loading into R.
There are default make variables and rules for this
(determined when R is configured and recorded in
R_HOME/etcR_ARCH/Makeconf), providing support for C,
C++, FORTRAN 77, Fortran 9x, Objective C and Objective
C++17 with associated extensions .c, .cc or
.cpp, .f, .f90 or .f95, .m, and
.mm, respectively. We recommend using .h for headers,
also for C++18 or Fortran 9x include files. (Use of extension .C for
C++ is no longer supported.) Files in the src directory should
not be hidden (start with a dot), and hidden files will under some
versions of R be ignored.
It is not portable (and may not be possible at all) to mix all these languages in a single package, and we do not support using both C++ and Fortran 9x. Because R itself uses it, we know that C and FORTRAN 77 can be used together and mixing C and C++ seems to be widely successful.
If your code needs to depend on the platform there are certain defines which can used in C or C++. On all Windows builds (even 64-bit ones) ‘_WIN32’ will be defined: on 64-bit Windows builds also ‘_WIN64’, and on macOS ‘__APPLE__’ is defined.19
The default rules can be tweaked by setting macros20 in a file
src/Makevars (see Using Makevars). Note that this mechanism
should be general enough to eliminate the need for a package-specific
src/Makefile. If such a file is to be distributed, considerable
care is needed to make it general enough to work on all R platforms.
If it has any targets at all, it should have an appropriate first target
named ‘all’ and a (possibly empty) target ‘clean’ which
removes all files generated by running make (to be used by
‘R CMD INSTALL --clean’ and ‘R CMD INSTALL --preclean’).
There are platform-specific file names on Windows:
src/Makevars.win takes precedence over src/Makevars and
src/Makefile.win must be used. Some make programs
require makefiles to have a complete final line, including a newline.
A few packages use the src directory for purposes other than making a shared object (e.g. to create executables). Such packages should have files src/Makefile and src/Makefile.win (unless intended for only Unix-alikes or only Windows).
In very special cases packages may create binary files other than the
shared objects/DLLs in the src directory. Such files will not be
installed in a multi-architecture setting since R CMD INSTALL
--libs-only is used to merge multiple sub-architectures and it only
copies shared objects/DLLs. If a package wants to install other
binaries (for example executable programs), it should provide an R
script src/install.libs.R which will be run as part of the
installation in the src build directory instead of copying
the shared objects/DLLs. The script is run in a separate R
environment containing the following variables: R_PACKAGE_NAME
(the name of the package), R_PACKAGE_SOURCE (the path to the
source directory of the package), R_PACKAGE_DIR (the path of the
target installation directory of the package), R_ARCH (the
arch-dependent part of the path, often empty), SHLIB_EXT (the
extension of shared objects) and WINDOWS (TRUE on Windows,
FALSE elsewhere). Something close to the default behavior could
be replicated with the following src/install.libs.R file:
files <- Sys.glob(paste0("*", SHLIB_EXT))
dest <- file.path(R_PACKAGE_DIR, paste0('libs', R_ARCH))
dir.create(dest, recursive = TRUE, showWarnings = FALSE)
file.copy(files, dest, overwrite = TRUE)
if(file.exists("symbols.rds"))
file.copy("symbols.rds", dest, overwrite = TRUE)
On the other hand, executable programs could be installed along the lines of
execs <- c("one", "two", "three")
if(WINDOWS) execs <- paste0(execs, ".exe")
if ( any(file.exists(execs)) ) {
dest <- file.path(R_PACKAGE_DIR, paste0('bin', R_ARCH))
dir.create(dest, recursive = TRUE, showWarnings = FALSE)
file.copy(execs, dest, overwrite = TRUE)
}
Note the use of architecture-specific subdirectories of bin where needed.
The data subdirectory is for data files: See Data in packages.
The demo subdirectory is for R scripts (for running via
demo()) that demonstrate some of the functionality of the
package. Demos may be interactive and are not checked automatically, so
if testing is desired use code in the tests directory to achieve
this. The script files must start with a (lower or upper case) letter
and have one of the extensions .R or .r. If present, the
demo subdirectory should also have a 00Index file with one
line for each demo, giving its name and a description separated by a tab
or at least three spaces. (This index file is not generated
automatically.) Note that a demo does not have a specified encoding and
so should be an ASCII file (see Encoding issues). Function
demo() will use the package encoding if there is one, but this is
mainly useful for non-ASCII comments.
The contents of the inst subdirectory will be copied recursively
to the installation directory. Subdirectories of inst should not
interfere with those used by R (currently, R, data,
demo, exec, libs, man, help,
html and Meta, and earlier versions used latex,
R-ex). The copying of the inst happens after src
is built so its Makefile can create files to be installed. To
exclude files from being installed, one can specify a list of exclude
patterns in file .Rinstignore in the top-level source directory.
These patterns should be Perl-like regular expressions (see the help for
regexp in R for the precise details), one per line, to be
matched case-insensitively against the file and directory paths, e.g.
doc/.*[.]png$ will exclude all PNG files in inst/doc based
on the extension.
Note that with the exceptions of INDEX,
LICENSE/LICENCE and NEWS, information files at the
top level of the package will not be installed and so not be
known to users of Windows and macOS compiled packages (and not seen
by those who use R CMD INSTALL or install.packages
on the tarball). So any information files you wish an end user to see
should be included in inst. Note that if the named exceptions
also occur in inst, the version in inst will be that seen
in the installed package.
Things you might like to add to inst are a CITATION file
for use by the citation function, and a NEWS.Rd file for
use by the news function. See its help page for the specific
format restrictions of the NEWS.Rd file.
Another file sometimes needed in inst is AUTHORS or COPYRIGHTS to specify the authors or copyright holders when this is too complex to put in the DESCRIPTION file.
Subdirectory tests is for additional package-specific test code,
similar to the specific tests that come with the R distribution.
Test code can either be provided directly in a .R (or .r
as from R 3.4.0) file, or via a .Rin file containing
code which in turn creates the corresponding .R file (e.g., by
collecting all function objects in the package and then calling them
with the strangest arguments). The results of running a .R file
are written to a .Rout file. If there is a
corresponding21 .Rout.save file, these two are
compared, with differences being reported but not causing an error. The
directory tests is copied to the check area, and the tests are
run with the copy as the working directory and with R_LIBS set to
ensure that the copy of the package installed during testing will be
found by library(pkg_name). Note that the package-specific
tests are run in a vanilla R session without setting the
random-number seed, so tests which use random numbers will need to set
the seed to obtain reproducible results (and it can be helpful to do so
in all cases, to avoid occasional failures when tests are run).
If directory tests has a subdirectory Examples containing
a file pkg-Ex.Rout.save, this is compared to the output
file for running the examples when the latter are checked. Reference
output should be produced without having the --timings option
set (and note that --as-cran sets it).
Subdirectory exec could contain additional executable scripts the
package needs, typically scripts for interpreters such as the shell,
Perl, or Tcl. NB: only files (and not directories) under exec are
installed (and those with names starting with a dot are ignored), and
they are all marked as executable (mode 755, moderated by
‘umask’) on POSIX platforms. Note too that this is not suitable
for executable programs since some platforms (including Windows)
support multiple architectures using the same installed package
directory.
Subdirectory po is used for files related to localization: see Internationalization.
Subdirectory tools is the preferred place for auxiliary files
needed during configuration, and also for sources need to re-create
scripts (e.g. M4 files for autoconf).
Next: Non-R scripts in packages, Previous: Package subdirectories, Up: Package structure [Contents][Index]
The data subdirectory is for data files, either to be made
available via lazy-loading or for loading using data().
(The choice is made by the ‘LazyData’ field in the
DESCRIPTION file: the default is not to do so.) It should not be
used for other data files needed by the package, and the convention has
grown up to use directory inst/extdata for such files.
Data files can have one of three types as indicated by their extension:
plain R code (.R or .r), tables (.tab,
.txt, or .csv, see ?data for the file formats, and
note that .csv is not the standard22 CSV format), or
save() images (.RData or .rda). The files should
not be hidden (have names starting with a dot). Note that R code
should be “self-sufficient” and not make use of extra functionality
provided by the package, so that the data file can also be used without
having to load the package or its namespace.
Images (extensions .RData23 or .rda) can contain
references to the namespaces of packages that were used to create them.
Preferably there should be no such references in data files, and in any
case they should only be to packages listed in the Depends and
Imports fields, as otherwise it may be impossible to install the
package. To check for such references, load all the images into a
vanilla R session, and look at the output of
loadedNamespaces().
If your data files are large and you are not using ‘LazyData’ you
can speed up installation by providing a file datalist in the
data subdirectory. This should have one line per topic that
data() will find, in the format ‘foo’ if data(foo)
provides ‘foo’, or ‘foo: bar bah’ if data(foo) provides
‘bar’ and ‘bah’. R CMD build will automatically add
a datalist file to data directories of over 1Mb, using the
function tools::add_datalist.
Tables (.tab, .txt, or .csv files) can be
compressed by gzip, bzip2 or xz,
optionally with additional extension .gz, .bz2 or
.xz.
If your package is to be distributed, do consider the resource
implications of large datasets for your users: they can make packages
very slow to download and use up unwelcome amounts of storage space, as
well as taking many seconds to load. It is normally best to distribute
large datasets as .rda images prepared by save(, compress =
TRUE) (the default). Using bzip2 or xz compression
will usually reduce the size of both the package tarball and the
installed package, in some cases by a factor of two or more.
Package tools has a couple of functions to help with data images:
checkRdaFiles reports on the way the image was saved, and
resaveRdaFiles will re-save with a different type of compression,
including choosing the best type for that particular image.
Some packages using ‘LazyData’ will benefit from using a form of
compression other than gzip in the installed lazy-loading
database. This can be selected by the --data-compress option
to R CMD INSTALL or by using the ‘LazyDataCompression’
field in the DESCRIPTION file. Useful values are bzip2,
xz and the default, gzip. The only way to discover which
is best is to try them all and look at the size of the
pkgname/data/Rdata.rdb file.
Lazy-loading is not supported for very large datasets (those which when serialized exceed 2GB, the limit for the format on 32-bit platforms).
The analogue for sysdata.rda is field ‘SysDataCompression’:
the default is xz for files bigger than 1MB otherwise
gzip.
Next: Specifying URLs, Previous: Data in packages, Up: Package structure [Contents][Index]
Code which needs to be compiled (C, C++, FORTRAN, Fortran 9x …) is included in the src subdirectory and discussed elsewhere in this document.
Subdirectory exec could be used for scripts for interpreters such as the shell, BUGS, JavaScript, Matlab, Perl, php (amap), Python or Tcl (Simile), or even R. However, it seems more common to use the inst directory, for example WriteXLS/inst/Perl, NMF/inst/m-files, RnavGraph/inst/tcl, RProtoBuf/inst/python and emdbook/inst/BUGS and gridSVG/inst/js.
Java code is a special case: except for very small programs, .java files should be byte-compiled (to a .class file) and distributed as part of a .jar file: the conventional location for the .jar file(s) is inst/java. It is desirable (and required under an Open Source license) to make the Java source files available: this is best done in a top-level java directory in the package—the source files should not be installed.
If your package requires one of these interpreters or an extension then this should be declared in the ‘SystemRequirements’ field of its DESCRIPTION file. (Users of Java most often do so via rJava, when depending on/importing that suffices.)
Windows and Mac users should be aware that the Tcl extensions ‘BWidget’ and ‘Tktable’ which are currently included with the R for Windows and in the macOS installers are extensions and do need to be declared for users of other platforms (and that ‘Tktable’ is less widely available than it used to be, including not in the main repositories for major Linux distributions).
‘BWidget’ needs to be installed by the user on other OSes. This is fairly easy to do: first find the Tcl/Tk search path:
library(tcltk)
strsplit(tclvalue('auto_path'), " ")[[1]]
then download the sources from https://sourceforge.net/projects/tcllib/files/BWidget/ and at the command line run something like
tar xf bwidget-1.9.8.tar.gz sudo mv bwidget-1.9.8 /usr/local/lib
substituting a location on the Tcl/Tk search path for /usr/local/lib if needed.
Previous: Non-R scripts in packages, Up: Package structure [Contents][Index]
URLs in many places in the package documentation will be converted to clickable hyperlinks in at least some of their renderings. So care is needed that their forms are correct and portable.
The full URL should be given, including the scheme (often ‘http://’ or ‘https://’) and a final ‘/’ for references to directories.
Spaces in URLs are not portable and how they are handled does vary by HTTP server and by client. There should be no space in the host part of an ‘http://’ URL, and spaces in the remainder should be encoded, with each space replaced by ‘%20’.
Other characters may benefit from being encoded: see the help on
URLencode().
The canonical URL for a CRAN package is
https://cran.r-project.org/package=pkgname
and not a version starting ‘https://cran.r-project.org/web/packages/pkgname’.
Next: Checking and building packages, Previous: Package structure, Up: Creating R packages [Contents][Index]
Note that most of this section is specific to Unix-alikes: see the comments later on about the Windows port of R.
If your package needs some system-dependent configuration before
installation you can include an executable (Bourne24) shell script configure in your package
which (if present) is executed by R CMD INSTALL before any other
action is performed. This can be a script created by the Autoconf
mechanism, but may also be a script written by yourself. Use this to
detect if any nonstandard libraries are present such that corresponding
code in the package can be disabled at install time rather than giving
error messages when the package is compiled or used. To summarize, the
full power of Autoconf is available for your extension package
(including variable substitution, searching for libraries, etc.).
Under a Unix-alike only, an executable (Bourne shell) script
cleanup is executed as the last thing by R CMD INSTALL if
option --clean was given, and by R CMD build when
preparing the package for building from its source.
As an example consider we want to use functionality provided by a (C or
FORTRAN) library foo. Using Autoconf, we can create a configure
script which checks for the library, sets variable HAVE_FOO to
TRUE if it was found and to FALSE otherwise, and then
substitutes this value into output files (by replacing instances of
‘@HAVE_FOO@’ in input files with the value of HAVE_FOO).
For example, if a function named bar is to be made available by
linking against library foo (i.e., using -lfoo), one
could use
AC_CHECK_LIB(foo, fun, [HAVE_FOO=TRUE], [HAVE_FOO=FALSE]) AC_SUBST(HAVE_FOO) ...... AC_CONFIG_FILES([foo.R]) AC_OUTPUT
in configure.ac (assuming Autoconf 2.50 or later).
The definition of the respective R function in foo.R.in could be
foo <- function(x) {
if(!@HAVE_FOO@)
stop("Sorry, library ‘foo’ is not available")
...
From this file configure creates the actual R source file
foo.R looking like
foo <- function(x) {
if(!FALSE)
stop("Sorry, library ‘foo’ is not available")
...
if library foo was not found (with the desired functionality).
In this case, the above R code effectively disables the function.
One could also use different file fragments for available and missing functionality, respectively.
You will very likely need to ensure that the same C compiler and
compiler flags are used in the configure tests as when compiling
R or your package. Under a Unix-alike, you can achieve this by
including the following fragment early in configure.ac
(before calling AC_PROG_CC)
: ${R_HOME=`R RHOME`}
if test -z "${R_HOME}"; then
echo "could not determine R_HOME"
exit 1
fi
CC=`"${R_HOME}/bin/R" CMD config CC`
CFLAGS=`"${R_HOME}/bin/R" CMD config CFLAGS`
CPPFLAGS=`"${R_HOME}/bin/R" CMD config CPPFLAGS`
(Using ‘${R_HOME}/bin/R’ rather than just ‘R’ is necessary
in order to use the correct version of R when running the script as
part of R CMD INSTALL, and the quotes since ‘${R_HOME}’
might contain spaces.)
If your code does load checks then you may also need
LDFLAGS=`"${R_HOME}/bin/R" CMD config LDFLAGS`
and packages written with C++ need to pick up the details for the C++ compiler and switch the current language to C++ by something like
CXX=`"${R_HOME}/bin/R" CMD config CXX`
CXXFLAGS=`"${R_HOME}/bin/R" CMD config CXXFLAGS`
AC_LANG(C++)
The latter is important, as for example C headers may not be available to C++ programs or may not be written to avoid C++ name-mangling.
You can use R CMD config for getting the value of the basic
configuration variables, and also the header and library flags necessary
for linking a front-end executable program against R, see R CMD
config --help for details.
To check for an external BLAS library using the ACX_BLAS macro
from the official Autoconf Macro Archive, one can simply do
F77=`"${R_HOME}/bin/R" CMD config F77`
AC_PROG_F77
FLIBS=`"${R_HOME}/bin/R" CMD config FLIBS`
ACX_BLAS([], AC_MSG_ERROR([could not find your BLAS library], 1))
Note that FLIBS as determined by R must be used to ensure that
FORTRAN 77 code works on all R platforms. Calls to the Autoconf macro
AC_F77_LIBRARY_LDFLAGS, which would overwrite FLIBS, must
not be used (and hence e.g. removed from ACX_BLAS). (Recent
versions of Autoconf in fact allow an already set FLIBS to
override the test for the FORTRAN linker flags.)
N.B.: If the configure script creates files, e.g.
src/Makevars, you do need a cleanup script to remove
them. Otherwise R CMD build may ship the files that are
created. For example, package RODBC has
#!/bin/sh rm -f config.* src/Makevars src/config.h
As this example shows, configure often creates working files
such as config.log.
If your configure script needs auxiliary files, it is recommended that you ship them in a tools directory (as R itself does).
You should bear in mind that the configure script will not be used on
Windows systems. If your package is to be made publicly available,
please give enough information for a user on a non-Unix-alike platform
to configure it manually, or provide a configure.win script to be
used on that platform. (Optionally, there can be a cleanup.win
script. Both should be shell scripts to be executed by ash,
which is a minimal version of Bourne-style sh.) When
configure.win is run the environment variables R_HOME
(which uses ‘/’ as the file separator), R_ARCH and Use
R_ARCH_BIN will be set. Use R_ARCH to decide if this is a
64-bit build (its value there is ‘/x64’) and to install DLLs to the
correct place (${R_HOME}/libs${R_ARCH}). Use
R_ARCH_BIN to find the correct place under the bin
directory, e.g. ${R_HOME}/bin${R_ARCH_BIN}/Rscript.exe.
In some rare circumstances, the configuration and cleanup scripts need
to know the location into which the package is being installed. An
example of this is a package that uses C code and creates two shared
object/DLLs. Usually, the object that is dynamically loaded by R
is linked against the second, dependent, object. On some systems, we
can add the location of this dependent object to the object that is
dynamically loaded by R. This means that each user does not have to
set the value of the LD_LIBRARY_PATH (or equivalent) environment
variable, but that the secondary object is automatically resolved.
Another example is when a package installs support files that are
required at run time, and their location is substituted into an R
data structure at installation time.
The names of the top-level library directory (i.e., specifiable
via the ‘-l’ argument) and the directory of the package
itself are made available to the installation scripts via the two
shell/environment variables R_LIBRARY_DIR and R_PACKAGE_DIR.
Additionally, the name of the package (e.g. ‘survival’ or
‘MASS’) being installed is available from the environment variable
R_PACKAGE_NAME. (Currently the value of R_PACKAGE_DIR is
always ${R_LIBRARY_DIR}/${R_PACKAGE_NAME}, but this used not to
be the case when versioned installs were allowed. Its main use is in
configure.win scripts for the installation path of external
software’s DLLs.) Note that the value of R_PACKAGE_DIR may
contain spaces and other shell-unfriendly characters, and so should be
quoted in makefiles and configure scripts.
One of the more tricky tasks can be to find the headers and libraries of
external software. One tool which is increasingly available on
Unix-alikes (but not by default25 on macOS) to do this is
pkg-config. The configure script will need to test for
the presence of the command itself (see for example package
Cairo), and if present it can be asked if the software is
installed, of a suitable version and for compilation/linking flags by
e.g.
$ pkg-config --exists ‘QtCore >= 4.0.0’ # check the status $ pkg-config --modversion QtCore 4.8.7 $ pkg-config --cflags QtCore -DQT_SHARED -I/usr/include/QtCore $ pkg-config --libs QtCore -lQtCore $ pkg-config --static --libs QtCore -lQtCore -lpthread -lz -lm -ldl -lgthread-2.0 -pthread -lglib-2.0 -lrt
Note that pkg-config --libs gives the information required to
link against the default version26 of that library (usually the dynamic one), and
pkg-config --static --libs may be needed if the static library is
to be used.
Sometimes the name by which the software is known to
pkg-config is not what one might expect (e.g.
‘gtk+-2.0’ even for 2.22). To get a complete list use
pkg-config --list-all | sort
| • Using Makevars: | ||
| • Configure example: | ||
| • Using F9x code: | ||
| • Using C++11 code: | ||
| • Using C++14 code: | ||
| • Using C++17 code: |
Next: Configure example, Previous: Configure and cleanup, Up: Configure and cleanup [Contents][Index]
| • OpenMP support: | ||
| • Using pthreads: | ||
| • Compiling in sub-directories: |
Sometimes writing your own configure script can be avoided by supplying a file Makevars: also one of the most common uses of a configure script is to make Makevars from Makevars.in.
A Makevars file is a makefile and is used as one of several
makefiles by R CMD SHLIB (which is called by R CMD
INSTALL to compile code in the src directory). It should be
written if at all possible in a portable style, in particular (except
for Makevars.win) without the use of GNU extensions.
The most common use of a Makevars file is to set additional
preprocessor options (for example include paths and definitions) for
C/C++ files via PKG_CPPFLAGS, and additional compiler
flags by setting PKG_CFLAGS, PKG_CXXFLAGS,
PKG_FFLAGS or PKG_FCFLAGS, for C, C++, FORTRAN or Fortran
9x respectively (see Creating shared objects).
N.B.: Include paths are preprocessor options, not compiler
options, and must be set in PKG_CPPFLAGS as otherwise
platform-specific paths (e.g. ‘-I/usr/local/include’) will take
precedence. PKG_CPPFLAGS should contain ‘-I’, ‘-D’,
‘-U’ and (where supported) ‘-include’ and ‘-pthread’
options: everything else should be a compiler flag.
Makevars can also be used to set flags for the linker, for
example ‘-L’ and ‘-l’ options, via PKG_LIBS.
When writing a Makevars file for a package you intend to distribute, take care to ensure that it is not specific to your compiler: flags such as -O2 -Wall -pedantic (and all other -W flags: for the Oracle compilers these are used to pass arguments to compiler phases) are all specific to GCC.
Also, do not set variables such as CPPFLAGS, CFLAGS etc.:
these should be settable by users (sites) through appropriate personal
(site-wide) Makevars files.
See Customizing package compilation in R Installation and Administration,
There are some macros27 which are set whilst configuring the building of R itself and are stored in R_HOME/etcR_ARCH/Makeconf. That makefile is included as a Makefile after Makevars[.win], and the macros it defines can be used in macro assignments and make command lines in the latter. These include
FLIBSA macro containing the set of libraries need to link FORTRAN code. This
may need to be included in PKG_LIBS: it will normally be included
automatically if the package contains FORTRAN source files.
BLAS_LIBSA macro containing the BLAS libraries used when building R. This may
need to be included in PKG_LIBS. Beware that if it is empty then
the R executable will contain all the double-precision and
double-complex BLAS routines, but no single-precision nor complex
routines. If BLAS_LIBS is included, then FLIBS also needs
to be28 included following it, as most BLAS
libraries are written at least partially in FORTRAN.
LAPACK_LIBSA macro containing the LAPACK libraries (and paths where appropriate)
used when building R. This may need to be included in
PKG_LIBS. It may point to a dynamic library libRlapack
which contains the main double-precision LAPACK routines as well as
those double-complex LAPACK routines needed to build R, or it may
point to an external LAPACK library, or may be empty if an external BLAS
library also contains LAPACK.
[libRlapack includes all the double-precision LAPACK routines
which were current in 2003: a list of which routines are included is in
file src/modules/lapack/README. Note that an external LAPACK/BLAS
library need not do so, as some were ‘deprecated’ (and not compiled by
default) in LAPACK 3.6.0 in late 2015.]
For portability, the macros BLAS_LIBS and FLIBS should
always be included after LAPACK_LIBS (and in that order).
SAFE_FFLAGSA macro containing flags which are needed to circumvent
over-optimization of FORTRAN code: it is typically ‘-g -O2
-ffloat-store’ on ‘ix86’ platforms using gfortran.
Note that this is not an additional flag to be used as part of
PKG_FFLAGS, but a replacement for FFLAGS, and that it is
intended for the FORTRAN 77 compiler ‘F77’ and not necessarily for
the Fortran 90/95 compiler ‘FC’. See the example later in this
section.
Setting certain macros in Makevars will prevent R CMD
SHLIB setting them: in particular if Makevars sets
‘OBJECTS’ it will not be set on the make command line.
This can be useful in conjunction with implicit rules to allow other
types of source code to be compiled and included in the shared object.
It can also be used to control the set of files which are compiled,
either by excluding some files in src or including some files in
subdirectories. For example
OBJECTS = 4dfp/endianio.o 4dfp/Getifh.o R4dfp-object.o
Note that Makevars should not normally contain targets, as it is
included before the default makefile and make will call the
first target, intended to be all in the default makefile. If you
really need to circumvent that, use a suitable (phony) target all
before any actual targets in Makevars.[win]: for example package
fastICA used to have
PKG_LIBS = @BLAS_LIBS@
SLAMC_FFLAGS=$(R_XTRA_FFLAGS) $(FPICFLAGS) $(SHLIB_FFLAGS) $(SAFE_FFLAGS)
all: $(SHLIB)
slamc.o: slamc.f
$(F77) $(SLAMC_FFLAGS) -c -o slamc.o slamc.f
needed to ensure that the LAPACK routines find some constants without infinite looping. The Windows equivalent was
all: $(SHLIB)
slamc.o: slamc.f
$(F77) $(SAFE_FFLAGS) -c -o slamc.o slamc.f
(since the other macros are all empty on that platform, and R’s
internal BLAS was not used). Note that the first target in
Makevars will be called, but for back-compatibility it is best
named all.
If you want to create and then link to a library, say using code in a subdirectory, use something like
.PHONY: all mylibs
all: $(SHLIB)
$(SHLIB): mylibs
mylibs:
(cd subdir; $(MAKE))
Be careful to create all the necessary dependencies, as there is no
guarantee that the dependencies of all will be run in a
particular order (and some of the CRAN build machines use
multiple CPUs and parallel makes). In particular,
all: mylibs
does not suffice.
Note that on Windows it is required that Makevars[.win] does create a DLL: this is needed as it is the only reliable way to ensure that building a DLL succeeded. If you want to use the src directory for some purpose other than building a DLL, use a Makefile.win file.
It is sometimes useful to have a target ‘clean’ in Makevars
or Makevars.win: this will be used by R CMD build to
clean up (a copy of) the package sources. When it is run by
build it will have fewer macros set, in particular not
$(SHLIB), nor $(OBJECTS) unless set in the file itself.
It would also be possible to add tasks to the target ‘shlib-clean’
which is run by R CMD INSTALL and R CMD SHLIB with
options --clean and --preclean.
If you want to run R code in Makevars, e.g. to find
configuration information, please do ensure that you use the correct
copy of R or Rscript: there might not be one in the path
at all, or it might be the wrong version or architecture. The correct
way to do this is via
"$(R_HOME)/bin$(R_ARCH_BIN)/Rscript" filename "$(R_HOME)/bin$(R_ARCH_BIN)/Rscript" -e ‘R expression’
where $(R_ARCH_BIN) is only needed currently on Windows.
Environment or make variables can be used to select different macros for
32- and 64-bit code, for example (GNU make syntax, allowed on
Windows)
ifeq "$(WIN)" "64" PKG_LIBS = value for 64-bit Windows else PKG_LIBS = value for 32-bit Windows endif
On Windows there is normally a choice between linking to an import library or directly to a DLL. Where possible, the latter is much more reliable: import libraries are tied to a specific toolchain, and in particular on 64-bit Windows two different conventions have been commonly used. So for example instead of
PKG_LIBS = -L$(XML_DIR)/lib -lxml2
one can use
PKG_LIBS = -L$(XML_DIR)/bin -lxml2
since on Windows -lxxx will look in turn for
libxxx.dll.a xxx.dll.a libxxx.a xxx.lib libxxx.dll xxx.dll
where the first and second are conventionally import libraries, the
third and fourth often static libraries (with .lib intended for
Visual C++), but might be import libraries. See for example
https://sourceware.org/binutils/docs-2.20/ld/WIN32.html#WIN32.
The fly in the ointment is that the DLL might not be named libxxx.dll, and in fact on 32-bit Windows there is a libxml2.dll whereas on one build for 64-bit Windows the DLL is called libxml2-2.dll. Using import libraries can cover over these differences but can cause equal difficulties.
If static libraries are available they can save a lot of problems with run-time finding of DLLs, especially when binary packages are to be distributed and even more when these support both architectures. Where using DLLs is unavoidable we normally arrange (via configure.win) to ship them in the same directory as the package DLL.
Next: Using pthreads, Previous: Using Makevars, Up: Using Makevars [Contents][Index]
There is some support for packages which wish to use
OpenMP29. The
make macros
SHLIB_OPENMP_CFLAGS SHLIB_OPENMP_CXXFLAGS SHLIB_OPENMP_FCFLAGS SHLIB_OPENMP_FFLAGS
are available for use in src/Makevars or src/Makevars.win.
Include the appropriate macro in PKG_CFLAGS, PKG_CXXFLAGS
and so on, and also in PKG_LIBS (but see below for Fortran 77).
C/C++ code that needs to be conditioned on the use of OpenMP can be used
inside #ifdef _OPENMP: note that some toolchains used for R
(including Apple’s for macOS and some others using
clang30) have no OpenMP support at all, not even
omp.h.
For example, a package with C code written for OpenMP should have in src/Makevars the lines
PKG_CFLAGS = $(SHLIB_OPENMP_CFLAGS) PKG_LIBS = $(SHLIB_OPENMP_CFLAGS)
Note that the macro SHLIB_OPENMP_CXXFLAGS applies to the default
C++ compiler and not necessarily to the C++11/14/17 compiler: users of
the latter should do their own configure checks. If you do
use your own checks, make sure that OpenMP support is complete by
compiling and linking an OpenMP-using program: on some platforms the
runtime library is optional and on others that library depends on other
optional libraries.
Some care is needed when compilers are from different families which may
use different OpenMP runtimes (e.g. clang vs GCC
including gfortran, although it is currently possible to use
the clang runtime with GCC but not vice versa). For a
package with FORTRAN 77 code using OpenMP the appropriate lines are
PKG_FFLAGS = $(SHLIB_OPENMP_FFLAGS) PKG_LIBS = $(SHLIB_OPENMP_CFLAGS)
as the C compiler will be used to link the package code (and there is no
guarantee that this will work everywhere). Packages which include C++
code should use SHLIB_OPENMP_CXXFLAGS in PKG_LIBS as
linking will be by the C++ compiler. (This does not apply to Fortran 9x
code, where SHLIB_OPENMP_FCFLAGS should be used in both
PKG_FCFLAGS and PKG_LIBS.)
It is not portable to use OpenMP with more than one of C, C++, FORTRAN 77 and Fortran 9x in a single package since it is quite likely that the compilers are of different families: using C and FORTRAN 77 is most widely supported (but only fortuitously works on macOS).
For portability, any C/C++ code using the omp_* functions should
include the omp.h header: some compilers (but not all) include it
when OpenMP mode is switched on (e.g. via flag
-fopenmp).
There is nothing31 to say what
version of OpenMP is supported: version 3.1 (and much of 4.0) is
supported by recent versions of the Linux, Windows and Solaris
platforms, but portable packages cannot assume that end users have
recent versions.32 Apple builds of clang
on macOS currently have no OpenMP support, but CRAN binary
packages are built with a clang-based toolchain which supports
OpenMP. http://www.openmp.org/resources/openmp-compilers-tools
gives some idea of what compilers support what versions.
The performance of OpenMP varies substantially between platforms. The Windows implementation has substantial overheads33, so is only beneficial if quite substantial tasks are run in parallel. Also, on Windows new threads are started with the default34 FPU control word, so computations done on OpenMP threads will not make use of extended-precision arithmetic which is the default for the main process.
Do not include these macros unless your code does make use of OpenMP (possibly for C++ via included external headers): this can result in the OpenMP runtime being linked in, threads being started, ….
Calling any of the R API from threaded code is ‘for experts only’ and strongly discouraged. Many functions in the R API modify internal R data structures and might corrupt these data structures if called simultaneously from multiple threads. Most R API functions can signal errors, which must only happen on the R main thread. Also, external libraries (e.g. LAPACK) may not be thread-safe.
Packages are not standard-alone programs, and an R process could
contain more than one OpenMP-enabled package as well as other components
(for example, an optimized BLAS) making use of OpenMP. So careful
consideration needs to be given to resource usage. OpenMP works with
parallel regions, and for most implementations the default is to use as
many threads as ‘CPUs’ for such regions. Parallel regions can be
nested, although it is common to use only a single thread below the
first level. The correctness of the detected number of ‘CPUs’ and the
assumption that the R process is entitled to use them all are both
dubious assumptions. The best way to limit resources is to limit the
overall number of threads available to OpenMP in the R process: this
can be done via environment variable OMP_THREAD_LIMIT, where
implemented.35 Alternatively, the
number of threads per region can be limited by the environment variable
OMP_NUM_THREADS or API call omp_set_num_threads, or,
better, for the regions in your code as part of their
specification. E.g. R uses
#pragma omp parallel for num_threads(nthreads) …
That way you only control your own code and not that of other OpenMP users.
Next: Compiling in sub-directories, Previous: OpenMP support, Up: Using Makevars [Contents][Index]
There is no direct support for the POSIX threads (more commonly known as
pthreads): by the time we considered adding it several packages
were using it unconditionally so it seems that nowadays it is
universally available on POSIX operating systems (hence not Windows).
For reasonably recent versions of gcc and clang the
correct specification is
PKG_CPPFLAGS = -pthread PKG_LIBS = -pthread
(and the plural version is also accepted on some systems/versions). For other platforms the specification is
PKG_CPPFLAGS = -D_REENTRANT PKG_LIBS = -lpthread
(and note that the library name is singular). This is what -pthread does on all known current platforms (although earlier versions of OpenBSD used a different library name).
For a tutorial see https://computing.llnl.gov/tutorials/pthreads/.
POSIX threads are not normally used on Windows, which has its own native
concepts of threads. However, there are two projects implementing
pthreads on top of Windows, pthreads-w32 and
winpthreads (part of the MinGW-w64 project).
Whether Windows toolchains implement pthreads is up to the
toolchain provider. A make variable
SHLIB_PTHREAD_FLAGS is available for use in
src/Makevars.win: this should be included in both
PKG_CPPFLAGS (or the FORTRAN or F9x equivalents) and
PKG_LIBS.
The presence of a working pthreads implementation cannot be
unambiguously determined without testing for yourself: however, that
‘_REENTRANT’ is defined36 in C/C++ code is a good indication.
Note that not all pthreads implementations are equivalent as parts
are optional (see
http://pubs.opengroup.org/onlinepubs/009695399/basedefs/pthread.h.html):
for example, macOS lacks the ‘Barriers’ option.
See also the comments on thread-safety and performance under OpenMP: on
all known R platforms OpenMP is implemented via
pthreads and the known performance issues are in the latter.
Previous: Using pthreads, Up: Using Makevars [Contents][Index]
Package authors fairly often want to organize code in sub-directories of src, for example if they are including a separate piece of external software to which this is an R interface.
One simple way is simply to set OBJECTS to be all the objects
that need to be compiled, including in sub-directories. For example,
CRAN package RSiena has
SOURCES = $(wildcard data/*.cpp network/*.cpp utils/*.cpp model/*.cpp model/*/*.cpp model/*/*/*.cpp) OBJECTS = siena07utilities.o siena07internals.o siena07setup.o siena07models.o $(SOURCES:.cpp=.o)
One problem with that approach is that unless GNU make extensions are used, the source files need to be listed and kept up-to-date. As in the following from CRAN package lossDev:
OBJECTS.samplers = samplers/ExpandableArray.o samplers/Knots.o \ samplers/RJumpSpline.o samplers/RJumpSplineFactory.o \ samplers/RealSlicerOV.o samplers/SliceFactoryOV.o samplers/MNorm.o OBJECTS.distributions = distributions/DSpline.o \ distributions/DChisqrOV.o distributions/DTOV.o \ distributions/DNormOV.o distributions/DUnifOV.o distributions/RScalarDist.o OBJECTS.root = RJump.o OBJECTS = $(OBJECTS.samplers) $(OBJECTS.distributions) $(OBJECTS.root)
Where the subdirectory is self-contained code with a suitable makefile, the best approach is something like
PKG_LIBS = -LCsdp/lib -lsdp $(LAPACK_LIBS) $(BLAS_LIBS) $(FLIBS)
$(SHLIB): Csdp/lib/libsdp.a
Csdp/lib/libsdp.a:
@(cd Csdp/lib && $(MAKE) libsdp.a \
CC="$(CC)" CFLAGS="$(CFLAGS) $(CPICFLAGS)" AR="$(AR)" RANLIB="$(RANLIB)")
Note the quotes: the macros can contain spaces, e.g. CC = "gcc
-m64 -std=gnu99". Several authors have forgotten about parallel makes:
the static library in the subdirectory must be made before the shared
object ($(SHLIB)) and so the latter must depend on the former.
Others forget the need37 for
position-independent code.
We really do not recommend using src/Makefile instead of src/Makevars, and as the example above shows, it is not necessary.
Next: Using F9x code, Previous: Using Makevars, Up: Configure and cleanup [Contents][Index]
It may be helpful to give an extended example of using a configure script to create a src/Makevars file: this is based on that in the RODBC package.
The configure.ac file follows: configure is created from
this by running autoconf in the top-level package directory
(containing configure.ac).
AC_INIT([RODBC], 1.1.8) dnl package name, version dnl A user-specifiable option odbc_mgr="" AC_ARG_WITH([odbc-manager], AC_HELP_STRING([--with-odbc-manager=MGR], [specify the ODBC manager, e.g. odbc or iodbc]), [odbc_mgr=$withval]) if test "$odbc_mgr" = "odbc" ; then AC_PATH_PROGS(ODBC_CONFIG, odbc_config) fi dnl Select an optional include path, from a configure option dnl or from an environment variable. AC_ARG_WITH([odbc-include], AC_HELP_STRING([--with-odbc-include=INCLUDE_PATH], [the location of ODBC header files]), [odbc_include_path=$withval]) RODBC_CPPFLAGS="-I." if test [ -n "$odbc_include_path" ] ; then RODBC_CPPFLAGS="-I. -I${odbc_include_path}" else if test [ -n "${ODBC_INCLUDE}" ] ; then RODBC_CPPFLAGS="-I. -I${ODBC_INCLUDE}" fi fi dnl ditto for a library path AC_ARG_WITH([odbc-lib], AC_HELP_STRING([--with-odbc-lib=LIB_PATH], [the location of ODBC libraries]), [odbc_lib_path=$withval]) if test [ -n "$odbc_lib_path" ] ; then LIBS="-L$odbc_lib_path ${LIBS}" else if test [ -n "${ODBC_LIBS}" ] ; then LIBS="-L${ODBC_LIBS} ${LIBS}" else if test -n "${ODBC_CONFIG}"; then odbc_lib_path=`odbc_config --libs | sed s/-lodbc//` LIBS="${odbc_lib_path} ${LIBS}" fi fi fi dnl Now find the compiler and compiler flags to use : ${R_HOME=`R RHOME`} if test -z "${R_HOME}"; then echo "could not determine R_HOME" exit 1 fi CC=`"${R_HOME}/bin/R" CMD config CC` CPP=`"${R_HOME}/bin/R" CMD config CPP` CFLAGS=`"${R_HOME}/bin/R" CMD config CFLAGS` CPPFLAGS=`"${R_HOME}/bin/R" CMD config CPPFLAGS` AC_PROG_CC AC_PROG_CPP if test -n "${ODBC_CONFIG}"; then RODBC_CPPFLAGS=`odbc_config --cflags` fi CPPFLAGS="${CPPFLAGS} ${RODBC_CPPFLAGS}" dnl Check the headers can be found AC_CHECK_HEADERS(sql.h sqlext.h) if test "${ac_cv_header_sql_h}" = no || test "${ac_cv_header_sqlext_h}" = no; then AC_MSG_ERROR("ODBC headers sql.h and sqlext.h not found") fi dnl search for a library containing an ODBC function if test [ -n "${odbc_mgr}" ] ; then AC_SEARCH_LIBS(SQLTables, ${odbc_mgr}, , AC_MSG_ERROR("ODBC driver manager ${odbc_mgr} not found")) else AC_SEARCH_LIBS(SQLTables, odbc odbc32 iodbc, , AC_MSG_ERROR("no ODBC driver manager found")) fi dnl for 64-bit ODBC need SQL[U]LEN, and it is unclear where they are defined. AC_CHECK_TYPES([SQLLEN, SQLULEN], , , [# include <sql.h>]) dnl for unixODBC header AC_CHECK_SIZEOF(long, 4) dnl substitute RODBC_CPPFLAGS and LIBS AC_SUBST(RODBC_CPPFLAGS) AC_SUBST(LIBS) AC_CONFIG_HEADERS([src/config.h]) dnl and do substitution in the src/Makevars.in and src/config.h AC_CONFIG_FILES([src/Makevars]) AC_OUTPUT
where src/Makevars.in would be simply
PKG_CPPFLAGS = @RODBC_CPPFLAGS@ PKG_LIBS = @LIBS@
A user can then be advised to specify the location of the ODBC driver manager files by options like (lines broken for easier reading)
R CMD INSTALL \ --configure-args='--with-odbc-include=/opt/local/include \ --with-odbc-lib=/opt/local/lib --with-odbc-manager=iodbc' \ RODBC
or by setting the environment variables ODBC_INCLUDE and
ODBC_LIBS.
Next: Using C++11 code, Previous: Configure example, Up: Configure and cleanup [Contents][Index]
R assumes that source files with extension .f are FORTRAN 77, and passes them to the compiler specified by ‘F77’. On most but not all platforms that compiler will accept Fortran 90/95 code: some platforms have a separate Fortran 90/95 compiler and a few (by now quite rare38) platforms have no Fortran 90/95 support.
This means that portable packages need to be written in correct FORTRAN 77, which will also be valid Fortran 9x. See https://developer.R-project.org/Portability.html for reference resources. In particular, free source form F9x code is not portable.
On some systems an alternative F90/95 compiler is available: from the
gcc family this might be gfortran or g95.
Configuring R will try to find a compiler which (from its name)
appears to be a Fortran 90/95 compiler, and set it in macro ‘FC’.
Note that it does not check that such a compiler is fully (or even
partially) compliant with Fortran 90/95. Packages making use of Fortran
90/95 features should use file extension .f90 or .f95 for
the source files: the variable PKG_FCFLAGS specifies any special
flags to be used. There is no guarantee that compiled Fortran 90/95
code can be mixed with any other type of compiled code, nor that a build
of R will have support for such packages.
The code used to build R allows a ‘Fortran 90’ compiler to be selected as ‘FC’, so platforms might be encountered which only support Fortran 90. However, Fortran 95 is widely supported.
Some (but not all) compilers specified by the ‘FC’ macro will
accept Fortran 2003 or 2008 code: such code should still use file
extension .f90 or .f95. Most platforms use
gfortran where you may need to include -std=f2003 or
-std=f2008 in PKG_FCFLAGS: the default is ‘GNU Fortran’,
Fortran 95 with non-standard extensions. The Oracle f95
compiler ‘accepts some Fortran 2003/8 features’ (search for ‘Oracle
Developer Studio 12.5: Fortran User’s Guide’ and look for §4.6).
Modern versions of Fortran support modules, whereby compiling one source
file creates a module file which is then included in others. (Module
files typically have a .mod extension: they do depend on the
compiler used and so should never be included in a package.) This
creates a dependence which make will not know about and often
causes installation with a parallel make to fail. Thus it is necessary
to add explicit dependencies to src/Makevars to tell
make the constraints on the order of compilation. For
example, if file iface.f90 creates a module ‘iface’ used by
files cmi.f90 and dmi.f90 then src/Makevars needs
to contain something like
cmi.o dmi.o: iface.o
Next: Using C++14 code, Previous: Using F9x code, Up: Configure and cleanup [Contents][Index]
R can be built without a C++ compiler although one is available (but
not necessarily installed) on all known R platforms. For full
portability across platforms, all that can be assumed is approximate
support for the C++98 standard (the widely used g++ deviates
considerably from the standard). Some compilers have a concept of
‘C++03’ (‘essentially a bug fix’) or ‘C++ Technical Report 1’ (TR1), an
optional addition to the ‘C++03’ revision which was published in 2007.
A revised standard was published in 2011 and compilers with pretty much
complete implementations are available. C++11 added all of the C99
features which are not otherwise implemented in C++, and C++ compilers
commonly accept C99 extensions to C++98. A minor update39
to C++11 (C++14) was published in December 2014. The latest standard
(C++17) was published in December 2017, and a further revision (‘C++20’)
is in preparation.
What standard a C++ compiler aims to support can be hard to determine:
the value40 of
__cplusplus may help but some compilers use it to denote a
standard which is partially supported and some the latest standard which
is (almost) fully supported. As from version 6, g++ defaults
to C++14 (with GNU extensions): earlier versions aim to support C++03
with many extensions (including support for TR1) with version 5 having
fairly complete C++14 support enabled by flag -std=gnu++14.
clang with its native41 libc++ headers and
library has since version 3.4 included almost all C++14 features, but
does not support TR1. As from version 6.0.0, clang defaults
to C++14.
Since version 3.1.0, R has provided support for C++11 in packages in
addition to C++98. This support is not uniform across platforms as it
depends on the capabilities of the compiler (see below). When R is
configured, it will determine whether the C++ compiler supports C++11
and which compiler flags, if any, are required to enable C++11 support.
For example, recent versions of g++ or clang++
accept the compiler flag -std=c++11, and earlier versions
support a flag -std=c++0x, but the latter only provided partial
support for the C++11 standard (it later became a deprecated synonym for
-std=c++11).
In order to use C++11 code in a package, the package’s Makevars file (or Makevars.win on Windows) should include the line
CXX_STD = CXX11
Compilation and linking will then be done with the C++11 compiler.
Packages without a src/Makevars or src/Makefile file may specify that they require C++11 for code in the src directory by including ‘C++11’ in the ‘SystemRequirements’ field of the DESCRIPTION file, e.g.
SystemRequirements: C++11
If a package does have a src/Makevars[.win] file then setting the
make variable ‘CXX_STD’ is preferred, as it allows R CMD
SHLIB to work correctly in the package’s src directory.
Conversely, to ensure that the C++98 standard is assumed even when this is not the compiler default, use
SystemRequirements: C++98
or
CXX_STD = CXX98
The C++11 compiler will be used systematically by R for all C++ code
if the environment variable USE_CXX11 is defined (with any
value). Hence this environment variable should be defined when invoking
R CMD SHLIB in the absence of a Makevars file (or
Makevars.win on Windows) if a C++11 compiler is required.
Further control over compilation of C++11 code can be obtained by
specifying the macros ‘CXX11’ and ‘CXX11STD’ when R is
configured42, or in a personal or site Makevars file.
See Customizing package compilation in R Installation and Administration.
If C++11 support is not available then these macros are both empty; if
it is available by default, ‘CXX11’ defaults to ‘CXX’ and
‘CXX11STD’ is empty . Otherwise, ‘CXX11’ defaults to the same
value as the C++ compiler ‘CXX’ and the flag ‘CXX11STD’
defaults to -std=c++11 or similar. It is possible to specify
‘CXX11’ to be a distinct compiler just for C++11–using packages,
e.g. g++ on Solaris. Note however that different C++
compilers (and even different versions of the same compiler) often
differ in their ABI so their outputs can rarely be mixed. By setting
‘CXX11STD’ it is also possible to choose a different dialect of the
standard such as -std=c++11.
As noted above, support for C++11 varies across platforms: on some platforms, it may be possible or necessary to select a different compiler for C++11, via personal or site Makevars files.
There is no guarantee that C++11 can be used in a package in combination with any other compiled language (even C), as the C++11 compiler may be incompatible with the native compilers for the platform. (There are known problems mixing C++11 with Fortran.)
If a package using C++11 has a configure script it is
essential that it selects the correct compiler, via something like
CXX11=`"${R_HOME}/bin/R" CMD config CXX11`
CXX11STD=`"${R_HOME}/bin/R" CMD config CXX11STD`
CXX="${CXX11} ${CXX11STD}"
CXXFLAGS=`"${R_HOME}/bin/R" CMD config CXX11FLAGS`
AC_LANG(C++)
(paying attention to all the quotes required).
If you want to compile C++11 code in a subdirectory, make sure you pass down the macros to specify that compiler, e.g. in src/Makevars
sublibs:
@(cd libs && $(MAKE) \
CXX="$(CXX11) $(CXX11STD)" CXXFLAGS="$(CXX11FLAGS) $(CXX11PICFLAGS)")
Note that the mechanisms described here specify C++11 for code compiled
by R CMD SHLIB as used by default by R CMD INSTALL.
They do not necessarily apply if there is a src/Makefile file,
nor to compilation done in vignettes or via other packages.
Next: Using C++17 code, Previous: Using C++11 code, Up: Configure and cleanup [Contents][Index]
Support for a C++14 (where available) has been explicitly added to R from version 3.4.0. Similar considerations to C++11 apply, except that the variables associated with the C++14 compiler use the prefix ‘CXX14’ instead of ‘CXX11’. Hence to use C++14 code in a package, the package’s Makevars file (or Makevars.win on Windows) should include the line
CXX_STD = CXX14
In the absence of a Makevars file, C++14 support can also be requested by the line:
SystemRequirements: C++14
in the DESCRIPTION file. Finally, the C++14 compiler can be
used systematically by setting the environment variable USE_CXX14.
Note that code written for C++11 that emulates features of C++14 will not necessarily compile under a C++14 compiler43, since the emulation typically leads to a namespace clash. In order to ensure that the code also compiles under C++14, something like the following should be done:
#if __cplusplus >= 201402L using std::make_unique; #else // your emulation #endif
Code needing C++14 features would do better to test for their presence via ‘SD-6 feature tests’44. That test could be
#include <memory> // header where this is defined #if defined(__cpp_lib_make_unique) && (__cpp_lib_make_unique >= 201304) using std::make_unique; #else // your emulation #endif
The webpage
http://en.cppreference.com/w/cpp/compiler_support gives
some information on which compilers are known to support recent C++
features. Note that g++ 4.9.x (as used for R on Windows at
the time of writing) has only partial C++14 support, and the flag to
obtain that support is not included in the default Windows build of R
— one could try something like
CXX14="$(BINPREF)g++ $(M_ARCH)" CXX14FLAGS="-O2 -Wall" CXX14STD=-std=gnu1y
in HOME/.R/Makevars.win.
Oracle Developer Studio gained full C++14 support in version 12.6 (July 2017).
Previous: Using C++14 code, Up: Configure and cleanup [Contents][Index]
Experimental support for C++17 has been added to R version 3.4.0. The
configure script tests a subset of C++17 features. clang
4.0.0 and gcc 7.1 and later versions passed these tests (with
flag -std=gnu++17 or -std=gnu++1z chosen by the
configure script). Note that the C++17 feature tests are
incomplete and are subject to change in future R versions as compiler
support for the standard improves.
The variables associated with the C++17 compiler use the prefix ‘CXX17’. Hence to use C++17 code in a package, the package’s Makevars file (or Makevars.win on Windows) should include the line
CXX_STD = CXX17
In the absence of a Makevars file, C++17 support can also be requested by the line:
SystemRequirements: C++17
in the DESCRIPTION file. Finally, the C++17 compiler can be
used systematically by setting the environment variable USE_CXX17.
As for C++14, feature tests can be used (and probably should be as compiler support is still patchy).
No C++17 support is enabled in the current default build of R on Windows.
Next: Writing package vignettes, Previous: Configure and cleanup, Up: Creating R packages [Contents][Index]
Before using these tools, please check that your package can be
installed (which checked it can be loaded). R CMD check will
inter alia do this, but you may get more detailed error messages
doing the install directly.
| • Checking packages: | ||
| • Building package tarballs: | ||
| • Building binary packages: |
If your package specifies an encoding in its DESCRIPTION file, you should run these tools in a locale which makes use of that encoding: they may not work at all or may work incorrectly in other locales (although UTF-8 locales will most likely work).
Note:
R CMD checkandR CMD buildrun R processes with --vanilla in which none of the user’s startup files are read. If you needR_LIBSset (to find packages in a non-standard library) you can set it in the environment: also you can use the check and build environment files (as specified by the environment variablesR_CHECK_ENVIRONandR_BUILD_ENVIRON; if unset, files45 ~/.R/check.Renviron and ~/.R/build.Renviron are used) to set environment variables when using these utilities.
Note to Windows users:
R CMD buildmay make use of the Windows toolset (see the “R Installation and Administration” manual) if present and in your path, and it is required for packages which need it to install (including those with configure.win or cleanup.win scripts or a src directory) and e.g. need vignettes built.You may need to set the environment variable
TMPDIRto point to a suitable writable directory with a path not containing spaces – use forward slashes for the separators. Also, the directory needs to be on a case-honouring file system (some network-mounted file systems are not).
Next: Building package tarballs, Previous: Checking and building packages, Up: Checking and building packages [Contents][Index]
Using R CMD check, the R package checker, one can test whether
source R packages work correctly. It can be run on one or
more directories, or compressed package tar archives with
extension .tar.gz, .tgz, .tar.bz2 or
.tar.xz.
It is strongly recommended that the final checks are run on a
tar archive prepared by R CMD build.
This runs a series of checks, including
file if available46. (There may be
rare false positives.)
R_LIBS in the environment if
dependent packages are in a separate library tree.) One check is that
the package name is not that of a standard package, nor one of the
defunct standard packages (‘ctest’, ‘eda’, ‘lqs’,
‘mle’, ‘modreg’, ‘mva’, ‘nls’, ‘stepfun’ and
‘ts’). Another check is that all packages mentioned in
library or requires or from which the NAMESPACE
file imports or are called via :: or ::: are listed
(in ‘Depends’, ‘Imports’, ‘Suggests’): this is not an
exhaustive check of the actual imports.
To allow a configure script to generate suitable files, files ending in ‘.in’ will be allowed in the R directory.
A warning is given for directory names that look like R package check directories – many packages have been submitted to CRAN containing these.
library.dynam.
Package startup functions are checked for correct argument lists and
(incorrect) calls to functions which modify the search path or
inappropriately generate messages. The R code is checked for
possible problems using codetools. In addition, it is checked
whether S3 methods have all arguments of the corresponding generic, and
whether the final argument of replacement functions is called
‘value’. All foreign function calls (.C, .Fortran,
.Call and .External calls) are tested to see if they have
a PACKAGE argument, and if not, whether the appropriate DLL might
be deduced from the namespace of the package. Any other calls are
reported. (The check is generous, and users may want to supplement this
by examining the output of tools::checkFF("mypkg", verbose=TRUE),
especially if the intention were to always use a PACKAGE
argument)
\name, \alias,
\title and \description). The Rd name and
title are checked for being non-empty, and there is a check for missing
cross-references (links).
\usage
sections of Rd files are documented in the corresponding
\arguments section.
Compiled code is checked for symbols corresponding to functions which might terminate R or write to stdout/stderr instead of the console. Note that the latter might give false positives in that the symbols might be pulled in with external libraries and could never be called. Windows48 users should note that the Fortran and C++ runtime libraries are examples of such external libraries.
qpdf) are available, checking that the
PDF documentation is of minimal size.
\examples to create executable example code.) If there is a file
tests/Examples/pkg-Ex.Rout.save, the output of running the
examples is compared to that file.
Of course, released packages should be able to run at least their own
examples. Each example is run in a ‘clean’ environment (so earlier
examples cannot be assumed to have been run), and with the variables
T and F redefined to generate an error unless they are set
in the example: See Logical vectors in An
Introduction to R.
--test-dir=foo may
be used to specify tests in a non-standard location. For example,
unusually slow tests could be placed in inst/slowTests and then
R CMD check --test-dir=inst/slowTests would be used to run them.
Other names that have been suggested are, for example,
inst/testWithOracle for tests that require Oracle to be installed,
inst/randomTests for tests which use random values and may
occasionally fail by chance, etc.)
If there is an error49 in executing the R code in vignette foo.ext, a log
file foo.ext.log is created in the check directory. The
vignette PDFs are re-made in a copy of the package sources in the
vign_test subdirectory of the check directory, so for further
information on errors look in directory
pkgname/vign_test/vignettes. (It is only retained if there
are errors or if environment variable _R_CHECK_CLEAN_VIGN_TEST_ is
set to a false value.)
All these tests are run with collation set to the C locale, and
for the examples and tests with environment variable LANGUAGE=en:
this is to minimize differences between platforms.
Use R CMD check --help to obtain more information about the usage
of the R package checker. A subset of the checking steps can be
selected by adding command-line options. It also allows customization by
setting environment variables _R_CHECK_*_ as described in
Tools in R Internals:
a set of these customizations similar to those used by CRAN
can be selected by the option --as-cran (which works best if
Internet access is available). Some Windows users may
need to set environment variable R_WIN_NO_JUNCTIONS to a non-empty
value. The test of cyclic declarations50in DESCRIPTION files needs
repositories (including CRAN) set: do this in
~/.Rprofile, by e.g.
options(repos = c(CRAN="https://cran.r-project.org"))
One check customization which can be revealing is
_R_CHECK_CODETOOLS_PROFILE_="suppressLocalUnused=FALSE"
which reports unused local assignments. Not only does this point out
computations which are unnecessary because their results are unused, it
also can uncover errors. (Two such are to intend to update an object by
assigning a value but mistype its name or assign in the wrong scope,
for example using <- where <<- was intended.) This can
give false positives, most commonly because of non-standard evaluation
for formulae and because the intention is to return objects in the
environment of a function for later use.
Complete checking of a package which contains a file README.md
needs pandoc installed: see
http://johnmacfarlane.net/pandoc/installing.html. This
should be reasonably current: at the time of writing CRAN used
version 1.12.4.2 to process these files.
You do need to ensure that the package is checked in a suitable locale
if it contains non-ASCII characters. Such packages are likely
to fail some of the checks in a C locale, and R CMD
check will warn if it spots the problem. You should be able to check
any package in a UTF-8 locale (if one is available). Beware that
although a C locale is rarely used at a console, it may be the
default if logging in remotely or for batch jobs.
Multiple sub-architectures: On systems which support multiple sub-architectures (principally Windows),
R CMD checkwill install and check a package which contains compiled code under all available sub-architectures. (Use option --force-multiarch to force this for packages without compiled code, which are otherwise only checked under the main sub-architecture.) This will run the loading tests, examples and tests directory under each installed sub-architecture in turn, and give an error if any fail. Where environment variables (including perhapsPATH) need to be set differently for each sub-architecture, these can be set in architecture-specific files such as R_HOME/etc/i386/Renviron.site.An alternative approach is to use
R CMD check --no-multiarchto check the primary sub-architecture, and then to use something likeR --arch=x86_64 CMD check --extra-archor (Windows)/path/to/R/bin/x64/Rcmd check --extra-archto run for each additional sub-architecture just the checks51 which differ by sub-architecture. (This approach is required for packages which are installed byR CMD INSTALL --merge-multiarch.)Where packages need additional commands to install all the sub-architectures these can be supplied by e.g. --install-args=--force-biarch.
Next: Building binary packages, Previous: Checking packages, Up: Checking and building packages [Contents][Index]
Packages may be distributed in source form as “tarballs” (.tar.gz files) or in binary form. The source form can be installed on all platforms with suitable tools and is the usual form for Unix-like systems; the binary form is platform-specific, and is the more common distribution form for the Windows and macOS platforms.
Using R CMD build, the R package builder, one can build
R package tarballs from their sources (for example, for subsequent
release). It is recommended that packages are built for release by the
current release version of R or ‘r-patched’, to avoid
inadvertently picking up new features of a development version of R.
Prior to actually building the package in the standard gzipped tar file format, a few diagnostic checks and cleanups are performed. In particular, it is tested whether object indices exist and can be assumed to be up-to-date, and C, C++ and FORTRAN source files and relevant makefiles in a src directory are tested and converted to LF line-endings if necessary.
Run-time checks whether the package works correctly should be performed
using R CMD check prior to invoking the final build procedure.
To exclude files from being put into the package, one can specify a list
of exclude patterns in file .Rbuildignore in the top-level source
directory. These patterns should be Perl-like regular expressions (see
the help for regexp in R for the precise details), one per
line, to be matched case-insensitively against the file and directory
names relative to the top-level package source directory. In addition,
directories from source control systems52 or from
eclipse53, directories with
names ending .Rcheck or Old or old and files
GNUMakefile54, Read-and-delete-me or with base names
starting with ‘.#’, or starting and ending with ‘#’, or ending
in ‘~’, ‘.bak’ or ‘.swp’, are excluded by default. In
addition, those files in the R, demo and man
directories which are flagged by R CMD check as having invalid
names will be excluded.
Use R CMD build --help to obtain more information about the usage of the R package builder.
Unless R CMD build is invoked with the --no-build-vignettes option (or the package’s DESCRIPTION contains ‘BuildVignettes: no’ or similar), it will attempt to (re)build the vignettes (see Writing package vignettes) in the package. To do so it installs the current package into a temporary library tree, but any dependent packages need to be installed in an available library tree (see the Note: at the top of this section).
Similarly, if the .Rd documentation files contain any
\Sexpr macros (see Dynamic pages), the package will be
temporarily installed to execute them. Post-execution binary copies of
those pages containing build-time macros will be saved in
build/partial.rdb. If there are any install-time or render-time
macros, a .pdf version of the package manual will be built and
installed in the build subdirectory. (This allows
CRAN or other repositories to display the manual even if they
are unable to install the package.) This can be suppressed by the
option --no-manual or if package’s DESCRIPTION contains
‘BuildManual: no’ or similar.
One of the checks that R CMD build runs is for empty source
directories. These are in most (but not all) cases unintentional, if
they are intentional use the option --keep-empty-dirs (or set
the environment variable _R_BUILD_KEEP_EMPTY_DIRS_ to ‘TRUE’,
or have a ‘BuildKeepEmpty’ field with a true value in the
DESCRIPTION file).
The --resave-data option allows saved images (.rda and
.RData files) in the data directory to be optimized for
size. It will also compress tabular files and convert .R files
to saved images. It can take values no, gzip (the default
if this option is not supplied, which can be changed by setting the
environment variable _R_BUILD_RESAVE_DATA_) and best
(equivalent to giving it without a value), which chooses the most
effective compression. Using best adds a dependence on R
(>= 2.10) to the DESCRIPTION file if bzip2 or
xz compression is selected for any of the files. If this is
thought undesirable, --resave-data=gzip (which is the default
if that option is not supplied) will do what compression it can with
gzip. A package can control how its data is resaved by
supplying a ‘BuildResaveData’ field (with one of the values given
earlier in this paragraph) in its DESCRIPTION file.
The --compact-vignettes option will run
tools::compactPDF over the PDF files in inst/doc (and its
subdirectories) to losslessly compress them. This is not enabled by
default (it can be selected by environment variable
_R_BUILD_COMPACT_VIGNETTES_) and needs qpdf
(http://qpdf.sourceforge.net/) to be available.
It can be useful to run R CMD check --check-subdirs=yes on the
built tarball as a final check on the contents.
Where a non-POSIX file system is in use which does not utilize execute
permissions, some care is needed with permissions. This applies on
Windows and to e.g. FAT-formatted drives and SMB-mounted file systems
on other OSes. The ‘mode’ of the file recorded in the tarball will be
whatever file.info() returns. On Windows this will record only
directories as having execute permission and on other OSes it is likely
that all files have reported ‘mode’ 0777. A particular issue is
packages being built on Windows which are intended to contain executable
scripts such as configure and cleanup: R CMD
build ensures those two are recorded with execute permission.
Directory build of the package sources is reserved for use by
R CMD build: it contains information which may not easily be
created when the package is installed, including index information on
the vignettes and, rarely, information on the help pages and perhaps a
copy of the PDF reference manual (see above).
Previous: Building package tarballs, Up: Checking and building packages [Contents][Index]
Binary packages are compressed copies of installed versions of packages. They contain compiled shared libraries rather than C, C++ or Fortran source code, and the R functions are included in their installed form. The format and filename are platform-specific; for example, a binary package for Windows is usually supplied as a .zip file, and for the macOS platform the default binary package file extension is .tgz.
The recommended method of building binary packages is to use
R CMD INSTALL --build pkg
where pkg is either the name of a source tarball (in the usual
.tar.gz format) or the location of the directory of the package
source to be built. This operates by first installing the package and
then packing the installed binaries into the appropriate binary package
file for the particular platform.
By default, R CMD INSTALL --build will attempt to install the
package into the default library tree for the local installation of
R. This has two implications:
To prevent changes to the present working installation or to provide an
install location with write access, create a suitably located directory
with write access and use the -l option to build the package
in the chosen location. The usage is then
R CMD INSTALL -l location --build pkg
where location is the chosen directory with write access. The package will be installed as a subdirectory of location, and the package binary will be created in the current directory.
Other options for R CMD INSTALL can be found using R
CMD INSTALL --help, and platform-specific details for special cases are
discussed in the platform-specific FAQs.
Finally, at least one web-based service is available for building binary packages from (checked) source code: WinBuilder (see https://win-builder.R-project.org/) is able to build Windows binaries. Note that this is intended for developers on other platforms who do not have access to Windows but wish to provide binaries for the Windows platform.
Next: Package namespaces, Previous: Checking and building packages, Up: Creating R packages [Contents][Index]
| • Encodings and vignettes: | ||
| • Non-Sweave vignettes: |
In addition to the help files in Rd format, R packages allow the inclusion of documents in arbitrary other formats. The standard location for these is subdirectory inst/doc of a source package, the contents will be copied to subdirectory doc when the package is installed. Pointers from package help indices to the installed documents are automatically created. Documents in inst/doc can be in arbitrary format, however we strongly recommend providing them in PDF format, so users on almost all platforms can easily read them. To ensure that they can be accessed from a browser (as an HTML index is provided), the file names should start with an ASCII letter and be comprised entirely of ASCII letters or digits or hyphen or underscore.
A special case is package vignettes. Vignettes are documents in PDF or HTML format obtained from plain text literate source files from which R knows how to extract R code and create output (in PDF/HTML or intermediate LaTeX). Vignette engines do this work, using “tangle” and “weave” functions respectively. Sweave, provided by the R distribution, is the default engine. Since R version 3.0.0, other vignette engines besides Sweave are supported; see Non-Sweave vignettes.
Package vignettes have their sources in subdirectory vignettes of
the package sources. Note that the location of the vignette sources
only affects R CMD build and R CMD check: the
tarball built by R CMD build includes in inst/doc the
components intended to be installed.
Sweave vignette sources are normally given the file extension
.Rnw or .Rtex, but for historical reasons
extensions55 .Snw and
.Stex are also recognized. Sweave allows the integration of
LaTeX documents: see the Sweave help page in R and the
Sweave vignette in package utils for details on the
source document format.
Package vignettes are tested by R CMD check by executing all R
code chunks they contain (except those marked for non-evaluation, e.g.,
with option eval=FALSE for Sweave). The R working directory
for all vignette tests in R CMD check is a copy of the
vignette source directory. Make sure all files needed to run the R
code in the vignette (data sets, …) are accessible by either
placing them in the inst/doc hierarchy of the source package or
by using calls to system.file(). All other files needed to
re-make the vignettes (such as LaTeX style files, BibTeX input
files and files for any figures not created by running the code in the
vignette) must be in the vignette source directory. R CMD check
will check that vignette production has succeeded by comparing
modification times of output files in inst/doc with
the source in vignettes.
R CMD build will automatically56 create the
(PDF or HTML versions of the) vignettes in inst/doc for
distribution with the package sources. By including the vignette
outputs in the package sources it is not necessary that these can be
re-built at install time, i.e., the package author can use private R
packages, screen snapshots and LaTeX extensions which are only
available on his machine.57
By default R CMD build will run Sweave on all Sweave
vignette source files in vignettes. If Makefile is found
in the vignette source directory, then R CMD build will try to
run make after the Sweave runs, otherwise
texi2pdf is run on each .tex file produced.
The first target in the Makefile should take care of both
creation of PDF/HTML files and cleaning up afterwards (including
after Sweave), i.e., delete all files that shall not appear in
the final package archive. Note that if the make step runs R
it needs to be careful to respect the environment values of R_LIBS
and R_HOME58.
Finally, if there is a Makefile and it has a ‘clean:’
target, make clean is run.
All the usual caveats about including a Makefile apply.
It must be portable (no GNU extensions), use LF line endings
and must work correctly with a parallel make: too many authors
have written things like
## BAD EXAMPLE
all: pdf clean
pdf: ABC-intro.pdf ABC-details.pdf
%.pdf: %.tex
texi2dvi --pdf $*
clean:
rm *.tex ABC-details-*.pdf
which will start removing the source files whilst pdflatex is
working.
Metadata lines can be placed in the source file, preferably in LaTeX
comments in the preamble. One such is a \VignetteIndexEntry of
the form
%\VignetteIndexEntry{Using Animal}
Others you may see are \VignettePackage (currently ignored),
\VignetteDepends and \VignetteKeyword (which replaced
\VignetteKeywords). These are processed at package installation
time to create the saved data frame Meta/vignette.rds, but only
the \VignetteIndexEntry and \VignetteKeyword statements
are currently used. The \VignetteEngine statement
is described in Non-Sweave vignettes.
At install time an HTML index for all vignettes in the package is
automatically created from the \VignetteIndexEntry statements
unless a file index.html exists in directory
inst/doc. This index is linked from the HTML help index for
the package. If you do supply a inst/doc/index.html file it
should contain relative links only to files under the installed
doc directory, or perhaps (not really an index) to HTML help
files or to the DESCRIPTION file, and be valid HTML as
confirmed via the W3C Markup
Validation Service or Validator.nu.
Sweave/Stangle allows the document to specify the split=TRUE
option to create a single R file for each code chunk: this will not
work for vignettes where it is assumed that each vignette source
generates a single file with the vignette extension replaced by
.R.
Do watch that PDFs are not too large – one in a CRAN package was 72MB! This is usually caused by the inclusion of overly detailed figures, which will not render well in PDF viewers. Sometimes it is much better to generate fairly high resolution bitmap (PNG, JPEG) figures and include those in the PDF document.
When R CMD build builds the vignettes, it copies these and
the vignette sources from directory vignettes to inst/doc.
To install any other files from the vignettes directory, include
a file vignettes/.install_extras which specifies these as
Perl-like regular expressions on one or more lines. (See the
description of the .Rinstignore file for full details.)
Next: Non-Sweave vignettes, Previous: Writing package vignettes, Up: Writing package vignettes [Contents][Index]
Vignettes will in general include descriptive text, R input, R output and figures, LaTeX include files and bibliographic references. As any of these may contain non-ASCII characters, the handling of encodings can become very complicated.
The vignette source file should be written in ASCII or contain a declaration of the encoding (see below). This applies even to comments within the source file, since vignette engines process comments to look for options and metadata lines. When an engine’s weave and tangle functions are called on the vignette source, it will be converted to the encoding of the current R session.
Stangle() will produce an R code file in the current locale’s
encoding: for a non-ASCII vignette what that is is recorded in a
comment at the top of the file.
Sweave() will produce a .tex file in the current
encoding, or in UTF-8 if that is declared. Non-ASCII encodings
need to be declared to LaTeX via a line like
\usepackage[utf8]{inputenc}
(It is also possible to use the more recent ‘inputenx’ LaTeX package.) For files where this line is not needed (e.g. chapters included within the body of a larger document, or non-Sweave vignettes), the encoding may be declared using a comment like
%\VignetteEncoding{UTF-8}
If the encoding is UTF-8, this can also be declared using the declaration
%\SweaveUTF8
If no declaration is given in the vignette, it will be assumed to be in the encoding declared for the package. If there is no encoding declared in either place, then it is an error to use non-ASCII characters in the vignette.
In any case, be aware that LaTeX may require the ‘usepackage’ declaration.
Sweave() will also parse and evaluate the R code in each
chunk. The R output will also be in the current locale (or UTF-8
if so declared), and should
be covered by the ‘inputenc’ declaration. One thing people often
forget is that the R output may not be ASCII even for
ASCII R sources, for many possible reasons. One common one
is the use of ‘fancy’ quotes: see the R help on sQuote: note
carefully that it is not portable to declare UTF-8 or CP1252 to cover
such quotes, as their encoding will depend on the locale used to run
Sweave(): this can be circumvented by setting
options(useFancyQuotes="UTF-8") in the vignette.
The final issue is the encoding of figures – this applies only to PDF
figures and not PNG etc. The PDF figures will contain declarations for
their encoding, but the Sweave option pdf.encoding may need to be
set appropriately: see the help for the pdf() graphics device.
As a real example of the complexities, consider the fortunes
package version ‘1.4-0’. That package did not have a declared
encoding, and its vignette was in ASCII. However, the data it
displays are read from a UTF-8 CSV file and will be assumed to be in the
current encoding, so fortunes.tex will be in UTF-8 in any locale.
Had read.table been told the data were UTF-8, fortunes.tex
would have been in the locale’s encoding.
Previous: Encodings and vignettes, Up: Writing package vignettes [Contents][Index]
Vignettes in formats other than Sweave are supported via
“vignette engines”. For example knitr version 1.1 or later
can create .tex files from a variation on Sweave format, and
.html files from a variation on “markdown” format. These
engines replace the Sweave() function with other functions to
convert vignette source files into LaTeX files for processing into
.pdf, or directly into .pdf or .html files. The
Stangle() function is replaced with a function that extracts the
R source from a vignette.
R recognizes non-Sweave vignettes using filename extensions specified
by the engine. For example, the knitr package supports
the extension .Rmd (standing for
“R markdown”). The user indicates the vignette engine
within the vignette source using a \VignetteEngine line, for example
%\VignetteEngine{knitr::knitr}
This specifies the name of a package and an engine to use in place of
Sweave in processing the vignette. As Sweave is the only engine
supplied with the R distribution, the package providing any other
engine must be specified in the ‘VignetteBuilder’ field of the
package DESCRIPTION file, and also specified in the
‘Suggests’, ‘Imports’ or ‘Depends’ field (since its
namespace must be available to build or check your package). If more
than one package is specified as a builder, they will be searched in the
order given there. The utils package is always implicitly
appended to the list of builder packages, but may be included earlier
to change the search order.
Note that a package with non-Sweave vignettes should always have a
‘VignetteBuilder’ field in the DESCRIPTION file, since this
is how R CMD check recognizes that there are vignettes to be
checked: packages listed there are required when the package is checked.
The vignette engine can produce .tex, .pdf, or .html
files as output. If it produces .tex files, R will
call texi2pdf to convert them to .pdf for display
to the user (unless there is a Makefile in the vignettes
directory).
Package writers who would like to supply vignette engines need
to register those engines in the package .onLoad function.
For example, that function could make the call
tools::vignetteEngine("knitr", weave = vweave, tangle = vtangle,
pattern = "[.]Rmd$", package = "knitr")
(The actual registration in knitr is more complicated, because
it supports other input formats.) See the ?tools::vignetteEngine
help topic for details on engine registration.
Next: Writing portable packages, Previous: Writing package vignettes, Up: Creating R packages [Contents][Index]
R has a namespace management system for code in packages. This system allows the package writer to specify which variables in the package should be exported to make them available to package users, and which variables should be imported from other packages.
The namespace for a package is specified by the
NAMESPACE file in the top level package directory. This file
contains namespace directives describing the imports and exports
of the namespace. Additional directives register any shared objects to
be loaded and any S3-style methods that are provided. Note that
although the file looks like R code (and often has R-style
comments) it is not processed as R code. Only very simple
conditional processing of if statements is implemented.
Packages are loaded and attached to the search path by calling
library or require. Only the exported variables are
placed in the attached frame. Loading a package that imports variables
from other packages will cause these other packages to be loaded as well
(unless they have already been loaded), but they will not be
placed on the search path by these implicit loads. Thus code in the
package can only depend on objects in its own namespace and its imports
(including the base namespace) being visible59.
Namespaces are sealed once they are loaded. Sealing means that imports and exports cannot be changed and that internal variable bindings cannot be changed. Sealing allows a simpler implementation strategy for the namespace mechanism. Sealing also allows code analysis and compilation tools to accurately identify the definition corresponding to a global variable reference in a function body.
The namespace controls the search strategy for variables used by functions in the package. If not found locally, R searches the package namespace first, then the imports, then the base namespace and then the normal search path.
| • Specifying imports and exports: | ||
| • Registering S3 methods: | ||
| • Load hooks: | ||
| • useDynLib: | ||
| • An example: | ||
| • Namespaces with S4 classes and methods: |
Next: Registering S3 methods, Previous: Package namespaces, Up: Package namespaces [Contents][Index]
Exports are specified using the export directive in the
NAMESPACE file. A directive of the form
export(f, g)
specifies that the variables f and g are to be exported.
(Note that variable names may be quoted, and reserved words and
non-standard names such as [<-.fractions must be.)
For packages with many variables to export it may be more convenient to
specify the names to export with a regular expression using
exportPattern. The directive
exportPattern("^[^\\.]")
exports all variables that do not start with a period. However, such broad patterns are not recommended for production code: it is better to list all exports or use narrowly-defined groups. (This pattern applies to S4 classes.) Beware of patterns which include names starting with a period: some of these are internal-only variables and should never be exported, e.g. ‘.__S3MethodsTable__.’ (and the code nowadays excludes known cases).
Packages implicitly import the base namespace.
Variables exported from other packages with namespaces need to be
imported explicitly using the directives import and
importFrom. The import directive imports all exported
variables from the specified package(s). Thus the directives
import(foo, bar)
specifies that all exported variables in the packages foo and
bar are to be imported. If only some of the exported variables
from a package are needed, then they can be imported using
importFrom. The directive
importFrom(foo, f, g)
specifies that the exported variables f and g of the
package foo are to be imported. Using importFrom
selectively rather than import is good practice and recommended
notably when importing from packages with more than a dozen exports.
To import every symbol from a package but for a few exceptions,
pass the except argument to import. The directive
import(foo, except=c(bar, baz))
imports every symbol from foo except bar and
baz. The value of except should evaluate to something
coercible to a character vector, after substituting each symbol for
its corresponding string.
It is possible to export variables from a namespace which it has
imported from other namespaces: this has to be done explicitly and not
via exportPattern.
If a package only needs a few objects from another package it can use a
fully qualified variable reference in the code instead of a formal
import. A fully qualified reference to the function f in package
foo is of the form foo::f. This is slightly less efficient
than a formal import and also loses the advantage of recording all
dependencies in the NAMESPACE file (but they still need to be
recorded in the DESCRIPTION file). Evaluating foo::f will
cause package foo to be loaded, but not attached, if it was not
loaded already—this can be an advantage in delaying the loading of a
rarely used package.
Using foo:::f instead of foo::f allows access to
unexported objects. This is generally not recommended, as the
semantics of unexported objects may be changed by the package author
in routine maintenance.
Next: Load hooks, Previous: Specifying imports and exports, Up: Package namespaces [Contents][Index]
The standard method for S3-style UseMethod dispatching might fail
to locate methods defined in a package that is imported but not attached
to the search path. To ensure that these methods are available the
packages defining the methods should ensure that the generics are
imported and register the methods using S3method directives. If
a package defines a function print.foo intended to be used as a
print method for class foo, then the directive
S3method(print, foo)
ensures that the method is registered and available for UseMethod
dispatch, and the function print.foo does not need to be exported.
Since the generic print is defined in base it does not need
to be imported explicitly.
(Note that function and class names may be quoted, and reserved words
and non-standard names such as [<- and function must
be.)
It is possible to specify a third argument to S3method, the function to be used as the method, for example
S3method(print, check_so_symbols, .print.via.format)
when print.check_so_symbols is not needed.
Next: useDynLib, Previous: Registering S3 methods, Up: Package namespaces [Contents][Index]
There are a number of hooks called as packages are loaded, attached,
detached, and unloaded. See help(".onLoad") for more details.
Since loading and attaching are distinct operations, separate hooks are
provided for each. These hook functions are called .onLoad and
.onAttach. They both take arguments60 libname and
pkgname; they should be defined in the namespace but not
exported.
Packages can use a .onDetach or .Last.lib function
(provided the latter is exported from the namespace) when detach
is called on the package. It is called with a single argument, the full
path to the installed package. There is also a hook .onUnload
which is called when the namespace is unloaded (via a call to
unloadNamespace, perhaps called by detach(unload = TRUE))
with argument the full path to the installed package’s directory.
.onUnload and .onDetach should be defined in the namespace
and not exported, but .Last.lib does need to be exported.
Packages are not likely to need .onAttach (except perhaps for a
start-up banner); code to set options and load shared objects should be
placed in a .onLoad function, or use made of the useDynLib
directive described next.
User-level hooks are also available: see the help on function
setHook.
These hooks are often used incorrectly. People forget to export
.Last.lib. Compiled code should be loaded in .onLoad (or
via a useDynLb directive: see below) and unloaded in
.onUnload. Do remember that a package’s namespace can be loaded
without the namespace being attached (e.g. by pkgname::fun) and
that a package can be detached and re-attached whilst its namespace
remains loaded.
Next: An example, Previous: Load hooks, Up: Package namespaces [Contents][Index]
A NAMESPACE file can contain one or more useDynLib
directives which allows shared objects that need to be
loaded.61 The directive
useDynLib(foo)
registers the shared object foo62 for loading with library.dynam.
Loading of registered object(s) occurs after the package code has been
loaded and before running the load hook function. Packages that would
only need a load hook function to load a shared object can use the
useDynLib directive instead.
The useDynLib directive also accepts the names of the native
routines that are to be used in R via the .C, .Call,
.Fortran and .External interface functions. These are given as
additional arguments to the directive, for example,
useDynLib(foo, myRoutine, myOtherRoutine)
By specifying these names in the useDynLib directive, the native
symbols are resolved when the package is loaded and R variables
identifying these symbols are added to the package’s namespace with
these names. These can be used in the .C, .Call,
.Fortran and .External calls in place of the name of the
routine and the PACKAGE argument. For instance, we can call the
routine myRoutine from R with the code
.Call(myRoutine, x, y)
rather than
.Call("myRoutine", x, y, PACKAGE = "foo")
There are at least two benefits to this approach. Firstly, the symbol lookup is done just once for each symbol rather than each time the routine is invoked. Secondly, this removes any ambiguity in resolving symbols that might be present in several compiled DLLs. However, this approach is nowadays deprecated in favour of supplying registration information (see below).
In some circumstances, there will already be an R variable in the
package with the same name as a native symbol. For example, we may have
an R function in the package named myRoutine. In this case,
it is necessary to map the native symbol to a different R variable
name. This can be done in the useDynLib directive by using named
arguments. For instance, to map the native symbol name myRoutine
to the R variable myRoutine_sym, we would use
useDynLib(foo, myRoutine_sym = myRoutine, myOtherRoutine)
We could then call that routine from R using the command
.Call(myRoutine_sym, x, y)
Symbols without explicit names are assigned to the R variable with that name.
In some cases, it may be preferable not to create R variables in the
package’s namespace that identify the native routines. It may be too
costly to compute these for many routines when the package is loaded
if many of these routines are not likely to be used. In this case,
one can still perform the symbol resolution correctly using the DLL,
but do this each time the routine is called. Given a reference to the
DLL as an R variable, say dll, we can call the routine
myRoutine using the expression
.Call(dll$myRoutine, x, y)
The $ operator resolves the routine with the given name in the
DLL using a call to getNativeSymbol. This is the same
computation as above where we resolve the symbol when the package is
loaded. The only difference is that this is done each time in the case
of dll$myRoutine.
In order to use this dynamic approach (e.g., dll$myRoutine), one
needs the reference to the DLL as an R variable in the package. The
DLL can be assigned to a variable by using the variable =
dllName format used above for mapping symbols to R variables. For
example, if we wanted to assign the DLL reference for the DLL
foo in the example above to the variable myDLL, we would
use the following directive in the NAMESPACE file:
myDLL = useDynLib(foo, myRoutine_sym = myRoutine, myOtherRoutine)
Then, the R variable myDLL is in the package’s namespace and
available for calls such as myDLL$dynRoutine to access routines
that are not explicitly resolved at load time.
If the package has registration information (see Registering native routines), then we can use that directly rather than specifying the
list of symbols again in the useDynLib directive in the
NAMESPACE file. Each routine in the registration information is
specified by giving a name by which the routine is to be specified along
with the address of the routine and any information about the number and
type of the parameters. Using the .registration argument of
useDynLib, we can instruct the namespace mechanism to create
R variables for these symbols. For example, suppose we have the
following registration information for a DLL named myDLL:
static R_NativePrimitiveArgType foo_t[] = {
REALSXP, INTSXP, STRSXP, LGLSXP
};
static const R_CMethodDef cMethods[] = {
{"foo", (DL_FUNC) &foo, 4, foo_t},
{"bar_sym", (DL_FUNC) &bar, 0},
{NULL, NULL, 0, NULL}
};
static const R_CallMethodDef callMethods[] = {
{"R_call_sym", (DL_FUNC) &R_call, 4},
{"R_version_sym", (DL_FUNC) &R_version, 0},
{NULL, NULL, 0}
};
Then, the directive in the NAMESPACE file
useDynLib(myDLL, .registration = TRUE)
causes the DLL to be loaded and also for the R variables foo,
bar_sym, R_call_sym and R_version_sym to be
defined in the package’s namespace.
Note that the names for the R variables are taken from the entry in
the registration information and do not need to be the same as the name
of the native routine. This allows the creator of the registration
information to map the native symbols to non-conflicting variable names
in R, e.g. R_version to R_version_sym for use in an
R function such as
R_version <- function()
{
.Call(R_version_sym)
}
Using argument .fixes allows an automatic prefix to be added to
the registered symbols, which can be useful when working with an
existing package. For example, package KernSmooth has
useDynLib(KernSmooth, .registration = TRUE, .fixes = "F_")
which makes the R variables corresponding to the FORTRAN symbols
F_bkde and so on, and so avoid clashes with R code in the
namespace.
NB: Using these arguments for a package which does not register native symbols merely slows down the package loading (although at the time of writing 90 CRAN packages did so). Once symbols are registered, check that the corresponding R variables are not accidentally exported by a pattern in the NAMESPACE file.
Next: Namespaces with S4 classes and methods, Previous: useDynLib, Up: Package namespaces [Contents][Index]
As an example consider two packages named foo and bar. The R code for package foo in file foo.R is
x <- 1 f <- function(y) c(x,y) foo <- function(x) .Call("foo", x, PACKAGE="foo") print.foo <- function(x, ...) cat("<a foo>\n")
Some C code defines a C function compiled into DLL foo (with an
appropriate extension). The NAMESPACE file for this package is
useDynLib(foo) export(f, foo) S3method(print, foo)
The second package bar has code file bar.R
c <- function(...) sum(...) g <- function(y) f(c(y, 7)) h <- function(y) y+9
and NAMESPACE file
import(foo) export(g, h)
Calling library(bar) loads bar and attaches its exports to
the search path. Package foo is also loaded but not attached to
the search path. A call to g produces
> g(6) [1] 1 13
This is consistent with the definitions of c in the two settings:
in bar the function c is defined to be equivalent to
sum, but in foo the variable c refers to the
standard function c in base.
Previous: An example, Up: Package namespaces [Contents][Index]
Some additional steps are needed for packages which make use of formal
(S4-style) classes and methods (unless these are purely used
internally). The package should have Depends: methods in its
DESCRIPTION file63 and import(methods) or
importFrom(methods, ...) plus any classes and methods which are
to be exported need to be declared in the NAMESPACE file. For
example, the stats4 package has
export(mle) # exporting methods implicitly exports the generic
importFrom("graphics", plot)
importFrom("stats", optim, qchisq)
## For these, we define methods or (AIC, BIC, nobs) an implicit generic:
importFrom("stats", AIC, BIC, coef, confint, logLik, nobs, profile,
update, vcov)
exportClasses(mle, profile.mle, summary.mle)
## All methods for imported generics:
exportMethods(coef, confint, logLik, plot, profile, summary,
show, update, vcov)
## implicit generics which do not have any methods here
export(AIC, BIC, nobs)
All S4 classes to be used outside the package need to be listed in an
exportClasses directive. Alternatively, they can be specified
using exportClassPattern64 in the same style as
for exportPattern. To export methods for generics from other
packages an exportMethods directive can be used.
Note that exporting methods on a generic in the namespace will also
export the generic, and exporting a generic in the namespace will also
export its methods. If the generic function is not local to this
package, either because it was imported as a generic function or because
the non-generic version has been made generic solely to add S4 methods
to it (as for functions such as plot in the example above), it
can be declared via either or both of export or
exportMethods, but the latter is clearer (and is used in the
stats4 example above). In particular, for primitive functions
there is no generic function, so export would export the
primitive, which makes no sense. On the other hand, if the generic is
local to this package, it is more natural to export the function itself
using export(), and this must be done if an implicit
generic is created without setting any methods for it (as is the case
for AIC in stats4).
A non-local generic function is only exported to ensure that calls to
the function will dispatch the methods from this package (and that is
not done or required when the methods are for primitive functions). For
this reason, you do not need to document such implicitly created generic
functions, and undoc in package tools will not report them.
If a package uses S4 classes and methods exported from another package, but does not import the entire namespace of the other package65, it needs to import the classes and methods explicitly, with directives
importClassesFrom(package, ...) importMethodsFrom(package, ...)
listing the classes and functions with methods respectively. Suppose we
had two small packages A and B with B using A.
Then they could have NAMESPACE files
export(f1, ng1) exportMethods("[") exportClasses(c1)
and
importFrom(A, ng1) importClassesFrom(A, c1) importMethodsFrom(A, f1) export(f4, f5) exportMethods(f6, "[") exportClasses(c1, c2)
respectively.
Note that importMethodsFrom will also import any generics defined
in the namespace on those methods.
It is important if you export S4 methods that the corresponding generics
are available. You may for example need to import plot from
graphics to make visible a function to be converted into its
implicit generic. But it is better practice to make use of the generics
exported by stats4 as this enables multiple packages to
unambiguously set methods on those generics.
Next: Diagnostic messages, Previous: Package namespaces, Up: Creating R packages [Contents][Index]
This section contains advice on writing packages to be used on multiple platforms or for distribution (for example to be submitted to a package repository such as CRAN).
| • PDF size: | ||
| • Check timing: | ||
| • Encoding issues: | ||
| • Portable C and C++ code: | ||
| • Binary distribution: |
Portable packages should have simple file names: use only alphanumeric
ASCII characters and period (.), and avoid those names
not allowed under Windows which are mentioned above.
Many of the graphics devices are platform-specific: even X11()
(aka x11()) which although emulated on Windows may not be
available on a Unix-alike (and is not the preferred screen device on OS
X). It is rarely necessary for package code or examples to open a new
device, but if essential,66 use dev.new().
Use R CMD build to make the release .tar.gz file.
R CMD check provides a basic set of checks, but often further
problems emerge when people try to install and use packages submitted to
CRAN – many of these involve compiled code. Here are some
further checks that you can do to make your package more portable.
ifeq
and the like), ${shell ...}, ${wildcard ...} and
similar, and the use of +=68 and :=. Also, the use of $< other
than in implicit rules is a GNU extension, as is the $^ macro.
Unfortunately makefiles which use GNU extensions often run on other
platforms but do not have the intended results.
The use of ${shell ...} can be avoided by using backticks, e.g.
PKG_CPPFLAGS = `gsl-config --cflags`
which works in all versions of make known69 to be used with
R.
If you really must require GNU make, declare it in the DESCRIPTION file by
SystemRequirements: GNU make
and ensure that you use the value of environment variable MAKE
(and not just make) in your scripts. (On some platforms GNU
make is available under a name such as gmake, and there
SystemRequirements is used to set MAKE.)
If you only need GNU make for parts of the package which are rarely needed (for example to create bibliography files under vignettes), use a file called GNUmakefile rather than Makefile as GNU make (only) will use the former.
Since the only viable make for Windows is GNU make, it is permissible to use GNU extensions in files Makevars.win or Makefile.win.
ash (https://en.wikipedia.org/wiki/Almquist_shell),
a rather minimal shell with few builtins. Beware of assuming that all
the POSIX command-line utilities are available, especially on Windows
where only a minimal set is provided for use with R.
(See The command line tools in R Installation and Administration.)
One particular issue is the use of echo, for which two
behaviours are allowed
(http://pubs.opengroup.org/onlinepubs/9699919799/utilities/echo.html)
and both occur as defaults on R platforms: portable applications
should not use -n (as the first argument) nor escape
sequences. Another common issue is the construction
export FOO=value
which is bash-specific (first set the variable then export it by name).
gcc and
gfortran71 can be used with options -Wall -pedantic to alert
you to potential problems. This is particularly important for C++,
where g++ -Wall -pedantic will alert you to the use of some of
the GNU extensions which fail to compile on most other C++ compilers. If
R was not configured accordingly, one can achieve this via
personal Makevars files.
See Customizing package compilation in R Installation and Administration,
Portable C++ code needs to follow the 1998 standard (and not use features from C99), or to specify a C++11 compiler (see Using C++11 code) where available (which is not the case on all R platforms).
If using Fortran with the GNU compiler, use the flags -std=f95 -Wall -pedantic which reject most GNU extensions and features from later standards.
R has tested that DOUBLE COMPLEX works (although an extension
to the Fortran standards) and so is preferred to COMPLEX*16.
(Fortran 9x code can use something like
COMPLEX(KIND=KIND(0.0D0))72.)
Not all common R platforms conform to the expected standards, e.g.
C99 for C code. One common area of problems is the *printf
functions where Windows does not support %lld, %Lf and
similar formats (and has its own formats such as %I64d for 64-bit
integers). It is very rare to need to output such types, and 64-bit
integers can usually be converted to doubles for output. However, the
C11 standard (section 7.8.1) includes PRIxNN
macros73 in C header inttypes.h
(for example PRId64) so the portable approach is to test for
these and if not available provide emulations in the package.
R CMD check performs some checks for non-portable
compiler/linker flags in src/Makevars. However, it cannot check
the meaning of such flags, and some are commonly accepted but with
compiler-specific meanings. There are other non-portable flags which
are not checked, nor are src/Makefile files and makefiles in
sub-directories. As a comment in the code says
It is hard to think of anything apart from -I* and -D* that is safe for general use …
although -pthread is pretty close to portable. (Option -U is portable but little use on the command line as it will only cancel built-in defines (not portable) and those defined earlier on the command line (R does not use any).)
People have used configure to customize src/Makevars,
including for specific compilers. This is unsafe for several reasons.
First, unintended compilers might meet the check—for example, several
compilers other than GCC identify themselves as ‘GCC’ whilst being only
partially conformant. Second, future versions of compilers may behave
differently (including updates to quite old series) so for example
-Werror (and specializations) can make a package
non-installable under a future version. Third, using flags to suppress
diagnostic messages can hide important information for debugging on a
platform not tested by the package maintainer. (R CMD check
can optionally report on unsafe flags which were used.)
long in C will be 32-bit
on some R platforms (including 64-bit Windows), but 64-bit on most
modern Unix and Linux platforms. It is rather unlikely that the use of
long in C code has been thought through: if you need a longer
type than int you should use a configure test for a C99/C++11
type such as int_fast64_t (and failing that, long long
74) and
typedef your own type to be long or long long, or use
another suitable type (such as size_t).
It is not safe to assume that long and pointer types are the same
size, and they are not on 64-bit Windows. If you need to convert
pointers to and from integers use the C99/C++11 integer types
intptr_t and uintptr_t (which are defined in the header
<stdint.h> and are not required to be implemented by the C99
standard but are used in C code by R itself).
Note that integer in FORTRAN corresponds to int
in C on all R platforms.
abort
or exit75: these terminate the user’s R process, quite possibly
including all his unsaved work. One usage that could call abort
is the assert macro in C or C++ functions, which should never be
active in production code. The normal way to ensure that is to define
the macro NDEBUG, and R CMD INSTALL does so as part of
the compilation flags. If you wish to use assert during
development. you can include -UNDEBUG in PKG_CPPFLAGS.
Note that your own src/Makefile or makefiles in sub-directories
may also need to define NDEBUG.
This applies not only to your own code but to any external software you compile in or link to.
rand, drand48 and random76, but rather use the
interfaces to R’s RNGs described in Random numbers. In
particular, if more than one package initializes the system RNG (e.g.
via srand), they will interfere with each other.
Nor should the C++11 random number library be used, nor any other third-party random number generators such as those in GSL.
nm -pg mypkg.so
and checking if any of the symbols marked U is unexpected is a
good way to avoid this.
libz (especially those already linked
into R). In the case in point, entry point gzgets was
sometimes resolved against the old version compiled into the package,
sometimes against the copy compiled into R and sometimes against the
system dynamic library. The only safe solution is to rename the entry
points in the copy in the package. We have even seen problems with
entry point name myprintf, which is a system entry
point77 on some Linux systems.
nm -pg), and to use names which are
clearly tied to your package (which also helps users if anything does go
wrong). Note that symbol names starting with R_ are regarded as
part of R’s namespace and should not be used in packages.
R_init_pkgname, on
suitable platforms78,
which would completely avoid symbol conflicts.
.Internal, .C, .Fortran, .Call or
.External, since such interfaces are subject to change without
notice and will probably result in your code terminating the R
process.
R CMD build will replace them by copies.
library, require or attach and this often does not
work as intended. For alternatives, see Suggested packages and
with.
example as well as
in batch mode when checking. So they should behave appropriately in
both scenarios, conditioning by interactive() the parts which
need an operator or observer. For instance, progress
bars79 are only appropriate in
interactive use, as is displaying help pages or calling View()
(see below).
PKG_LIBS.
Some linkers will re-order the entries, and behaviour can differ between
dynamic and static libraries. Generally -L options should
precede80 the libraries (typically
specified by -l options) to be found from those directories,
and libraries are searched once in the order they are specified. Not
all linkers allow a space after -L .
LinkingTo. This puts one or more
directories on the include search path ahead of system headers but
(prior to R 3.4.0) after those specified in the CPPFLAGS macro
of the R build (which normally includes -I/usr/local/include,
but most platforms ignore that and include it with the system headers).
Any confusion would be avoided by having LinkingTo headers in a
directory named after the package. In any case, name conflicts of
headers and directories under package include directories should
be avoided, both between packages and between a package and system and
third-party software.
ar utility is often used in makefiles to make static
libraries. Its modifier u is defined by POSIX but is disabled in
GNU ar on some recent Linux distributions which use
‘deterministic mode’. The safest way to make a static library is to first
remove any existing file of that name then use ar -cr and then
ranlib if needed (which is system-dependent: on most
systems81 ar always
maintains a symbol table). The POSIX standard says options should be
preceded by a hyphen (as in -cr), although most OSes accept
them without.
Note that on some systems ar -cr must have at least one file
specified.
pandoc to fail with a baffling error message.
Non-ASCII filenames can also cause problems (particularly in non-UTF-8 locales).
When specifying a minimum Java version please use the official version names, which are (confusingly)
1.1 1.2 1.3 1.4 5.0 6 7 8 9 10 11
and as from 2018 a year.month scheme such as ‘18.3’ is also in use.
A suitable test Java at least version 8 for packages using rJava would be something like
.jinit()
jv <- .jcall("java/lang/System", "S", "getProperty", "java.runtime.version")
if(substr(jv, 1L, 2L) == "1.") {
jvn <- as.numeric(paste0(strsplit(jv, "[.]")[[1L]][1:2], collapse = "."))
if(jvn < 1.8) stop("Java >= 8 is needed for this package but not available")
}
Java 9 changed the format of this string (which used to be something
like ‘1.8.0_162-b12’); Java 11 gives jv as ‘11+28’
whereas Java 10.0.2 gave
‘10.0.2+10’. (http://openjdk.java.net/jeps/322 details the
current scheme. Note that it is necessary to allow for pre-releases
like ‘11-ea+22’.)
Note too that the compiler used to produce a jar can impose a minimum
Java version, often resulting in an arcane message like
java.lang.UnsupportedClassVersionError: ... Unsupported major.minor version 52.0
(Where https://en.wikipedia.org/wiki/Java_class_file maps
class-file version numbers to Java versions.) Compile with something
like javac -target 1.6 to ensure this is avoided. (As from
Java 8, javac defaults to compiling for Java 8. Versions as
old as ‘1.6’ are already deprecated and will give a warning with
Java 10’s javac.) Note this also applies to packages
distributing (or even downloading) compiled Java code produced by
others, so their requirements need to be checked (they are often not
documented accurately) and accounted for. It should be possible to
check the class-file version via command-line utility
javap, if necessary after extracting the .class files
from a .jar archive.
Some packages have stated a requirement on a particular JDK, but a package should only be requiring a JRE unless providing its own Java interface.
pandoc, which is only available for a very limited range of
platforms (and has onerous requirements to install from source) and has
capabilities82 that vary by build but are not
documented.
Usage of external commands should always be conditional on a test for
existence (perhaps using Sys.which), as well as declared in the
‘SystemRequirements’ field.
An external command can be a (possibly optional) requirement for an imported or suggested package but needed for examples, tests or vignettes in the package itself. Such usages should always be declared and conditional.
utf8, mac
and macroman are. See the help for file for more details.
R, Rscript or (on
Windows) Rterm in your examples, tests, vignettes, makefiles
or other scripts. As pointed out in several places earlier in this
manual, use something like
"$(R_HOME)/bin/Rscript" "$(R_HOME)/bin$(R_ARCH_BIN)/Rterm"
with appropriate quotes (as, although not recommended, R_HOME can
contain spaces).
R_HOME in makefiles except when passing them to the shell.
Specifically, do not use R_HOME in the argument to include,
as R_HOME can contain spaces. Quoting the argument to include
does not help. GNU make’s include accepts spaces when
escaped using backslashes (GNU make syntax required):
## WARNING: requires GNU make (allowed on Windows)
sp =
sp +=
sq = $(subst $(sp),\ ,$1)
include $(call sq,${R_HOME}/etc${R_ARCH}/Makeconf)
A portable and the recommended way to avoid the problem of spaces in
${R_HOME} is using option -f of make. This is
easy to do with recursive invocation of make, which is also the
only usual situation when R_HOME is needed in the argument for
include.
$(MAKE) -f "${R_HOME}/etc${R_ARCH}/Makeconf" -f Makefile.inner
Do be careful in what your tests (and examples) actually test. Bad practice seen in distributed packages include:
Packages have even tested the exact format of system error messages, which are platform-dependent and perhaps locale-dependent.
View, remember that in testing there
is no one to look at the output. It is better to use something like one of
if(interactive()) View(obj) else print(head(obj)) if(interactive()) View(obj) else str(obj)
?normalizePath to be aware of the pitfalls.
If you must try to establish a tolerance empirically, configure and
build R with --disable-long-double and use appropriate
compiler flags (such as -ffloat-store and
-fexcess-precision=standard for gcc, depending on the
CPU type84) to
mitigate the effects of extended-precision calculations.
Tests which involve random inputs or non-deterministic algorithms should normally set a seed or be tested for many seeds.
Next: Check timing, Previous: Writing portable packages, Up: Writing portable packages [Contents][Index]
There are a several tools available to reduce the size of PDF files: often the size can be reduced substantially with no or minimal loss in quality. Not only do large files take up space: they can stress the PDF viewer and take many minutes to print (if they can be printed at all).
qpdf (http://qpdf.sourceforge.net/) can compress
losslessly. It is fairly readily available (e.g. it has binaries for
Windows and packages in Debian/Ubuntu/Fedora, and is installed as part
of the CRAN macOS distribution of R). R CMD
build has an option to run qpdf over PDF files under
inst/doc and replace them if at least 10Kb and 10% is saved. The
full path to the qpdf command can be supplied as environment
variable R_QPDF (and is on the CRAN binary of R for
macOS). It seems MiKTeX does not use PDF object compression and so
qpdf can reduce considerably the files it outputs: MiKTeX’s
defaults can be overridden by code in the preamble of an Sweave or
LaTeX file — see how this is done for the R reference manual at
https://svn.r-project.org/R/trunk/doc/manual/refman.top.
(Although earlier versions of qpdf are supported, versions
6.0.0 and later in some cases achieve considerably better compression.)
Other tools can reduce the size of PDFs containing bitmap images at
excessively high resolution. These are often best re-generated (for
example Sweave defaults to 300 ppi, and 100–150 is more
appropriate for a package manual). These tools include Adobe Acrobat
(not Reader), Apple’s Preview85 and Ghostscript (which
converts PDF to PDF by
ps2pdf options -dAutoRotatePages=/None in.pdf out.pdf
and suitable options might be
-dPDFSETTINGS=/ebook -dPDFSETTINGS=/screen
; see http://www.ghostscript.com/doc/current/Ps2pdf.htm for more such and consider all the options for image downsampling). There have been examples in CRAN packages for which current versions of Ghostscript produced much better reductions than earlier ones.
We come across occasionally large PDF files containing excessively complicated figures using PDF vector graphics: such figures are often best redesigned or failing that, output as PNG files.
Option --compact-vignettes to R CMD build defaults to
value ‘qpdf’: use ‘both’ to try harder to reduce the size,
provided you have Ghostscript available (see the help for
tools::compactPDF).
Next: Encoding issues, Previous: PDF size, Up: Writing portable packages [Contents][Index]
There are several ways to find out where time is being spent in the
check process. Start by setting the environment variable
_R_CHECK_TIMINGS_ to ‘0’. This will report the total CPU
times (not Windows) and elapsed times for installation and running
examples, tests and vignettes, under each sub-architecture if
appropriate. For tests and vignettes, it reports the time for each as
well as the total.
Setting _R_CHECK_TIMINGS_ to a positive value sets a threshold (in
seconds elapsed time) for reporting timings.
If you need to look in more detail at the timings for examples, use
option --timings to R CMD check (this is set by
--as-cran). This adds a summary to the check output for all
the examples with CPU or elapsed time of more than 5 seconds. It
produces a file mypkg.Rcheck/mypkg-Ex.timings
containing timings for each help file: it is a tab-delimited file which
can be read into R for further analysis.
Timings for the tests and vignette runs are given at the bottom of the
corresponding log file: note that log files for successful vignette runs
are only retained if environment variable
_R_CHECK_ALWAYS_LOG_VIGNETTE_OUTPUT_ is set to a true value.
Next: Portable C and C++ code, Previous: Check timing, Up: Writing portable packages [Contents][Index]
Care is needed if your package contains non-ASCII text, and in particular if it is intended to be used in more than one locale. It is possible to mark the encoding used in the DESCRIPTION file and in .Rd files, as discussed elsewhere in this manual.
First, consider carefully if you really need non-ASCII text. Many users of R will only be able to view correctly text in their native language group (e.g. Western European, Eastern European, Simplified Chinese) and ASCII.86. Other characters may not be rendered at all, rendered incorrectly, or cause your R code to give an error. For .Rd documentation, marking the encoding and including ASCII transliterations is likely to do a reasonable job. The set of characters which is commonly supported is wider than it used to be around 2000, but non-Latin alphabets (Greek, Russian, Georgian, …) are still often problematic and those with double-width characters (Chinese, Japanese, Korean) often need specialist fonts to render correctly.
Several CRAN packages have messages in their R code in French (and a few in German). A better way to tackle this is to use the internationalization facilities discussed elsewhere in this manual.
Function showNonASCIIfile in package tools can help in
finding non-ASCII bytes in files.
There is a portable way to have arbitrary text in character strings
(only) in your R code, which is to supply them in Unicode as
‘\uxxxx’ escapes. If there are any characters not in the current
encoding the parser will encode the character string as UTF-8 and mark
it as such. This applies also to character strings in datasets: they
can be prepared using ‘\uxxxx’ escapes or encoded in UTF-8 in a
UTF-8 locale, or even converted to UTF-8 via iconv(). If
you do this, make sure you have ‘R (>= 2.10)’ (or later) in the
‘Depends’ field of the DESCRIPTION file.
R sessions running in non-UTF-8 locales will if possible re-encode
such strings for display (and this is done by RGui on Windows,
for example). Suitable fonts will need to be selected or made
available87 both for the console/terminal and graphics devices such as
‘X11()’ and ‘windows()’. Using ‘postscript’ or
‘pdf’ will choose a default 8-bit encoding depending on the
language of the UTF-8 locale, and your users would need to be told how
to select the ‘encoding’ argument.
If you want to run R CMD check on a Unix-alike over a package
that sets a package encoding in its DESCRIPTION file and do
not use a UTF-8 locale you may need to specify a suitable locale
via environment variable R_ENCODING_LOCALES. The default
is equivalent to the value
"latin1=en_US:latin2=pl_PL:UTF-8=en_US.UTF-8:latin9=fr_FR.iso885915@euro"
(which is appropriate for a system based on glibc: macOS requires
latin9=fr_FR.ISO8859-15) except that if the current locale is
UTF-8 then the package code is translated to UTF-8 for syntax checking,
so it is strongly recommended to check in a UTF-8 locale.
Next: Binary distribution, Previous: Encoding issues, Up: Writing portable packages [Contents][Index]
Writing portable C and C++ code is mainly a matter of observing the standards (C99, C++98 or where declared C++11/14/17) and testing that extensions (such as POSIX functions) are supported.
Note that the ‘TR1’ C++ extensions are not part of any of these
standards and the <tr1/name> headers are not supplied by some of
the compilers used for R, including on macOS. (Use the C++11
versions instead.)
Note too that the POSIX standards only require recently-defined functions to be declared if certain macros are defined with large enough values, and on some compiler/OS combinations88 they are not declared otherwise. So you may need to include something like one of 89
#define _XOPEN_SOURCE 600
or
#ifdef __GLIBC__ # define _POSIX_C_SOURCE 200809L #endif
before any headers. (strdup and strncasecmp are
two such functions.)
However, some common errors are worth pointing out here. It can be helpful to look up functions at http://www.cplusplus.com/reference/ or http://en.cppreference.com/w/ and compare what is defined in the various standards.
Both the compiler and OS (via system header files, which may
differ by architecture even for nominally the same OS) affect the
compilability of C/C++ code. Compilers from the GCC, clang,
Intel and Oracle Studio suites are routinely used with R, and both
clang and Oracle have more than one implementation of C++
headers and library. The range of possibilities makes comprehensive
empirical checking impossible, and regrettably compilers are patchy at
best on warning about non-standard code.
sqrt are defined in C++ for
floating-point arguments. It is legitimate in C++ to overload these
with versions for types float, double, long double
and possibly more. This means that calling sqrt on an integer
type may have ‘overloading ambiguity’ as it could be promoted to any of
the supported floating-point types: this is commonly seen on Solaris,
but for pow also seen on macOS. (C++98 has an overload for
std::pow(<double>, <int>), but this may not be visible from the
main namespace. C++11 requires additional overloads for integer types,
and ambiguous overloads are more common in C++11 (and later) compiler
modes.)
A not-uncommonly-seen problem is to mistakenly call floor(x/y) or
ceil(x/y) for int arguments x and y. Since
x/y does integer division, the result is an int and
‘overloading ambiguity’ may be reported. Some people have (pointlessly)
called floor and ceil on integer arguments, which may have
an ‘overloading ambiguity’.
A surprising common misuse is things like pow(10, -3): this
should be the constant 1e-3.
fabs is defined only for floating-point types, except in
C++11 which has overloads for std::fabs in <cmath> for
integer types. Function abs is defined in C99’s
<stdlib.h> for int and in C++98’s <cstdlib> for
integer types, overloaded in <cmath> for floating-point types.
C++11 has additional overloads for std::abs in <cmath> for
integer types. The effect of calling abs with a floating-point
type is implementation-specific: it may truncate to an integer.
isnan, isinf and isfinite
are not required by C++98: where compilers support them they may be only
in the std namespace or only in the main namespace. There is no
way to make use of these functions which works with all C++ compilers
currently in use on R platforms: use R’s versions such as
ISNAN and R_FINITE instead.
If you must use them in C++11, beware that some
compilers90 provide both
std::isnan and ::isnan, so using
using namespace std;
may cause ‘overloading ambiguity’ and you must use std::isnan
etc explicitly.
It is an error (and make little sense, although has been seen) to call these functions for integer arguments: a few compilers give a compilation error.
INFINITY (which is in C99 but not
C++98), for which R provides the portable R_PosInf (and
R_NegInf for -INFINITY). And NAN is just one NaN
value: in R code NA_REAL is usually what is intended, but
R_NaN is also available.
Some (but not all) extensions are listed at https://gcc.gnu.org/onlinedocs/gcc/C-Extensions.html and https://gcc.gnu.org/onlinedocs/gcc/C_002b_002b-Extensions.html.
Other GNU extensions which have bitten package writers is the use of non-portable characters such as ‘$’ in identifiers and use of C++ headers under ext.
The GNU Fortran compiler also supports a large number of non-portable
extensions, the most commonly encountered one being
ISNAN91.
Some are listed at
https://gcc.gnu.org/onlinedocs/gfortran/Extensions-implemented-in-GNU-Fortran.html.
One that frequently catches package writers is that it allows
out-of-order declarations: in standard-conformant Fortran variables must
be declared (explicitly or implicitly) before use in other declarations
such as dimensions.
sqrt and isnan are
defined for double arguments in math.h and for a range of
types including double in cmath. Similar issues have been
seen for stdlib.h and cstdlib. Including the C++ version
first used to be a sufficient workaround but for some 2016 compilers
only one could be included.
<random> which is indirectly included by <algorithm> by
g++. Another issue is the C header <time.h> which is
included by other headers on Linux and Windows but not macOS nor
Solaris.)
Note that malloc, calloc, realloc and free
are defined by C99 in the header stdlib.h and (in the
std:: namespace) by C++ header cstdlib. Some earlier
implementations used a header malloc.h, but that is not portable
and does not exist on macOS.
This also applies to types such as ssize_t. The POSIX standards
say that is declared in headers unistd.h and sys/types.h,
and the latter is often included indirectly by other headers on some
but not all systems.
Similarly for constants: for example SIZE_MAX is defined in
stdint.h alongside size_t (according to the C99 standard:
it is not part of C++98).
std
namespace, but g++ puts many such also in the C++ main
namespace. One way to do so is to use declarations such as
using std::floor;
but it is usually preferable to use explicit namespace prefixes in the code.
Examples seen in CRAN packages include
abs acos atan calloc ceil div exp fabs floor fmod free log malloc memcpy memset pow printf qsort round sin sprintf sqrt strcmp strcpy strerror strlen strncmp strtol tan trunc
if(ptr > 0) { ....}
which compares a pointer to the integer 0. This could just use
if(ptr) (pointer addresses cannot be negative) but if needed
pointers can be tested against nullptr (C++11 and later) or
NULL.
Note that although nullptr was only introduced in C++11, some
compilers accept it in C++98 mode (but most do not).
CS, DS, ES, FS, GS and SS
(and more with longer abbreviations) defined on i586/x64 Solaris in
<sys/regset.h> and often included indirectly by <stdlib.h>
and other core headers. Further examples are ERR,
LITTLE_ENDIAN, zero and I (which is defined in
Solaris’ <complex.h> as a compiler intrinsic for the imaginary
unit). Some of these can be avoided by defining _POSIX_C_SOURCE
before including any system headers, but it is better to only use
all-upper-case names which have a unique prefix such as the package name.
typedefs in OS headers can conflict with those in the package:
examples include ulong on several OSes and index_t and
single on Solaris. (Note that these may conflict with other uses
as identifiers, e.g. defining a C++ function called single.)
#ifdef _OPENMP # include <omp.h> #endif
Any use of OpenMP functions, e.g. omp_set_num_threads, also
needs to be conditioned.
And do not hardcode -lgomp: not only is that specific to the GCC family of compilers, using the correct linker flag often sets up the run-time path to the library.
strdup. The most
common C library on Linux, glibc, will hide the declarations of
such extensions unless a ‘feature-test macro’ is defined before
(almost) any system header is included. So for strdup you need
#define _POSIX_C_SOURCE 200809L ... #include <string.h> ... strdup call(s)
where the appropriate value can be found by man strdup on
Linux. (Use of strncasecmp is similar.)
However, modes of gcc with ‘GNU EXTENSIONS’ (which are the
default, either -std=gnu99 or -std=gnu11) declare
enough macros to ensure that missing declarations are rarely seen.
This applies also to constants such as M_PI and M_LN2,
which are part of the X/Open standard: to use these define
_XOPEN_SOURCE before including any headers, or include the R
header Rmath.h.
erf expm1 fmin fmax lgamma lround loglp round snprintf strcasecmp trunc
(all of which are in the std namespace in C++11) and the POSIX
functions strdup and strncasecmp and constants M_PI
and M_LN2 (see the previous item). R has long provided
fmax2, fmin2, fround, ftrunc,
lgammafn and many of the X/Open constants, declared in header
Rmath.h. Uses of erf can be replaced by pnorm (see
the R help page for the latter).
alloca portably is tricky: it is neither an ISO C nor a
POSIX function. An adequately portable preamble is
#ifdef __GNUC__ /* Includes GCC, clang and Intel compilers */ # undef alloca # define alloca(x) __builtin_alloca((x)) #elif defined(__sun) || defined(_AIX) /* this is necessary (and sufficient) for Solaris 10 and AIX 6: */ # include <alloca.h> #endif
'register' storage class specifier is deprecated and incompatible with C++17 ISO C++11 does not allow conversion from string literal to ‘char *’
(where conversion should be to const char *). Keyword
register was not mentioned in C++98, deprecated in C++11 and
removed in C++17.
register storage class specifier (see the previous
item).
restrict is not part of93 any C++ standard and is rejected by some
C++ compilers.
The most portable way to interface to other software with a C API is to use C code (which can normally be mixed with C++ code in a package).
__unix__ is not defined on all Unix-alikes, in particular not on
macOS. A reasonably portable way to condition code for a Unix-alike is
#if defined (__unix__) || (defined (__APPLE__) && defined (__MACH__)) #endif
but
#ifdef _WIN32 // Windows-specific code #else // Unix-alike code #endif
would be better. For a Unix-alike it is much better to use
configure to test for the functionality needed than make
assumptions about OSes (and people all too frequently forget R is
used on platforms other than Linux, Windows and macOS — and some
forget macOS).
Some additional information for C++ is available at http://journal.r-project.org/archive/2011-2/RJournal_2011-2_Plummer.pdf by Martyn Plummer.
Previous: Portable C and C++ code, Up: Writing portable packages [Contents][Index]
If you want to distribute a binary version of a package on Windows or macOS, there are further checks you need to do to check it is portable: it is all too easy to depend on external software on your own machine that other users will not have.
For Windows, check what other DLLs your package’s DLL depends on
(‘imports’ from in the DLL tools’ parlance). A convenient GUI-based
tool to do so is ‘Dependency Walker’
(http://www.dependencywalker.com/) for both 32-bit and 64-bit
DLLs – note that this will report as missing links to R’s own DLLs
such as R.dll and Rblas.dll. For 32-bit DLLs only, the
command-line tool pedump.exe -i (in Rtools*.exe) can be
used, and for the brave, the objdump tool in the appropriate
toolchain will also reveal what DLLs are imported from. If you use a
toolchain other than one provided by the R developers or use your own
makefiles, watch out in particular for dependencies on the toolchain’s
runtime DLLs such as libgfortran, libstdc++ and
libgcc_s.
For macOS, using R CMD otool -L on the package’s shared object(s)
in the libs directory will show what they depend on: watch for
any dependencies in /usr/local/lib or
/usr/local/gfortran/lib, notably libgfortran.?.dylib and
libquadmath.0.dylib.
Many people (including the CRAN package repository) will not accept source packages containing binary files as the latter are a security risk. If you want to distribute a source package which needs external software on Windows or macOS, options include
Be aware that license requirements will need to be met so you may need to supply the sources for the additional components (and will if your package has a GPL-like license).
Next: Internationalization, Previous: Writing portable packages, Up: Creating R packages [Contents][Index]
Diagnostic messages can be made available for translation, so it is important to write them in a consistent style. Using the tools described in the next section to extract all the messages can give a useful overview of your consistency (or lack of it). Some guidelines follow.
In R error messages do not construct a message with paste (such
messages will not be translated) but via multiple arguments to
stop or warning, or via gettextf.
'ord' must be a positive integer, at most the number of knots
and double quotation marks when referring to an R character string or a class, such as
'format' must be "normal" or "short" - using "normal"
Since ASCII does not contain directional quotation marks, it
is best to use ‘'’ and let the translator (including automatic
translation) use directional quotations where available. The range of
quotation styles is immense: unfortunately we cannot reproduce them in a
portable texinfo document. But as a taster, some languages use
‘up’ and ‘down’ (comma) quotes rather than left or right quotes, and
some use guillemets (and some use what Adobe calls ‘guillemotleft’ to
start and others use it to end).
In R messages it is also possible to use sQuote or dQuote as in
stop(gettextf("object must be of class %s or %s",
dQuote("manova"), dQuote("maov")),
domain = NA)
library
if((length(nopkgs) > 0) && !missing(lib.loc)) {
if(length(nopkgs) > 1)
warning("libraries ",
paste(sQuote(nopkgs), collapse = ", "),
" contain no packages")
else
warning("library ", paste(sQuote(nopkgs)),
" contains no package")
}
and was replaced by
if((length(nopkgs) > 0) && !missing(lib.loc)) {
pkglist <- paste(sQuote(nopkgs), collapse = ", ")
msg <- sprintf(ngettext(length(nopkgs),
"library %s contains no packages",
"libraries %s contain no packages",
domain = "R-base"),
pkglist)
warning(msg, domain=NA)
}
Note that it is much better to have complete clauses as here, since in another language one might need to say ‘There is no package in library %s’ or ‘There are no packages in libraries %s’.
Next: CITATION files, Previous: Diagnostic messages, Up: Creating R packages [Contents][Index]
There are mechanisms to translate the R- and C-level error and warning
messages. There are only available if R is compiled with NLS support
(which is requested by configure option --enable-nls,
the default).
The procedures make use of msgfmt and xgettext which are
part of GNU gettext and this will need to be installed:
Windows users can find pre-compiled binaries at
https://www.stats.ox.ac.uk/pub/Rtools/goodies/gettext-tools.zip.
| • C-level messages: | ||
| • R messages: | ||
| • Preparing translations: |
Next: R messages, Previous: Internationalization, Up: Internationalization [Contents][Index]
The process of enabling translations is
#include <R.h> /* to include Rconfig.h */
#ifdef ENABLE_NLS
#include <libintl.h>
#define _(String) dgettext ("pkg", String)
/* replace pkg as appropriate */
#else
#define _(String) (String)
#endif
_(...),
for example
error(_("'ord' must be a positive integer"));
If you want to use different messages for singular and plural forms, you need to add
#ifndef ENABLE_NLS #define dngettext(pkg, String, StringP, N) (N > 1 ? StringP : String) #endif
and mark strings by
dngettext("pkg", <singular string>, <plural string>, n)
xgettext --keyword=_ -o pkg.pot *.c
The file src/pkg.pot is the template file, and conventionally this is shipped as po/pkg.pot.
Next: Preparing translations, Previous: C-level messages, Up: Internationalization [Contents][Index]
Mechanisms are also available to support the automatic translation of
R stop, warning and message messages. They make
use of message catalogs in the same way as C-level messages, but using
domain R-pkg rather than pkg. Translation of
character strings inside stop, warning and message
calls is automatically enabled, as well as other messages enclosed in
calls to gettext or gettextf. (To suppress this, use
argument domain=NA.)
Tools to prepare the R-pkg.pot file are provided in package
tools: xgettext2pot will prepare a file from all strings
occurring inside gettext/gettextf, stop,
warning and message calls. Some of these are likely to be
spurious and so the file is likely to need manual editing.
xgettext extracts the actual calls and so is more useful when
tidying up error messages.
The R function ngettext provides an interface to the C
function of the same name: see example in the previous section. It is
safest to use domain="R-pkg" explicitly in calls to
ngettext, and necessary for earlier versions of R unless they
are calls directly from a function in the package.
Previous: R messages, Up: Internationalization [Contents][Index]
Once the template files have been created, translations can be made. Conventional translations have file extension .po and are placed in the po subdirectory of the package with a name that is either ‘ll.po’ or ‘R-ll.po’ for translations of the C and R messages respectively to language with code ‘ll’.
See Localization of messages in R Installation and Administration, for details of language codes.
There is an R function, update_pkg_po in package tools,
to automate much of the maintenance of message translations. See its
help for what it does in detail.
If this is called on a package with no existing translations, it creates the directory pkgdir/po, creates a template file of R messages, pkgdir/po/R-pkg.pot, within it, creates the ‘en@quot’ translation and installs that. (The ‘en@quot’ pseudo-language interprets quotes in their directional forms in suitable (e.g. UTF-8) locales.)
If the package has C source files in its src directory that are marked for translation, use
touch pkgdir/po/pkg.pot
to create a dummy template file, then call update_pkg_po again
(this can also be done before it is called for the first time).
When translations to new languages are added in the pkgdir/po directory, running the same command will check and then install the translations.
If the package sources are updated, the same command will update the template files, merge the changes into the translation .po files and then installed the updated translations. You will often see that merging marks translations as ‘fuzzy’ and this is reported in the coverage statistics. As fuzzy translations are not used, this is an indication that the translation files need human attention.
The merged translations are run through tools::checkPofile to
check that C-style formats are used correctly: if not the mismatches are
reported and the broken translations are not installed.
This function needs the GNU gettext-tools installed and on the
path: see its help page.
Next: Package types, Previous: Internationalization, Up: Creating R packages [Contents][Index]
An installed file named CITATION will be used by the
citation() function. (It should be in the inst
subdirectory of the package sources.)
The CITATION file is parsed as R code (in the package’s
declared encoding, or in ASCII if none is declared). If no
such file is present, citation auto-generates citation
information from the package DESCRIPTION metadata, and an example
of what that would look like as a CITATION file can be seen in
recommended package nlme (see below): recommended packages
boot, cluster and mgcv have further
examples.
A CITATION file will contain calls to function bibentry.
Here is that for nlme:
year <- sub("-.*", "", meta$Date)
note <- sprintf("R package version %s", meta$Version)
bibentry(bibtype = "Manual",
title = "{nlme}: Linear and Nonlinear Mixed Effects Models",
author = c(person("Jose", "Pinheiro"),
person("Douglas", "Bates"),
person("Saikat", "DebRoy"),
person("Deepayan", "Sarkar"),
person("R Core Team")),
year = year,
note = note,
url = "https://CRAN.R-project.org/package=nlme")
Note the way that information that may need to be updated is picked up
from object meta, a parsed version of the DESCRIPTION file
– it is tempting to hardcode such information, but it normally then
gets outdated. See ?bibentry for further details of the
information which can be provided.
In case a bibentry contains LaTeX markup (e.g., for accented
characters or mathematical symbols), it may be necessary to provide a
text representation to be used for printing via the
textVersion argument to bibentry. E.g., earlier versions
of nlme additionally used
textVersion =
paste0("Jose Pinheiro, Douglas Bates, Saikat DebRoy,",
"Deepayan Sarkar and the R Core Team (",
year,
"). nlme: Linear and Nonlinear Mixed Effects Models. ",
note, ".")
The CITATION file should itself produce no output when
source-d.
It is desirable (and essential for CRAN) that the
CITATION file does not contain calls to functions such as
packageDescription which assume the package is installed in a
library tree on the package search path.
Next: Services, Previous: CITATION files, Up: Creating R packages [Contents][Index]
The DESCRIPTION file has an optional field Type which if
missing is assumed to be ‘Package’, the sort of extension discussed
so far in this chapter. Currently one other type is recognized; there
used also to be a ‘Translation’ type.
| • Frontend: |
Previous: Package types, Up: Package types [Contents][Index]
This is a rather general mechanism, designed for adding new front-ends
such as the former gnomeGUI package (see the Archive area on
CRAN). If a configure file is found in the top-level
directory of the package it is executed, and then if a Makefile
is found (often generated by configure), make is called.
If R CMD INSTALL --clean is used make clean is called. No
other action is taken.
R CMD build can package up this type of extension, but R
CMD check will check the type and skip it.
Many packages of this type need write permission for the R installation directory.
Previous: Package types, Up: Creating R packages [Contents][Index]
Several members of the R project have set up services to assist those writing R packages, particularly those intended for public distribution.
win-builder.r-project.org offers the automated preparation of (32/64-bit) Windows binaries from well-tested source packages.
R-Forge (R-Forge.r-project.org) and
RForge (www.rforge.net) are similar
services with similar names. Both provide source-code management
through SVN, daily building and checking, mailing lists and a repository
that can be accessed via install.packages (they can be
selected by setRepositories and the GUI menus that use it).
Package developers have the opportunity to present their work on the
basis of project websites or news announcements. Mailing lists, forums
or wikis provide useRs with convenient instruments for discussions and
for exchanging information between developers and/or interested useRs.
Next: Tidying and profiling R code, Previous: Creating R packages, Up: Top [Contents][Index]
| • Rd format: | ||
| • Sectioning: | ||
| • Marking text: | ||
| • Lists and tables: | ||
| • Cross-references: | ||
| • Mathematics: | ||
| • Figures: | ||
| • Insertions: | ||
| • Indices: | ||
| • Platform-specific sections: | ||
| • Conditional text: | ||
| • Dynamic pages: | ||
| • User-defined macros: | ||
| • Encoding: | ||
| • Processing documentation files: | ||
| • Editing Rd files: |
Next: Sectioning, Previous: Writing R documentation files, Up: Writing R documentation files [Contents][Index]
R objects are documented in files written in “R documentation”
(Rd) format, a simple markup language much of which closely resembles
(La)TeX, which can be processed into a variety of formats,
including LaTeX, HTML and plain text. The translation is
carried out by functions in the tools package called by the
script Rdconv in R_HOME/bin and by the
installation scripts for packages.
The R distribution contains more than 1300 such files which can be found in the src/library/pkg/man directories of the R source tree, where pkg stands for one of the standard packages which are included in the R distribution.
As an example, let us look at a simplified version of
src/library/base/man/load.Rd which documents the R function
load.
% File src/library/base/man/load.Rd \name{load} \alias{load} \title{Reload Saved Datasets} \description{ Reload the datasets written to a file with the function \code{save}. } \usage{ load(file, envir = parent.frame()) } \arguments{ \item{file}{a connection or a character string giving the name of the file to load.} \item{envir}{the environment where the data should be loaded.} } \seealso{ \code{\link{save}}. } \examples{ ## save all data save(list = ls(), file= "all.RData") ## restore the saved values to the current environment load("all.RData") ## restore the saved values to the workspace load("all.RData", .GlobalEnv) } \keyword{file}
An Rd file consists of three parts. The header gives basic information about the name of the file, the topics documented, a title, a short textual description and R usage information for the objects documented. The body gives further information (for example, on the function’s arguments and return value, as in the above example). Finally, there is an optional footer with keyword information. The header is mandatory.
Information is given within a series of sections with standard names (and user-defined sections are also allowed). Unless otherwise specified94 these should occur only once in an Rd file (in any order), and the processing software will retain only the first occurrence of a standard section in the file, with a warning.
See “Guidelines for Rd
files” for guidelines for writing documentation in Rd format
which should be useful for package writers.
The R
generic function prompt is used to construct a bare-bones Rd
file ready for manual editing. Methods are defined for documenting
functions (which fill in the proper function and argument names) and
data frames. There are also functions promptData,
promptPackage, promptClass, and promptMethods for
other types of Rd file.
The general syntax of Rd files is summarized below. For a detailed technical discussion of current Rd syntax, see “Parsing Rd files”.
Rd files consist of four types of text input. The most common
is LaTeX-like, with the backslash used as a prefix on markup
(e.g. \alias), and braces used to indicate arguments
(e.g. {load}). The least common type of text is ‘verbatim’
text, where no markup other than the comment marker (%) is
processed. There is also a rare variant of ‘verbatim’ text
(used in \eqn, \deqn, \figure,
and \newcommand) where comment markers need not be escaped.
The final type is R-like, intended for R code, but allowing some
embedded macros. Quoted strings within R-like text are handled
specially: regular character escapes such as \n may be entered
as-is. Only markup starting with \l (e.g. \link) or
\v (e.g. \var) will be recognized within quoted strings.
The rarely used vertical tab \v must be entered as \\v.
Each macro defines the input type for its argument. For example, the
file initially uses LaTeX-like syntax, and this is also used in the
\description section, but the \usage section uses
R-like syntax, and the \alias macro uses ‘verbatim’ syntax.
Comments run from a percent symbol % to the end of the line in
all types of text except the rare ‘verbatim’ variant
(as on the first line of the load example).
Because backslashes, braces and percent symbols have special meaning, to enter them into text sometimes requires escapes using a backslash. In general balanced braces do not need to be escaped, but percent symbols always do, except in the ‘verbatim’ variant. For the complete list of macros and rules for escapes, see “Parsing Rd files”.
| • Documenting functions: | ||
| • Documenting data sets: | ||
| • Documenting S4 classes and methods: | ||
| • Documenting packages: |
Next: Documenting data sets, Previous: Rd format, Up: Rd format [Contents][Index]
The basic markup commands used for documenting R objects (in particular, functions) are given in this subsection.
\name{name}name typically95 is the basename of
the Rd file containing the documentation. It is the “name” of
the Rd object represented by the file and has to be unique in a
package. To avoid problems with indexing the package manual, it may not
contain ‘!’ ‘|’ nor ‘@’, and to avoid possible problems
with the HTML help system it should not contain ‘/’ nor a space.
(LaTeX special characters are allowed, but may not be collated
correctly in the index.) There can only be one \name entry in a
file, and it must not contain any markup. Entries in the package manual
will be in alphabetic96 order
of the \name entries.
\alias{topic}The \alias sections specify all “topics” the file documents.
This information is collected into index data bases for lookup by the
on-line (plain text and HTML) help systems. The topic can
contain spaces, but (for historical reasons) leading and trailing spaces
will be stripped. Percent and left brace need to be escaped by
a backslash.
There may be several \alias entries. Quite often it is
convenient to document several R objects in one file. For example,
file Normal.Rd documents the density, distribution function,
quantile function and generation of random variates for the normal
distribution, and hence starts with
\name{Normal}
\alias{Normal}
\alias{dnorm}
\alias{pnorm}
\alias{qnorm}
\alias{rnorm}
Also, it is often convenient to have several different ways to refer to
an R object, and an \alias does not need to be the name of an
object.
Note that the \name is not necessarily a topic documented, and if
so desired it needs to have an explicit \alias entry (as in this
example).
\title{Title}Title information for the Rd file. This should be capitalized and not end in a period; try to limit its length to at most 65 characters for widest compatibility.
Markup is supported in the text, but use of characters other than English text and punctuation (e.g., ‘<’) may limit portability.
There must be one (and only one) \title section in a help file.
\description{…}A short description of what the function(s) do(es) (one paragraph, a few lines only). (If a description is too long and cannot easily be shortened, the file probably tries to document too much at once.) This is mandatory except for package-overview files.
\usage{fun(arg1, arg2, …)}One or more lines showing the synopsis of the function(s) and variables documented in the file. These are set in typewriter font. This is an R-like command.
The usage information specified should match the function definition exactly (such that automatic checking for consistency between code and documentation is possible).
It is no longer advisable to use \synopsis for the actual
synopsis and show modified synopses in the \usage. Support for
\synopsis will be removed in \R 3.1.0. To indicate that a
function can be used in several different ways, depending on the named
arguments specified, use section \details. E.g.,
abline.Rd contains
\details{
Typical usages are
\preformatted{abline(a, b, untf = FALSE, \dots)
......
}
Use \method{generic}{class} to indicate the name
of an S3 method for the generic function generic for objects
inheriting from class "class". In the printed versions,
this will come out as generic (reflecting the understanding that
methods should not be invoked directly but via method dispatch), but
codoc() and other QC tools always have access to the full name.
For example, print.ts.Rd contains
\usage{
\method{print}{ts}(x, calendar, \dots)
}
which will print as
Usage:
## S3 method for class ‘ts’:
print(x, calendar, ...)
Usage for replacement functions should be given in the style of
dim(x) <- value rather than explicitly indicating the name of the
replacement function ("dim<-" in the above). Similarly, one
can use \method{generic}{class}(arglist) <-
value to indicate the usage of an S3 replacement method for the generic
replacement function "generic<-" for objects inheriting
from class "class".
Usage for S3 methods for extracting or replacing parts of an object, S3 methods for members of the Ops group, and S3 methods for user-defined (binary) infix operators (‘%xxx%’) follows the above rules, using the appropriate function names. E.g., Extract.factor.Rd contains
\usage{
\method{[}{factor}(x, \dots, drop = FALSE)
\method{[[}{factor}(x, \dots)
\method{[}{factor}(x, \dots) <- value
}
which will print as
Usage:
## S3 method for class ‘factor’:
x[..., drop = FALSE]
## S3 method for class ‘factor’:
x[[...]]
## S3 replacement method for class ‘factor’:
x[...] <- value
\S3method is accepted as an alternative to \method.
\arguments{…}Description of the function’s arguments, using an entry of the form
\item{arg_i}{Description of arg_i.}
for each element of the argument list. (Note that there is
no whitespace between the three parts of the entry.) There may be
optional text outside the \item entries, for example to give
general information about groups of parameters.
\details{…}A detailed if possible precise description of the functionality
provided, extending the basic information in the \description
slot.
\value{…}Description of the function’s return value.
If a list with multiple values is returned, you can use entries of the form
\item{comp_i}{Description of comp_i.}
for each component of the list returned. Optional text may
precede97 this
list (see for example the help for rle). Note that \value
is implicitly a \describe environment, so that environment should
not be used for listing components, just individual \item{}{}
entries.
\references{…}A section with references to the literature. Use \url{} or
\href{}{} for web pointers.
\note{...}Use this for a special note you want to have pointed out. Multiple
\note sections are allowed, but might be confusing to the end users.
For example, pie.Rd contains
\note{
Pie charts are a very bad way of displaying information.
The eye is good at judging linear measures and bad at
judging relative areas.
......
}
\author{…}Information about the author(s) of the Rd file. Use
\email{} without extra delimiters (such as ‘( )’ or
‘< >’) to specify email addresses, or \url{} or
\href{}{} for web pointers.
\seealso{…}Pointers to related R objects, using \code{\link{...}} to
refer to them (\code is the correct markup for R object names,
and \link produces hyperlinks in output formats which support
this. See Marking text, and Cross-references).
\examples{…}Examples of how to use the function. Code in this section is set
in typewriter font without reformatting and is run by
example() unless marked otherwise (see below).
Examples are not only useful for documentation purposes, but also
provide test code used for diagnostic checking of R code. By
default, text inside \examples{} will be displayed in the
output of the help page and run by example() and by R CMD
check. You can use \dontrun{}
for text that should only be shown, but not run, and
\dontshow{}
for extra commands for testing that should not be shown to users, but
will be run by example(). (Previously this was called
\testonly, and that is still accepted.)
Text inside \dontrun{} is ‘verbatim’, but the other parts
of the \examples section are R-like text.
For example,
x <- runif(10) # Shown and run. \dontrun{plot(x)} # Only shown. \dontshow{log(x)} # Only run.
Thus, example code not included in \dontrun must be executable!
In addition, it should not use any system-specific features or require
special facilities (such as Internet access or write permission to
specific directories). Text included in \dontrun is indicated by
comments in the processed help files: it need not be valid R code but
the escapes must still be used for %, \ and unpaired
braces as in other ‘verbatim’ text.
Example code must be capable of being run by example, which uses
source. This means that it should not access stdin,
e.g. to scan() data from the example file.
Data needed for making the examples executable can be obtained by random
number generation (for example, x <- rnorm(100)), or by using
standard data sets listed by data() (see ?data for more
info).
Finally, there is \donttest, used (at the beginning of a separate
line) to mark code that should be run by example() but not by
R CMD check (by default: the option --run-donttest can
be used). This should be needed only occasionally but can be used for
code which might fail in circumstances that are hard to test for, for
example in some locales. (Use e.g. capabilities() or
nzchar(Sys.which("someprogram")) to test for features needed in
the examples wherever possible, and you can also use try() or
tryCatch(). Use interactive() to condition examples which
need someone to interact with.) Note that code included in
\donttest must be correct R code, and any packages used should
be declared in the DESCRIPTION file. It is good practice to
include a comment in the \donttest section explaining why it is
needed.
As from R 3.4.0, output from code between comments
## IGNORE_RDIFF_BEGIN ## IGNORE_RDIFF_END
is ignored when comparing check output to reference output (a -Ex.Rout.save file).
\keyword{key}There can be zero or more \keyword sections per file.
Each \keyword section should specify a single keyword, preferably
one of the standard keywords as listed in file KEYWORDS in the
R documentation directory (default R_HOME/doc). Use
e.g. RShowDoc("KEYWORDS") to inspect the standard keywords from
within R. There can be more than one \keyword entry if the R
object being documented falls into more than one category, or none.
Do strongly consider using \concept (see Indices) instead of
\keyword if you are about to use more than very few non-standard
keywords.
The special keyword ‘internal’ marks a page of internal objects
that are not part of the package’s API. If the help page for object
foo has keyword ‘internal’, then help(foo) gives this
help page, but foo is excluded from several object indices,
including the alphabetical list of objects in the HTML help system.
help.search() can search by keyword, including user-defined
values: however the ‘Search Engine & Keywords’ HTML page accessed
via help.start() provides single-click access only to a
pre-defined list of keywords.
Next: Documenting S4 classes and methods, Previous: Documenting functions, Up: Rd format [Contents][Index]
The structure of Rd files which document R data sets is slightly
different. Sections such as \arguments and \value are not
needed but the format and source of the data should be explained.
As an example, let us look at src/library/datasets/man/rivers.Rd
which documents the standard R data set rivers.
\name{rivers} \docType{data} \alias{rivers} \title{Lengths of Major North American Rivers} \description{ This data set gives the lengths (in miles) of 141 \dQuote{major} rivers in North America, as compiled by the US Geological Survey. } \usage{rivers} \format{A vector containing 141 observations.} \source{World Almanac and Book of Facts, 1975, page 406.} \references{ McNeil, D. R. (1977) \emph{Interactive Data Analysis}. New York: Wiley. } \keyword{datasets}
This uses the following additional markup commands.
\docType{…}Indicates the “type” of the documentation object. Always ‘data’
for data sets, and ‘package’ for pkg-package.Rd
overview files. Documentation for S4 methods and classes uses
‘methods’ (from promptMethods()) and ‘class’ (from
promptClass()).
\format{…}A description of the format of the data set (as a vector, matrix, data frame, time series, …). For matrices and data frames this should give a description of each column, preferably as a list or table. See Lists and tables, for more information.
\source{…}Details of the original source (a reference or URL,
see Specifying URLs). In addition, section \references could
give secondary sources and usages.
Note also that when documenting data set bar,
\usage entry is always bar or (for packages
which do not use lazy-loading of data) data(bar). (In
particular, only document a single data object per Rd file.)
\keyword entry should always be ‘datasets’.
If bar is a data frame, documenting it as a data set can
be initiated via prompt(bar). Otherwise, the promptData
function may be used.
Next: Documenting packages, Previous: Documenting data sets, Up: Rd format [Contents][Index]
There are special ways to use the ‘?’ operator, namely
‘class?topic’ and ‘methods?topic’, to access
documentation for S4 classes and methods, respectively. This mechanism
depends on conventions for the topic names used in \alias
entries. The topic names for S4 classes and methods respectively are of
the form
class-class generic,signature_list-method
where signature_list contains the names of the classes in the
signature of the method (without quotes) separated by ‘,’ (without
whitespace), with ‘ANY’ used for arguments without an explicit
specification. E.g., ‘genericFunction-class’ is the topic name for
documentation for the S4 class "genericFunction", and
‘coerce,ANY,NULL-method’ is the topic name for documentation for
the S4 method for coerce for signature c("ANY", "NULL").
Skeletons of documentation for S4 classes and methods can be generated
by using the functions promptClass() and promptMethods()
from package methods. If it is necessary or desired to provide an
explicit function declaration (in a \usage section) for an S4
method (e.g., if it has “surprising arguments” to be mentioned
explicitly), one can use the special markup
\S4method{generic}{signature_list}(argument_list)
(e.g., ‘\S4method{coerce}{ANY,NULL}(from, to)’).
To make full use of the potential of the on-line documentation system,
all user-visible S4 classes and methods in a package should at least
have a suitable \alias entry in one of the package’s Rd files.
If a package has methods for a function defined originally somewhere
else, and does not change the underlying default method for the
function, the package is responsible for documenting the methods it
creates, but not for the function itself or the default method.
An S4 replacement method is documented in the same way as an S3 one: see
the description of \method in Documenting functions.
See help("Documentation", package = "methods") for more
information on using and creating on-line documentation for S4 classes and
methods.
Previous: Documenting S4 classes and methods, Up: Rd format [Contents][Index]
Packages may have an overview help page with an \alias
pkgname-package, e.g. ‘utils-package’ for the
utils package, when package?pkgname will open that
help page. If a topic named pkgname does not exist in
another Rd file, it is helpful to use this as an additional
\alias.
Skeletons of documentation for a package can be generated using the
function promptPackage(). If the final = LIBS argument
is used, then the Rd file will be generated in final form, containing
the information that would be produced up to
library(help = pkgname). Otherwise (the default) comments
will be inserted giving suggestions for content.
Apart from the mandatory \name and \title and the
pkgname-package alias, the only requirement for the package
overview page is that it include a \docType{package} statement.
All other content is optional. We suggest that it should be a short
overview, to give a reader unfamiliar with the package enough
information to get started. More extensive documentation is better
placed into a package vignette (see Writing package vignettes) and
referenced from this page, or into individual man pages for the
functions, datasets, or classes.
Next: Marking text, Previous: Rd format, Up: Writing R documentation files [Contents][Index]
To begin a new paragraph or leave a blank line in an example, just
insert an empty line (as in (La)TeX). To break a line, use
\cr.
In addition to the predefined sections (such as \description{},
\value{}, etc.), you can “define” arbitrary ones by
\section{section_title}{…}.
For example
\section{Warning}{
You must not call this function unless …
}
For consistency with the pre-assigned sections, the section name (the
first argument to \section) should be capitalized (but not all
upper case). Whitespace between the first and second braced expressions
is not allowed. Markup (e.g. \code) within the section title
may cause problems with the latex conversion (depending on the version
of macro packages such as ‘hyperref’) and so should be avoided.
The \subsection macro takes arguments in the same format as
\section, but is used within a section, so it may be used to
nest subsections within sections or other subsections. There is no
predefined limit on the nesting level, but formatting is not designed
for more than 3 levels (i.e. subsections within subsections within
sections).
Note that additional named sections are always inserted at a fixed
position in the output (before \note, \seealso and the
examples), no matter where they appear in the input (but in the same
order amongst themselves as in the input).
Next: Lists and tables, Previous: Sectioning, Up: Writing R documentation files [Contents][Index]
The following logical markup commands are available for emphasizing or quoting text.
\emph{text}\strong{text}Emphasize text using italic and bold font if
possible; \strong is regarded as stronger (more emphatic).
\bold{text}Set text in bold font where possible.
\sQuote{text}\dQuote{text}Portably single or double quote text (without hard-wiring the characters used for quotation marks).
Each of the above commands takes LaTeX-like input, so other macros may be used within text.
The following logical markup commands are available for indicating specific kinds of text. Except as noted, these take ‘verbatim’ text input, and so other macros may not be used within them. Some characters will need to be escaped (see Insertions).
\code{text}Indicate text that is a literal example of a piece of an R program,
e.g., a fragment of R code or the name of an R object. Text is
entered in R-like syntax, and displayed using typewriter font
where possible. Macros \var and \link are interpreted within
text.
\preformatted{text}Indicate text that is a literal example of a piece of a program. Text
is displayed using typewriter font where possible. Formatting,
e.g. line breaks, is preserved. (Note that this includes a line break
after the initial {, so typically text should start on the same line as
the command.)
Due to limitations in LaTeX as of this writing, this macro may not be
nested within other markup macros other than \dQuote and
\sQuote, as errors or bad formatting may result.
\kbd{keyboard-characters}Indicate keyboard input, using slanted typewriter font if possible, so users can distinguish the characters they are supposed to type from computer output. Text is entered ‘verbatim’.
\samp{text}Indicate text that is a literal example of a sequence of characters,
entered ‘verbatim’. No wrapping or reformatting will occur. Displayed
using typewriter font where possible.
\verb{text}Indicate text that is a literal example of a sequence of characters,
with no interpretation of e.g. \var, but which will be included
within word-wrapped text. Displayed using typewriter font if
possible.
\pkg{package_name}Indicate the name of an R package. LaTeX-like.
\file{file_name}Indicate the name of a file. Text is LaTeX-like, so backslash needs to be escaped. Displayed using a distinct font where possible.
\email{email_address}Indicate an electronic mail address. LaTeX-like, will be rendered as
a hyperlink in HTML and PDF conversion. Displayed using
typewriter font where possible.
\url{uniform_resource_locator}Indicate a uniform resource locator (URL) for the World Wide Web. The argument is handled as ‘verbatim’ text (with percent and braces escaped by backslash), and rendered as a hyperlink in HTML and PDF conversion. Linefeeds are removed, and leading and trailing whitespace98 is removed. See Specifying URLs.
Displayed using typewriter font where possible.
\href{uniform_resource_locator}{text}Indicate a hyperlink to the World Wide Web. The first argument is handled as ‘verbatim’ text (with percent and braces escaped by backslash) and is used as the URL in the hyperlink, with the second argument of LaTeX-like text displayed to the user. Linefeeds are removed from the first argument, and leading and trailing whitespace is removed.
Note that RFC3986-encoded URLs (e.g. using ‘\%28VS.85\%29’ in
place of ‘(VS.85)’) may not work correctly in versions of R
before 3.1.3 and are best avoided—use URLdecode() to decode
them.
\var{metasyntactic_variable}Indicate a metasyntactic variable. In some cases this will be rendered distinctly, e.g. in italic, but not in all99. LaTeX-like.
\env{environment_variable}Indicate an environment variable. ‘Verbatim’.
Displayed using typewriter font where possible
\option{option}Indicate a command-line option. ‘Verbatim’.
Displayed using typewriter font where possible.
\command{command_name}Indicate the name of a command. LaTeX-like, so \var is
interpreted. Displayed using typewriter font where possible.
\dfn{term}Indicate the introductory or defining use of a term. LaTeX-like.
\cite{reference}Indicate a reference without a direct cross-reference via \link
(see Cross-references), such as the name of a book. LaTeX-like.
\acronym{acronym}Indicate an acronym (an abbreviation written in all capital letters), such as GNU. LaTeX-like.
Next: Cross-references, Previous: Marking text, Up: Writing R documentation files [Contents][Index]
The \itemize and \enumerate commands take a single
argument, within which there may be one or more \item commands.
The text following each \item is formatted as one or more
paragraphs, suitably indented and with the first paragraph marked with a
bullet point (\itemize) or a number (\enumerate).
Note that unlike argument lists, \item in these formats is
followed by a space and the text (not enclosed in braces). For example
\enumerate{
\item A database consists of one or more records, each with one or
more named fields.
\item Regular lines start with a non-whitespace character.
\item Records are separated by one or more empty lines.
}
\itemize and \enumerate commands may be nested.
The \describe command is similar to \itemize but allows
initial labels to be specified. Each \item takes two arguments,
the label and the body of the item, in exactly the same way as an
argument or value \item. \describe commands are mapped to
<DL> lists in HTML and \description lists in LaTeX.
The \tabular command takes two arguments. The first gives for
each of the columns the required alignment (‘l’ for
left-justification, ‘r’ for right-justification or ‘c’ for
centring.) The second argument consists of an arbitrary number of
lines separated by \cr, and with fields separated by \tab.
For example:
\tabular{rlll}{
[,1] \tab Ozone \tab numeric \tab Ozone (ppb)\cr
[,2] \tab Solar.R \tab numeric \tab Solar R (lang)\cr
[,3] \tab Wind \tab numeric \tab Wind (mph)\cr
[,4] \tab Temp \tab numeric \tab Temperature (degrees F)\cr
[,5] \tab Month \tab numeric \tab Month (1--12)\cr
[,6] \tab Day \tab numeric \tab Day of month (1--31)
}
There must be the same number of fields on each line as there are
alignments in the first argument, and they must be non-empty (but can
contain only spaces). (There is no whitespace between \tabular
and the first argument, nor between the two arguments.)
Next: Mathematics, Previous: Lists and tables, Up: Writing R documentation files [Contents][Index]
The markup \link{foo} (usually in the combination
\code{\link{foo}}) produces a hyperlink to the help for
foo. Here foo is a topic, that is the argument of
\alias markup in another Rd file (possibly in another package).
Hyperlinks are supported in some of the formats to which Rd files are
converted, for example HTML and PDF, but ignored in others, e.g.
the text format.
One main usage of \link is in the \seealso section of the
help page, see Rd format.
Note that whereas leading and trailing spaces are stripped when
extracting a topic from a \alias, they are not stripped when
looking up the topic of a \link.
You can specify a link to a different topic than its name by
\link[=dest]{name} which links to topic dest
with name name. This can be used to refer to the documentation
for S3/4 classes, for example \code{"\link[=abc-class]{abc}"}
would be a way to refer to the documentation of an S4 class "abc"
defined in your package, and
\code{"\link[=terms.object]{terms}"} to the S3 "terms"
class (in package stats). To make these easy to read in the
source file, \code{"\linkS4class{abc}"} expands to the form
given above.
There are two other forms of optional argument specified as
\link[pkg]{foo} and
\link[pkg:bar]{foo} to link to the package
pkg, to files foo.html and
bar.html respectively. These are rarely needed, perhaps to
refer to not-yet-installed packages (but there the HTML help system
will resolve the link at run time) or in the normally undesirable event
that more than one package offers help on a topic100 (in
which case the present package has precedence so this is only needed to
refer to other packages). They are currently only used in HTML help
(and ignored for hyperlinks in LaTeX conversions of help pages), and
link to the file rather than the topic (since there is no way to know
which topics are in which files in an uninstalled package). The
only reason to use these forms for base and recommended
packages is to force a reference to a package that might be further down
the search path. Because they have been frequently misused, the HTML
help system looks for topic foo in package pkg
if it does not find file foo.html.
Next: Figures, Previous: Cross-references, Up: Writing R documentation files [Contents][Index]
Mathematical formulae should be set beautifully for printed
documentation yet we still want something useful for text and HTML
online help. To this end, the two commands
\eqn{latex}{ascii} and
\deqn{latex}{ascii} are used. Whereas \eqn
is used for “inline” formulae (corresponding to TeX’s
$…$), \deqn gives “displayed equations” (as in
LaTeX’s displaymath environment, or TeX’s
$$…$$). Both arguments are treated as ‘verbatim’ text.
Both commands can also be used as \eqn{latexascii} (only
one argument) which then is used for both latex and
ascii. No whitespace is allowed between command and the first
argument, nor between the first and second arguments.
The following example is from Poisson.Rd:
\deqn{p(x) = \frac{\lambda^x e^{-\lambda}}{x!}}{%
p(x) = \lambda^x exp(-\lambda)/x!}
for \eqn{x = 0, 1, 2, \ldots}.
For text on-line help we get
p(x) = lambda^x exp(-lambda)/x! for x = 0, 1, 2, ....
Greek letters (both cases) will be rendered in HTML if preceded by a
backslash, \dots and \ldots will be rendered as ellipses
and \sqrt, \ge and \le as mathematical symbols.
Note that only basic LaTeX can be used, there being no provision to specify LaTeX style files such as the AMS extensions.
Next: Insertions, Previous: Mathematics, Up: Writing R documentation files [Contents][Index]
To include figures in help pages, use the \figure markup. There
are three forms.
The two commonly used simple forms are \figure{filename}
and \figure{filename}{alternate text}. This will
include a copy of the figure in either HTML or LaTeX output. In text
output, the alternate text will be displayed instead. (When the second
argument is omitted, the filename will be used.) Both the filename and
the alternate text will be parsed verbatim, and should not include
special characters that are significant in HTML or LaTeX.
The expert form is \figure{filename}{options:
string}. (The word ‘options:’ must be typed exactly as
shown and followed by at least one space.) In this form, the
string is copied into the HTML img tag as attributes
following the src attribute, or into the second argument of the
\Figure macro in LaTeX, which by default is used as options to
an \includegraphics call. As it is unlikely that any single
string would suffice for both display modes, the expert form would
normally be wrapped in conditionals. It is up to the author to make
sure that legal HTML/LaTeX is used. For example, to include a
logo in both HTML (using the simple form) and LaTeX (using the
expert form), the following could be used:
\if{html}{\figure{Rlogo.svg}{options: width=100 alt="R logo"}}
\if{latex}{\figure{Rlogo.pdf}{options: width=0.5in}}
The files containing the figures should be stored in the directory
man/figures. Files with extensions .jpg, .jpeg,
.pdf, .png and .svg from that directory will be
copied to the help/figures directory at install time. (Figures in
PDF format will not display in most HTML browsers, but might be the
best choice in reference manuals.) Specify the filename relative to
man/figures in the \figure directive.
Next: Indices, Previous: Figures, Up: Writing R documentation files [Contents][Index]
Use \R for the R system itself. Use \dots
for the dots in function argument lists ‘…’, and
\ldots
for ellipsis dots in ordinary text.101 These can be followed by
{}, and should be unless followed by whitespace.
After an unescaped ‘%’, you can put your own comments regarding the help text. The rest of the line (but not the newline at the end) will be completely disregarded. Therefore, you can also use it to make part of the “help” invisible.
You can produce a backslash (‘\’) by escaping it by another
backslash. (Note that \cr is used for generating line breaks.)
The “comment” character ‘%’ and unpaired braces102 almost always need to be escaped by ‘\’, and ‘\\’ can be used for backslash and needs to be when there are two or more adjacent backslashes. In R-like code quoted strings are handled slightly differently; see “Parsing Rd files” for details – in particular braces should not be escaped in quoted strings.
All of ‘% { } \’ should be escaped in LaTeX-like text.
Text which might need to be represented differently in different
encodings should be marked by \enc, e.g.
\enc{Jöreskog}{Joreskog} (with no whitespace between the
braces) where the first argument will be used where encodings are
allowed and the second should be ASCII (and is used for e.g.
the text conversion in locales that cannot represent the encoded form).
(This is intended to be used for individual words, not whole sentences
or paragraphs.)
Next: Platform-specific sections, Previous: Insertions, Up: Writing R documentation files [Contents][Index]
The \alias command (see Documenting functions) is used to
specify the “topics” documented, which should include all R
objects in a package such as functions and variables, data sets, and S4
classes and methods (see Documenting S4 classes and methods). The
on-line help system searches the index data base consisting of all
alias topics.
In addition, it is possible to provide “concept index entries” using
\concept, which can be used for help.search() lookups.
E.g., file cor.test.Rd in the standard package stats
contains
\concept{Kendall correlation coefficient}
\concept{Pearson correlation coefficient}
\concept{Spearman correlation coefficient}
so that e.g. ??Spearman will succeed in finding the help page for the test for association between paired samples using Spearman’s rho.
(Note that help.search() only uses “sections” of documentation
objects with no additional markup.)
If you want to cross reference such items from other help files via
\link, you need to use \alias and not \concept.
Next: Conditional text, Previous: Indices, Up: Writing R documentation files [Contents][Index]
Sometimes the documentation needs to differ by platform. Currently two OS-specific options are available, ‘unix’ and ‘windows’, and lines in the help source file can be enclosed in
#ifdef OS ... #endif
or
#ifndef OS ... #endif
for OS-specific inclusion or exclusion. Such blocks should not be nested, and should be entirely within a block (that, is between the opening and closing brace of a section or item), or at top-level contain one or more complete sections.
If the differences between platforms are extensive or the R objects documented are only relevant to one platform, platform-specific Rd files can be put in a unix or windows subdirectory.
Next: Dynamic pages, Previous: Platform-specific sections, Up: Writing R documentation files [Contents][Index]
Occasionally the best content for one output format is different from
the best content for another. For this situation, the
\if{format}{text} or
\ifelse{format}{text}{alternate} markup
is used. Here format is a comma separated list of formats in
which the text should be rendered. The alternate will be
rendered if the format does not match. Both text and
alternate may be any sequence of text and markup.
Currently the following formats are recognized: example,
html, latex and text. These select output for
the corresponding targets. (Note that example refers to
extracted example code rather than the displayed example in some other
format.) Also accepted are TRUE (matching all formats) and
FALSE (matching no formats). These could be the output
of the \Sexpr macro (see Dynamic pages).
The \out{literal} macro would usually be used within
the text part of \if{format}{text}. It
causes the renderer to output the literal text exactly, with no
attempt to escape special characters. For example, use
the following to output the markup necessary to display the Greek letter in
LaTeX or HTML, and the text string alpha in other formats:
\ifelse{latex}{\out{$\alpha$}}{\ifelse{html}{\out{α}}{alpha}}
Next: User-defined macros, Previous: Conditional text, Up: Writing R documentation files [Contents][Index]
Two macros supporting dynamically generated man pages are \Sexpr
and \RdOpts. These are modelled after Sweave, and are intended
to contain executable R expressions in the Rd file.
The main argument to \Sexpr must be valid R code that can be
executed. It may also take options in square brackets before the main
argument. Depending on the options, the code may be executed at
package build time, package install time, or man page rendering time.
The options follow the same format as in Sweave, but different options are supported. Currently the allowed options and their defaults are:
eval=TRUE
Whether the R code should be evaluated.
echo=FALSE
Whether the R code should be echoed. If TRUE, a display will
be given in a preformatted block. For example,
\Sexpr[echo=TRUE]{ x <- 1 } will be displayed as
> x <- 1
keep.source=TRUE
Whether to keep the author’s formatting when displaying the
code, or throw it away and use a deparsed version.
results=text
How should the results be displayed? The possibilities
are:
results=text
Apply as.character() to the result of the code, and insert it
as a text element.
results=verbatim
Print the results of the code just as if it was executed at the console,
and include the printed results verbatim. (Invisible results will not print.)
results=rd
The result is assumed to be a character vector containing markup to be
passed to parse_Rd(), with the result inserted in place. This
could be used to insert computed aliases, for instance.
parse_Rd() is called first with fragment = FALSE to allow
a single Rd section macro to be inserted. If that fails, it is called
again with fragment = TRUE, the older behavior.
results=hide
Insert no output.
strip.white=TRUE
Remove leading and trailing white space from each line of
output if strip.white=TRUE. With
strip.white=all, also remove blank lines.
stage=install
Control when this macro is run. Possible values are
stage=build
The macro is run when building a source tarball.
stage=install
The macro is run when installing from source.
stage=render
The macro is run when displaying the help page.
Conditionals such as #ifdef
(see Platform-specific sections) are applied after the
build macros but before the install macros. In some
situations (e.g. installing directly from a source directory without a
tarball, or building a binary package) the above description is not
literally accurate, but authors can rely on the sequence being
build, #ifdef, install, render, with all
stages executed.
Code is only run once in each stage, so a \Sexpr[results=rd]
macro can output an \Sexpr macro designed for a later stage,
but not for the current one or any earlier stage.
width, height, fig
These options are currently allowed but ignored.
The \RdOpts macro is used to set new defaults for options to apply
to following uses of \Sexpr.
For more details, see the online document “Parsing Rd files”.
Next: Encoding, Previous: Dynamic pages, Up: Writing R documentation files [Contents][Index]
The \newcommand and \renewcommand macros allow new macros
to be defined within an Rd file. These are similar but not identical to
the same-named LaTeX macros.
They each take two arguments which are parsed verbatim. The first is
the name of the new macro including the initial backslash, and the second
is the macro definition. As in LaTeX, \newcommand requires that the
new macro not have been previously defined, whereas \renewcommand
allows existing macros (including all built-in ones) to be replaced.
(As from version 3.2.0, this test is disabled by default, but may
be enabled by setting the environment variable _WARN_DUPLICATE_RD_MACROS_
to a true value.)
Also as in LaTeX, the new macro may be defined to take arguments,
and numeric placeholders such as #1 are used in the macro
definition. However, unlike LaTeX, the number of arguments is
determined automatically from the highest placeholder number seen in
the macro definition. For example, a macro definition containing
#1 and #3 (but no other placeholders) will define a
three argument macro (whose second argument will be ignored). As in
LaTeX, at most 9 arguments may be defined. If the #
character is followed by a non-digit it will have no special
significance. All arguments to user-defined macros will be parsed as
verbatim text, and simple text-substitution will be used to replace
the place-holders, after which the replacement text will be parsed.
As of R version 3.2.0, a number of macros are defined in the file share/Rd/macros/system.Rd of the R source or home directory, and these will normally be available in all .Rd files. For example, that file contains the definition
\newcommand{\PR}{\Sexpr[results=rd]{tools:::Rd_expr_PR(#1)}}
which defines \PR to be a single argument macro; then code
(typically used in the NEWS.Rd file) like
\PR{1234}
will expand to
\Sexpr[results=rd]{tools:::Rd_expr_PR(1234)}
when parsed.
Some macros that might be of general use are:
\CRANpkg{pkg}
A package on CRAN
\sspace
A single space (used after a period that does not end a sentence).
\doi{numbers}
A digital object identifier (DOI).
See the system.Rd file in share/Rd/macros for more details
and macro definitions, including macros \packageTitle,
\packageDescription, \packageAuthor, \packageMaintainer,
\packageDESCRIPTION and \packageIndices.
Packages may also define their own common macros; these would be stored in an .Rd file in man/macros in the package source and will be installed into help/macros when the package is installed. A package may also use the macros from a different package by listing the other package in the ‘RdMacros’ field in the DESCRIPTION file.
Next: Processing documentation files, Previous: User-defined macros, Up: Writing R documentation files [Contents][Index]
Rd files are text files and so it is impossible to deduce the encoding
they are written in unless ASCII: files with 8-bit characters
could be UTF-8, Latin-1, Latin-9, KOI8-R, EUC-JP, etc. So an
\encoding{} section must be used to specify the encoding if it
is not ASCII. (The \encoding{} section must be on a
line by itself, and in particular one containing no non-ASCII
characters. The encoding declared in the DESCRIPTION file will
be used if none is declared in the file.) The Rd files are
converted to UTF-8 before parsing and so the preferred encoding for the
files themselves is now UTF-8.
Wherever possible, avoid non-ASCII chars in Rd files, and
even symbols such as ‘<’, ‘>’, ‘$’, ‘^’, ‘&’,
‘|’, ‘@’, ‘~’, and ‘*’ outside ‘verbatim’
environments (since they may disappear in fonts designed to render
text). (Function showNonASCIIfile in package tools can help
in finding non-ASCII bytes in the files.)
For convenience, encoding names ‘latin1’ and ‘latin2’ are
always recognized: these and ‘UTF-8’ are likely to work fairly
widely. However, this does not mean that all characters in UTF-8 will
be recognized, and the coverage of non-Latin characters103 is fairly low. Using LaTeX
inputenx (see ?Rd2pdf in R) will give greater coverage
of UTF-8.
The \enc command (see Insertions) can be used to provide
transliterations which will be used in conversions that do not support
the declared encoding.
The LaTeX conversion converts the file to UTF-8 from the declared encoding, and includes a
\inputencoding{utf8}
command, and this needs to be matched by a suitable invocation of the
\usepackage{inputenc} command. The R utility R
CMD Rd2pdf looks at the converted code and includes the encodings used:
it might for example use
\usepackage[utf8]{inputenc}
(Use of utf8 as an encoding requires LaTeX dated 2003/12/01 or
later. Also, the use of Cyrillic characters in ‘UTF-8’ appears to
also need ‘\usepackage[T2A]{fontenc}’, and R CMD Rd2pdf
includes this conditionally on the file t2aenc.def being present
and environment variable _R_CYRILLIC_TEX_ being set.)
Note that this mechanism works best with Latin letters: the coverage of UTF-8 in LaTeX is quite low.
Next: Editing Rd files, Previous: Encoding, Up: Writing R documentation files [Contents][Index]
There are several commands to process Rd files from the system command line.
Using R CMD Rdconv one can convert R documentation format to
other formats, or extract the executable examples for run-time testing.
The currently supported conversions are to plain text, HTML and
LaTeX as well as extraction of the examples.
R CMD Rd2pdf generates PDF output from documentation in Rd
files, which can be specified either explicitly or by the path to a
directory with the sources of a package. In the latter case, a
reference manual for all documented objects in the package is created,
including the information in the DESCRIPTION files.
R CMD Sweave and R CMD Stangle process vignette-like
documentation files (e.g. Sweave vignettes with extension
‘.Snw’ or ‘.Rnw’, or other non-Sweave vignettes).
R CMD Stangle is used to extract the R code fragments.
The exact usage and a detailed list of available options for all of
these commands can be obtained by running R CMD command
--help, e.g., R CMD Rdconv --help. All available commands can be
listed using R --help (or Rcmd --help under Windows).
All of these work under Windows. You may need to have installed the the tools to build packages from source as described in the “R Installation and Administration” manual, although typically all that is needed is a LaTeX installation.
Previous: Processing documentation files, Up: Writing R documentation files [Contents][Index]
It can be very helpful to prepare .Rd files using a editor which knows about their syntax and will highlight commands, indent to show the structure and detect mis-matched braces, and so on.
The system most commonly used for this is some version of
Emacs (including XEmacs) with the ESS
package (https://ESS.R-project.org/: it is often is installed with
Emacs but may need to be loaded, or even installed,
separately).
Another is the Eclipse IDE with the Stat-ET plugin (http://www.walware.de/goto/statet), and (on Windows only) Tinn-R (http://sourceforge.net/projects/tinn-r/).
People have also used LaTeX mode in a editor, as .Rd files are rather similar to LaTeX files.
Some R front-ends provide editing support for .Rd files, for example RStudio (https://rstudio.org/).
Next: Debugging, Previous: Writing R documentation files, Up: Top [Contents][Index]
| • Tidying R code: | ||
| • Profiling R code for speed: | ||
| • Profiling R code for memory use: | ||
| • Profiling compiled code: |
R code which is worth preserving in a package and perhaps making available for others to use is worth documenting, tidying up and perhaps optimizing. The last two of these activities are the subject of this chapter.
Next: Profiling R code for speed, Previous: Tidying and profiling R code, Up: Tidying and profiling R code [Contents][Index]
R treats function code loaded from packages and code entered by users differently. By default code entered by users has the source code stored internally, and when the function is listed, the original source is reproduced. Loading code from a package (by default) discards the source code, and the function listing is re-created from the parse tree of the function.
Normally keeping the source code is a good idea, and in particular it avoids comments being removed from the source. However, we can make use of the ability to re-create a function listing from its parse tree to produce a tidy version of the function, for example with consistent indentation and spaces around operators. If the original source does not follow the standard format this tidied version can be much easier to read.
We can subvert the keeping of source in two ways.
keep.source can be set to FALSE before the code
is loaded into R.
removeSource()
function, for example by
myfun <- removeSource(myfun)
In each case if we then list the function we will get the standard layout.
Suppose we have a file of functions myfuns.R that we want to tidy up. Create a file tidy.R containing
source("myfuns.R", keep.source = FALSE)
dump(ls(all = TRUE), file = "new.myfuns.R")
and run R with this as the source file, for example by R --vanilla < tidy.R or by pasting into an R session. Then the file new.myfuns.R will contain the functions in alphabetical order in the standard layout. Warning: comments in your functions will be lost.
The standard format provides a good starting point for further tidying. Although the deparsing cannot do so, we recommend the consistent use of the preferred assignment operator ‘<-’ (rather than ‘=’) for assignment. Many package authors use a version of Emacs (on a Unix-alike or Windows) to edit R code, using the ESS[S] mode of the ESS Emacs package. See R coding standards in R Internals for style options within the ESS[S] mode recommended for the source code of R itself.
Next: Profiling R code for memory use, Previous: Tidying R code, Up: Tidying and profiling R code [Contents][Index]
It is possible to profile R code on Windows and most104 Unix-alike versions of R.
The command Rprof is used to control profiling, and its help
page can be consulted for full details. Profiling works by recording
at fixed intervals105 (by default every 20 msecs)
which line in which R function is being used, and recording the
results in a file (default Rprof.out in the working directory).
Then the function summaryRprof or the command-line utility
R CMD Rprof Rprof.out can be used to summarize the
activity.
As an example, consider the following code (from Venables & Ripley, 2002, pp. 225–6).
library(MASS); library(boot)
storm.fm <- nls(Time ~ b*Viscosity/(Wt - c), stormer,
start = c(b=30.401, c=2.2183))
st <- cbind(stormer, fit=fitted(storm.fm))
storm.bf <- function(rs, i) {
st$Time <- st$fit + rs[i]
tmp <- nls(Time ~ (b * Viscosity)/(Wt - c), st,
start = coef(storm.fm))
tmp$m$getAllPars()
}
rs <- scale(resid(storm.fm), scale = FALSE) # remove the mean
Rprof("boot.out")
storm.boot <- boot(rs, storm.bf, R = 4999) # slow enough to profile
Rprof(NULL)
Having run this we can summarize the results by
R CMD Rprof boot.out Each sample represents 0.02 seconds. Total run time: 22.52 seconds. Total seconds: time spent in function and callees. Self seconds: time spent in function alone.
% total % self total seconds self seconds name 100.0 25.22 0.2 0.04 "boot" 99.8 25.18 0.6 0.16 "statistic" 96.3 24.30 4.0 1.02 "nls" 33.9 8.56 2.2 0.56 "<Anonymous>" 32.4 8.18 1.4 0.36 "eval" 31.8 8.02 1.4 0.34 ".Call" 28.6 7.22 0.0 0.00 "eval.parent" 28.5 7.18 0.3 0.08 "model.frame" 28.1 7.10 3.5 0.88 "model.frame.default" 17.4 4.38 0.7 0.18 "sapply" 15.0 3.78 3.2 0.80 "nlsModel" 12.5 3.16 1.8 0.46 "lapply" 12.3 3.10 2.7 0.68 "assign" ...
% self % total self seconds total seconds name 5.7 1.44 7.5 1.88 "inherits" 4.0 1.02 96.3 24.30 "nls" 3.6 0.92 3.6 0.92 "$" 3.5 0.88 28.1 7.10 "model.frame.default" 3.2 0.80 15.0 3.78 "nlsModel" 2.8 0.70 9.8 2.46 "qr.coef" 2.7 0.68 12.3 3.10 "assign" 2.5 0.64 2.5 0.64 ".Fortran" 2.5 0.62 7.1 1.80 "qr.default" 2.2 0.56 33.9 8.56 "<Anonymous>" 2.1 0.54 5.9 1.48 "unlist" 2.1 0.52 7.9 2.00 "FUN" ...
This often produces surprising results and can be used to identify bottlenecks or pieces of R code that could benefit from being replaced by compiled code.
Two warnings: profiling does impose a small performance penalty, and the output files can be very large if long runs are profiled at the default sampling interval.
Profiling short runs can sometimes give misleading results. R from
time to time performs garbage collection to reclaim unused
memory, and this takes an appreciable amount of time which profiling
will charge to whichever function happens to provoke it. It may be
useful to compare profiling code immediately after a call to gc()
with a profiling run without a preceding call to gc.
More detailed analysis of the output can be achieved by the tools in the CRAN packages proftools and profr: in particular these allow call graphs to be studied.
Next: Profiling compiled code, Previous: Profiling R code for speed, Up: Tidying and profiling R code [Contents][Index]
Measuring memory use in R code is useful either when the code takes more memory than is conveniently available or when memory allocation and copying of objects is responsible for slow code. There are three ways to profile memory use over time in R code. All three require R to have been compiled with --enable-memory-profiling, which is not the default, but is currently used for the macOS and Windows binary distributions. All can be misleading, for different reasons.
In understanding the memory profiles it is useful to know a little more
about R’s memory allocation. Looking at the results of gc()
shows a division of memory into Vcells used to store the contents
of vectors and Ncells used to store everything else, including
all the administrative overhead for vectors such as type and length
information. In fact the vector contents are divided into two
pools. Memory for small vectors (by default 128 bytes or less) is
obtained in large chunks and then parcelled out by R; memory for
larger vectors is obtained directly from the operating system.
Some memory allocation is obvious in interpreted code, for example,
y <- x + 1
allocates memory for a new vector y. Other memory allocation is
less obvious and occurs because R is forced to make good on its
promise of ‘call-by-value’ argument passing. When an argument is
passed to a function it is not immediately copied. Copying occurs (if
necessary) only when the argument is modified. This can lead to
surprising memory use. For example, in the ‘survey’ package we have
print.svycoxph <- function (x, ...)
{
print(x$survey.design, varnames = FALSE, design.summaries = FALSE, ...)
x$call <- x$printcall
NextMethod()
}
It may not be obvious that the assignment to x$call will cause
the entire object x to be copied. This copying to preserve the
call-by-value illusion is usually done by the internal C function
duplicate.
The main reason that memory-use profiling is difficult is garbage collection. Memory is allocated at well-defined times in an R program, but is freed whenever the garbage collector happens to run.
| • Memory statistics from Rprof: | ||
| • Tracking memory allocations: | ||
| • Tracing copies of an object: |
Next: Tracking memory allocations, Previous: Profiling R code for memory use, Up: Profiling R code for memory use [Contents][Index]
RprofThe sampling profiler Rprof described in the previous section can
be given the option memory.profiling=TRUE. It then writes out the
total R memory allocation in small vectors, large vectors, and cons
cells or nodes at each sampling interval. It also writes out the number
of calls to the internal function duplicate, which is called to
copy R objects. summaryRprof provides summaries of this
information. The main reason that this can be misleading is that the
memory use is attributed to the function running at the end of the
sampling interval. A second reason is that garbage collection can make
the amount of memory in use decrease, so a function appears to use
little memory. Running under gctorture helps with both problems:
it slows down the code to effectively increase the sampling frequency
and it makes each garbage collection release a smaller amount of memory.
Changing the memory limits with mem.limits() may also be useful,
to see how the code would run under different memory conditions.
Next: Tracing copies of an object, Previous: Memory statistics from Rprof, Up: Profiling R code for memory use [Contents][Index]
The second method of memory profiling uses a memory-allocation
profiler, Rprofmem(), which writes out a stack trace to an
output file every time a large vector is allocated (with a
user-specified threshold for ‘large’) or a new page of memory is
allocated for the R heap. Summary functions for this output are still
being designed.
Running the example from the previous section with
> Rprofmem("boot.memprof",threshold=1000)
> storm.boot <- boot(rs, storm.bf, R = 4999)
> Rprofmem(NULL)
shows that apart from some initial and final work in boot there
are no vector allocations over 1000 bytes.
Previous: Tracking memory allocations, Up: Profiling R code for memory use [Contents][Index]
The third method of memory profiling involves tracing copies made of a
specific (presumably large) R object. Calling tracemem on an
object marks it so that a message is printed to standard output when
the object is copied via duplicate or coercion to another type,
or when a new object of the same size is created in arithmetic
operations. The main reason that this can be misleading is that
copying of subsets or components of an object is not tracked. It may
be helpful to use tracemem on these components.
In the example above we can run tracemem on the data frame
st
> tracemem(st) [1] "<0x9abd5e0>" > storm.boot <- boot(rs, storm.bf, R = 4) memtrace[0x9abd5e0->0x92a6d08]: statistic boot memtrace[0x92a6d08->0x92a6d80]: $<-.data.frame $<- statistic boot memtrace[0x92a6d80->0x92a6df8]: $<-.data.frame $<- statistic boot memtrace[0x9abd5e0->0x9271318]: statistic boot memtrace[0x9271318->0x9271390]: $<-.data.frame $<- statistic boot memtrace[0x9271390->0x9271408]: $<-.data.frame $<- statistic boot memtrace[0x9abd5e0->0x914f558]: statistic boot memtrace[0x914f558->0x914f5f8]: $<-.data.frame $<- statistic boot memtrace[0x914f5f8->0x914f670]: $<-.data.frame $<- statistic boot memtrace[0x9abd5e0->0x972cbf0]: statistic boot memtrace[0x972cbf0->0x972cc68]: $<-.data.frame $<- statistic boot memtrace[0x972cc68->0x972cd08]: $<-.data.frame $<- statistic boot memtrace[0x9abd5e0->0x98ead98]: statistic boot memtrace[0x98ead98->0x98eae10]: $<-.data.frame $<- statistic boot memtrace[0x98eae10->0x98eae88]: $<-.data.frame $<- statistic boot
The object is duplicated fifteen times, three times for each of the
R+1 calls to storm.bf. This is surprising, since none of the duplications happen inside nls. Stepping through storm.bf in the debugger shows that all three happen in the line
st$Time <- st$fit + rs[i]
Data frames are slower than matrices and this is an example of why.
Using tracemem(st$Viscosity) does not reveal any additional
copying.
Previous: Profiling R code for memory use, Up: Tidying and profiling R code [Contents][Index]
Profiling compiled code is highly system-specific, but this section contains some hints gleaned from various R users. Some methods need to be different for a compiled executable and for dynamic/shared libraries/objects as used by R packages. We know of no good way to profile DLLs on Windows.
| • Linux: | ||
| • Solaris: | ||
| • macOS: |
Next: Solaris, Previous: Profiling compiled code, Up: Profiling compiled code [Contents][Index]
Options include using sprof for a shared object, and
oprofile (see http://oprofile.sourceforge.net/) and
perf (see
https://perf.wiki.kernel.org/index.php/Tutorial) for any
executable or shared object.
You can select shared objects to be profiled with sprof by
setting the environment variable LD_PROFILE. For example
% setenv LD_PROFILE /path/to/R_HOME/library/stats/libs/stats.so R ... run the boot example % sprof /path/to/R_HOME/library/stats/libs/stats.so \ /var/tmp/path/to/R_HOME/library/stats/libs/stats.so.profile Flat profile: Each sample counts as 0.01 seconds. % cumulative self self total time seconds seconds calls us/call us/call name 76.19 0.32 0.32 0 0.00 numeric_deriv 16.67 0.39 0.07 0 0.00 nls_iter 7.14 0.42 0.03 0 0.00 getListElement rm /var/tmp/path/to/R_HOME/library/stats/libs/stats.so.profile ... to clean up ...
It is possible that root access is needed to create the directories used for the profile data.
The oprofile project has two modes of operation. In what is
now called ‘legacy’ mode, it is uses a daemon to collect information on
a process (see below). Since version 0.9.8 (August 2012), the preferred
mode is to use operf, so we discuss that first. The modes
differ in how the profiling data is collected: it is analysed by tools
such as opreport and oppannote in both.
Here is an example on x86_64 Linux using R 3.0.2. File
pvec.R contains the part of the examples from pvec in
package parallel:
library(parallel)
N <- 1e6
dates <- sprintf('%04d-%02d-%02d', as.integer(2000+rnorm(N)),
as.integer(runif(N, 1, 12)), as.integer(runif(N, 1, 28)))
system.time(a <- as.POSIXct(dates, format = "%Y-%m-%d"))
with timings from the final step
user system elapsed 0.371 0.237 0.612
R-level profiling by Rprof shows
self.time self.pct total.time total.pct "strptime" 1.70 41.06 1.70 41.06 "as.POSIXct.POSIXlt" 1.40 33.82 1.42 34.30 "sprintf" 0.74 17.87 0.98 23.67 ...
so the conversion from character to POSIXlt takes most of the
time.
This can be run under operf and analysed by
operf R -f pvec.R opreport opreport -l /path/to/R_HOME/bin/exec/R opannotate --source /path/to/R_HOME/bin/exec/R ## And for the system time opreport -l /lib64/libc.so.6
The first report shows where (which library etc) the time was spent:
CPU_CLK_UNHALT...|
samples| %|
------------------
166761 99.9161 Rdev
CPU_CLK_UNHALT...|
samples| %|
------------------
70586 42.3276 no-vmlinux
56963 34.1585 libc-2.16.so
36922 22.1407 R
1584 0.9499 stats.so
624 0.3742 libm-2.16.so
...
The rest of the output is voluminous, and only extracts are shown below.
Most of the time within R is spent in
samples % image name symbol name 10397 28.5123 R R_gc_internal 5683 15.5848 R do_sprintf 3036 8.3258 R do_asPOSIXct 2427 6.6557 R do_strptime 2421 6.6392 R Rf_mkCharLenCE 1480 4.0587 R w_strptime_internal 1202 3.2963 R Rf_qnorm5 1165 3.1948 R unif_rand 675 1.8511 R mktime0 617 1.6920 R makelt 617 1.6920 R validate_tm 584 1.6015 R day_of_the_week ...
opannotate shows that 31% of the time in R is spent in
memory.c, 21% in datetime.c and 7% in Rstrptime.h.
The analysis for libc showed that calls to wcsftime
dominated, so those calls were cached for R 3.0.3: the time spent in
no-vmlinux (the kernel) was reduced dramatically.
On platforms which support it, call graphs can be produced by
opcontrol --callgraph if collected via operf
--callgraph.
The profiling data is by default stored in sub-directory oprofile_data of the current directory, which can be removed at the end of the session.
Another example, from sm version 2.2-5.4. The example for
sm.variogram took a long time:
system.time(example(sm.variogram)) ... user system elapsed 5.543 3.202 8.785
including a lot of system time. Profiling just the slow part, the second plot, showed
samples| %|
------------------
381845 99.9885 R
CPU_CLK_UNHALT...|
samples| %|
------------------
187484 49.0995 sm.so
169627 44.4230 no-vmlinux
12636 3.3092 libgfortran.so.3.0.0
6455 1.6905 R
so the system time was almost all in the Linux kernel. It is possible to dig deeper if you have a matching uncompressed kernel with debug symbols to specify via --vmlinux: we did not.
In ‘legacy’ mode oprofile works by running a daemon which
collects information. The daemon must be started as root, e.g.
% su % opcontrol --no-vmlinux % (optional, some platforms) opcontrol --callgraph=5 % opcontrol --start % exit
Then as a user
% R ... run the boot example % opcontrol --dump % opreport -l /path/to/R_HOME/library/stats/libs/stats.so ... samples % symbol name 1623 75.5939 anonymous symbol from section .plt 349 16.2552 numeric_deriv 113 5.2632 nls_iter 62 2.8878 getListElement % opreport -l /path/to/R_HOME/bin/exec/R ... samples % symbol name 76052 11.9912 Rf_eval 54670 8.6198 Rf_findVarInFrame3 37814 5.9622 Rf_allocVector 31489 4.9649 Rf_duplicate 28221 4.4496 Rf_protect 26485 4.1759 Rf_cons 23650 3.7289 Rf_matchArgs 21088 3.3250 Rf_findFun 19995 3.1526 findVarLocInFrame 14871 2.3447 Rf_evalList 13794 2.1749 R_Newhashpjw 13522 2.1320 R_gc_internal ...
Shutting down the profiler and clearing the records needs to be done as root.
Next: macOS, Previous: Linux, Up: Profiling compiled code [Contents][Index]
On 64-bit (only) Solaris, the standard profiling tool gprof
collects information from shared objects compiled with -pg.
Previous: Solaris, Up: Profiling compiled code [Contents][Index]
Developers have recommended sample (or Sampler.app,
which is a GUI version), Shark (in version of Xcode
up to those for Snow Leopard), and Instruments (part of
Xcode, see
https://developer.apple.com/library/content/documentation/DeveloperTools/Conceptual/InstrumentsUserGuide/index.html).
Next: System and foreign language interfaces, Previous: Tidying and profiling R code, Up: Top [Contents][Index]
This chapter covers the debugging of R extensions, starting with the ways to get useful error information and moving on to how to deal with errors that crash R. For those who prefer other styles there are contributed packages such as debug on CRAN (described in an article in R-News 3/3). (There are notes from 2002 provided by Roger Peng at http://www.biostat.jhsph.edu/~rpeng/docs/R-debug-tools.pdf which provide complementary examples to those given here.)
| • Browsing: | ||
| • Debugging R code: | ||
| • Checking memory access: | ||
| • Debugging compiled code: |
Next: Debugging R code, Previous: Debugging, Up: Debugging [Contents][Index]
Most of the R-level debugging facilities are based around the
built-in browser. This can be used directly by inserting a call to
browser() into the code of a function (for example, using
fix(my_function) ). When code execution reaches that point in
the function, control returns to the R console with a special prompt.
For example
> fix(summary.data.frame) ## insert browser() call after for() loop
> summary(women)
Called from: summary.data.frame(women)
Browse[1]> ls()
[1] "digits" "i" "lbs" "lw" "maxsum" "nm" "nr" "nv"
[9] "object" "sms" "z"
Browse[1]> maxsum
[1] 7
Browse[1]>
height weight
Min. :58.0 Min. :115.0
1st Qu.:61.5 1st Qu.:124.5
Median :65.0 Median :135.0
Mean :65.0 Mean :136.7
3rd Qu.:68.5 3rd Qu.:148.0
Max. :72.0 Max. :164.0
> rm(summary.data.frame)
At the browser prompt one can enter any R expression, so for example
ls() lists the objects in the current frame, and entering the
name of an object will106 print it. The following commands are
also accepted
n
Enter ‘step-through’ mode. In this mode, hitting return executes the
next line of code (more precisely one line and any continuation lines).
Typing c will continue to the end of the current context, e.g.
to the end of the current loop or function.
c
In normal mode, this quits the browser and continues execution, and just
return works in the same way. cont is a synonym.
where
This prints the call stack. For example
> summary(women) Called from: summary.data.frame(women) Browse[1]> where where 1: summary.data.frame(women) where 2: summary(women) Browse[1]>
Q
Quit both the browser and the current expression, and return to the top-level prompt.
Errors in code executed at the browser prompt will normally return
control to the browser prompt. Objects can be altered by assignment,
and will keep their changed values when the browser is exited. If
really necessary, objects can be assigned to the workspace from the
browser prompt (by using <<- if the name is not already in
scope).
Next: Checking memory access, Previous: Browsing, Up: Debugging [Contents][Index]
Suppose your R program gives an error message. The first thing to
find out is what R was doing at the time of the error, and the most
useful tool is traceback(). We suggest that this is run whenever
the cause of the error is not immediately obvious. Daily, errors are
reported to the R mailing lists as being in some package when
traceback() would show that the error was being reported by some
other package or base R. Here is an example from the regression
suite.
> success <- c(13,12,11,14,14,11,13,11,12)
> failure <- c(0,0,0,0,0,0,0,2,2)
> resp <- cbind(success, failure)
> predictor <- c(0, 5^(0:7))
> glm(resp ~ 0+predictor, family = binomial(link="log"))
Error: no valid set of coefficients has been found: please supply starting values
> traceback()
3: stop("no valid set of coefficients has been found: please supply
starting values", call. = FALSE)
2: glm.fit(x = X, y = Y, weights = weights, start = start, etastart = etastart,
mustart = mustart, offset = offset, family = family, control = control,
intercept = attr(mt, "intercept") > 0)
1: glm(resp ~ 0 + predictor, family = binomial(link ="log"))
The calls to the active frames are given in reverse order (starting with
the innermost). So we see the error message comes from an explicit
check in glm.fit. (traceback() shows you all the lines of
the function calls, which can be limited by setting option
"deparse.max.lines".)
Sometimes the traceback will indicate that the error was detected inside
compiled code, for example (from ?nls)
Error in nls(y ~ a + b * x, start = list(a = 0.12345, b = 0.54321), trace = TRUE) :
step factor 0.000488281 reduced below ‘minFactor’ of 0.000976563
> traceback()
2: .Call(R_nls_iter, m, ctrl, trace)
1: nls(y ~ a + b * x, start = list(a = 0.12345, b = 0.54321), trace = TRUE)
This will be the case if the innermost call is to .C,
.Fortran, .Call, .External or .Internal, but
as it is also possible for such code to evaluate R expressions, this
need not be the innermost call, as in
> traceback()
9: gm(a, b, x)
8: .Call(R_numeric_deriv, expr, theta, rho, dir)
7: numericDeriv(form[[3]], names(ind), env)
6: getRHS()
5: assign("rhs", getRHS(), envir = thisEnv)
4: assign("resid", .swts * (lhs - assign("rhs", getRHS(), envir = thisEnv)),
envir = thisEnv)
3: function (newPars)
{
setPars(newPars)
assign("resid", .swts * (lhs - assign("rhs", getRHS(), envir = thisEnv)),
envir = thisEnv)
assign("dev", sum(resid^2), envir = thisEnv)
assign("QR", qr(.swts * attr(rhs, "gradient")), envir = thisEnv)
return(QR$rank < min(dim(QR$qr)))
}(c(-0.00760232418963883, 1.00119632515036))
2: .Call(R_nls_iter, m, ctrl, trace)
1: nls(yeps ~ gm(a, b, x), start = list(a = 0.12345, b = 0.54321))
Occasionally traceback() does not help, and this can be the case
if S4 method dispatch is involved. Consider the following example
> xyd <- new("xyloc", x=runif(20), y=runif(20))
Error in as.environment(pkg) : no item called "package:S4nswv"
on the search list
Error in initialize(value, ...) : S language method selection got
an error when called from internal dispatch for function ‘initialize’
> traceback()
2: initialize(value, ...)
1: new("xyloc", x = runif(20), y = runif(20))
which does not help much, as there is no call to as.environment
in initialize (and the note “called from internal dispatch”
tells us so). In this case we searched the R sources for the quoted
call, which occurred in only one place,
methods:::.asEnvironmentPackage. So now we knew where the
error was occurring. (This was an unusually opaque example.)
The error message
evaluation nested too deeply: infinite recursion / options(expressions=)?
can be hard to handle with the default value (5000). Unless you know that there actually is deep recursion going on, it can help to set something like
options(expressions=500)
and re-run the example showing the error.
Sometimes there is warning that clearly is the precursor to some later
error, but it is not obvious where it is coming from. Setting
options(warn = 2) (which turns warnings into errors) can help here.
Once we have located the error, we have some choices. One way to proceed
is to find out more about what was happening at the time of the crash by
looking a post-mortem dump. To do so, set
options(error=dump.frames) and run the code again. Then invoke
debugger() and explore the dump. Continuing our example:
> options(error = dump.frames) > glm(resp ~ 0 + predictor, family = binomial(link ="log")) Error: no valid set of coefficients has been found: please supply starting values
which is the same as before, but an object called last.dump has
appeared in the workspace. (Such objects can be large, so remove it
when it is no longer needed.) We can examine this at a later time by
calling the function debugger.
> debugger()
Message: Error: no valid set of coefficients has been found: please supply starting values
Available environments had calls:
1: glm(resp ~ 0 + predictor, family = binomial(link = "log"))
2: glm.fit(x = X, y = Y, weights = weights, start = start, etastart = etastart, mus
3: stop("no valid set of coefficients has been found: please supply starting values
Enter an environment number, or 0 to exit Selection:
which gives the same sequence of calls as traceback, but in
outer-first order and with only the first line of the call, truncated to
the current width. However, we can now examine in more detail what was
happening at the time of the error. Selecting an environment opens the
browser in that frame. So we select the function call which spawned the
error message, and explore some of the variables (and execute two
function calls).
Enter an environment number, or 0 to exit Selection: 2
Browsing in the environment with call:
glm.fit(x = X, y = Y, weights = weights, start = start, etas
Called from: debugger.look(ind)
Browse[1]> ls()
[1] "aic" "boundary" "coefold" "control" "conv"
[6] "dev" "dev.resids" "devold" "EMPTY" "eta"
[11] "etastart" "family" "fit" "good" "intercept"
[16] "iter" "linkinv" "mu" "mu.eta" "mu.eta.val"
[21] "mustart" "n" "ngoodobs" "nobs" "nvars"
[26] "offset" "start" "valideta" "validmu" "variance"
[31] "varmu" "w" "weights" "x" "xnames"
[36] "y" "ynames" "z"
Browse[1]> eta
1 2 3 4 5
0.000000e+00 -2.235357e-06 -1.117679e-05 -5.588393e-05 -2.794197e-04
6 7 8 9
-1.397098e-03 -6.985492e-03 -3.492746e-02 -1.746373e-01
Browse[1]> valideta(eta)
[1] TRUE
Browse[1]> mu
1 2 3 4 5 6 7 8
1.0000000 0.9999978 0.9999888 0.9999441 0.9997206 0.9986039 0.9930389 0.9656755
9
0.8397616
Browse[1]> validmu(mu)
[1] FALSE
Browse[1]> c
Available environments had calls:
1: glm(resp ~ 0 + predictor, family = binomial(link = "log"))
2: glm.fit(x = X, y = Y, weights = weights, start = start, etastart = etastart
3: stop("no valid set of coefficients has been found: please supply starting v
Enter an environment number, or 0 to exit Selection: 0
> rm(last.dump)
Because last.dump can be looked at later or even in another R
session, post-mortem debugging is possible even for batch usage of R.
We do need to arrange for the dump to be saved: this can be done either
using the command-line flag --save to save the workspace at the
end of the run, or via a setting such as
> options(error = quote({dump.frames(to.file=TRUE); q()}))
See the help on dump.frames for further options and a worked
example.
An alternative error action is to use the function recover():
> options(error = recover) > glm(resp ~ 0 + predictor, family = binomial(link = "log")) Error: no valid set of coefficients has been found: please supply starting values Enter a frame number, or 0 to exit 1: glm(resp ~ 0 + predictor, family = binomial(link = "log")) 2: glm.fit(x = X, y = Y, weights = weights, start = start, etastart = etastart Selection:
which is very similar to dump.frames. However, we can examine
the state of the program directly, without dumping and re-loading the
dump. As its help page says, recover can be routinely used as
the error action in place of dump.calls and dump.frames,
since it behaves like dump.frames in non-interactive use.
Post-mortem debugging is good for finding out exactly what went wrong,
but not necessarily why. An alternative approach is to take a closer
look at what was happening just before the error, and a good way to do
that is to use debug. This inserts a call to the browser
at the beginning of the function, starting in step-through mode. So in
our example we could use
> debug(glm.fit)
> glm(resp ~ 0 + predictor, family = binomial(link ="log"))
debugging in: glm.fit(x = X, y = Y, weights = weights, start = start, etastart = etastart,
mustart = mustart, offset = offset, family = family, control = control,
intercept = attr(mt, "intercept") > 0)
debug: {
## lists the whole function
Browse[1]>
debug: x <- as.matrix(x)
...
Browse[1]> start
[1] -2.235357e-06
debug: eta <- drop(x %*% start)
Browse[1]> eta
1 2 3 4 5
0.000000e+00 -2.235357e-06 -1.117679e-05 -5.588393e-05 -2.794197e-04
6 7 8 9
-1.397098e-03 -6.985492e-03 -3.492746e-02 -1.746373e-01
Browse[1]>
debug: mu <- linkinv(eta <- eta + offset)
Browse[1]> mu
1 2 3 4 5 6 7 8
1.0000000 0.9999978 0.9999888 0.9999441 0.9997206 0.9986039 0.9930389 0.9656755
9
0.8397616
(The prompt Browse[1]> indicates that this is the first level of
browsing: it is possible to step into another function that is itself
being debugged or contains a call to browser().)
debug can be used for hidden functions and S3 methods by
e.g. debug(stats:::predict.Arima). (It cannot be used for S4
methods, but an alternative is given on the help page for debug.)
Sometimes you want to debug a function defined inside another function,
e.g. the function arimafn defined inside arima. To do so,
set debug on the outer function (here arima) and
step through it until the inner function has been defined. Then
call debug on the inner function (and use c to get out of
step-through mode in the outer function).
To remove debugging of a function, call undebug with the argument
previously given to debug; debugging otherwise lasts for the rest
of the R session (or until the function is edited or otherwise
replaced).
trace can be used to temporarily insert debugging code into a
function, for example to insert a call to browser() just before
the point of the error. To return to our running example
## first get a numbered listing of the expressions of the function > page(as.list(body(glm.fit)), method="print") > trace(glm.fit, browser, at=22) Tracing function "glm.fit" in package "stats" [1] "glm.fit" > glm(resp ~ 0 + predictor, family = binomial(link ="log")) Tracing glm.fit(x = X, y = Y, weights = weights, start = start, etastart = etastart, .... step 22 Called from: eval(expr, envir, enclos) Browse[1]> n ## and single-step from here. > untrace(glm.fit)
For your own functions, it may be as easy to use fix to insert
temporary code, but trace can help with functions in a namespace
(as can fixInNamespace). Alternatively, use
trace(,edit=TRUE) to insert code visually.
Next: Debugging compiled code, Previous: Debugging R code, Up: Debugging [Contents][Index]
Errors in memory allocation and reading/writing outside arrays are very common causes of crashes (e.g., segfaults) on some machines. Often the crash appears long after the invalid memory access: in particular damage to the structures which R itself has allocated may only become apparent at the next garbage collection (or even at later garbage collections after objects have been deleted).
Note that memory access errors may be seen with LAPACK, BLAS, OpenMP and Java-using packages: some at least of these seem to be intentional, and some are related to passing characters to Fortran.
Some of these tools can detect mismatched allocation and deallocation.
C++ programmers should note that memory allocated by new [] must
be freed by delete [], other uses of new by delete,
and memory allocated by malloc, calloc and realloc
by free. Some platforms will tolerate mismatches (perhaps with
memory leaks) but others will segfault.
| • Using gctorture: | ||
| • Using valgrind: | ||
| • Using Address Sanitizer: | ||
| • Using Undefined Behaviour Sanitizer: | ||
| • Other analyses with ‘clang’: | ||
| • Using ‘Dr. Memory’: | ||
| • Fortran array bounds checking: |
Next: Using valgrind, Previous: Checking memory access, Up: Checking memory access [Contents][Index]
We can help to detect memory problems in R objects earlier by running
garbage collection as often as possible. This is achieved by
gctorture(TRUE), which as described on its help page
Provokes garbage collection on (nearly) every memory allocation. Intended to ferret out memory protection bugs. Also makes R run very slowly, unfortunately.
The reference to ‘memory protection’ is to missing C-level calls to
PROTECT/UNPROTECT (see Garbage Collection) which if
missing allow R objects to be garbage-collected when they are still
in use. But it can also help with other memory-related errors.
Normally running under gctorture(TRUE) will just produce a crash
earlier in the R program, hopefully close to the actual cause. See
the next section for how to decipher such crashes.
It is possible to run all the examples, tests and vignettes covered by
R CMD check under gctorture(TRUE) by using the option
--use-gct.
The function gctorture2 provides more refined control over the GC
torture process. Its arguments step, wait and
inhibit_release are documented on its help page. Environment
variables can also be used at the start of the R session to turn on
GC torture: R_GCTORTURE corresponds to the step argument to
gctorture2, R_GCTORTURE_WAIT to wait, and
R_GCTORTURE_INHIBIT_RELEASE to inhibit_release.
If R is configured with --enable-strict-barrier then a variety of tests for the integrity of the write barrier are enabled. In addition tests to help detect protect issues are enabled:
NEWSXP on creation.
NEWSXP are marked
as type FREESXP and their previous type is recorded.
SEXP inputs and
SEXP outputs and signal an error if a FREESXP is found.
The address of the node and the old type are included in the error
message.
R CMD check --use-gct can be set to use
gctorture2(n) rather than gctorture(TRUE) by setting
environment variable _R_CHECK_GCT_N_ to a positive integer value
to be used as n.
Used with a debugger and with gctorture or gctorture2 this
mechanism can be helpful in isolating memory protect problems.
Next: Using Address Sanitizer, Previous: Using gctorture, Up: Checking memory access [Contents][Index]
If you have access to Linux on a common CPU type or supported versions
of macOS or Solaris you can use valgrind
(http://www.valgrind.org/, pronounced to rhyme with ‘tinned’) to
check for possible problems. To run some examples under valgrind
use something like
R -d valgrind --vanilla < mypkg-Ex.R R -d "valgrind --tool=memcheck --leak-check=full" --vanilla < mypkg-Ex.R
where mypkg-Ex.R is a set of examples, e.g. the file created in
mypkg.Rcheck by R CMD check. Occasionally this reports
memory reads of ‘uninitialised values’ that are the result of compiler
optimization, so can be worth checking under an unoptimized compile: for
maximal information use a build with debugging symbols. We know there
will be some small memory leaks from readline and R itself —
these are memory areas that are in use right up to the end of the R
session. Expect this to run around 20x slower than without
valgrind, and in some cases much slower than that. Several
versions of valgrind were not happy with some optimized BLASes
that use CPU-specific instructions so you may need to build a
version of R specifically to use with valgrind.
On platforms where valgrind is installed you can build a version
of R with extra instrumentation to help valgrind detect errors
in the use of memory allocated from the R heap. The
configure option is
--with-valgrind-instrumentation=level, where level
is 0, 1 or 2. Level 0 is the default and does not add anything.
Level 1 will detect some uses107 of uninitialised memory and has little impact on speed
(compared to level 0). Level 2 will detect many other memory-use
bugs108 but make R much slower when running under
valgrind. Using this in conjunction with gctorture can be
even more effective (and even slower).
An example of valgrind output is
==12539== Invalid read of size 4 ==12539== at 0x1CDF6CBE: csc_compTr (Mutils.c:273) ==12539== by 0x1CE07E1E: tsc_transpose (dtCMatrix.c:25) ==12539== by 0x80A67A7: do_dotcall (dotcode.c:858) ==12539== by 0x80CACE2: Rf_eval (eval.c:400) ==12539== by 0x80CB5AF: R_execClosure (eval.c:658) ==12539== by 0x80CB98E: R_execMethod (eval.c:760) ==12539== by 0x1B93DEFA: R_standardGeneric (methods_list_dispatch.c:624) ==12539== by 0x810262E: do_standardGeneric (objects.c:1012) ==12539== by 0x80CAD23: Rf_eval (eval.c:403) ==12539== by 0x80CB2F0: Rf_applyClosure (eval.c:573) ==12539== by 0x80CADCC: Rf_eval (eval.c:414) ==12539== by 0x80CAA03: Rf_eval (eval.c:362) ==12539== Address 0x1C0D2EA8 is 280 bytes inside a block of size 1996 alloc'd ==12539== at 0x1B9008D1: malloc (vg_replace_malloc.c:149) ==12539== by 0x80F1B34: GetNewPage (memory.c:610) ==12539== by 0x80F7515: Rf_allocVector (memory.c:1915) ...
This example is from an instrumented version of R, while tracking
down a bug in the Matrix package in 2006. The first line
indicates that R has tried to read 4 bytes from a memory address that
it does not have access to. This is followed by a C stack trace showing
where the error occurred. Next is a description of the memory that was
accessed. It is inside a block allocated by malloc, called from
GetNewPage, that is, in the internal R heap. Since this
memory all belongs to R, valgrind would not (and did not)
detect the problem in an uninstrumented build of R. In this example
the stack trace was enough to isolate and fix the bug, which was in
tsc_transpose, and in this example running under
gctorture() did not provide any additional information. When the
stack trace is not sufficiently informative the option
--db-attach=yes to valgrind may be helpful. This starts
a post-mortem debugger (by default gdb) so that variables in the
C code can be inspected (see Inspecting R objects).
valgrind is good at spotting the use of uninitialized values:
use option --track-origins=yes to show where these originated
from. What it cannot detect is the misuse of arrays allocated on the
stack: this includes C automatic variables and some109
Fortran arrays.
It is possible to run all the examples, tests and vignettes covered by
R CMD check under valgrind by using the option
--use-valgrind. If you do this you will need to select the
valgrind options some other way, for example by having a
~/.valgrindrc file containing
--leak-check=full --track-origins=yes
or setting the environment variable VALGRIND_OPTS.
On macOS you may need to ensure that debugging symbols are made available
(so valgrind reports line numbers in files). This can usually
be done with the valgrind option --dsymutil=yes to
ask for the symbols to be dumped when the .so file is loaded.
This will not work where packages are installed into a system area (such
as the R.framework) and can be slow. Installing packages with
R CMD INSTALL --dsym installs the dumped symbols. (This can
also be done by setting environment variable PKG_MAKE_DSYM to a
non-empty value before the INSTALL.)
This section has described the use of memtest, the default
(and most useful) of valgrind’s tools. There are others
described in its documentation: helgrind can be useful for
threaded programs.
Next: Using Undefined Behaviour Sanitizer, Previous: Using valgrind, Up: Checking memory access [Contents][Index]
AddressSanitizer (‘ASan’) is a tool with similar aims to the
memory checker in valgrind. It is available with suitable
builds110 of gcc
and clang on common Linux and macOS platforms. See
https://clang.llvm.org/docs/UsersManual.html#controlling-code-generation,
https://clang.llvm.org/docs/AddressSanitizer.html and
https://code.google.com/p/address-sanitizer/.
More thorough checks of C++ code are done if the C++ library has been
‘annotated’: at the time of writing this applied to std::vector
in libc++ for use with clang and gives rise to
‘container-overflow’111
reports.
It requires code to have been compiled and linked with
-fsanitize=address and compiling with -fno-omit-frame-pointer
will give more legible reports. It has a runtime penalty of 2–3x,
extended compilation times and uses substantially more memory, often
1–2GB, at run time. On 64-bit platforms it reserves (but does not
allocate) 16–20TB of virtual memory: restrictive shell settings can
cause problems.
By comparison with valgrind, ASan can
detect misuse of stack and global variables but not the use of
uninitialized memory.
Recent versions return symbolic addresses for the location of the error
provided llvm-symbolizer112 is on the path: if it is available but not
on the path or has been renamed113, one
can use an environment variable, e.g.
ASAN_SYMBOLIZER_PATH=/path/to/llvm-symbolizer
An alternative is to pipe the output through
asan_symbolize.py114 and perhaps
then (for compiled C++ code) c++filt. (On macOS, you may need
to run dsymutil to get line-number reports.)
The simplest way to make use of this is to build a version of R with something like
CC="gcc -std=gnu99 -fsanitize=address" CFLAGS="-fno-omit-frame-pointer -g -O2 -Wall -pedantic -mtune=native"
which will ensure that the libasan run-time library is compiled
into the R executable. However this check can be enabled on a
per-package basis by using a ~/.R/Makevars file like
CC = gcc -std=gnu99 -fsanitize=address -fno-omit-frame-pointer CXX = g++ -fsanitize=address -fno-omit-frame-pointer F77 = gfortran -fsanitize=address FC = gfortran -fsanitize=address
(Note that -fsanitize=address has to be part of the compiler
specification to ensure it is used for linking. These settings will not
be honoured by packages which ignore ~/.R/Makevars.) It will
be necessary to build R with
MAIN_LDFLAGS = -fsanitize=address
to link the runtime libraries into the R executable if it was not specified as part of ‘CC’ when R was built. (For some builds without OpenMP, -pthread is also required.)
For options available via the environment variable
ASAN_OPTIONS see
https://code.google.com/p/address-sanitizer/wiki/AddressSanitizerFLags.
With gcc additional control is available via the
--param flag: see its man page.
For more detailed information on an error, R can be run under a
debugger with a breakpoint set before the address sanitizer report is
produced: for gdb or lldb you could use
break __asan_report_error
(See https://code.google.com/p/address-sanitizer/wiki/AddressSanitizer#gdb.)
Recent versions115 added the flag -fsanitize-address-use-after-scope: see https://github.com/google/sanitizers/wiki/AddressSanitizerUseAfterScope.
One of the checks done by ASAN is that malloc/free and in C++
new/delete and new[]/delete[] are used consistently
(rather than say free being used to dealloc memory allocated by
new[]). This matters on some systems but not all: unfortunately
on some of those where it does not matter, system libraries116 are not consistent. The
check can be suppressed by including ‘alloc_dealloc_mismatch=0’ in
ASAN_OPTIONS.
| • Using Leak Sanitizer: |
Previous: Using Address Sanitizer, Up: Using Address Sanitizer [Contents][Index]
For x86_64 Linux there is a leak sanitizer, ‘LSan’: see
https://code.google.com/p/address-sanitizer/wiki/LeakSanitizer.
This is available on recent versions of gcc and clang, and
where available is compiled in as part of ASan.
One way to invoke this from an ASan-enabled build is by the environment variable
ASAN_OPTIONS='detect_leaks=1'
However, this was made the default as from clang 3.5 and
gcc 5.1.0.
When LSan is enabled, leaks give the process a failure error status (by
default 23). For an R package this means the R process,
and as the parser retains some memory to the end of the process, if R
itself was built against ASan, all runs will have a failure error status
(which may include running R as part of building R itself).
To disable this, allocation-mismatch checking and some strict C++ checking use
setenv ASAN_OPTIONS ‘alloc_dealloc_mismatch=0:detect_leaks=0:detect_odr_violation=0’
LSan also has a ‘stand-alone’ mode where it is compiled in using -fsanitize=leak and avoids the run-time overhead of ASan.
Next: Other analyses with ‘clang’, Previous: Using Address Sanitizer, Up: Checking memory access [Contents][Index]
‘Undefined behaviour’ is where the language standard does not require
particular behaviour from the compiler. Examples include division by
zero (where for doubles R requires the
ISO/IEC 60559 behaviour but C/C++ do not), use
of zero-length arrays, shifts too far for signed types (e.g. int
x, y; y = x << 31;), out-of-range coercion, invalid C++ casts and
mis-alignment. Not uncommon examples of out-of-range coercion in R
packages are attempts to coerce a NaN or infinity to type
int or NA_INTEGER to an unsigned type such as
size_t. Also common is y[x - 1] forgetting that x
might be NA_INTEGER.
‘UBSanitizer’ is a tool for C/C++ source code selected by
-fsanitize=undefined in suitable builds117 of clang and GCC. Its (main) runtime library is
linked into each package’s DLL, so it is less often needed to be
included in MAIN_LDFLAGS.
This sanitizer can be combined with the Address Sanitizer by -fsanitize=undefined,address (where both are supported).
Finer control of what is checked can be achieved by other options: for
clang see
https://clang.llvm.org/docs/UsersManual.html#controlling-code-generation.118
The current set for clang is (on a single line):
-fsanitize=alignment,bool,bounds,enum,float-cast-overflow, float-divide-by-zero,function,integer-divide-by-zero,nonnull-attribute, null,object-size,pointer-overflow,return,returns-nonnull-attribute,shift, signed-integer-overflow,unreachable,unsigned-integer-overflow,vla-bound,vptr
(plus the more specific versions shift-base and
shift-exponent) a subset of which could be combined with
address, or use something like
-fsanitize=undefined -fno-sanitize=float-divide-by-zero
Options function, return and vptr apply only to C++: to
use vptr its run-time library needs to be linked into the main
R executable by building the latter with something like
MAIN_LD="clang++ -fsanitize=undefined"
Option float-divide-by-zero is undesirable for use with R
which allow such divisions as part of IEC 60559
arithmetic.
See https://gcc.gnu.org/onlinedocs/gcc/Instrumentation-Options.html (or the manual for your version of GCC, installed or via https://gcc.gnu.org/onlinedocs/: look for ‘Program Instrumentation Options’) for the options supported by GCC: 6 and 7 support
-fsanitize=alignment,bool,bounds,enum,integer-divide-by-zero, nonnull-attribute,null,object-size,return,returns-nonnull-attribute, shift,signed-integer-overflow,unreachable,vla-bound,vptr
plus the more specific versions shift-base and
shift-exponent and non-default options
bound-strict,float-cast-overflow,float-divide-by-zero
where float-divide-by-zero is not desirable for R uses and
bounds-strict is an extension of bounds.
From GCC 8 signed-integer-overflow is no longer a default part of
-fsanitize=undefined, but can be specified separately. It adds
options -fsanitize=pointer-overflow and
-fsanitize=builtin.
Other useful flags include
-no-fsanitize-recover
which causes the first report to be fatal (it always is for the
unreachable and return suboptions). For more detailed
information on where the runtime error occurs, R can be run under a
debugger with a breakpoint set before the sanitizer report is produced:
for gdb or lldb you could use
break __ubsan_handle_float_cast_overflow break __ubsan_handle_float_cast_overflow_abort
or similar (there are handlers for each type of undefined behaviour).
There are also the compiler flags -fcatch-undefined-behavior
and -ftrapv, said to be more reliable in clang than
gcc.
For more details on the topic see http://blog.regehr.org/archives/213 and http://blog.llvm.org/2011/05/what-every-c-programmer-should-know.html (which has 3 parts).
It may or may not be possible to build R itself with
-fsanitize=undefined: when last tried it worked with
clang but there were problems with OpenMP-using code with
gcc.
Next: Using ‘Dr. Memory’, Previous: Using Undefined Behaviour Sanitizer, Up: Checking memory access [Contents][Index]
Recent versions of clang on ‘x86_64’ Linux have
‘ThreadSanitizer’ (https://code.google.com/p/thread-sanitizer/),
a ‘data race detector for C/C++ programs’, and ‘MemorySanitizer’
(https://clang.llvm.org/docs/MemorySanitizer.html,
https://code.google.com/p/memory-sanitizer/wiki/MemorySanitizer)
for the detection of uninitialized memory. Both are based on and
provide similar functionality to tools in valgrind.
clang has a ‘Static Analyser’ which can be run on the source
files during compilation: see https://clang-analyzer.llvm.org/.
Next: Fortran array bounds checking, Previous: Other analyses with ‘clang’, Up: Checking memory access [Contents][Index]
‘Dr. Memory’ from http://www.drmemory.org/ is a memory checker
for (currently) 32-bit Windows, Linux and macOS with similar aims to
valgrind. It works with unmodified executables119
and detects memory access errors, uninitialized reads and memory leaks.
Previous: Using ‘Dr. Memory’, Up: Checking memory access [Contents][Index]
Most of the Fortran compilers used with R allow code to be compiled
with checking of array bounds: for example gfortran has option
-fbounds-check and Oracle Studio has -C. This will
give an error when the upper or lower bound is exceeded, e.g.
At line 97 of file .../src/appl/dqrdc2.f Fortran runtime error: Index ‘1’ of dimension 1 of array ‘x’ above upper bound of 0
One does need to be aware that lazy programmers often specify Fortran
dimensions as 1 rather than * or a real bound and these
will be reported.
It is easy to arrange to use this check on just the code in your
package: add to ~/.R/Makevars something like (for
gfortran)
FCFLAGS = -g -O2 -mtune=native -fbounds-check FFLAGS = -g -O2 -mtune=native -fbounds-check
when you run R CMD check.
This may report incorrectly errors with the way that Fortran character variables are passed, particularly when Fortran subroutines are called from C code. This may include the use of BLAS and LAPACK subroutines in R, so it is not advisable to build R itself with bounds checking (and may not even be possible as these subroutines are called during the R build).
Previous: Checking memory access, Up: Debugging [Contents][Index]
Sooner or later programmers will be faced with the need to debug
compiled code loaded into R. This section is geared to platforms
using gdb with code compiled by gcc, but similar things
are possible with other debuggers such as lldb
(http://lldb.llvm.org/, used on macOS) and Sun’s dbx:
some debuggers have graphical front-ends available.
Consider first ‘crashes’, that is when R terminated unexpectedly with an illegal memory access (a ‘segfault’ or ‘bus error’), illegal instruction or similar. Unix-alike versions of R use a signal handler which aims to give some basic information. For example
*** caught segfault *** address 0x20000028, cause ‘memory not mapped’ Traceback: 1: .identC(class1[[1]], class2) 2: possibleExtends(class(sloti), classi, ClassDef2 = getClassDef(classi, where = where)) 3: validObject(t(cu)) 4: stopifnot(validObject(cu <- as(tu, "dtCMatrix")), validObject(t(cu)), validObject(t(tu))) Possible actions: 1: abort (with core dump) 2: normal R exit 3: exit R without saving workspace 4: exit R saving workspace Selection: 3
Since the R process may be damaged, the only really safe options are the first or third. (Note that a core dump is only produced where enabled: a common default in a shell is to limit its size to 0, thereby disabling it.)
A fairly common cause of such crashes is a package which uses .C
or .Fortran and writes beyond (at either end) one of the
arguments it is passed. There is a good way to detect this: using
options(CBoundsCheck = TRUE) (which can be selected via
the environment variable R_C_BOUNDS_CHECK=yes) changes the way
.C and .Fortran work to check if the compiled code writes
in the 64 bytes at either end of an argument.
Another cause of a ‘crash’ is to overrun the C stack. R tries to track that in its own code, but it may happen in third-party compiled code. For modern POSIX-compliant OSes R can safely catch that and return to the top-level prompt, so one gets something like
> .C("aaa")
Error: segfault from C stack overflow
>
However, C stack overflows are fatal under Windows and normally defeat attempts at debugging on that platform. Further, the size of the stack is set when R is compiled, whereas on POSIX OSes it can be set in the shell from which R is launched.
If you have a crash which gives a core dump you can use something like
gdb /path/to/R/bin/exec/R core.12345
to examine the core dump. If core dumps are disabled or to catch errors that do not generate a dump one can run R directly under a debugger by for example
$ R -d gdb --vanilla ... gdb> run
at which point R will run normally, and hopefully the debugger will catch the error and return to its prompt. This can also be used to catch infinite loops or interrupt very long-running code. For a simple example
> for(i in 1:1e7) x <- rnorm(100)
[hit Ctrl-C]
Program received signal SIGINT, Interrupt.
0x00397682 in _int_free () from /lib/tls/libc.so.6
(gdb) where
#0 0x00397682 in _int_free () from /lib/tls/libc.so.6
#1 0x00397eba in free () from /lib/tls/libc.so.6
#2 0xb7cf2551 in R_gc_internal (size_needed=313)
at /users/ripley/R/svn/R-devel/src/main/memory.c:743
#3 0xb7cf3617 in Rf_allocVector (type=13, length=626)
at /users/ripley/R/svn/R-devel/src/main/memory.c:1906
#4 0xb7c3f6d3 in PutRNGstate ()
at /users/ripley/R/svn/R-devel/src/main/RNG.c:351
#5 0xb7d6c0a5 in do_random2 (call=0x94bf7d4, op=0x92580e8, args=0x9698f98,
rho=0x9698f28) at /users/ripley/R/svn/R-devel/src/main/random.c:183
...
In many cases it is possible to attach a debugger to a running process: this is helpful if an alternative front-end is in use or to investigate a task that seems to be taking far too long. This is done by something like
gdb -p pid
where pid is the id of the R executable or front-end.
This stops the process so its state can be examined: use continue
to resume execution.
Some “tricks” worth knowing follow:
| • Finding entry points: | ||
| • Inspecting R objects: |
Next: Inspecting R objects, Previous: Debugging compiled code, Up: Debugging compiled code [Contents][Index]
Under most compilation environments, compiled code dynamically loaded into R cannot have breakpoints set within it until it is loaded. To use a symbolic debugger on such dynamically loaded code under Unix-alikes use
dyn.load or library to load your
shared object.
Under Windows signals may not be able to be used, and if so the procedure is more complicated. See the rw-FAQ.
Previous: Finding entry points, Up: Debugging compiled code [Contents][Index]
The key to inspecting R objects from compiled code is the function
PrintValue(SEXP s) which uses the normal R printing
mechanisms to print the R object pointed to by s, or the safer
version R_PV(SEXP s) which will only print ‘objects’.
One way to make use of PrintValue is to insert suitable calls
into the code to be debugged.
Another way is to call R_PV from the symbolic debugger.
(PrintValue is hidden as Rf_PrintValue.) For example,
from gdb we can use
(gdb) p R_PV(ab)
using the object ab from the convolution example, if we have
placed a suitable breakpoint in the convolution C code.
To examine an arbitrary R object we need to work a little harder. For example, let
R> DF <- data.frame(a = 1:3, b = 4:6)
By setting a breakpoint at do_get and typing get("DF") at
the R prompt, one can find out the address in memory of DF, for
example
Value returned is $1 = (SEXPREC *) 0x40583e1c
(gdb) p *$1
$2 = {
sxpinfo = {type = 19, obj = 1, named = 1, gp = 0,
mark = 0, debug = 0, trace = 0, = 0},
attrib = 0x40583e80,
u = {
vecsxp = {
length = 2,
type = {c = 0x40634700 "0>X@D>X@0>X@", i = 0x40634700,
f = 0x40634700, z = 0x40634700, s = 0x40634700},
truelength = 1075851272,
},
primsxp = {offset = 2},
symsxp = {pname = 0x2, value = 0x40634700, internal = 0x40203008},
listsxp = {carval = 0x2, cdrval = 0x40634700, tagval = 0x40203008},
envsxp = {frame = 0x2, enclos = 0x40634700},
closxp = {formals = 0x2, body = 0x40634700, env = 0x40203008},
promsxp = {value = 0x2, expr = 0x40634700, env = 0x40203008}
}
}
(Debugger output reformatted for better legibility).
Using R_PV() one can “inspect” the values of the various
elements of the SEXP, for example,
(gdb) p R_PV($1->attrib) $names [1] "a" "b" $row.names [1] "1" "2" "3" $class [1] "data.frame" $3 = void
To find out where exactly the corresponding information is stored, one needs to go “deeper”:
(gdb) set $a = $1->attrib (gdb) p $a->u.listsxp.tagval->u.symsxp.pname->u.vecsxp.type.c $4 = 0x405d40e8 "names" (gdb) p $a->u.listsxp.carval->u.vecsxp.type.s[1]->u.vecsxp.type.c $5 = 0x40634378 "b" (gdb) p $1->u.vecsxp.type.s[0]->u.vecsxp.type.i[0] $6 = 1 (gdb) p $1->u.vecsxp.type.s[1]->u.vecsxp.type.i[1] $7 = 5
Another alternative is the R_inspect function which shows the
low-level structure of the objects recursively (addresses differ from
the above as this example is created on another machine):
(gdb) p R_inspect($1)
@100954d18 19 VECSXP g0c2 [OBJ,NAM(2),ATT] (len=2, tl=0)
@100954d50 13 INTSXP g0c2 [NAM(2)] (len=3, tl=0) 1,2,3
@100954d88 13 INTSXP g0c2 [NAM(2)] (len=3, tl=0) 4,5,6
ATTRIB:
@102a70140 02 LISTSXP g0c0 []
TAG: @10083c478 01 SYMSXP g0c0 [MARK,NAM(2),gp=0x4000] "names"
@100954dc0 16 STRSXP g0c2 [NAM(2)] (len=2, tl=0)
@10099df28 09 CHARSXP g0c1 [MARK,gp=0x21] "a"
@10095e518 09 CHARSXP g0c1 [MARK,gp=0x21] "b"
TAG: @100859e60 01 SYMSXP g0c0 [MARK,NAM(2),gp=0x4000] "row.names"
@102a6f868 13 INTSXP g0c1 [NAM(2)] (len=2, tl=1) -2147483648,-3
TAG: @10083c948 01 SYMSXP g0c0 [MARK,gp=0x4000] "class"
@102a6f838 16 STRSXP g0c1 [NAM(2)] (len=1, tl=1)
@1008c6d48 09 CHARSXP g0c2 [MARK,gp=0x21,ATT] "data.frame"
In general the representation of each object follows the format:
@<address> <type-nr> <type-name> <gc-info> [<flags>] ...
For a more fine-grained control over the depth of the recursion
and the output of vectors R_inspect3 takes additional two character()
parameters: maximum depth and the maximal number of elements that will
be printed for scalar vectors. The defaults in R_inspect are
currently -1 (no limit) and 5 respectively.
Next: Interface functions .C and .Fortran, Previous: System and foreign language interfaces, Up: System and foreign language interfaces [Contents][Index]
Access to operating system functions is via the R functions
system and system2.
The details will differ by platform (see the on-line help), and about
all that can safely be assumed is that the first argument will be a
string command that will be passed for execution (not necessarily
by a shell) and the second argument to system will be
internal which if true will collect the output of the command
into an R character vector.
On POSIX-compliant OSes these commands pass a command-line to a shell:
Windows is not POSIX-compliant and there is a separate function
shell to do so.
The function system.time
is available for timing. Timing on child processes is only available on
Unix-alikes, and may not be reliable there.
Next: dyn.load and dyn.unload, Previous: Operating system access, Up: System and foreign language interfaces [Contents][Index]
.C and .FortranThese two functions provide an interface to compiled code that has been
linked into R, either at build time or via dyn.load
(see dyn.load and dyn.unload). They are primarily intended for
compiled C and FORTRAN 77 code respectively, but the .C function
can be used with other languages which can generate C interfaces, for
example C++ (see Interfacing C++ code).
The first argument to each function is a character string specifying the
symbol name as known120 to C or
FORTRAN, that is the function or subroutine name. (That the symbol is
loaded can be tested by, for example, is.loaded("cg"). Use the
name you pass to .C or .Fortran rather than the translated
symbol name.)
There can be up to 65 further arguments giving R objects to be passed to compiled code. Normally these are copied before being passed in, and copied again to an R list object when the compiled code returns. If the arguments are given names, these are used as names for the components in the returned list object (but not passed to the compiled code).
The following table gives the mapping between the modes of R atomic vectors and the types of arguments to a C function or FORTRAN subroutine.
R storage mode C type FORTRAN type logicalint *INTEGERintegerint *INTEGERdoubledouble *DOUBLE PRECISIONcomplexRcomplex *DOUBLE COMPLEXcharacterchar **CHARACTER*255rawunsigned char *none
Do please note the first two. On the 64-bit Unix/Linux/macOS platforms,
long is 64-bit whereas int and INTEGER are 32-bit.
Code ported from S-PLUS (which uses long * for logical and
integer) will not work on all 64-bit platforms (although it may
appear to work on some, including Windows). Note also that if your
compiled code is a mixture of C functions and FORTRAN subprograms the
argument types must match as given in the table above.
C type Rcomplex is a structure with double members
r and i defined in the header file R_ext/Complex.h
included by R.h. (On most platforms this is stored in a way
compatible with the C99 double complex type: however, it may not
be possible to pass Rcomplex to a C99 function expecting a
double complex argument. Nor need it be compatible with a C++
complex type. Moreover, the compatibility can depend on the
optimization level set for the compiler.)
Only a single character string can be passed to or from FORTRAN, and the
success of this is compiler-dependent. Other R objects can be passed
to .C, but it is much better to use one of the other interfaces.
It is possible to pass numeric vectors of storage mode double to
C as float * or to FORTRAN as REAL by setting the
attribute Csingle, most conveniently by using the R functions
as.single, single or mode. This is intended only
to be used to aid interfacing existing C or FORTRAN code.
Logical values are sent as 0 (FALSE), 1
(TRUE) or INT_MIN = -2147483648 (NA, but only if
NAOK is true), and the compiled code should return one of these
three values. (Non-zero values other than INT_MIN are mapped to
TRUE.)
Unless formal argument NAOK is true, all the other arguments are
checked for missing values NA and for the IEEE special
values NaN, Inf and -Inf, and the presence of any
of these generates an error. If it is true, these values are passed
unchecked.
Argument PACKAGE confines the search for the symbol name to a
specific shared object (or use "base" for code compiled into
R). Its use is highly desirable, as there is no way to avoid two
package writers using the same symbol name, and such name clashes are
normally sufficient to cause R to crash. (If it is not present and
the call is from the body of a function defined in a package namespace,
the shared object loaded by the first (if any) useDynLib
directive will be used.
Note that the compiled code should not return anything except through
its arguments: C functions should be of type void and FORTRAN
subprograms should be subroutines.
To fix ideas, let us consider a very simple example which convolves two
finite sequences. (This is hard to do fast in interpreted R code, but
easy in C code.) We could do this using .C by
void convolve(double *a, int *na, double *b, int *nb, double *ab)
{
int nab = *na + *nb - 1;
for(int i = 0; i < nab; i++)
ab[i] = 0.0;
for(int i = 0; i < *na; i++)
for(int j = 0; j < *nb; j++)
ab[i + j] += a[i] * b[j];
}
called from R by
conv <- function(a, b)
.C("convolve",
as.double(a),
as.integer(length(a)),
as.double(b),
as.integer(length(b)),
ab = double(length(a) + length(b) - 1))$ab
Note that we take care to coerce all the arguments to the correct R
storage mode before calling .C; mistakes in matching the types
can lead to wrong results or hard-to-catch errors.
Special care is needed in handling character vector arguments in
C (or C++). On entry the contents of the elements are duplicated and
assigned to the elements of a char ** array, and on exit the
elements of the C array are copied to create new elements of a character
vector. This means that the contents of the character strings of the
char ** array can be changed, including to \0 to shorten
the string, but the strings cannot be lengthened. It is
possible121 to allocate a new string via
R_alloc and replace an entry in the char ** array by the
new string. However, when character vectors are used other than in a
read-only way, the .Call interface is much to be preferred.
Passing character strings to FORTRAN code needs even more care, and should be avoided where possible. Only the first element of the character vector is passed in, as a fixed-length (255) character array. Up to 255 characters are passed back to a length-one character vector. How well this works (or even if it works at all) depends on the C and FORTRAN compilers on each platform (including on their options). Often what is being passed to FORTRAN is one of a small set of possible values (a factor in R terms) which could alternatively be passed as an integer code: similarly FORTRAN code that wants to generate diagnostic messages can pass an integer code to a C or R wrapper which will convert it to a character string.
It is possible to pass some R objects other than atomic vectors via
.C, but this is only supported for historical compatibility: use
the .Call or .External interfaces for such objects. Any
C/C++ code that includes Rinternals.h should be called via
.Call or .External.
Next: Registering native routines, Previous: Interface functions .C and .Fortran, Up: System and foreign language interfaces [Contents][Index]
dyn.load and dyn.unloadCompiled code to be used with R is loaded as a shared object (Unix-alikes including macOS, see Creating shared objects for more information) or DLL (Windows).
The shared object/DLL is loaded by dyn.load and unloaded by
dyn.unload. Unloading is not normally necessary and is not safe in
general, but it is needed to allow the DLL to be re-built on some platforms,
including Windows. Unloading a DLL and then re-loading a DLL of the same name
may not work: Solaris uses the first version loaded. A DLL that registers
C finalizers, but fails to unregister them when unloaded, may cause R to crash
after unloading.
The first argument to both functions is a character string giving the path to the object. Programmers should not assume a specific file extension for the object/DLL (such as .so) but use a construction like
file.path(path1, path2, paste0("mylib", .Platform$dynlib.ext))
for platform independence. On Unix-alike systems the path supplied to
dyn.load can be an absolute path, one relative to the current
directory or, if it starts with ‘~’, relative to the user’s home
directory.
Loading is most often done automatically based on the useDynLib()
declaration in the NAMESPACE file, but may be done
explicitly via a call to library.dynam.
This has the form
library.dynam("libname", package, lib.loc)
where libname is the object/DLL name with the extension
omitted. Note that the first argument, chname, should
not be package since this will not work if the package
is installed under another name.
Under some Unix-alike systems there is a choice of how the symbols are resolved when the object is loaded, governed by th