For the examples in this vignette glue will be used as
an example. glue version 1.6.2.9000 is included in
the system files of PaRe and is thus accessible even if
these examples are ran offline.
PaRe does fetch some online resources through the
package pak. And by default online stored csv-files in the
PaRe::whiteList data.frame. If no connection can be made,
functions using these methods to reference these online resources will
return NULL.
PaRe includes a data frame which contains links to
csv-files to be used in the PaRe::checkDependencies and
PaRe::getDefaultPermittedPackages functions.
By default the data frame contains the following information.
PaRe::whiteList
#> # A tibble: 3 × 4
#>   source    link                                                 package version
#>   <chr>     <chr>                                                <chr>   <chr>  
#> 1 tidyverse https://raw.githubusercontent.com/mvankessel-EMC/De… package version
#> 2 darwin    https://raw.githubusercontent.com/mvankessel-EMC/De… package version
#> 3 hades     https://raw.githubusercontent.com/mvankessel-EMC/De… package versionThe data frame contains 4 columns:
If you wish to alter the sources in just your R-session, you can either add, remove, or replace individual rows in the whiteList data frame.
sessionWhiteList <- rbind(
  whiteList,
  list(
    source = "dummySession",
    link = "some/file.csv",
    package = "package",
    version = "version"
  )
)
sessionWhiteList
#> # A tibble: 4 × 4
#>   source       link                                              package version
#>   <chr>        <chr>                                             <chr>   <chr>  
#> 1 tidyverse    https://raw.githubusercontent.com/mvankessel-EMC… package version
#> 2 darwin       https://raw.githubusercontent.com/mvankessel-EMC… package version
#> 3 hades        https://raw.githubusercontent.com/mvankessel-EMC… package version
#> 4 dummySession some/file.csv                                     package versionIf you wish to make more permanent alterations to the
whiteList data frame, you can edit the whiteList.csv file
in the PaRe system files.
fileWhiteList <- rbind(
  read.csv(
    system.file(
      package = "PaRe",
      "whiteList.csv"
    )
  ),
  list(
    source = "dummyFile",
    link = "some/file.csv",
    package = "package",
    version = "version"
  )
)
fileWhiteList
#>      source
#> 1 tidyverse
#> 2    darwin
#> 3     hades
#> 4 dummyFile
#>                                                                                               link
#> 1 https://raw.githubusercontent.com/mvankessel-EMC/DependencyReviewerWhitelists/main/tidyverse.csv
#> 2    https://raw.githubusercontent.com/mvankessel-EMC/DependencyReviewerWhitelists/main/darwin.csv
#> 3     https://raw.githubusercontent.com/mvankessel-EMC/DependencyReviewerWhitelists/main/hades.csv
#> 4                                                                                    some/file.csv
#>   package version
#> 1 package version
#> 2 package version
#> 3 package version
#> 4 package versionBefore we start diving into the dependency usage of glue
we should first establish what our dependency white list even looks
like. We can retrieve our full list of whitelisted dependencies buy
calling the getDefaultPermittedPackages function.
getDefaultPermittedPackages takes one parameter:
TRUE by default.
Packages that listed as base packages will be included in the
white list.# Temp dir to clone repo to
tempDir <- tempdir()
pathToRepo <- file.path(tempDir, "glue")
# Clone IncidencePrevalence to temp dir
git2r::clone(
  url = "https://github.com/tidyverse/glue.git",
  local_path = pathToRepo
)
repo <- PaRe::Repository$new(path = pathToRepo)#> cloning into 'C:\Users\MVANKE~1\AppData\Local\Temp\RtmpIZfkcq/glue'...
#> Receiving objects:   1% (63/6253),   63 kb
#> Receiving objects:  11% (688/6253),  568 kb
#> Receiving objects:  21% (1314/6253), 2305 kb
#> Receiving objects:  31% (1939/6253), 2745 kb
#> Receiving objects:  41% (2564/6253), 2857 kb
#> Receiving objects:  51% (3190/6253), 3586 kb
#> Receiving objects:  61% (3815/6253), 3810 kb
#> Receiving objects:  71% (4440/6253), 3922 kb
#> Receiving objects:  81% (5065/6253), 4082 kb
#> Receiving objects:  91% (5691/6253), 4474 kb
#> Receiving objects: 100% (6253/6253), 12646 kb, done.Now that we know what is included in the white list, we can make our
first step into reviewing glue, which is to ensure the
(suggested) dependencies glue uses are in our white
list.
→ The following are not permitted: covr, microbenchmark, R.utils, rprintf, testthat                  
→ Please open an issue here: https://github.com/mvankessel-EMC/DependencyReviewerWhitelists/issues| package | version | 
|---|---|
| covr | * | 
| microbenchmark | * | 
| R.utils | * | 
| rprintf | * | 
| testthat | 3.0.0 | 
Not all suggested dependencies are approved. The function prints a message and returns a data frame, containing all packages that are not listed in our white list.
checkDependecies takes two parameters:
glue depends on (suggested) dependencies. These dependencies in turn import other dependencies, and so on. We can investigate how these recursive dependencies depend on one another, by investigating it as a graph.
We can compute several statistics about our dependency graph
data.frame(
  countVertices = length(igraph::V(graphData)),
  countEdges = length(igraph::E(graphData)),
  meanDegree = round(mean(igraph::degree(graphData)), 2),
  meanDistance = round(mean(igraph::distances(graphData)), 2)
)glue depends on.glue and all other recursive dependencies.We can then plot the graph.
PaRe allows you to get insight in the function usage in
a package.
#> # A tibble: 367 × 4
#>    file     line pkg     fun         
#>    <chr>   <int> <chr>   <chr>       
#>  1 color.R    59 base    function    
#>  2 color.R    59 base    parent.frame
#>  3 color.R    60 unknown glue        
#>  4 color.R    65 base    function    
#>  5 color.R    65 base    parent.frame
#>  6 color.R    66 unknown glue_data   
#>  7 color.R    69 base    function    
#>  8 color.R    70 base    function    
#>  9 color.R    70 base    parse       
#> 10 color.R    70 base    tryCatch    
#> # ℹ 357 more rows#>                name lineStart lineEnd nArgs cycloComp fileName
#> 1          glue_col        59      61     3         1  color.R
#> 2     glue_data_col        65      67     4         1  color.R
#> 3 color_transformer        69      99     2         8  color.R
#> 4             intro        67      69     3         1   glue.R
#> 5         glue_data        92     200     6        21   glue.R
#> 6                 f       150     176     1         3   glue.RBesides the location of each function being displayed, the number of arguments for each function, and the cyclometic complexity is also included in the result.
#> Loading required package: DiagrammeRsvg
#> Loading required package: magick
#> Linking to ImageMagick 6.9.12.98
#> Enabled features: cairo, freetype, fftw, ghostscript, heic, lcms, pango, raw, rsvg, webp
#> Disabled features: fontconfig, x11#> # A tibble: 1 × 6
#>       R   cpp     o     h  java   sql
#>   <int> <int> <int> <int> <int> <int>
#> 1   984     0     0     0     0     0glue contains 1056 lines of R-code.
#> Warning: Returning more (or less) than 1 row per `summarise()` group was deprecated in
#> dplyr 1.1.0.
#> ℹ Please use `reframe()` instead.
#> ℹ When switching from `summarise()` to `reframe()`, remember that `reframe()`
#>   always returns an ungrouped data frame and adjust accordingly.
#> ℹ The deprecated feature was likely used in the PaRe package.
#>   Please report the issue at <https://github.com/darwin-eu-dev/PaRe/issues>.
#> This warning is displayed once every 8 hours.
#> Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
#> generated.
#> # A tibble: 2 × 2
#>   type      pct
#>   <chr>   <dbl>
#> 1 style   11.9 
#> 2 warning  3.46#>   filename line_number column_number    type
#> 1  color.R           8            81   style
#> 2  color.R          14            81   style
#> 3  color.R          59             1   style
#> 4  color.R          59            81   style
#> 5  color.R          60             3 warning
#> 6  color.R          60            81   style
#>                                                                    message
#> 1 Lines should not be more than 80 characters. This line is 93 characters.
#> 2 Lines should not be more than 80 characters. This line is 81 characters.
#> 3                 Variable and function name style should match camelCase.
#> 4 Lines should not be more than 80 characters. This line is 82 characters.
#> 5                         no visible global function definition for 'glue'
#> 6 Lines should not be more than 80 characters. This line is 94 characters.
#>                                                                                             line
#> 1  #' Using the following syntax will apply the function [crayon::blue()] to the text 'foo bar'.
#> 2              #' If you want an expression to be evaluated, simply place that in a normal brace
#> 3             glue_col <- function(..., .envir = parent.frame(), .na = "NA", .literal = FALSE) {
#> 4             glue_col <- function(..., .envir = parent.frame(), .na = "NA", .literal = FALSE) {
#> 5   glue(..., .envir = .envir, .na = .na, .literal = .literal, .transformer = color_transformer)
#> 6   glue(..., .envir = .envir, .na = .na, .literal = .literal, .transformer = color_transformer)
#>                linter
#> 1  line_length_linter
#> 2  line_length_linter
#> 3  object_name_linter
#> 4  line_length_linter
#> 5 object_usage_linter
#> 6  line_length_linter