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The main aim of the pander R package is to provide a minimal
and easy tool for rendering R objects into Pandoc’s
markdown. The package is also capable of
exporting/converting complex Pandoc documents (reports) in various ways. Regarding the
difference between pander
and other packages for exporting
R objects to different file formats, please refer to this section.
Current build and test coverage status: .
The stable version can be installed
easily in the R
console like any other package:
install.packages('pander')
On the other hand, I welcome everyone to use the most recent version
of the package with quick-fixes, new features and probably new bugs.
It’s currently hosted on GitHub. To get the latest
development version from GitHub of the
devtools
package from CRAN:
::install_github('Rapporter/pander') devtools
Few cool packages from CRAN are needed for installing and/or using
pander
:
And there are also a few optional suggested or supported R packages, such as:
evals
,vignette('knitr', package = 'pander')
or available online
here.pander heavily builds on Pandoc, which should be pre-installed before trying to convert your reports to different formats. Although main functions work without Pandoc, e.g. you can transform R objects into markdown or generate a markdown formatted report via Pandoc.brew or the custom reference class, but installing that great piece of software is suggested if you want to convert markdown to PDF/docx/HTML or other formats.
Starting v0.98.932 RStudio
comes with a bundled Pandoc
binary, so one can save the
tedious steps of installing Pandoc.
If you do not have RStudio installed, please refer to the installation
process of Pandoc, which is quite straightforward on most-popular
operating systems: download and run the binary (a few megabytes), and
get a full-blown document converter in a few seconds/minutes. On some
Linux distributions, it might be a bit more complicated (as repositories
tend to provide out-dated versions of Pandoc, so you would need
cabal-install
to install
from sources). Please do not forget to restart your R session to
update your PATH
after installation!
The package contains numerous helper functions, which render user
specified inputs in Pandoc’s markdown format or apply some extra
formatting on it. All Pandoc-related functions’ names are starting with
pandoc
. For example pandoc.table
is used for
rendering tables in markdown. For a technical documentation, see the
HTML help files of the package at Rdocumentation.
All pandoc
functions generally prints to console and do
not return anything by default. If you want the opposite, to get
markdown in a string, call each function ending in .return
,
for example pandoc.table.return
. For more details, please
see the official documentation in e.g. ?pandoc.strong
.
The full list of currently available primitive Pandoc-related functions are:
For example there is a helper function rendering R lists into markdown:
> l <- list(
+ "First list element",
+ paste0(1:5, '. subelement'),
+ "Second element",
+ list('F', 'B', 'I', c('phone', 'pad', 'talics')))
> pandoc.list(l, 'roman')
Which command produces the following output:
I. First list element
I. 1. subelement
II. 2. subelement
III. 3. subelement
IV. 4. subelement
V. 5. subelement
II. Second element
I. F
II. B
III. I
I. phone
II. pad
III. talics
<!-- end of list -->
One of the most popular feature in pander is
pandoc.table
, rendering most tabular R objects into
markdown tables with various options and settings (e.g. style, caption, cell highlighting, cell alignment, width). This section aims to provide
quick introduction to most common options, but for more
usage/implementation details and examples, please refer to specialized
vignette, which can be accessed by vignette('pandoc_table')
or available online here.
Let’s start with a small example:
> pandoc.table(mtcars[1:3, 1:4])
Which command produces the following output by default:
-------------------------------------------
mpg cyl disp hp
------------------- ----- ----- ------ ----
**Mazda RX4** 21 6 160 110
**Mazda RX4 Wag** 21 6 160 110
**Datsun 710** 22.8 4 108 93
-------------------------------------------
Please note that all below features are also supported by the more
concise pander
generic S3
method!
All four Pandoc
formats are supported by pander. From those
(multiline, simple, grid,
pipe/rmarkdown), I’d suggest sticking to the default
multiline
format with the most features, except when using
rmarkdown
v1.0 or jupyter notebook, where
multiline
is not supported (for this end the default table
format is rmarkdown
when pander
is called
inside of a jupyter notebook). Please see a few examples below:
The default style is the multiline
format (except for calling pander
inside of a of a
jupyter notebook) as most features (e.g. multi-line cells and alignment)
are supported:
> m <- mtcars[1:2, 1:3]
> pandoc.table(m)
--------------------------------------
mpg cyl disp
------------------- ----- ----- ------
**Mazda RX4** 21 6 160
**Mazda RX4 Wag** 21 6 160
--------------------------------------
While simple
tables are much more compact, but do not support line breaks in
cells:
> pandoc.table(m, style = "simple")
mpg cyl disp
------------------- ----- ----- ------
**Mazda RX4** 21 6 160
**Mazda RX4 Wag** 21 6 160
My personal favorite, the grid
format is really handy for emacs users and it
does support line breaks inside of cells, but cell alignment is not
possible in most parsers:
> pandoc.table(m, style = "grid")
+---------------------+-------+-------+--------+
| | mpg | cyl | disp |
+=====================+=======+=======+========+
| **Mazda RX4** | 21 | 6 | 160 |
+---------------------+-------+-------+--------+
| **Mazda RX4 Wag** | 21 | 6 | 160 |
+---------------------+-------+-------+--------+
And the so called rmarkdown
or pipe
table format is often used directly with knitr
, since
it was supporters by the first versions of the markdown
package:
> pandoc.table(m, style = "rmarkdown")
| | mpg | cyl | disp |
|:-------------------:|:-----:|:-----:|:------:|
| **Mazda RX4** | 21 | 6 | 160 |
| **Mazda RX4 Wag** | 21 | 6 | 160 |
But once again, you should simply stick to the default multiline table format in most cases.
Otherwise, it’s wise to update the default table format via panderOptions
.
It’s really easy to add a caption to a table:
> pandoc.table(m, style = "grid", caption = "Hello caption!")
+---------------------+-------+-------+--------+
| | mpg | cyl | disp |
+=====================+=======+=======+========+
| **Mazda RX4** | 21 | 6 | 160 |
+---------------------+-------+-------+--------+
| **Mazda RX4 Wag** | 21 | 6 | 160 |
+---------------------+-------+-------+--------+
Table: Hello caption!
For more convenient and flexible usage, you might be interested in
the special set.caption
helper function. Call the function
at any time, and the next table or plot will catch up the provided
caption:
> set.caption("Hello caption!")
> pandoc.table(m)
--------------------------------------
mpg cyl disp
------------------- ----- ----- ------
**Mazda RX4** 21 6 160
**Mazda RX4 Wag** 21 6 160
--------------------------------------
Table: Hello caption!
Unless permanent
option is set for TRUE
(by
default), caption will be set only for next table. To disable
permanently set caption, just call set.caption(NULL)
or
call set.caption
with permanent
parameter
being set to FALSE
.
One of the fanciest features in pander is the ease of highlighting rows, columns or any cells in a table. This is a real markdown feature without custom HTML or LaTeX-only tweaks, so all HTML/PDF/MS Word/OpenOffice etc. formats are supported.
This can be achieved by calling pandoc.table
directly
and passing any (or more) of the following arguments or
calling the R function with the same names before rendering a table with
either the pander
generic
S3 method or via pandoc.table
:
The emphasize.italics
helpers would turn the affected
cells to italic, emphasize.strong
would apply a
bold style to the cell and
emphasize.verbatim
would apply a verbatim
style to the cell. A cell can be also italic,
bold and verbatim
at the same time.
Those functions and arguments ending in rows
or
cols
take a vector (like which columns or rows to emphasize
in a table), while the cells
argument take either a vector
(for one dimensional “tables”) or an array-like data structure with two
columns holding row and column indexes of cells to be emphasized – just
like what which(..., arr.ind = TRUE)
returns. A
quick-example:
> t <- mtcars[1:3, 1:5]
> emphasize.italics.cols(1)
> emphasize.italics.rows(1)
> emphasize.strong.cells(which(t > 20, arr.ind = TRUE))
> pandoc.table(t)
---------------------------------------------------------------
mpg cyl disp hp drat
------------------- ---------- ----- --------- --------- ------
**Mazda RX4** ***21*** *6* ***160*** ***110*** *3.9*
**Mazda RX4 Wag** ***21*** 6 **160** **110** 3.9
**Datsun 710** ***22.8*** 4 **108** **93** 3.85
---------------------------------------------------------------
For more examples, please see our “Highlight cells in markdown tables” blog post.
You can specify the alignment of the cells (left, right or
center/centre) in a table directly by setting the justify
parameter:
> pandoc.table(head(iris[,1:3], 2), justify = c('right', 'center', 'left'))
-------------------------------------------
Sepal.Length Sepal.Width Petal.Length
-------------- ------------- --------------
5.1 3.5 1.4
4.9 3 1.4
-------------------------------------------
Or pre-define the alignment for (all future)
pandoc.table
or the pander
S3 generic method by a helper
function:
> set.alignment('left', row.names = 'right')
> pandoc.table(mtcars[1:2, 1:5])
--------------------------------------------------
mpg cyl disp hp drat
------------------- ----- ----- ------ ---- ------
**Mazda RX4** 21 6 160 110 3.9
**Mazda RX4 Wag** 21 6 160 110 3.9
--------------------------------------------------
Just like with captions, you can also specify
the permanent
option to be TRUE
to update the
default cell alignment for all future tables. And beside using
set.alignment
helper function or passing parameters
directly to pandoc.table
, you may also set the default
alignment styles with panderOptions
.
What’s even more fun, you can specify a function that takes the R object as its argument to compute some unique alignment for your table based on e.g. column values or variable types:
> panderOptions('table.alignment.default',
+ function(df)
+ ifelse(sapply(df, mean) > 2, 'left', 'right'))
> pandoc.table(head(iris[,1:3], 2))
-------------------------------------------
Sepal.Length Sepal.Width Petal.Length
-------------- ------------- --------------
5.1 3.5 1.4
4.9 3 1.4
-------------------------------------------
pandoc.table
can also deal with the problem of really
wide tables. Ever had an issue in LaTeX or MS Word when
tried to print a correlation matrix of 40 variables? Not a problem any
more as you can split up the table with auto-added captions. The
split.table
option defaults to 80 characters:
> pandoc.table(mtcars[1:2, ], style = "grid", caption = "Hello caption!")
+---------------------+-------+-------+--------+------+--------+-------+
| | mpg | cyl | disp | hp | drat | wt |
+=====================+=======+=======+========+======+========+=======+
| **Mazda RX4** | 21 | 6 | 160 | 110 | 3.9 | 2.62 |
+---------------------+-------+-------+--------+------+--------+-------+
| **Mazda RX4 Wag** | 21 | 6 | 160 | 110 | 3.9 | 2.875 |
+---------------------+-------+-------+--------+------+--------+-------+
Table: Hello caption! (continued below)
+---------------------+--------+------+------+--------+--------+
| | qsec | vs | am | gear | carb |
+=====================+========+======+======+========+========+
| **Mazda RX4** | 16.46 | 0 | 1 | 4 | 4 |
+---------------------+--------+------+------+--------+--------+
| **Mazda RX4 Wag** | 17.02 | 0 | 1 | 4 | 4 |
+---------------------+--------+------+------+--------+--------+
And too wide cells can also be split by line breaks. The maximum
number of characters in a cell is specified by split.cells
parameter (default to 30), can be a single value, vector (values for
each column separately) and relative vector (percentages of
split.tables
parameter):
> df <- data.frame(a = 'Lorem ipsum', b = 'dolor sit', c = 'amet')
> pandoc.table(df, split.cells = 5)
----------------
a b c
----- ----- ----
Lorem dolor amet
ipsum sit
----------------
> pandoc.table(df, split.cells = c(5, 20, 5))
--------------------
a b c
----- --------- ----
Lorem dolor sit amet
ipsum
--------------------
> pandoc.table(df, split.cells = c("80%", "10%", "10%"))
----------------------
a b c
----------- ----- ----
Lorem ipsum dolor amet
sit
----------------------
If the sylly
package is installed,
pandoc.table
can even split the cells with hyphening
support:
> pandoc.table(data.frame(baz = 'foobar'), use.hyphening = TRUE, split.cells = 3)
-----
baz
-----
foo-
bar
-----
Funtionality described in other sections is most notable, but
pander/pandoc.table
also has smaller nifty features that
are worth mentioning:
plain.ascii
- allows to have the output without
markdown
markup:> pandoc.table(mtcars[1:3, 1:4])
-------------------------------------------
mpg cyl disp hp
------------------- ----- ----- ------ ----
**Mazda RX4** 21 6 160 110
**Mazda RX4 Wag** 21 6 160 110
**Datsun 710** 22.8 4 108 93
-------------------------------------------
> pandoc.table(mtcars[1:3, 1:4], plain.ascii = TRUE)
-------------------------------------------
mpg cyl disp hp
------------------- ----- ----- ------ ----
Mazda RX4 21 6 160 110
Mazda RX4 Wag 21 6 160 110
Datsun 710 22.8 4 108 93
-------------------------------------------
missing
- set a string to replace missing values:> m <- mtcars[1:3, 1:5]
> m$mpg <- NA
> pandoc.table(m, missing = '?')
--------------------------------------------------
mpg cyl disp hp drat
------------------- ----- ----- ------ ---- ------
**Mazda RX4** ? 6 160 110 3.9
**Mazda RX4 Wag** ? 6 160 110 3.9
**Datsun 710** ? 4 108 93 3.85
--------------------------------------------------
keep.line.breaks
- allows to preserve line breaks
inside cells. Not that by default pandoc.table
automatically omits all line breaks found in each table cell to be able
to apply the table.split
functionality.> m <- data.frame(a="foo\nbar", b="pander")
> pandoc.table(m)
--------------
a b
------- ------
foo bar pander
--------------
> pandoc.table(m, keep.line.breaks = TRUE)
----------
a b
--- ------
foo pander
bar
----------
To see all possible options, please check ?pandoc.table
And please note, that all above mentioned features are also supported
by the pander
generic S3
method and defaults can be updated via panderOptions
for permanent
settings.
pander
or pandoc
(call as you wish) can
deal with a bunch of R object types as being a pandocized
S3
generic method with a variety of already supported
classes:
> methods(pander)
[1] pander.anova* pander.aov* pander.aovlist* pander.Arima* pander.call*
[6] pander.cast_df* pander.character* pander.clogit* pander.coxph* pander.cph*
[11] pander.CrossTable* pander.data.frame* pander.Date* pander.default* pander.density*
[16] pander.describe* pander.evals* pander.factor* pander.formula* pander.ftable*
[21] pander.function* pander.glm* pander.Glm* pander.gtable* pander.htest*
[26] pander.image* pander.irts* pander.list* pander.lm* pander.lme*
[31] pander.logical* pander.lrm* pander.manova* pander.matrix* pander.microbenchmark*
[36] pander.mtable* pander.name* pander.nls* pander.NULL* pander.numeric*
[41] pander.ols* pander.orm* pander.polr* pander.POSIXct* pander.POSIXlt*
[46] pander.prcomp* pander.randomForest* pander.rapport* pander.rlm* pander.sessionInfo*
[51] pander.smooth.spline* pander.stat.table* pander.summary.aov* pander.summary.aovlist* pander.summary.glm*
[56] pander.summary.lm* pander.summary.lme* pander.summary.manova* pander.summary.nls* pander.summary.polr*
[61] pander.summary.prcomp* pander.summary.rms* pander.summary.survreg* pander.summary.table* pander.survdiff*
[66] pander.survfit* pander.survreg* pander.table* pander.tabular* pander.ts*
[71] pander.zoo*
If you think that pander lacks support for any other R class(es), please feel free to open a ticket suggesting a new feature or submit pull request and we will be happy to extend the package.
Besides the most basic R object types (vectors, matrices, tables or data frames), list-support might be interesting for you:
> pander(list(a = 1, b = 2, c = table(mtcars$am), x = list(myname = 1, 2), 56))
A nested list can be seen above with a table and all (optional) list
names. As a matter of fact, pander.list
is the default
method of pander
too, when you call it on an unsupported R
object class:
> x <- chisq.test(table(mtcars$am, mtcars$gear))
> class(x) <- "I've never heard of!"
> pander(x)
**WARNING**^[Chi-squared approximation may be incorrect]
* **statistic**:
-----------
X-squared
-----------
20.94
-----------
* **parameter**:
----
df
----
2
----
* **p.value**: _2.831e-05_
* **method**: Pearson's Chi-squared test
* **data.name**: table(mtcars$am, mtcars$gear)
* **observed**:
-------------------
3 4 5
------- --- --- ---
**0** 15 4 0
**1** 0 8 5
-------------------
* **expected**:
-------------------------
3 4 5
------- ----- ----- -----
**0** 8.906 7.125 2.969
**1** 6.094 4.875 2.031
-------------------------
* **residuals**:
----------------------------
3 4 5
------- ------ ------ ------
**0** 2.042 -1.171 -1.723
**1** -2.469 1.415 2.083
----------------------------
* **stdres**:
----------------------------
3 4 5
------- ------ ------ ------
**0** 4.395 -2.323 -2.943
**1** -4.395 2.323 2.943
----------------------------
<!-- end of list -->
So pander
showed a not known class in an (almost)
user-friendly way. And we got some warnings too styled with Pandoc
footnote! If that document is exported to
e.g. HTML
or pdf
, then the error/warning
message could be found on the bottom of the page with a link.
Note: there were two warnings in the above call - both captured
and returned! Well, this is the feature of Pandoc.brew
, see
below.
But the output of different statistical methods are tried to be prettyfied. Some the above call normally returns like:
> pander(chisq.test(table(mtcars$am, mtcars$gear)))
-------------------------------------
Test statistic df P value
---------------- ---- ---------------
20.94 2 2.831e-05 * * *
-------------------------------------
Table: Pearson's Chi-squared test: `table(mtcars$am, mtcars$gear)`
**WARNING**^[Chi-squared approximation may be incorrect]
A few other examples on the supported R classes:
> pander(t.test(extra ~ group, data = sleep))
---------------------------------------------------------
Test statistic df P value Alternative hypothesis
---------------- ----- --------- ------------------------
-1.861 17.78 0.07939 two.sided
---------------------------------------------------------
Table: Welch Two Sample t-test: `extra` by `group`
> ## Dobson (1990) Page 93: Randomized Controlled Trial (examples from: ?glm)
> counts <- c(18, 17, 15, 20, 10, 20, 25, 13, 12)
> outcome <- gl(3, 1, 9)
> treatment <- gl(3, 3)
> m <- glm(counts ~ outcome + treatment, family = poisson())
> pander(m)
--------------------------------------------------------------
Estimate Std. Error z value Pr(>|z|)
----------------- ---------- ------------ --------- ----------
**(Intercept)** 3.045 0.1709 17.81 5.427e-71
**outcome2** -0.4543 0.2022 -2.247 0.02465
**outcome3** -0.293 0.1927 -1.52 0.1285
**treatment2** 1.338e-15 0.2 6.69e-15 1
**treatment3** 1.421e-15 0.2 7.105e-15 1
--------------------------------------------------------------
Table: Fitting generalized (poisson/log) linear model: counts ~ outcome + treatment
> pander(anova(m))
--------------------------------------------------------
Df Deviance Resid. Df Resid. Dev
--------------- ---- ---------- ----------- ------------
**NULL** NA NA 8 10.58
**outcome** 2 5.452 6 5.129
**treatment** 2 2.665e-15 4 5.129
--------------------------------------------------------
Table: Analysis of Deviance Table
> pander(aov(m))
-----------------------------------------------------------
Df Sum Sq Mean Sq F value Pr(>F)
--------------- ---- --------- --------- --------- --------
**outcome** 2 92.67 46.33 2.224 0.2242
**treatment** 2 8.382e-31 4.191e-31 2.012e-32 1
**Residuals** 4 83.33 20.83 NA NA
-----------------------------------------------------------
Table: Analysis of Variance Model
> pander(prcomp(USArrests))
-------------------------------------------------
PC1 PC2 PC3 PC4
-------------- ------- -------- -------- --------
**Murder** 0.0417 -0.04482 0.07989 -0.9949
**Assault** 0.9952 -0.05876 -0.06757 0.03894
**UrbanPop** 0.04634 0.9769 -0.2005 -0.05817
**Rape** 0.07516 0.2007 0.9741 0.07233
-------------------------------------------------
Table: Principal Components Analysis
> pander(density(mtcars$hp))
--------------------------------------------
Coordinates Density values
------------- ------------- ----------------
**Min.** -32.12 5e-06
**1st Qu.** 80.69 0.0004068
**Median** 193.5 0.001665
**Mean** 193.5 0.002214
**3rd Qu.** 306.3 0.00409
**Max.** 419.1 0.006051
--------------------------------------------
Table: Kernel density of *mtcars$hp* (bandwidth: 28.04104)
> ## Don't like scientific notation?
> panderOptions('round', 2)
> pander(density(mtcars$hp))
--------------------------------------------
Coordinates Density values
------------- ------------- ----------------
**Min.** -32.12 0
**1st Qu.** 80.69 0
**Median** 193.5 0
**Mean** 193.5 0
**3rd Qu.** 306.3 0
**Max.** 419.1 0.01
--------------------------------------------
Table: Kernel density of *mtcars$hp* (bandwidth: 28.04104)
And of course tables are formatted (e.g. auto add of line breaks,
splitting up tables, hyphenation support or markdown format) based on
the user specified panderOptions
.
The package is also capable of creating complex Pandoc documents (reports) from R objects in multiple ways:
create somehow a markdown text file (e.g. with brew
,
knitr
or any scripts of yours, maybe with
Pandoc.brew
- see just below)
and transform that to other formats (like HTML, odt, PDF, docx etc.)
with Pandoc.convert
- similarly to pandoc
function
in knitr. Basically this is a wrapper around a Pandoc call, which has not
much to do with R actually.
users might write some reports with literate programming (similar
to knitr
) in a forked version of brew syntax
resulting. This means that the user can include R code chunks in a
document, and brewing that results in a pretty Pandoc’s markdown
document and also in a bunch of other formats (like
HTML, odt, PDF, docx etc.). The great advantage of this function is that you do not have to transform
your R objects to markdown manually, it’s all handled automagically.
Example: this README.md
is cooked with Pandoc.brew
based on inst/README.brew
and also exported to HTML. Details can be
found below or head directly to examples.
Pandoc
reference class object.
Details can be found below.The brew
package, which is a templating framework for report generation, has not
been updated on CRAN since 2011, but it’s still used in bunch of R
projects based on its simple design and useful features in literate
programming. For a quick overview, please see the following documents if
you are not familiar with brew
:
In short: a brew
document is a simple
text file with some special tags. Pandoc.brew
uses only two
of them (as building on a personalized version of Jeff’s really great
brew
function):
<% ... %>
stand for running inline R commands as
usual,<%= ... %>
does pretty much the same but applies
pander
to the returning R object (instead of
cat
like the original brew
function does). So
putting there any R object, it would return in a nice Pandoc’s markdown
format with all possible error/warning messages etc.This latter tries to be smart in some ways:
png
file and pander
method would result in a
Pandoc markdown formatted image link. This means that the image would be
rendered/shown/included in the exported document.brew
ing a report would not result in a coffee break.Besides this, the custom brew
function can do more and
also less compared to the original brew
package. First of all, the internal caching mechanism of
brew
has been removed and rewritten for some extra profits
besides improved caching.
For example now multiple R expressions can be passed between the
<%= ... %>
tags, and not only the text results, but
the evaluated R objects are also (invisibly) returned
in a structured list. This can be really useful while post-processing
the results of brew
. Quick example:
> str(Pandoc.brew(text ='
+ Pi equals to `<%= pi %>`.
+ And here are some random data:
+ `<%= runif(10) %>`
+ '))
Pi equals to _3.142_.
And here are some random data:
_0.6631_, _0.849_, _0.06986_, _0.3343_, _0.5209_, _0.3471_, _0.866_, _0.05548_, _0.8933_ and _0.2121_
List of 2
$ :List of 4
..$ type : chr "text"
..$ text :List of 2
.. ..$ raw : chr "Pi equals to _3.142_.\nAnd here are some random data:\n"
.. ..$ eval: chr "Pi equals to _3.142_.\nAnd here are some random data:\n"
..$ chunks:List of 2
.. ..$ raw : chr "_3.142_"
.. ..$ eval: chr "_3.142_"
..$ msg :List of 3
.. ..$ messages: NULL
.. ..$ warnings: NULL
.. ..$ errors : NULL
$ :List of 2
..$ type : chr "block"
..$ robject:List of 6
.. ..$ src : chr "runif(10)"
.. ..$ result: num [1:10] 0.6631 0.849 0.0699 0.3343 0.5209 ...
.. ..$ output: chr "_0.6631_, _0.849_, _0.06986_, _0.3343_, _0.5209_, _0.3471_, _0.866_, _0.05548_, _0.8933_ and _0.2121_"
.. ..$ type : chr "numeric"
.. ..$ msg :List of 3
.. .. ..$ messages: NULL
.. .. ..$ warnings: NULL
.. .. ..$ errors : NULL
.. ..$ stdout: NULL
.. ..- attr(*, "class")= chr "evals"
This document was generated by Pandoc.brew
based on inst/README.brew
so the above examples were generated automatically by running:
Pandoc.brew(system.file('README.brew', package = 'pander'))
The output is set to stdout
by default, which means that
the resulting text is written to the R console. But setting the
output
to a text file and running Pandoc on that to create
a HTML
, odt
, docx
or other
document in one go is also possible. To export a brewed file to other
then Pandoc’s markdown, please use the convert
parameter.
For example:
<- paste('# Header',
text '',
'What a lovely list:\n<%= as.list(runif(10)) %>',
'A wide table:\n<%= mtcars[1:3, ] %>',
'And a nice chart:\n\n<%= plot(1:10) %>',
sep = '\n')
Pandoc.brew(text = text, output = tempfile(), convert = 'html')
Pandoc.brew(text = text, output = tempfile(), convert = 'pdf')
So to brew this README with all R chunks automatically converted to html, please run:
Pandoc.brew(system.file('README.brew', package='pander'), output = tempfile(), convert = 'html')
The package bundles some examples for Pandoc.brew
to let
you check its features pretty fast. These are:
To brew
these examples on your machine, try to run the
followings commands:
Pandoc.brew(system.file('examples/minimal.brew', package='pander'))
Pandoc.brew(system.file('examples/minimal.brew', package='pander'), output = tempfile(), convert = 'html')
Pandoc.brew(system.file('examples/short-code-long-report.brew', package='pander'))
Pandoc.brew(system.file('examples/short-code-long-report.brew', package='pander'), output = tempfile(), convert = 'html')
Pandoc.brew(system.file('examples/graphs.brew', package='pander'))
Pandoc.brew(system.file('examples/graphs.brew', package='pander'), output = tempfile(), convert = 'html')
For easier access, I have uploaded some exported documents of the above examples as well:
Please check out pdf
, docx
,
odt
and other formats by changing the above
convert
option on your machine, and do not forget to give some
feedback!
pander
package has a special reference class called
Pandoc
which could collect some blocks in a live R session
and export the whole document to Pandoc/PDF/HTML etc. Without any
serious further explanations, please check out the below
(self-commenting) example:
## Initialize a new Pandoc object
<- Pandoc$new()
myReport
## Add author, title and date of document
$author <- 'Gergely Daróczi'
myReport$title <- 'Demo'
myReport
## Or it could be done while initializing
<- Pandoc$new('Gergely Daróczi', 'Demo')
myReport
## Add some free text
$add.paragraph('Hello there, this is a really short tutorial!')
myReport
## Add maybe a header for later stuff
$add.paragraph('# Showing some raw R objects below')
myReport
## Adding a short matrix
$add(matrix(5,5,5))
myReport
## Or a table with even
$add.paragraph('Hello table:')
myReport$add(table(mtcars$am, mtcars$gear))
myReport
## Or a "large" data frame which barely fits on a page
$add(mtcars)
myReport
## And a simple linear model with Anova tables
<- with(lm(mpg ~ hp + wt), data = mtcars)
ml $add(ml)
myReport$add(anova(ml))
myReport$add(aov(ml))
myReport
## And do some principal component analysis at last
$add(prcomp(USArrests))
myReport
## Sorry, I did not show how Pandoc deals with plots:
$add(plot(1:10))
myReport
## Want to see the report? Just print it:
myReport
## Exporting to PDF (default)
$export()
myReport
## Or to docx in tempdir():
$format <- 'docx'
myReport$export(tempfile())
myReport
## You do not want to see the generated report after generation?
$export(open = FALSE) myReport
When working on the rapport package, I
really needed some nifty R function that can evaluate R expression along
with capturing errors and warnings. Unfortunately the
evaluate
package had only limited features at that time, as
it could not return the raw R object, but only the standard output with
messages. So I wrote my own function, and soon some further feature
requests arose, like identifying if an R expression results in a plot
etc. This section aims to give a quick introduction to the functionality
of evals
, but for more usage/implementation details, please
refer to specialized vignette, which can be accessed by
vignette('evals', package='pander')
or available online here.
But probably it’s easier to explain what evals
can do
with a simple example:
> evals('1:10')
[[1]]
$src
[1] "1:10"
$result
[1] 1 2 3 4 5 6 7 8 9 10
$output
[1] " [1] 1 2 3 4 5 6 7 8 9 10"
$type
[1] "integer"
$msg
$msg$messages
NULL
$msg$warnings
NULL
$msg$errors
NULL
$stdout
NULL
attr(,"class")
[1] "evals"
So evals
can evaluate a character vector of R
expressions, and it returns a list of captured stuff while running
those:
src
holds the R expression,result
contains the raw R object as is,output
represents how the R object is printed to the
standard output,type
is the class
of the returned R
object,msg
is a list of possible messages captured while
running the R expression andstdout
contains if anything was written to the standard
output.Besides capturing this nifty list of important circumstances,
evals
can automatically identify if an R expression is
returning anything to a graphical device, and can save the resulting
image in a variety of file formats along with some extra options, like
applying a custom theme on base, lattice
or
ggplot2
plots:
> evals('hist(mtcars$hp)')[[1]]$result
![](plots/plot-1.png)
So instead of a captured R object (which would be NULL
in this situation by the way), we get the path of the image where the
plot was saved:
Well, this is not a standard histogram usually returned by the
hist
function, right? As mentioned before,
evals
have some extra features like applying the user
defined theme on various plots automatically. Please see the
graphs.brew
example above for
further details, or check the related global
options. If you do not like this feature, simply add
evalsOptions('graph.unify', FALSE)
to your
.Rprofile
.
Further features are described in the technical
docs, and now I’ll only give a brief introduction to another
important feature of evals
.
As pander::evals
is using a custom caching
algorithm in the means of evaluating R expressions, it might be
worthwhile to give a short summary of what is going on in the background
when you are running e.g. Pandoc.brew
, the “live report generation” engine or
evals
directly:
parse
d to single R
expressions.name
)
separately to a list
. This list describes the unique
structure and the content of the passed R expressions. This has
some really great benefits (see below).pander
’s local environments. This is
useful if you are using large data frames, just imagine: the caching
algorithm would have to compute the hash for the same data frame each
time it’s touched! This way the hash is recomputed only if the R object
with the given name is changed.SHA-1
hash is computed, which is unique and there is no real risk of
collision.evals
can find the cached
results in an environment of pander
’s namespace (if
cache.mode
set to enviroment
- see below) or in a file named to the computed
hash (if cache.mode
set to disk
), then it is
returned on the spot. The objects modified/created by the cached
code are also updated.cache
is active and if the
proc.time()
of the evaluation is higher then it is defined
in cache.time
- see details in evals’ options).As pander
does not cache based on raw sources of chunks
and there is no easy way of enabling/disabling caching on a chunk basis,
the users have to live with some great advantages and some
minor tricky situations - which latter cannot be solved
theoretically in my opinion, but I’d love to hear your
feedback.
The caching hash is computed based on the structure and content of the R commands instead of the used variable names or R expressions, so let us make some POC example to show the greatest asset:
<- mtcars$hp
x <- 1e3
y evals('sapply(rep(x, y), mean)')
It took a while, huh? :)
Let us create some custom functions and variables, which are not identical to the above call:
<- sapply
f <- rep
g <- mean
h <- mtcars$hp * 1
X <- 1000 Y
And now try to run something like:
evals('f(g(X, Y), h)')
Yes, it was returned from cache!
About the kickback:
As pander
(or rather: evals
) does not
really deal with what is written in the provided sources but rather
checks what is inside that, there might be some tricky
situations where you would expect the cache to work, but it would not.
Short example: we are computing and saving to a variable something heavy
in a chunk (please run these in a clean R session to avoid
conflicts):
evals('x <- sapply(rep(mtcars$hp, 1e3), mean)')
It is cached, just run again, you will see.
But if you would create x
in your global
environment with any value (which has nothing to do with the
special environment of the report!) and x
was not defined in the report before this call (and you
had no x
value in your global environment before), then the
content of x
would result in a new hash for the cache - so
caching would not work. E.g.:
<- 'foobar'
x evals('x <- sapply(rep(mtcars$hp, 1e3), mean)')
I really think this is a minor issue (with very special coincidences)
which cannot be addressed cleverly - but could be avoided with
some cautions (e.g. run Pandoc.brew
in a clean R
session like with Rscript
or littler
- if you are really afraid of this issue). And after all: you loose
nothing, just the cache would not work for that only line and only once
in most of the cases.
Other cases when the hash of a call will not match cached hashes:
evals('1:5')
vs. x <- 1:5;evals('x')
evals('mean(mtcars$hp)')
vs. x <- mtcars$hp;evals('mean(x)')
But the e.g. following do work from cache fine:
x <- mtcars$hp
xx <- mtcars$hp*1
evals('mean(x)')
evals('mean(xx)')
The package comes with a variety of globally adjustable options,
which have an effect on the result of your reports. You can query and
update these options with the panderOptions
function:
digits
: numeric (default: 2
) passed to
format
. Can be a vector specifying values for each column
(has to be the same length as number of columns). Values for non-numeric
columns will be disregarded.
decimal.mark
: string (default: .
)
passed to format
formula.caption.prefix
: string (default:
Formula:
) passed to pandoc.formula
to be used
as caption prefix. Be sure about what you are doing if changing to other
than Formula:
or :
.
big.mark
: string (default: ''
) passed
to format
round
: numeric (default: Inf
) passed to
round
. Can be a vector specifying values for each column
(has to be the same length as number of columns). Values for non-numeric
columns will be disregarded.
keep.trailing.zeros
: boolean (default:
FALSE
) show or remove trailing zeros in numbers (e.g. in
numeric vectors or in columns of tables with numeric values)
keep.line.breaks
: boolean (default:
FALSE
) to keep or remove line breaks from cells in a
table
missing
: string (default: NA
) to
replace missing values in vectors, tables etc.
date
: string (default: '%Y/%m/%d %X'
)
passed to format
when printing dates (POSIXct
or POSIXt
)
header.style
: 'atx'
or
'setext'
passed to pandoc.header
list.style
: 'bullet'
(default),
'ordered'
or 'roman'
passed to
pandoc.list
. Please not that this has no effect on
pander
methods.
table.style
: 'multiline'
,
'grid'
or 'simple'
passed to
pandoc.table
table.emphasize.rownames
: boolean (default:
TRUE
) if row names should be highlighted
table.split.table
: numeric passed to
pandoc.table
and also affects pander
methods.
This option tells pander
where to split too wide tables.
The default value (80
) suggests the conventional number of
characters used in a line, feel free to change (e.g. to Inf
to disable this feature) if you are not using a VT100 terminal any more
:)
table.split.cells
: numeric (default: 30) passed to
pandoc.table
and also affects pander methods. This option
tells pander where to split too wide cells with line breaks. Set `Inf``
to disable.
table.caption.prefix
: string (default:
Table:
) passed to pandoc.table
to be used as
caption prefix. Be sure about what you are doing if changing to other
than Table:
or :
.
table.continues
: string (default:
Table continues below
) passed to pandoc.table
to be used as caption for long (split) without a use defined
caption
table.continues.affix
: string (default:
(continued below)
) passed to pandoc.table
to
be used as an affix concatenated to the user defined caption for long
(split) tables
table.alignment.default
: string (default:
centre
) that defines the default alignment of cells. Can be
left
, right
or centre
that latter
can be also spelled as center
table.alignment.rownames
: string (default:
centre
) that defines the alignment of rownames in tables.
Can be left
, right
or centre
that
latter can be also spelled as center
use.hyphening
: boolean (default: FALSE
)
if try to use hyphening when splitting large cells according to
table.split.cells. Requires sylly
package.
evals.messages
: boolean (default: TRUE
)
passed to evals
’ pander
method specifying if
messages should be rendered
p.wrap
: a string (default:'_'
) to wrap
vector elements passed to p
function
p.sep
: a string (default: ', '
) with
the main separator passed to p
function
p.copula
: a string (default: 'and'
) a
string with ending separator passed to p
function
plain.ascii
: boolean (default: FALSE) to define if
output should be in plain ascii or not
graph.nomargin
: boolean (default: TRUE
)
if trying to keep plots’ margins at minimal
graph.fontfamily
: string (default:
'sans'
) specifying the font family to be used in images.
Please note, that using a custom font on Windows requires
grDevices:::windowsFonts
first.
graph.fontcolor
: string (default:
'black'
) specifying the default font color
graph.fontsize
: numeric (default: 12
)
specifying the base font size in pixels. Main title is rendered
with 1.2
and labels with 0.8
multiplier.
graph.grid
: boolean (default: TRUE
) if
a grid should be added to the plot
graph.grid.minor
: boolean (default:
TRUE
) if a miner grid should be also rendered
graph.grid.color
: string (default:
'grey'
) specifying the color of the rendered grid
graph.grid.lty
: string (default:
'dashed'
) specifying the line type of grid
graph.boxes
: boolean (default: FALSE
)
if to render a border around of plot (and e.g. around strip)
graph.legend.position
: string (default:
'right'
) specifying the position of the legend: ‘top’,
‘right’, ‘bottom’ or ‘left’
graph.background
: string (default:
'white'
) specifying the plots main background’s
color
graph.panel.background
: string (default:
'transparent'
) specifying the plot’s main panel background.
Please note, that this option is not supported with
base
graphics.
graph.colors
: character vector of default color
palette (defaults to a colorblind theme). Please
note that this update work with base
plots by
appending the col
argument to the call if not set.
graph.color.rnd
: boolean (default:
FALSE
) specifying if the palette should be reordered
randomly before rendering each plot to get colorful images
graph.axis.angle
: numeric (default: 1
)
specifying the angle of axes’ labels. The available options are based on
par(les)
and sets if the labels should be:
1
: parallel to the axis,2
: horizontal,3
: perpendicular to the axis or4
: vertical.graph.symbol
: numeric (default: 1
)
specifying a symbol (see the pch
parameter of
par
)
knitr.auto.asis
: boolean (default:
TRUE
) if the results of pander
should be
considered as asis
in knitr
. Equals to
specifying results='asis'
in the R chunk, so thus there is
no need to do so if set to TRUE
.
Besides localization of numeric formats or the styles of tables,
lists and plots, there are some technical options as well, which would
effect e.g. caching or the format of rendered
image files. You can query/update those with the
evalsOptions
function as the main backend of
pander
calls is a custom evaluation function called evals
.
The list of possible options are:
parse
: if TRUE
the provided
txt
elements would be merged into one string and parsed to
logical chunks. This is useful if you would want to get separate results
of your code parts - not just the last returned value, but you are
passing the whole script in one string. To manually lock lines to each
other (e.g. calling a plot
and on next line adding an
abline
or text
to it), use a plus char
(+
) at the beginning of each line which should be evaluated
with the previous one(s). If set to FALSE
, evals
would not try to parse R code, it
would get evaluated in separate runs - as provided. Please see the
documentation of evals
.cache
: caching the result of R
calls if set to TRUE
cache.mode
: cached results could be stored in an
environment
in current R session or let it be
permanent on disk
.cache.dir
: path to a directory holding cache files if
cache.mode
set to disk
. Default set to
.cache
in current working directory.cache.time
: number of seconds to limit caching based on
proc.time
. If set to 0
, all R commands, if set
to Inf
, none is cached (despite the cache
parameter).cache.copy.images
: copy images to new file names if an
image is returned from the disk cache? If set to
FALSE
(default), the cached path would be returned.classes
: a vector or list of classes which should be
returned. If set to NULL
(by default) all R objects will be
returned.hooks
: list of hooks to be run for given classes in the
form of list(class = fn)
. If you would also specify some
parameters of the function, a list should be provided in the form of
list(fn, param1, param2=NULL)
etc. So the hooks would
become list(class1=list(fn, param1, param2=NULL), ...)
. See
example of evals
for more details. A
default hook can be specified too by setting the class to
'default'
. This can be handy if you do not want to define
separate methods/functions to each possible class, but automatically
apply the default hook to all classes not mentioned in the list. You may
also specify only one element in the list like:
hooks=list('default' = pander_return)
. Please note, that
nor error/warning messages, nor stdout is captured (so: updated) while
running hooks!length
: any R object exceeding the specified length
will not be returned. The default value (Inf
) does not
filter out any R objects.output
: a character vector of required returned values.
This might be useful if you are only interested in the
result
, and do not want to save/see
e.g. messages
or print
ed output
.
See examples of evals
.graph.unify
: should evals
try to unify the
style of (base
, lattice
and
ggplot2
) plots? If set to TRUE
, some
panderOptions()
would apply. By default this is disabled
not to freak out useRs :)graph.name
: set the file name of saved plots which is
%s
by default. A simple character string might be provided
where %d
would be replaced by the index of the generating
txt
source, %n
with an incremented integer in
graph.dir
with similar file names and %t
by
some unique random characters. When used in a brew
file,
%i
is also available which would be replaced by the chunk
number.graph.dir
: path to a directory where to place generated
images. If the directory does not exist, evals
try to create that. Default set to
plots
in current working directory.graph.output
: set the required file format of saved
plots. Currently it could be any of grDevices
:
png
, bmp
, jpeg
, jpg
,
tiff
, svg
or pdf
. Set to
NA
not to save plots at all and tweak that setting with
capture.plot()
on demand.width
: width of generated plot in pixels for even
vector formatsheight
: height of generated plot in pixels for even
vector formatsres
: nominal resolution in ppi
. The height
and width of vector images will be calculated based in this.hi.res
: generate high resolution plots also? If set to
TRUE
, each R code parts resulting an image would be run
twice.hi.res.width
: width of generated high resolution plot
in pixels for even vector formats. The height
and
res
of high resolution image is automatically computed
based on the above options to preserve original plot aspect ratio.graph.env
: save the environments in which plots were
generated to distinct files (based on graph.name
) with
env
extension?graph.recordplot
: save the plot via
recordPlot
to distinct files (based on
graph.name
) with recodplot
extension?graph.RDS
save the raw R object returned (usually with
lattice
or ggplot2
) while generating the plots
to distinct files (based on graph.name
) with
RDS
extension?log
: NULL
or an optionally passed
namespace for logger
to record all info, trace,
debug and error messages.How does pander
differ from Sweave, brew, knitr, R2HTML
and the other tools of literate programming? First of all
pander
can be used as a helper with any other literate
programming solution, so you can call pander
inside
of knitr
chunks.
But if you stick with pander
’s literate programming
engine, then there’s not much need for calling ascii
,
xtable
, Hmisc
, tables
etc. or
even pander
in the R command chunks to transform R
objects into markdown, HTML, tex etc. as
Pandoc.brew
automatically results in Pandoc’s markdown,
which can be converted to almost any text document format. Conversion
can be done automatically after calling pander
reporting
functions (Pander.brew or Pandoc).
Based on the fact that pander
transforms R objects into
markdown, no “traditional” R console output is shown in
the resulting document (nor in markdown, nor in exported docs), but
all R objects are transformed to tables, list etc.
Well, there is an option (show.src
) to show the original R
commands before the formatted output, and pander
calls can
be also easily tweaked to return the printed version of the R objects -
if you would need that in some strange situation - like writing an R
tutorial. But really think that nor R code, nor raw R results have
anything to do with an exported report.
Of course all warnings, messages and errors are
captured while evaluating R expressions just like
stdout
besides the raw R objects. So the
resulting report also includes the raw R objects for further edits if
needed - which is a very unique feature.
Graphs and plots are automatically identified in
code chunks and saved to disk in a png
file linked in the
resulting document. This means that if you create a report
(e.g. brew
a text file) and export it to PDF/docx etc. all
the plots/images would be there. There are some parameters to specify
the resolution of the image and also the type (e.g. jpg
,
svg
or pdf
) besides a wide variety of
theme options. About the latter,
please check the graphs.brew
example above.
And pander
uses its built-in (IMHO quite decent) caching engine. This means that if
the evaluation of some R commands takes too long time (which can be set
by option/parameter), then the results are saved in a file and returned
from there on next similar R code’s evaluation. This caching algorithm
tries to be smart, as it not only checks the passed R sources, but the
content of all variables and functions, and saves the hash of those.
This is a quite secure way of caching (see details above), but if you would encounter any issues, just
switch off the cache. I’ve not seen any issues for years :)
I have created some simple LISP functions which would be handy if you are using the best damn IDE for R. These functions and default key-bindings are shipped with the package, feel free to personalize.
As time passed these small functions grew heavier (with my Emacs knowledge) so I ended up with a small library:
I am currently working on pander-mode
which is a small
minor-mode for Emacs. There are a few (but useful) functions
with default keybindings:
pander-brew
(C-c p b
): Run
Pandoc.brew
on current buffer or region (if mark is
active), show results in ess-output and (optionally) copy
results to clipboard while setting working directory to
tempdir()
temporary.pander-brew-export
(C-c p B
): Run
Pandoc.brew
on current buffer or region (if mark is active)
and export results to specified (auto-complete in minibuffer) format.
Also tries to open exported document.pander-eval
(C-c p e
): Run
pander
on (automatically evaluated) region or
current chunk (if marker is not set), show results (of last returned R
object) in *ess-output*
and (optionally) copy those to
clipboard while setting working directory to tempdir()
temporary.Few options of pander-mode
:
M-x customize-group pander
pander-clipboard
: If non-nil then the result of
pander-*
functions would be copied to clipboard.pander-show-source
: If non-nil then the source of R
commands would also show up in generated documents while running
‘pander-eval’. This would not affect brew
functions
ATM.To use this small lib, just type: M-x pander-mode
on any
document. It might be useful to add a hook to markdown-mode
if you find this useful.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
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