Copyright 2016 Dean Attali. Licensed under the MIT license.
knitr
is a
popular package for generating dynamic reports in R using the concept of
literate
programming. ezknitr
is an extension of
knitr
that adds flexibility in several ways and solves a
few issues that are commonly encountered with knitr
.
One common source of frustration with knitr
is that it
assumes the directory where the source file lives should be the working
directory, which is often not true. ezknitr
addresses this
problem by giving you complete control over where all the inputs and
outputs are, and adds several other convenient features. The two main
functions are ezknit()
and ezspin()
, which are
wrappers around knitr
’s knit()
and
spin()
, used to make rendering markdown/HTML documents
easier.
ezknitr
is available through both CRAN and GitHub.
To install the CRAN version:
install.packages("ezknitr")
To install the latest developmental version from GitHub:
install.packages("devtools")
devtools::install_github("ropensci/ezknitr")
If you have a very simple project with a flat directory structure,
then knitr
works great. But even something as simple as
trying to knit a document that reads a file from a different directory
or placing the output rendered files in a different folder cannot be
easily done with knitr
.
ezknitr
improves basic knitr
functionality
in a few ways. You get to decide:
knitr
assumption that the working directory
is wherever the input file isknitr
, all the rendered output files will be
generated in the folder you’re currently inknitr
makes it cumbersome to change this directoryAssume you have an Rmarkdown file that reads a data file and produces
a short report while also generating a figure. Native
knit()
(or spin()
if you’re starting with an R
script instead of an Rmd file) works great if you have a flat directory
structure like this:
- project/
|- input.csv
|- report.Rmd
But what happens if you have a slightly more complex structure? In a
real project, you rarely have everything just lying around in the same
folder. Here is an example of a more realistic initial directory
structure (assume the working directory/project root is set to
project/
):
- project/
|- analysis/
|- report.Rmd
|- data/
|- input.csv
Now if you want knitr
to work, you’d have to ensure the
path to input.csv
is relative to the analysis/
directory because that’s where the Rmd file is. This is
counter-intuitive because most people expect to create paths relative to
the working directory/project root (project/
in
this case), but knitr
will use the analysis/
folder as the working directory. Any code reading the input file needs
to use ../data/input.csv
instead of
data/input.csv
.
Other than being confusing, it also means that you cannot naively run
the Rmd code chunks manually because when you run the code in the
console, your working directory is not set to what knitr
will use as the working directory. More specifically, if you try to run
the command that reads the input file, your console will look in
project/../data/input.csv
(which doesn’t exist).
A similar problem arises when you want to create files in your
report: knitr
will create the files relative to where the
Rmd file is, rather than relative to the project root.
Another problem with the flat directory structure is that you may
want to control where the resulting reports get generated.
knitr
will create all the outputs in your working
directory, and as far as I know there is no way to control that.
ezknitr
addresses these issues, and more. It provides
wrappers to knit()
and spin()
that allow you
to set the working directory for the input file, and also uses a more
sensible default working directory: the current working directory.
ezknitr
also lets you decide where the output files and
output figures will be generated, and uses a better default path for the
output files: the directory containing the input file.
Assuming your working directory is currently set to the
project/
directory, you could use the following
ezknitr
command to do what you want:
library(ezknitr)
ezknit(file = "analysis/report.Rmd", out_dir = "reports", fig_dir = "myfigs")
- project/
|- analysis/
|- report.Rmd
|- data/
|- input.csv
|- reports/
|- myfigs/
|- fig1.png
|- report.md
|- report.HTML
We didn’t explicitly have to set the working direcory, but you can
use the wd
argument if you do require a different directory
(for example, if you are running this from some build script or from any
arbitrary directory). After running ezknit()
, you can run
open_output_dir()
to open the output directory in your file
browser if you want to easily see the resulting report. Getting a
similar directory structure with knitr
is not simple, but
with ezknitr
it’s trivial.
Note that ezknitr
produces both a markdown and an HTML
file for each report (you can choose to discard them with the
keep_md
and keep_html
arguments).
As an example of a more complex realistic scenario where
ezknitr
would be useful, imagine having multiple analysis
scripts, with each one needing to be run on multiple datasets. Being the
organizer scientist that you are, you want to be able to run each
analysis on each dataset, and keep the results neatly organized. I
personally was involved in a few projects requiring exactly this, and
ezknitr
was in fact born for solving this exact issue.
Assume you have the following files in your project:
- project/
|- analysis/
|- calculate.Rmd
|- explore.Rmd
|- data/
|- human.dat
|- mouse.dat
We can easily use ezknitr
to run any of the analysis
Rmarkdowns on any of the datasets and assign the results to a unique
output. Let’s assume that each analysis script expects there to be a
variable named DATASET_NAME
inside the script that tells
the script what data to operate on. The following ezknitr
code illustrates how to achieve the desired output.
library(ezknitr)
ezknit(file = "analysis/explore.Rmd", out_dir = "reports/human",
params = list("DATASET_NAME" = "human.dat"), keep_html = FALSE)
ezknit(file = "analysis/explore.Rmd", out_dir = "reports/mouse",
params = list("DATASET_NAME" = "mouse.dat"), keep_html = FALSE)
ezknit(file = "analysis/calculate.Rmd", out_dir = "reports/mouse",
params = list("DATASET_NAME" = "mouse.dat"), keep_html = FALSE)
- project/
|- analysis/
|- calculate.Rmd
|- explore.Rmd
|- data/
|- human.dat
|- mouse.dat
|- reports/
|- human/
|- explore.md
|- mouse/
|- calculate.md
|- explore.md
Note that this example uses the params = list()
argument, which lets you pass variables to the input Rmarkdown. In this
case, I use it to tell the Rmarkdown what dataset to use, and the
Rmarkdown assumes a DATASET_NAME
variable exists. This of
course means that the analysis script has an external dependency by
having a variable that is not defined inside of it. You can use the
set_default_params()
function inside the Rmarkdown to
ensure the variable uses a default value if none was provided.
Also note that differentiating the species in the output could also
have been done using the out_suffix
argument instead of the
out_dir
argument. For example, using
out_suffix = "human"
would have resulted in an ouput file
named explore-human.md
.
After installing and loading the package
(library(ezknitr)
), you can experiment with
ezknitr
using the setup_ezknit_test()
or
setup_ezspin_test()
functions to see their benefits. See
?setup_ezknit_test
for more information.
knit()
is the most popular and well-known function from
knitr
. It lets you create a markdown document from an
Rmarkdown file. You can learn more about knit()
on the official knitr page.
spin()
is similar, but starts one step further back: it
takes an R script as input, creates an Rmarkdown document from the R
script, and then proceeds to create a markdown document from it.
spin()
can be useful in situations where you develop a
large R script and want to be able to produce reports from it directly
instead of having to copy chunks into a separate Rmarkdown file. You can
read more about why I like spin()
in the blog post “knitr’s
best hidden gem: spin”.
When the core of this package was developed, none of its
functionality was supported in any way by either knitr
or
rmarkdown
. Over time, rmarkdown::render()
got
some new features that are very similar to features of
ezknitr
. Native support for parameters inside Rmarkdown
files using YAML is a big feature which makes the use of
set_default_params()
and the params
argument
of ezknitr
less important. However, the core problem that
ezknitr
wants to solve is the working directory issue, and
this issue has yet to be addressed by rmarkdown
or
knitr
, which makes ezknitr
still useful.
Please note that this project is released with a Contributor Code of Conduct. By participating in this project you agree to abide by its terms.