Quarto
Introduction
Quarto provides a unified authoring framework for data science, combining your code, its results, and your prose. Quarto documents are fully reproducible and support dozens of output formats, like PDFs, Word files, presentations, and more.
Quarto files are designed to be used in three ways:
For communicating to decision makers, who want to focus on the conclusions, not the code behind the analysis.
For collaborating with other data scientists (including future you!), who are interested in both your conclusions, and how you reached them (i.e. the code).
As an environment in which to do data science, as a modern day lab notebook where you can capture not only what you did, but also what you were thinking.
Quarto is a command line interface tool, not an R package. This means that help is, by-and-large, not available through ?
. Instead, as you work through this chapter, and use Quarto in the future, you should refer to the Quarto documentation page at https://quarto.org for help.
If you’re an R Markdown user, you might be thinking “Quarto sounds a lot like R Markdown”. You’re not wrong! Quarto unifies the functionality of many packages from the R Markdown ecosystem (rmarkdown, bookdown, distill, xaringan, etc.) into a single consistent system as well as extends it with native support for multiple programming languages like Python and Julia in addition to R. In a way, Quarto reflects everything that was learned from expanding and supporting the R Markdown ecosystem over a decade.
Prerequisites
You need the Quarto command line interface (Quarto CLI), but you don’t need to explicitly install it or load it, as RStudio automatically does both when needed.
Quarto basics
This is a Quarto file – a plain text file that has the extension .qmd
:
---
title: "Diamond sizes"
date: 2022-09-12
format: html
---
```{r}
#| label: setup
#| include: false
library(tidyverse)
smaller <- diamonds |>
filter(carat <= 2.5)
```
We have data about `r nrow(diamonds)` diamonds.
Only `r nrow(diamonds) - nrow(smaller)` are larger than 2.5 carats.
The distribution of the remainder is shown below:
```{r}
#| label: plot-smaller-diamonds
#| echo: false
smaller |>
ggplot(aes(carat)) +
geom_freqpoly(binwidth = 0.01)
```
It contains three important types of content:
- An (optional) YAML header surrounded by
---
s.
-
Chunks of R code surrounded by
```
.
- Text mixed with simple text formatting like
# heading
and _italics_
.
When you open a .qmd
, you get a notebook interface where code and output are interleaved. You can run each code chunk by clicking the Run icon (it looks like a play button at the top of the chunk), or by pressing Cmd/Ctrl + Shift + Enter. RStudio executes the code and displays the results inline with the code:
If you don’t like seeing your plots and output in your document and would rather make use of RStudio’s console and plot panes, you can click on the gear icon next to “Render” and switch to “Chunk Output in Console”.
To produce a complete report containing all text, code, and results, click “Render” or press Cmd/Ctrl + Shift + K. You can also do this programmatically with quarto::quarto_render("diamond-sizes.qmd")
. This will display the report in the viewer pane and create an HTML file.
When you render the document, Quarto sends the .qmd
file to knitr, https://yihui.name/knitr, which executes all of the code chunks and creates a new markdown (.md
) document which includes the code and its output. The markdown file generated by knitr is then processed by pandoc, https://pandoc.org, which is responsible for creating the finished file. The advantage of this two step workflow is that you can create a very wide range of output formats, as you’ll learn about in #chp-quarto-formats.
To get started with your own .qmd
file, select File > New File > Quarto Document… in the menu bar. RStudio will launch a wizard that you can use to pre-populate your file with useful content that reminds you how the key features of Quarto work.
The following sections dive into the three components of a Quarto document in more details: the markdown text, the code chunks, and the YAML header.
Exercises
Create a new Quarto document using File > New File > Quarto Document. Read the instructions. Practice running the chunks individually. Then render the document by clicking the appropriate button and then by using the appropriate keyboard short cut. Verify that you can modify the code, re-run it, and see modified output.
Create one new Quarto document for each of the three built-in formats: HTML, PDF and Word. Render each of the three documents. How do the outputs differ? How do the inputs differ? (You may need to install LaTeX in order to build the PDF output — RStudio will prompt you if this is necessary.)
Visual editor
The Visual editor in RStudio provides a WYSIWYM interface for authoring Quarto documents. Under the hood, prose in Quarto documents (.qmd
files) is written in Markdown, a lightweight set of conventions for formatting plain text files. In fact, Quarto uses Pandoc markdown (a slightly extended version of Markdown that Quarto understands), including tables, citations, cross-references, footnotes, divs/spans, definition lists, attributes, raw HTML/TeX, and more as well as support for executing code cells and viewing their output inline. While Markdown is designed to be easy to read and write, as you will see in #sec-source-editor, it still requires learning new syntax. Therefore, if you’re new to computational documents like .qmd
files but have experience using tools like Google Docs or MS Word, the easiest way to get started with Quarto in RStudio is the visual editor.
In the visual editor you can either use the buttons on the menu bar to insert images, tables, cross-references, etc. or you can use the catch-all ⌘ / shortcut to insert just about anything. If you are at the beginning of a line (as shown below), you can also enter just / to invoke the shortcut.
Inserting images and customizing how they are displayed is also facilitated with the visual editor. You can either paste an image from your clipboard directly into the visual editor (and RStudio will place a copy of that image in the project directory and link to it) or you can use the visual editor’s Insert > Figure / Image menu to browse to the image you want to insert or paste it’s URL. In addition, using the same menu you can resize the image as well as add a caption, alternative text, and a link.
The visual editor has many more features that we haven’t enumerated here that you might find useful as you gain experience authoring with it.
Most importantly, while the visual editor displays your content with formatting, under the hood, it saves your content in plain Markdown and you can switch back and forth between the visual and source editors to view and edit your content using either tool.
Source editor
You can also edit Quarto documents using the Source editor in RStudio, without the assist of the Visual editor. While the Visual editor will feel familiar to those with experience writing in tools like Google docs, the Source editor will feel familiar to those with experience writing R scripts or R Markdown documents. The Source editor can also be useful for debugging any Quarto syntax errors since it’s often easier to catch these in plain text.
The guide below shows how to use Pandoc’s Markdown for authoring Quarto documents in the source editor.
## Text formatting
*italic* **bold** [underline]{.underline} ~~strikeout~~ [small caps]{.smallcaps} `code` superscript^2^ and subscript~2~
## Headings
# 1st Level Header
## 2nd Level Header
### 3rd Level Header
## Lists
- Bulleted list item 1
- Item 2
- Item 2a
- Item 2b
1. Numbered list item 1
2. Item 2.
The numbers are incremented automatically in the output.
## Links and images
<http://example.com>
[linked phrase](http://example.com)
![optional caption text](quarto.png){fig-alt="Quarto logo and the word quarto spelled in small case letters"}
## Tables
| First Header | Second Header |
|--------------|---------------|
| Content Cell | Content Cell |
| Content Cell | Content Cell |
/
The best way to learn these is simply to try them out. It will take a few days, but soon they will become second nature, and you won’t need to think about them. If you forget, you can get to a handy reference sheet with Help > Markdown Quick Reference.
Exercises
Practice what you’ve learned by creating a brief CV. The title should be your name, and you should include headings for (at least) education or employment. Each of the sections should include a bulleted list of jobs/degrees. Highlight the year in bold.
-
Using the visual editor, figure out how to:
- Add a footnote.
- Add a horizontal rule.
- Add a block quote.
-
Now, using the source editor and the Markdown quick reference, figure out how to:
- Add a footnote.
- Add a horizontal rule.
- Add a block quote.
Copy and paste the contents of diamond-sizes.qmd
from https://github.com/hadley/r4ds/tree/main/quarto in to a local R Quarto document. Check that you can run it, then add text after the frequency polygon that describes its most striking features.
Code chunks
To run code inside a Quarto document, you need to insert a chunk. There are three ways to do so:
The keyboard shortcut Cmd + Option + I / Ctrl + Alt + I.
The “Insert” button icon in the editor toolbar.
By manually typing the chunk delimiters ```{r}
and ```
.
We’d recommend you learn the keyboard shortcut. It will save you a lot of time in the long run!
You can continue to run the code using the keyboard shortcut that by now (we hope!) you know and love: Cmd/Ctrl + Enter. However, chunks get a new keyboard shortcut: Cmd/Ctrl + Shift + Enter, which runs all the code in the chunk. Think of a chunk like a function. A chunk should be relatively self-contained, and focused around a single task.
The following sections describe the chunk header which consists of ```{r}
, followed by an optional chunk label and various other chunk options, each on their own line, marked by #|
.
Chunk label
Chunks can be given an optional label, e.g.
```{r}
#| label: simple-addition
1 + 1
```
#> [1] 2
This has three advantages:
-
You can more easily navigate to specific chunks using the drop-down code navigator in the bottom-left of the script editor:
Graphics produced by the chunks will have useful names that make them easier to use elsewhere. More on that in #sec-figures.
You can set up networks of cached chunks to avoid re-performing expensive computations on every run. More on that in #sec-caching.
Your chunk labels should be short but evocative and should not contain spaces. We recommend using dashes (-
) to separate words (instead of underscores, _
) and avoiding other special characters in chunk labels.
You are generally free to label your chunk however you like, but there is one chunk name that imbues special behavior: setup
. When you’re in a notebook mode, the chunk named setup will be run automatically once, before any other code is run.
Additionally, chunk labels cannot be duplicated. Each chunk label must be unique.
Chunk options
Chunk output can be customized with options, fields supplied to chunk header. Knitr provides almost 60 options that you can use to customize your code chunks. Here we’ll cover the most important chunk options that you’ll use frequently. You can see the full list at https://yihui.name/knitr/options.
The most important set of options controls if your code block is executed and what results are inserted in the finished report:
eval: false
prevents code from being evaluated. (And obviously if the code is not run, no results will be generated). This is useful for displaying example code, or for disabling a large block of code without commenting each line.
include: false
runs the code, but doesn’t show the code or results in the final document. Use this for setup code that you don’t want cluttering your report.
echo: false
prevents code, but not the results from appearing in the finished file. Use this when writing reports aimed at people who don’t want to see the underlying R code.
message: false
or warning: false
prevents messages or warnings from appearing in the finished file.
results: hide
hides printed output; fig-show: hide
hides plots.
error: true
causes the render to continue even if code returns an error. This is rarely something you’ll want to include in the final version of your report, but can be very useful if you need to debug exactly what is going on inside your .qmd
. It’s also useful if you’re teaching R and want to deliberately include an error. The default, error: false
causes rendering to fail if there is a single error in the document.
Each of these chunk options get added to the header of the chunk, following #|
, e.g., in the following chunk the result is not printed since eval
is set to false.
```{r}
#| label: simple-multiplication
#| eval: false
2 * 2
```
The following table summarizes which types of output each option suppresses:
eval: false |
- |
|
- |
- |
- |
- |
include: false |
|
- |
- |
- |
- |
- |
echo: false |
|
- |
|
|
|
|
results: hide |
|
|
- |
|
|
|
fig-show: hide |
|
|
|
- |
|
|
message: false |
|
|
|
|
- |
|
warning: false |
|
|
|
|
|
- |
Global options
As you work more with knitr, you will discover that some of the default chunk options don’t fit your needs and you want to change them.
You can do this by adding the preferred options in the document YAML, under execute
. For example, if you are preparing a report for an audience who does not need to see your code but only your results and narrative, you might set echo: false
at the document level. That will hide the code by default, so only showing the chunks you deliberately choose to show (with echo: true
). You might consider setting message: false
and warning: false
, but that would make it harder to debug problems because you wouldn’t see any messages in the final document.
title: "My report"
execute:
echo: false
Since Quarto is designed to be multi-lingual (works with R as well as other languages like Python, Julia, etc.), all of the knitr options are not available at the document execution level since some of them only work with knitr and not other engines Quarto uses for running code in other languages (e.g., Jupyter). You can, however, still set these as global options for your document under the knitr
field, under opts_chunk
. For example, when writing books and tutorials we set:
title: "Tutorial"
knitr:
opts_chunk:
comment: "#>"
collapse: true
This uses our preferred comment formatting and ensures that the code and output are kept closely entwined.
Inline code
There is one other way to embed R code into a Quarto document: directly into the text, with: `r `
. This can be very useful if you mention properties of your data in the text. For example, the example document used at the start of the chapter had:
We have data about `r nrow(diamonds)`
diamonds. Only `r nrow(diamonds) - nrow(smaller)`
are larger than 2.5 carats. The distribution of the remainder is shown below:
When the report is rendered, the results of these computations are inserted into the text:
We have data about 53940 diamonds. Only 126 are larger than 2.5 carats. The distribution of the remainder is shown below:
When inserting numbers into text, format()
is your friend. It allows you to set the number of digits
so you don’t print to a ridiculous degree of accuracy, and a big.mark
to make numbers easier to read. You might combine these into a helper function:
comma <- function(x) format(x, digits = 2, big.mark = ",")
comma(3452345)
#> [1] "3,452,345"
comma(.12358124331)
#> [1] "0.12"
Exercises
Add a section that explores how diamond sizes vary by cut, colour, and clarity. Assume you’re writing a report for someone who doesn’t know R, and instead of setting echo: false
on each chunk, set a global option.
Download diamond-sizes.qmd
from https://github.com/hadley/r4ds/tree/main/quarto. Add a section that describes the largest 20 diamonds, including a table that displays their most important attributes.
Modify diamonds-sizes.qmd
to use label_comma()
to produce nicely formatted output. Also include the percentage of diamonds that are larger than 2.5 carats.
Tables
Similar to figures, you can include two types of tables in a Quarto document. They can be markdown tables that you create in directly in your Quarto document (using the Insert Table menu) or they can be tables generated as a result of a code chunk. In this section we will focus on the latter, tables generated via computation.
By default, Quarto prints data frames and matrices as you’d see them in the console:
mtcars[1:5, ]
#> mpg cyl disp hp drat wt qsec vs am gear carb
#> Mazda RX4 21.0 6 160 110 3.90 2.620 16.46 0 1 4 4
#> Mazda RX4 Wag 21.0 6 160 110 3.90 2.875 17.02 0 1 4 4
#> Datsun 710 22.8 4 108 93 3.85 2.320 18.61 1 1 4 1
#> Hornet 4 Drive 21.4 6 258 110 3.08 3.215 19.44 1 0 3 1
#> Hornet Sportabout 18.7 8 360 175 3.15 3.440 17.02 0 0 3 2
If you prefer that data be displayed with additional formatting you can use the knitr::kable()
function. The code below generates #tbl-kable.
knitr::kable(mtcars[1:5, ], )
Table 27.1: A knitr kable.
Mazda RX4 |
21.0 |
6 |
160 |
110 |
3.90 |
2.620 |
16.46 |
0 |
1 |
4 |
4 |
Mazda RX4 Wag |
21.0 |
6 |
160 |
110 |
3.90 |
2.875 |
17.02 |
0 |
1 |
4 |
4 |
Datsun 710 |
22.8 |
4 |
108 |
93 |
3.85 |
2.320 |
18.61 |
1 |
1 |
4 |
1 |
Hornet 4 Drive |
21.4 |
6 |
258 |
110 |
3.08 |
3.215 |
19.44 |
1 |
0 |
3 |
1 |
Hornet Sportabout |
18.7 |
8 |
360 |
175 |
3.15 |
3.440 |
17.02 |
0 |
0 |
3 |
2 |
Read the documentation for ?knitr::kable
to see the other ways in which you can customize the table. For even deeper customization, consider the gt, huxtable, reactable, kableExtra, xtable, stargazer, pander, tables, and ascii packages. Each provides a set of tools for returning formatted tables from R code.
There is also a rich set of options for controlling how figures are embedded. You’ll learn about these in #chp-communicate-plots.
Caching
Normally, each render of a document starts from a completely clean slate. This is great for reproducibility, because it ensures that you’ve captured every important computation in code. However, it can be painful if you have some computations that take a long time. The solution is cache: true
.
You can enable the Knitr cache at the document level for caching the results of all computations in a document using standard YAML options:
---
title: "My Document"
execute:
cache: true
---
You can also enable caching at the chunk level for caching the results of computation in a specific chunk:
```{r}
#| cache: true
# code for lengthy computation...
```
When set, this will save the output of the chunk to a specially named file on disk. On subsequent runs, knitr will check to see if the code has changed, and if it hasn’t, it will reuse the cached results.
The caching system must be used with care, because by default it is based on the code only, not its dependencies. For example, here the processed_data
chunk depends on the raw-data
chunk:
```{r}
#| label: raw-data
rawdata <- readr::read_csv("a_very_large_file.csv")
```
```{r}
#| label: processed_data
#| cache: true
processed_data <- rawdata |>
filter(!is.na(import_var)) |>
mutate(new_variable = complicated_transformation(x, y, z))
```
Caching the processed_data
chunk means that it will get re-run if the dplyr pipeline is changed, but it won’t get rerun if the read_csv()
call changes. You can avoid that problem with the dependson
chunk option:
```{r}
#| label: processed-data
#| cache: true
#| dependson: "raw-data"
processed_data <- rawdata |>
filter(!is.na(import_var)) |>
mutate(new_variable = complicated_transformation(x, y, z))
```
dependson
should contain a character vector of every chunk that the cached chunk depends on. Knitr will update the results for the cached chunk whenever it detects that one of its dependencies have changed.
Note that the chunks won’t update if a_very_large_file.csv
changes, because knitr caching only tracks changes within the .qmd
file. If you want to also track changes to that file you can use the cache.extra
option. This is an arbitrary R expression that will invalidate the cache whenever it changes. A good function to use is file.info()
: it returns a bunch of information about the file including when it was last modified. Then you can write:
```{r}
#| label: raw-data
#| cache.extra: file.info("a_very_large_file.csv")
rawdata <- readr::read_csv("a_very_large_file.csv")
```
As your caching strategies get progressively more complicated, it’s a good idea to regularly clear out all your caches with knitr::clean_cache()
.
We’ve followed the advice of David Robinson to name these chunks: each chunk is named after the primary object that it creates. This makes it easier to understand the dependson
specification.
Exercises
- Set up a network of chunks where
d
depends on c
and b
, and both b
and c
depend on a
. Have each chunk print lubridate::now()
, set cache: true
, then verify your understanding of caching.
Troubleshooting
Troubleshooting Quarto documents can be challenging because you are no longer in an interactive R environment, and you will need to learn some new tricks. Additionally, the error could be due to issues with the Quarto document itself or due to the R code in the Quarto document.
One common error in documents with code chunks is duplicated chunk labels, which are especially pervasive if your workflow involves copying and pasting code chunks. To address this issue, all you need to do is to change one of your duplicated labels.
If the errors are due to the R code in the document, the first thing you should always try is to recreate the problem in an interactive session. Restart R, then “Run all chunks” (either from Code menu, under Run region), or with the keyboard shortcut Ctrl + Alt + R. If you’re lucky, that will recreate the problem, and you can figure out what’s going on interactively.
If that doesn’t help, there must be something different between your interactive environment and the Quarto environment. You’re going to need to systematically explore the options. The most common difference is the working directory: the working directory of a Quarto is the directory in which it lives. Check the working directory is what you expect by including getwd()
in a chunk.
Next, brainstorm all the things that might cause the bug. You’ll need to systematically check that they’re the same in your R session and your Quarto session. The easiest way to do that is to set error: true
on the chunk causing the problem, then use print()
and str()
to check that settings are as you expect.
Learning more
Quarto is still relatively young, and is still growing rapidly. The best place to stay on top of innovations is the official Quarto website: https://quarto.org.
There are two important topics that we haven’t covered here: collaboration and the details of accurately communicating your ideas to other humans. Collaboration is a vital part of modern data science, and you can make your life much easier by using version control tools, like Git and GitHub. We recommend “Happy Git with R”, a user friendly introduction to Git and GitHub from R users, by Jenny Bryan. The book is freely available online: https://happygitwithr.com.
We have also not touched on what you should actually write in order to clearly communicate the results of your analysis. To improve your writing, we highly recommend reading either Style: Lessons in Clarity and Grace by Joseph M. Williams & Joseph Bizup, or The Sense of Structure: Writing from the Reader’s Perspective by George Gopen. Both books will help you understand the structure of sentences and paragraphs, and give you the tools to make your writing more clear. (These books are rather expensive if purchased new, but they’re used by many English classes so there are plenty of cheap second-hand copies). George Gopen also has a number of short articles on writing at https://www.georgegopen.com/the-litigation-articles.html. They are aimed at lawyers, but almost everything applies to data scientists too.