The goal of readr is to provide a fast and friendly way to read rectangular data from delimited files, such as comma-separated values (CSV) and tab-separated values (TSV). It is designed to parse many types of data found in the wild, while providing an informative problem report when parsing leads to unexpected results. If you are new to readr, the best place to start is the data import chapter in R for Data Science.
# The easiest way to get readr is to install the whole tidyverse:
install.packages("tidyverse")
# Alternatively, install just readr:
install.packages("readr")
readr is part of the core tidyverse, so you can load it with:
library(tidyverse)
#> ── Attaching core tidyverse packages ──────────────────────── tidyverse 2.0.0 ──
#> ✔ dplyr 1.1.4 ✔ readr 2.1.5.9000
#> ✔ forcats 1.0.0 ✔ stringr 1.5.1
#> ✔ ggplot2 3.5.1 ✔ tibble 3.2.1
#> ✔ lubridate 1.9.3 ✔ tidyr 1.3.1
#> ✔ purrr 1.0.2
#> ── Conflicts ────────────────────────────────────────── tidyverse_conflicts() ──
#> ✖ dplyr::filter() masks stats::filter()
#> ✖ dplyr::lag() masks stats::lag()
#> ℹ Use the conflicted package (<http://conflicted.r-lib.org/>) to force all conflicts to become errors
Of course, you can also load readr as an individual package:
library(readr)
To read a rectangular dataset with readr, you combine two pieces: a function that parses the lines of the file into individual fields and a column specification.
readr supports the following file formats with these read_*()
functions:
read_csv()
: comma-separated values (CSV)read_tsv()
: tab-separated values (TSV)read_csv2()
: semicolon-separated values with ,
as the decimal markread_delim()
: delimited files (CSV and TSV are important special
cases)read_fwf()
: fixed-width filesread_table()
: whitespace-separated filesread_log()
: web log filesA column specification describes how each column should be converted
from a character vector to a specific data type (e.g. character,
numeric, datetime, etc.). In the absence of a column specification,
readr will guess column types from the data. vignette("column-types")
gives more detail on how readr guesses the column types. Column type
guessing is very handy, especially during data exploration, but it’s
important to remember these are just guesses. As any data analysis
project matures past the exploratory phase, the best strategy is to
provide explicit column types.
The following example loads a sample file bundled with readr and guesses the column types:
(chickens <- read_csv(readr_example("chickens.csv")))
#> Rows: 5 Columns: 4
#> ── Column specification ────────────────────────────────────────────────────────
#> Delimiter: ","
#> chr (3): chicken, sex, motto
#> dbl (1): eggs_laid
#>
#> ℹ Use `spec()` to retrieve the full column specification for this data.
#> ℹ Specify the column types or set `show_col_types = FALSE` to quiet this message.
#> # A tibble: 5 × 4
#> chicken sex eggs_laid motto
#> <chr> <chr> <dbl> <chr>
#> 1 Foghorn Leghorn rooster 0 That's a joke, ah say, that's a jok…
#> 2 Chicken Little hen 3 The sky is falling!
#> 3 Ginger hen 12 Listen. We'll either die free chick…
#> 4 Camilla the Chicken hen 7 Bawk, buck, ba-gawk.
#> 5 Ernie The Giant Chicken rooster 0 Put Captain Solo in the cargo hold.
Note that readr prints the column types – the guessed column types, in
this case. This is useful because it allows you to check that the
columns have been read in as you expect. If they haven’t, that means you
need to provide the column specification. This sounds like a lot of
trouble, but luckily readr affords a nice workflow for this. Use
spec()
to retrieve the (guessed) column specification from your
initial effort.
spec(chickens)
#> cols(
#> chicken = col_character(),
#> sex = col_character(),
#> eggs_laid = col_double(),
#> motto = col_character()
#> )
Now you can copy, paste, and tweak this, to create a more explicit readr
call that expresses the desired column types. Here we express that sex
should be a factor with levels rooster
and hen
, in that order, and
that eggs_laid
should be integer.
chickens <- read_csv(
readr_example("chickens.csv"),
col_types = cols(
chicken = col_character(),
sex = col_factor(levels = c("rooster", "hen")),
eggs_laid = col_integer(),
motto = col_character()
)
)
chickens
#> # A tibble: 5 × 4
#> chicken sex eggs_laid motto
#> <chr> <fct> <int> <chr>
#> 1 Foghorn Leghorn rooster 0 That's a joke, ah say, that's a jok…
#> 2 Chicken Little hen 3 The sky is falling!
#> 3 Ginger hen 12 Listen. We'll either die free chick…
#> 4 Camilla the Chicken hen 7 Bawk, buck, ba-gawk.
#> 5 Ernie The Giant Chicken rooster 0 Put Captain Solo in the cargo hold.
vignette("readr")
gives an expanded introduction to readr.
readr got a new parsing engine in version 2.0.0 (released July 2021). In
this so-called second edition, readr calls vroom::vroom()
, by default.
The parsing engine in readr versions prior to 2.0.0 is now called the
first edition. If you’re using readr >= 2.0.0, you can still access
first edition parsing via the functions with_edition(1, ...)
and
local_edition(1)
. And, obviously, if you’re using readr \< 2.0.0, you
will get first edition parsing, by definition, because that’s all there
is.
We will continue to support the first edition for a number of releases,
but the overall goal is to make the second edition uniformly better than
the first. Therefore the plan is to eventually deprecate and then remove
the first edition code. New code and actively-maintained code should use
the second edition. The workarounds with_edition(1, ...)
and
local_edition(1)
are offered as a pragmatic way to patch up legacy
code or as a temporary solution for infelicities identified as the
second edition matures.
There are two main alternatives to readr: base R and data.table’s
fread()
. The most important differences are discussed below.
Compared to the corresponding base functions, readr functions:
Use a consistent naming scheme for the parameters (e.g. col_names
and col_types
not header
and colClasses
).
Are generally much faster (up to 10x-100x) depending on the dataset.
Leave strings as is by default, and automatically parse common date/time formats.
Have a helpful progress bar if loading is going to take a while.
All functions work exactly the same way regardless of the current
locale. To override the US-centric defaults, use locale()
.
fread()
data.table has a function
similar to read_csv()
called fread()
. Compared to fread()
, readr
functions:
Are sometimes slower, particularly on numeric heavy data.
Can automatically guess some parameters, but basically encourage explicit specification of, e.g., the delimiter, skipped rows, and the header row.
Follow tidyverse-wide conventions, such as returning a tibble, a standard approach for column name repair, and a common mini-language for column selection.
Thanks to:
Joe Cheng for showing me the beauty of deterministic finite automata for parsing, and for teaching me why I should write a tokenizer.
JJ Allaire for helping me come up with a design that makes very few copies, and is easy to extend.
Dirk Eddelbuettel for coming up with the name!