knitr::opts_chunk$set(collapse = T, comment = "#>")
options(tibble.print_min = 4L, tibble.print_max = 4L)
library(dplyr)
library(ggplot2)

When working with data you must:

The dplyr package makes these steps fast and easy:

This document introduces you to dplyr's basic set of tools, and shows you how to apply them to data frames. Other vignettes provide more details on specific topics:

Data: nycflights13

To explore the basic data manipulation verbs of dplyr, we'll start with the built in nycflights13 data frame. This dataset contains all r nrow(nycflights13::flights) flights that departed from New York City in 2013. The data comes from the US Bureau of Transportation Statistics, and is documented in ?nycflights13

library(nycflights13)
dim(flights)
head(flights)

dplyr can work with data frames as is, but if you're dealing with large data, it's worthwhile to convert them to a tbl_df: this is a wrapper around a data frame that won't accidentally print a lot of data to the screen.

Single table verbs

Dplyr aims to provide a function for each basic verb of data manipulation:

If you've used plyr before, many of these will be familar.

Filter rows with filter()

filter() allows you to select a subset of rows in a data frame. The first argument is the name of the data frame. The second and subsequent arguments are the expressions that filter the data frame:

For example, we can select all flights on January 1st with:

filter(flights, month == 1, day == 1)

This is equivalent to the more verbose code in base R:

flights[flights$month == 1 & flights$day == 1, ]

filter() works similarly to subset() except that you can give it any number of filtering conditions, which are joined together with & (not && which is easy to do accidentally!). You can also use other boolean operators:

filter(flights, month == 1 | month == 2)

To select rows by position, use slice():

slice(flights, 1:10)

Arrange rows with arrange()

arrange() works similarly to filter() except that instead of filtering or selecting rows, it reorders them. It takes a data frame, and a set of column names (or more complicated expressions) to order by. If you provide more than one column name, each additional column will be used to break ties in the values of preceding columns:

arrange(flights, year, month, day)

Use desc() to order a column in descending order:

arrange(flights, desc(arr_delay))

dplyr::arrange() works the same way as plyr::arrange(). It's a straightforward wrapper around order() that requires less typing. The previous code is equivalent to:

flights[order(flights$year, flights$month, flights$day), ]
flights[order(flights$arr_delay, decreasing = TRUE), ] or flights[order(-flights$arr_delay), ]

Select columns with select()

Often you work with large datasets with many columns but only a few are actually of interest to you. select() allows you to rapidly zoom in on a useful subset using operations that usually only work on numeric variable positions:

# Select columns by name
select(flights, year, month, day)
# Select all columns between year and day (inclusive)
select(flights, year:day)
# Select all columns except those from year to day (inclusive)
select(flights, -(year:day))

This function works similarly to the select argument in base::subset(). Because the dplyr philosophy is to have small functions that do one thing well, it's its own function in dplyr.

There are a number of helper functions you can use within select(), like starts_with(), ends_with(), matches() and contains(). These let you quickly match larger blocks of variables that meet some criterion. See ?select for more details.

You can rename variables with select() by using named arguments:

select(flights, tail_num = tailnum)

But because select() drops all the variables not explicitly mentioned, it's not that useful. Instead, use rename():

rename(flights, tail_num = tailnum)

Extract distinct (unique) rows

Use distinct()to find unique values in a table:

distinct(flights, tailnum)
distinct(flights, origin, dest)

(This is very similar to base::unique() but should be much faster.)

Add new columns with mutate()

Besides selecting sets of existing columns, it's often useful to add new columns that are functions of existing columns. This is the job of mutate():

mutate(flights,
  gain = arr_delay - dep_delay,
  speed = distance / air_time * 60)

dplyr::mutate() works the same way as plyr::mutate() and similarly to base::transform(). The key difference between mutate() and transform() is that mutate allows you to refer to columns that you've just created:

mutate(flights,
  gain = arr_delay - dep_delay,
  gain_per_hour = gain / (air_time / 60)
)
transform(flights,
  gain = arr_delay - delay,
  gain_per_hour = gain / (air_time / 60)
)
#> Error: object 'gain' not found

If you only want to keep the new variables, use transmute():

transmute(flights,
  gain = arr_delay - dep_delay,
  gain_per_hour = gain / (air_time / 60)
)

Summarise values with summarise()

The last verb is summarise(). It collapses a data frame to a single row (this is exactly equivalent to plyr::summarise()):

summarise(flights,
  delay = mean(dep_delay, na.rm = TRUE))

Below, we'll see how this verb can be very useful.

Randomly sample rows with sample_n() and sample_frac()

You can use sample_n() and sample_frac() to take a random sample of rows: use sample_n() for a fixed number and sample_frac() for a fixed fraction.

sample_n(flights, 10)
sample_frac(flights, 0.01)

Use replace = TRUE to perform a bootstrap sample. If needed, you can weight the sample with the weight argument.

Commonalities

You may have noticed that the syntax and function of all these verbs are very similar:

Together these properties make it easy to chain together multiple simple steps to achieve a complex result.

These five functions provide the basis of a language of data manipulation. At the most basic level, you can only alter a tidy data frame in five useful ways: you can reorder the rows (arrange()), pick observations and variables of interest (filter() and select()), add new variables that are functions of existing variables (mutate()), or collapse many values to a summary (summarise()). The remainder of the language comes from applying the five functions to different types of data. For example, I'll discuss how these functions work with grouped data.

Grouped operations

These verbs are useful on their own, but they become really powerful when you apply them to groups of observations within a dataset. In dplyr, you do this by with the group_by() function. It breaks down a dataset into specified groups of rows. When you then apply the verbs above on the resulting object they'll be automatically applied "by group". Most importantly, all this is achieved by using the same exact syntax you'd use with an ungrouped object.

Grouping affects the verbs as follows:

In the following example, we split the complete dataset into individual planes and then summarise each plane by counting the number of flights (count = n()) and computing the average distance (dist = mean(Distance, na.rm = TRUE)) and arrival delay (delay = mean(ArrDelay, na.rm = TRUE)). We then use ggplot2 to display the output.

by_tailnum <- group_by(flights, tailnum)
delay <- summarise(by_tailnum,
  count = n(),
  dist = mean(distance, na.rm = TRUE),
  delay = mean(arr_delay, na.rm = TRUE))
delay <- filter(delay, count > 20, dist < 2000)

# Interestingly, the average delay is only slightly related to the
# average distance flown by a plane.
ggplot(delay, aes(dist, delay)) +
  geom_point(aes(size = count), alpha = 1/2) +
  geom_smooth() +
  scale_size_area()

You use summarise() with aggregate functions, which take a vector of values and return a single number. There are many useful examples of such functions in base R like min(), max(), mean(), sum(), sd(), median(), and IQR(). dplyr provides a handful of others:

For example, we could use these to find the number of planes and the number of flights that go to each possible destination:

destinations <- group_by(flights, dest)
summarise(destinations,
  planes = n_distinct(tailnum),
  flights = n()
)

You can also use any function that you write yourself. For performance, dplyr provides optimised C++ versions of many of these functions. If you want to provide your own C++ function, see the hybrid-evaluation vignette for more details.

When you group by multiple variables, each summary peels off one level of the grouping. That makes it easy to progressively roll-up a dataset:

daily <- group_by(flights, year, month, day)
(per_day   <- summarise(daily, flights = n()))
(per_month <- summarise(per_day, flights = sum(flights)))
(per_year  <- summarise(per_month, flights = sum(flights)))

However you need to be careful when progressively rolling up summaries like this: it's ok for sums and counts, but you need to think about weighting for means and variances (it's not possible to do this exactly for medians).

Chaining

The dplyr API is functional in the sense that function calls don't have side-effects. You must always save their results. This doesn't lead to particularly elegant code, especially if you want to do many operations at once. You either have to do it step-by-step:

a1 <- group_by(flights, year, month, day)
a2 <- select(a1, arr_delay, dep_delay)
a3 <- summarise(a2,
  arr = mean(arr_delay, na.rm = TRUE),
  dep = mean(dep_delay, na.rm = TRUE))
a4 <- filter(a3, arr > 30 | dep > 30)

Or if you don't want to save the intermediate results, you need to wrap the function calls inside each other:

filter(
  summarise(
    select(
      group_by(flights, year, month, day),
      arr_delay, dep_delay
    ),
    arr = mean(arr_delay, na.rm = TRUE),
    dep = mean(dep_delay, na.rm = TRUE)
  ),
  arr > 30 | dep > 30
)

This is difficult to read because the order of the operations is from inside to out. Thus, the arguments are a long way away from the function. To get around this problem, dplyr provides the %>% operator. x %>% f(y) turns into f(x, y) so you can use it to rewrite multiple operations that you can read left-to-right, top-to-bottom:

flights %>%
  group_by(year, month, day) %>%
  select(arr_delay, dep_delay) %>%
  summarise(
    arr = mean(arr_delay, na.rm = TRUE),
    dep = mean(dep_delay, na.rm = TRUE)
  ) %>%
  filter(arr > 30 | dep > 30)

Other data sources

As well as data frames, dplyr works with data that is stored in other ways, like data tables, databases and multidimensional arrays.

Data table

dplyr also provides data table methods for all verbs through dtplyr. If you're using data.tables already this lets you to use dplyr syntax for data manipulation, and data.table for everything else.

For multiple operations, data.table can be faster because you usually use it with multiple verbs simultaneously. For example, with data table you can do a mutate and a select in a single step. It's smart enough to know that there's no point in computing the new variable for rows you're about to throw away.

The advantages of using dplyr with data tables are:

Databases

dplyr also allows you to use the same verbs with a remote database. It takes care of generating the SQL for you so that you can avoid the cognitive challenge of constantly switching between languages. See the databases vignette for more details.

Compared to DBI and the database connection algorithms:

Multidimensional arrays / cubes

tbl_cube() provides an experimental interface to multidimensional arrays or data cubes. If you're using this form of data in R, please get in touch so I can better understand your needs.

Comparisons

Compared to all existing options, dplyr:

Compared to base functions:

Compared to plyr, dplyr:

Compared to virtual data frame approaches:



sctyner/dplyr050 documentation built on May 17, 2019, 2:22 p.m.