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tidytable

Why tidytable?

  • tidyverse-like syntax built on top of the fast data.table package
  • Compatibility with the tidy evaluation framework
  • Includes functions that dtplyr is missing, including many tidyr functions

Installation

Install the released version from CRAN with:

install.packages("tidytable")

Or install the development version from GitHub with:

# install.packages("devtools")
devtools::install_github("markfairbanks/tidytable")

General syntax

tidytable uses verb.() syntax to replicate tidyverse functions:

library(tidytable)

df <- data.table(x = 1:3, y = 4:6, z = c("a", "a", "b"))

df %>%
  select.(x, y, z) %>%
  filter.(x < 4, y > 1) %>%
  arrange.(x, y) %>%
  mutate.(double_x = x * 2,
          x_plus_y = x + y)
#> # A tidytable: 3 × 5
#>       x     y z     double_x x_plus_y
#>   <int> <int> <chr>    <dbl>    <int>
#> 1     1     4 a            2        5
#> 2     2     5 a            4        7
#> 3     3     6 b            6        9

A full list of functions can be found here.

Using “group by”

Group by calls are done by using the .by argument of any function that has “by group” functionality.

  • A single column can be passed with .by = z
  • Multiple columns can be passed with .by = c(y, z)
df %>%
  summarize.(avg_x = mean(x),
             count = n(),
             .by = z)
#> # A tidytable: 2 × 3
#>   z     avg_x count
#>   <chr> <dbl> <int>
#> 1 a       1.5     2
#> 2 b       3       1

.by vs. group_by()

tidytable follows data.table semantics where .by must be called each time you want a function to operate “by group”.

Below is some example tidytable code that utilizes .by that we’ll then compare to its dplyr equivalent. The goal is to grab the first two rows of each group using slice.(), then add a group row number column using mutate.():

library(tidytable)

df <- data.table(x = c("a", "a", "a", "b", "b"))

df %>%
  slice.(1:2, .by = x) %>%
  mutate.(group_row_num = row_number(), .by = x)
#> # A tidytable: 4 × 2
#>   x     group_row_num
#>   <chr>         <int>
#> 1 a                 1
#> 2 a                 2
#> 3 b                 1
#> 4 b                 2

Note how .by is called in both slice.() and mutate.().

Compared to a dplyr pipe chain that utilizes group_by(), where each function operates “by group” until ungroup() is called:

library(dplyr)

df <- tibble(x = c("a", "a", "a", "b", "b"))

df %>%
  group_by(x) %>%
  slice(1:2) %>%
  mutate(group_row_num = row_number()) %>%
  ungroup()
#> # A tibble: 4 × 2
#>   x     group_row_num
#>   <chr>         <int>
#> 1 a                 1
#> 2 a                 2
#> 3 b                 1
#> 4 b                 2

Note that the ungroup() call is unnecessary in tidytable.

tidyselect support

tidytable allows you to select/drop columns just like you would in the tidyverse by utilizing the tidyselect package in the background.

Normal selection can be mixed with all tidyselect helpers: everything(), starts_with(), ends_with(), any_of(), where(), etc.

df <- data.table(
  a = 1:3,
  b1 = 4:6,
  b2 = 7:9,
  c = c("a", "a", "b")
)

df %>%
  select.(a, starts_with("b"))
#> # A tidytable: 3 × 3
#>       a    b1    b2
#>   <int> <int> <int>
#> 1     1     4     7
#> 2     2     5     8
#> 3     3     6     9

To drop columns use a - sign:

df %>%
  select.(-a, -starts_with("b"))
#> # A tidytable: 3 × 1
#>   c    
#>   <chr>
#> 1 a    
#> 2 a    
#> 3 b

These same ideas can be used whenever selecting columns in tidytable functions - for example when using count.(), drop_na.(), across.(), pivot_longer.(), etc.

A full overview of selection options can be found here.

Using tidyselect in .by

tidyselect helpers also work when using .by:

df <- data.table(
  a = 1:3,
  b = c("a", "a", "b"),
  c = c("a", "a", "b")
)

df %>%
  summarize.(avg_a = mean(a), .by = where(is.character))
#> # A tidytable: 2 × 3
#>   b     c     avg_a
#>   <chr> <chr> <dbl>
#> 1 a     a       1.5
#> 2 b     b       3

Tidy evaluation compatibility

Tidy evaluation can be used to write custom functions with tidytable functions. The embracing shortcut {{ }} works, or you can use enquo() with !! if you prefer:

df <- data.table(x = c(1, 1, 1), y = c(1, 1, 1), z = c("a", "a", "b"))

add_one <- function(data, add_col) {
  data %>%
    mutate.(new_col = {{ add_col }} + 1)
}

df %>%
  add_one(x)
#> # A tidytable: 3 × 4
#>       x     y z     new_col
#>   <dbl> <dbl> <chr>   <dbl>
#> 1     1     1 a           2
#> 2     1     1 a           2
#> 3     1     1 b           2

The .data and .env pronouns also work within tidytable functions:

var <- 10

df %>%
  mutate.(new_col = .data$x + .env$var)
#> # A tidytable: 3 × 4
#>       x     y z     new_col
#>   <dbl> <dbl> <chr>   <dbl>
#> 1     1     1 a          11
#> 2     1     1 a          11
#> 3     1     1 b          11

A full overview of tidy evaluation can be found here.

dt() helper

The dt() function makes regular data.table syntax pipeable, so you can easily mix tidytable syntax with data.table syntax:

df <- data.table(x = 1:3, y = 4:6, z = c("a", "a", "b"))

df %>%
  dt(, .(x, y, z)) %>%
  dt(x < 4 & y > 1) %>%
  dt(order(x, y)) %>%
  dt(, double_x := x * 2) %>%
  dt(, .(avg_x = mean(x)), by = z)
#> # A tidytable: 2 × 2
#>   z     avg_x
#>   <chr> <dbl>
#> 1 a       1.5
#> 2 b       3

Speed Comparisons

For those interested in performance, speed comparisons can be found here.

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Version

Install

install.packages('tidytable')

Monthly Downloads

3,101

Version

0.7.2

License

MIT + file LICENSE

Issues

Pull Requests

Stars

Forks

Maintainer

Mark Fairbanks

Last Published

April 28th, 2022

Functions in tidytable (0.7.2)

case_when.

Case when
context

Context functions
drop_na.

Drop rows containing missing values
distinct.

Select distinct/unique rows
summarize.

Aggregate data using summary statistics
first.

Extract the first, last, or nth value from a vector
mutate_rowwise.

Add/modify columns by row
mutate_across.

Mutate multiple columns simultaneously
filter.

Filter rows on one or more conditions
slice.

Choose rows in a data.table
dt

Pipeable data.table call
inv_gc

Run invisible garbage collection
coalesce.

Coalesce missing values
crossing.

Create a data.table from all unique combinations of inputs
expand.

Expand a data.table to use all combinations of values
complete.

Complete a data.table with missing combinations of data
is_tidytable

Test if the object is a tidytable
n_distinct.

Count the number of unique values in a vector
n.

Number of observations in each group
rename_with.

Rename multiple columns
lags.

Get lagging or leading values
left_join.

Join two data.tables together
desc.

Descending order
expand_grid.

Create a data.table from all combinations of inputs
extract.

Extract a character column into multiple columns using regex
relocate.

Relocate a column to a new position
reexports

Objects exported from other packages
unite.

Unite multiple columns by pasting strings together
rename.

Rename variables by name
pull.

Pull out a single variable
map.

Apply a function to each element of a vector or list
fill.

Fill in missing values with previous or next value
mutate.

Add/modify/delete columns
new_tidytable

Create a tidytable from a list
enframe.

Convert a vector to a data.table/tidytable
row_number.

Return row number
%>%

Pipe operator
count.

Count observations by group
select.

Select or drop columns
unnest.

Unnest list-columns
group_split.

Split data frame by groups
%notin%

notin operator
ifelse.

Fast ifelse
if_all.

Create conditions on a selection of columns
unnest_longer.

Unnest a list-column of vectors into regular columns
replace_na.

Replace missing values
unnest_wider.

Unnest a list-column of vectors into a wide data frame
get_dummies.

Convert character and factor columns to dummy variables
fread.

Read/write files
pivot_wider.

Pivot data from long to wide
pivot_longer.

Pivot data from wide to long
tidytable

Build a data.table/tidytable
top_n.

Select top (or bottom) n rows (by value)
nest.

Nest data.tables
separate.

Separate a character column into multiple columns
nest_by.

Nest data.tables
tidytable-vctrs

Internal vctrs methods
summarize_across.

Summarize multiple columns
uncount.

Uncount a data.table
separate_rows.

Separate a collapsed column into multiple rows
transmute.

Add new variables and drop all others
arrange.

Arrange/reorder rows
bind_cols.

Bind data.tables by row and column
as_tidytable

Coerce an object to a data.table/tidytable
across.

Apply a function across a selection of columns
arrange_across.

Arrange by a selection of variables
c_across.

Combine values from multiple columns
add_count.

Add a count column to the data frame
case.

data.table::fcase() with vectorized default
between.

Do the values from x fall between the left and right bounds?