Data scientists, according to interviews and expert estimates, spend from 50 percent to 80 percent of their time mired in this more mundane labor of collecting and preparing unruly digital data, before it can be explored for useful nuggets.
– “For Big-Data Scientists, ‘Janitor Work’ Is Key Hurdle to Insight” (New York Times, 2014)
janitor has simple functions for examining and cleaning dirty data. It was built with beginning and intermediate R users in mind and is optimized for user-friendliness. Advanced R users can perform many of these tasks already, but with janitor they can do it faster and save their thinking for the fun stuff.
The main janitor functions:
- perfectly format data.frame column names;
- create and format frequency tables of one, two, or three variables -
think an improved
table()
; and - provide other tools for cleaning and examining data.frames.
The tabulate-and-report functions approximate popular features of SPSS and Microsoft Excel.
janitor is a
#tidyverse-oriented
package. Specifically, it plays nicely with the %>%
pipe and is
optimized for cleaning data brought in with the
readr and
readxl packages.
You can install:
- the most recent officially-released version from CRAN with
install.packages("janitor")
- the latest development version from GitHub with
# install.packages("remotes")
remotes::install_github("sfirke/janitor")
# or from r-universe
install.packages("janitor", repos = c("https://sfirke.r-universe.dev", "https://cloud.r-project.org"))
A full description of each function, organized by topic, can be found in
janitor’s catalog of functions
vignette. There
you will find functions not mentioned in this README, like
compare_df_cols()
which provides a summary of differences in column
names and types when given a set of data.frames.
Below are quick examples of how janitor tools are commonly used.
Take this roster of teachers at a fictional American high school, stored in the Microsoft Excel file dirty_data.xlsx:
Dirtiness includes:
- A header at the top
- Dreadful column names
- Rows and columns containing Excel formatting but no data
- Dates in two different formats in a single column (MM/DD/YYYY and numbers)
- Values spread inconsistently over the “Certification” columns
Here’s that data after being read in to R:
library(readxl)
library(janitor)
library(dplyr)
library(here)
roster_raw <- read_excel(here("dirty_data.xlsx")) # available at https://github.com/sfirke/janitor
glimpse(roster_raw)
#> Rows: 14
#> Columns: 11
#> $ `Data most recently refreshed on:` <chr> "First Name", "Jason", "Jason", "Alicia", "Ada", "Desus", "Chien-…
#> $ ...2 <chr> "Last Name", "Bourne", "Bourne", "Keys", "Lovelace", "Nice", "Wu"…
#> $ ...3 <chr> "Employee Status", "Teacher", "Teacher", "Teacher", "Teacher", "A…
#> $ `Dec-27 2020` <chr> "Subject", "PE", "Drafting", "Music", NA, "Dean", "Physics", "Che…
#> $ ...5 <chr> "Hire Date", "39690", "43479", "37118", "38572", "42791", "11037"…
#> $ ...6 <chr> "% Allocated", "0.75", "0.25", "1", "1", "1", "0.5", "0.5", NA, "…
#> $ ...7 <chr> "Full time?", "Yes", "Yes", "Yes", "Yes", "Yes", "Yes", "Yes", NA…
#> $ ...8 <chr> "do not edit! --->", NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, …
#> $ ...9 <chr> "Certification", "Physical ed", "Physical ed", "Instr. music", "P…
#> $ ...10 <chr> "Certification", "Theater", "Theater", "Vocal music", "Computers"…
#> $ ...11 <chr> "Active?", "YES", "YES", "YES", "YES", "YES", "YES", "YES", NA, "…
Now, to clean it up, starting with the column names.
Name cleaning comes in two flavors. make_clean_names()
operates on
character vectors and can be used during data import:
roster_raw_cleaner <- read_excel(here("dirty_data.xlsx"),
skip = 1,
.name_repair = make_clean_names
)
glimpse(roster_raw_cleaner)
#> Rows: 13
#> Columns: 11
#> $ first_name <chr> "Jason", "Jason", "Alicia", "Ada", "Desus", "Chien-Shiung", "Chien-Shiung", NA, "J…
#> $ last_name <chr> "Bourne", "Bourne", "Keys", "Lovelace", "Nice", "Wu", "Wu", NA, "Joyce", "Lamarr",…
#> $ employee_status <chr> "Teacher", "Teacher", "Teacher", "Teacher", "Administration", "Teacher", "Teacher"…
#> $ subject <chr> "PE", "Drafting", "Music", NA, "Dean", "Physics", "Chemistry", NA, "English", "Sci…
#> $ hire_date <dbl> 39690, 43479, 37118, 38572, 42791, 11037, 11037, NA, 36423, 27919, 42221, 34700, 4…
#> $ percent_allocated <dbl> 0.75, 0.25, 1.00, 1.00, 1.00, 0.50, 0.50, NA, 0.50, 0.50, NA, NA, 0.80
#> $ full_time <chr> "Yes", "Yes", "Yes", "Yes", "Yes", "Yes", "Yes", NA, "No", "No", "No", "No", "No"
#> $ do_not_edit <lgl> NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA
#> $ certification <chr> "Physical ed", "Physical ed", "Instr. music", "PENDING", "PENDING", "Science 6-12"…
#> $ certification_2 <chr> "Theater", "Theater", "Vocal music", "Computers", NA, "Physics", "Physics", NA, "E…
#> $ active <chr> "YES", "YES", "YES", "YES", "YES", "YES", "YES", NA, "YES", "YES", "YES", "YES", "…
clean_names()
is a convenience version of make_clean_names()
that
can be used for piped data.frame workflows. The equivalent steps with
clean_names()
would be:
roster_raw <- roster_raw %>%
row_to_names(row_number = 1) %>%
clean_names()
The data.frame now has clean names. Let’s tidy it up further:
roster <- roster_raw %>%
remove_empty(c("rows", "cols")) %>%
remove_constant(na.rm = TRUE, quiet = FALSE) %>% # remove the column of all "Yes" values
mutate(
hire_date = convert_to_date(
hire_date, # handle the mixed-format dates
character_fun = lubridate::mdy
),
cert = dplyr::coalesce(certification, certification_2)
) %>%
select(-certification, -certification_2) # drop unwanted columns
#> Removing 1 constant columns of 10 columns total (Removed: active).
roster
#> # A tibble: 12 × 8
#> first_name last_name employee_status subject hire_date percent_allocated full_time cert
#> <chr> <chr> <chr> <chr> <date> <chr> <chr> <chr>
#> 1 Jason Bourne Teacher PE 2008-08-30 0.75 Yes Physical ed
#> 2 Jason Bourne Teacher Drafting 2019-01-14 0.25 Yes Physical ed
#> 3 Alicia Keys Teacher Music 2001-08-15 1 Yes Instr. music
#> 4 Ada Lovelace Teacher <NA> 2005-08-08 1 Yes PENDING
#> 5 Desus Nice Administration Dean 2017-02-25 1 Yes PENDING
#> 6 Chien-Shiung Wu Teacher Physics 1930-03-20 0.5 Yes Science 6-12
#> 7 Chien-Shiung Wu Teacher Chemistry 1930-03-20 0.5 Yes Science 6-12
#> 8 James Joyce Teacher English 1999-09-20 0.5 No English 6-12
#> 9 Hedy Lamarr Teacher Science 1976-06-08 0.5 No PENDING
#> 10 Carlos Boozer Coach Basketball 2015-08-05 <NA> No Physical ed
#> 11 Young Boozer Coach <NA> 1995-01-01 <NA> No Political sci.
#> 12 Micheal Larsen Teacher English 2009-09-15 0.8 No Vocal music
Use get_dupes()
to identify and examine duplicate records during data
cleaning. Let’s see if any teachers are listed more than once:
roster %>% get_dupes(contains("name"))
#> # A tibble: 4 × 9
#> first_name last_name dupe_count employee_status subject hire_date percent_allocated full_time cert
#> <chr> <chr> <int> <chr> <chr> <date> <chr> <chr> <chr>
#> 1 Chien-Shiung Wu 2 Teacher Physics 1930-03-20 0.5 Yes Science …
#> 2 Chien-Shiung Wu 2 Teacher Chemistry 1930-03-20 0.5 Yes Science …
#> 3 Jason Bourne 2 Teacher PE 2008-08-30 0.75 Yes Physical…
#> 4 Jason Bourne 2 Teacher Drafting 2019-01-14 0.25 Yes Physical…
Yes, some teachers appear twice. We ought to address this before counting employees.
A variable (or combinations of two or three variables) can be tabulated
with tabyl()
. The resulting data.frame can be tweaked and formatted
with the suite of adorn_
functions for quick analysis and printing of
pretty results in a report. adorn_
functions can be helpful with
non-tabyls, too.
Like table()
, but pipe-able, data.frame-based, and fully featured.
tabyl()
can be called two ways:
- On a vector, when tabulating a single variable:
tabyl(roster$subject)
- On a data.frame, specifying 1, 2, or 3 variable names to tabulate:
roster %>% tabyl(subject, employee_status)
.- Here the data.frame is passed in with the
%>%
pipe; this allowstabyl
to be used in an analysis pipeline
- Here the data.frame is passed in with the
One variable:
roster %>%
tabyl(subject)
#> subject n percent valid_percent
#> Basketball 1 0.08333333 0.1
#> Chemistry 1 0.08333333 0.1
#> Dean 1 0.08333333 0.1
#> Drafting 1 0.08333333 0.1
#> English 2 0.16666667 0.2
#> Music 1 0.08333333 0.1
#> PE 1 0.08333333 0.1
#> Physics 1 0.08333333 0.1
#> Science 1 0.08333333 0.1
#> <NA> 2 0.16666667 NA
Two variables:
roster %>%
filter(hire_date > as.Date("1950-01-01")) %>%
tabyl(employee_status, full_time)
#> employee_status No Yes
#> Administration 0 1
#> Coach 2 0
#> Teacher 3 4
Three variables:
roster %>%
tabyl(full_time, subject, employee_status, show_missing_levels = FALSE)
#> $Administration
#> full_time Dean
#> Yes 1
#>
#> $Coach
#> full_time Basketball NA_
#> No 1 1
#>
#> $Teacher
#> full_time Chemistry Drafting English Music PE Physics Science NA_
#> No 0 0 2 0 0 0 1 0
#> Yes 1 1 0 1 1 1 0 1
The adorn_
functions dress up the results of these tabulation calls
for fast, basic reporting. Here are some of the functions that augment a
summary table for reporting:
roster %>%
tabyl(employee_status, full_time) %>%
adorn_totals("row") %>%
adorn_percentages("row") %>%
adorn_pct_formatting() %>%
adorn_ns() %>%
adorn_title("combined")
#> employee_status/full_time No Yes
#> Administration 0.0% (0) 100.0% (1)
#> Coach 100.0% (2) 0.0% (0)
#> Teacher 33.3% (3) 66.7% (6)
#> Total 41.7% (5) 58.3% (7)
Pipe that right into knitr::kable()
in your RMarkdown report.
These modular adornments can be layered to reduce R’s deficit against
Excel and SPSS when it comes to quick, informative counts. Learn more
about tabyl()
and the adorn_
functions from the tabyls
vignette.
You are welcome to:
- submit suggestions and report bugs: https://github.com/sfirke/janitor/issues
- let me know what you think on Mastodon: @[email protected]
- compose a friendly e-mail to: