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Most people regularly check that their data are valid after a manipulation. This process is critical to valid analysis results later on. Are there any impossible values in a newly created column? Does a dataframe have the correct number of columns and rows after a join?

Despite its importance, the data checking process is usually conducted informally by hand or by eye - instead of in code (e.g., as in a unit test). If something in your pipeline is modified later, how can you be sure everything that comes after that change remains valid?

The checkthat philosophy is that you already perform good data checks and you should keep doing it. But those checks would be even better if they lived in the code, rather than in your head. Checkthat therefore provides functions that closely resemble the checks you already do by hand or by eye, so that it is easy for you to also express them in code as you go.

Installation

The release version is available on CRAN.

install.packages("checkthat")

The development version is available on Github.

remotes::install_github("iancero/checkthat")

Basic usage

Checkthat’s main function is check_that(.data, ...), which takes a dataframe as its first argument, followed by any number of assertions you want to check for that dataframe.

When all checks pass, you get a brief message confirming that’s the case.

library(checkthat)

mtcars |>
  check_that(
    all(cyl > 2),
    !any(is.na(mpg))
  )
#> ✔ all data checks passing

When at least one check fails, check_that() throws an error, halting the potentially risky execution of subsequent code. It then gives you get a detailed breakdown of what the outcome was for each test.

mtcars |>
  check_that(
    all(cyl > 2),
    any(mpg > 35)
  )
#> 
#> ── Data Checks ─────────────────────────────────────────────────────────────────
#> 
#> ✔ all(cyl > 2) --> TRUE
#> ✖ any(mpg > 35) --> FALSE
#> 
#> ────────────────────────────────────────────────────────────────────────────────
#> 
#> Error in `cli_throw_test_error()`:
#> ! At least one data check failed.

The check_that() function is designed to work with both base R’s existing logical functions (e.g., all(), any()), as well it’s own set of more special helper functions. Theses helper functions are designed to be both readable and to mirror in code what you already do manually by eye-balling a dataset.

mtcars |>
  check_that(
    some_of(cyl > 4, at_least = .30, at_most = 25),
    whenever(wt < 3, then_expect = mpg > 19),
    for_case(2, mpg == 21, hp == 110)
  )
#> ✔ all data checks passing

Tidyverse pipelines

The check_that() function always invisibly returns the same .data you gave it (always unmodified). This allows you to easily integrate it directly into your data manipulation pipelines.

library(dplyr)

new_mtcars <- mtcars |>
  select(mpg) |>
  mutate(km_per_litre = 0.425 * mpg) |>
  check_that(max(km_per_litre) < 15)
#> ✔ all data checks passing

head(new_mtcars)
#>                    mpg km_per_litre
#> Mazda RX4         21.0       8.9250
#> Mazda RX4 Wag     21.0       8.9250
#> Datsun 710        22.8       9.6900
#> Hornet 4 Drive    21.4       9.0950
#> Hornet Sportabout 18.7       7.9475
#> Valiant           18.1       7.6925

Checking a pipeline at multiple points

Because it returns the same dataframe it received, check_that() can also be used at multiple points in a single pipeline. That way, you can check that multi-step processes are unfolding according to plan. This is be especially important for data tasks that are sensitive to the order of operations, or for checks on intermediate data that wont be available at the end.

Consider a surprisingly tricky example. Imagine we wanted to (1) create a factor variable (type) designating cars as either small ("sm") or large ("lg") based on their weight (wt). Further imagine that we then (2) planned to filter in only the small cars and (3) calculate their mean mpg as our desired_mpg. This value might then be used to inform a personal purchase decision or perhaps to establish an industry benchmark for a manufacturer.

The resulting data pipeline should be simple, but let’s use check_that() at multiple points to be safe.

  1. We wont have access to the wt variable at the end of the pipeline. So, right after we use wt to compute type, we immediately check that all the weights in the "sm" group are less than those in the "lg" group, as intended.
  2. At the end, we check that our desired_mpg is within a plausible range.

Here, the first check throws an error and stopS the pipeline. It also saves us from an inaccurate desired_mpg that the second check would not have caught.

mtcars |>
  mutate(type = factor(wt < 3, labels = c("sm", "lg"), ordered = TRUE)) |>
  check_that(max(wt[type == "sm"]) <= min(wt[type == "lg"])) |>
  filter(type == "sm") |>
  summarise(desired_mpg = mean(mpg)) |>
  check_that(desired_mpg > 15)
#> 
#> ── Data Checks ─────────────────────────────────────────────────────────────────
#> 
#> ✖ max(wt[type == "sm"]) <= min(wt[type == "lg"]) --> FALSE
#> 
#> ────────────────────────────────────────────────────────────────────────────────
#> 
#> Error in `cli_throw_test_error()`:
#> ! At least one data check failed.

What happened? A quick reading of factor(wt < 3, labels = c("sm", "lg"), ordered = TRUE) seems like it would correctly assign cars to the correct group. However, the labels are out of order in the function call.1 As a result, the heavy cars are mistakenly labelled "sm" and vice-versa.2

Importantly, this mistake (a) would have given us an erroneously low desired_mpg and (b) would have gone undetected by our final check_that(desired_mpg > 15). It was a call to check_that() earlier in the pipeline that caught the error and prevented us from drawing an bad conclusion about our data later on.

Helper functions

Checkthat’s philosophy is your existing data checks by eye are probably already good. Their only major problem is that they live in your head and not in your code. So, checkthat provides a range of helper functions to work alongside base R’s existing collection (e.g., all(), any()). These include both some basic and more special varieties.

Basic helpers

The most basic helpers are just syntactic sugar around R’s existing comparison operators: =, <, <=, >, >=. Each of them takes a logical vector as its first argument and requires you to specify a proportion (p) or count (n) of those values that must be true.

mtcars |>
  check_that(
    at_least(mpg < 35, p = .95),
    more_than(hp == 110, n = 2),
    exactly_equal(cyl == 6, n = 7),
    less_than(wt > 3, p = .75),
    at_most(is.na(mpg), n = 3),
  )
#> ✔ all data checks passing

Special helpers

The remaining helpers include some_of(), whenever(), and for_case() and are more flexible than their basic counterparts. They’re optimized for the kind of semi-approximate data checking you are likely already doing by eye.

For most people, this involves a general sense of what most of the data should look like most of the time, but not exact knowledge of specific proportions or counts. For example, you might have good reason to think some_of() the cyl values should be greater than 4, but you don’t know exactly how many. However, you do know it should probably be at_least 30%, but at_most 25 total cases in your dataset. Anything outside that range would be implausible and so you want to guard it with check_that().

mtcars |>
  check_that(
    some_of(cyl > 4, at_least = .30, at_most = 25),
    whenever(is_observed = wt < 3, then_expect = mpg > 19),
    for_case(2, mpg == 21, hp == 110)
  )
#> ✔ all data checks passing

Just like unit tests for production code, the tests created with these special helper functions will be technically imperfect and leave some (possibly important) scenarios addressed. After all, there’s a big range of possibilities between at_least = .30 and at_most = 25, and some of them might involve an undetected data problem.

However, checkthat takes the position that imperfect tests are still valuable informative and you should be able to take advantage of them. For example, if you have reasons to be concerned about the data in your column crossing the at_most = 25, you should be able to quickly and easily write that test with a combination of check_that() and some_of().

Moreover, a world of no tests at all is much worse than a world of some tests that fail to cover every case. With that in mind, checkthat’s special helper functions are designed to bring you from not writing down any tests in your code to quickly and easily coding the tests you already do by eye.

Checking the whole dataframe

In addition to concerns about the individual rows or columns in your data, you may also want to perform checks on the entire dataframe in question. For those cases, check_that() provides the .d pronoun, which works similarly to .x in the purrr package.

In short, .d is a copy of the data you provided to check_that(), which you can use to write checks about the whole dataset.

mtcars |>
  check_that(
    nrow(.d) > 10,
    "mpg" %in% names(.d)
  )
#> ✔ all data checks passing

This is especially useful for operations that could change the shape of your dataset (e.g., pivots, nests, joins). In the case of pivoting, you might want to check that the dataset have the correct anticipated dimensions.

library(tidyr)

mtcars |>
  check_that(ncol(.d) == 11, nrow(.d) == 32) |> # original dimensions
  pivot_longer(
    cols = everything(),
    names_to = "name",
    values_to = "values"
  ) |>
  check_that(ncol(.d) == 2, nrow(.d) == 32 * 11) # check that cols became rows
#> ✔ all data checks passing
#> ✔ all data checks passing

After a join, you may want to check that there is a new column in the expected location, but also that there are no unanticipated new rows.

cyl_ratings_df <- data.frame(cyl = c(4, 6, 8), group = c("A", "B", "C"))

mtcars |>
  left_join(cyl_ratings_df, by = "cyl") |>
  check_that(
    ncol(.d) == 12, # check that there's one new column
    names(.d)[length(names(.d))] == "group", # check new column is "group"
    nrow(.d) == 32 # check that no new rows
  )
#> ✔ all data checks passing

Alternatives

There are two pre-existing packages that served as inspiration for checkthat. They are both quite good and, depending on your use case, might be a better choice for you.

  • testthat implements unit testing for packages and is currently the most popular testing package for R. If your goal is to develop a package - rather than conduct a data analysis - then testthat will be a much better choice than checkthat.

  • testdat is inspired by testhat and - like checkthat - also implements unit testing for data. It is different from checkthat in two ways. First, it is a more mature package than checkthat, and is therefore potentially more stable in the near term. Second, whereas checkthat is designed to directly embed your tests into data manipulation pipelines, testdat is designed to place tests in separate code blocks or even files.

  • validate is another well-developed and popular data checking package. It can work is ways that are similar to checkthat (and it also has its own analogous check_that() function). However, the validate package is primarily dedicated to specifying your data validation rules in advance, rather than the on-the-fly approach for checkthat. This is ideal when you want your validation rules to be repeatable. For example, you might want Sepal.Width < 0.5*Sepal.Length to always be TRUE, no matter where you are in the analysis. In contrast, f you want simple checks that you write concurrently with the data manipulation code itself, then you might prefer checkthat.