The assertr package supplies a suite of functions designed to verify
assumptions about data early in an analysis pipeline so that
data errors are spotted early and can be addressed quickly.
This package does not need to be used with the magrittr/dplyr piping
mechanism but the examples in this README use them for clarity.
Installation
You can install the latest version on CRAN like this
install.packages("assertr")
or you can install the bleeding-edge development version like this:
This package offers five assertion functions, assert, verify,
insist, assert_rows, and insist_rows, that are designed to be used
shortly after data-loading in an analysis pipeline…
Let’s say, for example, that the R’s built-in car dataset, mtcars, was not
built-in but rather procured from an external source that was known for making
errors in data entry or coding. Pretend we wanted to find the average
miles per gallon for each number of engine cylinders. We might want to first,
confirm
that it has the columns “mpg”, “vs”, and “am”
that the dataset contains more than 10 observations
that the column for ‘miles per gallon’ (mpg) is a positive number
that the column for ‘miles per gallon’ (mpg) does not contain a datum
that is outside 4 standard deviations from its mean, and
that the am and vs columns (automatic/manual and v/straight engine,
respectively) contain 0s and 1s only
each row contains at most 2 NAs
each row is unique jointly between the “mpg”, “am”, and “wt” columns
each row’s mahalanobis distance is within 10 median absolute deviations of
all the distances (for outlier detection)
This could be written (in order) using assertr like this:
verify - takes a data frame (its first argument is provided by
the %>% operator above), and a logical (boolean) expression. Then, verify
evaluates that expression using the scope of the provided data frame. If any
of the logical values of the expression’s result are FALSE, verify will
raise an error that terminates any further processing of the pipeline.
assert - takes a data frame, a predicate function, and an arbitrary
number of columns to apply the predicate function to. The predicate function
(a function that returns a logical/boolean value) is then applied to every
element of the columns selected, and will raise an error if it finds any
violations. Internally, the assert function uses dplyr‘s
select function to extract the columns to test the predicate function on.
insist - takes a data frame, a predicate-generating function, and an
arbitrary number of columns. For each column, the the predicate-generating
function is applied, returning a predicate. The predicate is then applied to
every element of the columns selected, and will raise an error if it finds any
violations. The reason for using a predicate-generating function to return a
predicate to use against each value in each of the selected rows is so
that, for example, bounds can be dynamically generated based on what the data
look like; this the only way to, say, create bounds that check if each datum is
within x z-scores, since the standard deviation isn’t known a priori.
Internally, the insist function uses dplyr‘s select function to extract
the columns to test the predicate function on.
assert_rows - takes a data frame, a row reduction function, a predicate
function, and an arbitrary number of columns to apply the predicate function
to. The row reduction function is applied to the data frame, and returns a value
for each row. The predicate function is then applied to every element of vector
returned from the row reduction function, and will raise an error if it finds
any violations. This functionality is useful, for example, in conjunction with
the num_row_NAs() function to ensure that there is below a certain number of
missing values in each row. Internally, the assert_rows function uses
dplyr‘sselect function to extract the columns to test the predicate
function on.
insist_rows - takes a data frame, a row reduction function, a
predicate-generating
function, and an arbitrary number of columns to apply the predicate function
to. The row reduction function is applied to the data frame, and returns a value
for each row. The predicate-generating function is then applied to the vector
returned from the row reduction function and the resultant predicate is
applied to each element of that vector. It will raise an error if it finds any
violations. This functionality is useful, for example, in conjunction with
the maha_dist() function to ensure that there are no flagrant outliers.
Internally, the assert_rows function uses dplyr‘sselect function to
extract the columns to test the predicate function on.
assertr also offers four (so far) predicate functions designed to be used
with the assert and assert_rows functions:
not_na - that checks if an element is not NA
within_bounds - that returns a predicate function that checks if a numeric
value falls within the bounds supplied, and
in_set - that returns a predicate function that checks if an element is
a member of the set supplied. (also allows inverse for “not in set”)
is_uniq - that checks to see if each element appears only once
and predicate generators designed to be used with the insist and insist_rows
functions:
within_n_sds - used to dynamically create bounds to check vector elements with
based on standard z-scores
within_n_mads - better method for dynamically creating bounds to check vector
elements with based on ‘robust’ z-scores (using median absolute deviation)
and the following row reduction functions designed to be used with assert_rows
and insist_rows:
num_row_NAs - counts number of missing values in each row
maha_dist - computes the mahalanobis distance of each row (for outlier
detection). It will coerce categorical variables into numerics if it needs to.
col_concat - concatenates all rows into strings
duplicated_across_cols - checking if a row contains a duplicated value
across columns
and, finally, some other utilities for use with verify
has_all_names - check if the data frame or list has all supplied names
has_only_names - check that a data frame or list have only the names
requested
has_class - checks if passed data has a particular class
assertr
What is it?
The assertr package supplies a suite of functions designed to verify assumptions about data early in an analysis pipeline so that data errors are spotted early and can be addressed quickly.
This package does not need to be used with the magrittr/dplyr piping mechanism but the examples in this README use them for clarity.
Installation
You can install the latest version on CRAN like this
or you can install the bleeding-edge development version like this:
What does it look like?
This package offers five assertion functions,
assert,verify,insist,assert_rows, andinsist_rows, that are designed to be used shortly after data-loading in an analysis pipeline…Let’s say, for example, that the R’s built-in car dataset,
mtcars, was not built-in but rather procured from an external source that was known for making errors in data entry or coding. Pretend we wanted to find the average miles per gallon for each number of engine cylinders. We might want to first, confirmThis could be written (in order) using
assertrlike this:If any of these assertions were violated, an error would have been raised and the pipeline would have been terminated early.
Let’s see what the error message look like when you chain a bunch of failing assertions together.
What does
assertrgive me?verify- takes a data frame (its first argument is provided by the%>%operator above), and a logical (boolean) expression. Then,verifyevaluates that expression using the scope of the provided data frame. If any of the logical values of the expression’s result areFALSE,verifywill raise an error that terminates any further processing of the pipeline.assert- takes a data frame, a predicate function, and an arbitrary number of columns to apply the predicate function to. The predicate function (a function that returns a logical/boolean value) is then applied to every element of the columns selected, and will raise an error if it finds any violations. Internally, theassertfunction usesdplyr‘sselectfunction to extract the columns to test the predicate function on.insist- takes a data frame, a predicate-generating function, and an arbitrary number of columns. For each column, the the predicate-generating function is applied, returning a predicate. The predicate is then applied to every element of the columns selected, and will raise an error if it finds any violations. The reason for using a predicate-generating function to return a predicate to use against each value in each of the selected rows is so that, for example, bounds can be dynamically generated based on what the data look like; this the only way to, say, create bounds that check if each datum is within x z-scores, since the standard deviation isn’t known a priori. Internally, theinsistfunction usesdplyr‘sselectfunction to extract the columns to test the predicate function on.assert_rows- takes a data frame, a row reduction function, a predicate function, and an arbitrary number of columns to apply the predicate function to. The row reduction function is applied to the data frame, and returns a value for each row. The predicate function is then applied to every element of vector returned from the row reduction function, and will raise an error if it finds any violations. This functionality is useful, for example, in conjunction with thenum_row_NAs()function to ensure that there is below a certain number of missing values in each row. Internally, theassert_rowsfunction usesdplyr‘sselectfunction to extract the columns to test the predicate function on.insist_rows- takes a data frame, a row reduction function, a predicate-generating function, and an arbitrary number of columns to apply the predicate function to. The row reduction function is applied to the data frame, and returns a value for each row. The predicate-generating function is then applied to the vector returned from the row reduction function and the resultant predicate is applied to each element of that vector. It will raise an error if it finds any violations. This functionality is useful, for example, in conjunction with themaha_dist()function to ensure that there are no flagrant outliers. Internally, theassert_rowsfunction usesdplyr‘sselectfunction to extract the columns to test the predicate function on.assertralso offers four (so far) predicate functions designed to be used with theassertandassert_rowsfunctions:not_na- that checks if an element is not NAwithin_bounds- that returns a predicate function that checks if a numeric value falls within the bounds supplied, andin_set- that returns a predicate function that checks if an element is a member of the set supplied. (also allows inverse for “not in set”)is_uniq- that checks to see if each element appears only onceand predicate generators designed to be used with the
insistandinsist_rowsfunctions:within_n_sds- used to dynamically create bounds to check vector elements with based on standard z-scoreswithin_n_mads- better method for dynamically creating bounds to check vector elements with based on ‘robust’ z-scores (using median absolute deviation)and the following row reduction functions designed to be used with
assert_rowsandinsist_rows:num_row_NAs- counts number of missing values in each rowmaha_dist- computes the mahalanobis distance of each row (for outlier detection). It will coerce categorical variables into numerics if it needs to.col_concat- concatenates all rows into stringsduplicated_across_cols- checking if a row contains a duplicated value across columnsand, finally, some other utilities for use with
verifyhas_all_names- check if the data frame or list has all supplied nameshas_only_names- check that a data frame or list have only the names requestedhas_class- checks if passed data has a particular classMore info
For more info, check out the
assertrvignetteOr read it here