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The col_is_integer()
validation function, the expect_col_is_integer()
expectation function, and the test_col_is_integer()
test function all check
whether one or more columns in a table is of the integer type. Like many of
the col_is_*()
-type functions in pointblank, the only requirement is a
specification of the column names. The validation function can be used
directly on a data table or with an agent object (technically, a
ptblank_agent
object) whereas the expectation and test functions can only
be used with a data table. The types of data tables that can be used include
data frames, tibbles, database tables (tbl_dbi
), and Spark DataFrames
(tbl_spark
). Each validation step or expectation will operate over a single
test unit, which is whether the column is an integer-type column or not.
col_is_integer(
x,
columns,
actions = NULL,
step_id = NULL,
label = NULL,
brief = NULL,
active = TRUE
)expect_col_is_integer(object, columns, threshold = 1)
test_col_is_integer(object, columns, threshold = 1)
For the validation function, the return value is either a
ptblank_agent
object or a table object (depending on whether an agent
object or a table was passed to x
). The expectation function invisibly
returns its input but, in the context of testing data, the function is
called primarily for its potential side-effects (e.g., signaling failure).
The test function returns a logical value.
A data frame, tibble (tbl_df
or tbl_dbi
), Spark DataFrame
(tbl_spark
), or, an agent object of class ptblank_agent
that is
created with create_agent()
.
The column (or a set of columns, provided as a character vector) to which this validation should be applied.
A list containing threshold levels so that the validation step
can react accordingly when exceeding the set levels. This is to be created
with the action_levels()
helper function.
One or more optional identifiers for the single or multiple
validation steps generated from calling a validation function. The use of
step IDs serves to distinguish validation steps from each other and provide
an opportunity for supplying a more meaningful label compared to the step
index. By default this is NULL
, and pointblank will automatically
generate the step ID value (based on the step index) in this case. One or
more values can be provided, and the exact number of ID values should (1)
match the number of validation steps that the validation function call will
produce (influenced by the number of columns
provided), (2) be an ID
string not used in any previous validation step, and (3) be a vector with
unique values.
An optional label for the validation step. This label appears in the agent report and for the best appearance it should be kept short.
An optional, text-based description for the validation step. If
nothing is provided here then an autobrief is generated by the agent,
using the language provided in create_agent()
's lang
argument (which
defaults to "en"
or English). The autobrief incorporates details of the
validation step so it's often the preferred option in most cases (where a
label
might be better suited to succinctly describe the validation).
A logical value indicating whether the validation step should
be active. If the validation function is working with an agent, FALSE
will make the validation step inactive (still reporting its presence and
keeping indexes for the steps unchanged). If the validation function will
be operating directly on data (no agent involvement), then any step with
active = FALSE
will simply pass the data through with no validation
whatsoever. Aside from a logical vector, a one-sided R formula using a
leading ~
can be used with .
(serving as the input data table) to
evaluate to a single logical value. With this approach, the pointblank
function has_columns()
can be used to determine whether to make a
validation step active on the basis of one or more columns existing in the
table (e.g., ~ . %>% has_columns(vars(d, e))
). The default for active
is TRUE
.
A data frame, tibble (tbl_df
or tbl_dbi
), or Spark
DataFrame (tbl_spark
) that serves as the target table for the expectation
function or the test function.
A simple failure threshold value for use with the
expectation (expect_
) and the test (test_
) function variants. By
default, this is set to 1
meaning that any single unit of failure in data
validation results in an overall test failure. Whole numbers beyond 1
indicate that any failing units up to that absolute threshold value will
result in a succeeding testthat test or evaluate to TRUE
. Likewise,
fractional values (between 0
and 1
) act as a proportional failure
threshold, where 0.15
means that 15 percent of failing test units results
in an overall test failure.
If providing multiple column names, the result will be an expansion of
validation steps to that number of column names (e.g., vars(col_a, col_b)
will result in the entry of two validation steps). Aside from column names in
quotes and in vars()
, tidyselect helper functions are available for
specifying columns. They are: starts_with()
, ends_with()
, contains()
,
matches()
, and everything()
.
Often, we will want to specify actions
for the validation. This argument,
present in every validation function, takes a specially-crafted list object
that is best produced by the action_levels()
function. Read that function's
documentation for the lowdown on how to create reactions to above-threshold
failure levels in validation. The basic gist is that you'll want at least a
single threshold level (specified as either the fraction of test units
failed, or, an absolute value), often using the warn_at
argument. This is
especially true when x
is a table object because, otherwise, nothing
happens. For the col_is_*()
-type functions, using action_levels(warn_at = 1)
or action_levels(stop_at = 1)
are good choices depending on the
situation (the first produces a warning, the other will stop()
).
Want to describe this validation step in some detail? Keep in mind that this
is only useful if x
is an agent. If that's the case, brief
the agent
with some text that fits. Don't worry if you don't want to do it. The
autobrief protocol is kicked in when brief = NULL
and a simple brief will
then be automatically generated.
A pointblank agent can be written to YAML with yaml_write()
and the
resulting YAML can be used to regenerate an agent (with yaml_read_agent()
)
or interrogate the target table (via yaml_agent_interrogate()
). When
col_is_integer()
is represented in YAML (under the top-level steps
key as
a list member), the syntax closely follows the signature of the validation
function. Here is an example of how a complex call of col_is_integer()
as a
validation step is expressed in R code and in the corresponding YAML
representation.
# R statement
agent %>%
col_is_integer(
vars(a),
actions = action_levels(warn_at = 0.1, stop_at = 0.2),
label = "The `col_is_integer()` step.",
active = FALSE
)# YAML representation
steps:
- col_is_integer:
columns: vars(a)
actions:
warn_fraction: 0.1
stop_fraction: 0.2
label: The `col_is_integer()` step.
active: false
In practice, both of these will often be shorter as only the columns
argument requires a value. Arguments with default values won't be written to
YAML when using yaml_write()
(though it is acceptable to include them with
their default when generating the YAML by other means). It is also possible
to preview the transformation of an agent to YAML without any writing to disk
by using the yaml_agent_string()
function.
2-24
Other validation functions:
col_exists()
,
col_is_character()
,
col_is_date()
,
col_is_factor()
,
col_is_logical()
,
col_is_numeric()
,
col_is_posix()
,
col_schema_match()
,
col_vals_between()
,
col_vals_decreasing()
,
col_vals_equal()
,
col_vals_expr()
,
col_vals_gte()
,
col_vals_gt()
,
col_vals_in_set()
,
col_vals_increasing()
,
col_vals_lte()
,
col_vals_lt()
,
col_vals_make_set()
,
col_vals_make_subset()
,
col_vals_not_between()
,
col_vals_not_equal()
,
col_vals_not_in_set()
,
col_vals_not_null()
,
col_vals_null()
,
col_vals_regex()
,
col_vals_within_spec()
,
conjointly()
,
row_count_match()
,
rows_complete()
,
rows_distinct()
,
serially()
,
specially()
,
tbl_match()
# For all examples here, we'll use
# a simple table with a character
# column (`a`) and a integer column
# (`b`)
tbl <-
dplyr::tibble(
a = letters[1:6],
b = 2:7
)
# A: Using an `agent` with validation
# functions and then `interrogate()`
# Validate that column `b` has the
# `integer` class
agent <-
create_agent(tbl) %>%
col_is_integer(vars(b)) %>%
interrogate()
# Determine if this validation
# had no failing test units (1)
all_passed(agent)
# Calling `agent` in the console
# prints the agent's report; but we
# can get a `gt_tbl` object directly
# with `get_agent_report(agent)`
# B: Using the validation function
# directly on the data (no `agent`)
# This way of using validation functions
# acts as a data filter: data is passed
# through but should `stop()` if there
# is a single test unit failing; the
# behavior of side effects can be
# customized with the `actions` option
tbl %>% col_is_integer(vars(b))
# C: Using the expectation function
# With the `expect_*()` form, we would
# typically perform one validation at a
# time; this is primarily used in
# testthat tests
expect_col_is_integer(tbl, vars(b))
# D: Using the test function
# With the `test_*()` form, we should
# get a single logical value returned
# to us
tbl %>% test_col_is_integer(vars(b))
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