import pointblank as pb
import polars as pl
= pl.DataFrame(
tbl
{"a": [5, 6, 5, 9, 7, 5],
"b": [5, 3, 1, 8, 2, 3],
"c": [2, 3, 1, 4, 3, 4],
}
)
pb.preview(tbl)
Validate.col_vals_ge
Validate.col_vals_ge(
columns,
value,=False,
na_pass=None,
pre=None,
thresholds=None,
actions=None,
brief=True,
active )
Are column data greater than or equal to a fixed value or data in another column?
The col_vals_ge()
validation method checks whether column values in a table are greater than or equal to a specified value=
(the exact comparison used in this function is col_val >= value
). The value=
can be specified as a single, literal value or as a column name given in col()
. This validation will operate over the number of test units that is equal to the number of rows in the table (determined after any pre=
mutation has been applied).
Parameters
columns :
str
|list
[str
] |Column
|ColumnSelector
|ColumnSelectorNarwhals
-
A single column or a list of columns to validate. Can also use
col()
with column selectors to specify one or more columns. If multiple columns are supplied or resolved, there will be a separate validation step generated for each column. value :
float
|int
|Column
-
The value to compare against. This can be a single value or a single column name given in
col()
. The latter option allows for a column-to-column comparison. For more information on which types of values are allowed, see the What Can Be Used invalue=
? section. na_pass :
bool
= False-
Should any encountered None, NA, or Null values be considered as passing test units? By default, this is
False
. Set toTrue
to pass test units with missing values. pre :
Callable
| None = None-
A optional preprocessing function or lambda to apply to the data table during interrogation. This function should take a table as input and return a modified table. Have a look at the Preprocessing section for more information on how to use this argument.
thresholds :
int
|float
|bool
|tuple
|dict
| Thresholds = None-
Set threshold failure levels for reporting and reacting to exceedences of the levels. The thresholds are set at the step level and will override any global thresholds set in
Validate(thresholds=...)
. The default isNone
, which means that no thresholds will be set locally and global thresholds (if any) will take effect. Look at the Thresholds section for information on how to set threshold levels. actions : Actions | None = None
-
Optional actions to take when the validation step(s) meets or exceeds any set threshold levels. If provided, the
Actions
class should be used to define the actions. brief :
str
|bool
| None = None-
An optional brief description of the validation step that will be displayed in the reporting table. You can use the templating elements like
"{step}"
to insert the step number, or"{auto}"
to include an automatically generated brief. IfTrue
the entire brief will be automatically generated. IfNone
(the default) then there won’t be a brief. active :
bool
= True-
A boolean value indicating whether the validation step should be active. Using
False
will make the validation step inactive (still reporting its presence and keeping indexes for the steps unchanged).
Returns
: Validate
-
The
Validate
object with the added validation step.
What Can Be Used in value=
?
The value=
argument allows for a variety of input types. The most common are:
- a single numeric value
- a single date or datetime value
- A
col()
object that represents a column name
When supplying a number as the basis of comparison, keep in mind that all resolved columns must also be numeric. Should you have columns that are of the date or datetime types, you can supply a date or datetime value as the value=
argument. There is flexibility in how you provide the date or datetime value, as it can be:
- a string-based date or datetime (e.g.,
"2023-10-01"
,"2023-10-01 13:45:30"
, etc.) - a date or datetime object using the
datetime
module (e.g.,datetime.date(2023, 10, 1)
,datetime.datetime(2023, 10, 1, 13, 45, 30)
, etc.)
Finally, when supplying a column name in the value=
argument, it must be specified within col()
. This is a column-to-column comparison and, crucially, the columns being compared must be of the same type (e.g., both numeric, both date, etc.).
Preprocessing
The pre=
argument allows for a preprocessing function or lambda to be applied to the data table during interrogation. This function should take a table as input and return a modified table. This is useful for performing any necessary transformations or filtering on the data before the validation step is applied.
The preprocessing function can be any callable that takes a table as input and returns a modified table. For example, you could use a lambda function to filter the table based on certain criteria or to apply a transformation to the data. Note that you can refer to columns via columns=
and value=col(...)
that are expected to be present in the transformed table, but may not exist in the table before preprocessing. Regarding the lifetime of the transformed table, it only exists during the validation step and is not stored in the Validate
object or used in subsequent validation steps.
Thresholds
The thresholds=
parameter is used to set the failure-condition levels for the validation step. If they are set here at the step level, these thresholds will override any thresholds set at the global level in Validate(thresholds=...)
.
There are three threshold levels: ‘warning’, ‘error’, and ‘critical’. The threshold values can either be set as a proportion failing of all test units (a value between 0
to 1
), or, the absolute number of failing test units (as integer that’s 1
or greater).
Thresholds can be defined using one of these input schemes:
- use the
Thresholds
class (the most direct way to create thresholds) - provide a tuple of 1-3 values, where position
0
is the ‘warning’ level, position1
is the ‘error’ level, and position2
is the ‘critical’ level - create a dictionary of 1-3 value entries; the valid keys: are ‘warning’, ‘error’, and ‘critical’
- a single integer/float value denoting absolute number or fraction of failing test units for the ‘warning’ level only
If the number of failing test units exceeds set thresholds, the validation step will be marked as ‘warning’, ‘error’, or ‘critical’. All of the threshold levels don’t need to be set, you’re free to set any combination of them.
Aside from reporting failure conditions, thresholds can be used to determine the actions to take for each level of failure (using the actions=
parameter).
Examples
For the examples here, we’ll use a simple Polars DataFrame with three numeric columns (a
, b
, and c
). The table is shown below:
Let’s validate that values in column a
are all greater than or equal to the value of 5
. We’ll determine if this validation had any failing test units (there are six test units, one for each row).
= (
validation =tbl)
pb.Validate(data="a", value=5)
.col_vals_ge(columns
.interrogate()
)
validation
STEP | COLUMNS | VALUES | TBL | EVAL | UNITS | PASS | FAIL | W | E | C | EXT | ||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
#4CA64C | 1 |
col_vals_ge()
|
✓ | 6 | 6 1.00 |
0 0.00 |
— | — | — | — |
Printing the validation
object shows the validation table in an HTML viewing environment. The validation table shows the single entry that corresponds to the validation step created by using col_vals_ge()
. All test units passed, and there are no failing test units.
Aside from checking a column against a literal value, we can also use a column name in the value=
argument (with the helper function col()
to perform a column-to-column comparison. For the next example, we’ll use col_vals_ge()
to check whether the values in column b
are greater than values in column c
.
= (
validation =tbl)
pb.Validate(data="b", value=pb.col("c"))
.col_vals_ge(columns
.interrogate()
)
validation
The validation table reports two failing test units. The specific failing cases are:
- Row 0:
b
is2
andc
is3
. - Row 4:
b
is3
andc
is4
.