pandera.core.pandas.components.Column.__init__#
- Column.__init__(dtype=None, checks=None, nullable=False, unique=False, report_duplicates='all', coerce=False, required=True, name=None, regex=False, title=None, description=None)[source]#
Create column validator object.
- Parameters
dtype (
Union[str,type,DataType,Type,ExtensionDtype,dtype,None]) – datatype of the column. The datatype for type-checking a dataframe. If a string is specified, then assumes one of the valid pandas string values: http://pandas.pydata.org/pandas-docs/stable/basics.html#dtypeschecks (
Union[Check,List[Union[Check,Hypothesis]],None]) – checks to verify validity of the columnnullable (
bool) – Whether or not column can contain null values.unique (
bool) – whether column values should be uniquereport_duplicates (
Union[Literal[‘exclude_first’],Literal[‘exclude_last’],Literal[‘all’]]) – how to report unique errors - exclude_first: report all duplicates except first occurence - exclude_last: report all duplicates except last occurence - all: (default) report all duplicatescoerce (
bool) – If True, when schema.validate is called the column will be coerced into the specified dtype. This has no effect on columns wheredtype=None.required (
bool) – Whether or not column is allowed to be missingname (
Union[str,Tuple[str, …],None]) – column name in dataframe to validate.regex (
bool) – whether thenameattribute should be treated as a regex pattern to apply to multiple columns in a dataframe.title (
Optional[str]) – A human-readable label for the column.description (
Optional[str]) – An arbitrary textual description of the column.
- Raises
SchemaInitError – if impossible to build schema from parameters
- Example
>>> import pandas as pd >>> import pandera as pa >>> >>> >>> schema = pa.DataFrameSchema({ ... "column": pa.Column(str) ... }) >>> >>> schema.validate(pd.DataFrame({"column": ["foo", "bar"]})) column 0 foo 1 bar
See here for more usage details.