nvtabular.ops.FillMissing

class nvtabular.ops.FillMissing(fill_val=0, add_binary_cols=False)[source]

Bases: nvtabular.ops.operator.Operator

This operation replaces missing values with a constant pre-defined value

Example usage:

# Use FillMissing to define a workflow for continuous columns and specify the fill value
# Default is 0
cont_features = ['cont1', 'cont2', 'cont3'] >> ops.FillMissing() >> ...
processor = nvtabular.Workflow(cont_features)
Parameters
  • fill_val (float, default 0) – The constant value to replace missing values with.

  • add_binary_cols (boolean, default False) – When True, adds binary columns that indicate whether cells in each column were filled

__init__(fill_val=0, add_binary_cols=False)[source]

Methods

__init__([fill_val, add_binary_cols])

column_mapping(col_selector)

compute_column_schema(col_name, input_schema)

compute_input_schema(root_schema, …)

Given the schemas coming from upstream sources and a column selector for the input columns, returns a set of schemas for the input columns this operator will use :param root_schema: Base schema of the dataset before running any operators.

compute_output_schema(input_schema, col_selector)

Given a set of schemas and a column selector for the input columns, returns a set of schemas for the transformed columns this operator will produce :param input_schema: The schemas of the columns to apply this operator to :type input_schema: Schema :param col_selector: The column selector to apply to the input schema :type col_selector: ColumnSelector

compute_selector(input_schema, selector, …)

create_node(selector)

inference_initialize(col_selector, …)

load up extra configuration about this op.

output_column_names(col_selector)

Given a set of columns names returns the names of the transformed columns this operator will produce :param columns: The columns to apply this operator to :type columns: list of str, or list of list of str

transform(col_selector, df)

Transform the dataframe by applying this operator to the set of input columns

Attributes

dependencies

Defines an optional list of column dependencies for this operator.

dynamic_dtypes

label

output_dtype

output_properties

output_tags

supports

Returns what kind of data representation this operator supports

transform(col_selector: merlin.dag.selector.ColumnSelector, df: pandas.core.frame.DataFrame)pandas.core.frame.DataFrame[source]

Transform the dataframe by applying this operator to the set of input columns

Parameters
  • columns (list of str or list of list of str) – The columns to apply this operator to

  • df (Dataframe) – A pandas or cudf dataframe that this operator will work on

Returns

Returns a transformed dataframe for this operator

Return type

DataFrame

inference_initialize(col_selector, inference_config)[source]

load up extra configuration about this op.

column_mapping(col_selector)[source]