nvtabular.ops.HashBucket
-
class
nvtabular.ops.
HashBucket
(num_buckets: Union[int, Dict[str, int]])[source] Bases:
nvtabular.ops.operator.Operator
This op maps categorical columns to a contiguous integer range by first hashing the column, then reducing modulo the number of buckets.
Example usage:
cat_names = ["feature_a", "feature_b"] # this will hash both features a and b to 100 buckets hash_features = cat_names >> ops.HashBucket({"feature_a": 100, "feature_b": 50}) processor = nvtabular.Workflow(hash_features)
The output of this op would be:
feature_a feature_b 0 90 11 1 70 40 2 52 9
If you would like to do frequency capping or frequency hashing, you should use Categorify op instead. See Categorify op for example usage.
- Parameters
num_buckets (int or dictionary:{column: num_hash_buckets}) – Column-wise modulo to apply after hash function. Note that this means that the corresponding value will be the categorical cardinality of the transformed categorical feature. If given as an int, that value will be used as the number of “hash buckets” for every feature. If a dictionary is passed, it will be used to specify explicit mappings from a column name to a number of buckets. In this case, only the columns specified in the keys of num_buckets will be transformed.
Methods
__init__
(num_buckets)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)get_embedding_sizes
(columns)inference_initialize
(col_selector, model_config)Configures this operator for use in inference.
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_properties
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
-
property
output_dtype