Groupby
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class nvtabular.ops.Groupby(groupby_cols=None, sort_cols=None, aggs='list', name_sep='_', ascending=True)[source]
- Bases: - nvtabular.ops.operator.Operator- Groupby Transformation - Locally transform each partition of a Dataset with one or more groupby aggregations. - WARNING: This transformation does NOT move data between partitions. Please make sure that the target Dataset object is already shuffled by - groupby_cols, otherwise the output may be incorrect. See:- Dataset.shuffle_by_keys.- Example usage: - groupby_cols = ['user_id', 'session_id'] dataset = dataset.shuffle_by_keys(keys=groupby_cols) groupby_features = [ 'user_id', 'session_id', 'month', 'prod_id', ] >> ops.Groupby( groupby_cols=groupby_cols, sort_cols=['month'], aggs={ 'prod_id': 'list', 'month': ['first', 'last'], }, ) processor = nvtabular.Workflow(groupby_features) workflow.fit(dataset) dataset_transformed = workflow.transform(dataset) - Parameters
- groupby_cols (str or list of str) – The column names to be used as groupby keys. WARNING: Ensure the dataset was partitioned by those groupby keys (see above for an example). 
- sort_cols (str or list of str) – Columns to be used to sort each partition before groupby aggregation is performed. If this argument is not specified, the results will not be sorted. 
- aggs (dict, list or str) – Groupby aggregations to perform. Supported list-based aggregations include “list”, “first” & “last”. Most conventional aggregations supported by Pandas/cuDF are also allowed (e.g. “sum”, “count”, “max”, “mean”, etc.). 
- name_sep (str) – String separator to use for new column names. 
 
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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 
 
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compute_output_schema(input_schema: merlin.schema.schema.Schema, col_selector: merlin.dag.selector.ColumnSelector, prev_output_schema: Optional[merlin.schema.schema.Schema] = None) → merlin.schema.schema.Schema[source]
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property dependencies