Source code for featuretools.synthesis.dfs

import pandas as pd

from featuretools.computational_backends import calculate_feature_matrix
from featuretools.entityset import EntitySet
from featuretools.synthesis.deep_feature_synthesis import DeepFeatureSynthesis
from featuretools.utils import entry_point


[docs]@entry_point('featuretools_dfs') def dfs(entities=None, relationships=None, entityset=None, target_entity=None, cutoff_time=None, instance_ids=None, agg_primitives=None, trans_primitives=None, groupby_trans_primitives=None, allowed_paths=None, max_depth=2, ignore_entities=None, ignore_variables=None, primitive_options=None, seed_features=None, drop_contains=None, drop_exact=None, where_primitives=None, max_features=-1, cutoff_time_in_index=False, save_progress=None, features_only=False, training_window=None, approximate=None, chunk_size=None, n_jobs=1, dask_kwargs=None, verbose=False, return_variable_types=None, progress_callback=None): '''Calculates a feature matrix and features given a dictionary of entities and a list of relationships. Args: entities (dict[str -> tuple(pd.DataFrame, str, str)]): Dictionary of entities. Entries take the format {entity id -> (dataframe, id column, (time_column))}. relationships (list[(str, str, str, str)]): List of relationships between entities. List items are a tuple with the format (parent entity id, parent variable, child entity id, child variable). entityset (EntitySet): An already initialized entityset. Required if entities and relationships are not defined. target_entity (str): Entity id of entity on which to make predictions. cutoff_time (pd.DataFrame or Datetime): Specifies times at which to calculate each instance. The resulting feature matrix will use data up to and including the cutoff_time. Can either be a DataFrame with 'instance_id' and 'time' columns, a DataFrame with the name of the index variable in the target entity and a time column, a list of values, or a single value to calculate for all instances. If the dataframe has more than two columns, any additional columns will be added to the resulting feature matrix. instance_ids (list): List of instances on which to calculate features. Only used if cutoff_time is a single datetime. agg_primitives (list[str or AggregationPrimitive], optional): List of Aggregation Feature types to apply. Default: ["sum", "std", "max", "skew", "min", "mean", "count", "percent_true", "num_unique", "mode"] trans_primitives (list[str or TransformPrimitive], optional): List of Transform Feature functions to apply. Default: ["day", "year", "month", "weekday", "haversine", "num_words", "num_characters"] groupby_trans_primitives (list[str or :class:`.primitives.TransformPrimitive`], optional): list of Transform primitives to make GroupByTransformFeatures with allowed_paths (list[list[str]]): Allowed entity paths on which to make features. max_depth (int) : Maximum allowed depth of features. ignore_entities (list[str], optional): List of entities to blacklist when creating features. ignore_variables (dict[str -> list[str]], optional): List of specific variables within each entity to blacklist when creating features. primitive_options (list[dict[str or tuple[str] -> dict] or dict[str or tuple[str] -> dict, optional]): Specify options for a single primitive or a group of primitives. Lists of option dicts are used to specify options per input for primitives with multiple inputs. Each option ``dict`` can have the following keys: ``"include_entities"`` List of entities to be included when creating features for the primitive(s). All other entities will be ignored (list[str]). ``"ignore_entities"`` List of entities to be blacklisted when creating features for the primitive(s) (list[str]). ``"include_variables"`` List of specific variables within each entity to include when creating feautres for the primitive(s). All other variables in a given entity will be ignored (dict[str -> list[str]]). ``"ignore_variables"`` List of specific variables within each entityt to blacklist when creating features for the primitive(s) (dict[str -> list[str]]). ``"include_groupby_entities"`` List of Entities to be included when finding groupbys. All other entities will be ignored (list[str]). ``"ignore_groupby_entities"`` List of entities to blacklist when finding groupbys (list[str]). ``"include_groupby_variables"`` List of specific variables within each entity to include as groupbys, if applicable. All other variables in each entity will be ignored (dict[str -> list[str]]). ``"ignore_groupby_variables"`` List of specific variables within each entity to blacklist as groupbys (dict[str -> list[str]]). seed_features (list[:class:`.FeatureBase`]): List of manually defined features to use. drop_contains (list[str], optional): Drop features that contains these strings in name. drop_exact (list[str], optional): Drop features that exactly match these strings in name. where_primitives (list[str or PrimitiveBase], optional): List of Primitives names (or types) to apply with where clauses. Default: ["count"] max_features (int, optional) : Cap the number of generated features to this number. If -1, no limit. features_only (bool, optional): If True, returns the list of features without calculating the feature matrix. cutoff_time_in_index (bool): If True, return a DataFrame with a MultiIndex where the second index is the cutoff time (first is instance id). DataFrame will be sorted by (time, instance_id). training_window (Timedelta or str, optional): Window defining how much time before the cutoff time data can be used when calculating features. If ``None`` , all data before cutoff time is used. Defaults to ``None``. Month and year units are not relative when Pandas Timedeltas are used. Relative units should be passed as a Featuretools Timedelta or a string. approximate (Timedelta): Bucket size to group instances with similar cutoff times by for features with costly calculations. For example, if bucket is 24 hours, all instances with cutoff times on the same day will use the same calculation for expensive features. save_progress (str, optional): Path to save intermediate computational results. n_jobs (int, optional): number of parallel processes to use when calculating feature matrix chunk_size (int or float or None or "cutoff time", optional): Number of rows of output feature matrix to calculate at time. If passed an integer greater than 0, will try to use that many rows per chunk. If passed a float value between 0 and 1 sets the chunk size to that percentage of all instances. If passed the string "cutoff time", rows are split per cutoff time. dask_kwargs (dict, optional): Dictionary of keyword arguments to be passed when creating the dask client and scheduler. Even if n_jobs is not set, using `dask_kwargs` will enable multiprocessing. Main parameters: cluster (str or dask.distributed.LocalCluster): cluster or address of cluster to send tasks to. If unspecified, a cluster will be created. diagnostics port (int): port number to use for web dashboard. If left unspecified, web interface will not be enabled. Valid keyword arguments for LocalCluster will also be accepted. return_variable_types (list[Variable] or str, optional): Types of variables to return. If None, default to Numeric, Discrete, and Boolean. If given as the string 'all', use all available variable types. progress_callback (callable): function to be called with incremental progress updates. Has the following parameters: update: percentage change (float between 0 and 100) in progress since last call progress_percent: percentage (float between 0 and 100) of total computation completed time_elapsed: total time in seconds that has elapsed since start of call Examples: .. code-block:: python from featuretools.primitives import Mean # cutoff times per instance entities = { "sessions" : (session_df, "id"), "transactions" : (transactions_df, "id", "transaction_time") } relationships = [("sessions", "id", "transactions", "session_id")] feature_matrix, features = dfs(entities=entities, relationships=relationships, target_entity="transactions", cutoff_time=cutoff_times) feature_matrix features = dfs(entities=entities, relationships=relationships, target_entity="transactions", features_only=True) ''' if not isinstance(entityset, EntitySet): entityset = EntitySet("dfs", entities, relationships) dfs_object = DeepFeatureSynthesis(target_entity, entityset, agg_primitives=agg_primitives, trans_primitives=trans_primitives, groupby_trans_primitives=groupby_trans_primitives, max_depth=max_depth, where_primitives=where_primitives, allowed_paths=allowed_paths, drop_exact=drop_exact, drop_contains=drop_contains, ignore_entities=ignore_entities, ignore_variables=ignore_variables, primitive_options=primitive_options, max_features=max_features, seed_features=seed_features) features = dfs_object.build_features( verbose=verbose, return_variable_types=return_variable_types) if features_only: return features if isinstance(cutoff_time, pd.DataFrame): feature_matrix = calculate_feature_matrix(features, entityset=entityset, cutoff_time=cutoff_time, training_window=training_window, approximate=approximate, cutoff_time_in_index=cutoff_time_in_index, save_progress=save_progress, chunk_size=chunk_size, n_jobs=n_jobs, dask_kwargs=dask_kwargs, verbose=verbose, progress_callback=progress_callback) else: feature_matrix = calculate_feature_matrix(features, entityset=entityset, cutoff_time=cutoff_time, instance_ids=instance_ids, training_window=training_window, approximate=approximate, cutoff_time_in_index=cutoff_time_in_index, save_progress=save_progress, chunk_size=chunk_size, n_jobs=n_jobs, dask_kwargs=dask_kwargs, verbose=verbose, progress_callback=progress_callback) return feature_matrix, features