Source code for pm4py.algo.discovery.temporal_profile.algorithm
from typing import Optional, Dict, Any, Union
import pandas as pd
from pm4py.algo.discovery.temporal_profile.variants import log, dataframe
from pm4py.objects.log.obj import EventLog
from pm4py.util import typing, pandas_utils
[docs]
def apply(
elog: Union[EventLog, pd.DataFrame],
parameters: Optional[Dict[Any, Any]] = None,
) -> typing.TemporalProfile:
"""
Discovers the temporal profile out of the provided log object.
Implements the approach described in:
Stertz, Florian, Jürgen Mangler, and Stefanie Rinderle-Ma. "Temporal Conformance Checking at Runtime based on Time-infused Process Models." arXiv preprint arXiv:2008.07262 (2020).
Parameters
----------
elog
Event log
parameters
Parameters, including:
- Parameters.ACTIVITY_KEY => the attribute to use as activity
- Parameters.START_TIMESTAMP_KEY => the attribute to use as start timestamp
- Parameters.TIMESTAMP_KEY => the attribute to use as timestamp
Returns
-------
temporal_profile
Temporal profile of the log
"""
if pandas_utils.check_is_pandas_dataframe(elog):
return dataframe.apply(elog, parameters=parameters)
return log.apply(elog, parameters=parameters)