def test_precision_alignments(self): log = pm4py.read_xes("input_data/running-example.xes") net, im, fm = pm4py.discover_petri_net_inductive(log) precision_ali = pm4py.precision_alignments(log, net, im, fm)
def execute_script(): ENABLE_VISUALIZATION = True # reads a XES into an event log log1 = pm4py.read_xes("../tests/input_data/running-example.xes") # reads a CSV into a dataframe df = pd.read_csv("../tests/input_data/running-example.csv") # formats the dataframe with the mandatory columns for process mining purposes df = pm4py.format_dataframe(df, case_id="case:concept:name", activity_key="concept:name", timestamp_key="time:timestamp") # converts the dataframe to an event log log2 = pm4py.convert_to_event_log(df) # converts the log read from XES into a stream and dataframe respectively stream1 = pm4py.convert_to_event_stream(log1) df2 = pm4py.convert_to_dataframe(log1) # writes the log1 to a XES file pm4py.write_xes(log1, "ru1.xes") dfg, dfg_sa, dfg_ea = pm4py.discover_dfg(log1) petri_alpha, im_alpha, fm_alpha = pm4py.discover_petri_net_alpha(log1) petri_inductive, im_inductive, fm_inductive = pm4py.discover_petri_net_inductive(log1) petri_heuristics, im_heuristics, fm_heuristics = pm4py.discover_petri_net_heuristics(log1) tree_inductive = pm4py.discover_process_tree_inductive(log1) heu_net = pm4py.discover_heuristics_net(log1) pm4py.write_dfg(dfg, dfg_sa, dfg_ea, "ru_dfg.dfg") pm4py.write_pnml(petri_alpha, im_alpha, fm_alpha, "ru_alpha.pnml") pm4py.write_pnml(petri_inductive, im_inductive, fm_inductive, "ru_inductive.pnml") pm4py.write_pnml(petri_heuristics, im_heuristics, fm_heuristics, "ru_heuristics.pnml") pm4py.write_ptml(tree_inductive, "ru_inductive.ptml") dfg, dfg_sa, dfg_ea = pm4py.read_dfg("ru_dfg.dfg") petri_alpha, im_alpha, fm_alpha = pm4py.read_pnml("ru_alpha.pnml") petri_inductive, im_inductive, fm_inductive = pm4py.read_pnml("ru_inductive.pnml") petri_heuristics, im_heuristics, fm_heuristics = pm4py.read_pnml("ru_heuristics.pnml") tree_inductive = pm4py.read_ptml("ru_inductive.ptml") pm4py.save_vis_petri_net(petri_alpha, im_alpha, fm_alpha, "ru_alpha.png") pm4py.save_vis_petri_net(petri_inductive, im_inductive, fm_inductive, "ru_inductive.png") pm4py.save_vis_petri_net(petri_heuristics, im_heuristics, fm_heuristics, "ru_heuristics.png") pm4py.save_vis_process_tree(tree_inductive, "ru_inductive_tree.png") pm4py.save_vis_heuristics_net(heu_net, "ru_heunet.png") pm4py.save_vis_dfg(dfg, dfg_sa, dfg_ea, "ru_dfg.png") pm4py.save_vis_events_per_time_graph(log1, "ev_time.png") pm4py.save_vis_case_duration_graph(log1, "cd.png") pm4py.save_vis_dotted_chart(log1, "dotted_chart.png") pm4py.save_vis_performance_spectrum(log1, ["register request", "decide"], "ps.png") if ENABLE_VISUALIZATION: pm4py.view_petri_net(petri_alpha, im_alpha, fm_alpha, format="svg") pm4py.view_petri_net(petri_inductive, im_inductive, fm_inductive, format="svg") pm4py.view_petri_net(petri_heuristics, im_heuristics, fm_heuristics, format="svg") pm4py.view_process_tree(tree_inductive, format="svg") pm4py.view_heuristics_net(heu_net, format="svg") pm4py.view_dfg(dfg, dfg_sa, dfg_ea, format="svg") aligned_traces = pm4py.conformance_diagnostics_alignments(log1, petri_inductive, im_inductive, fm_inductive) replayed_traces = pm4py.conformance_diagnostics_token_based_replay(log1, petri_inductive, im_inductive, fm_inductive) fitness_tbr = pm4py.fitness_token_based_replay(log1, petri_inductive, im_inductive, fm_inductive) print("fitness_tbr", fitness_tbr) fitness_align = pm4py.fitness_alignments(log1, petri_inductive, im_inductive, fm_inductive) print("fitness_align", fitness_align) precision_tbr = pm4py.precision_token_based_replay(log1, petri_inductive, im_inductive, fm_inductive) print("precision_tbr", precision_tbr) precision_align = pm4py.precision_alignments(log1, petri_inductive, im_inductive, fm_inductive) print("precision_align", precision_align) print("log start activities = ", pm4py.get_start_activities(log2)) print("df start activities = ", pm4py.get_start_activities(df2)) print("log end activities = ", pm4py.get_end_activities(log2)) print("df end activities = ", pm4py.get_end_activities(df2)) print("log attributes = ", pm4py.get_event_attributes(log2)) print("df attributes = ", pm4py.get_event_attributes(df2)) print("log org:resource values = ", pm4py.get_event_attribute_values(log2, "org:resource")) print("df org:resource values = ", pm4py.get_event_attribute_values(df2, "org:resource")) print("start_activities len(filt_log) = ", len(pm4py.filter_start_activities(log2, ["register request"]))) print("start_activities len(filt_df) = ", len(pm4py.filter_start_activities(df2, ["register request"]))) print("end_activities len(filt_log) = ", len(pm4py.filter_end_activities(log2, ["pay compensation"]))) print("end_activities len(filt_df) = ", len(pm4py.filter_end_activities(df2, ["pay compensation"]))) print("attributes org:resource len(filt_log) (cases) cases = ", len(pm4py.filter_event_attribute_values(log2, "org:resource", ["Ellen"], level="case"))) print("attributes org:resource len(filt_log) (cases) events = ", len(pm4py.filter_event_attribute_values(log2, "org:resource", ["Ellen"], level="event"))) print("attributes org:resource len(filt_df) (events) cases = ", len(pm4py.filter_event_attribute_values(df2, "org:resource", ["Ellen"], level="case"))) print("attributes org:resource len(filt_df) (events) events = ", len(pm4py.filter_event_attribute_values(df2, "org:resource", ["Ellen"], level="event"))) print("attributes org:resource len(filt_df) (events) events notpositive = ", len(pm4py.filter_event_attribute_values(df2, "org:resource", ["Ellen"], level="event", retain=False))) print("rework df = ", pm4py.get_rework_cases_per_activity(df2)) print("rework log = ", pm4py.get_rework_cases_per_activity(log2)) print("cases overlap df = ", pm4py.get_case_overlap(df2)) print("cases overlap log = ", pm4py.get_case_overlap(log2)) print("cycle time df = ", pm4py.get_cycle_time(df2)) print("cycle time log = ", pm4py.get_cycle_time(log2)) pm4py.view_events_distribution_graph(df2, format="svg") pm4py.view_events_distribution_graph(log2, format="svg") print("variants log = ", pm4py.get_variants_as_tuples(log2)) print("variants df = ", pm4py.get_variants_as_tuples(df2)) print("variants filter log = ", len(pm4py.filter_variants(log2, [ ("register request", "examine thoroughly", "check ticket", "decide", "reject request")]))) print("variants filter df = ", len(pm4py.filter_variants(df2, [ ("register request", "examine thoroughly", "check ticket", "decide", "reject request")]))) print("paths filter log len = ", len(pm4py.filter_directly_follows_relation(log2, [("register request", "examine casually")]))) print("paths filter dataframe len = ", len(pm4py.filter_directly_follows_relation(df2, [("register request", "examine casually")]))) print("timeframe filter log events len = ", len(pm4py.filter_time_range(log2, "2011-01-01 00:00:00", "2011-02-01 00:00:00", mode="events"))) print("timeframe filter log traces_contained len = ", len(pm4py.filter_time_range(log2, "2011-01-01 00:00:00", "2011-02-01 00:00:00", mode="traces_contained"))) print("timeframe filter log traces_intersecting len = ", len(pm4py.filter_time_range(log2, "2011-01-01 00:00:00", "2011-02-01 00:00:00", mode="traces_intersecting"))) print("timeframe filter df events len = ", len(pm4py.filter_time_range(df2, "2011-01-01 00:00:00", "2011-02-01 00:00:00", mode="events"))) print("timeframe filter df traces_contained len = ", len(pm4py.filter_time_range(df2, "2011-01-01 00:00:00", "2011-02-01 00:00:00", mode="traces_contained"))) print("timeframe filter df traces_intersecting len = ", len(pm4py.filter_time_range(df2, "2011-01-01 00:00:00", "2011-02-01 00:00:00", mode="traces_intersecting"))) # remove the temporary files os.remove("ru1.xes") os.remove("ru_dfg.dfg") os.remove("ru_alpha.pnml") os.remove("ru_inductive.pnml") os.remove("ru_heuristics.pnml") os.remove("ru_inductive.ptml") os.remove("ru_alpha.png") os.remove("ru_inductive.png") os.remove("ru_heuristics.png") os.remove("ru_inductive_tree.png") os.remove("ru_heunet.png") os.remove("ru_dfg.png") os.remove("ev_time.png") os.remove("cd.png") os.remove("dotted_chart.png") os.remove("ps.png") wt_log = pm4py.discover_working_together_network(log2) wt_df = pm4py.discover_working_together_network(df2) print("log working together", wt_log) print("df working together", wt_df) print("log subcontracting", pm4py.discover_subcontracting_network(log2)) print("df subcontracting", pm4py.discover_subcontracting_network(df2)) print("log working together", pm4py.discover_working_together_network(log2)) print("df working together", pm4py.discover_working_together_network(df2)) print("log similar activities", pm4py.discover_activity_based_resource_similarity(log2)) print("df similar activities", pm4py.discover_activity_based_resource_similarity(df2)) print("log org roles", pm4py.discover_organizational_roles(log2)) print("df org roles", pm4py.discover_organizational_roles(df2)) pm4py.view_sna(wt_log) pm4py.save_vis_sna(wt_df, "ru_wt_df.png") os.remove("ru_wt_df.png")