# 12_pm-case-clusters.py # # content: (1) Load data and create event log # (2) Infos for clusters # (3) Process maps for clusters # # input: results/haum/eventlogs_pre-corona_item-clusters.csv # output: results/haum/pn_infos_clusters.csv # # last mod: 2024-03-10 import pm4py import pandas as pd from python_helpers import eval_pm, pn_infos #--------------- (1) Load data and create event logs --------------- dat = pd.read_csv("results/haum/eventlogs_2019_case-clusters_new.csv", sep = ";") event_log = pm4py.format_dataframe(dat, case_id = "case", activity_key = "event_new", timestamp_key = "date.start") #--------------- (2) Infos for clusters --------------- # Merge clusters into data frame eval = pd.DataFrame(columns = ["fitness", "precision", "generalizability", "simplicity", "sound", "narcs", "ntrans", "nplaces", "nvariants", "mostfreq"]) for cluster in event_log.cluster.unique().tolist(): eval = pd.concat([eval, pn_infos(event_log, "cluster", cluster)]) eval = eval.sort_index() eval.to_csv("results/haum/pn_infos_clusters.csv", sep = ";") #--------------- (3) Process maps for clusters --------------- for cluster in event_log.cluster.unique().tolist(): subdata = event_log[event_log.cluster == cluster] subnet, subim, subfm = pm4py.discover_petri_net_inductive(subdata, noise_threshold = .7) pm4py.save_vis_petri_net(subnet, subim, subfm, "results/processmaps/petrinet_cluster" + str(cluster) + "_cases.png") bpmn = pm4py.convert.convert_to_bpmn(subnet, subim, subfm) pm4py.vis.save_vis_bpmn(bpmn, "results/processmaps/bpmn_cluster" + str(cluster) + "_cases.png")