if len(data_t) < 2:
continue
- classification_lst, avgs, _ = classify_anomalies(data_t)
+ try:
+ classification_lst, avgs, _ = classify_anomalies(data_t)
+ except ValueError as err:
+ logging.info(f"{err} Skipping")
+ return
win_size = min(len(data_t), table[u"window"])
long_win_size = min(len(data_t), table[u"long-trend-window"])
build = str(build)
try:
version = input_data.metadata(job, build).get(u"version", u"")
+ duration = \
+ input_data.metadata(job, build).get(u"elapsedtime", u"")
except KeyError:
logging.error(f"Data for {job}: {build} is not present.")
return
continue
nic = groups.group(0)
failed_tests.append(f"{nic}-{tst_data[u'name']}")
- tbl_list.append(str(passed))
- tbl_list.append(str(failed))
+ tbl_list.append(passed)
+ tbl_list.append(failed)
+ tbl_list.append(duration)
tbl_list.extend(failed_tests)
file_name = f"{table[u'output-file']}{table[u'output-file-ext']}"
logging.info(f" Writing file: {file_name}")
with open(file_name, u"wt") as file_handler:
for test in tbl_list:
- file_handler.write(test + u'\n')
+ file_handler.write(f"{test}\n")
def table_failed_tests(table, input_data):