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parse_test_res.py
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parse_test_res.py
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"""
Goal
---
1. Read test results from train.log*** files
2. Compute mean and std across different folders (seeds)
Usage
---
Assume the output files are saved under output/my_experiment,
which contains results of different seeds, e.g.,
my_experiment/
exp-1/
train.log***
exp-2/
train.log***
Run the following command from the root directory:
$ python parse_test_res.py output/my_experiment/exp-1
Add --ci95 to the argument if you wanna get 95% confidence
interval instead of standard deviation:
$ python tools/parse_test_res.py output/my_experiment --ci95
If my_experiment/ has the following structure,
my_experiment/
exp-1/
train.log***
exp-2/
train.log***
Run
$ python parse_test_res.py output/my_experiment/ --multi-exp
"""
import re
import numpy as np
import os.path as osp
import os
import math
import argparse
from collections import OrderedDict, defaultdict
from dassl.utils import check_isfile, listdir_nohidden
import ipdb
def compute_ci95(res):
return 1.96 * np.std(res) / np.sqrt(len(res))
def parse_function(*metrics, directory='', args=None, end_signal=None):
print(f'Parsing files in {directory}')
# subdirs = listdir_nohidden(directory, sort=True)
outputs = []
file_list = os.listdir(directory)
for file in file_list:
if 'log' in file or 'pt.txt' in file:
num = 0
fpath = osp.join(directory, file)
with open(fpath, 'r') as f:
lines = f.readlines()
complete_flag = False
complete_flag = True
output = OrderedDict()
for line in lines:
# if 'Final Flag' in line:
if complete_flag:
if '[Validation] EPOCH: ' in line:
# ipdb.set_trace()
num = max(float(line.split('= ')[1]), num)
elif 'Best inctance avg mIOU is: ' in line:
num = max(float(line.split('Best inctance avg mIOU is: ')[1]), num)
elif '[TEST_VOTE_time ' in line:
num = max(float(line.split('best acc = ')[1]), num)
elif '[TEST] acc' in line:
num = max(float(line.split('[TEST] acc = ')[1]), num)
else:
pass
output['val acc:'] = num
if complete_flag:
outputs.append(output)
else:
pass
metrics_results = defaultdict(list)
for output in outputs:
msg = ''
for key, value in output.items():
if isinstance(value, float):
msg += f'{key}: {value:.3f}%. '
else:
msg += f'{key}: {value}. '
if key != 'file':
metrics_results[key].append(value)
print(msg)
output_results = OrderedDict()
print('===')
print(f'Summary of directory: {directory}')
for key, values in metrics_results.items():
avg = np.mean(values)
max_value = np.max(values)
std = compute_ci95(values) if args.ci95 else np.std(values)
print(f'* {key}: {max_value:.3f}%; {avg:.3f}% +- {std:.3f}%')
output_results[key] = avg
print('===')
return output_results
def parse_function_fewshot(*metrics, directory='', args=None, end_signal=None):
print(f'Parsing files in {directory}')
# subdirs = listdir_nohidden(directory, sort=True)
outputs = []
file_list = os.listdir(directory)
file_list.sort()
for file in file_list:
if 'log' in file or 'pt.txt' in file:
num = 0
way = 'None'
shot = 'None'
fpath = osp.join(directory, file)
with open(fpath, 'r') as f:
lines = f.readlines()
output = OrderedDict()
for line in lines:
if 'args.way :' in line:
way = line.split('args.way :')[1]
if 'args.shot :' in line:
shot = line.split('args.shot :')[1]
if way != 'None' and shot != 'None':
if 'acc = ' in line:
num = max(float(line.split('acc =')[1]), num)
else:
pass
exp_setting = way[:-1] + 'way' + shot[:-1] + 'shot'
output[exp_setting] = num
if way != 'None' and shot != 'None':
outputs.append(output)
else:
pass
metrics_results = defaultdict(list)
for output in outputs:
msg = ''
for key, value in output.items():
if isinstance(value, float):
msg += f'{key}: {value:.3f}%. '
else:
msg += f'{key}: {value}. '
if key != 'file':
metrics_results[key].append(value)
print(msg)
output_results = OrderedDict()
print('===')
print(f'Summary of directory: {directory}')
for key, values in metrics_results.items():
avg = np.mean(values)
max_value = np.max(values)
std = compute_ci95(values) if args.ci95 else np.std(values)
print(f'* {key}: {max_value:.3f}%; {avg:.3f}% +- {std:.3f}%')
output_results[key] = avg
print('===')
return output_results
def main(args, end_signal):
metric1 = {
'name': 'accuracy',
'regex': re.compile(r'\* accuracy: ([\.\deE+-]+)%')
}
metric2 = {
'name': 'error',
'regex': re.compile(r'\* error: ([\.\deE+-]+)%')
}
if args.few_shot:
if args.multi_exp:
final_results = defaultdict(list)
for directory in listdir_nohidden(args.directory, sort=True):
directory = osp.join(args.directory, directory)
results = parse_function_fewshot(
metric1,
metric2,
directory=directory,
args=args,
end_signal=end_signal
)
for key, value in results.items():
final_results[key].append(value)
else:
parse_function_fewshot(
metric1,
metric2,
directory=args.directory,
args=args,
end_signal=end_signal
)
else:
if args.multi_exp:
final_results = defaultdict(list)
for directory in listdir_nohidden(args.directory, sort=True):
directory = osp.join(args.directory, directory)
results = parse_function(
metric1,
metric2,
directory=directory,
args=args,
end_signal=end_signal
)
for key, value in results.items():
final_results[key].append(value)
else:
parse_function(
metric1,
metric2,
directory=args.directory,
args=args,
end_signal=end_signal
)
if __name__ == '__main__':
parser = argparse.ArgumentParser()
parser.add_argument('directory', type=str, help='path to directory')
parser.add_argument(
'--ci95',
action='store_true',
help=r'compute 95\% confidence interval'
)
parser.add_argument(
'--test-log', action='store_true', help='parse test-only logs'
)
parser.add_argument(
'--multi-exp', action='store_true', help='parse multiple experiments'
)
parser.add_argument(
'--few-shot', action='store_true', help='parse multiple experiments'
)
args = parser.parse_args()
end_signal = 'Finished training'
if args.test_log:
end_signal = '=> result'
main(args, end_signal)