import os from glob import glob import numpy as np from config import Config config = Config() eval_txts = sorted(glob('e_results/*_eval.txt')) print('eval_txts:', [_.split(os.sep)[-1] for _ in eval_txts]) score_panel = {} sep = '&' metrics = ['sm', 'wfm', 'hce'] # we used HCE for DIS and wFm for others. if 'DIS5K' not in config.task: metrics.remove('hce') for metric in metrics: print('Metric:', metric) current_line_nums = [] for idx_et, eval_txt in enumerate(eval_txts): with open(eval_txt, 'r') as f: lines = [l for l in f.readlines()[3:] if '.' in l] current_line_nums.append(len(lines)) for idx_et, eval_txt in enumerate(eval_txts): with open(eval_txt, 'r') as f: lines = [l for l in f.readlines()[3:] if '.' in l] for idx_line, line in enumerate(lines[:min(current_line_nums)]): # Consist line numbers by the minimal result file. properties = line.strip().strip(sep).split(sep) dataset = properties[0].strip() ckpt = properties[1].strip() if int(ckpt.split('--epoch_')[-1].strip()) < 0: continue targe_idx = { 'sm': [5, 2, 2, 5, 2], 'wfm': [3, 3, 8, 3, 8], 'hce': [7, -1, -1, 7, -1] }[metric][['DIS5K', 'COD', 'HRSOD', 'DIS5K+HRSOD+HRS10K', 'P3M-10k'].index(config.task)] if metric != 'hce': score_sm = float(properties[targe_idx].strip()) else: score_sm = int(properties[targe_idx].strip().strip('.')) if idx_et == 0: score_panel[ckpt] = [] score_panel[ckpt].append(score_sm) metrics_min = ['hce', 'mae'] max_or_min = min if metric in metrics_min else max score_max = max_or_min(score_panel.values(), key=lambda x: np.sum(x)) good_models = [] for k, v in score_panel.items(): if (np.sum(v) <= np.sum(score_max)) if metric in metrics_min else (np.sum(v) >= np.sum(score_max)): print(k, v) good_models.append(k) # Write with open(eval_txt, 'r') as f: lines = f.readlines() info4good_models = lines[:3] metric_names = [m.strip() for m in lines[1].strip().strip('&').split('&')[2:]] testset_mean_values = {metric_name: [] for metric_name in metric_names} for good_model in good_models: for idx_et, eval_txt in enumerate(eval_txts): with open(eval_txt, 'r') as f: lines = f.readlines() for line in lines: if set([good_model]) & set([_.strip() for _ in line.split(sep)]): info4good_models.append(line) metric_scores = [float(m.strip()) for m in line.strip().strip('&').split('&')[2:]] for idx_score, metric_score in enumerate(metric_scores): testset_mean_values[metric_names[idx_score]].append(metric_score) if 'DIS5K' in config.task: testset_mean_values_lst = ['{:<4}'.format(int(np.mean(v_lst[:-1]).round())) if name == 'HCE' else '{:.3f}'.format(np.mean(v_lst[:-1])).lstrip('0') for name, v_lst in testset_mean_values.items()] # [:-1] to remove DIS-VD sample_line_for_placing_mean_values = info4good_models[-2] numbers_placed_well = sample_line_for_placing_mean_values.replace(sample_line_for_placing_mean_values.split('&')[1].strip(), 'DIS-TEs').strip().split('&')[3:] for idx_number, (number_placed_well, testset_mean_value) in enumerate(zip(numbers_placed_well, testset_mean_values_lst)): numbers_placed_well[idx_number] = number_placed_well.replace(number_placed_well.strip(), testset_mean_value) testset_mean_line = '&'.join(sample_line_for_placing_mean_values.replace(sample_line_for_placing_mean_values.split('&')[1].strip(), 'DIS-TEs').split('&')[:3] + numbers_placed_well) + '\n' info4good_models.append(testset_mean_line) info4good_models.append(lines[-1]) info = ''.join(info4good_models) print(info) with open(os.path.join('e_results', 'eval-{}_best_on_{}.txt'.format(config.task, metric)), 'w') as f: f.write(info + '\n')