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Upload 10_lr_attn_chunk_pool_instead_mean_12's state dict

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.gitattributes CHANGED
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  10_token_label_1_11/logs/10_token_label_1_11_log_plot.jpg filter=lfs diff=lfs merge=lfs -text
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  1_lr_add_bm25_10/logs/1_lr_add_bm25_10_log_plot.jpg filter=lfs diff=lfs merge=lfs -text
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  10_lr_attn_mask_pool_instead_cls_11/logs/10_lr_attn_mask_pool_instead_cls_11_log_plot.jpg filter=lfs diff=lfs merge=lfs -text
 
 
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  10_token_label_1_11/logs/10_token_label_1_11_log_plot.jpg filter=lfs diff=lfs merge=lfs -text
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  1_lr_add_bm25_10/logs/1_lr_add_bm25_10_log_plot.jpg filter=lfs diff=lfs merge=lfs -text
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+ 10_lr_attn_chunk_pool_instead_mean_12/logs/10_lr_attn_chunk_pool_instead_mean_12_log_plot.jpg filter=lfs diff=lfs merge=lfs -text
10_lr_attn_chunk_pool_instead_mean_12/10_lr_attn_chunk_pool_instead_mean_12.py ADDED
@@ -0,0 +1,1573 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ # %% [code]
2
+ get_ipython().system('pip install evaluate seqeval underthesea positional-encodings[pytorch]')
3
+
4
+ # %% [code]
5
+ import warnings
6
+ warnings.filterwarnings('ignore')
7
+
8
+ import torch
9
+ import torch.nn as nn
10
+ import torch.optim as optim
11
+ from torch.utils.data import Dataset, TensorDataset, DataLoader
12
+ import torch.nn.functional as F
13
+ import albumentations as albu
14
+ from transformers import AutoTokenizer, AutoModel
15
+ import torch.distributed as dist
16
+ from torch.nn.parallel import DistributedDataParallel as DDP
17
+ from positional_encodings.torch_encodings import PositionalEncoding1D
18
+
19
+ from sklearn.metrics import f1_score
20
+ from sklearn.preprocessing import MinMaxScaler, StandardScaler
21
+ from scipy.spatial.transform import Rotation as R
22
+ from sklearn.model_selection import KFold, StratifiedGroupKFold, GroupKFold, StratifiedKFold
23
+ from sklearn.metrics import precision_recall_fscore_support
24
+ from timm.utils import ModelEmaV3
25
+ import timm
26
+
27
+ import os
28
+ import gc
29
+ import json
30
+ from pathlib import Path
31
+ import pickle
32
+ from tqdm.auto import tqdm
33
+ import copy
34
+ import numpy as np
35
+ import pandas as pd
36
+ import polars as pl
37
+ from PIL import Image
38
+ import time
39
+ from tqdm import tqdm
40
+ from matplotlib import pyplot as plt
41
+ import seaborn as sns
42
+ from multiprocessing import Manager as MemoryManager
43
+ from functools import lru_cache
44
+ import shutil
45
+ import glob
46
+ import cv2
47
+ import random
48
+ import re
49
+ import joblib
50
+ import math
51
+ from huggingface_hub import HfApi, snapshot_download
52
+ import evaluate
53
+ from underthesea import word_tokenize as vi_tokenize_tool
54
+ import spacy
55
+ en_tokenize_tool = spacy.load("en_core_web_sm")
56
+ from collections import defaultdict, Counter
57
+
58
+ # %% [code]
59
+ file_path = "/kaggle/input/notebooks/sambui22022517/kltn-lr-bm25/bm25_scores.npy"
60
+
61
+ bm25_scores = np.load(file_path, allow_pickle=True)
62
+ print(bm25_scores.shape)
63
+
64
+ # %% [code]
65
+ # Global config
66
+ SEEDS = [26092004]
67
+ topk = 1
68
+ nfolds = 5
69
+ only_fold_idx = 0
70
+ test_only = 0
71
+ debug_only = 0
72
+
73
+ # Config thư mục
74
+ dataset = 'kltn/raw' # vhe, bkee, casie, kltn/only_issues, kltn/only_actions, kltn/raw
75
+ root_dir = f'/kaggle/input/notebooks/sambui22022517/kltn-data/{dataset}' ## Thư mục chứa file train, val, test
76
+ train_dir = f'{root_dir}'
77
+ # val_dir = f'{root_dir}/val'
78
+ test_dir = f'{root_dir}'
79
+
80
+ # Config checkpoints
81
+
82
+ # Config training
83
+ epochs = 18 if not debug_only else 2
84
+ batch_size = 32
85
+ device = "cuda" if torch.cuda.is_available() else "cpu"
86
+ # # Thêm biến toàn cục nào đó vào đây
87
+ repo_name = 'SS3M/kltn-experiments'
88
+ state_dict_save_name = "10_lr_attn_chunk_pool_instead_mean_12"
89
+ checkpoints_dir = state_dict_save_name
90
+ pretrained_dir = "/kaggle/working"
91
+ os.makedirs(f'{checkpoints_dir}', exist_ok=True)
92
+
93
+ backbone_model_name = "bert-base-uncased" if dataset == "casie" else "vinai/phobert-base"
94
+ word_tokenize = lambda text: [token.text for token in en_tokenize_tool(text)] if dataset == "casie" else vi_tokenize_tool(text)
95
+ max_len_dict = {
96
+ 'kltn/raw': 256,
97
+ 'kltn/only_issues': 52,
98
+ 'kltn/only_actions': 69,
99
+ 'vhe': 51,
100
+ 'bkee': 62,
101
+ 'casie': 40,
102
+ }
103
+ zero_events_rate_dict = {
104
+ 'kltn/raw': 1000,
105
+ 'kltn/only_issues': 0,
106
+ 'kltn/only_actions': 0.2,
107
+ 'vhe': 1000, # mean keep all zero-events samples
108
+ 'bkee': 1000,
109
+ 'casie': 1000,
110
+ }
111
+
112
+ max_len = max_len_dict[dataset]
113
+ max_n_parts = 2
114
+ max_span_len = 14
115
+ n_negs = 5 * 20
116
+ zero_events_rate = zero_events_rate_dict[dataset]
117
+
118
+ # Trainer
119
+ trainer_params = {
120
+ "training_time": "00:11:30:00",
121
+ "eval_mode": "max",
122
+ "topk": topk,
123
+ "save_name": state_dict_save_name,
124
+ "save_best": True,
125
+ "save_last": True,
126
+ "device": device,
127
+ "logging": True,
128
+ "logging_file": True,
129
+ "checkpoints_dir": checkpoints_dir,
130
+ "early_stopping": 30,
131
+ "eval_from_ratio": 0.4,
132
+ "eval_every": 1,
133
+ "schedule_in_step": False,
134
+ "use_ema": True,
135
+ "ema_from_ratio": 0.3,
136
+ "ema_decay": 0.9995,
137
+ "max_grad_norm": 200.0,
138
+ "return_best": True,
139
+ "return_last": True,
140
+ }
141
+
142
+ # Memory
143
+ train_memory_params = {
144
+ 'max_len': max_len,
145
+ 'max_n_parts': max_n_parts,
146
+ 'n_negs': n_negs,
147
+ }
148
+ val_memory_params = {
149
+ 'max_len': max_len,
150
+ 'max_n_parts': max_n_parts,
151
+ 'n_negs': n_negs,
152
+ }
153
+ corpus_memory_params = {
154
+ 'max_len': max_len,
155
+ 'max_n_parts': max_n_parts,
156
+ }
157
+
158
+ # Data Loader
159
+ def seed_worker(worker_id):
160
+ worker_seed = torch.initial_seed() % 2**32
161
+ np.random.seed(worker_seed)
162
+ random.seed(worker_seed)
163
+
164
+ train_loader_params = {
165
+ 'batch_size': batch_size,
166
+ 'shuffle': True,
167
+ 'pin_memory':True,
168
+ 'num_workers': 2,
169
+ 'drop_last': False,
170
+ 'worker_init_fn': seed_worker,
171
+ 'persistent_workers': False,
172
+ }
173
+ val_loader_params = {
174
+ 'batch_size': batch_size,
175
+ 'shuffle': False,
176
+ 'pin_memory':True,
177
+ 'num_workers': 1,
178
+ 'drop_last': False,
179
+ 'worker_init_fn': seed_worker,
180
+ 'persistent_workers': False,
181
+ }
182
+
183
+ # Model
184
+ model_params = {
185
+ 'backbone_name': backbone_model_name,
186
+ 'projection_dim': 256,
187
+ 'normalize': True,
188
+ }
189
+
190
+ # Loss Func
191
+ loss_func_params = {
192
+ 'lambda_contrastive': 1.0,
193
+ 'lambda_triplet': 0.5,
194
+ }
195
+ eval_func_params = {}
196
+
197
+ # Optim
198
+ optim_params = {
199
+ 'name': 'AdamW',
200
+ 'lr': 1e-4,
201
+ 'weight_decay': 1e-4,
202
+ }
203
+ scheduler_params = {
204
+ 'name': 'CosineAnnealingLR',
205
+ 'T_max': 20, # Số epoch để hoàn thành một chu kỳ giảm LR
206
+ 'eta_min': 1e-6 # Learning rate nhỏ nhất trong chu kỳ
207
+ }
208
+
209
+ # %% [code]
210
+ def set_seed(seed=42):
211
+ random.seed(seed)
212
+ np.random.seed(seed)
213
+ torch.manual_seed(seed)
214
+ torch.cuda.manual_seed(seed)
215
+ torch.cuda.manual_seed_all(seed) # if using multi-GPU
216
+ torch.use_deterministic_algorithms(False)
217
+ torch.backends.cudnn.deterministic = True
218
+ torch.backends.cudnn.benchmark = False
219
+ os.environ['PYTHONHASHSEED'] = str(seed)
220
+
221
+ # %% [code]
222
+ class CustomLoss(nn.Module):
223
+ def __init__(
224
+ self,
225
+ temperature=0.05,
226
+ margin=0.2,
227
+ lambda_contrastive=1.0,
228
+ lambda_triplet=0.5,
229
+ ):
230
+ super().__init__()
231
+
232
+ self.temperature = temperature
233
+ self.margin = margin
234
+
235
+ self.lambda_contrastive = lambda_contrastive
236
+ self.lambda_triplet = lambda_triplet
237
+
238
+ def forward(
239
+ self,
240
+ encoded_text,
241
+ encoded_pos,
242
+ encoded_neg,
243
+ pos_mask
244
+ ):
245
+ loss_contrastive = self.multi_pos_contrastive_loss(encoded_text, encoded_pos, encoded_neg, pos_mask)
246
+ loss_triplet = self.hardest_triplet_loss(encoded_text, encoded_pos, encoded_neg, pos_mask)
247
+
248
+ total_loss = (
249
+ self.lambda_contrastive * loss_contrastive +
250
+ self.lambda_triplet * loss_triplet
251
+ )
252
+
253
+ return {
254
+ "total": total_loss,
255
+ "contrastive_loss": loss_contrastive,
256
+ "triplet_loss": loss_triplet,
257
+ }
258
+
259
+ def multi_pos_contrastive_loss(self, q, pos, neg, pos_mask):
260
+ B, P, D = pos.shape
261
+ N = neg.shape[1]
262
+
263
+ # ===== concat docs =====
264
+ docs = torch.cat([pos, neg], dim=1) # [B, P+N, D]
265
+
266
+ # ===== similarity =====
267
+ logits = torch.matmul(q.unsqueeze(1), docs.transpose(1, 2)).squeeze(1)
268
+ logits = logits / self.temperature # [B, P+N]
269
+
270
+ # ===== labels =====
271
+ labels = torch.zeros_like(logits)
272
+ labels[:, :P] = pos_mask # chỉ pos hợp lệ
273
+
274
+ # ===== log-softmax =====
275
+ log_prob = logits - torch.logsumexp(logits, dim=1, keepdim=True)
276
+
277
+ # ===== normalize theo số pos thật =====
278
+ pos_count = pos_mask.sum(dim=1).clamp(min=1)
279
+
280
+ loss = -(labels * log_prob).sum(dim=1) / pos_count
281
+
282
+ return loss.mean()
283
+
284
+ def hardest_triplet_loss(self, q, pos, neg, pos_mask):
285
+ # ===== similarity =====
286
+ pos_sim = torch.matmul(q.unsqueeze(1), pos.transpose(1, 2)).squeeze(1) # [B, P]
287
+ neg_sim = torch.matmul(q.unsqueeze(1), neg.transpose(1, 2)).squeeze(1) # [B, N]
288
+
289
+ # ===== mask pos =====
290
+ pos_sim_masked = pos_sim.clone()
291
+ pos_sim_masked[pos_mask == 0] = float('inf') # loại pad
292
+
293
+ # ===== hardest =====
294
+ hardest_pos = pos_sim_masked.min(dim=1).values
295
+ hardest_neg = neg_sim.max(dim=1).values
296
+
297
+ # ===== loss =====
298
+ loss = F.relu(self.margin + hardest_neg - hardest_pos)
299
+
300
+ return loss.mean()
301
+
302
+ # %% [code]
303
+ class CustomEvalFn(nn.Module):
304
+ def __init__(self):
305
+ super().__init__()
306
+
307
+ def forward(self, pred_topk, real_topk):
308
+ """
309
+ pred_topk: List[List[int]] shape [B, K]
310
+ real_topk: List[List[int]] shape [B, Ki]
311
+ """
312
+
313
+ B = len(pred_topk)
314
+
315
+ total_recall = 0.0
316
+ total_map = 0.0
317
+ total_mrp = 0.0
318
+
319
+ for i in range(B):
320
+ preds = pred_topk[i]
321
+ gts = set(real_topk[i])
322
+
323
+ # ===== Recall@K =====
324
+ hit = any(p in gts for p in preds)
325
+ total_recall += 1.0 if hit else 0.0
326
+
327
+ # ===== AP =====
328
+ num_hits = 0
329
+ ap = 0.0
330
+
331
+ for rank, p in enumerate(preds, start=1):
332
+ if p in gts:
333
+ num_hits += 1
334
+ precision_at_rank = num_hits / rank
335
+ ap += precision_at_rank
336
+
337
+ if len(gts) > 0:
338
+ ap /= len(gts)
339
+
340
+ total_map += ap
341
+
342
+ # ===== R-Precision =====
343
+ r = len(gts)
344
+
345
+ if r > 0:
346
+ top_r = preds[:r]
347
+
348
+ tp_r = sum(p in gts for p in top_r)
349
+
350
+ rp = tp_r / r
351
+ else:
352
+ rp = 0.0
353
+
354
+ total_mrp += rp
355
+
356
+ recall = total_recall / B
357
+ mAP = total_map / B
358
+ mRP = total_mrp / B
359
+
360
+ return {
361
+ "recall": recall,
362
+ "mAP": mAP,
363
+ "mRP": mRP,
364
+ }
365
+
366
+ # %% [code]
367
+ class EncodeModel(nn.Module):
368
+ def __init__(self, backbone_name, projection_dim, normalize=True):
369
+ super().__init__()
370
+
371
+ self.encoder = AutoModel.from_pretrained(backbone_name)
372
+ hidden_size = self.encoder.config.hidden_size
373
+
374
+ self.proj = nn.Linear(hidden_size, projection_dim)
375
+ self.chunk_attn = nn.Linear(hidden_size, 1)
376
+
377
+ self.normalize = normalize
378
+
379
+ def cls_pooling(self, hidden):
380
+ return hidden[:, 0]
381
+
382
+ def chunk_attention_pooling(self, chunk_repr, dim):
383
+ scores = self.chunk_attn(chunk_repr)
384
+
385
+ weights = torch.softmax(scores, dim=dim)
386
+
387
+ pooled = (chunk_repr * weights).sum(dim=dim)
388
+
389
+ return pooled
390
+
391
+ def forward(self, input_ids, attention_mask, is_query=True):
392
+
393
+ if is_query:
394
+ # input_ids: [B, n_parts, L]
395
+ B, n_parts, L = input_ids.shape
396
+
397
+ input_ids = input_ids.view(-1, L)
398
+ attention_mask = attention_mask.view(-1, L)
399
+
400
+ outputs = self.encoder(
401
+ input_ids=input_ids,
402
+ attention_mask=attention_mask
403
+ )
404
+
405
+ hidden = outputs.last_hidden_state # [B*n_parts, L, H]
406
+
407
+ # token-level mean pooling
408
+ chunk_repr = self.cls_pooling(hidden) # [B*n_parts, H]
409
+ chunk_repr = chunk_repr.view(B, n_parts, -1) # [B, n_parts, H]
410
+ final_repr = self.chunk_attention_pooling(chunk_repr, dim=1) # [B, H]
411
+
412
+ else:
413
+ # input_ids: [B, K, n_parts, L]
414
+ B, K, n_parts, L = input_ids.shape
415
+
416
+ input_ids = input_ids.view(-1, L)
417
+ attention_mask = attention_mask.view(-1, L)
418
+
419
+ outputs = self.encoder(
420
+ input_ids=input_ids,
421
+ attention_mask=attention_mask
422
+ )
423
+
424
+ hidden = outputs.last_hidden_state # [B*K*n_parts, L, H]
425
+
426
+ # token-level pooling
427
+ chunk_repr = self.cls_pooling(hidden)
428
+ chunk_repr = chunk_repr.view(B, K, n_parts, -1) # [B, K, n_parts, H]
429
+ final_repr = self.chunk_attention_pooling(chunk_repr, dim=2) # [B, K, H]
430
+
431
+ emb = self.proj(final_repr)
432
+
433
+ if self.normalize:
434
+ emb = F.normalize(emb, dim=-1)
435
+
436
+ return emb
437
+
438
+ def test_model():
439
+ model = nn.DataParallel(EncodeModel('vinai/phobert-base', 256, True)).to(device)
440
+ model.eval()
441
+
442
+ bz = 32
443
+ vocab_size = 1000
444
+ qi = torch.randint(0, vocab_size, (bz, 1, 256)).to(device)
445
+ qa = torch.ones(bz, 1, 256).to(device)
446
+ di = torch.randint(0, vocab_size, (bz, 5, 2, 256)).to(device)
447
+ da = torch.ones(bz, 5, 2, 256).to(device)
448
+
449
+ st = time.time()
450
+ with torch.no_grad():
451
+ encoded_text = model(qi, qa, is_query=True)
452
+ encoded_pos = model(di, da, is_query=False)
453
+ encoded_neg = model(di, da, is_query=False)
454
+ print(encoded_text.shape, encoded_pos.shape, encoded_neg.shape)
455
+ print(time.time() - st)
456
+
457
+ del model, qi, qa, di, da, encoded_text, encoded_pos, encoded_neg
458
+ torch.cuda.empty_cache()
459
+ gc.collect()
460
+ test_model()
461
+
462
+ # %% [code]
463
+ def configure_optimizers(network, optim_params, scheduler_params):
464
+ try:
465
+ optim_params = copy.copy(optim_params)
466
+ scheduler_params = copy.copy(scheduler_params)
467
+
468
+ optim_name = optim_params.pop('name')
469
+ scheduler_name = scheduler_params.pop('name')
470
+
471
+ optimizer_cls = globals().get(optim_name) or getattr(optim, optim_name, None)
472
+ scheduler_cls = globals().get(scheduler_name) or getattr(optim.lr_scheduler, scheduler_name, None)
473
+
474
+ if optimizer_cls is None:
475
+ raise ValueError(f"Optimizer '{optim_name}' is not available!")
476
+
477
+ optimizer = optimizer_cls(network.parameters(), **optim_params)
478
+
479
+ scheduler = None
480
+ if scheduler_params and scheduler_cls: # Chỉ tạo scheduler nếu có tham số
481
+ scheduler = scheduler_cls(optimizer, **scheduler_params)
482
+
483
+ return optimizer, scheduler
484
+
485
+ except KeyError as e:
486
+ raise ValueError(f"Missing {e} in config!!")
487
+
488
+ def freeze(self, model):
489
+ model.eval()
490
+ for param in model.parameters():
491
+ param.requires_grad = False
492
+
493
+ def unfreeze(self, model):
494
+ model.train()
495
+ for param in model.parameters():
496
+ param.requires_grad = True
497
+
498
+ def reduce_batch_size(loader, ratio=0.5):
499
+ new_bs = max(1, int(loader.batch_size * ratio))
500
+
501
+ shuffle = isinstance(loader.sampler, RandomSampler)
502
+
503
+ new_loader = DataLoader(
504
+ dataset=loader.dataset,
505
+ batch_size=new_bs,
506
+ shuffle=shuffle,
507
+ sampler=None if shuffle else loader.sampler,
508
+ num_workers=loader.num_workers,
509
+ collate_fn=loader.collate_fn,
510
+ pin_memory=loader.pin_memory,
511
+ drop_last=loader.drop_last,
512
+ timeout=loader.timeout,
513
+ worker_init_fn=loader.worker_init_fn,
514
+ multiprocessing_context=loader.multiprocessing_context,
515
+ generator=loader.generator,
516
+ prefetch_factor=loader.prefetch_factor if loader.num_workers > 0 else None,
517
+ persistent_workers=loader.persistent_workers,
518
+ pin_memory_device=loader.pin_memory_device
519
+ )
520
+
521
+ return new_loader
522
+
523
+ def list_to_tuple(x):
524
+ if isinstance(x, (list, tuple)):
525
+ return tuple(list_to_tuple(i) for i in x)
526
+ return x
527
+
528
+ def fmt(x):
529
+ if isinstance(x, float):
530
+ return round(x, 5)
531
+ if isinstance(x, dict):
532
+ return {k: fmt(v) for k, v in x.items()}
533
+ if isinstance(x, list):
534
+ return [fmt(v) for v in x]
535
+ return x
536
+
537
+ class ModelEmaV3Proxy(ModelEmaV3):
538
+ def __getattr__(self, name):
539
+ try:
540
+ return super().__getattr__(name)
541
+ except AttributeError:
542
+ return getattr(self.module, name)
543
+
544
+ class DataParallelProxy(nn.DataParallel):
545
+ def __getattr__(self, name):
546
+ try:
547
+ return super().__getattr__(name)
548
+ except AttributeError:
549
+ attr = getattr(self.module, name)
550
+
551
+ if callable(attr):
552
+ def wrapper(*args, **kwargs):
553
+ return self._parallel_apply_method(name, *args, **kwargs)
554
+ return wrapper
555
+
556
+ return attr
557
+
558
+ def _parallel_apply_method(self, method_name, *inputs, **kwargs):
559
+ if not self.device_ids:
560
+ return getattr(self.module, method_name)(*inputs, **kwargs)
561
+
562
+ inputs_scattered, kwargs_scattered = self.scatter(inputs, kwargs, self.device_ids)
563
+
564
+ replicas = self.replicate(self.module, self.device_ids)
565
+
566
+ outputs = self.parallel_apply(
567
+ [getattr(replica, method_name) for replica in replicas],
568
+ inputs_scattered,
569
+ kwargs_scattered
570
+ )
571
+
572
+ return self.gather(outputs, self.output_device)
573
+
574
+ class Trainer:
575
+ def __init__(
576
+ self, training_time="00:11:30:00", eval_mode="max", topk=1, save_name="network", save_best=True, save_last=False, max_grad_norm=200.0,
577
+ logging=0, logging_file=False, checkpoints_dir="", early_stopping=False, eval_from_ratio=-1, eval_every=1, device='cpu',
578
+ schedule_in_step=True, use_ema=True, ema_from_ratio=-1, ema_decay=0.999, return_best=True, return_last=True
579
+ ):
580
+ self.ema_net = None
581
+
582
+ self.training_time = self._time_str_to_seconds(training_time)
583
+ self.mode = eval_mode
584
+ self.topk = topk
585
+ self.device = device
586
+ self.logging = logging if logging < epochs else 1
587
+ self.logging_file = logging_file
588
+ self.checkpoints_dir = checkpoints_dir
589
+ self.early_stopping = early_stopping
590
+ self.eval_from_ratio = eval_from_ratio
591
+ self.eval_every = eval_every
592
+ self.save_name = save_name
593
+ self.save_best = save_best
594
+ self.save_last = save_last
595
+ self.return_best = return_best
596
+ self.return_last = return_last
597
+ self.max_grad_norm = max_grad_norm
598
+ self.schedule_in_step = schedule_in_step
599
+ self.use_ema = use_ema
600
+ self.ema_from_ratio = ema_from_ratio
601
+ self.ema_decay = ema_decay
602
+
603
+ self.best_stage = [[float('-inf') if self.mode == 'max' else float('inf'), None, None]]
604
+ self.grad_scaler = torch.amp.GradScaler(self.device, init_scale=1024.0)
605
+
606
+ def fit(self, network, optimizer, scheduler, loss_fn, epochs, train_loader, val_loader=None, corpus_loader=None, eval_fn=None, start_epoch=1, start_training_time=None, refresh_every=3):
607
+ if eval_fn is None:
608
+ if self.mode == "max":
609
+ eval_fn = lambda *x: -loss_fn(*x)
610
+ else:
611
+ eval_fn = lambda *x: loss_fn(*x)
612
+
613
+ if torch.cuda.device_count() > 1:
614
+ network = DataParallelProxy(network)
615
+ network = network.to(self.device)
616
+
617
+ if not start_training_time:
618
+ start_training_time = time.time()
619
+
620
+ start_ema = int(epochs * self.ema_from_ratio)
621
+ start_eval = int(epochs * self.eval_from_ratio)
622
+
623
+ if val_loader is None:
624
+ print(f'[Trainer CallBack] 📢 Không có Val Set, không thể đánh giá và Early Stopping!')
625
+ else:
626
+ model_to_use_str = 'mô hình EMA' if self.use_ema else 'mô hình gốc'
627
+ start_model_update_str = f'Bắt đầu cập nhật EMA từ epoch {start_epoch + start_ema}!' if self.use_ema else ''
628
+ print(f'[Trainer CallBack] 📢 Đánh giá bằng {model_to_use_str} từ epoch {start_epoch + start_eval}!', start_model_update_str)
629
+
630
+ training_log = {}
631
+ for epoch in range(start_epoch, epochs+start_epoch):
632
+ if self.use_ema and self.ema_net is None and epoch - start_epoch >= start_ema:
633
+ self.ema_net = ModelEmaV3Proxy(network, self.ema_decay, device=self.device)
634
+
635
+ try:
636
+ eval_net = self.ema_net if (self.use_ema and self.ema_net is not None) else network
637
+ if (epoch - start_epoch) % refresh_every == 0:
638
+ encoded_docs = self._get_encoded_docs(eval_net, corpus_loader)
639
+ print(f"[Trainer CallBack] 📢 Epoch {epoch}/{epochs}: Refresh Encoded Doc (refresh_every={refresh_every})!")
640
+ elif (epoch - start_epoch - start_eval) % self.eval_every == 0 and epoch - start_epoch >= start_eval:
641
+ encoded_docs = self._get_encoded_docs(eval_net, corpus_loader)
642
+ print(f"[Trainer CallBack] 📢 Epoch {epoch}/{epochs}: Refresh Encoded Doc (eval_every={self.eval_every})!")
643
+
644
+ train_loss_epoch, train_loss_epoch_dict = self._train_epoch(network, train_loader, optimizer, scheduler, loss_fn, encoded_docs)
645
+ logging_dict = {'lr': [group['lr'] for group in optimizer.param_groups], 'train_loss': train_loss_epoch}
646
+ logging_dict.update(train_loss_epoch_dict)
647
+
648
+ if val_loader is not None and epoch - start_epoch >= start_eval and (epoch - start_epoch - start_eval) % self.eval_every == 0:
649
+ val_score, val_score_dict, _ = self._eval_epoch(eval_net, val_loader, eval_fn, encoded_docs)
650
+ update = self._update_best_network(eval_net, val_score, epoch)
651
+ logging_dict.update({'val_score': val_score, 'best_score': self.best_stage[0][0], 'new_best_model': update})
652
+ logging_dict.update(val_score_dict)
653
+ if not self.schedule_in_step and scheduler:
654
+ scheduler.step()
655
+
656
+ except RuntimeError as e:
657
+ if "out of memory" in str(e).lower():
658
+ print(f"[Trainer CallBack] ⚠️ Epoch {epoch}/{epochs}: CUDA Out of Memory! Clearing GPU cache...")
659
+ torch.cuda.empty_cache()
660
+ gc.collect()
661
+ if torch.cuda.is_available():
662
+ torch.cuda.synchronize()
663
+ print(f"[Trainer CallBack] ✅ Epoch {epoch}/{epochs}: GPU memory cleared")
664
+
665
+ train_loader = reduce_batch_size(train_loader, ratio=0.5)
666
+ if val_loader is not None:
667
+ val_loader = reduce_batch_size(val_loader, ratio=0.5)
668
+
669
+ logging_dict = {'lr': [group['lr'] for group in optimizer.param_groups], 'train_loss': float('inf')}
670
+ else:
671
+ raise
672
+
673
+ training_log[epoch] = logging_dict
674
+ if self.is_early_stopping(epoch):
675
+ print(f'[Trainer CallBack] 📢 Epoch {epoch}/{epochs}: Detect Overfitting! Breaking Training Process...')
676
+ break
677
+ if self.logging:
678
+ if epoch % self.logging == 0:
679
+ print(f'[Trainer CallBack] 📢 Epoch {epoch}/{epochs}:', fmt(logging_dict))
680
+ else:
681
+ print(f'{epoch}...', end=' ')
682
+
683
+ if self._at_time_limit(start_training_time):
684
+ print(f'[Trainer CallBack] ⚠️ Epoch {epoch}/{epochs}: Thời gian training giới hạn là {self.training_time}, hết giờ tại epoch {epoch}/{epochs}')
685
+ break
686
+
687
+ if self.logging_file:
688
+ os.makedirs(f'{self.checkpoints_dir}/logs', exist_ok=True)
689
+ with open(f"{self.checkpoints_dir}/logs/{self.save_name}_logging.json", "a", encoding="utf-8") as f:
690
+ f.write(json.dumps(training_log))
691
+
692
+ if self.use_ema and self.ema_net is not None:
693
+ self._save_state_dict(self.ema_net.module)
694
+ else:
695
+ self._save_state_dict(network)
696
+ print(f'[Trainer CallBack] 📢 Kết thúc training.\n')
697
+
698
+ best_model, last_model = None, None
699
+ eval_net = self.ema_net.module if (self.use_ema and self.ema_net is not None) else network
700
+ if self.return_best :
701
+ best_model = self.best_stage[0][2] if self.best_stage[0][2] is not None else eval_net.state_dict()
702
+ best_model = {k.replace("module.", ""): v.detach().cpu().clone() for k, v in best_model.items()}
703
+ if self.return_last:
704
+ last_model = eval_net.state_dict()
705
+ last_model = {k.replace("module.", ""): v.detach().cpu().clone() for k, v in last_model.items()}
706
+
707
+ del network
708
+ torch.cuda.empty_cache()
709
+ gc.collect()
710
+ return training_log, best_model, last_model
711
+
712
+ def _time_str_to_seconds(self, time_str):
713
+ days, hours, minutes, seconds = map(int, time_str.split(":"))
714
+ return days * 86400 + hours * 3600 + minutes * 60 + seconds
715
+
716
+ def _update_best_network(self, network, val_score, epoch):
717
+ topk = max(1, self.topk)
718
+ self.best_stage.append([val_score, epoch, {k: v.detach().cpu().clone() for k, v in network.state_dict().items()}])
719
+ self.best_stage = sorted(self.best_stage, reverse=(self.mode == 'max'), key=lambda x: x[0])[:topk]
720
+ if val_score in [x[0] for x in self.best_stage]:
721
+ return True
722
+ return False
723
+
724
+ def is_early_stopping(self, epoch):
725
+ if self.best_stage[0][1] is None:
726
+ return False
727
+ if not self.early_stopping:
728
+ return False
729
+ return epoch - self.best_stage[0][1] >= self.early_stopping
730
+
731
+ def _at_time_limit(self, start_training_time):
732
+ return time.time() - start_training_time >= self.training_time
733
+
734
+ def _save_state_dict(self, network):
735
+ if self.topk <= 0:
736
+ return
737
+
738
+ if self.save_best:
739
+ for r in range(self.topk):
740
+ os.makedirs(f'{self.checkpoints_dir}/r{r+1}s', exist_ok=True)
741
+
742
+ for rank, (score, epoch, state_dict) in enumerate(self.best_stage):
743
+ if state_dict is None:
744
+ continue
745
+ state_dict = {k.replace("module.", ""): v.detach().cpu().clone() for k, v in state_dict.items()}
746
+ torch.save(state_dict, f'{self.checkpoints_dir}/r{rank+1}s/{self.save_name}_r{rank+1}_vs{score:.5f}_{"ema" if self.ema_net is not None else ""}.pth')
747
+ if self.save_last:
748
+ os.makedirs(f'{self.checkpoints_dir}/lasts', exist_ok=True)
749
+ state_dict = {k.replace("module.", ""): v.detach().cpu().clone() for k, v in network.state_dict().items()}
750
+ torch.save(state_dict, f'{self.checkpoints_dir}/lasts/{self.save_name}_last_{"ema" if self.ema_net is not None else ""}.pth')
751
+
752
+ def _train_epoch(self, network, train_loader, optimizer, scheduler, loss_fn, encoded_docs):
753
+ network.train()
754
+ total_loss = 0
755
+ total_loss_dict = {}
756
+ for batch_idx, batch in enumerate(train_loader):
757
+ optimizer.zero_grad()
758
+ with torch.autocast(device_type=self.device, dtype=torch.float16):
759
+ loss, loss_dict = self._cal_loss(network, batch, batch_idx, loss_fn, encoded_docs)
760
+
761
+ for k, v in loss_dict.items():
762
+ t = total_loss_dict.get(k, 0)
763
+ total_loss_dict[k] = t + v
764
+ self.grad_scaler.scale(loss).backward()
765
+ self.grad_scaler.unscale_(optimizer)
766
+ grad_norm = nn.utils.clip_grad_norm_(network.parameters(), self.max_grad_norm)
767
+ # print(grad_norm) # Bỏ cmt dòng này để biết nên chọn max_grad_norm bằng bao nhiêu...
768
+ self.grad_scaler.step(optimizer)
769
+ self.grad_scaler.update()
770
+ if self.schedule_in_step and scheduler:
771
+ scheduler.step()
772
+ if self.use_ema and self.ema_net is not None:
773
+ self.ema_net.update(network)
774
+ total_loss += loss
775
+ return (total_loss / len(train_loader)).item(), {k: v.item() / len(train_loader) for k, v in total_loss_dict.items()}
776
+
777
+ def _eval_epoch(self, network, val_loader, eval_fn, encoded_docs):
778
+ network.eval()
779
+ total_score = 0.0
780
+ total_score_dict = {}
781
+ object_lists = None # sẽ init sau
782
+
783
+ with torch.no_grad():
784
+ for batch_idx, batch in enumerate(val_loader):
785
+ score, score_dict, objects = self._cal_val_score(network, batch, batch_idx, eval_fn, encoded_docs)
786
+ total_score += score
787
+
788
+ for k, v in score_dict.items():
789
+ t = total_score_dict.get(k, 0)
790
+ total_score_dict[k] = t + v
791
+
792
+ if objects:
793
+ if object_lists is None:
794
+ object_lists = [[] for _ in range(len(objects))]
795
+
796
+ for i, obj in enumerate(objects):
797
+ object_lists[i].append(obj.detach())
798
+
799
+ if object_lists is not None:
800
+ object_arrays = [
801
+ torch.concat(obj_list, dim=0).cpu().numpy()
802
+ for obj_list in object_lists
803
+ ]
804
+ else:
805
+ object_arrays = []
806
+
807
+ return total_score / len(val_loader), {k: v / len(val_loader) for k, v in total_score_dict.items()}, object_arrays
808
+
809
+ def _get_encoded_docs(self, network, corpus_loader):
810
+ network.eval()
811
+ with torch.no_grad():
812
+ encoded_docs = []
813
+ for batch_idx, batch in enumerate(corpus_loader):
814
+ input_ids = batch['input_ids'].to(self.device)
815
+ attn_mask = batch['attn_mask'].to(self.device)
816
+ encoded_doc = network(input_ids, attn_mask, is_query=False)
817
+ encoded_docs.append(encoded_doc)
818
+ encoded_docs = torch.concat(encoded_docs, dim=0).squeeze(1)
819
+ return encoded_docs
820
+
821
+ def _cal_loss(self, network, batch, batch_idx, loss_fn, encoded_docs):
822
+ # Bạn cần override _cal_loss để tính loss
823
+ text_input_ids = batch['text_input_ids'].to(self.device)
824
+ text_attn_mask = batch['text_attn_mask'].to(self.device)
825
+ pos_idxes = batch['pos_idxes'].to(self.device)
826
+ pos_mask = batch['pos_mask'].to(self.device)
827
+ neg_idxes = batch['neg_idxes'].to(self.device)
828
+
829
+ encoded_text = network(text_input_ids, text_attn_mask, is_query=True)
830
+ encoded_pos = encoded_docs[pos_idxes]
831
+ encoded_neg = encoded_docs[neg_idxes]
832
+
833
+ loss_dict = loss_fn(encoded_text, encoded_pos, encoded_neg, pos_mask)
834
+ return loss_dict['total'], loss_dict
835
+
836
+ def _cal_val_score(self, network, batch, batch_idx, eval_fn, encoded_docs):
837
+ # Bạn cần override _cal_val_score để tính val score, list bên cạnh là để trả về y hay pred gì đó (nếu cần)
838
+ text_input_ids = batch['text_input_ids'].to(self.device)
839
+ text_attn_mask = batch['text_attn_mask'].to(self.device)
840
+ gt_pos_idxes = batch['gt_pos_idxes']
841
+ encoded_text = network(text_input_ids, text_attn_mask, is_query=True)
842
+
843
+ scores = torch.matmul(encoded_text, encoded_docs.T)
844
+ topk_scores, topk_indices = torch.topk(scores, k=10)
845
+ pred_topk = [
846
+ idx[score > 0].tolist()
847
+ for score, idx in zip(topk_scores, topk_indices)
848
+ ]
849
+
850
+ pred_topk = list_to_tuple(pred_topk)
851
+ gt_pos_idxes = list_to_tuple(gt_pos_idxes)
852
+ score_dict = eval_fn(pred_topk, gt_pos_idxes)
853
+ return score_dict['recall'], score_dict, []
854
+
855
+ # %% [code]
856
+ def tokenize_to_parts(text, tokenizer, max_len, max_n_parts):
857
+ # Tokenize với overflow để chia thành nhiều đoạn
858
+ enc = tokenizer(
859
+ text,
860
+ max_length=max_len*max_n_parts,
861
+ truncation=True,
862
+ padding="max_length",
863
+ return_overflowing_tokens=True,
864
+ return_tensors="pt"
865
+ )
866
+
867
+ input_ids = enc["input_ids"].reshape(max_n_parts, max_len) # (n_parts, max_len)
868
+ attn_mask = enc["attention_mask"].reshape(max_n_parts, max_len) # (n_parts, max_len)
869
+
870
+ return input_ids, attn_mask
871
+
872
+ class LawRetrievalDataset(Dataset):
873
+ def __init__(self, all_data, using_idxes, corpus_dict, tokenizer, max_len, max_n_parts, n_negs):
874
+ super().__init__()
875
+
876
+ self.all_data = all_data
877
+ self.using_idxes = using_idxes
878
+ self.tokenizer = tokenizer
879
+ self.max_len = max_len
880
+ self.max_n_parts = max_n_parts
881
+ self.n_negs = n_negs
882
+
883
+ # ===== BUILD CORPUS =====
884
+ idx = 0
885
+ self.corpus_list = []
886
+ self.corpus_dict = {}
887
+
888
+ for doc_name, articles_dict in corpus_dict.items():
889
+ self.corpus_dict[doc_name] = {}
890
+ for article_idx, content in articles_dict.items():
891
+ self.corpus_list.append([doc_name, article_idx, content])
892
+ self.corpus_dict[doc_name][article_idx] = {
893
+ 'content': content,
894
+ 'idx': idx
895
+ }
896
+ idx += 1
897
+
898
+ def __len__(self):
899
+ return len(self.using_idxes)
900
+
901
+ # ===== ENCODE DOC =====
902
+ def _encode_contexts(self, idxes):
903
+ all_input_ids, all_attn_mask = [], []
904
+
905
+ for idx in idxes:
906
+ name, art, _ = self.corpus_list[idx]
907
+ corpus = self.corpus_dict[name][art]
908
+
909
+ if 'content_input_ids' in corpus:
910
+ content_input_ids = corpus['content_input_ids']
911
+ content_attn_mask = corpus['content_attn_mask']
912
+ else:
913
+ content = corpus['content']
914
+ content_input_ids, content_attn_mask = tokenize_to_parts(
915
+ content, self.tokenizer, self.max_len, self.max_n_parts
916
+ )
917
+ corpus['content_input_ids'] = content_input_ids
918
+ corpus['content_attn_mask'] = content_attn_mask
919
+
920
+ all_input_ids.append(content_input_ids)
921
+ all_attn_mask.append(content_attn_mask)
922
+
923
+ all_input_ids = torch.stack(all_input_ids)
924
+ all_attn_mask = torch.stack(all_attn_mask)
925
+
926
+ return all_input_ids, all_attn_mask
927
+
928
+ def __getitem__(self, idx):
929
+ ridx = self.using_idxes[idx]
930
+ data = self.all_data[ridx]
931
+
932
+ query_text = data['text']
933
+
934
+ text_input_ids, text_attn_mask = tokenize_to_parts(
935
+ query_text, self.tokenizer, self.max_len, 1
936
+ )
937
+
938
+ # ===== POS =====
939
+ gt_pos_idxes = []
940
+ hard_names = []
941
+ for law in data['relevant_law']:
942
+ name = law['doc']
943
+ art = law['art']
944
+ gt_pos_idxes.append(self.corpus_dict[name][art]['idx'])
945
+ if name not in hard_names:
946
+ hard_names.append(name)
947
+
948
+ pos_idxes = torch.tensor(gt_pos_idxes, dtype=torch.long)
949
+ pos_mask = torch.ones(len(pos_idxes))
950
+
951
+ # ===== NEG =====
952
+ hard_neg_idxes = []
953
+ for name in hard_names:
954
+ for content in self.corpus_dict[name].values():
955
+ if content['idx'] in gt_pos_idxes:
956
+ continue
957
+ hard_neg_idxes.append(content['idx'])
958
+
959
+ easy_neg_idxes = list(range(len(self.corpus_list)))
960
+ for i in gt_pos_idxes + hard_neg_idxes:
961
+ if i in easy_neg_idxes:
962
+ easy_neg_idxes.remove(i)
963
+
964
+ n_hards = min(len(hard_neg_idxes), self.n_negs // 2)
965
+ neg_idxes = random.sample(hard_neg_idxes, n_hards) + random.sample(easy_neg_idxes, self.n_negs - n_hards)
966
+ neg_idxes = torch.tensor(neg_idxes, dtype=torch.long)
967
+
968
+ return {
969
+ 'text_input_ids': text_input_ids,
970
+ 'text_attn_mask': text_attn_mask,
971
+ 'gt_pos_idxes': gt_pos_idxes,
972
+ 'pos_idxes': pos_idxes,
973
+ 'pos_mask': pos_mask,
974
+ 'neg_idxes': neg_idxes,
975
+ }
976
+
977
+ class CorpusDataset(Dataset):
978
+ def __init__(self, corpus_dict, tokenizer, max_len, max_n_parts):
979
+ super().__init__()
980
+ self.tokenizer = tokenizer
981
+ self.max_len = max_len
982
+ self.max_n_parts = max_n_parts
983
+
984
+ idx = 0
985
+ self.corpus_list = []
986
+ self.corpus_dict = {}
987
+ for doc_name, articles_dict in corpus_dict.items():
988
+ self.corpus_dict[doc_name] = {}
989
+ for article_idx, content in articles_dict.items():
990
+ self.corpus_list.append([doc_name, article_idx, content])
991
+ self.corpus_dict[doc_name][article_idx] = {'content': content, 'idx': idx}
992
+ idx += 1
993
+
994
+ def __len__(self):
995
+ return len(self.corpus_list)
996
+
997
+ def _encode_contexts(self, idxes):
998
+ all_input_ids, all_attn_mask = [], []
999
+ for idx in idxes:
1000
+ name = self.corpus_list[idx][0]
1001
+ art = self.corpus_list[idx][1]
1002
+ corpus = self.corpus_dict[name][art]
1003
+ if 'content_input_ids' in corpus and 'content_attn_mask' in corpus:
1004
+ content_input_ids = corpus['content_input_ids']
1005
+ content_attn_mask = corpus['content_attn_mask']
1006
+ else:
1007
+ content = corpus['content']
1008
+ content_input_ids, content_attn_mask = tokenize_to_parts(content, self.tokenizer, self.max_len, self.max_n_parts)
1009
+ corpus['content_input_ids'] = content_input_ids
1010
+ corpus['content_attn_mask'] = content_attn_mask
1011
+
1012
+ all_input_ids.append(content_input_ids)
1013
+ all_attn_mask.append(content_attn_mask)
1014
+
1015
+ all_input_ids = torch.stack(all_input_ids)
1016
+ all_attn_mask = torch.stack(all_attn_mask)
1017
+ return all_input_ids, all_attn_mask
1018
+
1019
+ def __getitem__(self, idx):
1020
+ input_ids, attn_mask = self._encode_contexts([idx])
1021
+
1022
+ return {
1023
+ 'input_ids': input_ids,
1024
+ 'attn_mask': attn_mask,
1025
+ }
1026
+
1027
+ def _pad_batch(tensor_list, pad_value=0):
1028
+ """
1029
+ tensor_list: list of tensors, mỗi tensor shape (Nk, max_n_parts, max_len)
1030
+ return: tensor shape (B, max_Nk, max_n_parts, max_len)
1031
+ """
1032
+ max_Nk = max(t.size(0) for t in tensor_list)
1033
+
1034
+ padded = []
1035
+ for t in tensor_list:
1036
+ Nk = t.size(0)
1037
+
1038
+ if Nk < max_Nk:
1039
+ pad_shape = (max_Nk - Nk, *t.shape[1:])
1040
+ pad_tensor = t.new_full(pad_shape, pad_value)
1041
+ t = torch.cat([t, pad_tensor], dim=0)
1042
+
1043
+ padded.append(t)
1044
+
1045
+ return torch.stack(padded) # (B, max_Nk, max_n_parts, max_len)
1046
+
1047
+ def collate_fn(batch):
1048
+ text_input_ids = torch.stack([b["text_input_ids"] for b in batch])
1049
+ text_attn_mask = torch.stack([b["text_attn_mask"] for b in batch])
1050
+ gt_pos_idxes = [b["gt_pos_idxes"] for b in batch]
1051
+ neg_idxes = torch.stack([b["neg_idxes"] for b in batch])
1052
+
1053
+ pos_idxes = [b["pos_idxes"].unsqueeze(-1).unsqueeze(-1) for b in batch]
1054
+ pos_mask = [b["pos_mask"].unsqueeze(-1).unsqueeze(-1) for b in batch]
1055
+
1056
+ # pad theo Nk
1057
+ pos_idxes = _pad_batch(pos_idxes, pad_value=0).squeeze(-1).squeeze(-1)
1058
+ pos_mask = _pad_batch(pos_mask, pad_value=0).squeeze(-1).squeeze(-1)
1059
+
1060
+ return {
1061
+ 'text_input_ids': text_input_ids,
1062
+ 'text_attn_mask': text_attn_mask,
1063
+ 'gt_pos_idxes': gt_pos_idxes,
1064
+ 'pos_idxes': pos_idxes,
1065
+ 'pos_mask': pos_mask,
1066
+ 'neg_idxes': neg_idxes,
1067
+ }
1068
+
1069
+ # %% [code]
1070
+ def encode_corpus(state_dicts, network, corpus_loader, device):
1071
+ if torch.cuda.device_count() > 1:
1072
+ network = nn.DataParallel(network)
1073
+ network.to(device)
1074
+ network.eval()
1075
+
1076
+ all_model_embs = []
1077
+ for i, state_dict in enumerate(state_dicts):
1078
+ # ===== load model =====
1079
+ if torch.cuda.device_count() > 1:
1080
+ network.module.load_state_dict(state_dict)
1081
+ else:
1082
+ network.load_state_dict(state_dict)
1083
+
1084
+ encoded_docs = []
1085
+
1086
+ with torch.no_grad():
1087
+ for batch in corpus_loader:
1088
+ input_ids = batch['input_ids'].to(device)
1089
+ attn_mask = batch['attn_mask'].to(device)
1090
+
1091
+ emb = network(input_ids, attn_mask, is_query=False) # [B, 1, D] hoặc [B, D]
1092
+
1093
+ encoded_docs.append(emb)
1094
+
1095
+ encoded_docs = torch.concat(encoded_docs, dim=0).squeeze(1) # [N, D]
1096
+ all_model_embs.append(encoded_docs)
1097
+
1098
+ # ===== ensemble =====
1099
+ # stack → [M, N, D]
1100
+ all_model_embs = torch.stack(all_model_embs, dim=0)
1101
+ final_embs = all_model_embs.mean(dim=0) # [N, D]
1102
+
1103
+ return final_embs
1104
+
1105
+ def test(state_dicts, network, test_loader, device, eval_fn, encoded_docs, bm25_scores, topks=[5, 10, 15]):
1106
+ if torch.cuda.device_count() > 1:
1107
+ network = nn.DataParallel(network)
1108
+ network.to(device)
1109
+ network.eval()
1110
+
1111
+ per_model_scores = []
1112
+ max_k = max(topks)
1113
+
1114
+ all_scores = []
1115
+ all_gt_pos_idxes = []
1116
+ with torch.no_grad():
1117
+ for batch in test_loader:
1118
+ text_input_ids = batch['text_input_ids'].to(device)
1119
+ text_attn_mask = batch['text_attn_mask'].to(device)
1120
+ gt_pos_idxes = batch['gt_pos_idxes']
1121
+ all_gt_pos_idxes.extend(gt_pos_idxes)
1122
+
1123
+ list_encoded_texts = []
1124
+
1125
+ for state_dict in state_dicts:
1126
+ # ===== load model =====
1127
+ if torch.cuda.device_count() > 1:
1128
+ network.module.load_state_dict(state_dict)
1129
+ else:
1130
+ network.load_state_dict(state_dict)
1131
+
1132
+ encoded_text = network(text_input_ids, text_attn_mask, is_query=True)
1133
+ list_encoded_texts.append(encoded_text)
1134
+
1135
+ ensemble_encoded_text = torch.stack(list_encoded_texts, dim=0).mean(dim=0)
1136
+ scores = torch.matmul(ensemble_encoded_text, encoded_docs.T) # B, M
1137
+ all_scores.append(scores)
1138
+
1139
+ all_scores = torch.concat(all_scores, dim=0) # (N, M)
1140
+
1141
+ bm25_scores = torch.tensor(bm25_scores).to(all_scores.device) # (N, M)
1142
+ bm25_scores = bm25_scores.float()
1143
+
1144
+ # min-max về [0, 1]
1145
+ bm25_scores = (
1146
+ bm25_scores - bm25_scores.min(dim=-1, keepdim=True).values
1147
+ ) / (
1148
+ bm25_scores.max(dim=-1, keepdim=True).values
1149
+ - bm25_scores.min(dim=-1, keepdim=True).values
1150
+ + 1e-8
1151
+ )
1152
+ # đổi sang [-1, 1]
1153
+ bm25_scores = bm25_scores * 2 - 1
1154
+
1155
+ all_gt_pos_idxes = list_to_tuple(all_gt_pos_idxes)
1156
+
1157
+ final_score = {}
1158
+ for weight in [0, 0.25, 0.5, 0.75, 1]:
1159
+
1160
+ # score cuối
1161
+ final_scores = all_scores + weight * bm25_scores
1162
+
1163
+ # topk lớn nhất
1164
+ topk_scores, topk_indices = torch.topk(final_scores, k=max_k)
1165
+
1166
+ pred_topk_full = [
1167
+ idx[score > 0].tolist()
1168
+ for score, idx in zip(topk_scores, topk_indices)
1169
+ ]
1170
+
1171
+ pred_topk_full = list_to_tuple(pred_topk_full)
1172
+
1173
+ final_score[weight] = {}
1174
+
1175
+ for k in topks:
1176
+ pred_topk_k = [p[:k] for p in pred_topk_full]
1177
+ final_score[weight][k] = eval_fn(pred_topk_k, all_gt_pos_idxes)
1178
+
1179
+ return final_score
1180
+
1181
+ # %% [code]
1182
+ with open(f'{train_dir}/train.json', "r", encoding="utf-8") as f:
1183
+ data_train = json.load(f)
1184
+
1185
+ with open(f'{test_dir}/test.json', "r", encoding="utf-8") as f:
1186
+ data_test = json.load(f)
1187
+
1188
+ with open(f'{test_dir}/corpus.json', "r", encoding="utf-8") as f:
1189
+ data_corpus = json.load(f)
1190
+
1191
+ print('Train:', len(data_train))
1192
+ print('Test:', len(data_test))
1193
+ print('Corpus:', len(data_corpus))
1194
+
1195
+ # %% [code]
1196
+ # trigger_types = sorted(list(set([e['label'] for d in data_train + data_test for e in d['issues']]))) # NBR : Neighbor relation
1197
+ # bio_trigger_types = ['O'] + [f'{prefix}-{trg}' for trg in trigger_types for prefix in ['B', 'I']]
1198
+ # trigger_label2id = {l: i for i, l in enumerate(bio_trigger_types)}
1199
+ # trigger_id2label = {i: l for l, i in trigger_label2id.items()}
1200
+
1201
+ # argument_types = sorted(list(set([a['role'] for d in data_train + data_test for e in d['issues'] for a in e['arguments']])))
1202
+ # bio_argument_types = ['O'] + [f'{prefix}-{arg}' for arg in argument_types for prefix in ['B', 'I']]
1203
+ # argument_label2id = {l: i for i, l in enumerate(bio_argument_types)}
1204
+ # argument_id2label = {i: l for l, i in argument_label2id.items()}
1205
+
1206
+ # label2id = {
1207
+ # 'Trg': trigger_label2id,
1208
+ # 'Arg': argument_label2id,
1209
+ # }
1210
+
1211
+ # id2label = {
1212
+ # 'Trg': trigger_id2label,
1213
+ # 'Arg': argument_id2label,
1214
+ # }
1215
+
1216
+ # %% [code]
1217
+ # zero_events_idxes = []
1218
+ # for idx, d in enumerate(data_train):
1219
+ # if len(d['issues']) == 0:
1220
+ # zero_events_idxes.append(idx)
1221
+
1222
+ # n_zero_events_samples = len(zero_events_idxes)
1223
+ # n_has_events_samples = len(data_train) - n_zero_events_samples
1224
+
1225
+ # random.seed(42)
1226
+ # k = min(int(n_has_events_samples * zero_events_rate), len(zero_events_idxes))
1227
+ # sampled_zero_events_idxes = random.sample(zero_events_idxes, k)
1228
+
1229
+ # new_data_train = []
1230
+ # for idx, d in enumerate(data_train):
1231
+ # if len(d['issues']) == 0:
1232
+ # if idx in sampled_zero_events_idxes:
1233
+ # new_data_train.append(d)
1234
+ # else:
1235
+ # new_data_train.append(d)
1236
+ # data_train = new_data_train
1237
+
1238
+ # print('Train:', len(data_train))
1239
+
1240
+ # %% [code]
1241
+ if debug_only:
1242
+ data_train = data_train[:20]
1243
+ data_test = data_test[:20]
1244
+
1245
+ print('Train:', len(data_train))
1246
+ print('Test:', len(data_test))
1247
+
1248
+ # %% [code]
1249
+ tokenizer = AutoTokenizer.from_pretrained(backbone_model_name)
1250
+
1251
+ # %% [code]
1252
+ print('Experiment name:', state_dict_save_name)
1253
+
1254
+ # %% [code]
1255
+ if not test_only:
1256
+ full_idxes = np.array(range(len(data_train)))
1257
+ training_logs, best_models, last_models = [], [], []
1258
+ start_training_time = time.time()
1259
+ for seed in SEEDS:
1260
+ kf = KFold(n_splits=nfolds, shuffle=True, random_state=seed)
1261
+ generator = torch.Generator()
1262
+ generator.manual_seed(seed)
1263
+
1264
+ corpusset = CorpusDataset(data_corpus, tokenizer, **corpus_memory_params)
1265
+ corpus_loader = DataLoader(corpusset, generator=generator, **val_loader_params)
1266
+ for fold_idx, (tr_idx, va_idx) in enumerate(kf.split(full_idxes)):
1267
+ if only_fold_idx is not None and only_fold_idx >= 0 and only_fold_idx != fold_idx:
1268
+ continue
1269
+ set_seed(seed)
1270
+
1271
+ train_idxes, val_idxes = full_idxes[tr_idx], full_idxes[va_idx]
1272
+
1273
+ trainset = LawRetrievalDataset(data_train, train_idxes, data_corpus, tokenizer, **train_memory_params)
1274
+ valset = LawRetrievalDataset(data_train, val_idxes, data_corpus, tokenizer, **val_memory_params)
1275
+
1276
+ train_loader = DataLoader(trainset, generator=generator, collate_fn=collate_fn, **train_loader_params)
1277
+ val_loader = DataLoader(valset, generator=generator, collate_fn=collate_fn, **val_loader_params)
1278
+
1279
+ my_model = EncodeModel(
1280
+ **model_params
1281
+ )
1282
+ total_params = sum(p.numel() for p in my_model.parameters())
1283
+ print(f"Total params: {total_params:,}")
1284
+
1285
+ # optimizer, scheduler = configure_optimizers(my_model, optim_params, scheduler_params)
1286
+ encoder_params = set(map(id, my_model.encoder.parameters()))
1287
+ other_params = [
1288
+ p for p in my_model.parameters()
1289
+ if id(p) not in encoder_params
1290
+ ]
1291
+ optimizer = optim.AdamW([
1292
+ {"params": my_model.encoder.parameters(), "lr": 2e-5},
1293
+ {"params": other_params}
1294
+ ], lr=5e-4)
1295
+ scheduler = optim.lr_scheduler.CosineAnnealingLR(optimizer, T_max=20, eta_min=1e-6)
1296
+
1297
+ loss_fn = CustomLoss(
1298
+ **loss_func_params
1299
+ )
1300
+ eval_fn = CustomEvalFn(**eval_func_params)
1301
+ trainer_params['save_name'] = f'{state_dict_save_name}_s{seed}_f{fold_idx}'
1302
+ trainer = Trainer(**trainer_params)
1303
+
1304
+ print(f'Start Training Fold {fold_idx}...')
1305
+ training_log, best_model, last_model = trainer.fit(
1306
+ my_model, optimizer, scheduler, loss_fn, epochs, train_loader, val_loader, corpus_loader, eval_fn,
1307
+ start_epoch=1, start_training_time=start_training_time, refresh_every=2,
1308
+ )
1309
+
1310
+ training_logs.append(training_log)
1311
+ best_models.append(best_model)
1312
+ last_models.append(last_model)
1313
+
1314
+ # %% [code]
1315
+ def load_all_state_dicts(folder):
1316
+ files = []
1317
+
1318
+ for file in os.listdir(folder):
1319
+ if file.endswith(".pt") or file.endswith(".pth"):
1320
+ m = re.search(r"f(\d+)", file) # tìm f<số>
1321
+ if m:
1322
+ fold = int(m.group(1))
1323
+ files.append((fold, file))
1324
+
1325
+ # sort theo fold
1326
+ files.sort(key=lambda x: x[0])
1327
+
1328
+ state_dicts = []
1329
+ for fold, file in files:
1330
+ path = os.path.join(folder, file)
1331
+ print(f"Loading fold {fold}: {file}")
1332
+ state_dict = torch.load(path, map_location="cpu")
1333
+ state_dicts.append(state_dict)
1334
+
1335
+ return state_dicts
1336
+
1337
+ if test_only:
1338
+ snapshot_download(repo_id=repo_name, local_dir="", repo_type="model", allow_patterns=[f"{state_dict_save_name}/**"])
1339
+ get_ipython().system('rm -rf .cache .gitattributes')
1340
+
1341
+ best_models = load_all_state_dicts(f"{state_dict_save_name}/r1s")
1342
+ last_models = load_all_state_dicts(f"{state_dict_save_name}/lasts")
1343
+
1344
+ # %% [code]
1345
+ os.makedirs(f'{checkpoints_dir}/results', exist_ok=True)
1346
+ testset = LawRetrievalDataset(data_test, range(len(data_test)), data_corpus, tokenizer, **val_memory_params)
1347
+ generator = torch.Generator()
1348
+ test_loader = DataLoader(testset, generator=generator, collate_fn=collate_fn, **val_loader_params)
1349
+ eval_fn = CustomEvalFn(**eval_func_params)
1350
+ my_model = EncodeModel(
1351
+ **model_params
1352
+ )
1353
+ total_params = sum(p.numel() for p in my_model.parameters())
1354
+ print(f"Total params: {total_params:,}")
1355
+
1356
+ # %% [code]
1357
+ start_time = time.time()
1358
+ encoded_docs = encode_corpus(best_models, my_model, corpus_loader, device)
1359
+ best_score = test(best_models, my_model, test_loader, device, eval_fn, encoded_docs, bm25_scores)
1360
+
1361
+ encoded_docs = encode_corpus(last_models, my_model, corpus_loader, device)
1362
+ last_score = test(last_models, my_model, test_loader, device, eval_fn, encoded_docs, bm25_scores)
1363
+
1364
+ result_test = {"Best model": best_score, "Last model": last_score}
1365
+
1366
+ with open(f"{checkpoints_dir}/results/{state_dict_save_name}_test.json", "w", encoding="utf-8") as f:
1367
+ json.dump(result_test, f, ensure_ascii=False, indent=2)
1368
+
1369
+ print('Test:', time.time() - start_time, 's --> Done!')
1370
+
1371
+ # %% [code]
1372
+ def dict_to_df(data):
1373
+ """
1374
+ data format:
1375
+ {
1376
+ model_name: {
1377
+ weight: {
1378
+ topk: {
1379
+ metric: value
1380
+ }
1381
+ }
1382
+ }
1383
+ }
1384
+ """
1385
+
1386
+ row_tuples = []
1387
+ row_values = []
1388
+
1389
+ # ===== lấy model đầu tiên =====
1390
+ first_model = next(iter(data.values()))
1391
+
1392
+ # ===== weight keys =====
1393
+ weight_keys = list(first_model.keys())
1394
+
1395
+ # ===== topk keys =====
1396
+ first_weight = next(iter(first_model.values()))
1397
+ topk_keys = list(first_weight.keys())
1398
+
1399
+ # ===== metric keys =====
1400
+ first_topk = next(iter(first_weight.values()))
1401
+ metrics = list(first_topk.keys())
1402
+
1403
+ for weight in weight_keys:
1404
+
1405
+ for topk in topk_keys:
1406
+
1407
+ # ===== multi index row =====
1408
+ row_tuples.append((weight, topk))
1409
+
1410
+ row = {}
1411
+
1412
+ for model_name, model_data in data.items():
1413
+
1414
+ for metric in metrics:
1415
+
1416
+ row[(model_name, metric)] = (
1417
+ model_data[weight][topk][metric]
1418
+ )
1419
+
1420
+ row_values.append(row)
1421
+
1422
+ # ===== dataframe =====
1423
+ df = pd.DataFrame(row_values)
1424
+
1425
+ # ===== multi columns =====
1426
+ df.columns = pd.MultiIndex.from_tuples(
1427
+ df.columns,
1428
+ names=["model", "metric"]
1429
+ )
1430
+
1431
+ # ===== multi index =====
1432
+ df.index = pd.MultiIndex.from_tuples(
1433
+ row_tuples,
1434
+ names=["weight", "topk"]
1435
+ )
1436
+
1437
+ return df
1438
+
1439
+ result_test_df = dict_to_df(result_test)
1440
+ result_test_df.to_excel(f"{checkpoints_dir}/results/{state_dict_save_name}_test_df.xlsx")
1441
+ result_test_df
1442
+
1443
+ # %% [code]
1444
+ key = ("Best model", "recall")
1445
+
1446
+ result_test_df_best = (
1447
+ result_test_df
1448
+ .sort_values(by=key, ascending=False)
1449
+ .groupby(level="weight")
1450
+ .head(1)
1451
+ )
1452
+ result_test_df_best.to_excel(f"{checkpoints_dir}/results/{state_dict_save_name}_test_df_best.xlsx")
1453
+ result_test_df_best
1454
+
1455
+ # %% [code]
1456
+ def get_avg_best_score(logs):
1457
+ return float(np.mean([list(log.values())[-1]['best_score'] for log in logs]))
1458
+
1459
+ def get_avg_log(logs, epochs):
1460
+ avg_log = {}
1461
+
1462
+ for epoch in range(1, epochs + 1):
1463
+ val_score = 0.0
1464
+ train_loss = 0.0
1465
+ n_eval = 0
1466
+
1467
+ for idx in range(len(logs)):
1468
+ log = logs[idx].get(epoch, logs[idx].get(str(epoch)))
1469
+ if log is None:
1470
+ continue
1471
+
1472
+ val_score += log.get('val_score', 0.0)
1473
+ train_loss += log.get('train_loss', 0.0)
1474
+ n_eval += 1
1475
+
1476
+ if n_eval == 0:
1477
+ continue
1478
+
1479
+ avg_log[epoch] = {
1480
+ 'train_loss': train_loss / n_eval,
1481
+ 'val_score': val_score / n_eval if val_score != 0 else float('inf')
1482
+ }
1483
+
1484
+ return avg_log
1485
+
1486
+ def parse_label_key(label: str):
1487
+ try:
1488
+ first = float(label.split('_', 1)[0]) # số đầu: trước dấu _
1489
+ last = float(re.findall(r'_(\d+(?:\.\d+)?)$', label)[0])
1490
+ return first, last
1491
+ except:
1492
+ return (0, 0)
1493
+
1494
+ def plot_training_logs(logs_dict, save_path=None, figsize=(24, 10)):
1495
+ fig, axes = plt.subplots(1, 2, figsize=figsize)
1496
+
1497
+ # ===== Plot Train Loss =====
1498
+ for name, log in logs_dict.items():
1499
+ epochs = sorted(log.keys())
1500
+ train_loss = [log[e]['train_loss'] for e in epochs]
1501
+ axes[0].plot(epochs, train_loss, label=name)
1502
+
1503
+ axes[0].set_xlabel('Epoch')
1504
+ axes[0].set_ylabel('Train Loss')
1505
+ axes[0].set_title('Training Loss')
1506
+ axes[0].grid(True)
1507
+
1508
+ # ===== Plot Validation Score =====
1509
+ for name, log in logs_dict.items():
1510
+ epochs = sorted(log.keys())
1511
+ val_score = [log[e]['val_score'] for e in epochs]
1512
+ axes[1].plot(epochs, val_score, label=name)
1513
+
1514
+ axes[1].set_xlabel('Epoch')
1515
+ axes[1].set_ylabel('Validation Score')
1516
+ axes[1].set_title('Validation Score')
1517
+ axes[1].grid(True)
1518
+
1519
+ # ===== Shared Legend =====
1520
+ handles, labels = axes[0].get_legend_handles_labels()
1521
+ pairs = list(zip(handles, labels))
1522
+ pairs_sorted = sorted(
1523
+ pairs,
1524
+ key=lambda x: parse_label_key(x[1])
1525
+ )
1526
+ handles_sorted, labels_sorted = zip(*pairs_sorted)
1527
+
1528
+ axes[0].legend(
1529
+ handles_sorted,
1530
+ labels_sorted,
1531
+ loc='center left',
1532
+ bbox_to_anchor=(1.01, 0.5),
1533
+ borderaxespad=0.
1534
+ )
1535
+
1536
+ plt.tight_layout(rect=[0, 0, 1, 1])
1537
+
1538
+ if save_path is not None:
1539
+ os.makedirs(os.path.dirname(save_path), exist_ok=True) if os.path.dirname(save_path) else None
1540
+ plt.savefig(save_path, dpi=300, bbox_inches='tight')
1541
+
1542
+ plt.show()
1543
+
1544
+ # %% [code]
1545
+ if not test_only:
1546
+ snapshot_download(repo_id=repo_name, local_dir="", repo_type="model", allow_patterns=["**/*lr*.json"], ignore_patterns=[])
1547
+ get_ipython().system('rm -rf .cache .gitattributes')
1548
+
1549
+ # %% [code]
1550
+ if not test_only:
1551
+ experiments = {}
1552
+ for experiment in os.listdir(pretrained_dir):
1553
+ experiment_logs = []
1554
+ try:
1555
+ for seed in SEEDS:
1556
+ for fold_idx in range(nfolds):
1557
+ with open(f"{pretrained_dir}/{experiment}/logs/{experiment}_s{seed}_f{fold_idx}_logging.json", "r", encoding="utf-8") as f:
1558
+ experiment_log = json.load(f)
1559
+ experiment_logs.append(experiment_log)
1560
+ except:
1561
+ pass
1562
+ experiments[experiment] = get_avg_log(experiment_logs, 1000)
1563
+ experiments[state_dict_save_name] = get_avg_log(training_logs, 1000)
1564
+
1565
+ # %% [code]
1566
+ if not test_only:
1567
+ score = get_avg_best_score(training_logs)
1568
+ state_dict_save_name, score
1569
+
1570
+ # %% [code]
1571
+ if not test_only:
1572
+ plot_training_logs(experiments, save_path=f'{checkpoints_dir}/logs/{state_dict_save_name}_log_plot.jpg', figsize=(18, 7.5))
1573
+
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[1.7217514421272206e-05, 0.00042692314190604356], "train_loss": 3.12129545211792, "total": 3.1212954313858696, "contrastive_loss": 2.9818488794026963, "triplet_loss": 0.27278428093645485}, "7": {"lr": [1.60839598967785e-05, 0.00039715242044697206], "train_loss": 3.0635793209075928, "total": 3.063579240371551, "contrastive_loss": 2.9169703454875626, "triplet_loss": 0.2878344481605351}, "8": {"lr": [1.4812909747525698e-05, 0.00036377062968501693], "train_loss": 2.864351511001587, "total": 2.864351508609427, "contrastive_loss": 2.726194043621969, "triplet_loss": 0.2721571906354515, "val_score": 0.8177380952380953, "best_score": 0.8177380952380953, "new_best_model": true, "recall": 0.8177380952380953, "mAP": 0.2978287021289997, "mRP": 0.28471130952380935}, "9": {"lr": [1.3435661446562005e-05, 0.0003275997400965494], "train_loss": 2.7411251068115234, "total": 2.74112520249791, "contrastive_loss": 2.607196106161162, "triplet_loss": 0.2644230769230769, "val_score": 0.8201785714285714, 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0.23620401337792643, "val_score": 0.761904761904762, "best_score": 0.8201785714285714, "new_best_model": false, "recall": 0.761904761904762, "mAP": 0.28338167713844786, "mRP": 0.2702455357142857}, "18": {"lr": [2.0354380202105066e-06, 2.8193872215002235e-05], "train_loss": 2.307605743408203, "total": 2.307605756166388, "contrastive_loss": 2.190449079940949, "triplet_loss": 0.23620401337792643, "val_score": 0.7548214285714286, "best_score": 0.8201785714285714, "new_best_model": false, "recall": 0.7548214285714286, "mAP": 0.2787091218663391, "mRP": 0.26482043650793635}}
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+ }
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+ }
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+ "0.75": {
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+ "mRP": 0.303419929718877
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+ },
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+ "recall": 0.8313253012048193,
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+ "mAP": 0.3133888430706964,
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+ "mRP": 0.303419929718877
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+ },
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+ "recall": 0.8757530120481928,
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+ "mAP": 0.3194635790776611,
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+ "mRP": 0.303419929718877
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+ }
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+ },
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+ "1": {
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+ "5": {
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+ "mAP": 0.3072184870434125,
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+ },
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+ "recall": 0.8618222891566265,
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+ "mAP": 0.3128348095177924,
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+ "mRP": 0.2960153112449813
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+ }
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+ }
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+ },
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+ "Last model": {
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+ "recall": 0.6306475903614458,
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+ "mAP": 0.24986069277108472,
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+ "mRP": 0.25013177710843415
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+ },
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