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2022-08-24 10:57:35,091 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 10:57:35,092 Model: "SequenceTagger( |
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(embeddings): StackedEmbeddings( |
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(list_embedding_0): WordEmbeddings( |
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'hindi' |
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(embedding): Embedding(1000000, 300) |
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) |
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(list_embedding_1): FlairEmbeddings( |
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(lm): LanguageModel( |
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(drop): Dropout(p=0.1, inplace=False) |
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(encoder): Embedding(3520, 100) |
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(rnn): LSTM(100, 2048) |
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(decoder): Linear(in_features=2048, out_features=3520, bias=True) |
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) |
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) |
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(list_embedding_2): FlairEmbeddings( |
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(lm): LanguageModel( |
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(drop): Dropout(p=0.1, inplace=False) |
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(encoder): Embedding(3520, 100) |
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(rnn): LSTM(100, 2048) |
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(decoder): Linear(in_features=2048, out_features=3520, bias=True) |
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) |
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) |
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) |
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(word_dropout): WordDropout(p=0.05) |
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(locked_dropout): LockedDropout(p=0.5) |
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(embedding2nn): Linear(in_features=4396, out_features=4396, bias=True) |
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(rnn): LSTM(4396, 256, batch_first=True, bidirectional=True) |
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(linear): Linear(in_features=512, out_features=34, bias=True) |
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(loss_function): ViterbiLoss() |
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(crf): CRF() |
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)" |
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2022-08-24 10:57:35,092 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 10:57:35,093 Corpus: "Corpus: 13304 train + 1659 dev + 1684 test sentences" |
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2022-08-24 10:57:35,093 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 10:57:35,093 Parameters: |
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2022-08-24 10:57:35,094 - learning_rate: "0.100000" |
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2022-08-24 10:57:35,094 - mini_batch_size: "32" |
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2022-08-24 10:57:35,094 - patience: "3" |
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2022-08-24 10:57:35,095 - anneal_factor: "0.5" |
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2022-08-24 10:57:35,095 - max_epochs: "10" |
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2022-08-24 10:57:35,095 - shuffle: "True" |
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2022-08-24 10:57:35,096 - train_with_dev: "False" |
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2022-08-24 10:57:35,096 - batch_growth_annealing: "False" |
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2022-08-24 10:57:35,097 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 10:57:35,097 Model training base path: "resources/taggers" |
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2022-08-24 10:57:35,097 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 10:57:35,130 Device: cuda:0 |
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2022-08-24 10:57:35,131 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 10:57:35,131 Embeddings storage mode: cpu |
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2022-08-24 10:57:35,131 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 10:57:43,221 epoch 1 - iter 41/416 - loss 1.75374784 - samples/sec: 163.39 - lr: 0.100000 |
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2022-08-24 10:57:48,774 epoch 1 - iter 82/416 - loss 1.21144958 - samples/sec: 236.39 - lr: 0.100000 |
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2022-08-24 10:57:54,449 epoch 1 - iter 123/416 - loss 0.96022365 - samples/sec: 231.30 - lr: 0.100000 |
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2022-08-24 10:58:00,063 epoch 1 - iter 164/416 - loss 0.81474244 - samples/sec: 233.84 - lr: 0.100000 |
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2022-08-24 10:58:06,071 epoch 1 - iter 205/416 - loss 0.72188458 - samples/sec: 218.46 - lr: 0.100000 |
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2022-08-24 10:58:12,045 epoch 1 - iter 246/416 - loss 0.65566787 - samples/sec: 222.79 - lr: 0.100000 |
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2022-08-24 10:58:17,908 epoch 1 - iter 287/416 - loss 0.60358770 - samples/sec: 223.89 - lr: 0.100000 |
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2022-08-24 10:58:24,130 epoch 1 - iter 328/416 - loss 0.56015346 - samples/sec: 210.95 - lr: 0.100000 |
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2022-08-24 10:58:30,431 epoch 1 - iter 369/416 - loss 0.52768132 - samples/sec: 208.36 - lr: 0.100000 |
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2022-08-24 10:58:36,388 epoch 1 - iter 410/416 - loss 0.50102804 - samples/sec: 220.39 - lr: 0.100000 |
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2022-08-24 10:58:37,307 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 10:58:37,308 EPOCH 1 done: loss 0.4973 - lr 0.100000 |
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2022-08-24 10:58:47,137 Evaluating as a multi-label problem: False |
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2022-08-24 10:58:47,698 DEV : loss 0.16205480694770813 - f1-score (micro avg) 0.9458 |
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2022-08-24 10:58:47,863 BAD EPOCHS (no improvement): 0 |
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2022-08-24 10:58:47,865 saving best model |
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2022-08-24 10:58:51,789 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 10:58:55,679 epoch 2 - iter 41/416 - loss 0.24514879 - samples/sec: 343.22 - lr: 0.100000 |
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2022-08-24 10:58:59,592 epoch 2 - iter 82/416 - loss 0.24050334 - samples/sec: 335.61 - lr: 0.100000 |
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2022-08-24 10:59:03,458 epoch 2 - iter 123/416 - loss 0.23347290 - samples/sec: 339.70 - lr: 0.100000 |
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2022-08-24 10:59:07,545 epoch 2 - iter 164/416 - loss 0.23151347 - samples/sec: 322.37 - lr: 0.100000 |
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2022-08-24 10:59:11,970 epoch 2 - iter 205/416 - loss 0.22632911 - samples/sec: 299.49 - lr: 0.100000 |
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2022-08-24 10:59:15,668 epoch 2 - iter 246/416 - loss 0.22429595 - samples/sec: 355.20 - lr: 0.100000 |
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2022-08-24 10:59:19,397 epoch 2 - iter 287/416 - loss 0.22215739 - samples/sec: 352.18 - lr: 0.100000 |
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2022-08-24 10:59:23,375 epoch 2 - iter 328/416 - loss 0.21962025 - samples/sec: 330.16 - lr: 0.100000 |
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2022-08-24 10:59:27,423 epoch 2 - iter 369/416 - loss 0.21729297 - samples/sec: 324.45 - lr: 0.100000 |
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2022-08-24 10:59:31,761 epoch 2 - iter 410/416 - loss 0.21444959 - samples/sec: 302.89 - lr: 0.100000 |
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2022-08-24 10:59:32,350 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 10:59:32,350 EPOCH 2 done: loss 0.2144 - lr 0.100000 |
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2022-08-24 10:59:39,506 Evaluating as a multi-label problem: False |
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2022-08-24 10:59:40,286 DEV : loss 0.11246180534362793 - f1-score (micro avg) 0.9578 |
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2022-08-24 10:59:40,475 BAD EPOCHS (no improvement): 0 |
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2022-08-24 10:59:40,477 saving best model |
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2022-08-24 10:59:44,103 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 10:59:48,468 epoch 3 - iter 41/416 - loss 0.18469601 - samples/sec: 301.11 - lr: 0.100000 |
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2022-08-24 10:59:52,504 epoch 3 - iter 82/416 - loss 0.18261678 - samples/sec: 325.54 - lr: 0.100000 |
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2022-08-24 10:59:56,236 epoch 3 - iter 123/416 - loss 0.18163090 - samples/sec: 352.04 - lr: 0.100000 |
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2022-08-24 11:00:00,041 epoch 3 - iter 164/416 - loss 0.17863873 - samples/sec: 345.20 - lr: 0.100000 |
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2022-08-24 11:00:03,939 epoch 3 - iter 205/416 - loss 0.17689939 - samples/sec: 336.91 - lr: 0.100000 |
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2022-08-24 11:00:07,952 epoch 3 - iter 246/416 - loss 0.17651204 - samples/sec: 327.26 - lr: 0.100000 |
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2022-08-24 11:00:11,880 epoch 3 - iter 287/416 - loss 0.17610330 - samples/sec: 334.48 - lr: 0.100000 |
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2022-08-24 11:00:15,861 epoch 3 - iter 328/416 - loss 0.17480990 - samples/sec: 329.95 - lr: 0.100000 |
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2022-08-24 11:00:19,654 epoch 3 - iter 369/416 - loss 0.17340667 - samples/sec: 346.31 - lr: 0.100000 |
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2022-08-24 11:00:23,590 epoch 3 - iter 410/416 - loss 0.17286643 - samples/sec: 333.65 - lr: 0.100000 |
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2022-08-24 11:00:24,178 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 11:00:24,179 EPOCH 3 done: loss 0.1730 - lr 0.100000 |
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2022-08-24 11:00:31,344 Evaluating as a multi-label problem: False |
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2022-08-24 11:00:31,586 DEV : loss 0.09120035171508789 - f1-score (micro avg) 0.9647 |
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2022-08-24 11:00:31,765 BAD EPOCHS (no improvement): 0 |
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2022-08-24 11:00:31,767 saving best model |
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2022-08-24 11:00:35,385 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 11:00:39,594 epoch 4 - iter 41/416 - loss 0.16103536 - samples/sec: 312.15 - lr: 0.100000 |
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2022-08-24 11:00:43,611 epoch 4 - iter 82/416 - loss 0.15827466 - samples/sec: 327.05 - lr: 0.100000 |
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2022-08-24 11:00:47,595 epoch 4 - iter 123/416 - loss 0.15368275 - samples/sec: 329.72 - lr: 0.100000 |
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2022-08-24 11:00:51,430 epoch 4 - iter 164/416 - loss 0.15380442 - samples/sec: 342.46 - lr: 0.100000 |
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2022-08-24 11:00:55,373 epoch 4 - iter 205/416 - loss 0.15360279 - samples/sec: 333.13 - lr: 0.100000 |
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2022-08-24 11:00:59,206 epoch 4 - iter 246/416 - loss 0.15416655 - samples/sec: 345.39 - lr: 0.100000 |
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2022-08-24 11:01:03,077 epoch 4 - iter 287/416 - loss 0.15297728 - samples/sec: 346.54 - lr: 0.100000 |
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2022-08-24 11:01:07,189 epoch 4 - iter 328/416 - loss 0.15273117 - samples/sec: 319.42 - lr: 0.100000 |
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2022-08-24 11:01:11,111 epoch 4 - iter 369/416 - loss 0.15136905 - samples/sec: 334.89 - lr: 0.100000 |
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2022-08-24 11:01:14,964 epoch 4 - iter 410/416 - loss 0.15052223 - samples/sec: 340.79 - lr: 0.100000 |
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2022-08-24 11:01:15,525 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 11:01:15,526 EPOCH 4 done: loss 0.1503 - lr 0.100000 |
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2022-08-24 11:01:24,855 Evaluating as a multi-label problem: False |
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2022-08-24 11:01:25,108 DEV : loss 0.08160468190908432 - f1-score (micro avg) 0.9671 |
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2022-08-24 11:01:25,259 BAD EPOCHS (no improvement): 0 |
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2022-08-24 11:01:25,261 saving best model |
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2022-08-24 11:01:28,924 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 11:01:33,139 epoch 5 - iter 41/416 - loss 0.13452886 - samples/sec: 313.17 - lr: 0.100000 |
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2022-08-24 11:01:36,957 epoch 5 - iter 82/416 - loss 0.13710874 - samples/sec: 344.08 - lr: 0.100000 |
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2022-08-24 11:01:40,703 epoch 5 - iter 123/416 - loss 0.13645113 - samples/sec: 350.66 - lr: 0.100000 |
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2022-08-24 11:01:44,909 epoch 5 - iter 164/416 - loss 0.13713570 - samples/sec: 312.19 - lr: 0.100000 |
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2022-08-24 11:01:48,859 epoch 5 - iter 205/416 - loss 0.13547128 - samples/sec: 332.51 - lr: 0.100000 |
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2022-08-24 11:01:52,795 epoch 5 - iter 246/416 - loss 0.13505763 - samples/sec: 333.65 - lr: 0.100000 |
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2022-08-24 11:01:56,601 epoch 5 - iter 287/416 - loss 0.13405671 - samples/sec: 345.07 - lr: 0.100000 |
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2022-08-24 11:02:00,371 epoch 5 - iter 328/416 - loss 0.13335547 - samples/sec: 348.32 - lr: 0.100000 |
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2022-08-24 11:02:04,122 epoch 5 - iter 369/416 - loss 0.13393736 - samples/sec: 350.13 - lr: 0.100000 |
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2022-08-24 11:02:07,887 epoch 5 - iter 410/416 - loss 0.13423791 - samples/sec: 348.83 - lr: 0.100000 |
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2022-08-24 11:02:08,432 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 11:02:08,433 EPOCH 5 done: loss 0.1341 - lr 0.100000 |
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2022-08-24 11:02:22,185 Evaluating as a multi-label problem: False |
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2022-08-24 11:02:22,641 DEV : loss 0.07825736701488495 - f1-score (micro avg) 0.9683 |
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2022-08-24 11:02:22,794 BAD EPOCHS (no improvement): 0 |
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2022-08-24 11:02:22,796 saving best model |
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2022-08-24 11:02:26,511 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 11:02:30,210 epoch 6 - iter 41/416 - loss 0.12471213 - samples/sec: 355.02 - lr: 0.100000 |
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2022-08-24 11:02:34,090 epoch 6 - iter 82/416 - loss 0.12531338 - samples/sec: 338.40 - lr: 0.100000 |
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2022-08-24 11:02:37,977 epoch 6 - iter 123/416 - loss 0.12700505 - samples/sec: 337.77 - lr: 0.100000 |
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2022-08-24 11:02:41,958 epoch 6 - iter 164/416 - loss 0.12652385 - samples/sec: 329.91 - lr: 0.100000 |
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2022-08-24 11:02:46,847 epoch 6 - iter 205/416 - loss 0.12700222 - samples/sec: 268.61 - lr: 0.100000 |
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2022-08-24 11:02:50,839 epoch 6 - iter 246/416 - loss 0.12583029 - samples/sec: 329.02 - lr: 0.100000 |
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2022-08-24 11:02:54,884 epoch 6 - iter 287/416 - loss 0.12590751 - samples/sec: 324.67 - lr: 0.100000 |
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2022-08-24 11:02:58,955 epoch 6 - iter 328/416 - loss 0.12594140 - samples/sec: 328.72 - lr: 0.100000 |
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2022-08-24 11:03:02,798 epoch 6 - iter 369/416 - loss 0.12619028 - samples/sec: 341.85 - lr: 0.100000 |
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2022-08-24 11:03:06,816 epoch 6 - iter 410/416 - loss 0.12617017 - samples/sec: 326.85 - lr: 0.100000 |
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2022-08-24 11:03:07,433 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 11:03:07,434 EPOCH 6 done: loss 0.1262 - lr 0.100000 |
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2022-08-24 11:03:14,657 Evaluating as a multi-label problem: False |
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2022-08-24 11:03:14,881 DEV : loss 0.0752514973282814 - f1-score (micro avg) 0.97 |
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2022-08-24 11:03:15,034 BAD EPOCHS (no improvement): 0 |
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2022-08-24 11:03:15,036 saving best model |
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2022-08-24 11:03:18,770 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 11:03:22,706 epoch 7 - iter 41/416 - loss 0.11739473 - samples/sec: 333.76 - lr: 0.100000 |
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2022-08-24 11:03:26,636 epoch 7 - iter 82/416 - loss 0.11762875 - samples/sec: 334.19 - lr: 0.100000 |
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2022-08-24 11:03:30,530 epoch 7 - iter 123/416 - loss 0.11795678 - samples/sec: 337.32 - lr: 0.100000 |
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2022-08-24 11:03:34,541 epoch 7 - iter 164/416 - loss 0.11731247 - samples/sec: 327.37 - lr: 0.100000 |
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2022-08-24 11:03:39,870 epoch 7 - iter 205/416 - loss 0.11730825 - samples/sec: 247.45 - lr: 0.100000 |
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2022-08-24 11:03:43,818 epoch 7 - iter 246/416 - loss 0.11685275 - samples/sec: 332.60 - lr: 0.100000 |
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2022-08-24 11:03:47,733 epoch 7 - iter 287/416 - loss 0.11654411 - samples/sec: 335.53 - lr: 0.100000 |
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2022-08-24 11:03:51,557 epoch 7 - iter 328/416 - loss 0.11687989 - samples/sec: 343.41 - lr: 0.100000 |
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2022-08-24 11:03:55,312 epoch 7 - iter 369/416 - loss 0.11710931 - samples/sec: 349.86 - lr: 0.100000 |
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2022-08-24 11:03:59,149 epoch 7 - iter 410/416 - loss 0.11723170 - samples/sec: 342.29 - lr: 0.100000 |
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2022-08-24 11:03:59,718 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 11:03:59,719 EPOCH 7 done: loss 0.1172 - lr 0.100000 |
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2022-08-24 11:04:06,739 Evaluating as a multi-label problem: False |
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2022-08-24 11:04:06,960 DEV : loss 0.07426313310861588 - f1-score (micro avg) 0.9696 |
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2022-08-24 11:04:07,109 BAD EPOCHS (no improvement): 1 |
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2022-08-24 11:04:07,110 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 11:04:10,972 epoch 8 - iter 41/416 - loss 0.11078633 - samples/sec: 340.11 - lr: 0.100000 |
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2022-08-24 11:04:14,939 epoch 8 - iter 82/416 - loss 0.10893638 - samples/sec: 331.00 - lr: 0.100000 |
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2022-08-24 11:04:18,833 epoch 8 - iter 123/416 - loss 0.10944998 - samples/sec: 337.22 - lr: 0.100000 |
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2022-08-24 11:04:22,638 epoch 8 - iter 164/416 - loss 0.10903293 - samples/sec: 345.14 - lr: 0.100000 |
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2022-08-24 11:04:26,635 epoch 8 - iter 205/416 - loss 0.10899615 - samples/sec: 328.58 - lr: 0.100000 |
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2022-08-24 11:04:30,526 epoch 8 - iter 246/416 - loss 0.10934547 - samples/sec: 337.61 - lr: 0.100000 |
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2022-08-24 11:04:34,391 epoch 8 - iter 287/416 - loss 0.10995397 - samples/sec: 339.83 - lr: 0.100000 |
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2022-08-24 11:04:38,189 epoch 8 - iter 328/416 - loss 0.10996701 - samples/sec: 345.79 - lr: 0.100000 |
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2022-08-24 11:04:41,970 epoch 8 - iter 369/416 - loss 0.11080413 - samples/sec: 347.42 - lr: 0.100000 |
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2022-08-24 11:04:45,949 epoch 8 - iter 410/416 - loss 0.11086062 - samples/sec: 330.00 - lr: 0.100000 |
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2022-08-24 11:04:46,488 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 11:04:46,489 EPOCH 8 done: loss 0.1109 - lr 0.100000 |
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2022-08-24 11:04:53,723 Evaluating as a multi-label problem: False |
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2022-08-24 11:04:53,952 DEV : loss 0.07048413157463074 - f1-score (micro avg) 0.9713 |
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2022-08-24 11:04:54,108 BAD EPOCHS (no improvement): 0 |
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2022-08-24 11:04:54,109 saving best model |
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2022-08-24 11:04:57,751 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 11:05:01,731 epoch 9 - iter 41/416 - loss 0.10321695 - samples/sec: 330.13 - lr: 0.100000 |
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2022-08-24 11:05:05,885 epoch 9 - iter 82/416 - loss 0.10395837 - samples/sec: 316.14 - lr: 0.100000 |
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2022-08-24 11:05:09,765 epoch 9 - iter 123/416 - loss 0.10476506 - samples/sec: 339.68 - lr: 0.100000 |
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2022-08-24 11:05:13,707 epoch 9 - iter 164/416 - loss 0.10424004 - samples/sec: 340.40 - lr: 0.100000 |
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2022-08-24 11:05:17,615 epoch 9 - iter 205/416 - loss 0.10460388 - samples/sec: 336.08 - lr: 0.100000 |
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2022-08-24 11:05:21,505 epoch 9 - iter 246/416 - loss 0.10580129 - samples/sec: 337.66 - lr: 0.100000 |
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2022-08-24 11:05:25,352 epoch 9 - iter 287/416 - loss 0.10519137 - samples/sec: 341.45 - lr: 0.100000 |
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2022-08-24 11:05:29,167 epoch 9 - iter 328/416 - loss 0.10576453 - samples/sec: 344.33 - lr: 0.100000 |
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2022-08-24 11:05:33,091 epoch 9 - iter 369/416 - loss 0.10522369 - samples/sec: 334.70 - lr: 0.100000 |
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2022-08-24 11:05:36,953 epoch 9 - iter 410/416 - loss 0.10499612 - samples/sec: 339.97 - lr: 0.100000 |
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2022-08-24 11:05:37,541 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 11:05:37,542 EPOCH 9 done: loss 0.1052 - lr 0.100000 |
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2022-08-24 11:05:44,490 Evaluating as a multi-label problem: False |
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2022-08-24 11:05:44,720 DEV : loss 0.07029640674591064 - f1-score (micro avg) 0.9719 |
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2022-08-24 11:05:44,884 BAD EPOCHS (no improvement): 0 |
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2022-08-24 11:05:44,886 saving best model |
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2022-08-24 11:05:48,465 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 11:05:52,355 epoch 10 - iter 41/416 - loss 0.10064182 - samples/sec: 337.69 - lr: 0.100000 |
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2022-08-24 11:05:56,216 epoch 10 - iter 82/416 - loss 0.09818265 - samples/sec: 340.21 - lr: 0.100000 |
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2022-08-24 11:06:00,337 epoch 10 - iter 123/416 - loss 0.09808745 - samples/sec: 318.69 - lr: 0.100000 |
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2022-08-24 11:06:04,274 epoch 10 - iter 164/416 - loss 0.10072979 - samples/sec: 333.58 - lr: 0.100000 |
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2022-08-24 11:06:08,146 epoch 10 - iter 205/416 - loss 0.09947450 - samples/sec: 339.18 - lr: 0.100000 |
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2022-08-24 11:06:12,068 epoch 10 - iter 246/416 - loss 0.09907584 - samples/sec: 334.96 - lr: 0.100000 |
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2022-08-24 11:06:16,056 epoch 10 - iter 287/416 - loss 0.09971183 - samples/sec: 329.34 - lr: 0.100000 |
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2022-08-24 11:06:19,927 epoch 10 - iter 328/416 - loss 0.10065394 - samples/sec: 339.34 - lr: 0.100000 |
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2022-08-24 11:06:23,749 epoch 10 - iter 369/416 - loss 0.10061685 - samples/sec: 343.62 - lr: 0.100000 |
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2022-08-24 11:06:27,632 epoch 10 - iter 410/416 - loss 0.10070568 - samples/sec: 338.22 - lr: 0.100000 |
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2022-08-24 11:06:28,178 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 11:06:28,182 EPOCH 10 done: loss 0.1005 - lr 0.100000 |
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2022-08-24 11:06:35,003 Evaluating as a multi-label problem: False |
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2022-08-24 11:06:35,224 DEV : loss 0.07123567163944244 - f1-score (micro avg) 0.9716 |
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2022-08-24 11:06:35,379 BAD EPOCHS (no improvement): 1 |
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2022-08-24 11:06:39,298 ---------------------------------------------------------------------------------------------------- |
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2022-08-24 11:06:39,299 loading file resources/taggers/best-model.pt |
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2022-08-24 11:06:42,251 SequenceTagger predicts: Dictionary with 34 tags: <unk>, PSP, NN, VM, NNP, SYM, VAUX, JJ, NNPC, PRP, CC, NNC, QC, NST, DEM, RP, QF, NEG, RB, QCC, QO, INTF, JJC, WQ, RDP, UNK, PRPC, NSTC, RBC, QFC, CCC, INJ, <START>, <STOP> |
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2022-08-24 11:06:49,127 Evaluating as a multi-label problem: False |
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2022-08-24 11:06:49,348 0.9709 0.9709 0.9709 0.9709 |
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2022-08-24 11:06:49,349 |
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Results: |
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- F-score (micro) 0.9709 |
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- F-score (macro) 0.8174 |
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- Accuracy 0.9709 |
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By class: |
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precision recall f1-score support |
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PSP 0.9971 0.9975 0.9973 7182 |
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NN 0.9710 0.9685 0.9697 7181 |
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VM 0.9942 0.9923 0.9933 3643 |
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NNP 0.9400 0.9076 0.9235 2846 |
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SYM 1.0000 1.0000 1.0000 2420 |
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VAUX 0.9928 0.9973 0.9950 2216 |
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JJ 0.9409 0.9560 0.9484 1933 |
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NNPC 0.8861 0.8938 0.8899 1592 |
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PRP 0.9851 0.9829 0.9840 1348 |
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CC 0.9892 0.9938 0.9915 1289 |
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NNC 0.7871 0.8778 0.8300 851 |
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QC 0.9866 0.9933 0.9899 593 |
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NST 1.0000 0.9960 0.9980 500 |
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RP 0.9958 0.9754 0.9855 487 |
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DEM 0.9622 0.9935 0.9776 461 |
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QF 0.9668 0.9357 0.9510 280 |
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NEG 1.0000 1.0000 1.0000 190 |
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RB 0.9677 0.8889 0.9266 135 |
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QCC 0.9796 0.9697 0.9746 99 |
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QO 0.9821 0.9649 0.9735 57 |
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JJC 0.8846 0.4792 0.6216 48 |
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INTF 0.7576 0.9615 0.8475 26 |
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WQ 0.9524 0.9524 0.9524 21 |
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RDP 0.8462 0.6875 0.7586 16 |
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UNK 0.3333 0.4286 0.3750 7 |
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PRPC 1.0000 0.5000 0.6667 4 |
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NSTC 1.0000 1.0000 1.0000 2 |
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RBC 0.0000 0.0000 0.0000 1 |
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QFC 0.0000 0.0000 0.0000 1 |
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CCC 0.0000 0.0000 0.0000 1 |
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accuracy 0.9709 35430 |
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macro avg 0.8366 0.8098 0.8174 35430 |
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weighted avg 0.9713 0.9709 0.9709 35430 |
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2022-08-24 11:06:49,349 ---------------------------------------------------------------------------------------------------- |
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