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ft_0112_korean

This model is a fine-tuned version of facebook/wav2vec2-xls-r-300m on the None dataset. It achieves the following results on the evaluation set:

  • Loss: 0.6163
  • Cer: 0.1655

Model description

More information needed

Intended uses & limitations

More information needed

Training and evaluation data

More information needed

Training procedure

Training hyperparameters

The following hyperparameters were used during training:

  • learning_rate: 0.0001
  • train_batch_size: 4
  • eval_batch_size: 8
  • seed: 42
  • optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
  • lr_scheduler_type: linear
  • lr_scheduler_warmup_steps: 500
  • num_epochs: 4
  • mixed_precision_training: Native AMP

Training results

Training Loss Epoch Step Validation Loss Cer
66.0473 0.03 100 126.2500 1.0
39.2751 0.05 200 76.4439 1.0
24.2617 0.07 300 36.6274 1.0
10.2253 0.1 400 7.8025 1.0
4.9219 0.12 500 5.8257 1.0
4.7709 0.15 600 5.2597 1.0
4.7545 0.17 700 5.3516 1.0
4.701 0.2 800 5.2238 1.0
4.6753 0.23 900 5.1713 1.0
4.6339 0.25 1000 5.1546 1.0
4.6107 0.28 1100 5.0488 1.0
4.6086 0.3 1200 4.8149 1.0
4.5324 0.33 1300 4.7533 1.0
4.4797 0.35 1400 4.6892 1.0
4.4485 0.38 1500 4.5327 1.0
4.3794 0.4 1600 4.3797 0.9999
4.1549 0.42 1700 4.2075 0.9838
3.9647 0.45 1800 3.8729 0.9647
3.621 0.47 1900 3.3229 0.6854
3.3163 0.5 2000 2.9646 0.5646
3.0668 0.53 2100 2.7178 0.5608
2.8248 0.55 2200 2.4843 0.4937
2.7238 0.57 2300 2.3321 0.4736
2.614 0.6 2400 2.2513 0.4650
2.4994 0.62 2500 2.1655 0.4538
2.4431 0.65 2600 2.0785 0.4355
2.3307 0.68 2700 1.9603 0.4169
2.2495 0.7 2800 1.9026 0.4134
2.1647 0.72 2900 1.8152 0.4009
2.1075 0.75 3000 1.7521 0.3849
2.0577 0.78 3100 1.7004 0.3781
1.9935 0.8 3200 1.6226 0.3666
1.9391 0.82 3300 1.6097 0.3604
1.9295 0.85 3400 1.5416 0.3526
1.8759 0.88 3500 1.5227 0.3583
1.8316 0.9 3600 1.4791 0.3484
1.7531 0.93 3700 1.4472 0.3415
1.7413 0.95 3800 1.4178 0.3363
1.6609 0.97 3900 1.3587 0.3256
1.6986 1.0 4000 1.3396 0.3208
1.6189 1.02 4100 1.3253 0.3187
1.5853 1.05 4200 1.2929 0.3109
1.5153 1.07 4300 1.2691 0.3106
1.5259 1.1 4400 1.2500 0.3012
1.4916 1.12 4500 1.2151 0.2977
1.4113 1.15 4600 1.1796 0.2930
1.452 1.18 4700 1.1857 0.2928
1.3879 1.2 4800 1.1830 0.2915
1.4164 1.23 4900 1.1725 0.2920
1.4692 1.25 5000 1.1171 0.2794
1.346 1.27 5100 1.0858 0.2745
1.3964 1.3 5200 1.0644 0.2712
1.3359 1.32 5300 1.0585 0.2694
1.2769 1.35 5400 1.0290 0.2614
1.2741 1.38 5500 1.0356 0.2604
1.2257 1.4 5600 1.0167 0.2607
1.2416 1.43 5700 1.0074 0.2558
1.2376 1.45 5800 0.9889 0.2524
1.2048 1.48 5900 0.9649 0.2464
1.1335 1.5 6000 0.9580 0.2488
1.1946 1.52 6100 0.9503 0.2471
1.1926 1.55 6200 0.9467 0.2494
1.1451 1.57 6300 0.9202 0.2408
1.1426 1.6 6400 0.9018 0.2359
1.1569 1.62 6500 0.9216 0.2362
1.1093 1.65 6600 0.9433 0.2414
1.1258 1.68 6700 0.8986 0.2291
1.1024 1.7 6800 0.8838 0.2305
1.0567 1.73 6900 0.8916 0.2298
1.0928 1.75 7000 0.8855 0.2294
1.0526 1.77 7100 0.8592 0.2237
1.0236 1.8 7200 0.8433 0.2209
1.0454 1.82 7300 0.8382 0.2214
1.0252 1.85 7400 0.8252 0.2173
1.0404 1.88 7500 0.8190 0.2148
1.0326 1.9 7600 0.8067 0.2155
1.0008 1.93 7700 0.8081 0.2161
0.9814 1.95 7800 0.8061 0.2152
0.9664 1.98 7900 0.8147 0.2155
1.0032 2.0 8000 0.8232 0.2128
0.9274 2.02 8100 0.7951 0.2118
0.9115 2.05 8200 0.7857 0.2105
0.9339 2.08 8300 0.7722 0.2069
0.8553 2.1 8400 0.7603 0.2070
0.8671 2.12 8500 0.7927 0.2099
0.9067 2.15 8600 0.7511 0.2013
0.8507 2.17 8700 0.7763 0.2029
0.899 2.2 8800 0.7579 0.2026
0.8061 2.23 8900 0.7561 0.2014
0.8191 2.25 9000 0.7590 0.2024
0.8084 2.27 9100 0.7394 0.1972
0.8163 2.3 9200 0.7404 0.1941
0.8189 2.33 9300 0.7340 0.1955
0.8639 2.35 9400 0.7331 0.1950
0.8218 2.38 9500 0.7347 0.1959
0.8221 2.4 9600 0.7098 0.1922
0.7725 2.42 9700 0.7264 0.1923
0.7882 2.45 9800 0.7079 0.1875
0.7786 2.48 9900 0.7131 0.1913
0.7734 2.5 10000 0.7079 0.1912
0.7834 2.52 10100 0.6944 0.1896
0.78 2.55 10200 0.6980 0.1879
0.7602 2.58 10300 0.7076 0.1894
0.7415 2.6 10400 0.6946 0.1857
0.7791 2.62 10500 0.7025 0.1887
0.7357 2.65 10600 0.6949 0.1885
0.7102 2.67 10700 0.6978 0.1895
0.7395 2.7 10800 0.6893 0.1859
0.7301 2.73 10900 0.6847 0.1857
0.7492 2.75 11000 0.7063 0.1863
0.7372 2.77 11100 0.6917 0.1857
0.7474 2.8 11200 0.6843 0.1845
0.6727 2.83 11300 0.6628 0.1775
0.7342 2.85 11400 0.6729 0.1797
0.6599 2.88 11500 0.6631 0.1797
0.7209 2.9 11600 0.6658 0.1795
0.7222 2.92 11700 0.6741 0.1807
0.7124 2.95 11800 0.6722 0.1828
0.7304 2.98 11900 0.6606 0.1782
0.7234 3.0 12000 0.6499 0.1753
0.6857 3.02 12100 0.6547 0.1751
0.6238 3.05 12200 0.6615 0.1771
0.6495 3.08 12300 0.6499 0.1764
0.6219 3.1 12400 0.6558 0.1752
0.6684 3.12 12500 0.6479 0.1752
0.6455 3.15 12600 0.6574 0.1741
0.6414 3.17 12700 0.6489 0.1755
0.6619 3.2 12800 0.6527 0.1754
0.6303 3.23 12900 0.6462 0.1743
0.6525 3.25 13000 0.6505 0.1731
0.6347 3.27 13100 0.6432 0.1713
0.6206 3.3 13200 0.6495 0.1746
0.6445 3.33 13300 0.6328 0.1706
0.6097 3.35 13400 0.6329 0.1689
0.6151 3.38 13500 0.6473 0.1730
0.5948 3.4 13600 0.6413 0.1714
0.5949 3.42 13700 0.6377 0.1712
0.6402 3.45 13800 0.6295 0.1692
0.6607 3.48 13900 0.6287 0.1694
0.6219 3.5 14000 0.6357 0.1704
0.61 3.52 14100 0.6392 0.1715
0.5974 3.55 14200 0.6315 0.1687
0.5839 3.58 14300 0.6359 0.1689
0.6017 3.6 14400 0.6316 0.1673
0.6091 3.62 14500 0.6284 0.1686
0.6565 3.65 14600 0.6304 0.1684
0.6179 3.67 14700 0.6259 0.1661
0.5813 3.7 14800 0.6310 0.1672
0.5802 3.73 14900 0.6250 0.1667
0.6035 3.75 15000 0.6284 0.1666
0.5569 3.77 15100 0.6203 0.1651
0.5712 3.8 15200 0.6207 0.1660
0.546 3.83 15300 0.6246 0.1661
0.5602 3.85 15400 0.6206 0.1656
0.591 3.88 15500 0.6179 0.1650
0.5972 3.9 15600 0.6164 0.1653
0.6168 3.92 15700 0.6174 0.1660
0.5957 3.95 15800 0.6164 0.1657
0.5754 3.98 15900 0.6163 0.1657
0.5686 4.0 16000 0.6163 0.1655

Framework versions

  • Transformers 4.35.2
  • Pytorch 2.1.1+cu121
  • Datasets 2.13.0
  • Tokenizers 0.15.0
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