GPT-2_para3M_2epoch_256

This model is a fine-tuned version of gpt2 on an unknown dataset. It achieves the following results on the evaluation set:

  • Loss: 2.1100

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: 0.0005
  • train_batch_size: 8
  • eval_batch_size: 8
  • seed: 42
  • gradient_accumulation_steps: 8
  • total_train_batch_size: 64
  • optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
  • lr_scheduler_type: cosine
  • lr_scheduler_warmup_steps: 100
  • num_epochs: 2

Training results

Training Loss Epoch Step Validation Loss
4.1873 0.01 500 4.0187
3.5461 0.02 1000 3.4287
3.2706 0.04 1500 3.1495
3.105 0.05 2000 2.9773
2.9885 0.06 2500 2.8566
2.8931 0.07 3000 2.7720
2.8307 0.08 3500 2.7016
2.7912 0.09 4000 2.6474
2.7295 0.11 4500 2.5972
2.6927 0.12 5000 2.5641
2.6756 0.13 5500 2.5248
2.6536 0.14 6000 2.4972
2.6186 0.15 6500 2.4730
2.5947 0.17 7000 2.4492
2.591 0.18 7500 2.4313
2.5706 0.19 8000 2.4172
2.5441 0.2 8500 2.3991
2.5266 0.21 9000 2.3838
2.5259 0.22 9500 2.3740
2.5173 0.24 10000 2.3629
2.5122 0.25 10500 2.3549
2.5004 0.26 11000 2.3409
2.4902 0.27 11500 2.3364
2.4735 0.28 12000 2.3242
2.4784 0.29 12500 2.3193
2.4754 0.31 13000 2.3126
2.4587 0.32 13500 2.3077
2.4613 0.33 14000 2.3050
2.4562 0.34 14500 2.2968
2.4422 0.35 15000 2.2913
2.4307 0.37 15500 2.2870
2.4339 0.38 16000 2.2814
2.445 0.39 16500 2.2801
2.4257 0.4 17000 2.2747
2.425 0.41 17500 2.2709
2.4095 0.42 18000 2.2672
2.4137 0.44 18500 2.2632
2.4284 0.45 19000 2.2601
2.419 0.46 19500 2.2569
2.4221 0.47 20000 2.2504
2.3951 0.48 20500 2.2507
2.4054 0.5 21000 2.2515
2.3977 0.51 21500 2.2442
2.4009 0.52 22000 2.2422
2.3941 0.53 22500 2.2388
2.3909 0.54 23000 2.2349
2.4016 0.55 23500 2.2380
2.389 0.57 24000 2.2326
2.3864 0.58 24500 2.2287
2.3795 0.59 25000 2.2285
2.3817 0.6 25500 2.2266
2.3789 0.61 26000 2.2256
2.3801 0.62 26500 2.2210
2.3687 0.64 27000 2.2189
2.378 0.65 27500 2.2194
2.3735 0.66 28000 2.2157
2.3758 0.67 28500 2.2142
2.3616 0.68 29000 2.2133
2.3731 0.7 29500 2.2085
2.3606 0.71 30000 2.2115
2.3516 0.72 30500 2.2072
2.3551 0.73 31000 2.2067
2.3626 0.74 31500 2.2033
2.3516 0.75 32000 2.2031
2.3658 0.77 32500 2.2008
2.3554 0.78 33000 2.1992
2.3524 0.79 33500 2.1988
2.3509 0.8 34000 2.1996
2.3474 0.81 34500 2.1949
2.3431 0.83 35000 2.1943
2.3413 0.84 35500 2.1907
2.3592 0.85 36000 2.1917
2.3636 0.86 36500 2.1919
2.3529 0.87 37000 2.1881
2.3371 0.88 37500 2.1875
2.3413 0.9 38000 2.1856
2.3463 0.91 38500 2.1839
2.3303 0.92 39000 2.1859
2.3432 0.93 39500 2.1790
2.3455 0.94 40000 2.1801
2.344 0.95 40500 2.1761
2.3442 0.97 41000 2.1759
2.3331 0.98 41500 2.1760
2.3391 0.99 42000 2.1748
2.3275 1.0 42500 2.1760
2.3308 1.01 43000 2.1712
2.3191 1.03 43500 2.1727
2.3182 1.04 44000 2.1682
2.3184 1.05 44500 2.1683
2.3177 1.06 45000 2.1668
2.3163 1.07 45500 2.1643
2.321 1.08 46000 2.1631
2.3164 1.1 46500 2.1655
2.3231 1.11 47000 2.1631
2.3139 1.12 47500 2.1591
2.3223 1.13 48000 2.1588
2.3133 1.14 48500 2.1588
2.2995 1.16 49000 2.1569
2.308 1.17 49500 2.1578
2.3062 1.18 50000 2.1539
2.3203 1.19 50500 2.1538
2.3116 1.2 51000 2.1526
2.294 1.21 51500 2.1520
2.2941 1.23 52000 2.1499
2.3053 1.24 52500 2.1502
2.3154 1.25 53000 2.1507
2.3057 1.26 53500 2.1485
2.3106 1.27 54000 2.1464
2.3035 1.28 54500 2.1457
2.304 1.3 55000 2.1445
2.2985 1.31 55500 2.1439
2.296 1.32 56000 2.1421
2.2917 1.33 56500 2.1411
2.2936 1.34 57000 2.1406
2.2866 1.36 57500 2.1383
2.2973 1.37 58000 2.1396
2.2865 1.38 58500 2.1378
2.2929 1.39 59000 2.1370
2.2858 1.4 59500 2.1351
2.2857 1.41 60000 2.1350
2.3019 1.43 60500 2.1338
2.289 1.44 61000 2.1330
2.2874 1.45 61500 2.1318
2.2858 1.46 62000 2.1305
2.2875 1.47 62500 2.1298
2.2859 1.49 63000 2.1294
2.28 1.5 63500 2.1275
2.2866 1.51 64000 2.1277
2.2851 1.52 64500 2.1281
2.2806 1.53 65000 2.1258
2.2889 1.54 65500 2.1245
2.2745 1.56 66000 2.1249
2.2739 1.57 66500 2.1230
2.2853 1.58 67000 2.1226
2.2773 1.59 67500 2.1228
2.2742 1.6 68000 2.1214
2.2656 1.61 68500 2.1200
2.2756 1.63 69000 2.1194
2.2806 1.64 69500 2.1193
2.271 1.65 70000 2.1186
2.2671 1.66 70500 2.1185
2.2718 1.67 71000 2.1168
2.2781 1.69 71500 2.1172
2.2744 1.7 72000 2.1164
2.2744 1.71 72500 2.1156
2.2603 1.72 73000 2.1154
2.2703 1.73 73500 2.1141
2.267 1.74 74000 2.1141
2.2614 1.76 74500 2.1141
2.263 1.77 75000 2.1133
2.2668 1.78 75500 2.1128
2.2642 1.79 76000 2.1128
2.2637 1.8 76500 2.1128
2.2692 1.82 77000 2.1118
2.2631 1.83 77500 2.1117
2.2567 1.84 78000 2.1116
2.2707 1.85 78500 2.1112
2.2707 1.86 79000 2.1109
2.2664 1.87 79500 2.1114
2.266 1.89 80000 2.1113
2.2645 1.9 80500 2.1108
2.2767 1.91 81000 2.1106
2.274 1.92 81500 2.1102
2.2587 1.93 82000 2.1102
2.2736 1.94 82500 2.1100
2.2633 1.96 83000 2.1102
2.2652 1.97 83500 2.1100
2.2655 1.98 84000 2.1101
2.2683 1.99 84500 2.1100

Framework versions

  • Transformers 4.32.0
  • Pytorch 2.0.1+cu117
  • Datasets 2.14.4
  • Tokenizers 0.13.2
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