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results

This model is a fine-tuned version of jeff31415/TinyLlama-1.1B-1T-OpenOrca on an unknown dataset. It achieves the following results on the evaluation set:

  • Loss: 1.1667

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: 3e-07
  • train_batch_size: 20
  • eval_batch_size: 4
  • seed: 42
  • gradient_accumulation_steps: 2
  • total_train_batch_size: 40
  • optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
  • lr_scheduler_type: linear
  • num_epochs: 1

Training results

Training Loss Epoch Step Validation Loss
2.6285 0.0 4 2.4698
2.6222 0.0 8 2.4660
2.6536 0.0 12 2.4604
2.6785 0.01 16 2.4557
2.6085 0.01 20 2.4515
2.5907 0.01 24 2.4463
2.5942 0.01 28 2.4415
2.6101 0.01 32 2.4372
2.5827 0.01 36 2.4327
2.5729 0.02 40 2.4281
2.5856 0.02 44 2.4231
2.589 0.02 48 2.4186
2.6483 0.02 52 2.4145
2.517 0.02 56 2.4095
2.5987 0.02 60 2.4050
2.5489 0.03 64 2.4004
2.5063 0.03 68 2.3965
2.5867 0.03 72 2.3916
2.544 0.03 76 2.3873
2.5596 0.03 80 2.3828
2.5744 0.03 84 2.3786
2.5588 0.04 88 2.3742
2.5579 0.04 92 2.3702
2.5245 0.04 96 2.3660
2.5132 0.04 100 2.3611
2.5037 0.04 104 2.3570
2.4727 0.04 108 2.3531
2.4709 0.04 112 2.3488
2.4711 0.05 116 2.3445
2.5445 0.05 120 2.3402
2.4994 0.05 124 2.3362
2.5036 0.05 128 2.3319
2.5525 0.05 132 2.3277
2.5245 0.05 136 2.3241
2.4946 0.06 140 2.3198
2.5142 0.06 144 2.3153
2.4639 0.06 148 2.3113
2.4796 0.06 152 2.3070
2.4529 0.06 156 2.3031
2.4823 0.06 160 2.2993
2.4439 0.07 164 2.2948
2.4652 0.07 168 2.2909
2.4574 0.07 172 2.2867
2.4557 0.07 176 2.2830
2.4462 0.07 180 2.2787
2.3962 0.07 184 2.2745
2.3666 0.08 188 2.2706
2.5024 0.08 192 2.2670
2.4419 0.08 196 2.2627
2.4246 0.08 200 2.2584
2.3853 0.08 204 2.2552
2.4032 0.08 208 2.2511
2.4444 0.08 212 2.2470
2.2932 0.09 216 2.2428
2.3929 0.09 220 2.2391
2.4112 0.09 224 2.2350
2.4191 0.09 228 2.2311
2.4408 0.09 232 2.2272
2.3884 0.09 236 2.2234
2.3689 0.1 240 2.2196
2.3689 0.1 244 2.2154
2.3249 0.1 248 2.2114
2.4286 0.1 252 2.2078
2.3497 0.1 256 2.2039
2.284 0.1 260 2.1999
2.3333 0.11 264 2.1958
2.3305 0.11 268 2.1921
2.3465 0.11 272 2.1882
2.3274 0.11 276 2.1841
2.3641 0.11 280 2.1803
2.3089 0.11 284 2.1763
2.2645 0.12 288 2.1721
2.3439 0.12 292 2.1687
2.3285 0.12 296 2.1649
2.3126 0.12 300 2.1604
2.3356 0.12 304 2.1570
2.3396 0.12 308 2.1527
2.2972 0.12 312 2.1487
2.3321 0.13 316 2.1450
2.3348 0.13 320 2.1415
2.2728 0.13 324 2.1374
2.287 0.13 328 2.1334
2.2474 0.13 332 2.1298
2.3214 0.13 336 2.1264
2.2725 0.14 340 2.1223
2.3114 0.14 344 2.1183
2.2333 0.14 348 2.1146
2.2812 0.14 352 2.1107
2.2454 0.14 356 2.1069
2.2261 0.14 360 2.1032
2.2841 0.15 364 2.0989
2.2481 0.15 368 2.0952
2.278 0.15 372 2.0912
2.2765 0.15 376 2.0873
2.2232 0.15 380 2.0833
2.306 0.15 384 2.0795
2.2126 0.16 388 2.0760
2.2557 0.16 392 2.0721
2.1988 0.16 396 2.0684
2.1917 0.16 400 2.0639
2.2479 0.16 404 2.0599
2.1484 0.16 408 2.0558
2.1886 0.16 412 2.0521
2.2026 0.17 416 2.0482
2.1572 0.17 420 2.0442
2.1931 0.17 424 2.0400
2.161 0.17 428 2.0365
2.1115 0.17 432 2.0322
2.173 0.17 436 2.0284
2.1491 0.18 440 2.0247
2.1716 0.18 444 2.0204
2.2031 0.18 448 2.0165
2.1466 0.18 452 2.0126
2.1384 0.18 456 2.0088
2.1824 0.18 460 2.0048
2.1401 0.19 464 2.0006
2.2086 0.19 468 1.9969
2.1687 0.19 472 1.9926
2.145 0.19 476 1.9888
2.2007 0.19 480 1.9850
2.1367 0.19 484 1.9808
2.1291 0.2 488 1.9768
2.1124 0.2 492 1.9729
2.0738 0.2 496 1.9689
2.1048 0.2 500 1.9646
2.0995 0.2 504 1.9607
2.0816 0.2 508 1.9568
2.0969 0.2 512 1.9527
2.1034 0.21 516 1.9484
2.0654 0.21 520 1.9442
2.1175 0.21 524 1.9404
2.0829 0.21 528 1.9363
2.0973 0.21 532 1.9322
2.0439 0.21 536 1.9278
2.0791 0.22 540 1.9239
2.0988 0.22 544 1.9203
2.0179 0.22 548 1.9160
2.0452 0.22 552 1.9119
1.9792 0.22 556 1.9079
1.9862 0.22 560 1.9032
2.0176 0.23 564 1.8994
2.0066 0.23 568 1.8954
2.0333 0.23 572 1.8914
2.0316 0.23 576 1.8871
2.0114 0.23 580 1.8828
2.0093 0.23 584 1.8789
1.9829 0.24 588 1.8749
1.971 0.24 592 1.8706
2.0188 0.24 596 1.8668
2.0081 0.24 600 1.8628
2.0014 0.24 604 1.8587
1.9741 0.24 608 1.8544
1.9828 0.24 612 1.8505
1.9481 0.25 616 1.8463
1.9584 0.25 620 1.8424
1.9449 0.25 624 1.8381
1.9753 0.25 628 1.8343
2.0055 0.25 632 1.8300
1.98 0.25 636 1.8261
1.9757 0.26 640 1.8223
1.9683 0.26 644 1.8182
1.926 0.26 648 1.8141
1.9454 0.26 652 1.8101
1.9352 0.26 656 1.8059
1.8816 0.26 660 1.8021
1.9182 0.27 664 1.7980
1.9659 0.27 668 1.7941
1.8932 0.27 672 1.7901
1.8608 0.27 676 1.7861
1.941 0.27 680 1.7824
1.8854 0.27 684 1.7785
1.8912 0.28 688 1.7743
1.8667 0.28 692 1.7707
1.912 0.28 696 1.7666
1.9009 0.28 700 1.7628
1.906 0.28 704 1.7589
1.8671 0.28 708 1.7550
1.8609 0.28 712 1.7508
1.8485 0.29 716 1.7469
1.8334 0.29 720 1.7431
1.8763 0.29 724 1.7392
1.9005 0.29 728 1.7355
1.8669 0.29 732 1.7315
1.8984 0.29 736 1.7276
1.8074 0.3 740 1.7241
1.8614 0.3 744 1.7202
1.8211 0.3 748 1.7165
1.8553 0.3 752 1.7124
1.7978 0.3 756 1.7085
1.8203 0.3 760 1.7048
1.8192 0.31 764 1.7010
1.8532 0.31 768 1.6974
1.8307 0.31 772 1.6935
1.8207 0.31 776 1.6896
1.7895 0.31 780 1.6858
1.7976 0.31 784 1.6821
1.814 0.32 788 1.6785
1.7972 0.32 792 1.6748
1.8258 0.32 796 1.6714
1.79 0.32 800 1.6674
1.802 0.32 804 1.6640
1.7784 0.32 808 1.6603
1.7671 0.32 812 1.6569
1.7618 0.33 816 1.6535
1.8207 0.33 820 1.6503
1.7837 0.33 824 1.6467
1.8066 0.33 828 1.6439
1.7814 0.33 832 1.6407
1.7244 0.33 836 1.6373
1.7195 0.34 840 1.6342
1.7524 0.34 844 1.6310
1.7644 0.34 848 1.6279
1.7171 0.34 852 1.6245
1.7418 0.34 856 1.6212
1.7337 0.34 860 1.6180
1.7441 0.35 864 1.6148
1.694 0.35 868 1.6115
1.7601 0.35 872 1.6083
1.7081 0.35 876 1.6050
1.7101 0.35 880 1.6020
1.7271 0.35 884 1.5990
1.7402 0.36 888 1.5954
1.7125 0.36 892 1.5922
1.6949 0.36 896 1.5888
1.7145 0.36 900 1.5858
1.6665 0.36 904 1.5824
1.6929 0.36 908 1.5796
1.7068 0.36 912 1.5766
1.6877 0.37 916 1.5734
1.6718 0.37 920 1.5706
1.6886 0.37 924 1.5676
1.7459 0.37 928 1.5646
1.6596 0.37 932 1.5617
1.6689 0.37 936 1.5588
1.6744 0.38 940 1.5561
1.7009 0.38 944 1.5533
1.6651 0.38 948 1.5505
1.6821 0.38 952 1.5479
1.6453 0.38 956 1.5453
1.6624 0.38 960 1.5426
1.6453 0.39 964 1.5402
1.6451 0.39 968 1.5377
1.6627 0.39 972 1.5353
1.6423 0.39 976 1.5326
1.652 0.39 980 1.5302
1.6414 0.39 984 1.5278
1.6107 0.4 988 1.5253
1.6599 0.4 992 1.5225
1.6326 0.4 996 1.5202
1.6324 0.4 1000 1.5175
1.5907 0.4 1004 1.5149
1.6465 0.4 1008 1.5124
1.6148 0.4 1012 1.5102
1.6064 0.41 1016 1.5074
1.6342 0.41 1020 1.5053
1.605 0.41 1024 1.5025
1.6121 0.41 1028 1.5003
1.617 0.41 1032 1.4978
1.5897 0.41 1036 1.4955
1.6022 0.42 1040 1.4930
1.5748 0.42 1044 1.4903
1.5974 0.42 1048 1.4879
1.6126 0.42 1052 1.4855
1.6189 0.42 1056 1.4828
1.5916 0.42 1060 1.4804
1.5938 0.43 1064 1.4779
1.6026 0.43 1068 1.4756
1.5687 0.43 1072 1.4735
1.5413 0.43 1076 1.4712
1.5778 0.43 1080 1.4689
1.5731 0.43 1084 1.4664
1.5625 0.44 1088 1.4642
1.55 0.44 1092 1.4621
1.5852 0.44 1096 1.4599
1.5614 0.44 1100 1.4579
1.5619 0.44 1104 1.4560
1.5658 0.44 1108 1.4542
1.5699 0.44 1112 1.4521
1.5738 0.45 1116 1.4502
1.5823 0.45 1120 1.4481
1.5425 0.45 1124 1.4459
1.5604 0.45 1128 1.4438
1.5562 0.45 1132 1.4420
1.555 0.45 1136 1.4399
1.5158 0.46 1140 1.4380
1.5272 0.46 1144 1.4359
1.5467 0.46 1148 1.4339
1.5399 0.46 1152 1.4317
1.5221 0.46 1156 1.4297
1.5022 0.46 1160 1.4277
1.5385 0.47 1164 1.4257
1.5042 0.47 1168 1.4236
1.5007 0.47 1172 1.4217
1.5323 0.47 1176 1.4196
1.5269 0.47 1180 1.4174
1.5379 0.47 1184 1.4156
1.522 0.48 1188 1.4137
1.506 0.48 1192 1.4116
1.4986 0.48 1196 1.4096
1.4918 0.48 1200 1.4075
1.5124 0.48 1204 1.4056
1.4926 0.48 1208 1.4038
1.5053 0.48 1212 1.4015
1.5043 0.49 1216 1.3996
1.5068 0.49 1220 1.3976
1.5039 0.49 1224 1.3955
1.4772 0.49 1228 1.3933
1.4873 0.49 1232 1.3916
1.4977 0.49 1236 1.3896
1.5016 0.5 1240 1.3873
1.495 0.5 1244 1.3854
1.4803 0.5 1248 1.3835
1.4842 0.5 1252 1.3816
1.4762 0.5 1256 1.3799
1.4859 0.5 1260 1.3781
1.4948 0.51 1264 1.3764
1.4851 0.51 1268 1.3743
1.4749 0.51 1272 1.3724
1.4594 0.51 1276 1.3709
1.4517 0.51 1280 1.3692
1.4239 0.51 1284 1.3673
1.4775 0.52 1288 1.3657
1.4483 0.52 1292 1.3643
1.4688 0.52 1296 1.3624
1.4566 0.52 1300 1.3608
1.4592 0.52 1304 1.3592
1.4505 0.52 1308 1.3573
1.4304 0.52 1312 1.3557
1.4691 0.53 1316 1.3541
1.4423 0.53 1320 1.3522
1.4301 0.53 1324 1.3508
1.4422 0.53 1328 1.3491
1.4577 0.53 1332 1.3475
1.4541 0.53 1336 1.3458
1.4246 0.54 1340 1.3440
1.4507 0.54 1344 1.3424
1.4312 0.54 1348 1.3408
1.4394 0.54 1352 1.3392
1.4271 0.54 1356 1.3374
1.4081 0.54 1360 1.3357
1.4314 0.55 1364 1.3339
1.4359 0.55 1368 1.3326
1.4381 0.55 1372 1.3308
1.4219 0.55 1376 1.3294
1.4669 0.55 1380 1.3279
1.4163 0.55 1384 1.3260
1.4153 0.56 1388 1.3242
1.4506 0.56 1392 1.3230
1.4229 0.56 1396 1.3213
1.4218 0.56 1400 1.3196
1.4185 0.56 1404 1.3181
1.4283 0.56 1408 1.3164
1.4202 0.56 1412 1.3148
1.3736 0.57 1416 1.3131
1.4332 0.57 1420 1.3116
1.4287 0.57 1424 1.3099
1.4175 0.57 1428 1.3081
1.4152 0.57 1432 1.3066
1.4036 0.57 1436 1.3054
1.4033 0.58 1440 1.3038
1.4095 0.58 1444 1.3023
1.4129 0.58 1448 1.3008
1.3838 0.58 1452 1.2995
1.3939 0.58 1456 1.2980
1.4023 0.58 1460 1.2964
1.3751 0.59 1464 1.2953
1.3657 0.59 1468 1.2935
1.375 0.59 1472 1.2927
1.3846 0.59 1476 1.2911
1.4192 0.59 1480 1.2901
1.3629 0.59 1484 1.2886
1.3947 0.6 1488 1.2877
1.3485 0.6 1492 1.2863
1.405 0.6 1496 1.2850
1.3758 0.6 1500 1.2841
1.3832 0.6 1504 1.2828
1.3314 0.6 1508 1.2814
1.3458 0.6 1512 1.2800
1.357 0.61 1516 1.2792
1.3808 0.61 1520 1.2778
1.3692 0.61 1524 1.2765
1.3763 0.61 1528 1.2754
1.3505 0.61 1532 1.2741
1.3579 0.61 1536 1.2731
1.3567 0.62 1540 1.2717
1.3608 0.62 1544 1.2705
1.3895 0.62 1548 1.2692
1.3614 0.62 1552 1.2682
1.3643 0.62 1556 1.2672
1.3537 0.62 1560 1.2658
1.3564 0.63 1564 1.2648
1.3433 0.63 1568 1.2634
1.3805 0.63 1572 1.2625
1.3309 0.63 1576 1.2612
1.3408 0.63 1580 1.2600
1.3505 0.63 1584 1.2591
1.355 0.64 1588 1.2582
1.3426 0.64 1592 1.2570
1.3476 0.64 1596 1.2556
1.3448 0.64 1600 1.2546
1.3702 0.64 1604 1.2532
1.3198 0.64 1608 1.2522
1.3565 0.64 1612 1.2511
1.3496 0.65 1616 1.2499
1.3346 0.65 1620 1.2490
1.3097 0.65 1624 1.2477
1.3224 0.65 1628 1.2468
1.321 0.65 1632 1.2455
1.3069 0.65 1636 1.2446
1.3358 0.66 1640 1.2436
1.3413 0.66 1644 1.2427
1.3328 0.66 1648 1.2416
1.341 0.66 1652 1.2406
1.3022 0.66 1656 1.2396
1.3309 0.66 1660 1.2386
1.3099 0.67 1664 1.2377
1.2979 0.67 1668 1.2368
1.3219 0.67 1672 1.2358
1.328 0.67 1676 1.2349
1.3161 0.67 1680 1.2339
1.3435 0.67 1684 1.2329
1.3191 0.68 1688 1.2323
1.3427 0.68 1692 1.2314
1.3157 0.68 1696 1.2307
1.31 0.68 1700 1.2298
1.3418 0.68 1704 1.2287
1.3051 0.68 1708 1.2280
1.3453 0.68 1712 1.2271
1.3146 0.69 1716 1.2261
1.2961 0.69 1720 1.2255
1.2989 0.69 1724 1.2248
1.314 0.69 1728 1.2239
1.3137 0.69 1732 1.2232
1.323 0.69 1736 1.2221
1.3194 0.7 1740 1.2216
1.2857 0.7 1744 1.2206
1.3101 0.7 1748 1.2199
1.2962 0.7 1752 1.2194
1.2927 0.7 1756 1.2186
1.2728 0.7 1760 1.2179
1.2903 0.71 1764 1.2170
1.3108 0.71 1768 1.2164
1.2899 0.71 1772 1.2156
1.2996 0.71 1776 1.2149
1.2865 0.71 1780 1.2141
1.3004 0.71 1784 1.2135
1.2916 0.72 1788 1.2128
1.2975 0.72 1792 1.2119
1.3071 0.72 1796 1.2114
1.2793 0.72 1800 1.2106
1.2755 0.72 1804 1.2098
1.2968 0.72 1808 1.2093
1.3226 0.72 1812 1.2085
1.3117 0.73 1816 1.2079
1.2957 0.73 1820 1.2073
1.2885 0.73 1824 1.2066
1.2731 0.73 1828 1.2057
1.2821 0.73 1832 1.2051
1.2944 0.73 1836 1.2045
1.2768 0.74 1840 1.2040
1.2917 0.74 1844 1.2034
1.2935 0.74 1848 1.2027
1.268 0.74 1852 1.2023
1.2761 0.74 1856 1.2016
1.3107 0.74 1860 1.2010
1.2752 0.75 1864 1.2004
1.2661 0.75 1868 1.1997
1.2985 0.75 1872 1.1991
1.2801 0.75 1876 1.1985
1.2775 0.75 1880 1.1980
1.2741 0.75 1884 1.1976
1.2747 0.76 1888 1.1972
1.2772 0.76 1892 1.1964
1.2953 0.76 1896 1.1961
1.3052 0.76 1900 1.1958
1.2505 0.76 1904 1.1951
1.3088 0.76 1908 1.1945
1.2705 0.76 1912 1.1939
1.2606 0.77 1916 1.1934
1.2729 0.77 1920 1.1932
1.2642 0.77 1924 1.1927
1.2903 0.77 1928 1.1920
1.2688 0.77 1932 1.1918
1.2677 0.77 1936 1.1909
1.2747 0.78 1940 1.1905
1.2512 0.78 1944 1.1902
1.2651 0.78 1948 1.1898
1.2655 0.78 1952 1.1893
1.2617 0.78 1956 1.1888
1.2764 0.78 1960 1.1885
1.2531 0.79 1964 1.1883
1.2911 0.79 1968 1.1874
1.2616 0.79 1972 1.1871
1.2537 0.79 1976 1.1869
1.2548 0.79 1980 1.1864
1.2722 0.79 1984 1.1861
1.2717 0.8 1988 1.1858
1.281 0.8 1992 1.1854
1.2766 0.8 1996 1.1850
1.2962 0.8 2000 1.1846
1.2732 0.8 2004 1.1842
1.2588 0.8 2008 1.1838
1.2651 0.8 2012 1.1836
1.2755 0.81 2016 1.1833
1.2513 0.81 2020 1.1828
1.2645 0.81 2024 1.1824
1.2593 0.81 2028 1.1819
1.2947 0.81 2032 1.1818
1.2599 0.81 2036 1.1813
1.2094 0.82 2040 1.1809
1.2707 0.82 2044 1.1807
1.2653 0.82 2048 1.1803
1.2637 0.82 2052 1.1799
1.2708 0.82 2056 1.1799
1.283 0.82 2060 1.1794
1.2853 0.83 2064 1.1792
1.2617 0.83 2068 1.1792
1.2476 0.83 2072 1.1788
1.2355 0.83 2076 1.1785
1.2348 0.83 2080 1.1781
1.2468 0.83 2084 1.1780
1.2715 0.84 2088 1.1776
1.2502 0.84 2092 1.1772
1.284 0.84 2096 1.1771
1.2417 0.84 2100 1.1768
1.2516 0.84 2104 1.1766
1.2748 0.84 2108 1.1763
1.2744 0.84 2112 1.1762
1.2551 0.85 2116 1.1757
1.2687 0.85 2120 1.1755
1.2575 0.85 2124 1.1754
1.2501 0.85 2128 1.1749
1.2728 0.85 2132 1.1751
1.2411 0.85 2136 1.1750
1.2505 0.86 2140 1.1744
1.2363 0.86 2144 1.1743
1.2408 0.86 2148 1.1741
1.25 0.86 2152 1.1736
1.2729 0.86 2156 1.1735
1.2467 0.86 2160 1.1735
1.2377 0.87 2164 1.1734
1.2876 0.87 2168 1.1729
1.255 0.87 2172 1.1728
1.2471 0.87 2176 1.1724
1.2641 0.87 2180 1.1726
1.2594 0.87 2184 1.1722
1.2803 0.88 2188 1.1719
1.2404 0.88 2192 1.1718
1.2538 0.88 2196 1.1718
1.2423 0.88 2200 1.1716
1.2344 0.88 2204 1.1713
1.2646 0.88 2208 1.1711
1.2501 0.88 2212 1.1712
1.2455 0.89 2216 1.1709
1.2588 0.89 2220 1.1705
1.2629 0.89 2224 1.1706
1.2572 0.89 2228 1.1706
1.2625 0.89 2232 1.1704
1.2479 0.89 2236 1.1700
1.2698 0.9 2240 1.1701
1.2619 0.9 2244 1.1699
1.2455 0.9 2248 1.1696
1.2523 0.9 2252 1.1696
1.2695 0.9 2256 1.1692
1.258 0.9 2260 1.1691
1.2393 0.91 2264 1.1691
1.2567 0.91 2268 1.1690
1.2373 0.91 2272 1.1688
1.2797 0.91 2276 1.1687
1.2646 0.91 2280 1.1686
1.2502 0.91 2284 1.1686
1.2317 0.92 2288 1.1684
1.2443 0.92 2292 1.1683
1.2563 0.92 2296 1.1683
1.2485 0.92 2300 1.1683
1.2542 0.92 2304 1.1682
1.2381 0.92 2308 1.1679
1.2244 0.92 2312 1.1679
1.2725 0.93 2316 1.1678
1.2441 0.93 2320 1.1677
1.2441 0.93 2324 1.1678
1.2546 0.93 2328 1.1676
1.2279 0.93 2332 1.1674
1.2635 0.93 2336 1.1675
1.2572 0.94 2340 1.1673
1.2421 0.94 2344 1.1673
1.2022 0.94 2348 1.1671
1.2307 0.94 2352 1.1670
1.2525 0.94 2356 1.1670
1.2353 0.94 2360 1.1671
1.25 0.95 2364 1.1672
1.2493 0.95 2368 1.1670
1.2453 0.95 2372 1.1670
1.2714 0.95 2376 1.1669
1.2435 0.95 2380 1.1668
1.2518 0.95 2384 1.1668
1.2594 0.96 2388 1.1669
1.2149 0.96 2392 1.1670
1.2676 0.96 2396 1.1667
1.2337 0.96 2400 1.1669
1.2329 0.96 2404 1.1666
1.269 0.96 2408 1.1667
1.2298 0.96 2412 1.1665
1.2481 0.97 2416 1.1667
1.2674 0.97 2420 1.1668
1.2482 0.97 2424 1.1666
1.2604 0.97 2428 1.1667
1.2471 0.97 2432 1.1666
1.2069 0.97 2436 1.1665
1.2734 0.98 2440 1.1667
1.239 0.98 2444 1.1666
1.2245 0.98 2448 1.1664
1.244 0.98 2452 1.1664
1.2458 0.98 2456 1.1666
1.2566 0.98 2460 1.1665
1.2582 0.99 2464 1.1667
1.2312 0.99 2468 1.1667
1.229 0.99 2472 1.1666
1.2186 0.99 2476 1.1667
1.2423 0.99 2480 1.1665
1.2465 0.99 2484 1.1665
1.2332 1.0 2488 1.1663
1.2466 1.0 2492 1.1665
1.2308 1.0 2496 1.1665
1.2435 1.0 2500 1.1667

Framework versions

  • Transformers 4.36.0.dev0
  • Pytorch 2.1.0+cu118
  • Datasets 2.15.1.dev0
  • Tokenizers 0.15.0
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