Centrum / README.md
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metadata
license: apache-2.0
tags:
  - generated_from_trainer
datasets:
  - NewSHead
model-index:
  - name: Centrum
    results: []

Centrum

This model is a fine-tuned version of allenai/led-base-16384 on the NewSHead dataset. It achieves the following results on the evaluation set:

  • Loss: 3.5568

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-05
  • train_batch_size: 1
  • eval_batch_size: 4
  • seed: 42
  • distributed_type: multi-GPU
  • num_devices: 4
  • gradient_accumulation_steps: 4
  • total_train_batch_size: 16
  • total_eval_batch_size: 16
  • optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
  • lr_scheduler_type: linear
  • lr_scheduler_warmup_steps: 10000
  • training_steps: 100000
  • mixed_precision_training: Native AMP
  • label_smoothing_factor: 0.1

Training results

Training Loss Epoch Step Validation Loss
4.1628 0.05 500 4.0732
4.0278 0.09 1000 3.9800
4.0008 0.14 1500 3.9283
3.9564 0.19 2000 3.8941
3.9193 0.23 2500 3.8780
3.9185 0.28 3000 3.8501
3.8881 0.32 3500 3.8334
3.8869 0.37 4000 3.8211
3.876 0.42 4500 3.8057
3.8552 0.46 5000 3.7954
3.8198 0.51 5500 3.7861
3.8016 0.56 6000 3.7750
3.8033 0.6 6500 3.7651
3.7927 0.65 7000 3.7528
3.7978 0.7 7500 3.7429
3.7727 0.74 8000 3.7367
3.7634 0.79 8500 3.7275
3.7395 0.83 9000 3.7158
3.7432 0.88 9500 3.7066
3.7623 0.93 10000 3.7039
3.7182 0.97 10500 3.6904
3.7146 1.02 11000 3.6881
3.681 1.07 11500 3.6797
3.6745 1.11 12000 3.6750
3.6794 1.16 12500 3.6748
3.6802 1.21 13000 3.6696
3.665 1.25 13500 3.6609
3.6516 1.3 14000 3.6633
3.6577 1.34 14500 3.6573
3.6409 1.39 15000 3.6519
3.6691 1.44 15500 3.6490
3.6521 1.48 16000 3.6475
3.6435 1.53 16500 3.6465
3.6466 1.58 17000 3.6392
3.644 1.62 17500 3.6419
3.6347 1.67 18000 3.6347
3.6205 1.71 18500 3.6328
3.6451 1.76 19000 3.6310
3.6327 1.81 19500 3.6284
3.6166 1.85 20000 3.6267
3.622 1.9 20500 3.6212
3.6164 1.95 21000 3.6199
3.6178 1.99 21500 3.6201
3.5892 2.04 22000 3.6201
3.5855 2.09 22500 3.6221
3.5658 2.13 23000 3.6193
3.5916 2.18 23500 3.6144
3.5767 2.22 24000 3.6101
3.5809 2.27 24500 3.6115
3.5561 2.32 25000 3.6110
3.5831 2.36 25500 3.6080
3.5551 2.41 26000 3.6121
3.5588 2.46 26500 3.6072
3.5645 2.5 27000 3.6056
3.5804 2.55 27500 3.6038
3.5712 2.6 28000 3.6052
3.5494 2.64 28500 3.6014
3.582 2.69 29000 3.5995
3.5487 2.73 29500 3.6051
3.5709 2.78 30000 3.5954
3.5546 2.83 30500 3.5941
3.5525 2.87 31000 3.5952
3.5603 2.92 31500 3.5972
3.5572 2.97 32000 3.5947
3.5106 3.01 32500 3.5952
3.5142 3.06 33000 3.5937
3.506 3.11 33500 3.5965
3.515 3.15 34000 3.5932
3.5247 3.2 34500 3.5951
3.5384 3.24 35000 3.5917
3.5165 3.29 35500 3.5887
3.5187 3.34 36000 3.5866
3.5097 3.38 36500 3.5895
3.5136 3.43 37000 3.5878
3.5095 3.48 37500 3.5839
3.5226 3.52 38000 3.5859
3.5277 3.57 38500 3.5827
3.4959 3.62 39000 3.5846
3.5003 3.66 39500 3.5823
3.5095 3.71 40000 3.5820
3.4814 3.75 40500 3.5854
3.5173 3.8 41000 3.5796
3.4968 3.85 41500 3.5810
3.5183 3.89 42000 3.5783
3.512 3.94 42500 3.5784
3.5069 3.99 43000 3.5775
3.5014 4.03 43500 3.5819
3.4787 4.08 44000 3.5836
3.4625 4.12 44500 3.5788
3.4902 4.17 45000 3.5784
3.4927 4.22 45500 3.5773
3.4813 4.26 46000 3.5769
3.4637 4.31 46500 3.5761
3.4731 4.36 47000 3.5771
3.4856 4.4 47500 3.5786
3.4579 4.45 48000 3.5790
3.5032 4.5 48500 3.5738
3.4826 4.54 49000 3.5749
3.4709 4.59 49500 3.5746
3.4916 4.63 50000 3.5745
3.4715 4.68 50500 3.5706
3.4926 4.73 51000 3.5729
3.4974 4.77 51500 3.5725
3.4796 4.82 52000 3.5683
3.4817 4.87 52500 3.5707
3.4683 4.91 53000 3.5721
3.4986 4.96 53500 3.5689
3.4763 5.01 54000 3.5716
3.4668 5.05 54500 3.5700
3.4274 5.1 55000 3.5724
3.4499 5.14 55500 3.5717
3.4507 5.19 56000 3.5706
3.4343 5.24 56500 3.5697
3.4151 5.28 57000 3.5710
3.4469 5.33 57500 3.5712
3.458 5.38 58000 3.5692
3.4559 5.42 58500 3.5680
3.4354 5.47 59000 3.5683
3.4479 5.52 59500 3.5703
3.4627 5.56 60000 3.5678
3.4478 5.61 60500 3.5659
3.4645 5.65 61000 3.5675
3.4658 5.7 61500 3.5666
3.4657 5.75 62000 3.5658
3.4618 5.79 62500 3.5653
3.4541 5.84 63000 3.5653
3.4552 5.89 63500 3.5648
3.4679 5.93 64000 3.5648
3.4423 5.98 64500 3.5652
3.3893 6.03 65000 3.5646
3.4239 6.07 65500 3.5668
3.4329 6.12 66000 3.5639
3.4151 6.16 66500 3.5649
3.4181 6.21 67000 3.5682
3.4314 6.26 67500 3.5669
3.4245 6.3 68000 3.5629
3.421 6.35 68500 3.5663
3.4329 6.4 69000 3.5660
3.4122 6.44 69500 3.5651
3.4362 6.49 70000 3.5628
3.4497 6.54 70500 3.5648
3.431 6.58 71000 3.5626
3.432 6.63 71500 3.5648
3.4208 6.67 72000 3.5635
3.4526 6.72 72500 3.5645
3.4139 6.77 73000 3.5621
3.4212 6.81 73500 3.5629
3.4352 6.86 74000 3.5597
3.4242 6.91 74500 3.5597
3.429 6.95 75000 3.5619
3.4133 7.0 75500 3.5592
3.4086 7.04 76000 3.5621
3.4056 7.09 76500 3.5604
3.4158 7.14 77000 3.5629
3.4153 7.18 77500 3.5609
3.4155 7.23 78000 3.5621
3.4117 7.28 78500 3.5626
3.407 7.32 79000 3.5638
3.3977 7.37 79500 3.5604
3.4134 7.42 80000 3.5611
3.4403 7.46 80500 3.5630
3.4002 7.51 81000 3.5601
3.4147 7.55 81500 3.5577
3.4068 7.6 82000 3.5588
3.4165 7.65 82500 3.5613
3.409 7.69 83000 3.5596
3.4213 7.74 83500 3.5583
3.403 7.79 84000 3.5601
3.3819 7.83 84500 3.5580
3.4182 7.88 85000 3.5570
3.4099 7.93 85500 3.5570
3.3845 7.97 86000 3.5582
3.411 8.02 86500 3.5610
3.3952 8.06 87000 3.5588
3.4211 8.11 87500 3.5588
3.4171 8.16 88000 3.5570
3.3825 8.2 88500 3.5607
3.3807 8.25 89000 3.5579
3.3842 8.3 89500 3.5583
3.3809 8.34 90000 3.5596
3.4033 8.39 90500 3.5590
3.4156 8.44 91000 3.5577
3.3927 8.48 91500 3.5585
3.4041 8.53 92000 3.5596
3.4006 8.57 92500 3.5600
3.4007 8.62 93000 3.5578
3.4047 8.67 93500 3.5572
3.3904 8.71 94000 3.5571
3.3888 8.76 94500 3.5581
3.3876 8.81 95000 3.5572
3.3872 8.85 95500 3.5575
3.3753 8.9 96000 3.5577
3.3961 8.95 96500 3.5568
3.4131 8.99 97000 3.5579
3.3647 9.04 97500 3.5573
3.3792 9.08 98000 3.5576
3.3755 9.13 98500 3.5575
3.3981 9.18 99000 3.5573
3.3914 9.22 99500 3.5573
3.4136 9.27 100000 3.5575

Framework versions

  • Transformers 4.20.0.dev0
  • Pytorch 1.11.0
  • Datasets 2.2.2
  • Tokenizers 0.12.1