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Mistral_Sparse_pretraining_80_percent_10000

This model is a fine-tuned version of mistralai/Mistral-7B-Instruct-v0.1 on the openwebtext dataset. It achieves the following results on the evaluation set:

  • Loss: 0.6872

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: 1e-05
  • train_batch_size: 8
  • eval_batch_size: 32
  • seed: 0
  • distributed_type: multi-GPU
  • num_devices: 6
  • gradient_accumulation_steps: 2
  • total_train_batch_size: 96
  • total_eval_batch_size: 192
  • optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
  • lr_scheduler_type: linear
  • training_steps: 10000

Training results

Training Loss Epoch Step Validation Loss
1.7461 0.05 50 1.7009
1.4034 0.1 100 1.3910
1.2302 0.15 150 1.2330
1.1363 0.19 200 1.1354
1.0699 0.24 250 1.0723
1.0316 0.29 300 1.0284
1.0044 0.34 350 0.9943
0.9719 0.39 400 0.9668
0.9391 0.44 450 0.9430
0.9194 0.48 500 0.9249
0.9131 0.53 550 0.9092
0.877 0.58 600 0.8953
0.8757 0.63 650 0.8852
0.8644 0.68 700 0.8749
0.8625 0.73 750 0.8679
0.867 0.78 800 0.8594
0.852 0.82 850 0.8529
0.8482 0.87 900 0.8473
0.8372 0.92 950 0.8421
0.8391 0.97 1000 0.8366
0.8209 1.02 1050 0.8327
0.8172 1.07 1100 0.8275
0.8094 1.11 1150 0.8247
0.8107 1.16 1200 0.8210
0.8137 1.21 1250 0.8168
0.8122 1.26 1300 0.8143
0.8047 1.31 1350 0.8115
0.804 1.36 1400 0.8083
0.7955 1.41 1450 0.8062
0.7939 1.45 1500 0.8040
0.7835 1.5 1550 0.8019
0.7983 1.55 1600 0.8001
0.7953 1.6 1650 0.7975
0.7903 1.65 1700 0.7945
0.7864 1.7 1750 0.7938
0.7972 1.75 1800 0.7914
0.7855 1.79 1850 0.7905
0.7834 1.84 1900 0.7878
0.7812 1.89 1950 0.7854
0.7865 1.94 2000 0.7847
0.7875 1.99 2050 0.7837
0.7764 2.04 2100 0.7815
0.7676 2.08 2150 0.7807
0.7716 2.13 2200 0.7796
0.777 2.18 2250 0.7781
0.7706 2.23 2300 0.7769
0.7669 2.28 2350 0.7748
0.771 2.33 2400 0.7742
0.7501 2.38 2450 0.7728
0.7653 2.42 2500 0.7713
0.7715 2.47 2550 0.7699
0.7588 2.52 2600 0.7694
0.7665 2.57 2650 0.7676
0.7616 2.62 2700 0.7658
0.7597 2.67 2750 0.7654
0.756 2.71 2800 0.7644
0.7517 2.76 2850 0.7628
0.7561 2.81 2900 0.7628
0.7413 2.86 2950 0.7620
0.7545 2.91 3000 0.7603
0.7442 2.96 3050 0.7592
0.7454 3.01 3100 0.7589
0.7575 3.05 3150 0.7583
0.739 3.1 3200 0.7571
0.7446 3.15 3250 0.7558
0.7428 3.2 3300 0.7557
0.737 3.25 3350 0.7553
0.7512 3.3 3400 0.7536
0.7447 3.34 3450 0.7525
0.7417 3.39 3500 0.7525
0.7403 3.44 3550 0.7512
0.761 3.49 3600 0.7502
0.7475 3.54 3650 0.7498
0.7535 3.59 3700 0.7486
0.733 3.64 3750 0.7483
0.7347 3.68 3800 0.7470
0.7439 3.73 3850 0.7470
0.7417 3.78 3900 0.7460
0.7383 3.83 3950 0.7460
0.7316 3.88 4000 0.7450
0.7273 3.93 4050 0.7442
0.7376 3.97 4100 0.7440
0.73 4.02 4150 0.7424
0.732 4.07 4200 0.7429
0.7278 4.12 4250 0.7419
0.721 4.17 4300 0.7416
0.7309 4.22 4350 0.7410
0.7273 4.27 4400 0.7400
0.7297 4.31 4450 0.7395
0.7321 4.36 4500 0.7385
0.7348 4.41 4550 0.7381
0.7251 4.46 4600 0.7371
0.7175 4.51 4650 0.7372
0.7356 4.56 4700 0.7368
0.7306 4.6 4750 0.7363
0.7248 4.65 4800 0.7359
0.7266 4.7 4850 0.7343
0.7243 4.75 4900 0.7349
0.7256 4.8 4950 0.7338
0.7301 4.85 5000 0.7335
0.7266 4.9 5050 0.7327
0.7229 4.94 5100 0.7321
0.7355 4.99 5150 0.7315
0.7207 5.04 5200 0.7317
0.7157 5.09 5250 0.7314
0.7214 5.14 5300 0.7299
0.7104 5.19 5350 0.7304
0.7059 5.24 5400 0.7296
0.7181 5.28 5450 0.7295
0.7226 5.33 5500 0.7286
0.7077 5.38 5550 0.7282
0.7239 5.43 5600 0.7276
0.7159 5.48 5650 0.7277
0.7169 5.53 5700 0.7271
0.7101 5.57 5750 0.7269
0.7146 5.62 5800 0.7262
0.7191 5.67 5850 0.7265
0.7124 5.72 5900 0.7248
0.7085 5.77 5950 0.7238
0.7052 5.82 6000 0.7235
0.7222 5.87 6050 0.7222
0.7089 5.91 6100 0.7221
0.7088 5.96 6150 0.7222
0.7017 6.01 6200 0.7218
0.7079 6.06 6250 0.7218
0.7209 6.11 6300 0.7211
0.691 6.16 6350 0.7210
0.7035 6.2 6400 0.7203
0.7075 6.25 6450 0.7207
0.7036 6.3 6500 0.7200
0.7023 6.35 6550 0.7189
0.7201 6.4 6600 0.7192
0.7021 6.45 6650 0.7188
0.6971 6.5 6700 0.7174
0.7087 6.54 6750 0.7184
0.7044 6.59 6800 0.7176
0.6921 6.64 6850 0.7179
0.7079 6.69 6900 0.7166
0.6908 6.74 6950 0.7158
0.687 6.79 7000 0.7158
0.696 6.83 7050 0.7148
0.6954 6.88 7100 0.7152
0.7103 6.93 7150 0.7143
0.6999 6.98 7200 0.7140
0.699 7.03 7250 0.7138
0.6959 7.08 7300 0.7138
0.6871 7.13 7350 0.7122
0.6941 7.17 7400 0.7131
0.6931 7.22 7450 0.7132
0.707 7.27 7500 0.7110
0.6911 7.32 7550 0.7122
0.7036 7.37 7600 0.7113
0.7105 7.42 7650 0.7107
0.7035 7.46 7700 0.7108
0.6901 7.51 7750 0.7113
0.6944 7.56 7800 0.7096
0.6927 7.61 7850 0.7093
0.7052 7.66 7900 0.7090
0.7046 7.71 7950 0.7082
0.6949 7.76 8000 0.7082
0.6888 7.8 8050 0.7071
0.6916 7.85 8100 0.7071
0.6937 7.9 8150 0.7067
0.7077 7.95 8200 0.7066
0.6847 8.0 8250 0.7057
0.6908 8.05 8300 0.7056
0.6813 8.1 8350 0.7060
0.6756 8.14 8400 0.7055
0.7006 8.19 8450 0.7052
0.6842 8.24 8500 0.7035
0.6851 8.29 8550 0.7044
0.6944 8.34 8600 0.7042
0.6929 8.39 8650 0.7040
0.6924 8.43 8700 0.7037
0.6843 8.48 8750 0.7037
0.7005 8.53 8800 0.7028
0.6795 8.58 8850 0.7022
0.6946 8.63 8900 0.7019
0.6761 8.68 8950 0.7016
0.6817 8.73 9000 0.7012
0.6838 8.77 9050 0.7012
0.6877 8.82 9100 0.7006
0.6812 8.87 9150 0.7004
0.6966 8.92 9200 0.7005
0.6778 8.97 9250 0.6993
0.6844 9.02 9300 0.6991
0.6853 9.06 9350 0.7000
0.6839 9.11 9400 0.6998
0.6813 9.16 9450 0.6984
0.6903 9.21 9500 0.6985
0.6819 9.26 9550 0.6987
0.6749 9.31 9600 0.6980
0.6782 9.36 9650 0.6979
0.6805 9.4 9700 0.6975
0.6907 9.45 9750 0.6974
0.6854 9.5 9800 0.6967
0.6803 9.55 9850 0.6969
0.6854 9.6 9900 0.6964
0.6761 9.65 9950 0.6966
0.6939 9.69 10000 0.6959

Framework versions

  • Transformers 4.35.2
  • Pytorch 2.1.1+cu121
  • Datasets 2.15.0
  • Tokenizers 0.15.0
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Finetuned from

Dataset used to train thrunlab/Mistral_Sparse_pretraining_80_percent_10000