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mistral-rand

This model is a fine-tuned version of TheBloke/Mistral-7B-v0.1-GPTQ on the None dataset. It achieves the following results on the evaluation set:

  • Loss: 0.4471

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: 2e-05
  • 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: cosine
  • num_epochs: 15
  • mixed_precision_training: Native AMP

Training results

Training Loss Epoch Step Validation Loss
1.7543 0.03 50 0.9190
0.8445 0.05 100 0.7860
0.7819 0.07 150 0.7460
0.7231 0.1 200 0.7147
0.6985 0.12 250 0.6924
0.6887 0.15 300 0.6823
0.6836 0.17 350 0.6702
0.6624 0.2 400 0.6574
0.6712 0.23 450 0.6507
0.6354 0.25 500 0.6417
0.6089 0.28 550 0.6373
0.6236 0.3 600 0.6284
0.6161 0.33 650 0.6228
0.6367 0.35 700 0.6152
0.6329 0.38 750 0.6097
0.5944 0.4 800 0.6076
0.6036 0.42 850 0.6030
0.5767 0.45 900 0.5989
0.6079 0.47 950 0.5954
0.5915 0.5 1000 0.5916
0.5911 0.53 1050 0.5859
0.5752 0.55 1100 0.5847
0.5698 0.57 1150 0.5802
0.5813 0.6 1200 0.5754
0.5918 0.62 1250 0.5735
0.5587 0.65 1300 0.5677
0.5933 0.68 1350 0.5620
0.5262 0.7 1400 0.5522
0.5455 0.72 1450 0.5457
0.5472 0.75 1500 0.5416
0.536 0.78 1550 0.5400
0.527 0.8 1600 0.5393
0.5516 0.82 1650 0.5350
0.5578 0.85 1700 0.5356
0.5501 0.88 1750 0.5297
0.5316 0.9 1800 0.5288
0.5436 0.93 1850 0.5268
0.514 0.95 1900 0.5295
0.5249 0.97 1950 0.5246
0.538 1.0 2000 0.5226
0.4967 1.02 2050 0.5237
0.4991 1.05 2100 0.5261
0.5142 1.07 2150 0.5203
0.4891 1.1 2200 0.5174
0.5058 1.12 2250 0.5173
0.4895 1.15 2300 0.5182
0.4918 1.18 2350 0.5139
0.485 1.2 2400 0.5091
0.5173 1.23 2450 0.5121
0.5021 1.25 2500 0.5116
0.4834 1.27 2550 0.5097
0.4754 1.3 2600 0.5137
0.4907 1.32 2650 0.5059
0.5155 1.35 2700 0.5051
0.4965 1.38 2750 0.5050
0.5148 1.4 2800 0.5043
0.4709 1.43 2850 0.5032
0.4864 1.45 2900 0.5037
0.4794 1.48 2950 0.5029
0.4803 1.5 3000 0.5012
0.4843 1.52 3050 0.5017
0.4726 1.55 3100 0.4984
0.4773 1.57 3150 0.4968
0.4673 1.6 3200 0.4995
0.4803 1.62 3250 0.4990
0.4926 1.65 3300 0.4965
0.4814 1.68 3350 0.4973
0.4714 1.7 3400 0.4930
0.4797 1.73 3450 0.4903
0.4807 1.75 3500 0.4932
0.4815 1.77 3550 0.4888
0.4852 1.8 3600 0.4874
0.4802 1.82 3650 0.4887
0.4701 1.85 3700 0.4897
0.4572 1.88 3750 0.4873
0.4469 1.9 3800 0.4878
0.478 1.93 3850 0.4885
0.4449 1.95 3900 0.4866
0.4634 1.98 3950 0.4843
0.4718 2.0 4000 0.4838
0.4458 2.02 4050 0.4822
0.461 2.05 4100 0.4801
0.4247 2.08 4150 0.4856
0.4325 2.1 4200 0.4830
0.4354 2.12 4250 0.4827
0.4313 2.15 4300 0.4807
0.4753 2.17 4350 0.4812
0.4442 2.2 4400 0.4833
0.4431 2.23 4450 0.4851
0.4485 2.25 4500 0.4815
0.4416 2.27 4550 0.4813
0.4613 2.3 4600 0.4777
0.4121 2.33 4650 0.4775
0.4311 2.35 4700 0.4768
0.4532 2.38 4750 0.4765
0.4342 2.4 4800 0.4781
0.4189 2.42 4850 0.4743
0.443 2.45 4900 0.4742
0.4596 2.48 4950 0.4734
0.4193 2.5 5000 0.4719
0.4321 2.52 5050 0.4723
0.4456 2.55 5100 0.4713
0.4464 2.58 5150 0.4694
0.4273 2.6 5200 0.4700
0.4239 2.62 5250 0.4701
0.4282 2.65 5300 0.4687
0.4303 2.67 5350 0.4686
0.4559 2.7 5400 0.4695
0.4542 2.73 5450 0.4692
0.4532 2.75 5500 0.4685
0.4505 2.77 5550 0.4663
0.4533 2.8 5600 0.4660
0.4351 2.83 5650 0.4640
0.4354 2.85 5700 0.4651
0.4374 2.88 5750 0.4664
0.4571 2.9 5800 0.4662
0.4663 2.92 5850 0.4636
0.4211 2.95 5900 0.4645
0.4349 2.98 5950 0.4622
0.4167 3.0 6000 0.4634
0.4176 3.02 6050 0.4621
0.4387 3.05 6100 0.4607
0.395 3.08 6150 0.4638
0.4186 3.1 6200 0.4623
0.3993 3.12 6250 0.4622
0.4009 3.15 6300 0.4631
0.4033 3.17 6350 0.4640
0.389 3.2 6400 0.4662
0.4037 3.23 6450 0.4618
0.4287 3.25 6500 0.4617
0.3917 3.27 6550 0.4611
0.3944 3.3 6600 0.4626
0.4088 3.33 6650 0.4622
0.4205 3.35 6700 0.4604
0.4273 3.38 6750 0.4608
0.4139 3.4 6800 0.4607
0.3888 3.42 6850 0.4603
0.4353 3.45 6900 0.4573
0.4222 3.48 6950 0.4577
0.4083 3.5 7000 0.4571
0.4161 3.52 7050 0.4560
0.3879 3.55 7100 0.4540
0.3819 3.58 7150 0.4570
0.4345 3.6 7200 0.4551
0.4101 3.62 7250 0.4569
0.4194 3.65 7300 0.4543
0.4066 3.67 7350 0.4563
0.4144 3.7 7400 0.4553
0.4134 3.73 7450 0.4566
0.3906 3.75 7500 0.4550
0.4128 3.77 7550 0.4546
0.4227 3.8 7600 0.4535
0.4069 3.83 7650 0.4517
0.3927 3.85 7700 0.4548
0.3977 3.88 7750 0.4521
0.4184 3.9 7800 0.4516
0.3854 3.92 7850 0.4513
0.4129 3.95 7900 0.4524
0.3998 3.98 7950 0.4548
0.4227 4.0 8000 0.4534
0.3788 4.03 8050 0.4520
0.3732 4.05 8100 0.4501
0.375 4.08 8150 0.4565
0.3845 4.1 8200 0.4515
0.378 4.12 8250 0.4492
0.3874 4.15 8300 0.4508
0.3802 4.17 8350 0.4510
0.3596 4.2 8400 0.4524
0.4009 4.22 8450 0.4549
0.4105 4.25 8500 0.4515
0.3716 4.28 8550 0.4508
0.3673 4.3 8600 0.4497
0.3882 4.33 8650 0.4513
0.375 4.35 8700 0.4524
0.3654 4.38 8750 0.4503
0.3983 4.4 8800 0.4509
0.4067 4.42 8850 0.4487
0.3966 4.45 8900 0.4519
0.378 4.47 8950 0.4505
0.3755 4.5 9000 0.4508
0.3855 4.53 9050 0.4500
0.3938 4.55 9100 0.4527
0.3946 4.58 9150 0.4531
0.3752 4.6 9200 0.4506
0.3723 4.62 9250 0.4459
0.3704 4.65 9300 0.4467
0.3861 4.67 9350 0.4484
0.3965 4.7 9400 0.4481
0.3972 4.72 9450 0.4482
0.3917 4.75 9500 0.4447
0.3688 4.78 9550 0.4473
0.3861 4.8 9600 0.4491
0.3593 4.83 9650 0.4491
0.3916 4.85 9700 0.4432
0.3748 4.88 9750 0.4432
0.3921 4.9 9800 0.4459
0.3745 4.92 9850 0.4457
0.4002 4.95 9900 0.4443
0.3767 4.97 9950 0.4430
0.3537 5.0 10000 0.4470
0.3673 5.03 10050 0.4531
0.3506 5.05 10100 0.4474
0.3506 5.08 10150 0.4497
0.3622 5.1 10200 0.4471

Framework versions

  • PEFT 0.7.1
  • Transformers 4.36.2
  • Pytorch 2.1.2+cu121
  • Datasets 2.16.1
  • Tokenizers 0.15.0
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