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---
license: apache-2.0
base_model: mistralai/Mistral-7B-v0.1
tags:
- generated_from_trainer
model-index:
- name: Mistral_Sparse_refined_web_70p_2024-03-12
  results: []
---

<!-- This model card has been generated automatically according to the information the Trainer had access to. You
should probably proofread and complete it, then remove this comment. -->

# Mistral_Sparse_refined_web_70p_2024-03-12

This model is a fine-tuned version of [mistralai/Mistral-7B-v0.1](https://huggingface.co/mistralai/Mistral-7B-v0.1) on the None dataset.
It achieves the following results on the evaluation set:
- Loss: 2.1411

## 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: 1
- eval_batch_size: 1
- seed: 0
- distributed_type: multi-GPU
- num_devices: 4
- gradient_accumulation_steps: 4
- total_train_batch_size: 16
- total_eval_batch_size: 4
- optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
- lr_scheduler_type: linear
- training_steps: 2350

### Training results

| Training Loss | Epoch | Step | Validation Loss |
|:-------------:|:-----:|:----:|:---------------:|
| 2.7221        | 0.0   | 25   | 2.8218          |
| 2.4266        | 0.01  | 50   | 2.6972          |
| 2.4153        | 0.01  | 75   | 2.6181          |
| 2.3588        | 0.02  | 100  | 2.5695          |
| 2.3274        | 0.02  | 125  | 2.5427          |
| 2.4054        | 0.02  | 150  | 2.5244          |
| 2.3274        | 0.03  | 175  | 2.5144          |
| 2.3042        | 0.03  | 200  | 2.4995          |
| 2.3296        | 0.04  | 225  | 2.4898          |
| 2.3621        | 0.04  | 250  | 2.4844          |
| 2.2825        | 0.04  | 275  | 2.4756          |
| 2.2932        | 0.05  | 300  | 2.4704          |
| 2.3015        | 0.05  | 325  | 2.4693          |
| 2.139         | 0.06  | 350  | 2.4612          |
| 2.2953        | 0.06  | 375  | 2.4553          |
| 2.3358        | 0.06  | 400  | 2.4546          |
| 2.3302        | 0.07  | 425  | 2.4506          |
| 2.2814        | 0.07  | 450  | 2.4506          |
| 2.2014        | 0.08  | 475  | 2.4455          |
| 2.266         | 0.08  | 500  | 2.4434          |
| 2.3309        | 0.08  | 525  | 2.4430          |
| 2.2278        | 0.09  | 550  | 2.4417          |
| 2.3621        | 0.09  | 575  | 2.4384          |
| 2.1614        | 0.1   | 600  | 2.4385          |
| 2.2504        | 0.1   | 625  | 2.4370          |
| 2.3301        | 0.1   | 650  | 2.4350          |
| 2.3177        | 0.11  | 675  | 2.4331          |
| 2.2784        | 0.11  | 700  | 2.4307          |
| 2.2681        | 0.12  | 725  | 2.4305          |
| 2.1777        | 0.12  | 750  | 2.4314          |
| 2.2164        | 0.12  | 775  | 2.4321          |
| 2.3068        | 0.13  | 800  | 2.4292          |
| 2.3131        | 0.13  | 825  | 2.4267          |
| 2.2971        | 0.14  | 850  | 2.4256          |
| 2.1623        | 0.14  | 875  | 2.4231          |
| 2.2308        | 0.14  | 900  | 2.4246          |
| 2.1772        | 0.15  | 925  | 2.4259          |
| 2.3114        | 0.15  | 950  | 2.4226          |
| 2.2434        | 0.16  | 975  | 2.4268          |
| 2.2852        | 0.16  | 1000 | 2.4259          |
| 2.2924        | 0.16  | 1025 | 2.4262          |
| 2.3095        | 0.17  | 1050 | 2.4231          |
| 2.3378        | 0.17  | 1075 | 2.4225          |
| 2.265         | 0.18  | 1100 | 2.4181          |
| 2.2893        | 0.18  | 1125 | 2.4237          |
| 2.2577        | 0.18  | 1150 | 2.4176          |
| 2.3088        | 0.19  | 1175 | 2.4166          |
| 2.1623        | 0.19  | 1200 | 2.4139          |
| 2.2576        | 0.2   | 1225 | 2.4177          |
| 2.2411        | 0.2   | 1250 | 2.4160          |
| 2.28          | 0.2   | 1275 | 2.4171          |
| 2.3077        | 0.21  | 1300 | 2.4176          |
| 2.2814        | 0.21  | 1325 | 2.4186          |
| 2.1772        | 0.22  | 1350 | 2.4199          |
| 2.2554        | 0.22  | 1375 | 2.4190          |
| 2.2665        | 0.22  | 1400 | 2.4182          |
| 2.2058        | 0.23  | 1425 | 2.4171          |
| 2.1881        | 0.23  | 1450 | 2.4209          |
| 2.1567        | 0.24  | 1475 | 2.4186          |
| 2.2146        | 0.24  | 1500 | 2.4210          |
| 2.1493        | 0.24  | 1525 | 2.4207          |
| 2.2145        | 0.25  | 1550 | 2.4167          |
| 2.3312        | 0.25  | 1575 | 2.4187          |
| 2.2897        | 0.26  | 1600 | 2.4193          |
| 2.2592        | 0.26  | 1625 | 2.4170          |
| 2.3402        | 0.26  | 1650 | 2.4137          |
| 2.2354        | 0.27  | 1675 | 2.4165          |
| 2.2839        | 0.27  | 1700 | 2.4173          |
| 2.2681        | 0.28  | 1725 | 2.4177          |
| 2.2501        | 0.28  | 1750 | 2.4154          |
| 2.232         | 0.28  | 1775 | 2.4138          |
| 2.1882        | 0.29  | 1800 | 2.4142          |
| 2.2668        | 0.29  | 1825 | 2.4136          |
| 2.2641        | 0.3   | 1850 | 2.4110          |
| 2.2536        | 0.3   | 1875 | 2.4148          |
| 2.2732        | 0.3   | 1900 | 2.4159          |
| 2.3244        | 0.31  | 1925 | 2.4129          |
| 2.2639        | 0.31  | 1950 | 2.4135          |
| 2.2876        | 0.32  | 1975 | 2.4149          |
| 2.2108        | 0.32  | 2000 | 2.4116          |
| 2.233         | 0.32  | 2025 | 2.4163          |
| 2.2177        | 0.33  | 2050 | 2.4141          |
| 2.2132        | 0.33  | 2075 | 2.4143          |
| 2.3103        | 0.34  | 2100 | 2.4161          |
| 2.3486        | 0.34  | 2125 | 2.4129          |
| 2.2573        | 0.34  | 2150 | 2.4170          |
| 2.2096        | 0.35  | 2175 | 2.4110          |
| 2.241         | 0.35  | 2200 | 2.4135          |
| 2.1914        | 0.36  | 2225 | 2.4148          |
| 2.1867        | 0.36  | 2250 | 2.4132          |
| 2.3178        | 0.36  | 2275 | 2.4120          |
| 2.2948        | 0.37  | 2300 | 2.4071          |
| 2.1932        | 0.37  | 2325 | 2.4067          |
| 2.2373        | 0.38  | 2350 | 2.4121          |


### Framework versions

- Transformers 4.36.2
- Pytorch 2.1.2+cu121
- Datasets 2.15.0
- Tokenizers 0.15.0