--- library_name: transformers license: llama3.1 base_model: meta-llama/Llama-3.1-8B-Instruct tags: - axolotl - generated_from_trainer model-index: - name: L3.1-Pneuma-8B results: [] --- [Built with Axolotl](https://github.com/axolotl-ai-cloud/axolotl)
See axolotl config axolotl version: `0.5.0` ```yaml base_model: meta-llama/Llama-3.1-8B-Instruct load_in_8bit: false load_in_4bit: false strict: false load_in_8bit: false load_in_4bit: false strict: false datasets: - path: Sandevistan_cleaned.jsonl type: customllama3_stan dataset_prepared_path: last_run_prepared val_set_size: 0.05 output_dir: ./outputs/out fix_untrained_tokens: true sequence_len: 4096 sample_packing: true pad_to_sequence_len: true wandb_project: Pneuma wandb_entity: wandb_watch: wandb_name: wandb_log_model: gradient_accumulation_steps: 16 micro_batch_size: 8 num_epochs: 2 optimizer: paged_adamw_8bit lr_scheduler: cosine learning_rate: 0.0000078 max_grad_norm: 1 train_on_inputs: false group_by_length: false bf16: auto fp16: tf32: false gradient_checkpointing: unsloth early_stopping_patience: resume_from_checkpoint: logging_steps: 1 xformers_attention: flash_attention: true eval_sample_packing: false plugins: - axolotl.integrations.liger.LigerPlugin liger_rope: true liger_rms_norm: true liger_swiglu: true liger_fused_linear_cross_entropy: true hub_model_id: Replete-AI/L3.1-Pneuma-8B hub_strategy: every_save warmup_steps: 0 evals_per_epoch: 3 eval_table_size: saves_per_epoch: 3 debug: deepspeed: weight_decay: 0.1 fsdp: fsdp_config: special_tokens: bos_token: "<|begin_of_text|>" eos_token: "<|end_of_text|>" pad_token: "<|end_of_text|>" tokens: ```

# L3.1-Pneuma-8B This model is a fine-tuned version of [meta-llama/Llama-3.1-8B-Instruct](https://huggingface.co/meta-llama/Llama-3.1-8B-Instruct) on the [Sandevistan](https://huggingface.co/datasets/Replete-AI/Sandevistan) dataset. It achieves the following results on the evaluation set: - Loss: 2.4357 ## Model description This model is designed to challenge common paradigms in training Large Language Models, giving them a focus on user experience over profitability. These are highly experimental, and need preference training in order to increase their effectiveness. It seems to have retained a large amount of the biases that we were trying to eliminate from the corporate instruct models. ## Intended uses & limitations Chatting, conversation, and assistance in small downstream tasks. Large Language Models work incredibly differently from humans, so while we are capable of training and rewarding them to act just like us in many ways, you should treat it as a simulation and use the Socratic method when engaging with them. You, as an end-user should always remain in control of your own thoughts and decisions, and use AI as a way to improve yourself rather than becoming dependent on it. ## Training procedure ### Training hyperparameters The following hyperparameters were used during training: - learning_rate: 7.8e-06 - train_batch_size: 8 - eval_batch_size: 8 - seed: 42 - gradient_accumulation_steps: 16 - total_train_batch_size: 128 - optimizer: Use OptimizerNames.PAGED_ADAMW_8BIT with betas=(0.9,0.999) and epsilon=1e-08 and optimizer_args=No additional optimizer arguments - lr_scheduler_type: cosine - num_epochs: 2 ### Training results | Training Loss | Epoch | Step | Validation Loss | |:-------------:|:------:|:----:|:---------------:| | 1.0731 | 0.0023 | 1 | 2.7679 | | 0.6458 | 0.3338 | 143 | 2.4576 | | 0.6504 | 0.6675 | 286 | 2.4407 | | 1.112 | 1.0019 | 429 | 2.4358 | | 0.6014 | 1.3357 | 572 | 2.4358 | | 0.6194 | 1.6694 | 715 | 2.4357 | ### Framework versions - Transformers 4.46.1 - Pytorch 2.3.1+cu121 - Datasets 3.0.1 - Tokenizers 0.20.3