# Train ## Environment ```bash cd scripts python -m venv venv source venv/bin/activate pip install -U -r requirements.in ``` ## Tokenizer ```bash python -B train_tokenizer.py ``` ## Dataset ```bash python -B prepare_pretrain_dataset.py ``` ## Model ### Pretrain ```bash litgpt pretrain --config ./pretrain-model.yaml ``` ```bash litgpt convert_from_litgpt out/pretrain/final/ out/converted_model cp config.json out/pretrain/final/ cp config.json out/converted_model/ ``` ```python import torch from safetensors.torch import save_file state_dict = torch.load('out/converted_model/model.pth', map_location='cpu') save_file(state_dict, 'out/converted_model/model.safetensors') ``` ## Evaluate ```bash litgpt evaluate --tasks 'leaderboard' --out_dir 'evaluate-0/' --batch_size 4 --dtype 'bfloat16' out/pretrain/final/ litgpt evaluate --tasks 'hellaswag,gsm8k,truthfulqa_mc2,mmlu,winogrande,arc_challenge' --out_dir 'evaluate-1/' --batch_size 4 --dtype 'bfloat16' out/pretrain/final/ litgpt evaluate --tasks 'mmlu_pro,ifeval,mgsm_direct,mathqa,gpqa' --out_dir 'evaluate-2/' --batch_size 4 --dtype 'bfloat16' out/pretrain/final/ ```