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| import os |
| import torch |
| from .constants import (MODEL_FILE_PREFIX, MODEL_FILE_SUFFIX, OPTIM_FILE_SUFFIX, ZERO_FILE_PREFIX) |
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| def get_model_ckpt_name_for_rank(base_folder, mp_rank_str): |
| ckpt_name = os.path.join( |
| base_folder, |
| MODEL_FILE_PREFIX + mp_rank_str + MODEL_FILE_SUFFIX, |
| ) |
| return ckpt_name |
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| def get_zero_ckpt_name_for_rank(base_folder, dp_rank, mp_rank): |
| zero_prefix = f'{ZERO_FILE_PREFIX}{dp_rank}' |
| mp_rank_string = f'_{MODEL_FILE_PREFIX}{mp_rank:02d}' |
| zero_ckpt_name = os.path.join( |
| base_folder, |
| zero_prefix + mp_rank_string + OPTIM_FILE_SUFFIX, |
| ) |
| return zero_ckpt_name |
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| def get_layer_ckpt_name_for_rank(base_folder, layer_id, tp_rank): |
| ckpt_file = f'{layer_id}-model_{tp_rank:02d}{MODEL_FILE_SUFFIX}' |
| ckpt_path = os.path.join(base_folder, ckpt_file) |
| return ckpt_path |
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| def clone_tensors_for_torch_save(item, device=torch.device('cpu')): |
| """ |
| Returns a copy of ``item`` with all enclosed tensors replaced by clones on a specified device. |
| Works on individual tensors, and tensors contained/nested in lists, tuples, and dicts. |
| |
| Parameters: |
| - ``item``: tensor to clone or (possibly nested) container of tensors to clone. |
| - ``device``: target device (defaults to 'cpu') |
| |
| Returns: |
| - copy of ``item`` with cloned tensors on target device |
| """ |
| if torch.is_tensor(item): |
| return item.detach().clone().to(device) |
| elif isinstance(item, list): |
| return [clone_tensors_for_torch_save(v, device) for v in item] |
| elif isinstance(item, tuple): |
| return tuple([clone_tensors_for_torch_save(v, device) for v in item]) |
| elif isinstance(item, dict): |
| return type(item)({k: clone_tensors_for_torch_save(v, device) for k, v in item.items()}) |
| else: |
| return item |
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