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import os |
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import torch |
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import types |
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from .constants import (FP32_WEIGHT_KEY, PARAM, VOCAB_TENSOR, CAT_DIM, PARAM_N_SUB_PARAMS) |
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def load_hp_checkpoint_state(self, folder, tp_rank, tp_world_size): |
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hp_mapping = self._hp_mapping |
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optim_state_keys = hp_mapping.get_optim_state_keys() |
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hp_keys = [FP32_WEIGHT_KEY] + optim_state_keys |
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checkpoint_files = {key: os.path.join(folder, f"{key}.pt") for key in hp_keys} |
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for file in checkpoint_files.values(): |
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assert os.path.isfile(file), f'{file} is not a valid file' |
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for key in hp_keys: |
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ckpt_file = checkpoint_files[key] |
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ckpt_dict = torch.load(ckpt_file) |
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full_hp_param = ckpt_dict[PARAM] |
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if full_hp_param.shape == self.shape: |
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tp_rank = 0 |
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tp_world_size = 1 |
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is_vocab_tensor = ckpt_dict.get(VOCAB_TENSOR, False) |
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if is_vocab_tensor: |
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padded_target_vocab_size = self.shape[0] * tp_world_size |
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assert padded_target_vocab_size >= full_hp_param.shape[0], \ |
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f'Vocab tensor padded size {padded_target_vocab_size} < loaded universal size {full_hp_param.shape[0]}' |
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if padded_target_vocab_size > full_hp_param.shape[0]: |
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padding_size = padded_target_vocab_size - full_hp_param.shape[0] |
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full_hp_param = torch.nn.functional.pad(full_hp_param, (0, 0, 0, padding_size), "constant", 0) |
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full_param_numel = full_hp_param.numel() |
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tp_slice_numel = self.numel() |
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assert full_param_numel == tp_world_size * tp_slice_numel, \ |
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f'Loading {ckpt_file} full param numel {full_param_numel} != tensor slice numel {tp_slice_numel} * tp_world_size {tp_world_size}' |
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dst_tensor = hp_mapping.hp_fragment if key == FP32_WEIGHT_KEY else hp_mapping.get_optim_state_fragment(key) |
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chunk_dim = ckpt_dict.get(CAT_DIM, 0) |
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n_sub_params = ckpt_dict.get(PARAM_N_SUB_PARAMS, 1) |
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if n_sub_params > 1: |
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sub_params = full_hp_param.chunk(n_sub_params, dim=chunk_dim) |
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sub_params_tp_slice = [p.chunk(tp_world_size, dim=chunk_dim)[tp_rank] for p in sub_params] |
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tp_hp_slice = torch.cat(sub_params_tp_slice, dim=chunk_dim) |
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else: |
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tp_hp_slice = full_hp_param.chunk(tp_world_size, chunk_dim)[tp_rank] |
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tp_hp_slice = tp_hp_slice.flatten() |
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lp_frag_address = hp_mapping.lp_fragment_address |
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tp_hp_fragment = tp_hp_slice.narrow(0, lp_frag_address.start, lp_frag_address.numel) |
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assert dst_tensor.numel() == lp_frag_address.numel, \ |
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f'Load checkpoint {key} dst_tensor numel {dst_tensor.numel()} != src numel {lp_frag_address.numel}' |
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dst_tensor.data.copy_(tp_hp_fragment.data) |
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def enable_universal_checkpoint(param_list): |
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for param in param_list: |
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param.load_hp_checkpoint_state = types.MethodType(load_hp_checkpoint_state, param) |
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