"""
Convert llama weight.
Support mindspore format.
"""
import argparse
import torch
import mindspore as ms
from mindformers.utils.convert_utils import ms2pt
def name_replace(name: str):
"""replace hf param name to ms."""
name = name.replace('.norm_out.', '.norm.')
name = name.replace('.ffn_norm.', '.post_attention_layernorm.')
name = name.replace('.attention_norm.', '.input_layernorm.')
name = name.replace('.feed_forward.w3.', '.mlp.up_proj.')
name = name.replace('.feed_forward.w2.', '.mlp.down_proj.')
name = name.replace('.feed_forward.w1.', '.mlp.gate_proj.')
name = name.replace('.attention.wo.', '.self_attn.o_proj.')
name = name.replace('.attention.wv.', '.self_attn.v_proj.')
name = name.replace('.attention.wk.', '.self_attn.k_proj.')
name = name.replace('.attention.wq.', '.self_attn.q_proj.')
name = name.replace('tok_embeddings.embedding_weight', 'embed_tokens.weight')
return name
def convert_ms_to_pt(input_path, output_path, dtype=None, **kwargs):
"""convert hf weight to ms."""
print(f"Trying to convert mindspore checkpoint in '{input_path}'.", flush=True)
param_dict = ms.load_checkpoint(input_path)
state_dict = {}
for name, value in param_dict.items():
print(f'\rprocessing parameter: {name} {value.shape} ', end='', flush=True)
value = ms2pt(value, dtype)
name = name_replace(name)
state_dict[name] = value
torch.save(state_dict, output_path)
print(f"\rConvert mindspore checkpoint finished, the huggingface checkpoint is saved in '{output_path}'.",
flush=True)
return True
if __name__ == "__main__":
parser = argparse.ArgumentParser()
parser.add_argument('--mindspore_ckpt_path', default='knowlm.ckpt')
parser.add_argument('--torch_bin_path', default='knowlm.bin')
args = parser.parse_args()
convert_ms_to_pt(args.mindspore_ckpt_path, args.torch_bin_path)