"""
transform huggingface model to mindspore ckpt.
"""
import argparse
import mindspore as ms
from transformers import Qwen2ForCausalLM
def name_replace(weight_name: str):
"""replace weight name"""
weight_name = weight_name.replace('embed_tokens.', 'tok_embeddings.')
weight_name = weight_name.replace('lm_head.', 'output.')
weight_name = weight_name.replace('.self_attn.q_proj.', '.attention.wq.')
weight_name = weight_name.replace('.self_attn.k_proj.', '.attention.wk.')
weight_name = weight_name.replace('.self_attn.v_proj.', '.attention.wv.')
weight_name = weight_name.replace('.self_attn.o_proj.', '.attention.wo.')
weight_name = weight_name.replace('.mlp.gate_proj.', '.feed_forward.w1.')
weight_name = weight_name.replace('.mlp.down_proj.', '.feed_forward.w2.')
weight_name = weight_name.replace('.mlp.up_proj.', '.feed_forward.w3.')
weight_name = weight_name.replace('.input_layernorm.', '.attention_norm.')
weight_name = weight_name.replace('.post_attention_layernorm.', '.ffn_norm.')
return weight_name
if __name__ == "__main__":
parser = argparse.ArgumentParser()
parser.add_argument('--torch_ckpt_dir', default='./')
parser.add_argument('--mindspore_ckpt_path', default='transform.ckpt')
args = parser.parse_args()
model_hf = Qwen2ForCausalLM.from_pretrained(args.torch_ckpt_dir)
ckpt_list = []
for name, value in model_hf.named_parameters():
name = name_replace(name)
if name == 'model.norm.weight':
name = 'model.norm_out.weight'
if name == 'output.weight':
name = 'lm_head.weight'
if name == 'model.tok_embeddings.weight':
name = 'model.tok_embeddings.embedding_weight'
value = value.detach().numpy()
print(name, value.shape)
ckpt_list.append({'name': name, 'data': ms.Tensor(value, dtype=ms.float16)})
ms.save_checkpoint(ckpt_list, args.mindspore_ckpt_path)