import glob import re import shutil import sys import accelerate import torch from configuration_afmoe_scm import AfmoeSCMConfig from modeling_afmoe_scm import AfmoeSCMForCausalLM from configuration_afmoe import AfmoeConfig from safetensors import safe_open input_model = sys.argv[1] output_model_path = sys.argv[2] auto_map = { "AutoConfig": "configuration_afmoe_scm.AfmoeSCMConfig", "AutoModel": "modeling_afmoe_scm.AfmoeSCMModel", "AutoModelForCausalLM": "modeling_afmoe_scm.AfmoeSCMForCausalLM" } cfg_standard_moe = AfmoeConfig.from_pretrained(input_model) cfg_shared_moe = AfmoeSCMConfig( auto_map=auto_map, layer_types=cfg_standard_moe.layer_types, global_attn_every_n_layers=cfg_standard_moe.global_attn_every_n_layers, load_balance_coeff=cfg_standard_moe.load_balance_coeff, mup_enabled=cfg_standard_moe.mup_enabled, num_dense_layers=cfg_standard_moe.num_dense_layers, num_expert_groups=cfg_standard_moe.num_expert_groups, num_limited_groups=cfg_standard_moe.num_limited_groups, route_norm=cfg_standard_moe.route_norm, route_scale=cfg_standard_moe.route_scale, score_func=cfg_standard_moe.score_func, topk_group=cfg_standard_moe.topk_group, num_shared_experts=cfg_standard_moe.num_shared_experts, vocab_size=cfg_standard_moe.vocab_size, hidden_size=cfg_standard_moe.hidden_size, intermediate_size=cfg_standard_moe.intermediate_size, num_hidden_layers=cfg_standard_moe.num_hidden_layers, num_attention_heads=cfg_standard_moe.num_attention_heads, num_key_value_heads=cfg_standard_moe.num_key_value_heads, hidden_act=cfg_standard_moe.hidden_act, max_position_embeddings=cfg_standard_moe.max_position_embeddings, initializer_range=cfg_standard_moe.initializer_range, rms_norm_eps=cfg_standard_moe.rms_norm_eps, use_cache=cfg_standard_moe.use_cache, tie_word_embeddings=cfg_standard_moe.tie_word_embeddings, rope_theta=cfg_standard_moe.rope_theta, rope_scaling=cfg_standard_moe.rope_scaling, sliding_window=cfg_standard_moe.sliding_window, attention_dropout=cfg_standard_moe.attention_dropout, moe_intermediate_size=cfg_standard_moe.moe_intermediate_size, num_experts_per_tok=cfg_standard_moe.num_experts_per_tok, num_experts=cfg_standard_moe.num_experts, head_dim=cfg_standard_moe.head_dim, eos_token_id=cfg_standard_moe.eos_token_id, pad_token_id=cfg_standard_moe.pad_token_id, torch_dtype=cfg_standard_moe.torch_dtype, ) num_experts = cfg_standard_moe.num_experts with accelerate.init_empty_weights(): model_shared_moe = AfmoeSCMForCausalLM(cfg_shared_moe) model_shared_moe = model_shared_moe.to(torch.bfloat16) new_state_dict = {} pattern = f"{input_model}/model-*-of-*.safetensors" files = sorted(glob.glob(pattern)) if len(files) == 0: raise FileNotFoundError tensors = {} for file_path in files: print(f"processing {file_path}") with safe_open(file_path, framework="pt", device="cpu") as f: for key in f.keys(): tensor = f.get_tensor(key) tensors[key] = tensor for key in tensors: if "experts" not in key or "shared_experts" in key: new_state_dict[key] = tensors[key] elif "experts.0" in key: layer_num = int(re.search(r"\d+", key).group()) new_state_dict[ f"model.layers.{layer_num}.mlp.moe_mlp.output_experts.weight" ] = torch.stack( [ tensors[f"model.layers.{layer_num}.mlp.experts.{i}.down_proj.weight"] for i in range(num_experts) ] ) new_state_dict[f"model.layers.{layer_num}.mlp.moe_mlp.experts.weight"] = ( torch.stack( [ torch.cat( [ tensors[ f"model.layers.{layer_num}.mlp.experts.{i}.up_proj.weight" ], tensors[ f"model.layers.{layer_num}.mlp.experts.{i}.gate_proj.weight" ], ], dim=0, ) for i in range(num_experts) ] ) ) model_shared_moe.load_state_dict(new_state_dict, strict=True, assign=True) model_shared_moe.save_pretrained(output_model_path) cfg_shared_moe.save_pretrained(output_model_path) shutil.copy( "modeling_afmoe_scm.py", output_model_path + "/" + "modeling_afmoe_scm.py", ) shutil.copy( "configuration_afmoe_scm.py", output_model_path + "/" + "configuration_afmoe_scm.py", ) for i in ["special_tokens_map.json", "tokenizer_config.json", "tokenizer.json", "chat_template.jinja"]: shutil.copy(input_model + "/" + i, output_model_path + "/" + i)