""" This file specifies how MLC's EAGLE parameter maps from other formats, for example HuggingFace PyTorch, HuggingFace safetensors. """ import functools import numpy as np from mlc_llm.loader import ExternMapping from mlc_llm.loader.standard_loader import make_standard_hf_loader from mlc_llm.quantization import Quantization, make_awq_quant from .eagle_model import EagleConfig, EagleForCausalLM awq_quant = make_awq_quant(EagleForCausalLM) huggingface = make_standard_hf_loader( model_cls=EagleForCausalLM, layer_prefix="layers", add_unused=["rotary_emb.inv_freq"], ) def awq(model_config: EagleConfig, quantization: Quantization) -> ExternMapping: """Returns a parameter mapping that maps from the names of MLC LLM parameters to the names of AWQ parameters. Parameters ---------- model_config : EagleConfig The configuration of the Eagle model. quantization : Quantization The quantization configuration. Returns ------- param_map : ExternMapping The parameter mapping from MLC to AWQ. """ model, _ = awq_quant(model_config, quantization) _, _named_params, _ = model.export_tvm( spec=model.get_default_spec(), allow_extern=True, ) named_parameters = dict(_named_params) mapping = ExternMapping() for i in range(model_config.num_hidden_layers): # Add QKV in self attention attn = f"layers.{i}.self_attn" for quantize_suffix in ["qweight", "qzeros", "scales"]: mlc_name = f"{attn}.qkv_proj.{quantize_suffix}" assert mlc_name in named_parameters mlc_param = named_parameters[mlc_name] mapping.add_mapping( mlc_name, [ f"{attn}.q_proj.{quantize_suffix}", f"{attn}.k_proj.{quantize_suffix}", f"{attn}.v_proj.{quantize_suffix}", ], functools.partial( lambda q, k, v, dtype: np.concatenate( [q, k, v], axis=1, # AWQ GEMM would transpose the weight ).astype(dtype), dtype=mlc_param.dtype, ), ) # Concat gate and up in MLP mlp = f"layers.{i}.mlp" for quantize_suffix in ["qweight", "qzeros", "scales"]: mlc_name = f"{mlp}.gate_up_proj.{quantize_suffix}" assert mlc_name in named_parameters mlc_param = named_parameters[mlc_name] mapping.add_mapping( mlc_name, [ f"{mlp}.gate_proj.{quantize_suffix}", f"{mlp}.up_proj.{quantize_suffix}", ], functools.partial( lambda gate, up, dtype: np.concatenate( [gate, up], axis=1, # AWQ GEMM would transpose the weight ).astype(dtype), dtype=mlc_param.dtype, ), ) # inv_freq is not used in the model mapping.add_unused(f"{attn}.rotary_emb.inv_freq") for mlc_name, mlc_param in named_parameters.items(): if mlc_name not in mapping.param_map: mapping.add_mapping( mlc_name, [mlc_name], functools.partial(lambda x, dtype: x.astype(dtype), dtype=mlc_param.dtype), ) return mapping