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chore: import upstream snapshot with attribution
2026-07-13 13:23:58 +08:00

100 lines
3.0 KiB
Python

"""
This file specifies how MLC's Starcoder2 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.quantization import Quantization
from .starcoder2_model import Starcoder2Config, Starcoder2ForCausalLM
def huggingface(model_config: Starcoder2Config, quantization: Quantization) -> ExternMapping:
"""Returns a parameter mapping that maps from the names of MLC LLM parameters to
the names of HuggingFace PyTorch parameters.
Parameters
----------
model_config : InternLMConfig
The configuration of the InternLM model.
quantization : Quantization
The quantization configuration.
Returns
-------
param_map : ExternMapping
The parameter mapping from MLC to HuggingFace PyTorch.
"""
model = Starcoder2ForCausalLM(model_config)
if quantization is not None:
model.to(quantization.model_dtype)
_, _named_params, _ = model.export_tvm(
spec=model.get_default_spec(),
allow_extern=True,
)
named_parameters = dict(_named_params)
mapping = ExternMapping()
mlc_name = "lm_head.weight"
mlc_param = named_parameters[mlc_name]
mapping.add_mapping(
mlc_name,
["model.embed_tokens.weight"],
functools.partial(
lambda x, dtype: x.astype(dtype),
dtype=mlc_param.dtype,
),
)
for i in range(model_config.num_hidden_layers):
# Add QKV in self attention
attn = f"model.layers.{i}.self_attn"
mlc_name = f"{attn}.wqkv_pack.weight"
mlc_param = named_parameters[mlc_name]
mapping.add_mapping(
mlc_name,
[
f"{attn}.q_proj.weight",
f"{attn}.k_proj.weight",
f"{attn}.v_proj.weight",
],
functools.partial(
lambda q, k, v, dtype: np.concatenate([q, k, v], axis=0).astype(dtype),
dtype=mlc_param.dtype,
),
)
mlc_name = f"{attn}.wqkv_pack.bias"
if mlc_name in named_parameters:
mlc_param = named_parameters[mlc_name]
mapping.add_mapping(
mlc_name,
[
f"{attn}.q_proj.bias",
f"{attn}.k_proj.bias",
f"{attn}.v_proj.bias",
],
functools.partial(
lambda q, k, v, dtype: np.concatenate([q, k, v], axis=0).astype(dtype),
dtype=mlc_param.dtype,
),
)
# Add gates in MLP
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