chore: import upstream snapshot with attribution
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wehub-resource-sync
2026-07-13 13:23:58 +08:00
commit 770d92cb1f
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"""
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