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OpenDAS
vllm_cscc
Commits
b4543c8f
Unverified
Commit
b4543c8f
authored
Apr 08, 2024
by
ywfang
Committed by
GitHub
Apr 08, 2024
Browse files
[Model] add minicpm (#3893)
parent
0ce0539d
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README.md
README.md
+1
-0
docs/source/models/supported_models.rst
docs/source/models/supported_models.rst
+4
-0
vllm/model_executor/models/__init__.py
vllm/model_executor/models/__init__.py
+1
-0
vllm/model_executor/models/minicpm.py
vllm/model_executor/models/minicpm.py
+537
-0
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README.md
View file @
b4543c8f
...
...
@@ -70,6 +70,7 @@ vLLM seamlessly supports many Hugging Face models, including the following archi
-
InternLM2 (
`internlm/internlm2-7b`
,
`internlm/internlm2-chat-7b`
, etc.)
-
Jais (
`core42/jais-13b`
,
`core42/jais-13b-chat`
,
`core42/jais-30b-v3`
,
`core42/jais-30b-chat-v3`
, etc.)
-
LLaMA & LLaMA-2 (
`meta-llama/Llama-2-70b-hf`
,
`lmsys/vicuna-13b-v1.3`
,
`young-geng/koala`
,
`openlm-research/open_llama_13b`
, etc.)
-
MiniCPM (
`openbmb/MiniCPM-2B-sft-bf16`
,
`openbmb/MiniCPM-2B-dpo-bf16`
, etc.)
-
Mistral (
`mistralai/Mistral-7B-v0.1`
,
`mistralai/Mistral-7B-Instruct-v0.1`
, etc.)
-
Mixtral (
`mistralai/Mixtral-8x7B-v0.1`
,
`mistralai/Mixtral-8x7B-Instruct-v0.1`
, etc.)
-
MPT (
`mosaicml/mpt-7b`
,
`mosaicml/mpt-30b`
, etc.)
...
...
docs/source/models/supported_models.rst
View file @
b4543c8f
...
...
@@ -83,6 +83,10 @@ Alongside each architecture, we include some popular models that use it.
- LLaMA, LLaMA-2, Vicuna, Alpaca, Yi
- :code:`meta-llama/Llama-2-13b-hf`, :code:`meta-llama/Llama-2-70b-hf`, :code:`openlm-research/open_llama_13b`, :code:`lmsys/vicuna-13b-v1.3`, :code:`01-ai/Yi-6B`, :code:`01-ai/Yi-34B`, etc.
- ✅︎
* - :code:`MiniCPMForCausalLM`
- MiniCPM
- :code:`openbmb/MiniCPM-2B-sft-bf16`, :code:`openbmb/MiniCPM-2B-dpo-bf16`, etc.
-
* - :code:`MistralForCausalLM`
- Mistral, Mistral-Instruct
- :code:`mistralai/Mistral-7B-v0.1`, :code:`mistralai/Mistral-7B-Instruct-v0.1`, etc.
...
...
vllm/model_executor/models/__init__.py
View file @
b4543c8f
...
...
@@ -41,6 +41,7 @@ _MODELS = {
# transformers's mpt class has lower case
"MptForCausalLM"
:
(
"mpt"
,
"MPTForCausalLM"
),
"MPTForCausalLM"
:
(
"mpt"
,
"MPTForCausalLM"
),
"MiniCPMForCausalLM"
:
(
"minicpm"
,
"MiniCPMForCausalLM"
),
"OLMoForCausalLM"
:
(
"olmo"
,
"OLMoForCausalLM"
),
"OPTForCausalLM"
:
(
"opt"
,
"OPTForCausalLM"
),
"OrionForCausalLM"
:
(
"orion"
,
"OrionForCausalLM"
),
...
...
vllm/model_executor/models/minicpm.py
0 → 100644
View file @
b4543c8f
# coding=utf-8
# Adapted from
# https://github.com/huggingface/transformers/blob/v4.28.0/src/transformers/models/llama/modeling_llama.py
# Copyright 2023 The vLLM team.
# Copyright 2022 EleutherAI and the HuggingFace Inc. team. All rights reserved.
#
# This code is based on EleutherAI's GPT-NeoX library and the GPT-NeoX
# and OPT implementations in this library. It has been modified from its
# original forms to accommodate minor architectural differences compared
# to GPT-NeoX and OPT used by the Meta AI team that trained the model.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""Inference-only MiniCPM model compatible with HuggingFace weights."""
import
math
from
typing
import
Any
,
Dict
,
List
,
Optional
,
Tuple
import
torch
from
torch
import
nn
from
vllm.attention
import
Attention
,
AttentionMetadata
from
vllm.config
import
LoRAConfig
from
vllm.model_executor.layers.activation
import
SiluAndMul
from
vllm.model_executor.layers.fused_moe
import
fused_moe
from
vllm.model_executor.layers.layernorm
import
RMSNorm
from
vllm.model_executor.layers.linear
import
(
LinearMethodBase
,
MergedColumnParallelLinear
,
QKVParallelLinear
,
ReplicatedLinear
,
RowParallelLinear
)
from
vllm.model_executor.layers.logits_processor
import
LogitsProcessor
from
vllm.model_executor.layers.rotary_embedding
import
get_rope
from
vllm.model_executor.layers.sampler
import
Sampler
from
vllm.model_executor.layers.vocab_parallel_embedding
import
(
DEFAULT_VOCAB_PADDING_SIZE
,
ParallelLMHead
,
VocabParallelEmbedding
)
from
vllm.model_executor.parallel_utils.communication_op
import
(
tensor_model_parallel_all_reduce
)
from
vllm.model_executor.parallel_utils.parallel_state
import
(
get_tensor_model_parallel_rank
,
get_tensor_model_parallel_world_size
)
from
vllm.model_executor.sampling_metadata
import
SamplingMetadata
from
vllm.model_executor.utils
import
set_weight_attrs
from
vllm.model_executor.weight_utils
import
(
default_weight_loader
,
hf_model_weights_iterator
)
from
vllm.sequence
import
SamplerOutput
class
MiniCPMMoE
(
nn
.
Module
):
"""A tensor-parallel MoE implementation that shards each expert
across all ranks.
Each expert's weights are sharded across all ranks and a fused MoE
kernel is used for the forward pass, and finally we reduce the outputs
across ranks.
"""
def
__init__
(
self
,
num_experts
:
int
,
top_k
:
int
,
hidden_size
:
int
,
intermediate_size
:
int
,
params_dtype
:
Optional
[
torch
.
dtype
]
=
None
,
tp_size
:
Optional
[
int
]
=
None
,
):
super
().
__init__
()
self
.
tp_size
=
tp_size
or
get_tensor_model_parallel_world_size
()
self
.
num_total_experts
=
num_experts
self
.
top_k
=
top_k
self
.
hidden_size
=
hidden_size
self
.
intermediate_size
=
intermediate_size
//
self
.
tp_size
if
params_dtype
is
None
:
params_dtype
=
torch
.
get_default_dtype
()
self
.
params_dtype
=
params_dtype
self
.
gate
=
ReplicatedLinear
(
self
.
hidden_size
,
self
.
num_total_experts
,
bias
=
False
,
params_dtype
=
self
.
params_dtype
,
linear_method
=
None
)
self
.
ws
=
nn
.
Parameter
(
torch
.
empty
(
self
.
num_total_experts
,
2
*
self
.
intermediate_size
,
self
.
hidden_size
,
device
=
"cuda"
,
dtype
=
self
.
params_dtype
))
self
.
w2s
=
nn
.
Parameter
(
torch
.
empty
(
self
.
num_total_experts
,
self
.
hidden_size
,
self
.
intermediate_size
,
device
=
"cuda"
,
dtype
=
self
.
params_dtype
))
set_weight_attrs
(
self
.
ws
,
{
"weight_loader"
:
self
.
weight_loader
,
})
set_weight_attrs
(
self
.
w2s
,
{
"weight_loader"
:
self
.
weight_loader
,
})
def
weight_loader
(
self
,
param
:
nn
.
Parameter
,
loaded_weight
:
torch
.
Tensor
,
weight_name
:
str
,
expert_id
:
int
):
tp_rank
=
get_tensor_model_parallel_rank
()
param_data
=
param
.
data
shard_size
=
self
.
intermediate_size
shard
=
slice
(
tp_rank
*
shard_size
,
(
tp_rank
+
1
)
*
shard_size
)
if
weight_name
.
endswith
(
"w1.weight"
):
param_data
[
expert_id
,
0
:
shard_size
,
:]
=
loaded_weight
[
shard
,
:]
if
weight_name
.
endswith
(
"w3.weight"
):
param_data
[
expert_id
,
shard_size
:
2
*
shard_size
,
:]
=
loaded_weight
[
shard
,
:]
if
weight_name
.
endswith
(
"w2.weight"
):
param_data
[
expert_id
,
:,
:]
=
loaded_weight
[:,
shard
]
def
forward
(
self
,
hidden_states
:
torch
.
Tensor
)
->
torch
.
Tensor
:
num_tokens
,
hidden_size
=
hidden_states
.
shape
hidden_states
=
hidden_states
.
view
(
-
1
,
self
.
hidden_size
)
# router_logits: (num_tokens, n_experts)
router_logits
,
_
=
self
.
gate
(
hidden_states
)
final_hidden_states
=
fused_moe
(
hidden_states
,
self
.
ws
,
self
.
w2s
,
router_logits
,
self
.
top_k
,
renormalize
=
True
,
inplace
=
True
)
if
self
.
tp_size
>
1
:
final_hidden_states
=
tensor_model_parallel_all_reduce
(
final_hidden_states
)
return
final_hidden_states
.
view
(
num_tokens
,
hidden_size
)
class
MiniCPMMLP
(
nn
.
Module
):
def
__init__
(
self
,
hidden_size
:
int
,
intermediate_size
:
int
,
hidden_act
:
str
,
linear_method
:
Optional
[
LinearMethodBase
]
=
None
,
)
->
None
:
super
().
__init__
()
self
.
gate_up_proj
=
MergedColumnParallelLinear
(
hidden_size
,
[
intermediate_size
]
*
2
,
bias
=
False
,
linear_method
=
linear_method
)
self
.
down_proj
=
RowParallelLinear
(
intermediate_size
,
hidden_size
,
bias
=
False
,
linear_method
=
linear_method
)
if
hidden_act
!=
"silu"
:
raise
ValueError
(
f
"Unsupported activation:
{
hidden_act
}
. "
"Only silu is supported for now."
)
self
.
act_fn
=
SiluAndMul
()
def
forward
(
self
,
x
):
gate_up
,
_
=
self
.
gate_up_proj
(
x
)
x
=
self
.
act_fn
(
gate_up
)
x
,
_
=
self
.
down_proj
(
x
)
return
x
class
MiniCPMAttention
(
nn
.
Module
):
def
__init__
(
self
,
hidden_size
:
int
,
num_heads
:
int
,
num_kv_heads
:
int
,
rope_theta
:
float
=
10000
,
rope_scaling
:
Optional
[
Dict
[
str
,
Any
]]
=
None
,
max_position_embeddings
:
int
=
8192
,
linear_method
:
Optional
[
LinearMethodBase
]
=
None
,
)
->
None
:
super
().
__init__
()
self
.
hidden_size
=
hidden_size
tp_size
=
get_tensor_model_parallel_world_size
()
self
.
total_num_heads
=
num_heads
assert
self
.
total_num_heads
%
tp_size
==
0
self
.
num_heads
=
self
.
total_num_heads
//
tp_size
self
.
total_num_kv_heads
=
num_kv_heads
if
self
.
total_num_kv_heads
>=
tp_size
:
# Number of KV heads is greater than TP size, so we partition
# the KV heads across multiple tensor parallel GPUs.
assert
self
.
total_num_kv_heads
%
tp_size
==
0
else
:
# Number of KV heads is less than TP size, so we replicate
# the KV heads across multiple tensor parallel GPUs.
assert
tp_size
%
self
.
total_num_kv_heads
==
0
self
.
num_kv_heads
=
max
(
1
,
self
.
total_num_kv_heads
//
tp_size
)
self
.
head_dim
=
hidden_size
//
self
.
total_num_heads
self
.
q_size
=
self
.
num_heads
*
self
.
head_dim
self
.
kv_size
=
self
.
num_kv_heads
*
self
.
head_dim
self
.
scaling
=
self
.
head_dim
**-
0.5
self
.
rope_theta
=
rope_theta
self
.
max_position_embeddings
=
max_position_embeddings
self
.
qkv_proj
=
QKVParallelLinear
(
hidden_size
,
self
.
head_dim
,
self
.
total_num_heads
,
self
.
total_num_kv_heads
,
bias
=
False
,
linear_method
=
linear_method
,
)
self
.
o_proj
=
RowParallelLinear
(
self
.
total_num_heads
*
self
.
head_dim
,
hidden_size
,
bias
=
False
,
linear_method
=
linear_method
,
)
self
.
rotary_emb
=
get_rope
(
self
.
head_dim
,
rotary_dim
=
self
.
head_dim
,
max_position
=
max_position_embeddings
,
base
=
rope_theta
,
rope_scaling
=
rope_scaling
,
)
# set rope as fp32 instead of bf16
self
.
rotary_emb
.
cos_sin_cache
=
self
.
rotary_emb
.
_compute_cos_sin_cache
(
)
self
.
attn
=
Attention
(
self
.
num_heads
,
self
.
head_dim
,
self
.
scaling
,
num_kv_heads
=
self
.
num_kv_heads
)
def
forward
(
self
,
positions
:
torch
.
Tensor
,
hidden_states
:
torch
.
Tensor
,
kv_cache
:
torch
.
Tensor
,
attn_metadata
:
AttentionMetadata
,
)
->
torch
.
Tensor
:
qkv
,
_
=
self
.
qkv_proj
(
hidden_states
)
q
,
k
,
v
=
qkv
.
split
([
self
.
q_size
,
self
.
kv_size
,
self
.
kv_size
],
dim
=-
1
)
orig_dtype
=
q
.
dtype
q
,
k
=
q
.
float
(),
k
.
float
()
q
,
k
=
self
.
rotary_emb
(
positions
,
q
,
k
)
q
,
k
=
q
.
to
(
orig_dtype
),
k
.
to
(
orig_dtype
)
attn_output
=
self
.
attn
(
q
,
k
,
v
,
kv_cache
,
attn_metadata
)
output
,
_
=
self
.
o_proj
(
attn_output
)
return
output
class
MiniCPMDecoderLayer
(
nn
.
Module
):
def
__init__
(
self
,
config
,
linear_method
:
Optional
[
LinearMethodBase
]
=
None
,
)
->
None
:
super
().
__init__
()
self
.
config
=
config
self
.
hidden_size
=
config
.
hidden_size
rope_theta
=
getattr
(
config
,
"rope_theta"
,
10000
)
rope_scaling
=
getattr
(
config
,
"rope_scaling"
,
None
)
max_position_embeddings
=
getattr
(
config
,
"max_position_embeddings"
,
8192
)
self
.
self_attn
=
MiniCPMAttention
(
hidden_size
=
self
.
hidden_size
,
num_heads
=
config
.
num_attention_heads
,
num_kv_heads
=
config
.
num_key_value_heads
,
rope_theta
=
rope_theta
,
rope_scaling
=
rope_scaling
,
max_position_embeddings
=
max_position_embeddings
,
linear_method
=
linear_method
,
)
self
.
num_experts
=
getattr
(
self
.
config
,
"num_experts"
,
0
)
if
self
.
num_experts
==
0
:
self
.
mlp
=
MiniCPMMLP
(
hidden_size
=
self
.
hidden_size
,
intermediate_size
=
config
.
intermediate_size
,
hidden_act
=
config
.
hidden_act
,
linear_method
=
linear_method
,
)
else
:
self
.
mlp
=
MiniCPMMoE
(
num_experts
=
config
.
num_experts
,
top_k
=
config
.
num_experts_per_tok
,
hidden_size
=
config
.
hidden_size
,
intermediate_size
=
config
.
intermediate_size
)
self
.
input_layernorm
=
RMSNorm
(
config
.
hidden_size
,
eps
=
config
.
rms_norm_eps
)
self
.
post_attention_layernorm
=
RMSNorm
(
config
.
hidden_size
,
eps
=
config
.
rms_norm_eps
)
def
forward
(
self
,
positions
:
torch
.
Tensor
,
hidden_states
:
torch
.
Tensor
,
kv_cache
:
torch
.
Tensor
,
attn_metadata
:
AttentionMetadata
,
residual
:
Optional
[
torch
.
Tensor
],
)
->
Tuple
[
torch
.
Tensor
,
torch
.
Tensor
]:
# Self Attention
residual
=
hidden_states
hidden_states
=
self
.
input_layernorm
(
hidden_states
)
hidden_states
=
self
.
self_attn
(
positions
=
positions
,
hidden_states
=
hidden_states
,
kv_cache
=
kv_cache
,
attn_metadata
=
attn_metadata
,
)
hidden_states
=
residual
+
hidden_states
*
\
(
self
.
config
.
scale_depth
/
math
.
sqrt
(
self
.
config
.
num_hidden_layers
))
# Fully Connected
residual
=
hidden_states
hidden_states
=
self
.
post_attention_layernorm
(
hidden_states
)
hidden_states
=
self
.
mlp
(
hidden_states
)
hidden_states
=
residual
+
hidden_states
*
\
(
self
.
config
.
scale_depth
/
math
.
sqrt
(
self
.
config
.
num_hidden_layers
))
return
hidden_states
,
None
class
MiniCPMModel
(
nn
.
Module
):
def
__init__
(
self
,
config
,
linear_method
:
Optional
[
LinearMethodBase
]
=
None
,
lora_config
:
Optional
[
LoRAConfig
]
=
None
,
)
->
None
:
super
().
__init__
()
self
.
config
=
config
self
.
padding_idx
=
config
.
pad_token_id
lora_vocab
=
(
lora_config
.
lora_extra_vocab_size
*
(
lora_config
.
max_loras
or
1
))
if
lora_config
else
0
self
.
vocab_size
=
config
.
vocab_size
+
lora_vocab
self
.
org_vocab_size
=
config
.
vocab_size
self
.
embed_tokens
=
VocabParallelEmbedding
(
self
.
vocab_size
,
config
.
hidden_size
,
org_num_embeddings
=
config
.
vocab_size
,
)
self
.
layers
=
nn
.
ModuleList
([
MiniCPMDecoderLayer
(
config
,
linear_method
)
for
_
in
range
(
config
.
num_hidden_layers
)
])
self
.
norm
=
RMSNorm
(
config
.
hidden_size
,
eps
=
config
.
rms_norm_eps
)
def
get_input_embeddings
(
self
,
input_ids
:
torch
.
Tensor
)
->
torch
.
Tensor
:
embedding
=
self
.
embed_tokens
(
input_ids
)
return
embedding
*
self
.
config
.
scale_emb
def
forward
(
self
,
input_ids
:
torch
.
Tensor
,
positions
:
torch
.
Tensor
,
kv_caches
:
List
[
torch
.
Tensor
],
attn_metadata
:
AttentionMetadata
,
inputs_embeds
:
Optional
[
torch
.
Tensor
]
=
None
,
)
->
torch
.
Tensor
:
if
inputs_embeds
is
not
None
:
hidden_states
=
inputs_embeds
else
:
hidden_states
=
self
.
get_input_embeddings
(
input_ids
)
residual
=
None
for
i
in
range
(
len
(
self
.
layers
)):
layer
=
self
.
layers
[
i
]
hidden_states
,
residual
=
layer
(
positions
,
hidden_states
,
kv_caches
[
i
],
attn_metadata
,
residual
,
)
hidden_states
=
self
.
norm
(
hidden_states
)
return
hidden_states
class
MiniCPMForCausalLM
(
nn
.
Module
):
packed_modules_mapping
=
{
"qkv_proj"
:
[
"q_proj"
,
"k_proj"
,
"v_proj"
,
],
"gate_up_proj"
:
[
"gate_proj"
,
"up_proj"
,
],
}
# LoRA specific attributes
supported_lora_modules
=
[
"qkv_proj"
,
"o_proj"
,
"gate_up_proj"
,
"down_proj"
,
"embed_tokens"
,
"lm_head"
,
]
embedding_modules
=
{
"embed_tokens"
:
"input_embeddings"
,
"lm_head"
:
"output_embeddings"
,
}
embedding_padding_modules
=
[
"lm_head"
]
def
__init__
(
self
,
config
,
linear_method
:
Optional
[
LinearMethodBase
]
=
None
,
lora_config
:
Optional
[
LoRAConfig
]
=
None
,
)
->
None
:
super
().
__init__
()
self
.
config
=
config
self
.
num_experts
=
getattr
(
self
.
config
,
"num_experts"
,
0
)
self
.
linear_method
=
linear_method
self
.
model
=
MiniCPMModel
(
config
,
linear_method
,
lora_config
=
lora_config
)
unpadded_vocab_size
=
config
.
vocab_size
if
lora_config
:
unpadded_vocab_size
+=
lora_config
.
lora_extra_vocab_size
if
not
self
.
config
.
tie_word_embeddings
:
self
.
lm_head
=
ParallelLMHead
(
unpadded_vocab_size
,
config
.
hidden_size
,
org_num_embeddings
=
config
.
vocab_size
,
padding_size
=
DEFAULT_VOCAB_PADDING_SIZE
# We need bigger padding if using lora for kernel
# compatibility
if
not
lora_config
else
lora_config
.
lora_vocab_padding_size
,
)
self
.
scale_width
=
self
.
config
.
hidden_size
/
self
.
config
.
dim_model_base
self
.
logits_processor
=
LogitsProcessor
(
unpadded_vocab_size
,
config
.
vocab_size
)
self
.
sampler
=
Sampler
()
def
forward
(
self
,
input_ids
:
torch
.
Tensor
,
positions
:
torch
.
Tensor
,
kv_caches
:
List
[
torch
.
Tensor
],
attn_metadata
:
AttentionMetadata
,
)
->
torch
.
Tensor
:
hidden_states
=
self
.
model
(
input_ids
,
positions
,
kv_caches
,
attn_metadata
)
return
hidden_states
def
compute_logits
(
self
,
hidden_states
:
torch
.
Tensor
,
sampling_metadata
:
SamplingMetadata
)
->
torch
.
Tensor
:
hidden_states
=
hidden_states
/
self
.
scale_width
if
self
.
config
.
tie_word_embeddings
:
lm_head_weight
=
self
.
model
.
embed_tokens
.
weight
else
:
lm_head_weight
=
self
.
lm_head
.
weight
logits
=
self
.
logits_processor
(
lm_head_weight
,
hidden_states
,
sampling_metadata
)
return
logits
def
sample
(
self
,
logits
:
torch
.
Tensor
,
sampling_metadata
:
SamplingMetadata
,
)
->
Optional
[
SamplerOutput
]:
next_tokens
=
self
.
sampler
(
logits
,
sampling_metadata
)
return
next_tokens
def
load_weights
(
self
,
model_name_or_path
:
str
,
cache_dir
:
Optional
[
str
]
=
None
,
load_format
:
str
=
"auto"
,
revision
:
Optional
[
str
]
=
None
):
stacked_params_mapping
=
[
# (param_name, shard_name, shard_id)
(
"qkv_proj"
,
"q_proj"
,
"q"
),
(
"qkv_proj"
,
"k_proj"
,
"k"
),
(
"qkv_proj"
,
"v_proj"
,
"v"
),
(
"gate_up_proj"
,
"gate_proj"
,
0
),
(
"gate_up_proj"
,
"up_proj"
,
1
),
]
expert_params_mapping
=
[
# (param_name, weight_name, expert_id)
(
"ws"
if
weight_name
in
[
"w1"
,
"w3"
]
else
"w2s"
,
f
"experts.
{
expert_id
}
.
{
weight_name
}
.weight"
,
expert_id
)
for
expert_id
in
range
(
self
.
num_experts
)
for
weight_name
in
[
"w1"
,
"w2"
,
"w3"
]
]
params_dict
=
dict
(
self
.
named_parameters
())
for
name
,
loaded_weight
in
hf_model_weights_iterator
(
model_name_or_path
,
cache_dir
,
load_format
,
revision
):
if
"rotary_emb.inv_freq"
in
name
:
continue
if
(
"rotary_emb.cos_cached"
in
name
or
"rotary_emb.sin_cached"
in
name
):
# Models trained using ColossalAI may include these tensors in
# the checkpoint. Skip them.
continue
for
(
param_name
,
weight_name
,
shard_id
)
in
stacked_params_mapping
:
if
weight_name
not
in
name
:
continue
name
=
name
.
replace
(
weight_name
,
param_name
)
# Skip loading extra bias for GPTQ models.
if
name
.
endswith
(
".bias"
)
and
name
not
in
params_dict
:
continue
param
=
params_dict
[
name
]
weight_loader
=
param
.
weight_loader
weight_loader
(
param
,
loaded_weight
,
shard_id
)
break
else
:
for
param_name
,
weight_name
,
expert_id
in
expert_params_mapping
:
if
weight_name
not
in
name
:
continue
name
=
name
.
replace
(
weight_name
,
param_name
)
param
=
params_dict
[
name
]
weight_loader
=
param
.
weight_loader
weight_loader
(
param
,
loaded_weight
,
weight_name
,
expert_id
=
expert_id
)
break
else
:
# Skip loading extra bias for GPTQ models.
if
name
.
endswith
(
".bias"
)
and
name
not
in
params_dict
:
continue
param
=
params_dict
[
name
]
weight_loader
=
getattr
(
param
,
"weight_loader"
,
default_weight_loader
)
weight_loader
(
param
,
loaded_weight
)
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