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sglang
Commits
710f614e
"git@developer.sourcefind.cn:OpenDAS/ollama.git" did not exist on "3bc28736cd3eec7c7fcc4981ebfef5c36e4bdd7d"
Unverified
Commit
710f614e
authored
Jul 09, 2024
by
uylnap
Committed by
GitHub
Jul 08, 2024
Browse files
add minicpm support (#602)
parent
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python/sglang/srt/models/minicpm.py
python/sglang/srt/models/minicpm.py
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710f614e
"""Inference-only MiniCPM model compatible with HuggingFace weights."""
import
math
from
typing
import
Any
,
Dict
,
Iterable
,
Optional
,
Tuple
import
torch
from
torch
import
nn
from
vllm.config
import
CacheConfig
from
vllm.distributed
import
get_tensor_model_parallel_world_size
from
vllm.model_executor.layers.activation
import
SiluAndMul
from
vllm.model_executor.layers.layernorm
import
RMSNorm
from
vllm.model_executor.layers.linear
import
(
MergedColumnParallelLinear
,
QKVParallelLinear
,
RowParallelLinear
,
)
from
vllm.model_executor.layers.quantization.base_config
import
QuantizationConfig
from
vllm.model_executor.layers.rotary_embedding
import
get_rope
from
vllm.model_executor.layers.vocab_parallel_embedding
import
(
ParallelLMHead
,
VocabParallelEmbedding
,
)
from
vllm.model_executor.model_loader.weight_utils
import
default_weight_loader
from
sglang.srt.layers.logits_processor
import
LogitsProcessor
from
sglang.srt.layers.radix_attention
import
RadixAttention
from
sglang.srt.managers.controller.model_runner
import
InputMetadata
class
MiniCPMMLP
(
nn
.
Module
):
def
__init__
(
self
,
hidden_size
:
int
,
intermediate_size
:
int
,
hidden_act
:
str
,
quant_config
:
Optional
[
QuantizationConfig
]
=
None
,
)
->
None
:
super
().
__init__
()
self
.
gate_up_proj
=
MergedColumnParallelLinear
(
hidden_size
,
[
intermediate_size
]
*
2
,
bias
=
False
,
quant_config
=
quant_config
,
)
self
.
down_proj
=
RowParallelLinear
(
intermediate_size
,
hidden_size
,
bias
=
False
,
quant_config
=
quant_config
,
)
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
,
layer_id
:
int
=
0
,
rope_theta
:
float
=
10000
,
rope_scaling
:
Optional
[
Dict
[
str
,
Any
]]
=
None
,
max_position_embeddings
:
int
=
8192
,
quant_config
:
Optional
[
QuantizationConfig
]
=
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
,
quant_config
=
quant_config
,
)
self
.
o_proj
=
RowParallelLinear
(
self
.
total_num_heads
*
self
.
head_dim
,
hidden_size
,
bias
=
False
,
quant_config
=
quant_config
,
)
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
=
RadixAttention
(
self
.
num_heads
,
self
.
head_dim
,
self
.
scaling
,
num_kv_heads
=
self
.
num_kv_heads
,
layer_id
=
layer_id
,
)
def
forward
(
self
,
positions
:
torch
.
Tensor
,
hidden_states
:
torch
.
Tensor
,
input_metadata
:
InputMetadata
,
)
->
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
,
input_metadata
)
output
,
_
=
self
.
o_proj
(
attn_output
)
return
output
class
MiniCPMDecoderLayer
(
nn
.
Module
):
def
__init__
(
self
,
config
,
layer_id
:
int
=
0
,
quant_config
:
Optional
[
QuantizationConfig
]
=
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
,
layer_id
=
layer_id
,
rope_theta
=
rope_theta
,
rope_scaling
=
rope_scaling
,
max_position_embeddings
=
max_position_embeddings
,
quant_config
=
quant_config
,
)
self
.
mlp
=
MiniCPMMLP
(
hidden_size
=
self
.
hidden_size
,
intermediate_size
=
config
.
intermediate_size
,
hidden_act
=
config
.
hidden_act
,
quant_config
=
quant_config
,
)
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
,
input_metadata
:
InputMetadata
,
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
,
input_metadata
=
input_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
,
quant_config
:
Optional
[
QuantizationConfig
]
=
None
,
)
->
None
:
super
().
__init__
()
self
.
config
=
config
self
.
padding_idx
=
config
.
pad_token_id
self
.
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
,
i
,
quant_config
=
quant_config
)
for
i
in
range
(
config
.
num_hidden_layers
)
]
)
self
.
norm
=
RMSNorm
(
config
.
hidden_size
,
eps
=
config
.
rms_norm_eps
)
def
forward
(
self
,
input_ids
:
torch
.
Tensor
,
positions
:
torch
.
Tensor
,
input_metadata
:
InputMetadata
,
input_embeds
:
torch
.
Tensor
=
None
,
)
->
torch
.
Tensor
:
if
input_embeds
is
None
:
hidden_states
=
self
.
embed_tokens
(
input_ids
)
*
self
.
config
.
scale_emb
else
:
hidden_states
=
input_embeds
residual
=
None
for
i
in
range
(
len
(
self
.
layers
)):
layer
=
self
.
layers
[
i
]
hidden_states
,
residual
=
layer
(
positions
,
hidden_states
,
input_metadata
,
residual
,
)
hidden_states
=
self
.
norm
(
hidden_states
)
return
hidden_states
class
MiniCPMForCausalLM
(
nn
.
Module
):
def
__init__
(
self
,
config
,
quant_config
:
Optional
[
QuantizationConfig
]
=
None
,
cache_config
:
Optional
[
CacheConfig
]
=
None
,
)
->
None
:
super
().
__init__
()
self
.
config
=
config
self
.
num_experts
=
getattr
(
self
.
config
,
"num_experts"
,
0
)
self
.
quant_config
=
quant_config
self
.
model
=
MiniCPMModel
(
config
,
quant_config
=
quant_config
)
# self.lm_head = ParallelLMHead(config.vocab_size, config.hidden_size)
if
not
self
.
config
.
tie_word_embeddings
:
self
.
lm_head
=
ParallelLMHead
(
config
.
vocab_size
,
config
.
hidden_size
,
org_num_embeddings
=
config
.
vocab_size
,
)
self
.
scale_width
=
self
.
config
.
hidden_size
/
self
.
config
.
dim_model_base
self
.
logits_processor
=
LogitsProcessor
(
config
)
def
forward
(
self
,
input_ids
:
torch
.
Tensor
,
positions
:
torch
.
Tensor
,
input_metadata
:
InputMetadata
,
input_embeds
:
torch
.
Tensor
=
None
,
)
->
torch
.
Tensor
:
if
input_embeds
is
not
None
:
input_embeds
=
input_embeds
*
self
.
config
.
scale_emb
hidden_states
=
self
.
model
(
input_ids
,
positions
,
input_metadata
,
input_embeds
)
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
return
self
.
logits_processor
(
input_ids
,
hidden_states
,
lm_head_weight
,
input_metadata
)
def
load_weights
(
self
,
weights
:
Iterable
[
Tuple
[
str
,
torch
.
Tensor
]]):
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
weights
:
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
)
EntryClass
=
MiniCPMForCausalLM
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