ColossalAI/colossalai/shardformer/policies/llama.py

146 lines
5.5 KiB
Python

from typing import Dict, Union
import torch.nn as nn
from colossalai.shardformer.layer import FusedRMSNorm, Linear1D_Col, Linear1D_Row, VocabParallelEmbedding1D
from .basepolicy import ModulePolicyDescription, Policy, SubModuleReplacementDescription
__all__ = ['LlamaPolicy', 'LlamaForCausalLMPolicy', 'LlamaForSequenceClassificationPolicy']
class LlamaPolicy(Policy):
def config_sanity_check(self):
pass
def preprocess(self):
# Resize embedding
vocab_size = self.model.config.vocab_size
world_size = self.shard_config.tensor_parallel_size
if vocab_size % world_size != 0:
new_vocab_size = vocab_size + world_size - vocab_size % world_size
self.model.resize_token_embeddings(new_vocab_size)
return self.model
def module_policy(self) -> Dict[Union[str, nn.Module], ModulePolicyDescription]:
from transformers.models.llama.modeling_llama import LlamaDecoderLayer, LlamaModel
policy = {}
if self.shard_config.enable_tensor_parallelism:
policy[LlamaDecoderLayer] = ModulePolicyDescription(
attribute_replacement={
"self_attn.hidden_size":
self.model.config.hidden_size // self.shard_config.tensor_parallel_size,
"self_attn.num_heads":
self.model.config.num_attention_heads // self.shard_config.tensor_parallel_size,
},
sub_module_replacement=[
SubModuleReplacementDescription(
suffix="self_attn.q_proj",
target_module=Linear1D_Col,
),
SubModuleReplacementDescription(
suffix="self_attn.k_proj",
target_module=Linear1D_Col,
),
SubModuleReplacementDescription(
suffix="self_attn.v_proj",
target_module=Linear1D_Col,
),
SubModuleReplacementDescription(
suffix="self_attn.o_proj",
target_module=Linear1D_Row,
),
SubModuleReplacementDescription(
suffix="mlp.gate_proj",
target_module=Linear1D_Col,
),
SubModuleReplacementDescription(
suffix="mlp.up_proj",
target_module=Linear1D_Col,
),
SubModuleReplacementDescription(
suffix="mlp.down_proj",
target_module=Linear1D_Row,
)
],
)
self.append_or_create_submodule_replacement(description=SubModuleReplacementDescription(
suffix="embed_tokens",
target_module=VocabParallelEmbedding1D,
),
policy=policy,
target_key=LlamaModel)
# optimization configuration
if self.shard_config.enable_fused_normalization:
self.append_or_create_submodule_replacement(description=[
SubModuleReplacementDescription(
suffix="input_layernorm",
target_module=FusedRMSNorm,
),
SubModuleReplacementDescription(
suffix="post_attention_layernorm",
target_module=FusedRMSNorm,
)
],
policy=policy,
target_key=LlamaDecoderLayer)
self.append_or_create_submodule_replacement(description=SubModuleReplacementDescription(
suffix="norm",
target_module=FusedRMSNorm,
),
policy=policy,
target_key=LlamaModel)
return policy
def postprocess(self):
return self.model
class LlamaForCausalLMPolicy(LlamaPolicy):
def module_policy(self):
from transformers import LlamaForCausalLM
policy = super().module_policy()
if self.shard_config.enable_tensor_parallelism:
# add a new item for casual lm
new_item = {
LlamaForCausalLM:
ModulePolicyDescription(sub_module_replacement=[
SubModuleReplacementDescription(
suffix="lm_head", target_module=Linear1D_Col, kwargs=dict(gather_output=True))
])
}
policy.update(new_item)
return policy
class LlamaForSequenceClassificationPolicy(LlamaPolicy):
def module_policy(self):
from transformers import LlamaForSequenceClassification
policy = super().module_policy()
if self.shard_config.enable_tensor_parallelism:
# add a new item for sequence classification
new_item = {
LlamaForSequenceClassification:
ModulePolicyDescription(sub_module_replacement=[
SubModuleReplacementDescription(
suffix="score", target_module=Linear1D_Col, kwargs=dict(gather_output=True))
])
}
policy.update(new_item)
return policy