InvokeAI/invokeai/app/invocations/model.py

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from typing import Literal, Optional, Union, List
from pydantic import BaseModel, Field
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import copy
from .baseinvocation import BaseInvocation, BaseInvocationOutput, InvocationContext, InvocationConfig
from ...backend.util.devices import choose_torch_device, torch_dtype
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from ...backend.model_management import BaseModelType, ModelType, SubModelType
class ModelInfo(BaseModel):
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model_name: str = Field(description="Info to load submodel")
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base_model: BaseModelType = Field(description="Base model")
model_type: ModelType = Field(description="Info to load submodel")
submodel: Optional[SubModelType] = Field(description="Info to load submodel")
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class LoraInfo(ModelInfo):
weight: float = Field(description="Lora's weight which to use when apply to model")
class UNetField(BaseModel):
unet: ModelInfo = Field(description="Info to load unet submodel")
scheduler: ModelInfo = Field(description="Info to load scheduler submodel")
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loras: List[LoraInfo] = Field(description="Loras to apply on model loading")
class ClipField(BaseModel):
tokenizer: ModelInfo = Field(description="Info to load tokenizer submodel")
text_encoder: ModelInfo = Field(description="Info to load text_encoder submodel")
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loras: List[LoraInfo] = Field(description="Loras to apply on model loading")
class VaeField(BaseModel):
# TODO: better naming?
vae: ModelInfo = Field(description="Info to load vae submodel")
class ModelLoaderOutput(BaseInvocationOutput):
"""Model loader output"""
#fmt: off
type: Literal["model_loader_output"] = "model_loader_output"
unet: UNetField = Field(default=None, description="UNet submodel")
clip: ClipField = Field(default=None, description="Tokenizer and text_encoder submodels")
vae: VaeField = Field(default=None, description="Vae submodel")
#fmt: on
class PipelineModelField(BaseModel):
"""Pipeline model field"""
model_name: str = Field(description="Name of the model")
base_model: BaseModelType = Field(description="Base model")
class PipelineModelLoaderInvocation(BaseInvocation):
"""Loads a pipeline model, outputting its submodels."""
type: Literal["pipeline_model_loader"] = "pipeline_model_loader"
model: PipelineModelField = Field(description="The model to load")
# TODO: precision?
# Schema customisation
class Config(InvocationConfig):
schema_extra = {
"ui": {
"tags": ["model", "loader"],
"type_hints": {
"model": "model"
}
},
}
def invoke(self, context: InvocationContext) -> ModelLoaderOutput:
base_model = self.model.base_model
model_name = self.model.model_name
model_type = ModelType.Main
# TODO: not found exceptions
if not context.services.model_manager.model_exists(
model_name=model_name,
base_model=base_model,
model_type=model_type,
):
raise Exception(f"Unknown {base_model} {model_type} model: {model_name}")
"""
if not context.services.model_manager.model_exists(
model_name=self.model_name,
model_type=SDModelType.Diffusers,
submodel=SDModelType.Tokenizer,
):
raise Exception(
f"Failed to find tokenizer submodel in {self.model_name}! Check if model corrupted"
)
if not context.services.model_manager.model_exists(
model_name=self.model_name,
model_type=SDModelType.Diffusers,
submodel=SDModelType.TextEncoder,
):
raise Exception(
f"Failed to find text_encoder submodel in {self.model_name}! Check if model corrupted"
)
if not context.services.model_manager.model_exists(
model_name=self.model_name,
model_type=SDModelType.Diffusers,
submodel=SDModelType.UNet,
):
raise Exception(
f"Failed to find unet submodel from {self.model_name}! Check if model corrupted"
)
"""
return ModelLoaderOutput(
unet=UNetField(
unet=ModelInfo(
model_name=model_name,
base_model=base_model,
model_type=model_type,
submodel=SubModelType.UNet,
),
scheduler=ModelInfo(
model_name=model_name,
base_model=base_model,
model_type=model_type,
submodel=SubModelType.Scheduler,
),
loras=[],
),
clip=ClipField(
tokenizer=ModelInfo(
model_name=model_name,
base_model=base_model,
model_type=model_type,
submodel=SubModelType.Tokenizer,
),
text_encoder=ModelInfo(
model_name=model_name,
base_model=base_model,
model_type=model_type,
submodel=SubModelType.TextEncoder,
),
loras=[],
),
vae=VaeField(
vae=ModelInfo(
model_name=model_name,
base_model=base_model,
model_type=model_type,
submodel=SubModelType.Vae,
),
)
)
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class LoraLoaderOutput(BaseInvocationOutput):
"""Model loader output"""
#fmt: off
type: Literal["lora_loader_output"] = "lora_loader_output"
unet: Optional[UNetField] = Field(default=None, description="UNet submodel")
clip: Optional[ClipField] = Field(default=None, description="Tokenizer and text_encoder submodels")
#fmt: on
class LoraLoaderInvocation(BaseInvocation):
"""Apply selected lora to unet and text_encoder."""
type: Literal["lora_loader"] = "lora_loader"
lora_name: str = Field(description="Lora model name")
weight: float = Field(default=0.75, description="With what weight to apply lora")
unet: Optional[UNetField] = Field(description="UNet model for applying lora")
clip: Optional[ClipField] = Field(description="Clip model for applying lora")
def invoke(self, context: InvocationContext) -> LoraLoaderOutput:
if not context.services.model_manager.model_exists(
model_name=self.lora_name,
model_type=SDModelType.Lora,
):
raise Exception(f"Unkown lora name: {self.lora_name}!")
if self.unet is not None and any(lora.model_name == self.lora_name for lora in self.unet.loras):
raise Exception(f"Lora \"{self.lora_name}\" already applied to unet")
if self.clip is not None and any(lora.model_name == self.lora_name for lora in self.clip.loras):
raise Exception(f"Lora \"{self.lora_name}\" already applied to clip")
output = LoraLoaderOutput()
if self.unet is not None:
output.unet = copy.deepcopy(self.unet)
output.unet.loras.append(
LoraInfo(
model_name=self.lora_name,
model_type=SDModelType.Lora,
submodel=None,
weight=self.weight,
)
)
if self.clip is not None:
output.clip = copy.deepcopy(self.clip)
output.clip.loras.append(
LoraInfo(
model_name=self.lora_name,
model_type=SDModelType.Lora,
submodel=None,
weight=self.weight,
)
)
return output