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# Copyright (c) 2024, Lincoln D. Stein and the InvokeAI Development Team
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"""Default implementation of model loading in InvokeAI."""
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from logging import Logger
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from pathlib import Path
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from typing import Optional, Tuple
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from invokeai.app.services.config import InvokeAIAppConfig
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from invokeai.backend.model_manager import (
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AnyModel,
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AnyModelConfig,
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InvalidModelConfigException,
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ModelRepoVariant,
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SubModelType,
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)
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from invokeai.backend.model_manager.config import DiffusersConfigBase, ModelType
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from invokeai.backend.model_manager.load.convert_cache import ModelConvertCacheBase
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from invokeai.backend.model_manager.load.load_base import LoadedModel, ModelLoaderBase
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from invokeai.backend.model_manager.load.model_cache.model_cache_base import ModelCacheBase, ModelLockerBase
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from invokeai.backend.model_manager.load.model_util import calc_model_size_by_data, calc_model_size_by_fs
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from invokeai.backend.model_manager.load.optimizations import skip_torch_weight_init
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from invokeai.backend.util.devices import choose_torch_device, torch_dtype
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# TO DO: The loader is not thread safe!
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class ModelLoader(ModelLoaderBase):
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"""Default implementation of ModelLoaderBase."""
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def __init__(
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self,
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app_config: InvokeAIAppConfig,
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logger: Logger,
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ram_cache: ModelCacheBase[AnyModel],
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convert_cache: ModelConvertCacheBase,
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):
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"""Initialize the loader."""
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self._app_config = app_config
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self._logger = logger
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self._ram_cache = ram_cache
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self._convert_cache = convert_cache
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self._torch_dtype = torch_dtype(choose_torch_device(), app_config)
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def load_model(self, model_config: AnyModelConfig, submodel_type: Optional[SubModelType] = None) -> LoadedModel:
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"""
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Return a model given its configuration.
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Given a model's configuration as returned by the ModelRecordConfigStore service,
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return a LoadedModel object that can be used for inference.
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:param model config: Configuration record for this model
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:param submodel_type: an ModelType enum indicating the portion of
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the model to retrieve (e.g. ModelType.Vae)
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"""
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if model_config.type is ModelType.Main and not submodel_type:
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raise InvalidModelConfigException("submodel_type is required when loading a main model")
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model_path, model_config, submodel_type = self._get_model_path(model_config, submodel_type)
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if not model_path.exists():
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raise InvalidModelConfigException(f"Files for model '{model_config.name}' not found at {model_path}")
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model_path = self._convert_if_needed(model_config, model_path, submodel_type)
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locker = self._load_if_needed(model_config, model_path, submodel_type)
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return LoadedModel(config=model_config, _locker=locker)
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def _get_model_path(
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self, config: AnyModelConfig, submodel_type: Optional[SubModelType] = None
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) -> Tuple[Path, AnyModelConfig, Optional[SubModelType]]:
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model_base = self._app_config.models_path
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result = (model_base / config.path).resolve(), config, submodel_type
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return result
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def _convert_if_needed(
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self, config: AnyModelConfig, model_path: Path, submodel_type: Optional[SubModelType] = None
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) -> Path:
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cache_path: Path = self._convert_cache.cache_path(config.key)
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if not self._needs_conversion(config, model_path, cache_path):
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return cache_path if cache_path.exists() else model_path
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self._convert_cache.make_room(self.get_size_fs(config, model_path, submodel_type))
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return self._convert_model(config, model_path, cache_path)
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def _needs_conversion(self, config: AnyModelConfig, model_path: Path, dest_path: Path) -> bool:
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return False
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def _load_if_needed(
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self, config: AnyModelConfig, model_path: Path, submodel_type: Optional[SubModelType] = None
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) -> ModelLockerBase:
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# TO DO: This is not thread safe!
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try:
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return self._ram_cache.get(config.key, submodel_type)
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except IndexError:
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pass
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model_variant = getattr(config, "repo_variant", None)
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self._ram_cache.make_room(self.get_size_fs(config, model_path, submodel_type))
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# This is where the model is actually loaded!
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with skip_torch_weight_init():
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loaded_model = self._load_model(model_path, model_variant=model_variant, submodel_type=submodel_type)
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self._ram_cache.put(
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config.key,
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submodel_type=submodel_type,
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model=loaded_model,
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size=calc_model_size_by_data(loaded_model),
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)
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return self._ram_cache.get(
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key=config.key,
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submodel_type=submodel_type,
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stats_name=":".join([config.base, config.type, config.name, (submodel_type or "")]),
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)
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def get_size_fs(
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self, config: AnyModelConfig, model_path: Path, submodel_type: Optional[SubModelType] = None
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) -> int:
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"""Get the size of the model on disk."""
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return calc_model_size_by_fs(
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model_path=model_path,
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subfolder=submodel_type.value if submodel_type else None,
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variant=config.repo_variant if isinstance(config, DiffusersConfigBase) else None,
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)
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# This needs to be implemented in subclasses that handle checkpoints
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def _convert_model(self, config: AnyModelConfig, model_path: Path, output_path: Path) -> Path:
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raise NotImplementedError
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# This needs to be implemented in the subclass
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def _load_model(
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self,
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model_path: Path,
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model_variant: Optional[ModelRepoVariant] = None,
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submodel_type: Optional[SubModelType] = None,
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) -> AnyModel:
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raise NotImplementedError
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