""" invokeai.backend.model_management.model_merge exports: merge_diffusion_models() -- combine multiple models by location and return a pipeline object merge_diffusion_models_and_commit() -- combine multiple models by ModelManager ID and write to models.yaml Copyright (c) 2023 Lincoln Stein and the InvokeAI Development Team """ import warnings from enum import Enum from pathlib import Path from typing import List, Optional, Union from diffusers import DiffusionPipeline from diffusers import logging as dlogging import invokeai.backend.util.logging as logger from ...backend.model_management import AddModelResult, BaseModelType, ModelManager, ModelType, ModelVariantType class MergeInterpolationMethod(str, Enum): WeightedSum = "weighted_sum" Sigmoid = "sigmoid" InvSigmoid = "inv_sigmoid" AddDifference = "add_difference" class ModelMerger(object): def __init__(self, manager: ModelManager): self.manager = manager def merge_diffusion_models( self, model_paths: List[Path], alpha: float = 0.5, interp: Optional[MergeInterpolationMethod] = None, force: bool = False, **kwargs, ) -> DiffusionPipeline: """ :param model_paths: up to three models, designated by their local paths or HuggingFace repo_ids :param alpha: The interpolation parameter. Ranges from 0 to 1. It affects the ratio in which the checkpoints are merged. A 0.8 alpha would mean that the first model checkpoints would affect the final result far less than an alpha of 0.2 :param interp: The interpolation method to use for the merging. Supports "sigmoid", "inv_sigmoid", "add_difference" and None. Passing None uses the default interpolation which is weighted sum interpolation. For merging three checkpoints, only "add_difference" is supported. :param force: Whether to ignore mismatch in model_config.json for the current models. Defaults to False. **kwargs - the default DiffusionPipeline.get_config_dict kwargs: cache_dir, resume_download, force_download, proxies, local_files_only, use_auth_token, revision, torch_dtype, device_map """ with warnings.catch_warnings(): warnings.simplefilter("ignore") verbosity = dlogging.get_verbosity() dlogging.set_verbosity_error() pipe = DiffusionPipeline.from_pretrained( model_paths[0], custom_pipeline="checkpoint_merger", ) merged_pipe = pipe.merge( pretrained_model_name_or_path_list=model_paths, alpha=alpha, interp=interp.value if interp else None, # diffusers API treats None as "weighted sum" force=force, **kwargs, ) dlogging.set_verbosity(verbosity) return merged_pipe def merge_diffusion_models_and_save( self, model_names: List[str], base_model: Union[BaseModelType, str], merged_model_name: str, alpha: float = 0.5, interp: Optional[MergeInterpolationMethod] = None, force: bool = False, merge_dest_directory: Optional[Path] = None, **kwargs, ) -> AddModelResult: """ :param models: up to three models, designated by their InvokeAI models.yaml model name :param base_model: base model (must be the same for all merged models!) :param merged_model_name: name for new model :param alpha: The interpolation parameter. Ranges from 0 to 1. It affects the ratio in which the checkpoints are merged. A 0.8 alpha would mean that the first model checkpoints would affect the final result far less than an alpha of 0.2 :param interp: The interpolation method to use for the merging. Supports "weighted_average", "sigmoid", "inv_sigmoid", "add_difference" and None. Passing None uses the default interpolation which is weighted sum interpolation. For merging three checkpoints, only "add_difference" is supported. Add_difference is A+(B-C). :param force: Whether to ignore mismatch in model_config.json for the current models. Defaults to False. :param merge_dest_directory: Save the merged model to the designated directory (with 'merged_model_name' appended) **kwargs - the default DiffusionPipeline.get_config_dict kwargs: cache_dir, resume_download, force_download, proxies, local_files_only, use_auth_token, revision, torch_dtype, device_map """ model_paths = list() config = self.manager.app_config base_model = BaseModelType(base_model) vae = None for mod in model_names: info = self.manager.list_model(mod, base_model=base_model, model_type=ModelType.Main) assert info, f"model {mod}, base_model {base_model}, is unknown" assert ( info["model_format"] == "diffusers" ), f"{mod} is not a diffusers model. It must be optimized before merging" assert info["variant"] == "normal", f"{mod} is a {info['variant']} model, which cannot currently be merged" assert ( len(model_names) <= 2 or interp == MergeInterpolationMethod.AddDifference ), "When merging three models, only the 'add_difference' merge method is supported" # pick up the first model's vae if mod == model_names[0]: vae = info.get("vae") model_paths.extend([(config.root_path / info["path"]).as_posix()]) merge_method = None if interp == "weighted_sum" else MergeInterpolationMethod(interp) logger.debug(f"interp = {interp}, merge_method={merge_method}") merged_pipe = self.merge_diffusion_models(model_paths, alpha, merge_method, force, **kwargs) dump_path = ( Path(merge_dest_directory) if merge_dest_directory else config.models_path / base_model.value / ModelType.Main.value ) dump_path.mkdir(parents=True, exist_ok=True) dump_path = (dump_path / merged_model_name).as_posix() merged_pipe.save_pretrained(dump_path, safe_serialization=True) attributes = dict( path=dump_path, description=f"Merge of models {', '.join(model_names)}", model_format="diffusers", variant=ModelVariantType.Normal.value, vae=vae, ) return self.manager.add_model( merged_model_name, base_model=base_model, model_type=ModelType.Main, model_attributes=attributes, clobber=True, )