Vendor minimal diffsynth subset for FlashVSR inference (full/tiny pipelines, v1 and v1.1 checkpoints auto-downloaded from HuggingFace). Includes segment-based processing with temporal overlap and crossfade blending for bounded RAM on long videos. Nodes: Load FlashVSR Model, FlashVSR Upscale, FlashVSR Segment Upscale. Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
403 lines
19 KiB
Python
403 lines
19 KiB
Python
import os, torch, json, importlib
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from typing import List
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from ..configs.model_config import model_loader_configs, huggingface_model_loader_configs, patch_model_loader_configs
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from .utils import load_state_dict, init_weights_on_device, hash_state_dict_keys, split_state_dict_with_prefix
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def load_model_from_single_file(state_dict, model_names, model_classes, model_resource, torch_dtype, device):
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loaded_model_names, loaded_models = [], []
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for model_name, model_class in zip(model_names, model_classes):
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#print(f" model_name: {model_name} model_class: {model_class.__name__}")
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state_dict_converter = model_class.state_dict_converter()
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if model_resource == "civitai":
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state_dict_results = state_dict_converter.from_civitai(state_dict)
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elif model_resource == "diffusers":
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state_dict_results = state_dict_converter.from_diffusers(state_dict)
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if isinstance(state_dict_results, tuple):
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model_state_dict, extra_kwargs = state_dict_results
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#print(f" This model is initialized with extra kwargs: {extra_kwargs}")
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else:
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model_state_dict, extra_kwargs = state_dict_results, {}
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torch_dtype = torch.float32 if extra_kwargs.get("upcast_to_float32", False) else torch_dtype
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with init_weights_on_device():
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model = model_class(**extra_kwargs)
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if hasattr(model, "eval"):
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model = model.eval()
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model.load_state_dict(model_state_dict, assign=True)
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model = model.to(dtype=torch_dtype, device=device)
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loaded_model_names.append(model_name)
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loaded_models.append(model)
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return loaded_model_names, loaded_models
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def load_model_from_huggingface_folder(file_path, model_names, model_classes, torch_dtype, device):
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loaded_model_names, loaded_models = [], []
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for model_name, model_class in zip(model_names, model_classes):
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if torch_dtype in [torch.float32, torch.float16, torch.bfloat16]:
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model = model_class.from_pretrained(file_path, torch_dtype=torch_dtype).eval()
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else:
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model = model_class.from_pretrained(file_path).eval().to(dtype=torch_dtype)
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if torch_dtype == torch.float16 and hasattr(model, "half"):
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model = model.half()
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try:
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model = model.to(device=device)
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except:
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pass
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loaded_model_names.append(model_name)
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loaded_models.append(model)
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return loaded_model_names, loaded_models
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def load_single_patch_model_from_single_file(state_dict, model_name, model_class, base_model, extra_kwargs, torch_dtype, device):
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#print(f" model_name: {model_name} model_class: {model_class.__name__} extra_kwargs: {extra_kwargs}")
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base_state_dict = base_model.state_dict()
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base_model.to("cpu")
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del base_model
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model = model_class(**extra_kwargs)
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model.load_state_dict(base_state_dict, strict=False)
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model.load_state_dict(state_dict, strict=False)
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model.to(dtype=torch_dtype, device=device)
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return model
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def load_patch_model_from_single_file(state_dict, model_names, model_classes, extra_kwargs, model_manager, torch_dtype, device):
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loaded_model_names, loaded_models = [], []
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for model_name, model_class in zip(model_names, model_classes):
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while True:
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for model_id in range(len(model_manager.model)):
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base_model_name = model_manager.model_name[model_id]
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if base_model_name == model_name:
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base_model_path = model_manager.model_path[model_id]
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base_model = model_manager.model[model_id]
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print(f" Adding patch model to {base_model_name} ({base_model_path})")
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patched_model = load_single_patch_model_from_single_file(
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state_dict, model_name, model_class, base_model, extra_kwargs, torch_dtype, device)
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loaded_model_names.append(base_model_name)
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loaded_models.append(patched_model)
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model_manager.model.pop(model_id)
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model_manager.model_path.pop(model_id)
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model_manager.model_name.pop(model_id)
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break
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else:
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break
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return loaded_model_names, loaded_models
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class ModelDetectorTemplate:
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def __init__(self):
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pass
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def match(self, file_path="", state_dict={}):
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return False
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def load(self, file_path="", state_dict={}, device="cuda", torch_dtype=torch.float16, **kwargs):
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return [], []
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class ModelDetectorFromSingleFile:
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def __init__(self, model_loader_configs=[]):
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self.keys_hash_with_shape_dict = {}
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self.keys_hash_dict = {}
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for metadata in model_loader_configs:
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self.add_model_metadata(*metadata)
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def add_model_metadata(self, keys_hash, keys_hash_with_shape, model_names, model_classes, model_resource):
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self.keys_hash_with_shape_dict[keys_hash_with_shape] = (model_names, model_classes, model_resource)
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if keys_hash is not None:
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self.keys_hash_dict[keys_hash] = (model_names, model_classes, model_resource)
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def match(self, file_path="", state_dict={}):
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if isinstance(file_path, str) and os.path.isdir(file_path):
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return False
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if len(state_dict) == 0:
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state_dict = load_state_dict(file_path)
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keys_hash_with_shape = hash_state_dict_keys(state_dict, with_shape=True)
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if keys_hash_with_shape in self.keys_hash_with_shape_dict:
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return True
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keys_hash = hash_state_dict_keys(state_dict, with_shape=False)
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if keys_hash in self.keys_hash_dict:
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return True
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return False
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def load(self, file_path="", state_dict={}, device="cuda", torch_dtype=torch.float16, **kwargs):
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if len(state_dict) == 0:
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state_dict = load_state_dict(file_path)
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# Load models with strict matching
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keys_hash_with_shape = hash_state_dict_keys(state_dict, with_shape=True)
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if keys_hash_with_shape in self.keys_hash_with_shape_dict:
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model_names, model_classes, model_resource = self.keys_hash_with_shape_dict[keys_hash_with_shape]
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loaded_model_names, loaded_models = load_model_from_single_file(state_dict, model_names, model_classes, model_resource, torch_dtype, device)
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return loaded_model_names, loaded_models
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# Load models without strict matching
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# (the shape of parameters may be inconsistent, and the state_dict_converter will modify the model architecture)
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keys_hash = hash_state_dict_keys(state_dict, with_shape=False)
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if keys_hash in self.keys_hash_dict:
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model_names, model_classes, model_resource = self.keys_hash_dict[keys_hash]
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loaded_model_names, loaded_models = load_model_from_single_file(state_dict, model_names, model_classes, model_resource, torch_dtype, device)
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return loaded_model_names, loaded_models
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return loaded_model_names, loaded_models
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class ModelDetectorFromSplitedSingleFile(ModelDetectorFromSingleFile):
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def __init__(self, model_loader_configs=[]):
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super().__init__(model_loader_configs)
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def match(self, file_path="", state_dict={}):
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if isinstance(file_path, str) and os.path.isdir(file_path):
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return False
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if len(state_dict) == 0:
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state_dict = load_state_dict(file_path)
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splited_state_dict = split_state_dict_with_prefix(state_dict)
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for sub_state_dict in splited_state_dict:
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if super().match(file_path, sub_state_dict):
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return True
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return False
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def load(self, file_path="", state_dict={}, device="cuda", torch_dtype=torch.float16, **kwargs):
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# Split the state_dict and load from each component
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splited_state_dict = split_state_dict_with_prefix(state_dict)
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valid_state_dict = {}
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for sub_state_dict in splited_state_dict:
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if super().match(file_path, sub_state_dict):
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valid_state_dict.update(sub_state_dict)
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if super().match(file_path, valid_state_dict):
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loaded_model_names, loaded_models = super().load(file_path, valid_state_dict, device, torch_dtype)
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else:
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loaded_model_names, loaded_models = [], []
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for sub_state_dict in splited_state_dict:
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if super().match(file_path, sub_state_dict):
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loaded_model_names_, loaded_models_ = super().load(file_path, valid_state_dict, device, torch_dtype)
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loaded_model_names += loaded_model_names_
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loaded_models += loaded_models_
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return loaded_model_names, loaded_models
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class ModelDetectorFromHuggingfaceFolder:
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def __init__(self, model_loader_configs=[]):
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self.architecture_dict = {}
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for metadata in model_loader_configs:
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self.add_model_metadata(*metadata)
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def add_model_metadata(self, architecture, huggingface_lib, model_name, redirected_architecture):
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self.architecture_dict[architecture] = (huggingface_lib, model_name, redirected_architecture)
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def match(self, file_path="", state_dict={}):
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if not isinstance(file_path, str) or os.path.isfile(file_path):
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return False
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file_list = os.listdir(file_path)
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if "config.json" not in file_list:
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return False
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with open(os.path.join(file_path, "config.json"), "r") as f:
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config = json.load(f)
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if "architectures" not in config and "_class_name" not in config:
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return False
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return True
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def load(self, file_path="", state_dict={}, device="cuda", torch_dtype=torch.float16, **kwargs):
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with open(os.path.join(file_path, "config.json"), "r") as f:
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config = json.load(f)
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loaded_model_names, loaded_models = [], []
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architectures = config["architectures"] if "architectures" in config else [config["_class_name"]]
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for architecture in architectures:
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huggingface_lib, model_name, redirected_architecture = self.architecture_dict[architecture]
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if redirected_architecture is not None:
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architecture = redirected_architecture
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model_class = importlib.import_module(huggingface_lib).__getattribute__(architecture)
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loaded_model_names_, loaded_models_ = load_model_from_huggingface_folder(file_path, [model_name], [model_class], torch_dtype, device)
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loaded_model_names += loaded_model_names_
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loaded_models += loaded_models_
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return loaded_model_names, loaded_models
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class ModelDetectorFromPatchedSingleFile:
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def __init__(self, model_loader_configs=[]):
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self.keys_hash_with_shape_dict = {}
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for metadata in model_loader_configs:
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self.add_model_metadata(*metadata)
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def add_model_metadata(self, keys_hash_with_shape, model_name, model_class, extra_kwargs):
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self.keys_hash_with_shape_dict[keys_hash_with_shape] = (model_name, model_class, extra_kwargs)
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def match(self, file_path="", state_dict={}):
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if not isinstance(file_path, str) or os.path.isdir(file_path):
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return False
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if len(state_dict) == 0:
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state_dict = load_state_dict(file_path)
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keys_hash_with_shape = hash_state_dict_keys(state_dict, with_shape=True)
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if keys_hash_with_shape in self.keys_hash_with_shape_dict:
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return True
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return False
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def load(self, file_path="", state_dict={}, device="cuda", torch_dtype=torch.float16, model_manager=None, **kwargs):
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if len(state_dict) == 0:
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state_dict = load_state_dict(file_path)
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# Load models with strict matching
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loaded_model_names, loaded_models = [], []
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keys_hash_with_shape = hash_state_dict_keys(state_dict, with_shape=True)
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if keys_hash_with_shape in self.keys_hash_with_shape_dict:
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model_names, model_classes, extra_kwargs = self.keys_hash_with_shape_dict[keys_hash_with_shape]
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loaded_model_names_, loaded_models_ = load_patch_model_from_single_file(
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state_dict, model_names, model_classes, extra_kwargs, model_manager, torch_dtype, device)
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loaded_model_names += loaded_model_names_
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loaded_models += loaded_models_
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return loaded_model_names, loaded_models
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class ModelManager:
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def __init__(
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self,
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torch_dtype=torch.float16,
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device="cuda",
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file_path_list: List[str] = [],
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):
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self.torch_dtype = torch_dtype
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self.device = device
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self.model = []
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self.model_path = []
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self.model_name = []
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self.model_detector = [
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ModelDetectorFromSingleFile(model_loader_configs),
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ModelDetectorFromSplitedSingleFile(model_loader_configs),
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ModelDetectorFromHuggingfaceFolder(huggingface_model_loader_configs),
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ModelDetectorFromPatchedSingleFile(patch_model_loader_configs),
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]
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self.load_models(file_path_list)
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def load_model_from_single_file(self, file_path="", state_dict={}, model_names=[], model_classes=[], model_resource=None):
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print(f"Loading models from file: {file_path}")
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if len(state_dict) == 0:
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state_dict = load_state_dict(file_path)
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model_names, models = load_model_from_single_file(state_dict, model_names, model_classes, model_resource, self.torch_dtype, self.device)
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for model_name, model in zip(model_names, models):
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self.model.append(model)
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self.model_path.append(file_path)
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self.model_name.append(model_name)
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#print(f" The following models are loaded: {model_names}.")
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def load_model_from_huggingface_folder(self, file_path="", model_names=[], model_classes=[]):
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print(f"Loading models from folder: {file_path}")
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model_names, models = load_model_from_huggingface_folder(file_path, model_names, model_classes, self.torch_dtype, self.device)
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for model_name, model in zip(model_names, models):
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self.model.append(model)
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self.model_path.append(file_path)
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self.model_name.append(model_name)
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#print(f" The following models are loaded: {model_names}.")
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def load_patch_model_from_single_file(self, file_path="", state_dict={}, model_names=[], model_classes=[], extra_kwargs={}):
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print(f"Loading patch models from file: {file_path}")
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model_names, models = load_patch_model_from_single_file(
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state_dict, model_names, model_classes, extra_kwargs, self, self.torch_dtype, self.device)
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for model_name, model in zip(model_names, models):
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self.model.append(model)
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self.model_path.append(file_path)
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self.model_name.append(model_name)
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print(f" The following patched models are loaded: {model_names}.")
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def load_lora(self, file_path="", state_dict={}, lora_alpha=1.0):
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if isinstance(file_path, list):
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for file_path_ in file_path:
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self.load_lora(file_path_, state_dict=state_dict, lora_alpha=lora_alpha)
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else:
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print(f"Loading LoRA models from file: {file_path}")
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is_loaded = False
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if len(state_dict) == 0:
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state_dict = load_state_dict(file_path)
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for model_name, model, model_path in zip(self.model_name, self.model, self.model_path):
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for lora in get_lora_loaders():
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match_results = lora.match(model, state_dict)
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if match_results is not None:
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print(f" Adding LoRA to {model_name} ({model_path}).")
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lora_prefix, model_resource = match_results
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lora.load(model, state_dict, lora_prefix, alpha=lora_alpha, model_resource=model_resource)
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is_loaded = True
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break
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if not is_loaded:
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print(f" Cannot load LoRA: {file_path}")
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def load_model(self, file_path, model_names=None, device=None, torch_dtype=None):
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#print(f"Loading models from: {file_path}")
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if device is None: device = self.device
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if torch_dtype is None: torch_dtype = self.torch_dtype
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if isinstance(file_path, list):
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state_dict = {}
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for path in file_path:
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state_dict.update(load_state_dict(path))
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elif os.path.isfile(file_path):
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state_dict = load_state_dict(file_path)
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else:
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state_dict = None
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for model_detector in self.model_detector:
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if model_detector.match(file_path, state_dict):
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model_names, models = model_detector.load(
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file_path, state_dict,
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device=device, torch_dtype=torch_dtype,
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allowed_model_names=model_names, model_manager=self
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)
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for model_name, model in zip(model_names, models):
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self.model.append(model)
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self.model_path.append(file_path)
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self.model_name.append(model_name)
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#print(f" The following models are loaded: {model_names}.")
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break
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else:
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print(f" We cannot detect the model type. No models are loaded.")
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def load_models(self, file_path_list, model_names=None, device=None, torch_dtype=None):
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for file_path in file_path_list:
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self.load_model(file_path, model_names, device=device, torch_dtype=torch_dtype)
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def fetch_model(self, model_name, file_path=None, require_model_path=False):
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fetched_models = []
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fetched_model_paths = []
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for model, model_path, model_name_ in zip(self.model, self.model_path, self.model_name):
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if file_path is not None and file_path != model_path:
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continue
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if model_name == model_name_:
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fetched_models.append(model)
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fetched_model_paths.append(model_path)
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if len(fetched_models) == 0:
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#print(f"No {model_name} models available.")
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return None
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if len(fetched_models) == 1:
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print(f"Using {model_name} from {fetched_model_paths[0]}")
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else:
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print(f"More than one {model_name} models are loaded in model manager: {fetched_model_paths}. Using {model_name} from {fetched_model_paths[0]}")
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if require_model_path:
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return fetched_models[0], fetched_model_paths[0]
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else:
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return fetched_models[0]
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def to(self, device):
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for model in self.model:
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model.to(device)
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