qwen-image splited training

This commit is contained in:
Artiprocher
2025-09-02 16:44:14 +08:00
parent 260e32217f
commit b6da77e468
7 changed files with 221 additions and 14 deletions

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@@ -174,9 +174,12 @@ class QwenImagePipeline(BasePipeline):
computation_dtype=self.torch_dtype,
computation_device="cuda",
)
enable_vram_management(self.text_encoder, module_map=module_map, module_config=model_config)
enable_vram_management(self.dit, module_map=module_map, module_config=model_config)
enable_vram_management(self.vae, module_map=module_map, module_config=model_config)
if self.text_encoder is not None:
enable_vram_management(self.text_encoder, module_map=module_map, module_config=model_config)
if self.dit is not None:
enable_vram_management(self.dit, module_map=module_map, module_config=model_config)
if self.vae is not None:
enable_vram_management(self.vae, module_map=module_map, module_config=model_config)
def enable_vram_management(self, num_persistent_param_in_dit=None, vram_limit=None, vram_buffer=0.5, enable_dit_fp8_computation=False):

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@@ -214,7 +214,7 @@ class LoadTorchPickle(DataProcessingOperator):
self.map_location = map_location
def __call__(self, data):
return torch.load(data, map_location=self.map_location)
return torch.load(data, map_location=self.map_location, weights_only=False)
@@ -306,7 +306,7 @@ class UnifiedDataset(torch.utils.data.Dataset):
def __getitem__(self, data_id):
if self.load_from_cache:
data = self.cached_data[data_id % len(self.data)].copy()
data = self.cached_data[data_id % len(self.cached_data)]
data = self.cached_data_operator(data)
else:
data = self.data[data_id % len(self.data)].copy()

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@@ -417,6 +417,13 @@ class DiffusionTrainingModule(torch.nn.Module):
state_dict_[name] = param
state_dict = state_dict_
return state_dict
def transfer_data_to_device(self, data, device):
for key in data:
if isinstance(data[key], torch.Tensor):
data[key] = data[key].to(device)
return data
@@ -484,7 +491,10 @@ def launch_training_task(
for data in tqdm(dataloader):
with accelerator.accumulate(model):
optimizer.zero_grad()
loss = model(data)
if dataset.load_from_cache:
loss = model({}, inputs=data)
else:
loss = model(data)
accelerator.backward(loss)
optimizer.step()
model_logger.on_step_end(accelerator, model, save_steps)
@@ -494,16 +504,24 @@ def launch_training_task(
model_logger.on_training_end(accelerator, model, save_steps)
def launch_data_process_task(model: DiffusionTrainingModule, dataset, output_path="./models"):
dataloader = torch.utils.data.DataLoader(dataset, shuffle=False, collate_fn=lambda x: x[0])
def launch_data_process_task(
dataset: torch.utils.data.Dataset,
model: DiffusionTrainingModule,
model_logger: ModelLogger,
num_workers: int = 8,
):
dataloader = torch.utils.data.DataLoader(dataset, shuffle=True, collate_fn=lambda x: x[0], num_workers=num_workers)
accelerator = Accelerator()
model, dataloader = accelerator.prepare(model, dataloader)
os.makedirs(os.path.join(output_path, "data_cache"), exist_ok=True)
for data_id, data in enumerate(tqdm(dataloader)):
with torch.no_grad():
inputs = model.forward_preprocess(data)
inputs = {key: inputs[key] for key in model.model_input_keys if key in inputs}
torch.save(inputs, os.path.join(output_path, "data_cache", f"{data_id}.pth"))
for data_id, data in tqdm(enumerate(dataloader)):
with accelerator.accumulate(model):
with torch.no_grad():
folder = os.path.join(model_logger.output_path, str(accelerator.process_index))
os.makedirs(folder, exist_ok=True)
save_path = os.path.join(model_logger.output_path, str(accelerator.process_index), f"{data_id}.pth")
data = model(data)
torch.save(data, save_path)

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@@ -0,0 +1,25 @@
accelerate launch examples/qwen_image/model_training/train_data_process.py \
--dataset_base_path data/example_image_dataset \
--dataset_metadata_path data/example_image_dataset/metadata.csv \
--max_pixels 1048576 \
--model_id_with_origin_paths "Qwen/Qwen-Image:text_encoder/model*.safetensors,Qwen/Qwen-Image:vae/diffusion_pytorch_model.safetensors" \
--output_path "./models/train/Qwen-Image_lora_cache" \
--use_gradient_checkpointing \
--dataset_num_workers 8
accelerate launch examples/qwen_image/model_training/train.py \
--dataset_base_path models/train/Qwen-Image_lora_cache \
--max_pixels 1048576 \
--dataset_repeat 50 \
--model_id_with_origin_paths "Qwen/Qwen-Image:transformer/diffusion_pytorch_model*.safetensors" \
--learning_rate 1e-4 \
--num_epochs 5 \
--remove_prefix_in_ckpt "pipe.dit." \
--output_path "./models/train/Qwen-Image_lora" \
--lora_base_model "dit" \
--lora_target_modules "to_q,to_k,to_v,add_q_proj,add_k_proj,add_v_proj,to_out.0,to_add_out,img_mlp.net.2,img_mod.1,txt_mlp.net.2,txt_mod.1" \
--lora_rank 32 \
--use_gradient_checkpointing \
--dataset_num_workers 8 \
--find_unused_parameters \
--enable_fp8_training

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@@ -111,6 +111,7 @@ class QwenImageTrainingModule(DiffusionTrainingModule):
def forward(self, data, inputs=None):
if inputs is None: inputs = self.forward_preprocess(data)
else: inputs = self.transfer_data_to_device(inputs, self.pipe.device)
models = {name: getattr(self.pipe, name) for name in self.pipe.in_iteration_models}
loss = self.pipe.training_loss(**models, **inputs)
return loss

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@@ -0,0 +1,154 @@
import torch, os, json
from diffsynth import load_state_dict
from diffsynth.pipelines.qwen_image import QwenImagePipeline, ModelConfig
from diffsynth.pipelines.flux_image_new import ControlNetInput
from diffsynth.trainers.utils import DiffusionTrainingModule, ModelLogger, launch_data_process_task, qwen_image_parser
from diffsynth.trainers.unified_dataset import UnifiedDataset
os.environ["TOKENIZERS_PARALLELISM"] = "false"
class QwenImageTrainingModule(DiffusionTrainingModule):
def __init__(
self,
model_paths=None, model_id_with_origin_paths=None,
tokenizer_path=None, processor_path=None,
trainable_models=None,
lora_base_model=None, lora_target_modules="", lora_rank=32, lora_checkpoint=None,
use_gradient_checkpointing=True,
use_gradient_checkpointing_offload=False,
extra_inputs=None,
enable_fp8_training=False,
):
super().__init__()
# Load models
offload_dtype = torch.float8_e4m3fn if enable_fp8_training else None
model_configs = []
if model_paths is not None:
model_paths = json.loads(model_paths)
model_configs += [ModelConfig(path=path, offload_dtype=offload_dtype) for path in model_paths]
if model_id_with_origin_paths is not None:
model_id_with_origin_paths = model_id_with_origin_paths.split(",")
model_configs += [ModelConfig(model_id=i.split(":")[0], origin_file_pattern=i.split(":")[1], offload_dtype=offload_dtype) for i in model_id_with_origin_paths]
tokenizer_config = ModelConfig(model_id="Qwen/Qwen-Image", origin_file_pattern="tokenizer/") if tokenizer_path is None else ModelConfig(tokenizer_path)
processor_config = ModelConfig(model_id="Qwen/Qwen-Image-Edit", origin_file_pattern="processor/") if processor_path is None else ModelConfig(processor_path)
self.pipe = QwenImagePipeline.from_pretrained(torch_dtype=torch.bfloat16, device="cpu", model_configs=model_configs, tokenizer_config=tokenizer_config, processor_config=processor_config)
# Enable FP8
if enable_fp8_training:
self.pipe._enable_fp8_lora_training(torch.float8_e4m3fn)
# Reset training scheduler (do it in each training step)
self.pipe.scheduler.set_timesteps(1000, training=True)
# Freeze untrainable models
self.pipe.freeze_except([] if trainable_models is None else trainable_models.split(","))
# Add LoRA to the base models
if lora_base_model is not None:
model = self.add_lora_to_model(
getattr(self.pipe, lora_base_model),
target_modules=lora_target_modules.split(","),
lora_rank=lora_rank,
upcast_dtype=self.pipe.torch_dtype,
)
if lora_checkpoint is not None:
state_dict = load_state_dict(lora_checkpoint)
state_dict = self.mapping_lora_state_dict(state_dict)
load_result = model.load_state_dict(state_dict, strict=False)
print(f"LoRA checkpoint loaded: {lora_checkpoint}, total {len(state_dict)} keys")
if len(load_result[1]) > 0:
print(f"Warning, LoRA key mismatch! Unexpected keys in LoRA checkpoint: {load_result[1]}")
setattr(self.pipe, lora_base_model, model)
# Store other configs
self.use_gradient_checkpointing = use_gradient_checkpointing
self.use_gradient_checkpointing_offload = use_gradient_checkpointing_offload
self.extra_inputs = extra_inputs.split(",") if extra_inputs is not None else []
def forward_preprocess(self, data):
# CFG-sensitive parameters
inputs_posi = {"prompt": data["prompt"]}
inputs_nega = {"negative_prompt": ""}
# CFG-unsensitive parameters
inputs_shared = {
# Assume you are using this pipeline for inference,
# please fill in the input parameters.
"input_image": data["image"],
"height": data["image"].size[1],
"width": data["image"].size[0],
# Please do not modify the following parameters
# unless you clearly know what this will cause.
"cfg_scale": 1,
"rand_device": self.pipe.device,
"use_gradient_checkpointing": self.use_gradient_checkpointing,
"use_gradient_checkpointing_offload": self.use_gradient_checkpointing_offload,
"edit_image_auto_resize": True,
}
# Extra inputs
controlnet_input, blockwise_controlnet_input = {}, {}
for extra_input in self.extra_inputs:
if extra_input.startswith("blockwise_controlnet_"):
blockwise_controlnet_input[extra_input.replace("blockwise_controlnet_", "")] = data[extra_input]
elif extra_input.startswith("controlnet_"):
controlnet_input[extra_input.replace("controlnet_", "")] = data[extra_input]
else:
inputs_shared[extra_input] = data[extra_input]
if len(controlnet_input) > 0:
inputs_shared["controlnet_inputs"] = [ControlNetInput(**controlnet_input)]
if len(blockwise_controlnet_input) > 0:
inputs_shared["blockwise_controlnet_inputs"] = [ControlNetInput(**blockwise_controlnet_input)]
# Pipeline units will automatically process the input parameters.
for unit in self.pipe.units:
inputs_shared, inputs_posi, inputs_nega = self.pipe.unit_runner(unit, self.pipe, inputs_shared, inputs_posi, inputs_nega)
return {**inputs_shared, **inputs_posi}
def forward(self, data, inputs=None):
if inputs is None: inputs = self.forward_preprocess(data)
return inputs
if __name__ == "__main__":
parser = qwen_image_parser()
args = parser.parse_args()
dataset = UnifiedDataset(
base_path=args.dataset_base_path,
metadata_path=args.dataset_metadata_path,
repeat=1, # Set repeat = 1
data_file_keys=args.data_file_keys.split(","),
main_data_operator=UnifiedDataset.default_image_operator(
base_path=args.dataset_base_path,
max_pixels=args.max_pixels,
height=args.height,
width=args.width,
height_division_factor=16,
width_division_factor=16,
)
)
model = QwenImageTrainingModule(
model_paths=args.model_paths,
model_id_with_origin_paths=args.model_id_with_origin_paths,
tokenizer_path=args.tokenizer_path,
processor_path=args.processor_path,
trainable_models=args.trainable_models,
lora_base_model=args.lora_base_model,
lora_target_modules=args.lora_target_modules,
lora_rank=args.lora_rank,
lora_checkpoint=args.lora_checkpoint,
use_gradient_checkpointing=args.use_gradient_checkpointing,
use_gradient_checkpointing_offload=args.use_gradient_checkpointing_offload,
extra_inputs=args.extra_inputs,
enable_fp8_training=args.enable_fp8_training,
)
model_logger = ModelLogger(args.output_path, remove_prefix_in_ckpt=args.remove_prefix_in_ckpt)
launch_data_process_task(
dataset, model, model_logger,
num_workers=args.dataset_num_workers,
)

6
test.py Normal file
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@@ -0,0 +1,6 @@
import torch
data = torch.load("models/train/Qwen-Image_lora_cache/0/0.pth", map_location="cpu", weights_only=False)
for i in data:
print(i)