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import os
import sys

import numpy as np
import torch
from diffusers import FlowMatchEulerDiscreteScheduler
from omegaconf import OmegaConf
from PIL import Image

current_file_path = os.path.abspath(__file__)
project_roots = [os.path.dirname(current_file_path), os.path.dirname(os.path.dirname(current_file_path)), os.path.dirname(os.path.dirname(os.path.dirname(current_file_path)))]
for project_root in project_roots:
    sys.path.insert(0, project_root) if project_root not in sys.path else None

from videox_fun.dist import set_multi_gpus_devices, shard_model
from videox_fun.models import (AutoencoderKLWan, AutoTokenizer, CLIPModel, AutoencoderKLWan3_8,
                              WanT5EncoderModel, Wan2_2Transformer3DModel)
from videox_fun.models.cache_utils import get_teacache_coefficients
from videox_fun.pipeline import Wan2_2FunInpaintPipeline
from videox_fun.utils.fp8_optimization import (convert_model_weight_to_float8, replace_parameters_by_name,
                                              convert_weight_dtype_wrapper)
from videox_fun.utils.lora_utils import merge_lora, unmerge_lora
from videox_fun.utils.utils import (filter_kwargs, get_image_to_video_latent,
                                   save_videos_grid)
from videox_fun.utils.fm_solvers import FlowDPMSolverMultistepScheduler
from videox_fun.utils.fm_solvers_unipc import FlowUniPCMultistepScheduler

# GPU memory mode, which can be chosen in [model_full_load, model_full_load_and_qfloat8, model_cpu_offload, model_cpu_offload_and_qfloat8, sequential_cpu_offload].
# model_full_load means that the entire model will be moved to the GPU.
# 
# model_full_load_and_qfloat8 means that the entire model will be moved to the GPU,
# and the transformer model has been quantized to float8, which can save more GPU memory. 
# 
# model_cpu_offload means that the entire model will be moved to the CPU after use, which can save some GPU memory.
# 
# model_cpu_offload_and_qfloat8 indicates that the entire model will be moved to the CPU after use, 
# and the transformer model has been quantized to float8, which can save more GPU memory. 
# 
# sequential_cpu_offload means that each layer of the model will be moved to the CPU after use, 
# resulting in slower speeds but saving a large amount of GPU memory.
GPU_memory_mode     = "sequential_cpu_offload"
# Multi GPUs config
# Please ensure that the product of ulysses_degree and ring_degree equals the number of GPUs used. 
# For example, if you are using 8 GPUs, you can set ulysses_degree = 2 and ring_degree = 4.
# If you are using 1 GPU, you can set ulysses_degree = 1 and ring_degree = 1.
ulysses_degree      = 1
ring_degree         = 1
# Use FSDP to save more GPU memory in multi gpus.
fsdp_dit            = False
fsdp_text_encoder   = True
# Compile will give a speedup in fixed resolution and need a little GPU memory. 
# The compile_dit is not compatible with the fsdp_dit and sequential_cpu_offload.
compile_dit         = False

# TeaCache config
enable_teacache     = True
# Recommended to be set between 0.05 and 0.30. A larger threshold can cache more steps, speeding up the inference process, 
# but it may cause slight differences between the generated content and the original content.
# # --------------------------------------------------------------------------------------------------- #
# | Model Name          | threshold | Model Name          | threshold |
# | Wan2.2-T2V-A14B     | 0.10~0.15 | Wan2.2-I2V-A14B     | 0.15~0.20 |
# | Wan2.2-Fun-A14B-*   | 0.15~0.20 |
# # --------------------------------------------------------------------------------------------------- #
teacache_threshold  = 0.10
# The number of steps to skip TeaCache at the beginning of the inference process, which can
# reduce the impact of TeaCache on generated video quality.
num_skip_start_steps = 5
# Whether to offload TeaCache tensors to cpu to save a little bit of GPU memory.
teacache_offload    = False

# Skip some cfg steps in inference
# Recommended to be set between 0.00 and 0.25
cfg_skip_ratio      = 0

# Riflex config
enable_riflex       = False
# Index of intrinsic frequency
riflex_k            = 6

# Config and model path
config_path         = "config/wan2.2/wan_civitai_i2v.yaml"
# model path
model_name          = "models/Diffusion_Transformer/Wan2.2-Fun-A14B-InP"

# Choose the sampler in "Flow", "Flow_Unipc", "Flow_DPM++"
sampler_name        = "Flow"
# [NOTE]: Noise schedule shift parameter. Affects temporal dynamics. 
# Used when the sampler is in "Flow_Unipc", "Flow_DPM++".
shift               = 5

# Load pretrained model if need
# The transformer_path is used for low noise model, the transformer_high_path is used for high noise model.
transformer_path        = None
transformer_high_path   = None
vae_path                = None
# Load lora model if need
# The lora_path is used for low noise model, the lora_high_path is used for high noise model.
lora_path               = None
lora_high_path          = None 

# Other params
sample_size         = [480, 832]
video_length        = 81
fps                 = 16

# Use torch.float16 if GPU does not support torch.bfloat16
# ome graphics cards, such as v100, 2080ti, do not support torch.bfloat16
weight_dtype            = torch.bfloat16
# 使用更长的neg prompt如"模糊,突变,变形,失真,画面暗,文本字幕,画面固定,连环画,漫画,线稿,没有主体。",可以增加稳定性
# 在neg prompt中添加"安静,固定"等词语可以增加动态性。
prompt              = "一只棕色的狗摇着头,坐在舒适房间里的浅色沙发上。在狗的后面,架子上有一幅镶框的画,周围是粉红色的花朵。房间里柔和温暖的灯光营造出舒适的氛围。"
negative_prompt     = "色调艳丽,过曝,静态,细节模糊不清,字幕,风格,作品,画作,画面,静止,整体发灰,最差质量,低质量,JPEG压缩残留,丑陋的,残缺的,多余的手指,画得不好的手部,画得不好的脸部,畸形的,毁容的,形态畸形的肢体,手指融合,静止不动的画面,杂乱的背景,三条腿,背景人很多,倒着走"
guidance_scale      = 6.0
seed                = 43
num_inference_steps = 50
# The lora_weight is used for low noise model, the lora_high_weight is used for high noise model.
lora_weight         = 0.55
lora_high_weight    = 0.55
save_path           = "samples/wan-videos-fun-t2v"

device = set_multi_gpus_devices(ulysses_degree, ring_degree)
config = OmegaConf.load(config_path)
boundary = config['transformer_additional_kwargs'].get('boundary', 0.900)

transformer = Wan2_2Transformer3DModel.from_pretrained(
    os.path.join(model_name, config['transformer_additional_kwargs'].get('transformer_low_noise_model_subpath', 'transformer')),
    transformer_additional_kwargs=OmegaConf.to_container(config['transformer_additional_kwargs']),
    low_cpu_mem_usage=True,
    torch_dtype=weight_dtype,
)

transformer_2 = Wan2_2Transformer3DModel.from_pretrained(
    os.path.join(model_name, config['transformer_additional_kwargs'].get('transformer_high_noise_model_subpath', 'transformer')),
    transformer_additional_kwargs=OmegaConf.to_container(config['transformer_additional_kwargs']),
    low_cpu_mem_usage=True,
    torch_dtype=weight_dtype,
)

if transformer_path is not None:
    print(f"From checkpoint: {transformer_path}")
    if transformer_path.endswith("safetensors"):
        from safetensors.torch import load_file, safe_open
        state_dict = load_file(transformer_path)
    else:
        state_dict = torch.load(transformer_path, map_location="cpu")
    state_dict = state_dict["state_dict"] if "state_dict" in state_dict else state_dict

    m, u = transformer.load_state_dict(state_dict, strict=False)
    print(f"missing keys: {len(m)}, unexpected keys: {len(u)}")

if transformer_high_path is not None:
    print(f"From checkpoint: {transformer_high_path}")
    if transformer_high_path.endswith("safetensors"):
        from safetensors.torch import load_file, safe_open
        state_dict = load_file(transformer_high_path)
    else:
        state_dict = torch.load(transformer_high_path, map_location="cpu")
    state_dict = state_dict["state_dict"] if "state_dict" in state_dict else state_dict

    m, u = transformer_2.load_state_dict(state_dict, strict=False)
    print(f"missing keys: {len(m)}, unexpected keys: {len(u)}")

# Get Vae
Chosen_AutoencoderKL = {
    "AutoencoderKLWan": AutoencoderKLWan,
    "AutoencoderKLWan3_8": AutoencoderKLWan3_8
}[config['vae_kwargs'].get('vae_type', 'AutoencoderKLWan')]
vae = Chosen_AutoencoderKL.from_pretrained(
    os.path.join(model_name, config['vae_kwargs'].get('vae_subpath', 'vae')),
    additional_kwargs=OmegaConf.to_container(config['vae_kwargs']),
).to(weight_dtype)

if vae_path is not None:
    print(f"From checkpoint: {vae_path}")
    if vae_path.endswith("safetensors"):
        from safetensors.torch import load_file, safe_open
        state_dict = load_file(vae_path)
    else:
        state_dict = torch.load(vae_path, map_location="cpu")
    state_dict = state_dict["state_dict"] if "state_dict" in state_dict else state_dict

    m, u = vae.load_state_dict(state_dict, strict=False)
    print(f"missing keys: {len(m)}, unexpected keys: {len(u)}")

# Get Tokenizer
tokenizer = AutoTokenizer.from_pretrained(
    os.path.join(model_name, config['text_encoder_kwargs'].get('tokenizer_subpath', 'tokenizer')),
)

# Get Text encoder
text_encoder = WanT5EncoderModel.from_pretrained(
    os.path.join(model_name, config['text_encoder_kwargs'].get('text_encoder_subpath', 'text_encoder')),
    additional_kwargs=OmegaConf.to_container(config['text_encoder_kwargs']),
    low_cpu_mem_usage=True,
    torch_dtype=weight_dtype,
)
text_encoder = text_encoder.eval()

# Get Scheduler
Chosen_Scheduler = scheduler_dict = {
    "Flow": FlowMatchEulerDiscreteScheduler,
    "Flow_Unipc": FlowUniPCMultistepScheduler,
    "Flow_DPM++": FlowDPMSolverMultistepScheduler,
}[sampler_name]
if sampler_name == "Flow_Unipc" or sampler_name == "Flow_DPM++":
    config['scheduler_kwargs']['shift'] = 1
scheduler = Chosen_Scheduler(
    **filter_kwargs(Chosen_Scheduler, OmegaConf.to_container(config['scheduler_kwargs']))
)

# Get Pipeline
pipeline = Wan2_2FunInpaintPipeline(
    transformer=transformer,
    transformer_2=transformer_2,
    vae=vae,
    tokenizer=tokenizer,
    text_encoder=text_encoder,
    scheduler=scheduler,
)
if ulysses_degree > 1 or ring_degree > 1:
    from functools import partial
    transformer.enable_multi_gpus_inference()
    transformer_2.enable_multi_gpus_inference()
    if fsdp_dit:
        shard_fn = partial(shard_model, device_id=device, param_dtype=weight_dtype)
        pipeline.transformer = shard_fn(pipeline.transformer)
        pipeline.transformer_2 = shard_fn(pipeline.transformer_2)
        print("Add FSDP DIT")
    if fsdp_text_encoder:
        shard_fn = partial(shard_model, device_id=device, param_dtype=weight_dtype)
        pipeline.text_encoder = shard_fn(pipeline.text_encoder)
        print("Add FSDP TEXT ENCODER")

if compile_dit:
    for i in range(len(pipeline.transformer.blocks)):
        pipeline.transformer.blocks[i] = torch.compile(pipeline.transformer.blocks[i])
    for i in range(len(pipeline.transformer_2.blocks)):
        pipeline.transformer_2.blocks[i] = torch.compile(pipeline.transformer_2.blocks[i])
    print("Add Compile")

if GPU_memory_mode == "sequential_cpu_offload":
    replace_parameters_by_name(transformer, ["modulation",], device=device)
    replace_parameters_by_name(transformer_2, ["modulation",], device=device)
    transformer.freqs = transformer.freqs.to(device=device)
    transformer_2.freqs = transformer_2.freqs.to(device=device)
    pipeline.enable_sequential_cpu_offload(device=device)
elif GPU_memory_mode == "model_cpu_offload_and_qfloat8":
    convert_model_weight_to_float8(transformer, exclude_module_name=["modulation",], device=device)
    convert_model_weight_to_float8(transformer_2, exclude_module_name=["modulation",], device=device)
    convert_weight_dtype_wrapper(transformer, weight_dtype)
    convert_weight_dtype_wrapper(transformer_2, weight_dtype)
    pipeline.enable_model_cpu_offload(device=device)
elif GPU_memory_mode == "model_cpu_offload":
    pipeline.enable_model_cpu_offload(device=device)
elif GPU_memory_mode == "model_full_load_and_qfloat8":
    convert_model_weight_to_float8(transformer, exclude_module_name=["modulation",], device=device)
    convert_model_weight_to_float8(transformer_2, exclude_module_name=["modulation",], device=device)
    convert_weight_dtype_wrapper(transformer, weight_dtype)
    convert_weight_dtype_wrapper(transformer_2, weight_dtype)
    pipeline.to(device=device)
else:
    pipeline.to(device=device)

coefficients = get_teacache_coefficients(model_name) if enable_teacache else None
if coefficients is not None:
    print(f"Enable TeaCache with threshold {teacache_threshold} and skip the first {num_skip_start_steps} steps.")
    pipeline.transformer.enable_teacache(
        coefficients, num_inference_steps, teacache_threshold, num_skip_start_steps=num_skip_start_steps, offload=teacache_offload
    )
    pipeline.transformer_2.share_teacache(transformer=pipeline.transformer)

if cfg_skip_ratio is not None:
    print(f"Enable cfg_skip_ratio {cfg_skip_ratio}.")
    pipeline.transformer.enable_cfg_skip(cfg_skip_ratio, num_inference_steps)
    pipeline.transformer_2.share_cfg_skip(transformer=pipeline.transformer)

generator = torch.Generator(device=device).manual_seed(seed)

if lora_path is not None:
    pipeline = merge_lora(pipeline, lora_path, lora_weight, device=device, dtype=weight_dtype)
    pipeline = merge_lora(pipeline, lora_high_path, lora_high_weight, device=device, dtype=weight_dtype, sub_transformer_name="transformer_2")

with torch.no_grad():
    video_length = int((video_length - 1) // vae.config.temporal_compression_ratio * vae.config.temporal_compression_ratio) + 1 if video_length != 1 else 1
    latent_frames = (video_length - 1) // vae.config.temporal_compression_ratio + 1

    if enable_riflex:
        pipeline.transformer.enable_riflex(k = riflex_k, L_test = latent_frames)
        pipeline.transformer_2.enable_riflex(k = riflex_k, L_test = latent_frames)

    input_video, input_video_mask, _ = get_image_to_video_latent(None, None, video_length=video_length, sample_size=sample_size)

    sample = pipeline(
        prompt, 
        num_frames = video_length,
        negative_prompt = negative_prompt,
        height      = sample_size[0],
        width       = sample_size[1],
        generator   = generator,
        guidance_scale = guidance_scale,
        num_inference_steps = num_inference_steps,

        video        = input_video,
        mask_video   = input_video_mask,
        boundary = boundary,
        shift = shift,
    ).videos

if lora_path is not None:
    pipeline = unmerge_lora(pipeline, lora_path, lora_weight, device=device, dtype=weight_dtype)
    pipeline = unmerge_lora(pipeline, lora_high_path, lora_high_weight, device=device, dtype=weight_dtype, sub_transformer_name="transformer_2")

def save_results():
    if not os.path.exists(save_path):
        os.makedirs(save_path, exist_ok=True)

    index = len([path for path in os.listdir(save_path)]) + 1
    prefix = str(index).zfill(8)
    if video_length == 1:
        video_path = os.path.join(save_path, prefix + ".png")

        image = sample[0, :, 0]
        image = image.transpose(0, 1).transpose(1, 2)
        image = (image * 255).numpy().astype(np.uint8)
        image = Image.fromarray(image)
        image.save(video_path)
    else:
        video_path = os.path.join(save_path, prefix + ".mp4")
        save_videos_grid(sample, video_path, fps=fps)

if ulysses_degree * ring_degree > 1:
    import torch.distributed as dist
    if dist.get_rank() == 0:
        save_results()
else:
    save_results()