FramePack_Image_Edit_Lora_Early / fpack_cache_latents.py
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import argparse
import logging
import math
import os
from typing import List, Optional
import numpy as np
import torch
import torch.nn.functional as F
from tqdm import tqdm
from transformers import SiglipImageProcessor, SiglipVisionModel
from PIL import Image
from dataset import config_utils
from dataset.config_utils import BlueprintGenerator, ConfigSanitizer
from dataset.image_video_dataset import BaseDataset, ItemInfo, save_latent_cache_framepack, ARCHITECTURE_FRAMEPACK
from frame_pack import hunyuan
from frame_pack.framepack_utils import load_image_encoders, load_vae
from hunyuan_model.autoencoder_kl_causal_3d import AutoencoderKLCausal3D
from frame_pack.clip_vision import hf_clip_vision_encode
import cache_latents
logger = logging.getLogger(__name__)
logging.basicConfig(level=logging.INFO)
def encode_and_save_batch(
vae: AutoencoderKLCausal3D,
feature_extractor: SiglipImageProcessor,
image_encoder: SiglipVisionModel,
batch: List[ItemInfo],
vanilla_sampling: bool = False,
one_frame: bool = False,
one_frame_no_2x: bool = False,
one_frame_no_4x: bool = False,
):
"""Encode a batch of original RGB videos and save FramePack section caches."""
if one_frame:
encode_and_save_batch_one_frame(
vae, feature_extractor, image_encoder, batch, vanilla_sampling, one_frame_no_2x, one_frame_no_4x
)
return
latent_window_size = batch[0].fp_latent_window_size # all items should have the same window size
# Stack batch into tensor (B,C,F,H,W) in RGB order
contents = torch.stack([torch.from_numpy(item.content) for item in batch])
if len(contents.shape) == 4:
contents = contents.unsqueeze(1) # B, H, W, C -> B, F, H, W, C
contents = contents.permute(0, 4, 1, 2, 3).contiguous() # B, C, F, H, W
contents = contents.to(vae.device, dtype=vae.dtype)
contents = contents / 127.5 - 1.0 # normalize to [-1, 1]
height, width = contents.shape[3], contents.shape[4]
if height < 8 or width < 8:
item = batch[0] # other items should have the same size
raise ValueError(f"Image or video size too small: {item.item_key} and {len(batch) - 1} more, size: {item.original_size}")
# calculate latent frame count from original frame count (4n+1)
latent_f = (batch[0].frame_count - 1) // 4 + 1
# calculate the total number of sections (excluding the first frame, divided by window size)
total_latent_sections = math.floor((latent_f - 1) / latent_window_size)
if total_latent_sections < 1:
min_frames_needed = latent_window_size * 4 + 1
raise ValueError(
f"Not enough frames for FramePack: {batch[0].frame_count} frames ({latent_f} latent frames), minimum required: {min_frames_needed} frames ({latent_window_size+1} latent frames)"
)
# actual latent frame count (aligned to section boundaries)
latent_f_aligned = total_latent_sections * latent_window_size + 1 if not one_frame else 1
# actual video frame count
frame_count_aligned = (latent_f_aligned - 1) * 4 + 1
if frame_count_aligned != batch[0].frame_count:
logger.info(
f"Frame count mismatch: required={frame_count_aligned} != actual={batch[0].frame_count}, trimming to {frame_count_aligned}"
)
contents = contents[:, :, :frame_count_aligned, :, :]
latent_f = latent_f_aligned # Update to the aligned value
# VAE encode (list of tensor -> stack)
latents = hunyuan.vae_encode(contents, vae) # include scaling factor
latents = latents.to("cpu") # (B, C, latent_f, H/8, W/8)
# Vision encoding per‑item (once)
images = np.stack([item.content[0] for item in batch], axis=0) # B, H, W, C
# encode image with image encoder
image_embeddings = []
with torch.no_grad():
for image in images:
image_encoder_output = hf_clip_vision_encode(image, feature_extractor, image_encoder)
image_embeddings.append(image_encoder_output.last_hidden_state)
image_embeddings = torch.cat(image_embeddings, dim=0) # B, LEN, 1152
image_embeddings = image_embeddings.to("cpu") # Save memory
if not vanilla_sampling:
# padding is reversed for inference (future to past)
latent_paddings = list(reversed(range(total_latent_sections)))
# Note: The padding trick for inference. See the paper for details.
if total_latent_sections > 4:
latent_paddings = [3] + [2] * (total_latent_sections - 3) + [1, 0]
for b, item in enumerate(batch):
original_latent_cache_path = item.latent_cache_path
video_lat = latents[b : b + 1] # keep batch dim, 1, C, F, H, W
# emulate inference step (history latents)
# Note: In inference, history_latents stores *generated* future latents.
# Here, for caching, we just need its shape and type for clean_* tensors.
# The actual content doesn't matter much as clean_* will be overwritten.
history_latents = torch.zeros(
(1, video_lat.shape[1], 1 + 2 + 16, video_lat.shape[3], video_lat.shape[4]), dtype=video_lat.dtype
) # C=16 for HY
latent_f_index = latent_f - latent_window_size # Start from the last section
section_index = total_latent_sections - 1
for latent_padding in latent_paddings:
is_last_section = section_index == 0 # the last section in inference order == the first section in time
latent_padding_size = latent_padding * latent_window_size
if is_last_section:
assert latent_f_index == 1, "Last section should be starting from frame 1"
# indices generation (same as inference)
indices = torch.arange(0, sum([1, latent_padding_size, latent_window_size, 1, 2, 16])).unsqueeze(0)
(
clean_latent_indices_pre, # Index for start_latent
blank_indices, # Indices for padding (future context in inference)
latent_indices, # Indices for the target latents to predict
clean_latent_indices_post, # Index for the most recent history frame
clean_latent_2x_indices, # Indices for the next 2 history frames
clean_latent_4x_indices, # Indices for the next 16 history frames
) = indices.split([1, latent_padding_size, latent_window_size, 1, 2, 16], dim=1)
# Indices for clean_latents (start + recent history)
clean_latent_indices = torch.cat([clean_latent_indices_pre, clean_latent_indices_post], dim=1)
# clean latents preparation (emulating inference)
clean_latents_pre = video_lat[:, :, 0:1, :, :] # Always the first frame (start_latent)
clean_latents_post, clean_latents_2x, clean_latents_4x = history_latents[:, :, : 1 + 2 + 16, :, :].split(
[1, 2, 16], dim=2
)
clean_latents = torch.cat([clean_latents_pre, clean_latents_post], dim=2) # Combine start frame + placeholder
# Target latents for this section (ground truth)
target_latents = video_lat[:, :, latent_f_index : latent_f_index + latent_window_size, :, :]
# save cache (file path is inside item.latent_cache_path pattern), remove batch dim
item.latent_cache_path = append_section_idx_to_latent_cache_path(original_latent_cache_path, section_index)
save_latent_cache_framepack(
item_info=item,
latent=target_latents.squeeze(0), # Ground truth for this section
latent_indices=latent_indices.squeeze(0), # Indices for the ground truth section
clean_latents=clean_latents.squeeze(0), # Start frame + history placeholder
clean_latent_indices=clean_latent_indices.squeeze(0), # Indices for start frame + history placeholder
clean_latents_2x=clean_latents_2x.squeeze(0), # History placeholder
clean_latent_2x_indices=clean_latent_2x_indices.squeeze(0), # Indices for history placeholder
clean_latents_4x=clean_latents_4x.squeeze(0), # History placeholder
clean_latent_4x_indices=clean_latent_4x_indices.squeeze(0), # Indices for history placeholder
image_embeddings=image_embeddings[b],
)
if is_last_section: # If this was the first section generated in inference (time=0)
# History gets the start frame + the generated first section
generated_latents_for_history = video_lat[:, :, : latent_window_size + 1, :, :]
else:
# History gets the generated current section
generated_latents_for_history = target_latents # Use true latents as stand-in for generated
history_latents = torch.cat([generated_latents_for_history, history_latents], dim=2)
section_index -= 1
latent_f_index -= latent_window_size
else:
# Vanilla Sampling Logic
for b, item in enumerate(batch):
original_latent_cache_path = item.latent_cache_path
video_lat = latents[b : b + 1] # Keep batch dim: 1, C, F_aligned, H, W
img_emb = image_embeddings[b] # LEN, 1152
for section_index in range(total_latent_sections):
target_start_f = section_index * latent_window_size + 1
target_end_f = target_start_f + latent_window_size
target_latents = video_lat[:, :, target_start_f:target_end_f, :, :]
start_latent = video_lat[:, :, 0:1, :, :]
# Clean latents preparation (Vanilla)
clean_latents_total_count = 1 + 2 + 16
history_latents = torch.zeros(
size=(1, 16, clean_latents_total_count, video_lat.shape[-2], video_lat.shape[-1]),
device=video_lat.device,
dtype=video_lat.dtype,
)
history_start_f = 0
video_start_f = target_start_f - clean_latents_total_count
copy_count = clean_latents_total_count
if video_start_f < 0:
history_start_f = -video_start_f
copy_count = clean_latents_total_count - history_start_f
video_start_f = 0
if copy_count > 0:
history_latents[:, :, history_start_f:] = video_lat[:, :, video_start_f : video_start_f + copy_count, :, :]
# indices generation (Vanilla): copy from FramePack-F1
indices = torch.arange(0, sum([1, 16, 2, 1, latent_window_size])).unsqueeze(0)
(
clean_latent_indices_start,
clean_latent_4x_indices,
clean_latent_2x_indices,
clean_latent_1x_indices,
latent_indices,
) = indices.split([1, 16, 2, 1, latent_window_size], dim=1)
clean_latent_indices = torch.cat([clean_latent_indices_start, clean_latent_1x_indices], dim=1)
clean_latents_4x, clean_latents_2x, clean_latents_1x = history_latents.split([16, 2, 1], dim=2)
clean_latents = torch.cat([start_latent, clean_latents_1x], dim=2)
# Save cache
item.latent_cache_path = append_section_idx_to_latent_cache_path(original_latent_cache_path, section_index)
save_latent_cache_framepack(
item_info=item,
latent=target_latents.squeeze(0),
latent_indices=latent_indices.squeeze(0), # Indices for target section i
clean_latents=clean_latents.squeeze(0), # Past clean frames
clean_latent_indices=clean_latent_indices.squeeze(0), # Indices for clean_latents_pre/post
clean_latents_2x=clean_latents_2x.squeeze(0), # Past clean frames (2x)
clean_latent_2x_indices=clean_latent_2x_indices.squeeze(0), # Indices for clean_latents_2x
clean_latents_4x=clean_latents_4x.squeeze(0), # Past clean frames (4x)
clean_latent_4x_indices=clean_latent_4x_indices.squeeze(0), # Indices for clean_latents_4x
image_embeddings=img_emb,
# Note: We don't explicitly save past_offset_indices,
# but its size influences the absolute values in other indices.
)
def encode_and_save_batch_one_frame(
vae: AutoencoderKLCausal3D,
feature_extractor: SiglipImageProcessor,
image_encoder: SiglipVisionModel,
batch: List[ItemInfo],
vanilla_sampling: bool = False,
one_frame_no_2x: bool = False,
one_frame_no_4x: bool = False,
):
# item.content: target image (H, W, C)
# item.control_content: list of images (H, W, C)
# Stack batch into tensor (B,F,H,W,C) in RGB order. The numbers of control content for each item are the same.
contents = []
content_masks: list[list[Optional[torch.Tensor]]] = []
for item in batch:
item_contents = item.control_content + [item.content]
item_masks = []
for i, c in enumerate(item_contents):
if c.shape[-1] == 4: # RGBA
item_contents[i] = c[..., :3] # remove alpha channel from content
alpha = c[..., 3] # extract alpha channel
mask_image = Image.fromarray(alpha, mode="L")
width, height = mask_image.size
mask_image = mask_image.resize((width // 8, height // 8), Image.LANCZOS)
mask_image = np.array(mask_image) # PIL to numpy, HWC
mask_image = torch.from_numpy(mask_image).float() / 255.0 # 0 to 1.0, HWC
mask_image = mask_image.squeeze(-1) # HWC -> HW
mask_image = mask_image.unsqueeze(0).unsqueeze(0).unsqueeze(0) # HW -> 111HW (BCFHW)
mask_image = mask_image.to(torch.float32)
content_mask = mask_image
else:
content_mask = None
item_masks.append(content_mask)
item_contents = [torch.from_numpy(c) for c in item_contents]
contents.append(torch.stack(item_contents, dim=0)) # list of [F, H, W, C]
content_masks.append(item_masks)
contents = torch.stack(contents, dim=0) # B, F, H, W, C. F is control frames + target frame
contents = contents.permute(0, 4, 1, 2, 3).contiguous() # B, C, F, H, W
contents = contents.to(vae.device, dtype=vae.dtype)
contents = contents / 127.5 - 1.0 # normalize to [-1, 1]
height, width = contents.shape[-2], contents.shape[-1]
if height < 8 or width < 8:
item = batch[0] # other items should have the same size
raise ValueError(f"Image or video size too small: {item.item_key} and {len(batch) - 1} more, size: {item.original_size}")
# VAE encode: we need to encode one frame at a time because VAE encoder has stride=4 for the time dimension except for the first frame.
latents = [hunyuan.vae_encode(contents[:, :, idx : idx + 1], vae).to("cpu") for idx in range(contents.shape[2])]
latents = torch.cat(latents, dim=2) # B, C, F, H/8, W/8
# apply alphas to latents
for b, item in enumerate(batch):
for i, content_mask in enumerate(content_masks[b]):
if content_mask is not None:
# apply mask to the latents
# print(f"Applying content mask for item {item.item_key}, frame {i}")
latents[b : b + 1, :, i : i + 1] *= content_mask
# Vision encoding per‑item (once): use control content because it is the start image
images = [item.control_content[0] for item in batch] # list of [H, W, C]
# encode image with image encoder
image_embeddings = []
with torch.no_grad():
for image in images:
image_encoder_output = hf_clip_vision_encode(image, feature_extractor, image_encoder)
image_embeddings.append(image_encoder_output.last_hidden_state)
image_embeddings = torch.cat(image_embeddings, dim=0) # B, LEN, 1152
image_embeddings = image_embeddings.to("cpu") # Save memory
# save cache for each item in the batch
for b, item in enumerate(batch):
# indices generation (same as inference): each item may have different clean_latent_indices, so we generate them per item
clean_latent_indices = item.fp_1f_clean_indices # list of indices for clean latents
if clean_latent_indices is None or len(clean_latent_indices) == 0:
logger.warning(
f"Item {item.item_key} has no clean_latent_indices defined, using default indices for one frame training."
)
clean_latent_indices = [0]
if not item.fp_1f_no_post:
clean_latent_indices = clean_latent_indices + [1 + item.fp_latent_window_size]
clean_latent_indices = torch.Tensor(clean_latent_indices).long() # N
latent_index = torch.Tensor([item.fp_1f_target_index]).long() # 1
# zero values is not needed to cache even if one_frame_no_2x or 4x is False
clean_latents_2x = None
clean_latents_4x = None
if one_frame_no_2x:
clean_latent_2x_indices = None
else:
index = 1 + item.fp_latent_window_size + 1
clean_latent_2x_indices = torch.arange(index, index + 2) # 2
if one_frame_no_4x:
clean_latent_4x_indices = None
else:
index = 1 + item.fp_latent_window_size + 1 + 2
clean_latent_4x_indices = torch.arange(index, index + 16) # 16
# clean latents preparation (emulating inference)
clean_latents = latents[b, :, :-1] # C, F, H, W
if not item.fp_1f_no_post:
# If zero post is enabled, we need to add a zero frame at the end
clean_latents = F.pad(clean_latents, (0, 0, 0, 0, 0, 1), value=0.0) # C, F+1, H, W
# Target latents for this section (ground truth)
target_latents = latents[b, :, -1:] # C, 1, H, W
print(f"Saving cache for item {item.item_key} at {item.latent_cache_path}. no_post: {item.fp_1f_no_post}")
print(f" Clean latent indices: {clean_latent_indices}, latent index: {latent_index}")
print(f" Clean latents: {clean_latents.shape}, target latents: {target_latents.shape}")
print(f" Clean latents 2x indices: {clean_latent_2x_indices}, clean latents 4x indices: {clean_latent_4x_indices}")
print(
f" Clean latents 2x: {clean_latents_2x.shape if clean_latents_2x is not None else 'None'}, "
f"Clean latents 4x: {clean_latents_4x.shape if clean_latents_4x is not None else 'None'}"
)
print(f" Image embeddings: {image_embeddings[b].shape}")
# save cache (file path is inside item.latent_cache_path pattern), remove batch dim
save_latent_cache_framepack(
item_info=item,
latent=target_latents, # Ground truth for this section
latent_indices=latent_index, # Indices for the ground truth section
clean_latents=clean_latents, # Start frame + history placeholder
clean_latent_indices=clean_latent_indices, # Indices for start frame + history placeholder
clean_latents_2x=clean_latents_2x, # History placeholder
clean_latent_2x_indices=clean_latent_2x_indices, # Indices for history placeholder
clean_latents_4x=clean_latents_4x, # History placeholder
clean_latent_4x_indices=clean_latent_4x_indices, # Indices for history placeholder
image_embeddings=image_embeddings[b],
)
def framepack_setup_parser(parser: argparse.ArgumentParser) -> argparse.ArgumentParser:
parser.add_argument("--image_encoder", type=str, required=True, help="Image encoder (CLIP) checkpoint path or directory")
parser.add_argument(
"--f1",
action="store_true",
help="Generate cache for F1 model (vanilla (autoregressive) sampling) instead of Inverted anti-drifting (plain FramePack)",
)
parser.add_argument(
"--one_frame",
action="store_true",
help="Generate cache for one frame training (single frame, single section). latent_window_size is used as the index of the target frame.",
)
parser.add_argument(
"--one_frame_no_2x",
action="store_true",
help="Do not use clean_latents_2x and clean_latent_2x_indices for one frame training.",
)
parser.add_argument(
"--one_frame_no_4x",
action="store_true",
help="Do not use clean_latents_4x and clean_latent_4x_indices for one frame training.",
)
return parser
def main(args: argparse.Namespace):
device = args.device if hasattr(args, "device") and args.device else ("cuda" if torch.cuda.is_available() else "cpu")
device = torch.device(device)
# Load dataset config
blueprint_generator = BlueprintGenerator(ConfigSanitizer())
logger.info(f"Load dataset config from {args.dataset_config}")
user_config = config_utils.load_user_config(args.dataset_config)
blueprint = blueprint_generator.generate(user_config, args, architecture=ARCHITECTURE_FRAMEPACK)
train_dataset_group = config_utils.generate_dataset_group_by_blueprint(blueprint.dataset_group)
datasets = train_dataset_group.datasets
if args.debug_mode is not None:
cache_latents.show_datasets(
datasets, args.debug_mode, args.console_width, args.console_back, args.console_num_images, fps=16
)
return
assert args.vae is not None, "vae checkpoint is required"
logger.info(f"Loading VAE model from {args.vae}")
vae = load_vae(args.vae, args.vae_chunk_size, args.vae_spatial_tile_sample_min_size, device=device)
vae.to(device)
logger.info(f"Loading image encoder from {args.image_encoder}")
feature_extractor, image_encoder = load_image_encoders(args)
image_encoder.eval()
image_encoder.to(device)
logger.info(f"Cache generation mode: {'Vanilla Sampling' if args.f1 else 'Inference Emulation'}")
# encoding closure
def encode(batch: List[ItemInfo]):
encode_and_save_batch(
vae, feature_extractor, image_encoder, batch, args.f1, args.one_frame, args.one_frame_no_2x, args.one_frame_no_4x
)
# reuse core loop from cache_latents with no change
encode_datasets_framepack(datasets, encode, args)
def append_section_idx_to_latent_cache_path(latent_cache_path: str, section_idx: int) -> str:
tokens = latent_cache_path.split("_")
tokens[-3] = f"{tokens[-3]}-{section_idx:04d}" # append section index to "frame_pos-count"
return "_".join(tokens)
def encode_datasets_framepack(datasets: list[BaseDataset], encode: callable, args: argparse.Namespace):
num_workers = args.num_workers if args.num_workers is not None else max(1, os.cpu_count() - 1)
for i, dataset in enumerate(datasets):
logger.info(f"Encoding dataset [{i}]")
all_latent_cache_paths = []
for _, batch in tqdm(dataset.retrieve_latent_cache_batches(num_workers)):
batch: list[ItemInfo] = batch # type: ignore
# latent_cache_path is "{basename}_{w:04d}x{h:04d}_{self.architecture}.safetensors"
# For video dataset,we expand it to "{basename}_{section_idx:04d}_{w:04d}x{h:04d}_{self.architecture}.safetensors"
filtered_batch = []
for item in batch:
if item.frame_count is None:
# image dataset
all_latent_cache_paths.append(item.latent_cache_path)
all_existing = os.path.exists(item.latent_cache_path)
else:
latent_f = (item.frame_count - 1) // 4 + 1
num_sections = max(1, math.floor((latent_f - 1) / item.fp_latent_window_size)) # min 1 section
all_existing = True
for sec in range(num_sections):
p = append_section_idx_to_latent_cache_path(item.latent_cache_path, sec)
all_latent_cache_paths.append(p)
all_existing = all_existing and os.path.exists(p)
if not all_existing: # if any section cache is missing
filtered_batch.append(item)
if args.skip_existing:
if len(filtered_batch) == 0: # all sections exist
logger.info(f"All sections exist for {batch[0].item_key}, skipping")
continue
batch = filtered_batch # update batch to only missing sections
bs = args.batch_size if args.batch_size is not None else len(batch)
for i in range(0, len(batch), bs):
encode(batch[i : i + bs])
# normalize paths
all_latent_cache_paths = [os.path.normpath(p) for p in all_latent_cache_paths]
all_latent_cache_paths = set(all_latent_cache_paths)
# remove old cache files not in the dataset
all_cache_files = dataset.get_all_latent_cache_files()
for cache_file in all_cache_files:
if os.path.normpath(cache_file) not in all_latent_cache_paths:
if args.keep_cache:
logger.info(f"Keep cache file not in the dataset: {cache_file}")
else:
os.remove(cache_file)
logger.info(f"Removed old cache file: {cache_file}")
if __name__ == "__main__":
parser = cache_latents.setup_parser_common()
parser = cache_latents.hv_setup_parser(parser) # VAE
parser = framepack_setup_parser(parser)
args = parser.parse_args()
if args.vae_dtype is not None:
raise ValueError("VAE dtype is not supported in FramePack")
# if args.batch_size != 1:
# args.batch_size = 1
# logger.info("Batch size is set to 1 for FramePack.")
main(args)