Files
Kohya-ss-sd-scripts/library/strategy_anima.py
Kohya S. 34e7138b6a Add/modify some implementation for anima (#2261)
* fix: update extend-exclude list in _typos.toml to include configs

* fix: exclude anima tests from pytest

* feat: add entry for 'temperal' in extend-words section of _typos.toml for Qwen-Image VAE

* fix: update default value for --discrete_flow_shift in anima training guide

* feat: add Qwen-Image VAE

* feat: simplify encode_tokens

* feat: use unified attention module, add wrapper for state dict compatibility

* feat: loading with dynamic fp8 optimization and LoRA support

* feat: add anima minimal inference script (WIP)

* format: format

* feat: simplify target module selection by regular expression patterns

* feat: kept caption dropout rate in cache and handle in training script

* feat: update train_llm_adapter and verbose default values to string type

* fix: use strategy instead of using tokenizers directly

* feat: add dtype property and all-zero mask handling in cross-attention in LLMAdapterTransformerBlock

* feat: support 5d tensor in get_noisy_model_input_and_timesteps

* feat: update loss calculation to support 5d tensor

* fix: update argument names in anima_train_utils to align with other archtectures

* feat: simplify Anima training script and update empty caption handling

* feat: support LoRA format without `net.` prefix

* fix: update to work fp8_scaled option

* feat: add regex-based learning rates and dimensions handling in create_network

* fix: improve regex matching for module selection and learning rates in LoRANetwork

* fix: update logging message for regex match in LoRANetwork

* fix: keep latents 4D except DiT call

* feat: enhance block swap functionality for inference and training in Anima model

* feat: refactor Anima training script

* feat: optimize VAE processing by adjusting tensor dimensions and data types

* fix: wait all block trasfer before siwtching offloader mode

* feat: update Anima training guide with new argument specifications and regex-based module selection. Thank you Claude!

* feat: support LORA for Qwen3

* feat: update Anima SAI model spec metadata handling

* fix: remove unused code

* feat: split CFG processing in do_sample function to reduce memory usage

* feat: add VAE chunking and caching options to reduce memory usage

* feat: optimize RMSNorm forward method and remove unused torch_attention_op

* Update library/strategy_anima.py

Use torch.all instead of all.

Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>

* Update library/safetensors_utils.py

Fix duplicated new_key for concat_hook.

Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>

* Update anima_minimal_inference.py

Remove unused code.

Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>

* Update anima_train.py

Remove unused import.

Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>

* Update library/anima_train_utils.py

Remove unused import.

Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>

* fix: review with Copilot

* feat: add script to convert LoRA format to ComfyUI compatible format (WIP, not tested yet)

* feat: add process_escape function to handle escape sequences in prompts

* feat: enhance LoRA weight handling in model loading and add text encoder loading function

* feat: improve ComfyUI conversion script with prefix constants and module name adjustments

* feat: update caption dropout documentation to clarify cache regeneration requirement

* feat: add clarification on learning rate adjustments

* feat: add note on PyTorch version requirement to prevent NaN loss

---------

Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>
2026-02-13 08:15:06 +09:00

303 lines
12 KiB
Python

# Anima Strategy Classes
import os
import random
from typing import Any, List, Optional, Tuple, Union
import numpy as np
import torch
from library import anima_utils, train_util
from library.strategy_base import LatentsCachingStrategy, TextEncodingStrategy, TokenizeStrategy, TextEncoderOutputsCachingStrategy
from library import qwen_image_autoencoder_kl
from library.utils import setup_logging
setup_logging()
import logging
logger = logging.getLogger(__name__)
class AnimaTokenizeStrategy(TokenizeStrategy):
"""Tokenize strategy for Anima: dual tokenization with Qwen3 + T5.
Qwen3 tokens are used for the text encoder.
T5 tokens are used as target input IDs for the LLM Adapter (NOT encoded by T5).
Can be initialized with either pre-loaded tokenizer objects or paths to load from.
"""
def __init__(
self,
qwen3_tokenizer=None,
t5_tokenizer=None,
qwen3_max_length: int = 512,
t5_max_length: int = 512,
qwen3_path: Optional[str] = None,
t5_tokenizer_path: Optional[str] = None,
) -> None:
# Load tokenizers from paths if not provided directly
if qwen3_tokenizer is None:
if qwen3_path is None:
raise ValueError("Either qwen3_tokenizer or qwen3_path must be provided")
qwen3_tokenizer = anima_utils.load_qwen3_tokenizer(qwen3_path)
if t5_tokenizer is None:
t5_tokenizer = anima_utils.load_t5_tokenizer(t5_tokenizer_path)
self.qwen3_tokenizer = qwen3_tokenizer
self.qwen3_max_length = qwen3_max_length
self.t5_tokenizer = t5_tokenizer
self.t5_max_length = t5_max_length
def tokenize(self, text: Union[str, List[str]]) -> List[torch.Tensor]:
text = [text] if isinstance(text, str) else text
# Tokenize with Qwen3
qwen3_encoding = self.qwen3_tokenizer.batch_encode_plus(
text, return_tensors="pt", truncation=True, padding="max_length", max_length=self.qwen3_max_length
)
qwen3_input_ids = qwen3_encoding["input_ids"]
qwen3_attn_mask = qwen3_encoding["attention_mask"]
# Tokenize with T5 (for LLM Adapter target tokens)
t5_encoding = self.t5_tokenizer.batch_encode_plus(
text, return_tensors="pt", truncation=True, padding="max_length", max_length=self.t5_max_length
)
t5_input_ids = t5_encoding["input_ids"]
t5_attn_mask = t5_encoding["attention_mask"]
return [qwen3_input_ids, qwen3_attn_mask, t5_input_ids, t5_attn_mask]
class AnimaTextEncodingStrategy(TextEncodingStrategy):
"""Text encoding strategy for Anima.
Encodes Qwen3 tokens through the Qwen3 text encoder to get hidden states.
T5 tokens are passed through unchanged (only used by LLM Adapter).
"""
def __init__(self) -> None:
super().__init__()
def encode_tokens(
self, tokenize_strategy: TokenizeStrategy, models: List[Any], tokens: List[torch.Tensor]
) -> List[torch.Tensor]:
"""Encode Qwen3 tokens and return embeddings + T5 token IDs.
Args:
models: [qwen3_text_encoder]
tokens: [qwen3_input_ids, qwen3_attn_mask, t5_input_ids, t5_attn_mask]
Returns:
[prompt_embeds, attn_mask, t5_input_ids, t5_attn_mask]
"""
# Do not handle dropout here; handled dataset-side or in drop_cached_text_encoder_outputs()
qwen3_text_encoder = models[0]
qwen3_input_ids, qwen3_attn_mask, t5_input_ids, t5_attn_mask = tokens
encoder_device = qwen3_text_encoder.device
qwen3_input_ids = qwen3_input_ids.to(encoder_device)
qwen3_attn_mask = qwen3_attn_mask.to(encoder_device)
outputs = qwen3_text_encoder(input_ids=qwen3_input_ids, attention_mask=qwen3_attn_mask)
prompt_embeds = outputs.last_hidden_state
prompt_embeds[~qwen3_attn_mask.bool()] = 0
return [prompt_embeds, qwen3_attn_mask, t5_input_ids, t5_attn_mask]
def drop_cached_text_encoder_outputs(
self,
prompt_embeds: torch.Tensor,
attn_mask: torch.Tensor,
t5_input_ids: torch.Tensor,
t5_attn_mask: torch.Tensor,
caption_dropout_rates: Optional[torch.Tensor] = None,
) -> List[torch.Tensor]:
"""Apply dropout to cached text encoder outputs.
Called during training when using cached outputs.
Replaces dropped items with pre-cached unconditional embeddings (from encoding "")
to match diffusion-pipe-main behavior.
"""
if caption_dropout_rates is None or torch.all(caption_dropout_rates == 0.0).item():
return [prompt_embeds, attn_mask, t5_input_ids, t5_attn_mask]
# Clone to avoid in-place modification of cached tensors
prompt_embeds = prompt_embeds.clone()
if attn_mask is not None:
attn_mask = attn_mask.clone()
if t5_input_ids is not None:
t5_input_ids = t5_input_ids.clone()
if t5_attn_mask is not None:
t5_attn_mask = t5_attn_mask.clone()
for i in range(prompt_embeds.shape[0]):
if random.random() < caption_dropout_rates[i].item():
# Use pre-cached unconditional embeddings
prompt_embeds[i] = 0
if attn_mask is not None:
attn_mask[i] = 0
if t5_input_ids is not None:
t5_input_ids[i, 0] = 1 # Set to </s> token ID
t5_input_ids[i, 1:] = 0
if t5_attn_mask is not None:
t5_attn_mask[i, 0] = 1
t5_attn_mask[i, 1:] = 0
return [prompt_embeds, attn_mask, t5_input_ids, t5_attn_mask]
class AnimaTextEncoderOutputsCachingStrategy(TextEncoderOutputsCachingStrategy):
"""Caching strategy for Anima text encoder outputs.
Caches: prompt_embeds (float), attn_mask (int), t5_input_ids (int), t5_attn_mask (int)
"""
ANIMA_TEXT_ENCODER_OUTPUTS_NPZ_SUFFIX = "_anima_te.npz"
def __init__(
self,
cache_to_disk: bool,
batch_size: int,
skip_disk_cache_validity_check: bool,
is_partial: bool = False,
) -> None:
super().__init__(cache_to_disk, batch_size, skip_disk_cache_validity_check, is_partial)
def get_outputs_npz_path(self, image_abs_path: str) -> str:
return os.path.splitext(image_abs_path)[0] + self.ANIMA_TEXT_ENCODER_OUTPUTS_NPZ_SUFFIX
def is_disk_cached_outputs_expected(self, npz_path: str) -> bool:
if not self.cache_to_disk:
return False
if not os.path.exists(npz_path):
return False
if self.skip_disk_cache_validity_check:
return True
try:
npz = np.load(npz_path)
if "prompt_embeds" not in npz:
return False
if "attn_mask" not in npz:
return False
if "t5_input_ids" not in npz:
return False
if "t5_attn_mask" not in npz:
return False
if "caption_dropout_rate" not in npz:
return False
except Exception as e:
logger.error(f"Error loading file: {npz_path}")
raise e
return True
def load_outputs_npz(self, npz_path: str) -> List[np.ndarray]:
data = np.load(npz_path)
prompt_embeds = data["prompt_embeds"]
attn_mask = data["attn_mask"]
t5_input_ids = data["t5_input_ids"]
t5_attn_mask = data["t5_attn_mask"]
caption_dropout_rate = data["caption_dropout_rate"]
return [prompt_embeds, attn_mask, t5_input_ids, t5_attn_mask, caption_dropout_rate]
def cache_batch_outputs(
self,
tokenize_strategy: TokenizeStrategy,
models: List[Any],
text_encoding_strategy: TextEncodingStrategy,
infos: List,
):
anima_text_encoding_strategy: AnimaTextEncodingStrategy = text_encoding_strategy
captions = [info.caption for info in infos]
tokens_and_masks = tokenize_strategy.tokenize(captions)
with torch.no_grad():
prompt_embeds, attn_mask, t5_input_ids, t5_attn_mask = anima_text_encoding_strategy.encode_tokens(
tokenize_strategy, models, tokens_and_masks
)
# Convert to numpy for caching
if prompt_embeds.dtype == torch.bfloat16:
prompt_embeds = prompt_embeds.float()
prompt_embeds = prompt_embeds.cpu().numpy()
attn_mask = attn_mask.cpu().numpy()
t5_input_ids = t5_input_ids.cpu().numpy().astype(np.int32)
t5_attn_mask = t5_attn_mask.cpu().numpy().astype(np.int32)
for i, info in enumerate(infos):
prompt_embeds_i = prompt_embeds[i]
attn_mask_i = attn_mask[i]
t5_input_ids_i = t5_input_ids[i]
t5_attn_mask_i = t5_attn_mask[i]
caption_dropout_rate = torch.tensor(info.caption_dropout_rate, dtype=torch.float32)
if self.cache_to_disk:
np.savez(
info.text_encoder_outputs_npz,
prompt_embeds=prompt_embeds_i,
attn_mask=attn_mask_i,
t5_input_ids=t5_input_ids_i,
t5_attn_mask=t5_attn_mask_i,
caption_dropout_rate=caption_dropout_rate,
)
else:
info.text_encoder_outputs = (prompt_embeds_i, attn_mask_i, t5_input_ids_i, t5_attn_mask_i, caption_dropout_rate)
class AnimaLatentsCachingStrategy(LatentsCachingStrategy):
"""Latent caching strategy for Anima using WanVAE.
WanVAE produces 16-channel latents with spatial downscale 8x.
Latent shape for images: (B, 16, 1, H/8, W/8)
"""
ANIMA_LATENTS_NPZ_SUFFIX = "_anima.npz"
def __init__(self, cache_to_disk: bool, batch_size: int, skip_disk_cache_validity_check: bool) -> None:
super().__init__(cache_to_disk, batch_size, skip_disk_cache_validity_check)
@property
def cache_suffix(self) -> str:
return self.ANIMA_LATENTS_NPZ_SUFFIX
def get_latents_npz_path(self, absolute_path: str, image_size: Tuple[int, int]) -> str:
return os.path.splitext(absolute_path)[0] + f"_{image_size[0]:04d}x{image_size[1]:04d}" + self.ANIMA_LATENTS_NPZ_SUFFIX
def is_disk_cached_latents_expected(self, bucket_reso: Tuple[int, int], npz_path: str, flip_aug: bool, alpha_mask: bool):
return self._default_is_disk_cached_latents_expected(8, bucket_reso, npz_path, flip_aug, alpha_mask, multi_resolution=True)
def load_latents_from_disk(
self, npz_path: str, bucket_reso: Tuple[int, int]
) -> Tuple[Optional[np.ndarray], Optional[List[int]], Optional[List[int]], Optional[np.ndarray], Optional[np.ndarray]]:
return self._default_load_latents_from_disk(8, npz_path, bucket_reso)
def cache_batch_latents(self, vae, image_infos: List, flip_aug: bool, alpha_mask: bool, random_crop: bool):
"""Cache batch of latents using Qwen Image VAE.
vae is expected to be the Qwen Image VAE (AutoencoderKLQwenImage).
The encoding function handles the mean/std normalization.
"""
vae: qwen_image_autoencoder_kl.AutoencoderKLQwenImage = vae
vae_device = vae.device
vae_dtype = vae.dtype
def encode_by_vae(img_tensor):
"""Encode image tensor to latents.
img_tensor: (B, C, H, W) in [-1, 1] range (already normalized by IMAGE_TRANSFORMS)
Qwen Image VAE accepts inputs in (B, C, H, W) or (B, C, 1, H, W) shape.
Returns latents in (B, 16, 1, H/8, W/8) shape on CPU.
"""
latents = vae.encode_pixels_to_latents(img_tensor) # Keep 4D for input/output
return latents.to("cpu")
self._default_cache_batch_latents(
encode_by_vae, vae_device, vae_dtype, image_infos, flip_aug, alpha_mask, random_crop, multi_resolution=True
)
if not train_util.HIGH_VRAM:
train_util.clean_memory_on_device(vae_device)