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import subprocess
import sys
# Disable torch.compile / dynamo before any torch import
os.environ["TORCH_COMPILE_DISABLE"] = "1"
os.environ["TORCHDYNAMO_DISABLE"] = "1"
# Install xformers for memory-efficient attention
subprocess.run([sys.executable, "-m", "pip", "install", "xformers==0.0.32.post2", "--no-build-isolation"], check=False)
# Clone LTX-2 repo and install packages
LTX_REPO_URL = "https://github.com/Lightricks/LTX-2.git"
LTX_REPO_DIR = os.path.join(os.path.dirname(os.path.abspath(__file__)), "LTX-2")
if not os.path.exists(LTX_REPO_DIR):
print(f"Cloning {LTX_REPO_URL}...")
subprocess.run(["git", "clone", "--depth", "1", LTX_REPO_URL, LTX_REPO_DIR], check=True)
print("Installing ltx-core and ltx-pipelines from cloned repo...")
subprocess.run(
[sys.executable, "-m", "pip", "install", "--force-reinstall", "--no-deps", "-e",
os.path.join(LTX_REPO_DIR, "packages", "ltx-core"),
"-e", os.path.join(LTX_REPO_DIR, "packages", "ltx-pipelines")],
check=True,
)
sys.path.insert(0, os.path.join(LTX_REPO_DIR, "packages", "ltx-pipelines", "src"))
sys.path.insert(0, os.path.join(LTX_REPO_DIR, "packages", "ltx-core", "src"))
import logging
import random
import tempfile
from pathlib import Path
import torch
torch._dynamo.config.suppress_errors = True
torch._dynamo.config.disable = True
import spaces
import gradio as gr
import numpy as np
from huggingface_hub import hf_hub_download, snapshot_download
from ltx_core.components.diffusion_steps import EulerDiffusionStep
from ltx_core.components.noisers import GaussianNoiser
from ltx_core.model.audio_vae import encode_audio as vae_encode_audio
from ltx_core.model.upsampler import upsample_video
from ltx_core.model.video_vae import TilingConfig, get_video_chunks_number, decode_video as vae_decode_video
# >>> ADD these imports (place immediately after your video_vae import)
from ltx_core.loader import LoraPathStrengthAndSDOps, LTXV_LORA_COMFY_RENAMING_MAP
from ltx_core.quantization import QuantizationPolicy
from ltx_core.types import Audio, AudioLatentShape, VideoPixelShape
from ltx_pipelines.distilled import DistilledPipeline
from ltx_pipelines.utils import euler_denoising_loop
from ltx_pipelines.utils.args import ImageConditioningInput
from ltx_pipelines.utils.constants import DISTILLED_SIGMA_VALUES, STAGE_2_DISTILLED_SIGMA_VALUES
from ltx_pipelines.utils.helpers import (
cleanup_memory,
combined_image_conditionings,
denoise_video_only,
encode_prompts,
simple_denoising_func,
)
from ltx_pipelines.utils.media_io import decode_audio_from_file, encode_video
# Force-patch xformers attention into the LTX attention module.
from ltx_core.model.transformer import attention as _attn_mod
print(f"[ATTN] Before patch: memory_efficient_attention={_attn_mod.memory_efficient_attention}")
try:
from xformers.ops import memory_efficient_attention as _mea
_attn_mod.memory_efficient_attention = _mea
print(f"[ATTN] After patch: memory_efficient_attention={_attn_mod.memory_efficient_attention}")
except Exception as e:
print(f"[ATTN] xformers patch FAILED: {type(e).__name__}: {e}")
logging.getLogger().setLevel(logging.INFO)
MAX_SEED = np.iinfo(np.int32).max
DEFAULT_PROMPT = (
"An astronaut hatches from a fragile egg on the surface of the Moon, "
"the shell cracking and peeling apart in gentle low-gravity motion. "
"Fine lunar dust lifts and drifts outward with each movement, floating "
"in slow arcs before settling back onto the ground."
)
DEFAULT_FRAME_RATE = 24.0
# Resolution presets: (width, height)
RESOLUTIONS = {
"high": {"16:9": (1536, 1024), "9:16": (1024, 1536), "1:1": (1024, 1024)},
"low": {"16:9": (768, 512), "9:16": (512, 768), "1:1": (768, 768)},
}
class LTX23DistilledA2VPipeline(DistilledPipeline):
"""DistilledPipeline with optional audio conditioning."""
def __call__(
self,
prompt: str,
seed: int,
height: int,
width: int,
num_frames: int,
frame_rate: float,
images: list[ImageConditioningInput],
audio_path: str | None = None,
tiling_config: TilingConfig | None = None,
enhance_prompt: bool = False,
):
# Standard path when no audio input is provided.
print(prompt)
if audio_path is None:
return super().__call__(
prompt=prompt,
seed=seed,
height=height,
width=width,
num_frames=num_frames,
frame_rate=frame_rate,
images=images,
tiling_config=tiling_config,
enhance_prompt=enhance_prompt,
)
generator = torch.Generator(device=self.device).manual_seed(seed)
noiser = GaussianNoiser(generator=generator)
stepper = EulerDiffusionStep()
dtype = torch.bfloat16
(ctx_p,) = encode_prompts(
[prompt],
self.model_ledger,
enhance_first_prompt=enhance_prompt,
enhance_prompt_image=images[0].path if len(images) > 0 else None,
)
video_context, audio_context = ctx_p.video_encoding, ctx_p.audio_encoding
video_duration = num_frames / frame_rate
decoded_audio = decode_audio_from_file(audio_path, self.device, 0.0, video_duration)
if decoded_audio is None:
raise ValueError(f"Could not extract audio stream from {audio_path}")
encoded_audio_latent = vae_encode_audio(decoded_audio, self.model_ledger.audio_encoder())
audio_shape = AudioLatentShape.from_duration(batch=1, duration=video_duration, channels=8, mel_bins=16)
expected_frames = audio_shape.frames
actual_frames = encoded_audio_latent.shape[2]
if actual_frames > expected_frames:
encoded_audio_latent = encoded_audio_latent[:, :, :expected_frames, :]
elif actual_frames < expected_frames:
pad = torch.zeros(
encoded_audio_latent.shape[0],
encoded_audio_latent.shape[1],
expected_frames - actual_frames,
encoded_audio_latent.shape[3],
device=encoded_audio_latent.device,
dtype=encoded_audio_latent.dtype,
)
encoded_audio_latent = torch.cat([encoded_audio_latent, pad], dim=2)
video_encoder = self.model_ledger.video_encoder()
transformer = self.model_ledger.transformer()
stage_1_sigmas = torch.tensor(DISTILLED_SIGMA_VALUES, device=self.device)
def denoising_loop(sigmas, video_state, audio_state, stepper):
return euler_denoising_loop(
sigmas=sigmas,
video_state=video_state,
audio_state=audio_state,
stepper=stepper,
denoise_fn=simple_denoising_func(
video_context=video_context,
audio_context=audio_context,
transformer=transformer,
),
)
stage_1_output_shape = VideoPixelShape(
batch=1,
frames=num_frames,
width=width // 2,
height=height // 2,
fps=frame_rate,
)
stage_1_conditionings = combined_image_conditionings(
images=images,
height=stage_1_output_shape.height,
width=stage_1_output_shape.width,
video_encoder=video_encoder,
dtype=dtype,
device=self.device,
)
video_state = denoise_video_only(
output_shape=stage_1_output_shape,
conditionings=stage_1_conditionings,
noiser=noiser,
sigmas=stage_1_sigmas,
stepper=stepper,
denoising_loop_fn=denoising_loop,
components=self.pipeline_components,
dtype=dtype,
device=self.device,
initial_audio_latent=encoded_audio_latent,
)
torch.cuda.synchronize()
cleanup_memory()
upscaled_video_latent = upsample_video(
latent=video_state.latent[:1],
video_encoder=video_encoder,
upsampler=self.model_ledger.spatial_upsampler(),
)
stage_2_sigmas = torch.tensor(STAGE_2_DISTILLED_SIGMA_VALUES, device=self.device)
stage_2_output_shape = VideoPixelShape(batch=1, frames=num_frames, width=width, height=height, fps=frame_rate)
stage_2_conditionings = combined_image_conditionings(
images=images,
height=stage_2_output_shape.height,
width=stage_2_output_shape.width,
video_encoder=video_encoder,
dtype=dtype,
device=self.device,
)
video_state = denoise_video_only(
output_shape=stage_2_output_shape,
conditionings=stage_2_conditionings,
noiser=noiser,
sigmas=stage_2_sigmas,
stepper=stepper,
denoising_loop_fn=denoising_loop,
components=self.pipeline_components,
dtype=dtype,
device=self.device,
noise_scale=stage_2_sigmas[0],
initial_video_latent=upscaled_video_latent,
initial_audio_latent=encoded_audio_latent,
)
torch.cuda.synchronize()
del transformer
del video_encoder
cleanup_memory()
decoded_video = vae_decode_video(
video_state.latent,
self.model_ledger.video_decoder(),
tiling_config,
generator,
)
original_audio = Audio(
waveform=decoded_audio.waveform.squeeze(0),
sampling_rate=decoded_audio.sampling_rate,
)
return decoded_video, original_audio
# Model repos
LTX_MODEL_REPO = "Lightricks/LTX-2.3"
GEMMA_REPO ="rahul7star/gemma-3-12b-it-heretic"
# Download model checkpoints
print("=" * 80)
print("Downloading LTX-2.3 distilled model + Gemma...")
print("=" * 80)
checkpoint_path = hf_hub_download(repo_id=LTX_MODEL_REPO, filename="ltx-2.3-22b-distilled.safetensors")
spatial_upsampler_path = hf_hub_download(repo_id=LTX_MODEL_REPO, filename="ltx-2.3-spatial-upscaler-x2-1.0.safetensors")
gemma_root = snapshot_download(repo_id=GEMMA_REPO)
# >>> ADD: download and prepare LoRA descriptor
print("Downloading LoRA for this Space (dagloop5/LoRA:LoRA2.safetensors)...")
lora_path = hf_hub_download(repo_id="dagloop5/LoRA", filename="LoRA2.safetensors")
# Create a descriptor object that the LTX loader expects.
# initial strength is set to 1.0; we'll mutate `.strength` at runtime from the UI slider.
lora_descriptor = LoraPathStrengthAndSDOps(lora_path, 1.0, LTXV_LORA_COMFY_RENAMING_MAP)
print(f"LoRA: {lora_path}")
print(f"Checkpoint: {checkpoint_path}")
print(f"Spatial upsampler: {spatial_upsampler_path}")
print(f"Gemma root: {gemma_root}")
# Initialize pipeline WITH text encoder and optional audio support
pipeline = LTX23DistilledA2VPipeline(
distilled_checkpoint_path=checkpoint_path,
spatial_upsampler_path=spatial_upsampler_path,
gemma_root=gemma_root,
loras=[lora_descriptor],
quantization=QuantizationPolicy.fp8_cast(),
)
# Preload all models for ZeroGPU tensor packing.
# >>> REPLACE the "Preload all models" block with this one:
print("Preloading models (pinning decoders/encoders but leaving transformer dynamic)...")
ledger = pipeline.model_ledger
# NOTE: do NOT call ledger.transformer() here. We keep the transformer's construction dynamic
# so that changes to lora_descriptor.strength (made at runtime) are applied when the transformer
# is built. We DO preload other components that are safe to pin.
_video_encoder = ledger.video_encoder()
_video_decoder = ledger.video_decoder()
_audio_encoder = ledger.audio_encoder()
_audio_decoder = ledger.audio_decoder()
_vocoder = ledger.vocoder()
_spatial_upsampler = ledger.spatial_upsampler()
_text_encoder = ledger.text_encoder()
_embeddings_processor = ledger.gemma_embeddings_processor()
# Replace ledger methods to return the pinned objects for those components.
# Intentionally do NOT override ledger.transformer so transformer is built when needed.
ledger.video_encoder = lambda: _video_encoder
ledger.video_decoder = lambda: _video_decoder
ledger.audio_encoder = lambda: _audio_encoder
ledger.audio_decoder = lambda: _audio_decoder
ledger.vocoder = lambda: _vocoder
ledger.spatial_upsampler = lambda: _spatial_upsampler
ledger.text_encoder = lambda: _text_encoder
ledger.gemma_embeddings_processor = lambda: _embeddings_processor
print("Selected models pinned. Transformer remains dynamic to reflect runtime LoRA strength.")
print("Preload complete.")
print("=" * 80)
print("Pipeline ready!")
print("=" * 80)
def log_memory(tag: str):
if torch.cuda.is_available():
allocated = torch.cuda.memory_allocated() / 1024**3
peak = torch.cuda.max_memory_allocated() / 1024**3
free, total = torch.cuda.mem_get_info()
print(f"[VRAM {tag}] allocated={allocated:.2f}GB peak={peak:.2f}GB free={free / 1024**3:.2f}GB total={total / 1024**3:.2f}GB")
def detect_aspect_ratio(image) -> str:
if image is None:
return "16:9"
if hasattr(image, "size"):
w, h = image.size
elif hasattr(image, "shape"):
h, w = image.shape[:2]
else:
return "16:9"
ratio = w / h
candidates = {"16:9": 16 / 9, "9:16": 9 / 16, "1:1": 1.0}
return min(candidates, key=lambda k: abs(ratio - candidates[k]))
def on_image_upload(first_image, last_image, high_res):
ref_image = first_image if first_image is not None else last_image
aspect = detect_aspect_ratio(ref_image)
tier = "high" if high_res else "low"
w, h = RESOLUTIONS[tier][aspect]
return gr.update(value=w), gr.update(value=h)
def on_highres_toggle(first_image, last_image, high_res):
ref_image = first_image if first_image is not None else last_image
aspect = detect_aspect_ratio(ref_image)
tier = "high" if high_res else "low"
w, h = RESOLUTIONS[tier][aspect]
return gr.update(value=w), gr.update(value=h)
@spaces.GPU(duration=75)
@torch.inference_mode()
def generate_video(
first_image,
last_image,
input_audio,
prompt: str,
duration: float,
enhance_prompt: bool = True,
seed: int = 42,
randomize_seed: bool = True,
height: int = 1024,
width: int = 1536,
lora_strength: float = 1.0,
progress=gr.Progress(track_tqdm=True),
):
try:
global pipeline # <<< ADD THIS LINE HERE (VERY TOP of try block)
torch.cuda.reset_peak_memory_stats()
log_memory("start")
current_seed = random.randint(0, MAX_SEED) if randomize_seed else int(seed)
frame_rate = DEFAULT_FRAME_RATE
num_frames = int(duration * frame_rate) + 1
num_frames = ((num_frames - 1 + 7) // 8) * 8 + 1
print(f"Generating: {height}x{width}, {num_frames} frames ({duration}s), seed={current_seed}")
images = []
output_dir = Path("outputs")
output_dir.mkdir(exist_ok=True)
if first_image is not None:
temp_first_path = output_dir / f"temp_first_{current_seed}.jpg"
if hasattr(first_image, "save"):
first_image.save(temp_first_path)
else:
temp_first_path = Path(first_image)
images.append(ImageConditioningInput(path=str(temp_first_path), frame_idx=0, strength=1.0))
if last_image is not None:
temp_last_path = output_dir / f"temp_last_{current_seed}.jpg"
if hasattr(last_image, "save"):
last_image.save(temp_last_path)
else:
temp_last_path = Path(last_image)
images.append(ImageConditioningInput(path=str(temp_last_path), frame_idx=num_frames - 1, strength=1.0))
tiling_config = TilingConfig.default()
video_chunks_number = get_video_chunks_number(num_frames, tiling_config)
# >>> RUNTIME LoRA application (robust, multi-fallback)
# We cannot rely on mutating the original descriptor (some implementations are immutable),
# so create a fresh runtime descriptor and try multiple ways to install it.
runtime_strength = float(lora_strength)
replaced = False
# 1) Try simple approach: build a new LoraPathStrengthAndSDOps
runtime_lora = LoraPathStrengthAndSDOps(lora_path, runtime_strength, LTXV_LORA_COMFY_RENAMING_MAP)
print(f"[LoRA] attempting to apply runtime LoRA (strength={runtime_strength})")
# Try a few likely places to replace the descriptor used by the pipeline/ledger.
try:
# common attribute on pipeline
if hasattr(pipeline, "loras"):
try:
pipeline.loras = [runtime_lora]
replaced = True
print("[LoRA] replaced pipeline.loras")
except Exception as e:
print(f"[LoRA] pipeline.loras assignment failed: {e}")
except Exception:
pass
try:
# common attribute on the model ledger
if hasattr(pipeline, "model_ledger") and hasattr(pipeline.model_ledger, "loras"):
try:
pipeline.model_ledger.loras = [runtime_lora]
replaced = True
print("[LoRA] replaced pipeline.model_ledger.loras")
except Exception as e:
print(f"[LoRA] pipeline.model_ledger.loras assignment failed: {e}")
except Exception:
pass
try:
# some internals use a private _loras list
if hasattr(pipeline, "model_ledger") and hasattr(pipeline.model_ledger, "_loras"):
try:
pipeline.model_ledger._loras = [runtime_lora]
replaced = True
print("[LoRA] replaced pipeline.model_ledger._loras")
except Exception as e:
print(f"[LoRA] pipeline.model_ledger._loras assignment failed: {e}")
except Exception:
pass
# 2) If we succeeded replacing the descriptor in-place, clear transformer cache so it will rebuild
if replaced:
try:
if hasattr(pipeline.model_ledger, "_transformer"):
pipeline.model_ledger._transformer = None
# also clear potential caches named similar to 'transformer_cache' if present
if hasattr(pipeline.model_ledger, "transformer_cache"):
try:
pipeline.model_ledger.transformer_cache = {}
except Exception:
pass
print("[LoRA] in-place descriptor replacement done; transformer cache cleared")
except Exception as e:
print(f"[LoRA] replacement succeeded but cache clearing failed: {e}")
# 3) FINAL FALLBACK - if none of the in-place replacements worked, rebuild the pipeline
if not replaced:
print("[LoRA] in-place replacement FAILED; rebuilding pipeline with runtime LoRA (this is slow)")
try:
# Rebuild pipeline object with the new LoRA descriptor
# NOTE: this replaces the global `pipeline`. We must declare global to reassign it.
pipeline = LTX23DistilledA2VPipeline(
distilled_checkpoint_path=checkpoint_path,
spatial_upsampler_path=spatial_upsampler_path,
gemma_root=gemma_root,
loras=[runtime_lora],
quantization=QuantizationPolicy.fp8_cast(),
)
# After rebuilding, we *do not* re-run the original module-level preloads here,
# because re-pinning may be complex; the rebuilt pipeline will construct its
# own ledger as part of the first call. This is slower but reliable.
# Clear any transformer caches if they exist on the new ledger as well.
try:
if hasattr(pipeline.model_ledger, "_transformer"):
pipeline.model_ledger._transformer = None
except Exception:
pass
print("[LoRA] pipeline rebuilt with runtime LoRA")
except Exception as e:
print(f"[LoRA] pipeline rebuild FAILED: {e}")
# Force transformer rebuild so LoRA strength actually applies
try:
if hasattr(pipeline, "model_ledger"):
# Hard reset ALL known transformer references
if hasattr(pipeline.model_ledger, "_transformer"):
pipeline.model_ledger._transformer = None
# VERY IMPORTANT: also clear pipeline components cache if present
if hasattr(pipeline, "pipeline_components"):
try:
pipeline.pipeline_components = None
except Exception:
pass
# Force rebuild NOW (so it uses the new LoRA strength)
_ = pipeline.model_ledger.transformer()
print("[LoRA] transformer force-rebuilt with new strength")
except Exception as e:
print(f"[LoRA] transformer rebuild failed: {e}")
log_memory("before pipeline call")
video, audio = pipeline(
prompt=prompt,
seed=current_seed,
height=int(height),
width=int(width),
num_frames=num_frames,
frame_rate=frame_rate,
images=images,
audio_path=input_audio,
tiling_config=tiling_config,
enhance_prompt=enhance_prompt,
)
log_memory("after pipeline call")
output_path = tempfile.mktemp(suffix=".mp4")
encode_video(
video=video,
fps=frame_rate,
audio=audio,
output_path=output_path,
video_chunks_number=video_chunks_number,
)
log_memory("after encode_video")
return str(output_path), current_seed
except Exception as e:
import traceback
log_memory("on error")
print(f"Error: {str(e)}\n{traceback.format_exc()}")
return None, current_seed
with gr.Blocks(title="LTX-2.3 Heretic Distilled") as demo:
gr.Markdown("# LTX-2.3 F2LF:Heretic with Fast Audio-Video Generation with Frame Conditioning")
with gr.Row():
with gr.Column():
with gr.Row():
first_image = gr.Image(label="First Frame (Optional)", type="pil")
last_image = gr.Image(label="Last Frame (Optional)", type="pil")
input_audio = gr.Audio(label="Audio Input (Optional)", type="filepath")
prompt = gr.Textbox(
label="Prompt",
info="for best results - make it as elaborate as possible",
value="Make this image come alive with cinematic motion, smooth animation",
lines=3,
placeholder="Describe the motion and animation you want...",
)
duration = gr.Slider(label="Duration (seconds)", minimum=1.0, maximum=30.0, value=10.0, step=0.1)
generate_btn = gr.Button("Generate Video", variant="primary", size="lg")
with gr.Accordion("Advanced Settings", open=False):
seed = gr.Slider(label="Seed", minimum=0, maximum=MAX_SEED, value=10, step=1)
randomize_seed = gr.Checkbox(label="Randomize Seed", value=True)
with gr.Row():
width = gr.Number(label="Width", value=1536, precision=0)
height = gr.Number(label="Height", value=1024, precision=0)
with gr.Row():
enhance_prompt = gr.Checkbox(label="Enhance Prompt", value=False)
high_res = gr.Checkbox(label="High Resolution", value=True)
# >>> MOVE slider OUTSIDE the row
lora_strength = gr.Slider(
label="LoRA Strength",
info="Scale for the LoRA weights (0.0 = off). Set near 1.0 for full effect.",
minimum=0.0,
maximum=2.0,
value=1.0,
step=0.01,
)
with gr.Column():
output_video = gr.Video(label="Generated Video", autoplay=False)
gr.Examples(
examples=[
[
None,
"pinkknit.jpg",
None,
"The camera falls downward through darkness as if dropped into a tunnel. "
"As it slows, five friends wearing pink knitted hats and sunglasses lean "
"over and look down toward the camera with curious expressions. The lens "
"has a strong fisheye effect, creating a circular frame around them. They "
"crowd together closely, forming a symmetrical cluster while staring "
"directly into the lens.",
3.0,
False,
42,
True,
1024,
1024,
1.0,
],
],
inputs=[
first_image, last_image, input_audio, prompt, duration,
enhance_prompt, seed, randomize_seed, height, width, lora_strength
],
)
first_image.change(
fn=on_image_upload,
inputs=[first_image, last_image, high_res],
outputs=[width, height],
)
last_image.change(
fn=on_image_upload,
inputs=[first_image, last_image, high_res],
outputs=[width, height],
)
high_res.change(
fn=on_highres_toggle,
inputs=[first_image, last_image, high_res],
outputs=[width, height],
)
generate_btn.click(
fn=generate_video,
inputs=[
first_image, last_image, input_audio, prompt, duration, enhance_prompt,
seed, randomize_seed, height, width, lora_strength
],
outputs=[output_video, seed],
)
css = """
.fillable{max-width: 1200px !important}
"""
if __name__ == "__main__":
demo.launch(theme=gr.themes.Citrus(), css=css)
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