关于
The ltx2 skill generates ~5-second video clips using the LTX-2.3 22B model for text-to-video and image-to-video animation tasks. It's designed for creating b-roll, animated backgrounds, and motion content, running on Modal with A100-80GB GPUs. Developers can use it via a CLI tool with options for custom resolution, duration, and input methods.
快速安装
Claude Code
推荐npx skills add digitalsamba/claude-code-video-toolkit -a claude-code/plugin add https://github.com/digitalsamba/claude-code-video-toolkitgit clone https://github.com/digitalsamba/claude-code-video-toolkit.git ~/.claude/skills/ltx2在 Claude Code 中复制并粘贴此命令以安装该技能
技能文档
LTX-2.3 Video Generation
Generate ~5 second video clips from text prompts or images using the LTX-2.3 22B DiT model.
Runs on Modal (A100-80GB). Requires MODAL_LTX2_ENDPOINT_URL in .env.
Quick Reference
# Text-to-video
python3 tools/ltx2.py --prompt "A sunset over the ocean, golden light on waves, cinematic" --output sunset.mp4
# Image-to-video (animate a still image)
python3 tools/ltx2.py --prompt "Gentle camera drift, soft ambient motion" --input photo.jpg --output animated.mp4
# Custom resolution and duration
python3 tools/ltx2.py --prompt "..." --width 1024 --height 576 --num-frames 161 --output wide.mp4
# Fast mode (fewer steps, quicker)
python3 tools/ltx2.py --prompt "..." --quality fast --output quick.mp4
# Reproducible output
python3 tools/ltx2.py --prompt "..." --seed 42 --output reproducible.mp4
Parameters
| Parameter | Default | Description |
|---|---|---|
--prompt | (required) | Text description of the video |
--input | - | Input image for image-to-video |
--width | 768 | Video width (divisible by 64) |
--height | 512 | Video height (divisible by 64) |
--num-frames | 121 | Frame count, must satisfy (n-1) % 8 == 0 |
--fps | 24 | Frames per second |
--quality | standard | standard (30 steps) or fast (15 steps) |
--steps | 30 | Override inference steps directly |
--seed | random | Seed for reproducibility |
--output | auto | Output file path |
--negative-prompt | sensible default | What to avoid |
--lora | none | Style LoRA preset. Currently: crt-terminal. |
Style LoRAs
Style LoRAs bias the output toward a specific visual aesthetic. They're baked into the Modal image and selected per-request; switching LoRAs forces a pipeline rebuild (~60s one-time cost per container lifetime per switch).
crt-terminal — CRT / pixel-art terminals
Base: LTX-2.3 22B, trained by @lovis93 (Apache 2.0).
# Trigger word is auto-prepended — write the prompt normally
python3 tools/ltx2.py --lora crt-terminal \
--prompt "a terminal typing out \"\\$ claude --continue\" character by character in glowing green pixel font, scanlines, phosphor glow, low choppy frame rate, hacker mood" \
--output crt_claude.mp4
What the preset changes:
- Prepends
crtanim,to the prompt (the LoRA's trigger word) - Defaults to 1024×1024, 121 frames (the ratio it was trained on)
- Relaxes the default negative prompt so on-screen text isn't filtered out
Prompt pattern: <CRT aesthetic> → <color palette> → <animation style> → <subject> → <literal text in quotes> → <mood>. Keep on-screen text to 1–3 words — the model can't render long strings reliably. The LoRA prefers static framing; ask for camera moves explicitly if you want them.
Valid Frame Counts
(n - 1) % 8 == 0: 25 (~1s), 49 (~2s), 73 (~3s), 97 (~4s), 121 (~5s default), 161 (~6.7s), 193 (~8s max practical).
Common Resolutions
| Resolution | Ratio | Notes |
|---|---|---|
| 768x512 | 3:2 | Default, good balance |
| 512x512 | 1:1 | Square, fastest |
| 1024x576 | 16:9 | Widescreen |
| 576x1024 | 9:16 | Portrait/vertical |
Prompting Guide
LTX-2 responds well to cinematographic descriptions. Layer these dimensions:
- Camera: "Slow dolly forward", "Aerial drone shot", "Tracking shot", "Static wide angle"
- Lighting: "Golden hour", "Cinematic lighting", "Neon-lit", "Soft diffused light"
- Motion: "Timelapse of...", "Slow motion", "Gentle camera drift", "Gradually transitions"
- Style: "Shot on 35mm film", "Documentary style", "Clean minimal aesthetic"
- Negative: Always implicitly avoids "worst quality, blurry, jittery, watermark, text, logo"
Keep prompts under 200 words. Be specific about the scene.
Good Prompts
# Atmospheric b-roll
"Aerial drone shot slowly flying over turquoise ocean waves breaking on white sand, golden hour sunlight, cinematic"
# Product/tech scene
"Close-up of hands typing on a mechanical keyboard, shallow depth of field, soft desk lamp lighting, cozy atmosphere"
# Abstract background
"Dark moody abstract background with flowing blue light streaks, subtle geometric grid, bokeh particles floating, cinematic tech atmosphere"
# Animate a portrait
"Professional headshot, subtle natural head movement, confident warm expression, studio lighting, shallow depth of field"
# Animate a slide/screenshot
"Gentle subtle particle effects floating across a presentation slide, soft ambient light shifts, very slight camera drift"
Bad Prompts
# Too vague
"A cool video"
# Too many competing ideas
"A cat riding a skateboard while juggling fire on the moon during a thunderstorm"
# Describing text/UI (model can't render text reliably)
"A website showing the text 'Welcome to our platform'"
Video Production Use Cases
B-Roll Clips
Generate atmospheric 5s shots for cutaways between narrated scenes:
python3 tools/ltx2.py --prompt "Futuristic holographic interface, glowing data visualizations, clean workspace, cinematic" --output broll_tech.mp4
python3 tools/ltx2.py --prompt "Aerial view of European city at golden hour, modern architecture" --output broll_europe.mp4
Animated Slide Backgrounds
Feed a slide screenshot and add subtle motion:
python3 tools/ltx2.py --prompt "Gentle particle effects, soft ambient light shifts, very slight camera drift" --input slide.png --output animated_slide.mp4
Animated Portraits
Bring still headshots to life:
python3 tools/ltx2.py --prompt "Subtle natural head movement, warm expression, professional lighting" --input headshot.png --output animated_portrait.mp4
Stylized Character Cameo (SadTalker Alternative)
For non-realistic faces — fantasy characters, masked figures, heavy beards, helmets, illustrations — SadTalker often produces uncanny or broken lip sync because it's trained on photoreal humans. LTX-2 image-to-video is frequently a better choice when lip-sync precision isn't critical (the viewer's brain fills in the gap as long as something is moving). Prompt for motion + atmosphere, not phonemes:
python3 tools/ltx2.py \
--input character_portrait.png \
--prompt "Ancient warrior speaks slowly with gravitas, beard shifts subtly, glowing aura pulses, embers drift past, slow head movement, cinematic close-up, mystical atmosphere" \
--width 768 --height 768 \
--output character_speaking.mp4
When LTX-2 wins over SadTalker:
- Stylized / illustrated / fantasy characters
- Heavy facial hair or accessories obscuring the mouth
- Masked or helmeted figures
- Short cameo lines where atmosphere matters more than precision
- Dramatic VO rather than dialogue
When SadTalker still wins:
- Photoreal human presenters
- Full sentences where mouth shape needs to match phonemes
- Tutorials / talking-head explainers where the viewer is effectively reading lips
Branded Intro/Outro
Generate abstract motion backgrounds for title cards:
python3 tools/ltx2.py --prompt "Dark moody background with flowing blue and coral light streaks, bokeh particles, cinematic tech atmosphere, no text" --output intro_bg.mp4
Combining with Other Tools
LTX-2 generates raw clips. Combine with the rest of the toolkit:
| Workflow | Tools |
|---|---|
| Generate clip → upscale | ltx2.py → upscale.py |
| Generate clip → add to Remotion | ltx2.py → use as <OffthreadVideo> in composition |
| Generate image → animate | flux2.py → ltx2.py --input |
| Generate clip → extract audio | ltx2.py → ffmpeg -i clip.mp4 -vn audio.wav |
| Generate clip → add voiceover | ltx2.py → mix with qwen3_tts.py output |
Technical Details
- Model: LTX-2.3 22B DiT (Lightricks), bf16
- GPU: A100-80GB on Modal (~$4.68/hr)
- Inference: ~2.5 min per clip (768x512, 121 frames, 30 steps)
- Cost: ~$0.20-0.25 per 5s clip
- Cold start: ~60-90s (loading ~55GB weights)
- Output: H.264 MP4 with synchronized ambient audio (24fps)
- Max duration: ~8s (193 frames) per clip
Known Limitations
- Training data artifacts: ~30% of generations may have unwanted logos/text from training data. Re-run with different
--seed. - Text rendering: Cannot reliably generate readable text in video. Use Remotion overlays instead.
- Max duration: ~8s per clip. Longer content needs stitching.
- Audio: Generated audio is ambient/environmental only. Use voiceover/music tools for speech and music.
- License: Community License — free under $10M revenue, commercial license needed above that.
Setup
# 1. Create Modal secret for HuggingFace (one-time)
modal secret create huggingface-token HF_TOKEN=hf_your_token
# 2. Deploy (downloads ~55GB of weights, takes ~10 min)
modal deploy docker/modal-ltx2/app.py
# 3. Save endpoint URL to .env
echo "MODAL_LTX2_ENDPOINT_URL=https://yourname--video-toolkit-ltx2-ltx2-generate.modal.run" >> .env
# 4. Test
python3 tools/ltx2.py --prompt "A candle flickering on a dark table, cinematic" --output test.mp4
Important: HuggingFace token needs read-access scope. Accept the Gemma 3 license before deploying. Unauthenticated downloads are severely rate-limited.
GitHub 仓库
Frequently asked questions
What is the ltx2 skill?
ltx2 is a Claude Skill by digitalsamba. Skills package instructions and resources that Claude loads on demand, so Claude can perform ltx2-related tasks without extra prompting.
How do I install ltx2?
Use the install commands on this page: add ltx2 to Claude Code as a plugin, or clone its repository into your skills directory, then restart Claude so it picks up the skill.
What category does ltx2 belong to?
ltx2 is in the Meta category, tagged ai.
Is ltx2 free to use?
Yes. ltx2 is listed on AIMCP and free to install. It runs inside Claude, so no separate service account is required to use the skill itself.
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