Wan 2.1 I2V 720p LoRA Ultra Fast — wavespeed-ai/wan-2.1/i2v-720p-lora-ultra-fast
Wan 2.1 I2V 720p LoRA Ultra Fast is a high-speed image-to-video model that turns a single reference image into a short, coherent clip guided by your prompt. It supports up to 3 LoRAs per run, making it great for fast style exploration, character looks, and branded aesthetics while keeping generation time low.
Key capabilities
- SOTA Performance: Wan2.1 consistently outperforms existing open-source models and state-of-the-art commercial solutions across multiple benchmarks.
- Multiple Tasks: Wan2.1 excels in Text-to-Video, Image-to-Video, Video Editing, Text-to-Image, and Video-to-Audio, advancing the field of video generation.
- Visual Text Generation: Wan2.1 is the first video model capable of generating both Chinese and English text, featuring robust text generation that enhances its practical applications.
- Powerful Video VAE: Wan-VAE delivers exceptional efficiency and performance, encoding and decoding 1080P videos of any length while preserving temporal information, making it an ideal foundation for video and image generation.
Use cases
- Bring key art to life: animate posters, portraits, product shots into short clips
- Style locking for content pipelines: apply one or more LoRAs for consistent aesthetics
- Character look development: combine identity/style LoRAs for repeatable outputs
- Social media loops: quick 5–10s clips from a single still image
- Marketing variations: same composition, different mood, lighting, wardrobe, brand style
Pricing
| Resolution | Duration | Price per run | Effective price per second |
|---|
| 720p | 5s | $0.225 | $0.045/s |
| 720p | 10s | $0.338 | $0.034/s |
Inputs
- image (required): reference image that anchors subject and composition
- prompt (required): what happens in the clip (action + camera + mood)
- loras (optional): up to 3 LoRA items (each with a path and a scale)
Parameters
- duration: clip length (commonly 5s or 10s)
- num_inference_steps: more steps can improve motion coherence and detail
- guidance_scale: higher values follow the prompt more strongly
- strength: how strongly the model follows the input image vs. deviating into new variations
- negative_prompt: describe what to avoid (blur, artifacts, jitter, low quality)
- flow_shift: adjust motion behavior (useful for smoother or more dynamic movement)
- seed: set for reproducible results (-1 for random)
- loras[].path: LoRA identifier or a public safetensors URL
- loras[].scale: LoRA weight (tune per LoRA; start around 0.8–1.0)
Prompting guide (I2V + LoRA)
Write prompts like a director’s brief:
- Subject: who/what is on screen
- Action: what changes over time (gesture, expression, environment)
- Camera: push-in, pull-back, pan, tilt, handheld vs. locked-off
- Mood/lighting: golden hour, neon rain, candlelight, fog, rim light
- Motion style: subtle, smooth, energetic, dramatic
LoRA stacking tip: keep the base prompt clean, and let LoRAs handle style/identity. If multiple LoRAs conflict, lower one LoRA scale rather than overloading the prompt.
Example prompts
- A stylish street cat wearing sunglasses holds a skateboard. The cat shifts its stance, tail sways, and the camera slowly pushes in. Cinematic lighting, crisp detail, smooth natural motion, 720p, 5 seconds.
- A fantasy portrait comes alive: soft wind moves hair and fabric, embers drift across the frame, the character slowly turns their head and smiles. Slow dolly-in, moody lighting, subtle fog, smooth motion.