wan-t2v-video

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Build WAN 2.2 Text-to-Video workflows — dual hi-lo models, lightning LoRAs, VACE modules, and KSamplerAdvanced two-pass

artokun By artokun schedule Updated 2/17/2026

name: wan-t2v-video description: Build WAN 2.2 Text-to-Video workflows — dual hi-lo models, lightning LoRAs, VACE modules, and KSamplerAdvanced two-pass globs: - "**/*.json"

WAN 2.2 Text-to-Video (T2V) Workflows

Overview

WAN 2.2 T2V generates videos from text prompts using a 14B parameter MoE (Mixture of Experts) architecture split across two specialized models:

  • HighNoise model: Handles early denoising — establishes structure, motion, composition
  • LowNoise model: Handles late denoising — refines details, sharpens output

This dual-model technique is the same as FLF/I2V (see wan-flf-video skill) but without image conditioning nodes.

Key difference from I2V/FLF: T2V does NOT use CLIPVisionEncode, WanFirstLastFrameToVideo, or any image input. It uses EmptyHunyuanLatentVideo for latent initialization and text-only conditioning.

Models

UNET (Installed)

Model Loader Notes
Wan2_2-T2V-A14B_HIGH_fp8_e4m3fn_scaled_KJ.safetensors UNETLoader HighNoise expert, 14.3GB FP8
Wan2_2-T2V-A14B-LOW_fp8_e4m3fn_scaled_KJ.safetensors UNETLoader LowNoise expert, 14.3GB FP8

Text Encoder

Component Node Model Notes
CLIP (T5) CLIPLoader (type=wan) umt5_xxl_fp8_e4m3fn_scaled.safetensors UMT5-XXL fp8, in clip/

VAE

Component Node Model
VAE VAELoader wan_2.1_vae.safetensors

VACE Modules (Installed — For Advanced Control)

Model Size Notes
Wan2_2_Fun_VACE_module_A14B_HIGH_bf16.safetensors 5.8GB HighNoise VACE module
Wan2_2_Fun_VACE_module_A14B_LOW_bf16.safetensors 5.8GB LowNoise VACE module

VACE modules add reference image / pose / depth conditioning to T2V. See WanVideoWrapper section below.

Lightning LoRAs (Installed)

T2V Lightning v1.1 (Paired Hi/Lo)

LoRA Applies To Path
wan2.2_t2v_lightx2v_4steps_lora_v1.1_high_noise HighNoise UNET Unknown/no tags/
wan2.2_t2v_lightx2v_4steps_lora_v1.1_low_noise LowNoise UNET Unknown/no tags/

T2V Lightning Seko V2.0 (Alternative Paired)

LoRA Path
Wan2.2_HN_T2V_Lightning_4steps-lora-rank64-Seko_V2.0_HIGH Root loras/
Wan2.2_HN_T2V_Lightning_4steps-lora-rank64-Seko_V2.0_LOW Root loras/

T2V CFG-Step Distill (Higher Quality)

LoRA Path Notes
lightx2v_T2V_14B_cfg_step_distill_v2_lora_rank128_bf16 Root loras/ CFG+step distilled, use with more steps

Sampler Settings

Lightning (4-Step, Recommended for Speed)

Parameter Pass 1 (Hi) Pass 2 (Lo)
model Hi + Hi Lightning LoRA Lo + Lo Lightning LoRA
add_noise enable disable
steps 4 4
cfg 1.0 1.0
sampler_name euler euler
scheduler simple simple
start_at_step 0 2
end_at_step 2 4
return_with_leftover_noise enable disable

Standard (20-Step, Full Quality)

Parameter Pass 1 (Hi) Pass 2 (Lo)
model Hi + ModelSamplingSD3 (shift=8) Lo + ModelSamplingSD3 (shift=8)
add_noise enable disable
steps 20 20
cfg 3.5 3.5
sampler_name euler euler
scheduler simple simple
start_at_step 0 10
end_at_step 10 20
return_with_leftover_noise enable disable

ModelSamplingSD3

Required for WAN 2.2 flow matching. Apply to BOTH models:

{
  "class_type": "ModelSamplingSD3",
  "inputs": { "model": ["<unet>", 0], "shift": 8 }
}

T2V shift values:

  • Standard: shift=8 (good balance of motion and detail)
  • Lightning: shift=5 (lower shift for distilled models)
  • Range 6–9: Higher shift = more detail, lower shift = stronger motion

EmptyHunyuanLatentVideo

Creates the initial video latent for T2V (no image input):

{
  "class_type": "EmptyHunyuanLatentVideo",
  "inputs": {
    "width": 832,
    "height": 480,
    "length": 81,
    "batch_size": 1
  }
}

This replaces WanFirstLastFrameToVideo (which is for FLF/I2V only). The latent goes directly to KSamplerAdvanced Pass 1.

Negative Prompt

The tones are vibrant, overexposed, static, details are unclear, subtitles, style, work, painting, image, still, overall grayish, worst quality, low quality, JPEG compression artifacts, ugly, incomplete, extra fingers, poorly drawn hands, poorly drawn faces, deformed, disfigured, distorted limbs, merged fingers, motionless image, cluttered background, three legs, many people in the background, walking backwards

Pipeline Flow

UNETLoader (HIGH T2V) → ModelSamplingSD3 (shift) → LoraLoaderModelOnly (Hi Lightning) → MODEL_HI
UNETLoader (LOW T2V) → ModelSamplingSD3 (shift) → LoraLoaderModelOnly (Lo Lightning) → MODEL_LO
CLIPLoader (wan) → CLIP
  ├─ CLIPTextEncode (positive) → CONDITIONING
  └─ CLIPTextEncode (negative) → CONDITIONING
VAELoader → VAE

EmptyHunyuanLatentVideo (832x480, 81 frames) → LATENT

KSamplerAdvanced (Hi: MODEL_HI, steps 0-2, add_noise=enable, return_leftover=enable)
  → noisy LATENT
KSamplerAdvanced (Lo: MODEL_LO, steps 2-4, add_noise=disable, return_leftover=disable)
  → final LATENT

VAEDecode → IMAGE → VHS_VideoCombine → MP4

Complete Workflow: T2V Lightning (4-Step)

{
  "1": { "class_type": "UNETLoader", "inputs": { "unet_name": "Wan2_2-T2V-A14B_HIGH_fp8_e4m3fn_scaled_KJ.safetensors", "weight_dtype": "default" }, "_meta": { "title": "UNET HighNoise T2V" }},
  "2": { "class_type": "UNETLoader", "inputs": { "unet_name": "Wan2_2-T2V-A14B-LOW_fp8_e4m3fn_scaled_KJ.safetensors", "weight_dtype": "default" }, "_meta": { "title": "UNET LowNoise T2V" }},
  "3": { "class_type": "ModelSamplingSD3", "inputs": { "model": ["1", 0], "shift": 5 }, "_meta": { "title": "Hi Shift" }},
  "4": { "class_type": "ModelSamplingSD3", "inputs": { "model": ["2", 0], "shift": 5 }, "_meta": { "title": "Lo Shift" }},
  "5": { "class_type": "LoraLoaderModelOnly", "inputs": {
    "model": ["3", 0],
    "lora_name": "Unknown\\no tags\\wan2.2_t2v_lightx2v_4steps_lora_v1.1_high_noise.safetensors",
    "strength_model": 1.0
  }, "_meta": { "title": "Hi Lightning" }},
  "6": { "class_type": "LoraLoaderModelOnly", "inputs": {
    "model": ["4", 0],
    "lora_name": "Unknown\\no tags\\wan2.2_t2v_lightx2v_4steps_lora_v1.1_low_noise.safetensors",
    "strength_model": 1.0
  }, "_meta": { "title": "Lo Lightning" }},
  "7": { "class_type": "CLIPLoader", "inputs": { "clip_name": "umt5_xxl_fp8_e4m3fn_scaled.safetensors", "type": "wan" }},
  "8": { "class_type": "VAELoader", "inputs": { "vae_name": "wan_2.1_vae.safetensors" }},
  "9": { "class_type": "CLIPTextEncode", "inputs": { "clip": ["7", 0], "text": "<positive prompt describing the video scene and motion>" }, "_meta": { "title": "Positive" }},
  "10": { "class_type": "CLIPTextEncode", "inputs": { "clip": ["7", 0], "text": "The tones are vibrant, overexposed, static, details are unclear, subtitles, worst quality, low quality, motionless image" }, "_meta": { "title": "Negative" }},
  "11": { "class_type": "EmptyHunyuanLatentVideo", "inputs": {
    "width": 832, "height": 480, "length": 81, "batch_size": 1
  }},
  "12": { "class_type": "KSamplerAdvanced", "inputs": {
    "model": ["5", 0],
    "positive": ["9", 0],
    "negative": ["10", 0],
    "latent_image": ["11", 0],
    "add_noise": "enable", "noise_seed": 0, "steps": 4, "cfg": 1,
    "sampler_name": "euler", "scheduler": "simple",
    "start_at_step": 0, "end_at_step": 2, "return_with_leftover_noise": "enable"
  }, "_meta": { "title": "Hi Pass" }},
  "13": { "class_type": "KSamplerAdvanced", "inputs": {
    "model": ["6", 0],
    "positive": ["9", 0],
    "negative": ["10", 0],
    "latent_image": ["12", 0],
    "add_noise": "disable", "noise_seed": 0, "steps": 4, "cfg": 1,
    "sampler_name": "euler", "scheduler": "simple",
    "start_at_step": 2, "end_at_step": 4, "return_with_leftover_noise": "disable"
  }, "_meta": { "title": "Lo Pass" }},
  "14": { "class_type": "VAEDecode", "inputs": { "samples": ["13", 0], "vae": ["8", 0] }},
  "15": { "class_type": "VHS_VideoCombine", "inputs": {
    "images": ["14", 0], "frame_rate": 16, "loop_count": 0,
    "filename_prefix": "wan_t2v", "format": "video/h264-mp4",
    "pingpong": false, "save_output": true,
    "pix_fmt": "yuv420p", "crf": 19, "save_metadata": true, "trim_to_audio": false
  }}
}

Complete Workflow: T2V Standard (20-Step)

Same structure as above but replace the LoRA and sampler settings:

  • Remove LoRA nodes (5 and 6) — connect ModelSamplingSD3 outputs directly to KSamplerAdvanced
  • Change shift to 8 in ModelSamplingSD3 nodes
  • Change KSamplerAdvanced settings:
    • steps: 20, cfg: 3.5
    • Pass 1: start_at_step: 0, end_at_step: 10
    • Pass 2: start_at_step: 10, end_at_step: 20

WanVideoWrapper Approach (Advanced)

For more control, use the WanVideoWrapper custom node pack. Key differences from native:

  • Uses WanVideoModelLoaderWANVIDEOMODEL type
  • Uses WanVideoSampler with built-in shift parameter
  • Supports TeaCache, context windows, block swap for VRAM management

WanVideoWrapper T2V Pipeline

WanVideoModelLoader (T2V model) → WANVIDEOMODEL
WanVideoVAELoader → WANVAE
WanVideoTextEncode (positive + negative prompts) → WANVIDEOTEXTEMBEDS
WanVideoImageToVideoEncode (no images — creates empty embeds for T2V)
  → WANVIDIMAGE_EMBEDS

WanVideoSampler (model, image_embeds, text_embeds, steps, cfg, shift, scheduler)
  → LATENT

WanVideoDecode → IMAGE → VHS_VideoCombine → MP4

WanVideoSampler T2V Settings

Parameter Standard Lightning Notes
steps 30 4
cfg 6.0 1.0
shift 5.0 5.0 Flow matching shift
scheduler unipc euler
force_offload true true

Concept LoRAs (Installed)

Located in loras/Wan Video 2.2 T2V-A14B/:

  • concept/PussyLoRA_HighNoise_Wan2.2_HearmemanAI.safetensors + LowNoise pair

Apply concept LoRAs the same way as lightning LoRAs — match hi/lo to the correct model pass. Use LoraLoaderModelOnly with strength 0.5–1.0.

Resolution & Frame Count

Resolutions

Aspect Resolution Notes
Landscape 16:9 832x480 Default, recommended
Portrait 9:16 480x832
720p landscape 1280x720 Higher quality, more VRAM
720p portrait 720x1280

Width and height must be divisible by 16.

Frame Count (4n + 1)

  • 81 frames at 16fps = ~5 seconds (default, recommended)
  • 49 frames at 16fps = ~3 seconds (faster)
  • 121 frames at 16fps = ~7.5 seconds (longer, more VRAM)

Frame Rate

Standard: 16 fps for WAN 2.2 output.

VRAM Considerations

Config VRAM Notes
Dual FP8 models + UMT5 fp8 ~22-24GB Tight on RTX 4090
Single FP8 model (no dual) ~14-16GB Lower quality but safer
With VACE modules +5.8GB per module Very tight, may need block swap
  • Always clear_vram before switching to WAN T2V from another model family
  • Lightning (4 steps) dramatically reduces generation time: ~70s vs ~5-10 min for 20 steps
  • Only one UNET is active during each pass — they swap in/out

Prompt Tips

Describe motion and temporal progression, not just a scene:

Good: "A beautiful young woman slowly walks through a blooming cherry blossom garden, petals drifting in the breeze, soft sunlight filtering through branches, cinematic slow motion, 4K quality"
Bad: "woman in garden"

Include motion cues: "slowly walks", "camera pans", "wind blowing", "gradually reveals"

T2V vs I2V/FLF Comparison

Feature T2V I2V/FLF
Input Text only Text + start/end images
Latent init EmptyHunyuanLatentVideo WanFirstLastFrameToVideo
CLIPVision Not used Required
Models T2V-specific (HIGH/LOW) I2V-specific (HIGH/LOW)
Lightning LoRAs T2V-specific I2V-specific
Creativity Full creative freedom Constrained by input frames
Use case Original content Transitions, animations
Install via CLI
npx skills add https://github.com/artokun/comfyui-mcp --skill wan-t2v-video
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