Wan2.2 Custom GGUF (Tesla T4 Optimized)

This repository provides highly optimized Wan2.2 Image-to-Video (I2V) GGUF+LIGHNINGV2 and custom models. These variants are fine-tuned for running efficiently on memory-constrained environments, such as Google Colab equipped with an NVIDIA Tesla T4 GPU.


⚑ Optimal Settings for ComfyUI

To achieve perfect video motion without artifacts or image degradation (preventing fried or oversaturated visuals), we strongly recommend using the following parameters:

Parameter Recommended Value Note
Sampling Steps 4 When using Wan2.2 Lightning / Distilled V2
CFG Scale 1.0 Crucial for preventing burnt images
High Noise Steps 2 or 3 To lock in strong motion and structure before the Lightning layer clears noise
low Noise Steps 3 or `4
Sampler / Scheduler euler + simple Standard diffusion setup

*(Note for Higher Quality: If you want to achieve higher visual fidelity and enhance micro-details, it is highly recommended to use wan2.2_i2v_low_noise_14B_fp8_scaled.safetensors as your final step. This hybrid approach significantly sharpens fine details and effectively eliminates motion blur during camera movements. This multi-step workflow is recommended for NVIDIA Tesla T4 GPUs or higher, and it can be seamlessly combined with any other GGUF High Noise models available in this repository.)

πŸ’Ύ Available Model Variants

Choose the right variant based on your creative workflow and VRAM configuration:

πŸ”₯ High Noise Models (wan2.2_i2v_high_noise_...)

  • Best for: Creative, high-motion generation, and diverse camera movements.
  • Available Quantizations: Q4_K_M, Q6_K_L, Q6_K, Q8_H

❄️ Low Noise Models (wan2.2_i2v_low_noise_...)

  • Best for: High fidelity, generation stability, and strictly adhering to the prompt or structural layout of your starting frame.
  • Available Quantizations: Q4_K_M, Q6_K_L, Q6_K, Q8_H, and fp8_scaled
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