🚀 Simple High Motions Wan2.2 14B I2V - GGUF Optimized Workflow
Generate dynamic, high-motion videos from a single image with this streamlined and efficient Wan2.2 workflow designed for maximum movement and action!
✨ Key Features:
• High Motion Specialization: Optimized specifically for dynamic, action-packed video generation
• GGUF Memory Efficiency: Q8_0 quantized models for optimal VRAM usage
• 6-Step Generation: Perfect balance of speed and quality (4 high + 2 low noise steps)
• LightX2V LoRA Integration: 4-step distilled LoRAs for lightning-fast processing
• Single Image Input: Transform any static image into dynamic video content
• Square Format: 640x640 resolution perfect for social media content
🔧 Technical Specifications:
• Models: Wan2.2-I2V-A14B (High/Low Noise variants)
• Quantization: Q8_0 GGUF format for efficiency
• LoRA Strength: 5.6 (High Noise) / 2.0 (Low Noise)
• Resolution: 640x640 pixels
• Frame Count: 81 frames at 16fps (≈5 seconds)
• Sampling: 6 steps total with Euler scheduler
• Model Sampling: SD3 with shift value 5.0
💡 Perfect For:
• Sports and action sequences
• Dynamic character animations
• Fast-paced scene transitions
• Movement-heavy content creation
• Social media video content
• Quick video prototyping
🎯 Optimizations:
• Streamlined node structure for maximum efficiency
• Minimal VRAM requirements through GGUF
• Fast generation times with distilled LoRAs
• Simplified workflow with essential nodes only
• Auto video export with customizable settings
📋 Requirements:
• Single input image
• Wan2.2 GGUF models from QuantStack collection
• LightX2V LoRAs from Kijai/WanVideo_comfy
• ComfyUI with GGUF support
Transform static images into captivating high-motion videos in seconds, not minutes!
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