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Fine-tuning pipeline for brand-specific video style #13

@Stanley-blik

Description

@Stanley-blik

Overview

Allow users to fine-tune Wan 2.2 on their own video/image dataset to create a consistent brand-specific visual style.

Tasks

  • LoRA fine-tuning script for Wan 2.2
  • Dataset preparation tools (video → frame extraction → caption generation)
  • Training configuration (learning rate, steps, rank)
  • LoRA loading in inference server
  • Multiple LoRA support (swap styles per video)
  • Documentation: how to fine-tune for your brand

Use Cases

  • Consistent animation style across all Toons content
  • Brand-specific color grading and cinematography
  • Character-specific LoRAs for perfect consistency

References

Acceptance Criteria

  • Can fine-tune Wan 2.2 with a LoRA on custom dataset
  • LoRA loads at inference time without full model reload
  • Visible style difference between base and fine-tuned model

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    gpu-backendGPU inference server and model deploymentmilestone:v2Post-MVP improvementspriority:lowLow priorityresearchResearch and experimentation

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