Briefing

Anima 1.0 Base Workflow – Turbo LoRA, Sweat‑Skin Patch, and ControlNet

ai-dev
by /u/Brief-Leg-8831 ·

Use the Anima 1.0 Base workflow with turbo LoRA and the sweat‑skin patch to generate fast, high‑quality images while applying negative weights for prompt adherence.

What to do now

Download the Anima 1.0 Base model, enable turbo LoRA, apply the sweaty‑skin patch, and generate images to test speed and quality.

Summary

The Anima 1.0 Base workflow combines Image‑to‑Prompt, Turbo LoRA, ControlNet, a 4k upscaler, and CivitAI metadata to produce high‑quality images quickly. Most images were generated using the turbo LoRA, and the workflow includes a special patch that fixes the undesirable "sweaty skin" issue by injecting negative weights into the positive prompt. This patch allows users to benefit from fast generation with turbo mode while maintaining high quality results. The workflow supports both SFW and NSFW content and is designed to be lightweight yet powerful. Users can adjust the negative weights to fine‑tune prompt adherence and image quality.

Anima 1.0 Base is ideal for artists and developers who need rapid, high‑resolution image generation with minimal setup. The workflow demonstrates how combining turbo LoRA with a targeted patch can overcome common LoRA artifacts while preserving speed.

The project encourages experimentation with different prompt configurations and negative weight settings to achieve the best balance between speed and visual fidelity.

Key changes

  • Anima 1.0 Base workflow
  • Turbo LoRA for fast generation
  • ControlNet integration
  • 4k upscaler
  • CivitAI metadata support
  • Sweaty skin patch injecting negative weights
  • Negative weights allow prompt adherence
  • Fast generation with high quality

Affects

internal

Source angles · 2 perspectives

Black Forest Labs (Reddit)
Independent angle

Some Anima base generations

Open
r/StableDiffusion
Independent angle

Anima 1.0 Base Workflow – Turbo LoRA, Sweat‑Skin Patch, and ControlNet

Open

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