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---
base_model: krea/Krea-2-Raw
tags:
- text-to-image
- diffusers
- lora
- krea2
- template:sd-lora
license: apache-2.0
instance_prompt: "vzx woman"
widget:
- text: "A cinematic wide shot of a vzx woman wearing iridescent futuristic armor, standing amidst the neon-lit rain of a cyberpunk Tokyo street."
output:
url: sample_0.png
- text: "A serene oil painting of a vzx woman in a flowing linen dress, reading an ancient leather book in a sun-drenched Tuscan library."
output:
url: sample_1.png
- text: "A high-detail macro photograph of a vzx woman as an ethereal forest spirit, her skin shimmering with gold leaf and surrounded by bioluminescent mushrooms."
output:
url: sample_2.png
---
# Krea 2 LoRA — jatmak/stein754
<Gallery />
A DreamBooth-LoRA for **Krea 2**, trained on **Krea 2 RAW** and shown on **Krea 2 Turbo**. The samples below were generated with this LoRA on Turbo (8 steps).
## Trigger
Use the token `vzx woman` to invoke the concept.
## Samples
![sample](./sample_0.png)
> *"A cinematic wide shot of a vzx woman wearing iridescent futuristic armor, standing amidst the neon-lit rain of a cyberpunk Tokyo street."*
![sample](./sample_1.png)
> *"A serene oil painting of a vzx woman in a flowing linen dress, reading an ancient leather book in a sun-drenched Tuscan library."*
![sample](./sample_2.png)
> *"A high-detail macro photograph of a vzx woman as an ethereal forest spirit, her skin shimmering with gold leaf and surrounded by bioluminescent mushrooms."*
## Use it with diffusers
```py
import torch
from diffusers import Krea2Pipeline
pipe = Krea2Pipeline.from_pretrained("krea/Krea-2-Turbo", torch_dtype=torch.bfloat16).to("cuda")
pipe.load_lora_weights("jatmak/stein754")
image = pipe("A cinematic wide shot of a vzx woman wearing iridescent futuristic armor, standing amidst the neon-lit rain of a cyberpunk Tokyo street.", num_inference_steps=8, guidance_scale=0.0).images[0]
image.save("output.png")
```