--- base_model: Tongyi-MAI/Z-Image-Turbo tags: - lora - text-to-image - z-image-turbo - style - diffusion license: other --- # a-cold-wall — LoRA A LoRA adapter trained for the concept/style **"a-cold-wall"**. ## Trigger word Use this token in your prompt: - **`a-cold-wall`** ## Base model - **Tongyi-MAI/Z-Image-Turbo** ## Files - `a-cold-wall.safetensors` — the LoRA weights - `config.yaml`, `job_config.json` — training configuration (for reproducibility) ## How to use ### A) ComfyUI / AUTOMATIC1111 1. Put `a-cold-wall.safetensors` into your LoRA folder. 2. Use it in your prompt, e.g.: - `a-cold-wall, fashion outfits, editorial photo, high detail` (Adjust LoRA strength to taste, e.g. 0.6–1.0.) ### B) Diffusers (generic example) > Depending on your setup, you may need to use the correct pipeline class for Z-Image-Turbo. ```python import torch from diffusers import DiffusionPipeline pipe = DiffusionPipeline.from_pretrained( "Tongyi-MAI/Z-Image-Turbo", torch_dtype=torch.bfloat16 ).to("cuda") pipe.load_lora_weights("thorjank/a-cold-wall-lora", weight_name="a-cold-wall.safetensors") prompt = "a-cold-wall, fashion outfits, editorial photo, high detail" image = pipe(prompt).images[0] image.save("out.png") Recommended prompting • Start simple: • a-cold-wall, fashion outfits • Then add camera / lighting / composition as needed. Training details (summary) • Dataset: 35 images • Steps: 3000 • Batch size: 1 • Learning rate: 1e-4 • Network: LoRA • linear rank/alpha: 32/32 • conv rank/alpha: 16/16 • Trained modules: U-Net (text encoder not trained) • Precision: bf16 • Noise scheduler: flowmatch • Resolution buckets configured: 512 / 768 / 1024 • Default caption: fashion outfits Notes / License This repo contains only LoRA weights. Please ensure your use complies with the base model’s license and with the rights for any content you generate.