mktbangbang/luina 🖼️🔢❓📝✓ → 🖼️
About
Example Output
Prompt:
"A flatlay image of several TOK perfume bottles on a white background. The bottles should have different shades of liquid, showcasing the variety of the TOK fragrance line. Include a few TOK bottles with different capacity. The composition should be balanced and aesthetically pleasing, with the bottles arranged in a seemingly random yet harmonious manner. The lighting should be bright and even, highlighting the details of each bottle. The overall image should evoke a sense of luxury, sophistication, and variety.""
Output
Performance Metrics
5.95s
Prediction Time
5.96s
Total Time
All Input Parameters
{
"model": "dev",
"prompt": "A flatlay image of several TOK perfume bottles on a white background. The bottles should have different shades of liquid, showcasing the variety of the TOK fragrance line. Include a few TOK bottles with different capacity. The composition should be balanced and aesthetically pleasing, with the bottles arranged in a seemingly random yet harmonious manner. The lighting should be bright and even, highlighting the details of each bottle. The overall image should evoke a sense of luxury, sophistication, and variety.\"",
"go_fast": false,
"lora_scale": 1,
"megapixels": "1",
"num_outputs": 1,
"aspect_ratio": "1:1",
"output_format": "webp",
"guidance_scale": 3,
"output_quality": 80,
"prompt_strength": 0.8,
"extra_lora_scale": 1,
"num_inference_steps": 28
}
Input Parameters
- mask
- Image mask for image inpainting mode. If provided, aspect_ratio, width, and height inputs are ignored.
- seed
- Random seed. Set for reproducible generation
- image
- Input image for image to image or inpainting mode. If provided, aspect_ratio, width, and height inputs are ignored.
- model
- Which model to run inference with. The dev model performs best with around 28 inference steps but the schnell model only needs 4 steps.
- width
- Width of generated image. Only works if `aspect_ratio` is set to custom. Will be rounded to nearest multiple of 16. Incompatible with fast generation
- height
- Height of generated image. Only works if `aspect_ratio` is set to custom. Will be rounded to nearest multiple of 16. Incompatible with fast generation
- prompt (required)
- Prompt for generated image. If you include the `trigger_word` used in the training process you are more likely to activate the trained object, style, or concept in the resulting image.
- go_fast
- Run faster predictions with model optimized for speed (currently fp8 quantized); disable to run in original bf16
- extra_lora
- Load LoRA weights. Supports Replicate models in the format <owner>/<username> or <owner>/<username>/<version>, HuggingFace URLs in the format huggingface.co/<owner>/<model-name>, CivitAI URLs in the format civitai.com/models/<id>[/<model-name>], or arbitrary .safetensors URLs from the Internet. For example, 'fofr/flux-pixar-cars'
- lora_scale
- Determines how strongly the main LoRA should be applied. Sane results between 0 and 1 for base inference. For go_fast we apply a 1.5x multiplier to this value; we've generally seen good performance when scaling the base value by that amount. You may still need to experiment to find the best value for your particular lora.
- megapixels
- Approximate number of megapixels for generated image
- num_outputs
- Number of outputs to generate
- aspect_ratio
- Aspect ratio for the generated image. If custom is selected, uses height and width below & will run in bf16 mode
- output_format
- Format of the output images
- guidance_scale
- Guidance scale for the diffusion process. Lower values can give more realistic images. Good values to try are 2, 2.5, 3 and 3.5
- output_quality
- Quality when saving the output images, from 0 to 100. 100 is best quality, 0 is lowest quality. Not relevant for .png outputs
- prompt_strength
- Prompt strength when using img2img. 1.0 corresponds to full destruction of information in image
- extra_lora_scale
- Determines how strongly the extra LoRA should be applied. Sane results between 0 and 1 for base inference. For go_fast we apply a 1.5x multiplier to this value; we've generally seen good performance when scaling the base value by that amount. You may still need to experiment to find the best value for your particular lora.
- replicate_weights
- Load LoRA weights. Supports Replicate models in the format <owner>/<username> or <owner>/<username>/<version>, HuggingFace URLs in the format huggingface.co/<owner>/<model-name>, CivitAI URLs in the format civitai.com/models/<id>[/<model-name>], or arbitrary .safetensors URLs from the Internet. For example, 'fofr/flux-pixar-cars'
- num_inference_steps
- Number of denoising steps. More steps can give more detailed images, but take longer.
- disable_safety_checker
- Disable safety checker for generated images.
Output Schema
Output
Example Execution Logs
Lora https://replicate.delivery/xezq/jufmnJHmaflbuE15zr1mt0JfsJlAEkUofbOMil11NTF24lPQB/trained_model.tar already loaded Using seed: 40035 0it [00:00, ?it/s] 1it [00:00, 8.40it/s] 2it [00:00, 5.90it/s] 3it [00:00, 5.38it/s] 4it [00:00, 5.17it/s] 5it [00:00, 5.07it/s] 6it [00:01, 5.00it/s] 7it [00:01, 4.96it/s] 8it [00:01, 4.94it/s] 9it [00:01, 4.92it/s] 10it [00:01, 4.91it/s] 11it [00:02, 4.90it/s] 12it [00:02, 4.89it/s] 13it [00:02, 4.89it/s] 14it [00:02, 4.89it/s] 15it [00:02, 4.88it/s] 16it [00:03, 4.88it/s] 17it [00:03, 4.88it/s] 18it [00:03, 4.88it/s] 19it [00:03, 4.88it/s] 20it [00:04, 4.88it/s] 21it [00:04, 4.88it/s] 22it [00:04, 4.87it/s] 23it [00:04, 4.87it/s] 24it [00:04, 4.88it/s] 25it [00:05, 4.88it/s] 26it [00:05, 4.88it/s] 27it [00:05, 4.88it/s] 28it [00:05, 4.88it/s] 28it [00:05, 4.95it/s] Total safe images: 1 out of 1
Version Details
- Version ID
48fb5a37130f71a1daba0d95788f6d5d28359514fc078e0d5b116d1f0c6e82ff- Version Created
- February 4, 2025