sdxl-shining

Maintainer: cbh123

Total Score

3

Last updated 9/18/2024
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Run this modelRun on Replicate
API specView on Replicate
Github linkNo Github link provided
Paper linkNo paper link provided

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Model overview

sdxl-shining is a Stable Diffusion XL (SDXL) model fine-tuned on the horror classic "The Shining". This model is maintained by cbh123 and is part of a growing ecosystem of SDXL-based models. Similar models include animagine-xl-3.1, an anime-themed SDXL model, and sdxl-custom-model, which incorporates Callback Adjust and other enhancements.

Model inputs and outputs

sdxl-shining is a text-to-image AI model that takes a text prompt as input and generates an image based on that prompt. The model also accepts additional parameters like image size, seed, and scheduler.

Inputs

  • Prompt: The text prompt to generate the image from
  • Negative Prompt: Additional text to guide the image generation away from certain elements
  • Image: An input image for img2img or inpaint mode
  • Mask: An input mask for inpaint mode, where black areas will be preserved and white areas will be inpainted
  • Seed: A random seed, left blank to randomize
  • Width: The width of the output image
  • Height: The height of the output image
  • Refine: The refine style to use
  • Scheduler: The scheduler to use
  • Lora Scale: The LoRA additive scale, only applicable on trained models
  • Num Outputs: The number of images to output
  • Refine Steps: The number of steps to refine for the base_image_refiner
  • Guidance Scale: The scale for classifier-free guidance
  • Apply Watermark: Whether to apply a watermark to the output image
  • High Noise Frac: The fraction of noise to use for the expert_ensemble_refiner
  • Replicate Weights: The LoRA weights to use, left blank to use the default

Outputs

  • An array of image URIs representing the generated images

Capabilities

sdxl-shining can generate highly detailed and atmospheric images inspired by the iconic horror film "The Shining". The model is capable of producing a wide range of unsettling, eerie, and surreal imagery that captures the dark and foreboding tone of the source material.

What can I use it for?

With sdxl-shining, you can create custom horror-themed artwork, illustrations, and assets for a variety of projects, such as video games, book covers, album art, and more. The model's fine-tuning on "The Shining" allows it to generate highly specific and recognizable imagery that can be used to evoke a particular mood or aesthetic. Additionally, the model's versatility with different input parameters makes it a powerful tool for experimentation and creative expression.

Things to try

One interesting aspect of sdxl-shining is its ability to blend elements from the original "The Shining" with more contemporary or unexpected themes. For example, you could try generating images that juxtapose the classic horror setting of the Overlook Hotel with futuristic or sci-fi elements, or combine the ominous atmosphere of the film with more whimsical or surreal imagery. The model's flexibility allows for a wide range of creative possibilities and can help you push the boundaries of what is possible with text-to-image AI technology.



This summary was produced with help from an AI and may contain inaccuracies - check out the links to read the original source documents!

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