90sbadtrip
Maintainer: markredito - Last updated 12/7/2024
Model overview
90sbadtrip
is a LoRA (Low-Rank Adaptation) model for Flux.1 Dev, created by markredito, that aims to recreate the trippy and low-quality CGI visuals from the 1990s. This model can be a great option for those looking to add a nostalgic, 90s-inspired aesthetic to their generated images. It shares similarities with other Flux LoRA models like flux-80s-cyberpunk, flux-red-cinema, and flux-ghibsky-illustration, each with their own unique stylistic influences.
Model inputs and outputs
The 90sbadtrip
model accepts a variety of inputs, including an image, a prompt, and various parameters to control the generation process. The output is one or more images that reflect the 90s CGI aesthetic.
Inputs
- Prompt: The text prompt that describes the desired image content.
- Image: An optional input image that can be used for inpainting or image-to-image generation.
- Mask: An optional input mask for inpainting mode, where black areas are preserved and white areas are inpainted.
- Seed: A random seed value for reproducible generation.
- Model: The specific model to use for inference, with options for "dev" and "schnell" models.
- Width and Height: The desired dimensions of the generated image (when using custom aspect ratio).
- Aspect Ratio: The aspect ratio of the generated image, with options for 1:1, 16:9, and custom.
- Num Outputs: The number of images to generate.
- Guidance Scale: The strength of the guidance during the diffusion process.
- Prompt Strength: The strength of the prompt when using img2img or inpainting.
- Num Inference Steps: The number of inference steps to use, which affects detail and generation time.
Outputs
- Images: One or more images in the specified output format (e.g., WEBP) that reflect the 90s CGI aesthetic.
Capabilities
The 90sbadtrip
model is capable of generating low-quality, distorted, and trippy images that evoke the feeling of 90s computer graphics. The model can be used to add a nostalgic, glitchy, or even unsettling quality to your generated images, which can be useful for creative projects, visual effects, or artistic experimentation.
What can I use it for?
The 90sbadtrip
model can be a valuable tool for artists, designers, and content creators looking to incorporate a retro, 90s-inspired aesthetic into their work. This could include creating visuals for music videos, video games, film and television, or even social media posts and digital art. The model's ability to generate unique and unpredictable results can also make it a fun tool for personal experimentation and exploration.
Things to try
Some interesting things to try with the 90sbadtrip
model include:
- Combining it with other Flux LoRA models, such as flux-red-cinema or flux-ghibsky-illustration, to create a unique blend of stylistic influences.
- Experimenting with different prompts and parameter settings to see how they affect the level of distortion, glitchiness, and overall 90s CGI aesthetic.
- Incorporating the model's outputs into larger creative projects, such as animated sequences, visual effects, or interactive digital experiences.
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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