Cyberware

Maintainer: Eppinette

Total Score

48

Last updated 9/6/2024

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PropertyValue
Run this modelRun on HuggingFace
API specView on HuggingFace
Github linkNo Github link provided
Paper linkNo paper link provided

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Model overview

The Cyberware model is a text-to-image AI model developed by the maintainer Eppinette. It is a conceptual model based on the Dreambooth training technique, with several iterations including Cyberware V3, Cyberware V2, and Cyberware_V1. These models are designed to generate images with a "cyberware style", characterized by mechanical and robotic elements. Similar models include the SDXL-Lightning model for fast text-to-image generation, and the Cyberpunk Anime Diffusion model for creating cyberpunk-inspired anime characters.

Model inputs and outputs

Inputs

  • Prompt: The text prompt used to generate the image, which should include descriptors like "mechanical 'body part or object'" or "cyberware style" to activate the model's capabilities.
  • Token word: The specific token word to use, such as "m_cyberware" for the V3 model, or "Cyberware" for the V1 model.
  • Class word: The specific class word to use, such as "style", to activate the model.

Outputs

  • Generated images: The model outputs high-quality, detailed images with a distinctive "cyberware" aesthetic, featuring mechanical and robotic elements.

Capabilities

The Cyberware model excels at generating images with a cyberpunk, mechanical, and robotic style. The various model iterations offer different levels of training and complexity, allowing users to experiment and find the best fit for their needs. The examples provided showcase the model's ability to create intricate, highly detailed images with a focus on mechanical and cybernetic elements.

What can I use it for?

The Cyberware model can be a valuable tool for artists, designers, and creatives looking to incorporate a unique, futuristic aesthetic into their work. It could be used for concept art, character design, illustration, or any project that requires a distinctive cyberpunk or mechanical visual style. Additionally, the model's capabilities could be leveraged in various industries, such as gaming, film, or product design, to create engaging and immersive visuals.

Things to try

One interesting aspect of the Cyberware model is the ability to adjust the "strength" of the cyberware style by using the "(cyberware style)" or "[cyberware style]" notation in the prompt. Experimenting with different levels of this style can help users find the perfect balance for their needs, whether they want a more subtle, integrated look or a more pronounced, dominant cyberware aesthetic.



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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