Maintainer: ShadoWxShinigamI

Total Score


Last updated 5/28/2024


Model LinkView on HuggingFace
API SpecView on HuggingFace
Github LinkNo Github link provided
Paper LinkNo paper link provided

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Model overview

MidJourney-PaperCut is a text-to-image model created by ShadoWxShinigamI. This model was trained on 7,000 steps using the v1-5 base and 56 images. It can generate a variety of images, including animals, landscapes, and fantasy scenes, with the simple prompt "mdjrny-pprct" followed by a description. This model is similar to other text-to-image models like text2image-prompt-generator, IconsMI-AppIconsModelforSD, and All-In-One-Pixel-Model, which can also be used to generate images from text prompts.

Model inputs and outputs

The MidJourney-PaperCut model takes a text prompt starting with "mdjrny-pprct" followed by a description of the desired image. The model then generates an image based on the prompt.


  • Prompt: A text description of the desired image, starting with the token "mdjrny-pprct"


  • Image: A generated image based on the input prompt


The MidJourney-PaperCut model can generate a wide variety of images, including animals, landscapes, and fantasy scenes, with relatively simple prompts. For example, prompts like "mdjrny-pprct eagle", "mdjrny-pprct samurai warrior", and "mdjrny-pprct landscape" can produce high-quality, visually striking images.

What can I use it for?

The MidJourney-PaperCut model can be used for a variety of creative and artistic projects, such as generating images for websites, social media, or digital art. The model's ability to produce images from simple text prompts could be particularly useful for content creators, designers, or anyone looking to quickly generate unique visual assets.

Things to try

One interesting aspect of the MidJourney-PaperCut model is that it does not require extensive prompt engineering to produce high-quality images. Simply describing the desired image after the "mdjrny-pprct" token can often result in visually striking and creative outputs. Experiment with different types of prompts, from specific subjects to more abstract concepts, to see the range of images the model can generate.

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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The Midjourney-v4-PaintArt model, created by ShadoWxShinigamI, is a text-to-image AI model that generates illustrations in a unique "painterly" art style. This model builds upon the capabilities of the MidJourney-PaperCut and SD2-768-Papercut models, also developed by ShadoWxShinigamI, which specialize in digital paper-cut and collage-inspired artworks. The Midjourney-v4-PaintArt model takes this concept further, producing vibrant, expressive paintings with visible brush strokes and a distinctive artistic flair. Model inputs and outputs The Midjourney-v4-PaintArt model accepts text prompts as input and generates corresponding 512x512 pixel images as output. The prompts should begin with the token "mdjrny-pntrt" to trigger the model's unique painting style. The model was trained on a dataset of 2080 images over 26 training steps, utilizing a v1-5 base. Inputs Text prompts starting with the "mdjrny-pntrt" token Outputs 512x512 pixel images in a distinctive painterly art style Capabilities The Midjourney-v4-PaintArt model is capable of generating a wide range of imaginative, expressive illustrations. The examples provided show the model's ability to create detailed, atmospheric scenes, vibrant character portraits, and intricate fantasy landscapes. The painterly style adds a unique and visually striking quality to the generated images. What can I use it for? The Midjourney-v4-PaintArt model can be a valuable tool for creative projects, such as concept art, book covers, album art, or any application where a unique, hand-painted aesthetic is desired. The model's capabilities could also be leveraged for commercial purposes, such as generating custom artwork for clients or products. Additionally, the model's similarities to the MidJourney-PaperCut and SD2-768-Papercut models suggest potential for combining or fine-tuning the models to explore different artistic styles and applications. Things to try Experimenting with the specificity and complexity of the prompts can yield a wide range of unique and unexpected results with the Midjourney-v4-PaintArt model. Combining the "mdjrny-pntrt" token with descriptive details about the desired subject matter, setting, or artistic elements can lead to fascinating and visually captivating artworks. Additionally, exploring the model's capabilities in conjunction with other text-to-image or image editing tools could unlock new creative possibilities.

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