Nalgotica
3 months ago

It is a model similar to NAL, more “toon”, focused on detail, it is currently a beta or test.

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What is NAL- TOON?

NAL- TOON is a highly specialized Image generation AI Model of type Safetensors / Checkpoint AI Model created by AI community user Nalgotica. Derived from the powerful Stable Diffusion (Illustrious) model, NAL- TOON has undergone an extensive fine-tuning process, leveraging the power of a dataset consisting of images generated by other AI models or user-contributed data. This fine-tuning process ensures that NAL- TOON is capable of generating images that are highly relevant to the specific use-cases it was designed for, such as base model.

With a rating of 0 and over 0 ratings, NAL- TOON is a popular choice among users for generating high-quality images from text prompts.

Can I download NAL- TOON?

Yes! You can download the latest version of NAL- TOON from here.

How to use NAL- TOON?

To use NAL- TOON, download the model checkpoint file and set up an UI for running Stable Diffusion models (for example, AUTOMATIC1111). Then, provide the model with a detailed text prompt to generate an image. Experiment with different prompts and settings to achieve the desired results. If this sounds a bit complicated, check out our initial guide to Stable Diffusion – it might be of help. And if you really want to dive deep into AI image generation and understand how set up AUTOMATIC1111 to use Safetensors / Checkpoint AI Models like NAL- TOON, check out our crash course in AI image generation.

Download (6.31 GB) Download available on desktop only
You'll need to use a program like A1111 to run this – learn how in our crash course

Popularity

90 ~10

Info

Base model: Illustrious

Latest version (v1.0): 1 File

To download these files, please visit this page from a desktop computer.

About this version: v1.0

1.- Primer release, Beta.

1 Version

😥 There are no NAL- TOON v1.0 prompts yet!

Go ahead and upload yours!

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