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ONE FOR ALL «Anime» - w/ ILLUSTRIOUS v 1.0 - v 3.5 DPO+VAE thumbnail

ModelsLab/ONE FOR ALL «Anime» - W/ ILLUSTRIOUS V 1.0 - V 3.5 DPO+VAE

one-for-all-anime-w-illustrious-v-1-0-v-3-5-dpo-vae
Text to Image Community ModelFree for Premium UsersLLMs.txt

Thank you very much for using the ONE FOR ALL series!!

Version 3.0 presented some inconsistencies when generating images at higher resolutions such as 800 x 1280 @ 70 Steps, a lot of noise started to appear, as well as an excess of flare and glare pollution, which was very much outside the intention of the model, so I was forced to discard version 3 and upgrade to version 3.5. As it was more a question of adjustments, I thought it best to rename it to version 3.5.

This version 3.5 is the result of a lot of training and testing. I take pride in saying that this is the definitive version in the SD 1.5 model. It's worth mentioning that despite using a proprietary training model as a base, this version incorporates other trained models. Therefore, it classifies as a Merge rather than a Fully Trained model.

In this version, a revolutionary training system called DPO - Diffusion-DPO has been included. It is adapted from the recently developed Direct Preference Optimization (DPO), a simpler alternative to RLHF that directly optimizes a policy based on human preferences under a classification objective.

What does it do? The trained DPO models have been observed to produce higher quality images than their untuned counterparts, with a significant emphasis on the model's adherence to your prompt. This model can bring a better prompt adherence than other fine-tuned Stable Diffusion models.

More information: 2311.12908.pdf (arxiv.org)

In addition to the innovative DPO system, this version also features:

  • Sharper eyes using proportional scaling with symmetry-trained images;

  • Ethnic training. I was always tired of seeing the same Asian face, so with that in mind, I included non-Asian images in the training. But there was still a need for greater diversity and a more cosmopolitan sense of inclusion. This led me to insert over a thousand images with a more extensive range of ethnicities;

  • There was a dynamic increase in details, so it's important to be careful when using LoRAs that enhance details. In the case of saturation, I recommend using LoRAs with negative values;

  • In this version, I included dozens of quadratic meta-model AI diagrams. This training will provide a greater sense of Ray Tracing for those who like images with brightness and flares. You'll hardly find a similar model; MidJourney, watch out, lol;

  • The entire training was done with high-definition images, at least 16 bits, and a resolution of 720p and above. This ensures a greater sense of authentic lighting and intricate textures;

  • During the training, there was an enhancement of the color performance of the screen and an increase in saturation compared to previous versions. Brighter colors will be easily obtained;

  • Hands! It's still challenging to work with hands. However, during training, (EnvyBetterHands LoCon) was used with smaller weights within the training parameters. This should help achieve better overall results;

  • Last but not least, training with NSFW was conducted, aiming for greater variety and quality in generations.

I'm very grateful to the authors of the Checkpoints and LoRAs used in the ONE FOR ALL series and I recommend everyone to visit them and appreciate their work:

And to all those who in some way collaborated or encouraged this work, I affectionately offer this simple Special Thanks:

Special Thanks to those creators:

Special Thanks to my amazing followers:

AND YOU WHO IS AMAZING TO READ SO FAR HERE!! WOW!! 😱🤩💓

YOU ARE REALLY AMAZING!! THANK YOU VERY MUCH!! 🥰🥰🥰

API PlaygroundAPI Documentation

API Endpoint URL

Base URL for all API requests to this endpoint.

https://modelslab.com/api/v6/images/text2img

API Authentication

Authentication requires a valid API key included in the request. Generate and manage your API keys from your developer dashboard. Include the key in the key parameter for all API requests.

Integration Examples

Production-ready code samples for API integration

{
"prompt": "R3alisticF, hauntingly beautiful oriental necromancer, long flowing brown hair, bangs, darkly tanned skin, earrings, bone necklaces, dark eyeshadow, red lips, vibrant, front-laced transparent, filmy silk blouse, cleavage, holding skull, in a sandstone room lit by candles, High Detail, Perfect Composition, high contrast, silhouetted, chiascuro",
"model_id": "one-for-all-anime-w-illustrious-v-1-0-v-3-5-dpo-vae",
"lora_model": [],
"width": "1024",
"height": "1024",
"negative_prompt": "(worst quality:2), (low quality:2), (normal quality:2), (jpeg artifacts), (blurry), (duplicate), (morbid), (mutilated), (out of frame), (extra limbs), (bad anatomy), (disfigured), (deformed), (cross-eye), (glitch), (oversaturated), (overexposed), (underexposed), (bad proportions), (bad hands), (bad feet), (cloned face), (long neck), (missing arms), (missing legs), (extra fingers), (fused fingers), (poorly drawn hands), (poorly drawn face), (mutation), (deformed eyes), watermark, text, logo, signature, grainy, tiling, censored, nsfw, ugly, blurry eyes, noisy image, bad lighting, unnatural skin, asymmetry",
"num_inference_steps": "31",
"scheduler": "DPMSolverMultistepScheduler",
"guidance_scale": "7.5",
"enhance_prompt": false,
"key": "YOUR_API_KEY"
}

SDKs

Official SDKs

Production-ready SDKs and client libraries for all major programming languages

API Parameters

Technical specifications for API request parameters.

Field NameParameterTechnical Description
promptpromptprompt help in image generation
Modelmodel_idEnter model_id that can help in image generation
lora Modellora_modelNo description available
Widthwidthwidth of the image
Heightheightheight of the image
Negative Promptnegative_promptNegative prompt help in avoid things that you do not want in image
Stepsnum_inference_stepsNumber of inference steps
SchedulerschedulerSampling scheduler
Guidance Scaleguidance_scaleHow closely to follow the prompt (1-10)
enhance_promptenhance_promptAutomatically enhance the prompt