license: openrail++
Terminus XL Otaku (v1 preview)
Model Details
Model Description
Terminus XL Otaku is a latent diffusion model that uses zero-terminal SNR noise schedule and velocity prediction objective at training and inference time.
Terminus is a new state-of-the-art model family based on SDXL's architecture, and is compatible with (most) SDXL pipelines.
For Terminus Otaku (this model), the training data is exclusively anime/celshading/3D renders and other hand-drawn or synthetic art styles.
The objective of this model was to continue the use of v-prediction objective and min-SNR gamma loss to adapt Terminus Gamma v2's outputs to a more artistic style.
- Fine-tuned from: ptx0/terminus-xl-gamma-v2
- Developed by: pseudoterminal X (@bghira)
- Funded by: pseudoterminal X (@bghira)
- Model type: Latent Diffusion
- License: openrail++
- Architecture: SDXL
Model Sources
- Repository: https://github.com/bghira/SimpleTuner
Uses
Direct Use
Terminus XL Otaku can be used for generating high-quality images given text prompts.
It should particularly excel at inpainting tasks for animated subject matter, where a zero-terminal SNR noise schedule allows it to more effectively retain contrast.
The model can be utilized in creative industries such as art, advertising, and entertainment to create visually appealing content.
Downstream Use
Terminus XL Otaku can be fine-tuned for specific tasks such as image super-resolution, style transfer, and more.
However, it's recommended that the v1 preview not be used for fine-tuning until it is fully released, as any structural issues will hopefully be resolved by then.
Out-of-Scope Use
The model is not designed for tasks outside of image generation. It should not be used to produce harmful content, or deceive others. Please use common sense.
Bias, Risks, and Limitations
The model might exhibit biases present in the training data. The generated images should be carefully reviewed to ensure they meet ethical and societal standards.
Recommendations
Users should be cautious of potential biases in the generated images and thoroughly review them before use.
Training Details
Training Data
This model's success largely depended on a somewhat small collection of very high quality data samples.
- Indiscriminate use of NijiJourney outputs.
- Midjourney 5.2 outputs that mention anime styles in their tags.
- Niji and MJ Showcase images that were re-captioned using CogVLM.
- Anchor data of real human subjects in a small (10%) ratio to the animated material, to retain coherence.
Training Procedure
Preprocessing
This model is (so far) trained exclusively on cropped images using SDXL's crop coordinates to improve fine details.
No images were upsampled or downsampled during this training session. Instead, random crops (or unaltered 1024px square images) were used in lieu.
~50,000 images were used for this training run with continuous collection throughout the process, making it difficult to ascertain how many exact images were used.
Training Hyperparameters
- Training regime: bf16 mixed precision
- Learning rate: (1 \times 10^{-7}) to (1 \times 10^{-6}), cosine schedule
- Epochs: 11
- Batch size: 12 * 8 = 96
Speeds, Sizes, Times
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Evaluation
Testing Data, Factors & Metrics
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Results
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Summary
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Environmental Impact
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Technical Specifications
Model Architecture and Objective
The model uses an SDXL-compatible latent diffusion architecture with a unique min-SNR augmented velocity objective.
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Hardware
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Software
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Citation
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