TIPO-500M / README.md
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metadata
license: other
license_name: kohaku-license-1.0
datasets:
  - laion/conceptual-captions-12m-webdataset
  - CaptionEmporium/coyo-hd-11m-llavanext
  - KBlueLeaf/danbooru2023-metadata-database
  - graph-based-captions/GBC10M
language:
  - en
pipeline_tag: text-generation
library_name: transformers

TIPO: Text to Image with text presampling for Prompt Optimization

500M LLaMA arch model trained for TIPO.
Tech Report: https://arxiv.org/abs/2411.08127

image/png

Introduction

In this project, we introduce "TIPO" (Text to Image with text presampling for Prompt Optimization), an innovative framework designed to significantly enhance the quality and usability of Text-to-Image (T2I) generative models. TIPO utilizes the Large Language Models (LLMs) to perform "Text Presampling" within the inference pipeline of text-to-image generative modeling. By refining and extending user input prompts, TIPO enables generative models to produce superior results with minimal user effort, making T2I systems more accessible and effective for a wider range of users.

Usage

Use updated version of DTG extension (renamed to z-tipo-extension), current version of z-tipo-extension support stable-diffusion-webui, stable-diffusion-webui-forge and ComfyUI. SD-Next haven't been tested. https://github.com/KohakuBlueleaf/z-tipo-extension

Model arch and Training

This model is LLaMA arch with 200M parameters, the training data is combined version of Danbooru2023, Coyo-HD-11M.
The total token seen is around 50B tokens.
For more information please refer to the tech report and following table.

TIPO-200M TIPO-200M-ft TIPO-500M
Arch LLaMA LLaMA LLaMA
Max ctx length 1024 1024 1024
Batch Size 2048 2048 3584
Training dataset Danbooru, GBC10M, 5epoch
Danbooru, GBC10M, Coyo11M, 3epoch
Danbooru(pixtral), Coyo11M, 2epoch Danbooru, GBC10M, Coyo11M, 5epoch
Real Token Seen* 40B token 50B (10B more from TIPO-200M) 30B token
Training Hardware RTX 3090 x 4 RTX 3090 x 4 H100 x 8
Training Time 420 hour` 120 hour` 100 hour`
Huggingface KBlueLeaf/TIPO-200M Β· Hugging Face KBlueLeaf/TIPO-200M-ft Β· Hugging Face You Are HERE

*: We only count "non-padding token" in the token seen, since all the training data have very large length range.
`: Since the training data is pretty short, it cost more time to reach same token seen than general LLM pretraining.
As reference, with 4096 as max ctx length and almost all the data have reach that length, you may only need 2days to reach 10B token seen on RTX 3090 x 4 with 200M model.

Evaluation

Evaluation are done on TIPO-200M model
We have tested TIPO compared to other Model in several test and metrics:

Scenery tag test

In this test we use single "scenery" tag as input. (With some certain meta)
To test each prompt gen method to see if they can obtain the desired distribution of outputs while maintain the quality of images.

Scenery Tag Test Original GPT4o-mini Prompt DB Promptis TIPO(ours)
FDD ↓ 0.3558 0.5414 0.3247 0.2350 0.2282
Aesthetic ↑ 5.0569 6.3676 6.1609 5.9468 6.2571
AI Corrupt ↑ 0.4257 0.7490 0.5024 0.5669 0.9195

Short/Truncated Long test

In this test we use short caption or manually truncated caption from GBC10M and CoyoHD11M.
This test examine the ability of prompt gen method on handling almostly completed prompts.

Short Original GPT4o-mini Prompt DB Promptis TIPO(ours)
FDD ↓ 0.0957 0.1668 0.0980 0.1783 0.1168
Aesthetic ↑ 5.8370 6.0589 5.8213 5.7963 5.8531
AI Corrupt ↑ 0.7113 0.6985 0.7064 0.6314 0.7131
Truncated Long Original GPT4o-mini Prompt DB Promptis TIPO(ours)
FDD ↓ 0.0955 0.1683 0.1247 0.2096 0.1210
Aesthetic ↑ 5.7497 6.0168 5.8191 5.7759 5.8364
AI Corrupt ↑ 0.6868 0.6712 0.6741 0.5925 0.7130

LICENSE

This model is released under Kohaku License 1.0
You can check the above provided URL or check the LICENSE file in this repo.

Citation

@misc{yeh2024tipotextimagetext,
      title={TIPO: Text to Image with Text Presampling for Prompt Optimization}, 
      author={Shih-Ying Yeh and Sang-Hyun Park and Giyeong Oh and Min Song and Youngjae Yu},
      year={2024},
      eprint={2411.08127},
      archivePrefix={arXiv},
      primaryClass={cs.CV},
      url={https://arxiv.org/abs/2411.08127}, 
}