In the rapidly progressing field of generative models, the development of efficient and high-fidelity text-to-image diffusion systems represents a significant frontier. This study introduces YaART, a novel production-grade text-to-image cascaded diffusion model aligned to human preferences using Reinforcement Learning from Human Feedback (RLHF). During the development of YaART, we especially focus on the choices of the model and training dataset sizes, the aspects that were not systematically investigated for text-to-image cascaded diffusion models before. In particular, we comprehensively analyze how these choices affect both the efficiency of the training process and the quality of the generated images, which are highly important in practice. Furthermore, we demonstrate that models trained on smaller datasets of higher-quality images can successfully compete with those trained on larger datasets, establishing a more efficient scenario of diffusion models training. From the quality perspective, YaART is consistently preferred by users over many existing state-of-the-art models.
@article{arxiv.2404.05666,
title = {YaART: Yet Another ART Rendering Technology},
author = {Sergey Kastryulin and Artem Konev and Alexander Shishenya and Eugene Lyapustin and Artem Khurshudov and Alexander Tselousov and Nikita Vinokurov and Denis Kuznedelev and Alexander Markovich and Grigoriy Livshits and Alexey Kirillov and Anastasiia Tabisheva and Liubov Chubarova and Marina Kaminskaia and Alexander Ustyuzhanin and Artemii Shvetsov and Daniil Shlenskii and Valerii Startsev and Dmitrii Kornilov and Mikhail Romanov and Artem Babenko and Sergei Ovcharenko and Valentin Khrulkov},
journal= {arXiv preprint arXiv:2404.05666},
year = {2024}
}
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Prompts and additional information are available on the project page, see https://ya.ru/ai/art/paper-yaart-v1