English

Text-to-Model: Text-Conditioned Neural Network Diffusion for Train-Once-for-All Personalization

Machine Learning 2025-03-27 v2

Abstract

Generative artificial intelligence (GenAI) has made significant progress in understanding world knowledge and generating content from human languages across various modalities, like text-to-text large language models, text-to-image stable diffusion, and text-to-video Sora. While in this paper, we investigate the capability of GenAI for text-to-model generation, to see whether GenAI can comprehend hyper-level knowledge embedded within AI itself parameters. Specifically, we study a practical scenario termed train-once-for-all personalization, aiming to generate personalized models for diverse end-users and tasks using text prompts. Inspired by the recent emergence of neural network diffusion, we present Tina, a text-conditioned neural network diffusion for train-once-for-all personalization. Tina leverages a diffusion transformer model conditioned on task descriptions embedded using a CLIP model. Despite the astronomical number of potential personalized tasks (e.g., 1.73×10131.73\times10^{13}), by our design, Tina demonstrates remarkable in-distribution and out-of-distribution generalization even trained on small datasets (1000\sim 1000). We further verify whether and how \Tina understands world knowledge by analyzing its capabilities under zero-shot/few-shot image prompts, different numbers of personalized classes, prompts of natural language descriptions, and predicting unseen entities.

Keywords

Cite

@article{arxiv.2405.14132,
  title  = {Text-to-Model: Text-Conditioned Neural Network Diffusion for Train-Once-for-All Personalization},
  author = {Zexi Li and Lingzhi Gao and Chao Wu},
  journal= {arXiv preprint arXiv:2405.14132},
  year   = {2025}
}

Comments

Preprint

R2 v1 2026-06-28T16:36:33.340Z