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TMLR 2025

Jet: A Modern Transformer-Based Normalizing Flow

Journal Article Articles Artificial Intelligence · Machine Learning

Abstract

In the past, normalizing generative flows have emerged as a promising class of generative models for natural images. This type of model has many modeling advantages: the ability to efficiently compute log-likelihood of the input data, fast generation, and simple overall structure. Normalizing flows remained a topic of active research but later fell out of favor, as visual quality of the samples was not competitive with other model classes, such as GANs, VQ-VAE-based approaches or diffusion models. In this paper we revisit the design of coupling-based normalizing flow models by carefully ablating prior design choices and using computational blocks based on the Vision Transformer architecture, not convolutional neural networks. As a result, we achieve a much simpler architecture that matches existing normalizing flow models and improves over them when paired with pretraining. While the overall visual quality is still behind the current state-of-the-art models, we argue that strong normalizing flow models can help advancing the research frontier by serving as building components of more powerful generative models.

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Context

Venue
Transactions on Machine Learning Research
Archive span
2022-2026
Indexed papers
3849
Paper id
559078181549390263