One-Step Generation

Deep Learning
Generative Models
The frontier of single-step generative models: from Flow Matching to Drifting Models
Author

Naoto Iwase

Published

February 11, 2026

Between 2025 and 2026, methods that overcome the multi-step inference of diffusion models and Flow Matching to generate high-quality images with a single network evaluation (1-NFE) have been rapidly advancing. This series curates four papers driving this field, tracing the technical evolution from extensions of Flow Matching to entirely new paradigms.

Contents

Paper List

# Paper Authors Date License
1 Mean Flows for One-step Generative Modeling Geng, Deng, Bai, Kolter, He 2025-05 CC BY 4.0
2 Transition Matching: Scalable and Flexible Generative Modeling Shaul, Singer, Gat, Lipman 2025-06 CC BY 4.0
3 Terminal Velocity Matching Zhou, Parger, Haque, Song 2025-11 CC BY 4.0
4 Generative Modeling via Drifting Deng, Li, Li, Du, He 2026-02 CC BY 4.0