ML Seminar Series
Training Continuous Normalizing Flows with Flow Matching for Generative AI
by
→
Europe/Zurich
OHSA/E13
OHSA/E13
Description
Abstract:
Flow matching approaches have gained a lot of attention recently in the field of generative AI. Flow Matching (FM) is a simulation-free approach for training Conditional Normalizing Flows (CNF) based on regressing vector fields of fixed conditional probability paths. In this talk I will introduce the background of CNFs, the core idea of Flow Matching, and the connection of FM to generative Diffusion Models and to Optimal Transport. I will then show how FMs can be used for various generative AI tasks, as well as for Simulations-Based Inference in physics, and review recent results.
Papers:
- Lipman, Y., Chen, R. T., Ben-Hamu, H., Nickel, M., & Le, M. (2022). Flow matching for generative modeling. arXiv preprint arXiv:2210.02747.
- Liu, X., Gong, C., & Liu, Q. (2022). Flow straight and fast: Learning to generate and transfer data with rectified flow. arXiv preprint arXiv:2209.03003.
- Albergo, Michael S., and Eric Vanden-Eijnden. "Building normalizing flows with stochastic interpolants." arXiv preprint arXiv:2209.15571 (2022).
- Onken, D., Fung, S. W., Li, X., & Ruthotto, L. (2021, May). Ot-flow: Fast and accurate continuous normalizing flows via optimal transport. In Proceedings of the AAAI Conference on Artificial Intelligence (Vol. 35, No. 10, pp. 9223-9232).
- Wildberger, Jonas, Maximilian Dax, Simon Buchholz, Stephen Green, Jakob H. Macke, and Bernhard Schölkopf. "Flow matching for scalable simulation-based inference." Advances in Neural Information Processing Systems 36 (2024).
Organised by
The Laboratory for Simulation and Modeling
SDSC hub at PSI
Dr. Benjamin Béjar
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Participants