Reinforce Adjoint Matching: Scaling Diffusion RL

Jun 30, 2026Channel
AI Analysis
Data from YouTube Data API v3Updated Just now

Video Overview

Video Details

Published2 weeks ago
Duration55:20
Video ID543CYbUZ1g0
Languageen
CategoryScience & Technology
PrivacyPublic
Made for KidsNo
Video TypeRegular Video

Performance Metrics

Views94
Likes9
Comments1
Engagement Rate10.64%
Likes per 100 views9.57
Comments per 1K views10.64

Description

Diffusion and flow-matching models scale because pretraining is supervised regression: a clean sample is noised analytically, and a model regresses against a closed-form target. RL post-training aligns the model with a reward. In image generation, this makes samples compose objects correctly, render text legibly, and match human preferences. Existing methods rely on costly SDE rollouts, reward gradients, or surrogate losses, sacrificing pretraining's regression structure. We show that the structure extends to RL post-training. Under KL-regularized reward maximization, the optimal generative process tilts the clean-endpoint distribution towards samples with higher reward and leaves the noising law unchanged. Combining this with the adjoint-matching optimality condition and a REINFORCE identity, we derive Reinforce Adjoint Matching (RAM): a consistency loss that corrects the pretraining target with the reward. At each step, we draw a clean endpoint from the current model, evaluate its reward, noise it as in pretraining, and regress. No SDE rollouts, backward adjoint sweeps, or reward gradients are required. Like the pretraining objective, RAM is simple and scales. On Stable Diffusion 3.5M, RAM achieves the highest reward on composability, text rendering, and human preference, reaching Flow-GRPO's peak reward in up to 50× fewer training steps. Speaker bio: Andreas Bergmeister is a PhD student at TU Munich. He received his Bachelor’s and Master’s degrees in Computer Science from ETH Zurich. His research focuses on generative models, diffusion models in particular. Find seminar details and upcoming talks: https://www.microsoft.com/en-us/research/event/microsoft-research-new-england-generative-modeling-sampling-seminar/

Related Videos

More videos from Microsoft Research