

Robotics & World Models Reading Club 03: Robotic Policy Adaptation — San Francisco
Robotics & World Models Reading Club 03: Robotic Policy Adaptation — San Francisco
A high-signal reading group for AI researchers & builders pushing the frontiers of robotic world models, WAMs, and embodied intelligence. In our previous sessions, we brought together researchers and engineers from Boston Dynamics, Google, NVIDIA, Stanford, UC Berkeley and leading Bay Area robotics startups.
Hosted by Junfan Zhu & Aurora Feng.
Supported by Neural Motion, a universal cross-embodiment data representation layer for embodied AI.
Reading Club 03's Core Theme
Robotic Policy Adaptation: Fast and Reliable Bridging of Deployment Gaps in the Foundation Model Era
Adapting robotic policies to new environments remains one of the last unsolved problems in robotics. Real-world deployment rarely matches training conditions, making robust, fast adaptation a fundamental bottleneck.
This Saturday, Haoyi Niu (UC Berkeley) will share his research on algorithms for efficient cross-domain policy adaptation under real-world constraints.
Beyond technical methods, this keynote offers a candid look into research meta-cognition:
Why focus on policy adaptation in the era of foundation models?
How to stay "on-trend" with fast-moving AI trends while maintaining a long-term research thesis?
Pre-Readings
H2O: When to Trust Your Simulator: Dynamics-Aware Hybrid Offline-and-Online Reinforcement Learning
A foundational framework for hybrid offline–online RL under sim-to-real gaps.
H2O introduces a dynamics gap estimator ω(s, a), modeling the discrepancy between real-world and simulated state-action distributions. This estimator is integrated into a dynamics-aware policy evaluation objective, where simulated transitions are adaptively down-weighted in high-gap regions.
Key insight:
→ Prevents policies from exploiting simulator artifacts while still leveraging scalable simulation data.
H2O+: An Improved Framework for Hybrid Offline-and-Online RL with Dynamics Gaps
A more modular and scalable extension of H2O.
Decouples offline and online components into plug-and-play modules
Supports arbitrary offline RL + online RL combinations
Improves stability and sample efficiency under large dynamics mismatch
Key shift:
→ From a fixed framework → a general-purpose hybrid learning system
xTED: Cross-Domain Adaptation via Diffusion-Based Trajectory Editing
A data-centric alternative to policy adaptation.
Instead of adapting policies, xTED adapts trajectories:
Train a diffusion model on target-domain trajectories
Add noise to source trajectories → denoise with target prior
Preserve task semantics while injecting target-domain dynamics
Result:
→ Zero/few-shot transfer without policy retraining
RL-Token: Precise Manipulation with Efficient Online RL (Physical Intelligence, 2026)
Bridging large VLA models with real-time robotic learning.
Introduces a compact readout token distilled from frozen VLA representations
Uses lightweight actor-critic RL on real robots
Edits (not replaces) VLA actions for stability
Performance:
→ Up to 3× speedup in high-precision tasks (e.g., insertion, fastening)
→ Adaptation in minutes to hours
Location
San Francisco (Downtown)
Date & Time
Saturday, April 11, 2026 | 2:00 PM – 5:00 PM
Join Discord Community
https://discord.gg/WH7DrTHRXK
Follow Saturday Robotics on X
https://x.com/saturdayrobotic
Agenda
2:00 PM – 2:30 PM Door Opens & Social
Food 😋, beverages🧋 and UNLIMITED strawberries 🍓 (our official reading club fruits ☺️😄).
2:30 PM – 3:00 PM "Robotic Policy Adaptation" Keynote by Haoyi Niu, UC Berkeley (https://t6-thu.github.io/)
Virtual Keynote via Zoom: TBD
Recording: TBD (We are looking for recording volunteers)
3:00 PM – 5:00 PM Q&A, open-floor roundtable (10–20 min per topic) on spotlight papers or any paper you’d like to highlight. Feel free to share why the paper matters and its technical details.
Past events
#reading-club-02-0404
Session 02 Luma: https://luma.com/g3qrrti0
Reading Club 02 Review (liked by Yann LeCun on X): https://x.com/junfanzhu98/status/2040716119259164673?s=20
Event photos: https://x.com/junfanzhu98/status/2040717084972245341?s=20
LinkedIn more photos: https://www.linkedin.com/posts/junfan-zhu_robotics-world-model-reading-club-02-hot-ugcPost-7446465600723509248-1qbj?utm_source=share&utm_medium=member_desktop&rcm=ACoAABxP-p0BpUNGDf347aKh_1uJAPzG4er0As8
#reading-club-01-0328
Session 01 Luma: https://luma.com/8s4w1wu6
Reading Club 01 Review: https://x.com/junfanzhu98/status/2038153945219305812
Event photos (liked by Yann LeCun on X): https://x.com/junfanzhu98/status/2038161288090779985
Logistics
Spots are limited. Please arrive by 2:00 PM for check-in. Keynote will begin promptly at 2:30 PM.
We currently do not have volunteers available to assist with late check-ins. Given the high volume of inquiries and 100+ attendees (both online and onsite), we kindly ask that you arrive on time to ensure smooth entry.