Aaron Saunders Deepmind Boston Dynamics

Featuring insights from

Aaron Saunders, Former CTO of

Boston Dynamics,

now Google DeepMind

DayDreamer

$ 0

UC Berkley logo humanoid guide

Model-based RL agent that learns directly from image observations on real robots with a world model; no sim-to-real needed

Out of stock

Capabilities
2
Humanoid.Guide
Brain Score
=Brain score2


Specifications and details:

Nationality

US

Website https://rail.eecs.berkeley.edu/
Model type

Foundation Model

Manufacturer

UC Berkeley

Release date

2023

Description

DayDreamer is a foundation model that trains robots directly in real-world environments by learning from visual input and experience. Instead of relying on simulation, it observes outcomes and improves through continuous interaction. Consequently, the model develops practical skills that reflect real conditions from the start. Moreover, this approach eliminates the gap between simulated and real environments, which often slows deployment.

Aaron Saunders Deepmind Boston Dynamics

Featuring insights from

Aaron Saunders, Former CTO of

Boston Dynamics,

now Google DeepMind

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In addition, DayDreamer uses a world model to imagine possible outcomes before acting. Therefore, it can evaluate strategies internally and select more effective behaviors. This predictive capability accelerates learning while reducing mistakes. Because it works from raw images, the system adapts to different setups without extensive tuning. As a result, DayDreamer supports more natural, efficient, and adaptive robotic behavior in real-world settings.

Contact Humanoid.guide

Website: https://rail.eecs.berkeley.edu