Back to Search Start Over

PWM: Policy Learning with Large World Models

Authors :
Georgiev, Ignat
Giridhar, Varun
Hansen, Nicklas
Garg, Animesh
Publication Year :
2024

Abstract

Reinforcement Learning (RL) has achieved impressive results on complex tasks but struggles in multi-task settings with different embodiments. World models offer scalability by learning a simulation of the environment, yet they often rely on inefficient gradient-free optimization methods. We introduce Policy learning with large World Models (PWM), a novel model-based RL algorithm that learns continuous control policies from large multi-task world models. By pre-training the world model on offline data and using it for first-order gradient policy learning, PWM effectively solves tasks with up to 152 action dimensions and outperforms methods using ground-truth dynamics. Additionally, PWM scales to an 80-task setting, achieving up to 27% higher rewards than existing baselines without the need for expensive online planning. Visualizations and code available at https://www.imgeorgiev.com/pwm<br />Comment: Visualizations and code available at https://www.imgeorgiev.com/pwm

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2407.02466
Document Type :
Working Paper