How to Train Your Robot with Deep Reinforcement Learning; Lessons We've Learned
Julian Ibarz, Jie Tan, Chelsea Finn, Mrinal Kalakrishnan and, Peter Pastor, Sergey Levine

TL;DR
This paper reviews the application of deep reinforcement learning to real-world robotics, highlighting challenges, case studies, and lessons learned to guide future research in deploying RL on physical robots.
Contribution
It provides a comprehensive overview of real-world robotic deep RL, including case studies, challenges, and solutions, serving as a resource for researchers in both robotics and machine learning.
Findings
Deep RL has shown promise in enabling robots to learn complex skills.
Addressed challenges include perception, control, and transfer to real environments.
Identified unique real-world challenges not often covered in simulated RL research.
Abstract
Deep reinforcement learning (RL) has emerged as a promising approach for autonomously acquiring complex behaviors from low level sensor observations. Although a large portion of deep RL research has focused on applications in video games and simulated control, which does not connect with the constraints of learning in real environments, deep RL has also demonstrated promise in enabling physical robots to learn complex skills in the real world. At the same time,real world robotics provides an appealing domain for evaluating such algorithms, as it connects directly to how humans learn; as an embodied agent in the real world. Learning to perceive and move in the real world presents numerous challenges, some of which are easier to address than others, and some of which are often not considered in RL research that focuses only on simulated domains. In this review article, we present a number…
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